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sqlrite/sql/
executor.rs

1//! Query executors — evaluate parsed SQL statements against the in-memory
2//! storage and produce formatted output.
3
4use std::cmp::Ordering;
5
6use prettytable::{Cell as PrintCell, Row as PrintRow, Table as PrintTable};
7use sqlparser::ast::{
8    AlterTable, AlterTableOperation, AssignmentTarget, BinaryOperator, CreateIndex, Delete, Expr,
9    FromTable, FunctionArg, FunctionArgExpr, FunctionArguments, IndexType, ObjectName,
10    ObjectNamePart, RenameTableNameKind, Statement, TableFactor, TableWithJoins, UnaryOperator,
11    Update, Value as AstValue,
12};
13
14use crate::error::{Result, SQLRiteError};
15use crate::sql::agg::{AggState, DistinctKey, like_match};
16use crate::sql::db::database::Database;
17use crate::sql::db::secondary_index::{IndexOrigin, SecondaryIndex};
18use crate::sql::db::table::{
19    DataType, FtsIndexEntry, HnswIndexEntry, Table, Value, parse_vector_literal,
20};
21use crate::sql::fts::{Bm25Params, PostingList};
22use crate::sql::hnsw::{DistanceMetric, HnswIndex};
23use crate::sql::parser::select::{
24    AggregateArg, JoinType, OrderByClause, Projection, ProjectionItem, ProjectionKind, SelectQuery,
25};
26
27// -----------------------------------------------------------------
28// SQLR-5 — Row-scope abstraction
29// -----------------------------------------------------------------
30//
31// Single-table SELECT / UPDATE / DELETE evaluate WHERE / ORDER BY /
32// projection expressions over `(&Table, rowid)`. JOIN evaluation
33// needs the same expression evaluator to look up columns across
34// multiple tables, with NULL padding for unmatched outer-join rows.
35//
36// Rather than fork the evaluator, we abstract "what's in scope when
37// I see a column reference" behind a trait. Every callsite that
38// previously took `(table, rowid)` now takes `&dyn RowScope`. The
39// single-table case constructs a tiny `SingleTableScope`; the join
40// case constructs a `JoinedScope` that knows about every table in
41// scope plus the per-table rowid (or `None` for a NULL-padded row).
42//
43// The trait stays small on purpose:
44//
45//   - `lookup` resolves a column reference (`col` or `t.col`) to a
46//     `Value`. NULL-padded joined rows yield `Value::Null` for any
47//     column from their side. Ambiguous unqualified references in
48//     joined scope error.
49//
50//   - `single_table_view` lets index-probing helpers (FTS, HNSW,
51//     vec_distance) bail out cleanly when invoked over a join — they
52//     need a `(Table, rowid)` pair to look up an index, and the
53//     joined case can't answer without per-call disambiguation we
54//     haven't plumbed yet. Returns `None` in joined scope.
55pub(crate) trait RowScope {
56    fn lookup(&self, qualifier: Option<&str>, col: &str) -> Result<Value>;
57
58    /// `Some((table, rowid))` for a single-table scope; `None` for a
59    /// joined scope. v1 join support delegates "needs single-table"
60    /// helpers (FTS / HNSW / vec_distance with column args) to the
61    /// single-table path; calling them from a joined query produces
62    /// a `NotImplemented` error rather than wrong results.
63    fn single_table_view(&self) -> Option<(&Table, i64)>;
64}
65
66/// The default scope for non-join queries: one table, one rowid.
67pub(crate) struct SingleTableScope<'a> {
68    table: &'a Table,
69    rowid: i64,
70}
71
72impl<'a> SingleTableScope<'a> {
73    pub(crate) fn new(table: &'a Table, rowid: i64) -> Self {
74        Self { table, rowid }
75    }
76}
77
78impl RowScope for SingleTableScope<'_> {
79    fn lookup(&self, qualifier: Option<&str>, col: &str) -> Result<Value> {
80        // The qualifier (if any) is ignored — we only have one table
81        // in scope, so `t.col` resolves the same as `col`. This
82        // matches the historical single-table path which did the
83        // same thing in `eval_expr`.
84        let _ = qualifier;
85        Ok(self.table.get_value(col, self.rowid).unwrap_or(Value::Null))
86    }
87
88    fn single_table_view(&self) -> Option<(&Table, i64)> {
89        Some((self.table, self.rowid))
90    }
91}
92
93/// One table participating in a joined query, plus the user-visible
94/// name to match against `t.col` qualifiers (alias if present, else
95/// the bare table name).
96pub(crate) struct JoinedTableRef<'a> {
97    pub table: &'a Table,
98    pub scope_name: String,
99}
100
101/// Multi-table scope used during join execution. `rowids[i]` is the
102/// rowid in `tables[i]`, or `None` for a NULL-padded row coming out
103/// of an outer join.
104pub(crate) struct JoinedScope<'a> {
105    pub tables: &'a [JoinedTableRef<'a>],
106    pub rowids: &'a [Option<i64>],
107}
108
109impl RowScope for JoinedScope<'_> {
110    fn lookup(&self, qualifier: Option<&str>, col: &str) -> Result<Value> {
111        if let Some(q) = qualifier {
112            // Qualified reference: pick the matching table; if it's
113            // NULL-padded, the column is NULL; else fetch from row.
114            let pos = self
115                .tables
116                .iter()
117                .position(|t| t.scope_name.eq_ignore_ascii_case(q))
118                .ok_or_else(|| {
119                    SQLRiteError::Internal(format!(
120                        "unknown table qualifier '{q}' in column reference '{q}.{col}'"
121                    ))
122                })?;
123            if !self.tables[pos].table.contains_column(col.to_string()) {
124                return Err(SQLRiteError::Internal(format!(
125                    "column '{col}' does not exist on '{}'",
126                    self.tables[pos].scope_name
127                )));
128            }
129            return Ok(match self.rowids[pos] {
130                None => Value::Null,
131                Some(r) => self.tables[pos]
132                    .table
133                    .get_value(col, r)
134                    .unwrap_or(Value::Null),
135            });
136        }
137        // Unqualified: search every in-scope table. Exactly-one match
138        // wins; zero matches → unknown column; multi matches →
139        // ambiguous, prompt the user to qualify.
140        let mut hit: Option<usize> = None;
141        for (i, t) in self.tables.iter().enumerate() {
142            if t.table.contains_column(col.to_string()) {
143                if hit.is_some() {
144                    return Err(SQLRiteError::Internal(format!(
145                        "column reference '{col}' is ambiguous — qualify it as <table>.{col}"
146                    )));
147                }
148                hit = Some(i);
149            }
150        }
151        let i = hit.ok_or_else(|| {
152            SQLRiteError::Internal(format!(
153                "unknown column '{col}' in joined SELECT (no in-scope table has it)"
154            ))
155        })?;
156        Ok(match self.rowids[i] {
157            None => Value::Null,
158            Some(r) => self.tables[i]
159                .table
160                .get_value(col, r)
161                .unwrap_or(Value::Null),
162        })
163    }
164
165    fn single_table_view(&self) -> Option<(&Table, i64)> {
166        None
167    }
168}
169
170/// Executes a parsed `SelectQuery` against the database and returns a
171/// human-readable rendering of the result set (prettytable). Also returns
172/// the number of rows produced, for the top-level status message.
173/// Structured result of a SELECT: column names in projection order,
174/// and each matching row as a `Vec<Value>` aligned with the columns.
175/// Phase 5a introduced this so the public `Connection` / `Statement`
176/// API has typed rows to yield; the existing `execute_select` that
177/// returns pre-rendered text is now a thin wrapper on top.
178pub struct SelectResult {
179    pub columns: Vec<String>,
180    pub rows: Vec<Vec<Value>>,
181}
182
183/// Executes a SELECT and returns structured rows. The typed rows are
184/// what the new public API streams to callers; the REPL / Tauri app
185/// pre-render into a prettytable via `execute_select`.
186pub fn execute_select_rows(query: SelectQuery, db: &Database) -> Result<SelectResult> {
187    // SQLR-5 — joined SELECTs go through a dedicated executor that
188    // knows how to thread a multi-table scope through expression
189    // evaluation. The single-table fast path below stays untouched
190    // (and so do its HNSW / FTS / bounded-heap optimizations).
191    if !query.joins.is_empty() {
192        return execute_select_rows_joined(query, db);
193    }
194
195    let table = db
196        .get_table(query.table_name.clone())
197        .map_err(|_| SQLRiteError::Internal(format!("Table '{}' not found", query.table_name)))?;
198
199    // SQLR-3: Materialize the projection as `Vec<ProjectionItem>` so
200    // both the simple-row path and the aggregation path can iterate the
201    // same shape. `Projection::All` expands to bare-column items in
202    // declaration order; that path then runs the existing rowid pipeline.
203    let proj_items: Vec<ProjectionItem> = match &query.projection {
204        Projection::All => table
205            .column_names()
206            .into_iter()
207            .map(|c| ProjectionItem {
208                kind: ProjectionKind::Column {
209                    qualifier: None,
210                    name: c,
211                },
212                alias: None,
213            })
214            .collect(),
215        Projection::Items(items) => items.clone(),
216    };
217    let has_aggregates = proj_items
218        .iter()
219        .any(|i| matches!(i.kind, ProjectionKind::Aggregate(_)));
220    // Validate bare-column references against the table schema.
221    for item in &proj_items {
222        if let ProjectionKind::Column { name: c, .. } = &item.kind
223            && !table.contains_column(c.clone())
224        {
225            return Err(SQLRiteError::Internal(format!(
226                "Column '{c}' does not exist on table '{}'",
227                query.table_name
228            )));
229        }
230    }
231    for c in &query.group_by {
232        if !table.contains_column(c.clone()) {
233            return Err(SQLRiteError::Internal(format!(
234                "GROUP BY references unknown column '{c}' on table '{}'",
235                query.table_name
236            )));
237        }
238    }
239    // Collect matching rowids. If the WHERE is the shape `col = literal`
240    // and `col` has a secondary index, probe the index for an O(log N)
241    // seek; otherwise fall back to the full table scan.
242    let matching = match select_rowids(table, query.selection.as_ref())? {
243        RowidSource::IndexProbe(rowids) => rowids,
244        RowidSource::FullScan => {
245            let mut out = Vec::new();
246            for rowid in table.rowids() {
247                if let Some(expr) = &query.selection
248                    && !eval_predicate(expr, table, rowid)?
249                {
250                    continue;
251                }
252                out.push(rowid);
253            }
254            out
255        }
256    };
257    let mut matching = matching;
258
259    let aggregating = has_aggregates || !query.group_by.is_empty();
260
261    // SQLR-3: aggregation path. When the SELECT contains aggregates or a
262    // GROUP BY, the rowid-shaped optimizations (HNSW / FTS / bounded
263    // heap) don't compose with grouping — every row contributes to its
264    // group, so we walk the full filtered rowid set, accumulate, then
265    // sort/truncate the resulting *output rows*.
266    if aggregating {
267        // Validate aggregate column args.
268        for item in &proj_items {
269            if let ProjectionKind::Aggregate(call) = &item.kind
270                && let AggregateArg::Column(c) = &call.arg
271                && !table.contains_column(c.clone())
272            {
273                return Err(SQLRiteError::Internal(format!(
274                    "{}({}) references unknown column '{c}' on table '{}'",
275                    call.func.as_str(),
276                    c,
277                    query.table_name
278                )));
279            }
280        }
281
282        let columns: Vec<String> = proj_items.iter().map(|i| i.output_name()).collect();
283        let mut rows = aggregate_rows(table, &matching, &query.group_by, &proj_items)?;
284
285        if query.distinct {
286            rows = dedupe_rows(rows);
287        }
288
289        if let Some(order) = &query.order_by {
290            sort_output_rows(&mut rows, &columns, &proj_items, order)?;
291        }
292        if let Some(k) = query.limit {
293            rows.truncate(k);
294        }
295
296        return Ok(SelectResult { columns, rows });
297    }
298
299    // Non-aggregating path — same flow as before, with the extra
300    // affordances that (a) the projection list now goes through
301    // `ProjectionItem` and (b) DISTINCT applies after row materialization.
302
303    // Phase 7c — bounded-heap top-k optimization.
304    //
305    // The naive "ORDER BY <expr>" path (Phase 7b) sorts every matching
306    // rowid: O(N log N) sort_by + a truncate. For KNN queries
307    //
308    //     SELECT id FROM docs
309    //     ORDER BY vec_distance_l2(embedding, [...])
310    //     LIMIT 10;
311    //
312    // N is the table row count and k is the LIMIT. With a bounded
313    // max-heap of size k we can find the top-k in O(N log k) — same
314    // sort_by-per-row cost on the heap operations, but k is typically
315    // 10-100 while N can be millions.
316    //
317    // Phase 7d.2 — HNSW ANN probe.
318    //
319    // Even better than the bounded heap: if the ORDER BY expression is
320    // exactly `vec_distance_l2(<col>, <bracket-array literal>)` AND
321    // `<col>` has an HNSW index attached, skip the linear scan
322    // entirely and probe the graph in O(log N). Approximate but
323    // typically ≥ 0.95 recall (verified by the recall tests in
324    // src/sql/hnsw.rs).
325    //
326    // We branch in cases:
327    //   1. ORDER BY + LIMIT k matches the HNSW probe pattern  → graph probe.
328    //   2. ORDER BY + LIMIT k matches the FTS probe pattern   → posting probe.
329    //   3. ORDER BY + LIMIT k where k < |matching|            → bounded heap (7c).
330    //   4. ORDER BY without LIMIT, or LIMIT >= |matching|     → full sort.
331    //   5. LIMIT without ORDER BY                              → just truncate.
332    //
333    // DISTINCT is applied post-projection (we'd over-truncate if LIMIT
334    // ran before DISTINCT had a chance to collapse duplicates), so when
335    // DISTINCT is on we defer truncation past the dedupe step.
336    let defer_limit_for_distinct = query.distinct;
337    match (&query.order_by, query.limit) {
338        (Some(order), Some(k)) if try_hnsw_probe(table, &order.expr, k).is_some() => {
339            matching = try_hnsw_probe(table, &order.expr, k).unwrap();
340        }
341        (Some(order), Some(k))
342            if try_fts_probe(table, &order.expr, order.ascending, k).is_some() =>
343        {
344            matching = try_fts_probe(table, &order.expr, order.ascending, k).unwrap();
345        }
346        (Some(order), Some(k)) if !defer_limit_for_distinct && k < matching.len() => {
347            matching = select_topk(&matching, table, order, k)?;
348        }
349        (Some(order), _) => {
350            sort_rowids(&mut matching, table, order)?;
351            if let Some(k) = query.limit
352                && !defer_limit_for_distinct
353            {
354                matching.truncate(k);
355            }
356        }
357        (None, Some(k)) if !defer_limit_for_distinct => {
358            matching.truncate(k);
359        }
360        _ => {}
361    }
362
363    let columns: Vec<String> = proj_items.iter().map(|i| i.output_name()).collect();
364    let projected_cols: Vec<String> = proj_items
365        .iter()
366        .map(|i| match &i.kind {
367            ProjectionKind::Column { name, .. } => name.clone(),
368            ProjectionKind::Aggregate(_) => unreachable!("aggregation handled above"),
369        })
370        .collect();
371
372    // Build typed rows. Missing cells surface as `Value::Null` — that
373    // maps a column-not-present-for-this-rowid case onto the public
374    // `Row::get` → `Option<T>` surface cleanly.
375    let mut rows: Vec<Vec<Value>> = Vec::with_capacity(matching.len());
376    for rowid in &matching {
377        let row: Vec<Value> = projected_cols
378            .iter()
379            .map(|col| table.get_value(col, *rowid).unwrap_or(Value::Null))
380            .collect();
381        rows.push(row);
382    }
383
384    if query.distinct {
385        rows = dedupe_rows(rows);
386        if let Some(k) = query.limit {
387            rows.truncate(k);
388        }
389    }
390
391    Ok(SelectResult { columns, rows })
392}
393
394// -----------------------------------------------------------------
395// SQLR-5 — Joined SELECT execution
396// -----------------------------------------------------------------
397//
398// The strategy is a left-folded nested-loop join: start with the
399// rowids of the leading FROM table, then for each JOIN clause
400// combine the accumulator (`Vec<Vec<Option<i64>>>`) with the rowids
401// of the next table. Each join flavor differs only in how it
402// handles unmatched left / right rows:
403//
404//   INNER       — drop unmatched on both sides
405//   LEFT OUTER  — keep every left row; pad right side with NULL
406//   RIGHT OUTER — keep every right row; pad left side with NULL
407//   FULL OUTER  — keep both unmatched sets, NULL-padding the other
408//
409// This isn't a hash join — every join is O(N×M) in the size of the
410// accumulator and the right table. Adequate for SQLRite's "embedded
411// learning database" niche; a future phase could layer hash / merge
412// joins on equi-join shapes without changing the surface API.
413//
414// Aggregates / GROUP BY / DISTINCT over joined results are rejected
415// at parse time (see SelectQuery::new). They aren't impossible —
416// the joined-row stream is just a different rowid source feeding
417// the same aggregator — but we left the validator that ties bare
418// columns to GROUP BY a single-table assumption, and reworking it
419// is outside this phase. Surfaces as a clean NotImplemented today.
420fn execute_select_rows_joined(query: SelectQuery, db: &Database) -> Result<SelectResult> {
421    // Resolve every participating table once and capture its scope
422    // name (alias if supplied, else table name). Scope names are
423    // case-sensitive in matching the original identifier text;
424    // qualifier matches in `JoinedScope::lookup` use
425    // `eq_ignore_ascii_case` so `T1.c1` works whether the user
426    // wrote `T1`, `t1`, or `T1` differently than the alias.
427    let mut joined_tables: Vec<JoinedTableRef<'_>> = Vec::with_capacity(1 + query.joins.len());
428
429    let primary = db
430        .get_table(query.table_name.clone())
431        .map_err(|_| SQLRiteError::Internal(format!("Table '{}' not found", query.table_name)))?;
432    joined_tables.push(JoinedTableRef {
433        table: primary,
434        scope_name: query
435            .table_alias
436            .clone()
437            .unwrap_or_else(|| query.table_name.clone()),
438    });
439    for j in &query.joins {
440        let t = db
441            .get_table(j.right_table.clone())
442            .map_err(|_| SQLRiteError::Internal(format!("Table '{}' not found", j.right_table)))?;
443        joined_tables.push(JoinedTableRef {
444            table: t,
445            scope_name: j
446                .right_alias
447                .clone()
448                .unwrap_or_else(|| j.right_table.clone()),
449        });
450    }
451
452    // Reject duplicate scope names — `FROM t JOIN t ON ...` without
453    // an alias on one side would silently collapse qualifiers and
454    // produce confusing results. Forcing the user to alias one side
455    // keeps `t1.col` / `t2.col` unambiguous.
456    {
457        let mut seen: std::collections::HashSet<String> = std::collections::HashSet::new();
458        for t in &joined_tables {
459            let key = t.scope_name.to_ascii_lowercase();
460            if !seen.insert(key) {
461                return Err(SQLRiteError::Internal(format!(
462                    "duplicate table reference '{}' in FROM/JOIN — use AS to alias one side",
463                    t.scope_name
464                )));
465            }
466        }
467    }
468
469    // Validate qualified projection column references against the
470    // table they qualify. Unqualified names are validated by the
471    // first scope lookup at row materialization — the runtime check
472    // there gives the same "ambiguous / unknown" message we'd want
473    // here, so we don't pre-resolve them.
474    let proj_items: Vec<ProjectionItem> = match &query.projection {
475        Projection::All => {
476            // `SELECT *` over a join expands to every column of every
477            // in-scope table, in source order. We use the bare column
478            // name as both the projected identifier and the output
479            // header — qualified expansion (`t1.col`) would force
480            // composite headers like `t1.col` which conflict with
481            // alias-less convention. Duplicate header names are
482            // permitted (matches SQLite); callers needing
483            // disambiguation can `SELECT t.col AS t_col`.
484            let mut all = Vec::new();
485            for t in &joined_tables {
486                for col in t.table.column_names() {
487                    all.push(ProjectionItem {
488                        kind: ProjectionKind::Column {
489                            // Qualify the synthetic items so duplicate
490                            // column names across tables route to the
491                            // right side at projection time. The output
492                            // header still uses the bare `name`.
493                            qualifier: Some(t.scope_name.clone()),
494                            name: col,
495                        },
496                        alias: None,
497                    });
498                }
499            }
500            all
501        }
502        Projection::Items(items) => items.clone(),
503    };
504
505    let columns: Vec<String> = proj_items.iter().map(|i| i.output_name()).collect();
506
507    // Stage 1: enumerate rows of the leading table. The accumulator
508    // is `Vec<Vec<Option<i64>>>` where each inner `Vec` is a join
509    // row whose i-th slot is the rowid of `joined_tables[i]` (or
510    // None for a NULL-padded row from an outer join).
511    let mut acc: Vec<Vec<Option<i64>>> = primary
512        .rowids()
513        .into_iter()
514        .map(|r| {
515            let mut row = Vec::with_capacity(joined_tables.len());
516            row.push(Some(r));
517            row
518        })
519        .collect();
520
521    // Stage 2: fold each JOIN clause into the accumulator. After
522    // join `i`, every row in `acc` has length `i + 2` (primary +
523    // i+1 right tables joined). Unmatched-side handling depends on
524    // the join flavor.
525    for (j_idx, join) in query.joins.iter().enumerate() {
526        let right_pos = j_idx + 1;
527        let right_table = joined_tables[right_pos].table;
528        let right_rowids: Vec<i64> = right_table.rowids();
529
530        // Track which right rowids matched at least once across the
531        // entire left accumulator. Used by RIGHT / FULL to emit
532        // unmatched right rows after the loop.
533        let mut right_matched: Vec<bool> = vec![false; right_rowids.len()];
534
535        let mut next_acc: Vec<Vec<Option<i64>>> = Vec::with_capacity(acc.len());
536
537        // ON evaluation only sees tables that are in scope *at this
538        // join level* — the leading FROM table plus every right
539        // table joined so far, including the one we're matching.
540        // Restricting the scope means a typo like `JOIN c ON a.id =
541        // c.id JOIN c ON ...` (referencing `c` before it joins)
542        // surfaces as "unknown table qualifier 'c'" rather than
543        // silently `NULL → false`-ing every row.
544        let on_scope_tables: &[JoinedTableRef<'_>] = &joined_tables[..=right_pos];
545
546        for left_row in acc.into_iter() {
547            // Build a row prefix and extend it with each candidate
548            // right rowid; record whether any matched (for outer
549            // padding on the left side).
550            let mut left_match_count = 0usize;
551            for (r_idx, &rrid) in right_rowids.iter().enumerate() {
552                let mut on_rowids: Vec<Option<i64>> = left_row.clone();
553                on_rowids.push(Some(rrid));
554                debug_assert_eq!(on_rowids.len(), on_scope_tables.len());
555                let scope = JoinedScope {
556                    tables: on_scope_tables,
557                    rowids: &on_rowids,
558                };
559                // Reuse `eval_predicate_scope` so ON shares the same
560                // truthiness rule WHERE uses — non-zero integers are
561                // truthy, NULL is false, etc. — instead of rejecting
562                // anything that isn't a literal bool.
563                if eval_predicate_scope(&join.on, &scope)? {
564                    left_match_count += 1;
565                    right_matched[r_idx] = true;
566                    // Accumulator entries carry only as many slots
567                    // as join levels processed so far; the next
568                    // iteration extends them again. No trailing
569                    // padding needed here.
570                    next_acc.push(on_rowids);
571                }
572            }
573
574            if left_match_count == 0
575                && matches!(join.join_type, JoinType::LeftOuter | JoinType::FullOuter)
576            {
577                // Outer-join NULL pad on the right side: keep the
578                // left row, push None for the right rowid.
579                let mut padded = left_row;
580                padded.push(None);
581                next_acc.push(padded);
582            }
583        }
584
585        // Right-only emission for RIGHT / FULL: any right rowid that
586        // never matched on the entire accumulator surfaces with all
587        // left positions NULL-padded.
588        if matches!(join.join_type, JoinType::RightOuter | JoinType::FullOuter) {
589            for (r_idx, matched) in right_matched.iter().enumerate() {
590                if *matched {
591                    continue;
592                }
593                let mut row: Vec<Option<i64>> = vec![None; right_pos];
594                row.push(Some(right_rowids[r_idx]));
595                next_acc.push(row);
596            }
597        }
598
599        acc = next_acc;
600    }
601
602    // Stage 3: apply WHERE on each fully-joined row. Outer-join
603    // NULL-padded rows where WHERE references a NULL'd column will
604    // (per SQL three-valued logic) be excluded — this is the same
605    // posture as the single-table path.
606    let mut filtered: Vec<Vec<Option<i64>>> = if let Some(where_expr) = &query.selection {
607        let mut out = Vec::with_capacity(acc.len());
608        for row in acc {
609            let scope = JoinedScope {
610                tables: &joined_tables,
611                rowids: &row,
612            };
613            if eval_predicate_scope(where_expr, &scope)? {
614                out.push(row);
615            }
616        }
617        out
618    } else {
619        acc
620    };
621
622    // Stage 4: ORDER BY across the joined scope. We pre-compute the
623    // sort key per row (same approach as `sort_rowids`) so the
624    // comparator runs on Values, not against the expression tree.
625    if let Some(order) = &query.order_by {
626        // Validate up front so a bad ORDER BY surfaces a clear
627        // error before sort starts.
628        let mut keys: Vec<(usize, Value)> = Vec::with_capacity(filtered.len());
629        for (i, row) in filtered.iter().enumerate() {
630            let scope = JoinedScope {
631                tables: &joined_tables,
632                rowids: row,
633            };
634            let v = eval_expr_scope(&order.expr, &scope)?;
635            keys.push((i, v));
636        }
637        keys.sort_by(|(_, a), (_, b)| {
638            let ord = compare_values(Some(a), Some(b));
639            if order.ascending { ord } else { ord.reverse() }
640        });
641        let mut sorted = Vec::with_capacity(filtered.len());
642        for (i, _) in keys {
643            sorted.push(filtered[i].clone());
644        }
645        filtered = sorted;
646    }
647
648    // Stage 5: LIMIT.
649    if let Some(k) = query.limit {
650        filtered.truncate(k);
651    }
652
653    // Stage 6: project. For each row, evaluate every projection item
654    // through the joined scope.
655    let mut rows: Vec<Vec<Value>> = Vec::with_capacity(filtered.len());
656    for row in &filtered {
657        let scope = JoinedScope {
658            tables: &joined_tables,
659            rowids: row,
660        };
661        let mut out_row = Vec::with_capacity(proj_items.len());
662        for item in &proj_items {
663            let v = match &item.kind {
664                ProjectionKind::Column { qualifier, name } => {
665                    scope.lookup(qualifier.as_deref(), name)?
666                }
667                ProjectionKind::Aggregate(_) => {
668                    // SelectQuery::new already rejects this combination,
669                    // but defense in depth keeps the pattern match total.
670                    return Err(SQLRiteError::Internal(
671                        "aggregate functions over JOIN are not supported".to_string(),
672                    ));
673                }
674            };
675            out_row.push(v);
676        }
677        rows.push(out_row);
678    }
679
680    Ok(SelectResult { columns, rows })
681}
682
683/// Executes a SELECT and returns `(rendered_table, row_count)`. The
684/// REPL and Tauri app use this to keep the table-printing behaviour
685/// the engine has always shipped. Structured callers use
686/// `execute_select_rows` instead.
687pub fn execute_select(query: SelectQuery, db: &Database) -> Result<(String, usize)> {
688    let result = execute_select_rows(query, db)?;
689    let row_count = result.rows.len();
690
691    let mut print_table = PrintTable::new();
692    let header_cells: Vec<PrintCell> = result.columns.iter().map(|c| PrintCell::new(c)).collect();
693    print_table.add_row(PrintRow::new(header_cells));
694
695    for row in &result.rows {
696        let cells: Vec<PrintCell> = row
697            .iter()
698            .map(|v| PrintCell::new(&v.to_display_string()))
699            .collect();
700        print_table.add_row(PrintRow::new(cells));
701    }
702
703    Ok((print_table.to_string(), row_count))
704}
705
706/// Executes a DELETE statement. Returns the number of rows removed.
707pub fn execute_delete(stmt: &Statement, db: &mut Database) -> Result<usize> {
708    let Statement::Delete(Delete {
709        from, selection, ..
710    }) = stmt
711    else {
712        return Err(SQLRiteError::Internal(
713            "execute_delete called on a non-DELETE statement".to_string(),
714        ));
715    };
716
717    let tables = match from {
718        FromTable::WithFromKeyword(t) | FromTable::WithoutKeyword(t) => t,
719    };
720    let table_name = extract_single_table_name(tables)?;
721
722    // Compute matching rowids with an immutable borrow, then mutate.
723    let matching: Vec<i64> = {
724        let table = db
725            .get_table(table_name.clone())
726            .map_err(|_| SQLRiteError::Internal(format!("Table '{table_name}' not found")))?;
727        match select_rowids(table, selection.as_ref())? {
728            RowidSource::IndexProbe(rowids) => rowids,
729            RowidSource::FullScan => {
730                let mut out = Vec::new();
731                for rowid in table.rowids() {
732                    if let Some(expr) = selection {
733                        if !eval_predicate(expr, table, rowid)? {
734                            continue;
735                        }
736                    }
737                    out.push(rowid);
738                }
739                out
740            }
741        }
742    };
743
744    let table = db.get_table_mut(table_name)?;
745    for rowid in &matching {
746        table.delete_row(*rowid);
747    }
748    // Phase 7d.3 — any DELETE invalidates every HNSW index on this
749    // table (the deleted node could still appear in other nodes'
750    // neighbor lists, breaking subsequent searches). Mark dirty so
751    // the next save rebuilds from current rows before serializing.
752    //
753    // Phase 8b — same posture for FTS indexes (Q7 — rebuild-on-save
754    // mirrors HNSW). The deleted rowid still appears in posting
755    // lists; leaving it would surface zombie hits in future queries.
756    if !matching.is_empty() {
757        for entry in &mut table.hnsw_indexes {
758            entry.needs_rebuild = true;
759        }
760        for entry in &mut table.fts_indexes {
761            entry.needs_rebuild = true;
762        }
763    }
764    Ok(matching.len())
765}
766
767/// Executes an UPDATE statement. Returns the number of rows updated.
768pub fn execute_update(stmt: &Statement, db: &mut Database) -> Result<usize> {
769    let Statement::Update(Update {
770        table,
771        assignments,
772        from,
773        selection,
774        ..
775    }) = stmt
776    else {
777        return Err(SQLRiteError::Internal(
778            "execute_update called on a non-UPDATE statement".to_string(),
779        ));
780    };
781
782    if from.is_some() {
783        return Err(SQLRiteError::NotImplemented(
784            "UPDATE ... FROM is not supported yet".to_string(),
785        ));
786    }
787
788    let table_name = extract_table_name(table)?;
789
790    // Resolve assignment targets to plain column names and verify they exist.
791    let mut parsed_assignments: Vec<(String, Expr)> = Vec::with_capacity(assignments.len());
792    {
793        let tbl = db
794            .get_table(table_name.clone())
795            .map_err(|_| SQLRiteError::Internal(format!("Table '{table_name}' not found")))?;
796        for a in assignments {
797            let col = match &a.target {
798                AssignmentTarget::ColumnName(name) => name
799                    .0
800                    .last()
801                    .map(|p| p.to_string())
802                    .ok_or_else(|| SQLRiteError::Internal("empty column name".to_string()))?,
803                AssignmentTarget::Tuple(_) => {
804                    return Err(SQLRiteError::NotImplemented(
805                        "tuple assignment targets are not supported".to_string(),
806                    ));
807                }
808            };
809            if !tbl.contains_column(col.clone()) {
810                return Err(SQLRiteError::Internal(format!(
811                    "UPDATE references unknown column '{col}'"
812                )));
813            }
814            parsed_assignments.push((col, a.value.clone()));
815        }
816    }
817
818    // Gather matching rowids + the new values to write for each assignment, under
819    // an immutable borrow. Uses the index-probe fast path when the WHERE is
820    // `col = literal` on an indexed column.
821    let work: Vec<(i64, Vec<(String, Value)>)> = {
822        let tbl = db.get_table(table_name.clone())?;
823        let matched_rowids: Vec<i64> = match select_rowids(tbl, selection.as_ref())? {
824            RowidSource::IndexProbe(rowids) => rowids,
825            RowidSource::FullScan => {
826                let mut out = Vec::new();
827                for rowid in tbl.rowids() {
828                    if let Some(expr) = selection {
829                        if !eval_predicate(expr, tbl, rowid)? {
830                            continue;
831                        }
832                    }
833                    out.push(rowid);
834                }
835                out
836            }
837        };
838        let mut rows_to_update = Vec::new();
839        for rowid in matched_rowids {
840            let mut values = Vec::with_capacity(parsed_assignments.len());
841            for (col, expr) in &parsed_assignments {
842                // UPDATE's RHS is evaluated in the context of the row being updated,
843                // so column references on the right resolve to the current row's values.
844                let v = eval_expr(expr, tbl, rowid)?;
845                values.push((col.clone(), v));
846            }
847            rows_to_update.push((rowid, values));
848        }
849        rows_to_update
850    };
851
852    let tbl = db.get_table_mut(table_name)?;
853    for (rowid, values) in &work {
854        for (col, v) in values {
855            tbl.set_value(col, *rowid, v.clone())?;
856        }
857    }
858
859    // Phase 7d.3 — UPDATE may have changed a vector column that an
860    // HNSW index covers. Mark every covering index dirty so save
861    // rebuilds from current rows. (Updates that only touched
862    // non-vector columns also mark dirty, which is over-conservative
863    // but harmless — the rebuild walks rows anyway, and the cost is
864    // only paid on save.)
865    //
866    // Phase 8b — same shape for FTS indexes covering updated TEXT cols.
867    if !work.is_empty() {
868        let updated_columns: std::collections::HashSet<&str> = work
869            .iter()
870            .flat_map(|(_, values)| values.iter().map(|(c, _)| c.as_str()))
871            .collect();
872        for entry in &mut tbl.hnsw_indexes {
873            if updated_columns.contains(entry.column_name.as_str()) {
874                entry.needs_rebuild = true;
875            }
876        }
877        for entry in &mut tbl.fts_indexes {
878            if updated_columns.contains(entry.column_name.as_str()) {
879                entry.needs_rebuild = true;
880            }
881        }
882    }
883    Ok(work.len())
884}
885
886/// Handles `CREATE INDEX [UNIQUE] <name> ON <table> [USING <method>] (<column>)`.
887/// Single-column indexes only.
888///
889/// Two flavours, branching on the optional `USING <method>` clause:
890///   - **No USING, or `USING btree`**: regular B-Tree secondary index
891///     (Phase 3e). Indexable types: Integer, Text.
892///   - **`USING hnsw`**: HNSW ANN index (Phase 7d.2). Indexable types:
893///     Vector(N) only. Distance metric is L2 by default; cosine and
894///     dot variants are deferred to Phase 7d.x.
895///
896/// Returns the (possibly synthesized) index name for the status message.
897pub fn execute_create_index(stmt: &Statement, db: &mut Database) -> Result<String> {
898    let Statement::CreateIndex(CreateIndex {
899        name,
900        table_name,
901        columns,
902        using,
903        unique,
904        if_not_exists,
905        predicate,
906        ..
907    }) = stmt
908    else {
909        return Err(SQLRiteError::Internal(
910            "execute_create_index called on a non-CREATE-INDEX statement".to_string(),
911        ));
912    };
913
914    if predicate.is_some() {
915        return Err(SQLRiteError::NotImplemented(
916            "partial indexes (CREATE INDEX ... WHERE) are not supported yet".to_string(),
917        ));
918    }
919
920    if columns.len() != 1 {
921        return Err(SQLRiteError::NotImplemented(format!(
922            "multi-column indexes are not supported yet ({} columns given)",
923            columns.len()
924        )));
925    }
926
927    let index_name = name.as_ref().map(|n| n.to_string()).ok_or_else(|| {
928        SQLRiteError::NotImplemented(
929            "anonymous CREATE INDEX (no name) is not supported — give it a name".to_string(),
930        )
931    })?;
932
933    // Detect USING <method>. The `using` field on CreateIndex covers the
934    // pre-column form `CREATE INDEX … USING hnsw (col)`. (sqlparser also
935    // accepts a post-column form `… (col) USING hnsw` and parks that in
936    // `index_options`; we don't bother with it — the canonical form is
937    // pre-column and matches PG/pgvector convention.)
938    let method = match using {
939        Some(IndexType::Custom(ident)) if ident.value.eq_ignore_ascii_case("hnsw") => {
940            IndexMethod::Hnsw
941        }
942        Some(IndexType::Custom(ident)) if ident.value.eq_ignore_ascii_case("fts") => {
943            IndexMethod::Fts
944        }
945        Some(IndexType::Custom(ident)) if ident.value.eq_ignore_ascii_case("btree") => {
946            IndexMethod::Btree
947        }
948        Some(other) => {
949            return Err(SQLRiteError::NotImplemented(format!(
950                "CREATE INDEX … USING {other:?} is not supported \
951                 (try `hnsw`, `fts`, or no USING clause)"
952            )));
953        }
954        None => IndexMethod::Btree,
955    };
956
957    let table_name_str = table_name.to_string();
958    let column_name = match &columns[0].column.expr {
959        Expr::Identifier(ident) => ident.value.clone(),
960        Expr::CompoundIdentifier(parts) => parts
961            .last()
962            .map(|p| p.value.clone())
963            .ok_or_else(|| SQLRiteError::Internal("empty compound identifier".to_string()))?,
964        other => {
965            return Err(SQLRiteError::NotImplemented(format!(
966                "CREATE INDEX only supports simple column references, got {other:?}"
967            )));
968        }
969    };
970
971    // Validate: table exists, column exists, type matches the index method,
972    // name is unique across both index kinds. Snapshot (rowid, value) pairs
973    // up front under the immutable borrow so the mutable attach later
974    // doesn't fight over `self`.
975    let (datatype, existing_rowids_and_values): (DataType, Vec<(i64, Value)>) = {
976        let table = db.get_table(table_name_str.clone()).map_err(|_| {
977            SQLRiteError::General(format!(
978                "CREATE INDEX references unknown table '{table_name_str}'"
979            ))
980        })?;
981        if !table.contains_column(column_name.clone()) {
982            return Err(SQLRiteError::General(format!(
983                "CREATE INDEX references unknown column '{column_name}' on table '{table_name_str}'"
984            )));
985        }
986        let col = table
987            .columns
988            .iter()
989            .find(|c| c.column_name == column_name)
990            .expect("we just verified the column exists");
991
992        // Name uniqueness check spans ALL index kinds — btree, hnsw, and
993        // fts share one namespace per table.
994        if table.index_by_name(&index_name).is_some()
995            || table.hnsw_indexes.iter().any(|i| i.name == index_name)
996            || table.fts_indexes.iter().any(|i| i.name == index_name)
997        {
998            if *if_not_exists {
999                return Ok(index_name);
1000            }
1001            return Err(SQLRiteError::General(format!(
1002                "index '{index_name}' already exists"
1003            )));
1004        }
1005        let datatype = clone_datatype(&col.datatype);
1006
1007        let mut pairs = Vec::new();
1008        for rowid in table.rowids() {
1009            if let Some(v) = table.get_value(&column_name, rowid) {
1010                pairs.push((rowid, v));
1011            }
1012        }
1013        (datatype, pairs)
1014    };
1015
1016    match method {
1017        IndexMethod::Btree => create_btree_index(
1018            db,
1019            &table_name_str,
1020            &index_name,
1021            &column_name,
1022            &datatype,
1023            *unique,
1024            &existing_rowids_and_values,
1025        ),
1026        IndexMethod::Hnsw => create_hnsw_index(
1027            db,
1028            &table_name_str,
1029            &index_name,
1030            &column_name,
1031            &datatype,
1032            *unique,
1033            &existing_rowids_and_values,
1034        ),
1035        IndexMethod::Fts => create_fts_index(
1036            db,
1037            &table_name_str,
1038            &index_name,
1039            &column_name,
1040            &datatype,
1041            *unique,
1042            &existing_rowids_and_values,
1043        ),
1044    }
1045}
1046
1047/// Executes `DROP TABLE [IF EXISTS] <name>;`. Mirrors SQLite's single-target
1048/// shape: sqlparser parses `DROP TABLE a, b` as one statement with
1049/// `names: vec![a, b]`, but we reject the multi-target form to keep error
1050/// semantics simple (no partial-failure rollback).
1051///
1052/// On success the table — and every index attached to it — disappears from
1053/// the in-memory `Database`. The next auto-save rebuilds `sqlrite_master`
1054/// from scratch and simply doesn't write a row for the dropped table or
1055/// its indexes; pages previously occupied by them become orphans on disk
1056/// (no free-list yet — file size doesn't shrink until a future VACUUM).
1057pub fn execute_drop_table(
1058    names: &[ObjectName],
1059    if_exists: bool,
1060    db: &mut Database,
1061) -> Result<usize> {
1062    if names.len() != 1 {
1063        return Err(SQLRiteError::NotImplemented(
1064            "DROP TABLE supports a single table per statement".to_string(),
1065        ));
1066    }
1067    let name = names[0].to_string();
1068
1069    if name == crate::sql::pager::MASTER_TABLE_NAME {
1070        return Err(SQLRiteError::General(format!(
1071            "'{}' is a reserved name used by the internal schema catalog",
1072            crate::sql::pager::MASTER_TABLE_NAME
1073        )));
1074    }
1075
1076    if !db.contains_table(name.clone()) {
1077        return if if_exists {
1078            Ok(0)
1079        } else {
1080            Err(SQLRiteError::General(format!(
1081                "Table '{name}' does not exist"
1082            )))
1083        };
1084    }
1085
1086    db.tables.remove(&name);
1087    Ok(1)
1088}
1089
1090/// Executes `DROP INDEX [IF EXISTS] <name>;`. The statement does not name a
1091/// table, so we walk every table looking for the index across all three
1092/// index families (B-Tree secondary, HNSW, FTS).
1093///
1094/// Refuses to drop auto-indexes (`origin == IndexOrigin::Auto`) — those are
1095/// invariants of the table's PRIMARY KEY / UNIQUE constraints and should
1096/// only disappear when the column or table they depend on is dropped.
1097/// SQLite has the same rule for its `sqlite_autoindex_*` indexes.
1098pub fn execute_drop_index(
1099    names: &[ObjectName],
1100    if_exists: bool,
1101    db: &mut Database,
1102) -> Result<usize> {
1103    if names.len() != 1 {
1104        return Err(SQLRiteError::NotImplemented(
1105            "DROP INDEX supports a single index per statement".to_string(),
1106        ));
1107    }
1108    let name = names[0].to_string();
1109
1110    for table in db.tables.values_mut() {
1111        if let Some(secondary) = table.secondary_indexes.iter().find(|i| i.name == name) {
1112            if secondary.origin == IndexOrigin::Auto {
1113                return Err(SQLRiteError::General(format!(
1114                    "cannot drop auto-created index '{name}' (drop the column or table instead)"
1115                )));
1116            }
1117            table.secondary_indexes.retain(|i| i.name != name);
1118            return Ok(1);
1119        }
1120        if table.hnsw_indexes.iter().any(|i| i.name == name) {
1121            table.hnsw_indexes.retain(|i| i.name != name);
1122            return Ok(1);
1123        }
1124        if table.fts_indexes.iter().any(|i| i.name == name) {
1125            table.fts_indexes.retain(|i| i.name != name);
1126            return Ok(1);
1127        }
1128    }
1129
1130    if if_exists {
1131        Ok(0)
1132    } else {
1133        Err(SQLRiteError::General(format!(
1134            "Index '{name}' does not exist"
1135        )))
1136    }
1137}
1138
1139/// Executes `ALTER TABLE [IF EXISTS] <name> <op>;` for one operation per
1140/// statement. Supports four sub-operations matching SQLite:
1141///
1142///   - `RENAME TO <new>`
1143///   - `RENAME COLUMN <old> TO <new>`
1144///   - `ADD COLUMN <coldef>` (NOT NULL requires DEFAULT on a non-empty table;
1145///     PK / UNIQUE constraints rejected — would need backfill + uniqueness)
1146///   - `DROP COLUMN <name>` (refuses PK column and only-column)
1147///
1148/// Multi-operation ALTER (`ALTER TABLE foo RENAME TO bar, ADD COLUMN x ...`)
1149/// is rejected; SQLite forbids it too.
1150pub fn execute_alter_table(alter: AlterTable, db: &mut Database) -> Result<String> {
1151    let table_name = alter.name.to_string();
1152
1153    if table_name == crate::sql::pager::MASTER_TABLE_NAME {
1154        return Err(SQLRiteError::General(format!(
1155            "'{}' is a reserved name used by the internal schema catalog",
1156            crate::sql::pager::MASTER_TABLE_NAME
1157        )));
1158    }
1159
1160    if !db.contains_table(table_name.clone()) {
1161        return if alter.if_exists {
1162            Ok("ALTER TABLE: no-op (table does not exist)".to_string())
1163        } else {
1164            Err(SQLRiteError::General(format!(
1165                "Table '{table_name}' does not exist"
1166            )))
1167        };
1168    }
1169
1170    if alter.operations.len() != 1 {
1171        return Err(SQLRiteError::NotImplemented(
1172            "ALTER TABLE supports one operation per statement".to_string(),
1173        ));
1174    }
1175
1176    match &alter.operations[0] {
1177        AlterTableOperation::RenameTable { table_name: kind } => {
1178            let new_name = match kind {
1179                RenameTableNameKind::To(name) => name.to_string(),
1180                RenameTableNameKind::As(_) => {
1181                    return Err(SQLRiteError::NotImplemented(
1182                        "ALTER TABLE ... RENAME AS (MySQL-only) is not supported; use RENAME TO"
1183                            .to_string(),
1184                    ));
1185                }
1186            };
1187            alter_rename_table(db, &table_name, &new_name)?;
1188            Ok(format!(
1189                "ALTER TABLE '{table_name}' RENAME TO '{new_name}' executed."
1190            ))
1191        }
1192        AlterTableOperation::RenameColumn {
1193            old_column_name,
1194            new_column_name,
1195        } => {
1196            let old = old_column_name.value.clone();
1197            let new = new_column_name.value.clone();
1198            db.get_table_mut(table_name.clone())?
1199                .rename_column(&old, &new)?;
1200            Ok(format!(
1201                "ALTER TABLE '{table_name}' RENAME COLUMN '{old}' TO '{new}' executed."
1202            ))
1203        }
1204        AlterTableOperation::AddColumn {
1205            column_def,
1206            if_not_exists,
1207            ..
1208        } => {
1209            let parsed = crate::sql::parser::create::parse_one_column(column_def)?;
1210            let table = db.get_table_mut(table_name.clone())?;
1211            if *if_not_exists && table.contains_column(parsed.name.clone()) {
1212                return Ok(format!(
1213                    "ALTER TABLE '{table_name}' ADD COLUMN: no-op (column '{}' already exists)",
1214                    parsed.name
1215                ));
1216            }
1217            let col_name = parsed.name.clone();
1218            table.add_column(parsed)?;
1219            Ok(format!(
1220                "ALTER TABLE '{table_name}' ADD COLUMN '{col_name}' executed."
1221            ))
1222        }
1223        AlterTableOperation::DropColumn {
1224            column_names,
1225            if_exists,
1226            ..
1227        } => {
1228            if column_names.len() != 1 {
1229                return Err(SQLRiteError::NotImplemented(
1230                    "ALTER TABLE DROP COLUMN supports a single column per statement".to_string(),
1231                ));
1232            }
1233            let col_name = column_names[0].value.clone();
1234            let table = db.get_table_mut(table_name.clone())?;
1235            if *if_exists && !table.contains_column(col_name.clone()) {
1236                return Ok(format!(
1237                    "ALTER TABLE '{table_name}' DROP COLUMN: no-op (column '{col_name}' does not exist)"
1238                ));
1239            }
1240            table.drop_column(&col_name)?;
1241            Ok(format!(
1242                "ALTER TABLE '{table_name}' DROP COLUMN '{col_name}' executed."
1243            ))
1244        }
1245        other => Err(SQLRiteError::NotImplemented(format!(
1246            "ALTER TABLE operation {other:?} is not supported"
1247        ))),
1248    }
1249}
1250
1251/// Executes `VACUUM;` (SQLR-6). Compacts the database file: rewrites
1252/// every live table, index, and the catalog contiguously from page 1,
1253/// drops the freelist, and truncates the tail at the next checkpoint.
1254///
1255/// Refuses to run inside a transaction (would publish in-flight writes
1256/// out of band); refuses on read-only databases (handled upstream by
1257/// the read-only mutation gate); and is a no-op on in-memory databases
1258/// (no file to compact). Bare `VACUUM;` only — non-default options
1259/// (`FULL`, `REINDEX`, table targets, etc.) are rejected.
1260pub fn execute_vacuum(db: &mut Database) -> Result<String> {
1261    if db.in_transaction() {
1262        return Err(SQLRiteError::General(
1263            "VACUUM cannot run inside a transaction".to_string(),
1264        ));
1265    }
1266    let path = match db.source_path.clone() {
1267        Some(p) => p,
1268        None => {
1269            return Ok("VACUUM is a no-op for in-memory databases".to_string());
1270        }
1271    };
1272    // Checkpoint before AND after VACUUM so the main-file size we report
1273    // reflects only what VACUUM actually reclaimed — without the leading
1274    // checkpoint, `size_before` would be the stale main-file snapshot
1275    // (typically 2 pages) while WAL holds the live bytes, making the
1276    // bytes-reclaimed delta meaningless.
1277    if let Some(pager) = db.pager.as_mut() {
1278        let _ = pager.checkpoint();
1279    }
1280    let size_before = std::fs::metadata(&path).ok().map(|m| m.len()).unwrap_or(0);
1281    let pages_before = db
1282        .pager
1283        .as_ref()
1284        .map(|p| p.header().page_count)
1285        .unwrap_or(0);
1286    crate::sql::pager::vacuum_database(db, &path)?;
1287    // Second checkpoint so the main file shrinks now — VACUUM's whole
1288    // purpose is to reclaim bytes, so paying the I/O up front is fair.
1289    if let Some(pager) = db.pager.as_mut() {
1290        let _ = pager.checkpoint();
1291    }
1292    let size_after = std::fs::metadata(&path).ok().map(|m| m.len()).unwrap_or(0);
1293    let pages_after = db
1294        .pager
1295        .as_ref()
1296        .map(|p| p.header().page_count)
1297        .unwrap_or(0);
1298    let pages_reclaimed = pages_before.saturating_sub(pages_after);
1299    let bytes_reclaimed = size_before.saturating_sub(size_after);
1300    Ok(format!(
1301        "VACUUM completed. {pages_reclaimed} pages reclaimed ({bytes_reclaimed} bytes)."
1302    ))
1303}
1304
1305/// Renames a table in `db.tables`. Updates `tb_name`, every secondary
1306/// index's `table_name` field, and any auto-index whose name embedded
1307/// the old table name. HNSW / FTS index entries don't carry a
1308/// `table_name` field — they're addressed implicitly via the `Table`
1309/// they live inside, so they move with the rename for free.
1310fn alter_rename_table(db: &mut Database, old: &str, new: &str) -> Result<()> {
1311    if new == crate::sql::pager::MASTER_TABLE_NAME {
1312        return Err(SQLRiteError::General(format!(
1313            "'{}' is a reserved name used by the internal schema catalog",
1314            crate::sql::pager::MASTER_TABLE_NAME
1315        )));
1316    }
1317    if old == new {
1318        return Ok(());
1319    }
1320    if db.contains_table(new.to_string()) {
1321        return Err(SQLRiteError::General(format!(
1322            "target table '{new}' already exists"
1323        )));
1324    }
1325
1326    let mut table = db
1327        .tables
1328        .remove(old)
1329        .ok_or_else(|| SQLRiteError::General(format!("Table '{old}' does not exist")))?;
1330    table.tb_name = new.to_string();
1331    for idx in table.secondary_indexes.iter_mut() {
1332        idx.table_name = new.to_string();
1333        if idx.origin == IndexOrigin::Auto
1334            && idx.name == SecondaryIndex::auto_name(old, &idx.column_name)
1335        {
1336            idx.name = SecondaryIndex::auto_name(new, &idx.column_name);
1337        }
1338    }
1339    db.tables.insert(new.to_string(), table);
1340    Ok(())
1341}
1342
1343/// `USING <method>` choices recognized by `execute_create_index`. A
1344/// missing USING clause defaults to `Btree` so existing CREATE INDEX
1345/// statements (Phase 3e) keep working unchanged.
1346#[derive(Debug, Clone, Copy)]
1347enum IndexMethod {
1348    Btree,
1349    Hnsw,
1350    /// Phase 8b — full-text inverted index over a TEXT column.
1351    Fts,
1352}
1353
1354/// Builds a Phase 3e B-Tree secondary index and attaches it to the table.
1355fn create_btree_index(
1356    db: &mut Database,
1357    table_name: &str,
1358    index_name: &str,
1359    column_name: &str,
1360    datatype: &DataType,
1361    unique: bool,
1362    existing: &[(i64, Value)],
1363) -> Result<String> {
1364    let mut idx = SecondaryIndex::new(
1365        index_name.to_string(),
1366        table_name.to_string(),
1367        column_name.to_string(),
1368        datatype,
1369        unique,
1370        IndexOrigin::Explicit,
1371    )?;
1372
1373    // Populate from existing rows. UNIQUE violations here mean the
1374    // existing data already breaks the new index's constraint — a
1375    // common source of user confusion, so be explicit.
1376    for (rowid, v) in existing {
1377        if unique && idx.would_violate_unique(v) {
1378            return Err(SQLRiteError::General(format!(
1379                "cannot create UNIQUE index '{index_name}': column '{column_name}' \
1380                 already contains the duplicate value {}",
1381                v.to_display_string()
1382            )));
1383        }
1384        idx.insert(v, *rowid)?;
1385    }
1386
1387    let table_mut = db.get_table_mut(table_name.to_string())?;
1388    table_mut.secondary_indexes.push(idx);
1389    Ok(index_name.to_string())
1390}
1391
1392/// Builds a Phase 7d.2 HNSW index and attaches it to the table.
1393fn create_hnsw_index(
1394    db: &mut Database,
1395    table_name: &str,
1396    index_name: &str,
1397    column_name: &str,
1398    datatype: &DataType,
1399    unique: bool,
1400    existing: &[(i64, Value)],
1401) -> Result<String> {
1402    // HNSW only makes sense on VECTOR columns. Reject anything else
1403    // with a clear message — this is the most likely user error.
1404    let dim = match datatype {
1405        DataType::Vector(d) => *d,
1406        other => {
1407            return Err(SQLRiteError::General(format!(
1408                "USING hnsw requires a VECTOR column; '{column_name}' is {other}"
1409            )));
1410        }
1411    };
1412
1413    if unique {
1414        return Err(SQLRiteError::General(
1415            "UNIQUE has no meaning for HNSW indexes".to_string(),
1416        ));
1417    }
1418
1419    // Build the in-memory graph. Distance metric is L2 by default
1420    // (Phase 7d.2 doesn't yet expose a knob for picking cosine/dot —
1421    // see `docs/phase-7-plan.md` for the deferral).
1422    //
1423    // Seed: hash the index name so different indexes get different
1424    // graph topologies, but the same index always gets the same one
1425    // — useful when debugging recall / index size.
1426    let seed = hash_str_to_seed(index_name);
1427    let mut idx = HnswIndex::new(DistanceMetric::L2, seed);
1428
1429    // Snapshot the (rowid, vector) pairs into a side map so the
1430    // get_vec closure below can serve them by id without re-borrowing
1431    // the table (we're already holding `existing` — flatten it).
1432    let mut vec_map: std::collections::HashMap<i64, Vec<f32>> =
1433        std::collections::HashMap::with_capacity(existing.len());
1434    for (rowid, v) in existing {
1435        match v {
1436            Value::Vector(vec) => {
1437                if vec.len() != dim {
1438                    return Err(SQLRiteError::Internal(format!(
1439                        "row {rowid} stores a {}-dim vector in column '{column_name}' \
1440                         declared as VECTOR({dim}) — schema invariant violated",
1441                        vec.len()
1442                    )));
1443                }
1444                vec_map.insert(*rowid, vec.clone());
1445            }
1446            // Non-vector values (theoretical NULL, type coercion bug)
1447            // get skipped — they wouldn't have a sensible graph
1448            // position anyway.
1449            _ => continue,
1450        }
1451    }
1452
1453    for (rowid, _) in existing {
1454        if let Some(v) = vec_map.get(rowid) {
1455            let v_clone = v.clone();
1456            idx.insert(*rowid, &v_clone, |id| {
1457                vec_map.get(&id).cloned().unwrap_or_default()
1458            });
1459        }
1460    }
1461
1462    let table_mut = db.get_table_mut(table_name.to_string())?;
1463    table_mut.hnsw_indexes.push(HnswIndexEntry {
1464        name: index_name.to_string(),
1465        column_name: column_name.to_string(),
1466        index: idx,
1467        // Freshly built — no DELETE/UPDATE has invalidated it yet.
1468        needs_rebuild: false,
1469    });
1470    Ok(index_name.to_string())
1471}
1472
1473/// Builds a Phase 8b FTS inverted index and attaches it to the table.
1474/// Mirrors [`create_hnsw_index`] in shape: validate column type,
1475/// tokenize each existing row's text into the in-memory posting list,
1476/// push an `FtsIndexEntry`.
1477fn create_fts_index(
1478    db: &mut Database,
1479    table_name: &str,
1480    index_name: &str,
1481    column_name: &str,
1482    datatype: &DataType,
1483    unique: bool,
1484    existing: &[(i64, Value)],
1485) -> Result<String> {
1486    // FTS is a TEXT-only feature for the MVP. JSON columns share the
1487    // Row::Text storage but their content is structured — full-text
1488    // indexing JSON keys + values would need a different design (and
1489    // is out of scope per the Phase 8 plan's "Out of scope" section).
1490    match datatype {
1491        DataType::Text => {}
1492        other => {
1493            return Err(SQLRiteError::General(format!(
1494                "USING fts requires a TEXT column; '{column_name}' is {other}"
1495            )));
1496        }
1497    }
1498
1499    if unique {
1500        return Err(SQLRiteError::General(
1501            "UNIQUE has no meaning for FTS indexes".to_string(),
1502        ));
1503    }
1504
1505    let mut idx = PostingList::new();
1506    for (rowid, v) in existing {
1507        if let Value::Text(text) = v {
1508            idx.insert(*rowid, text);
1509        }
1510        // Non-text values (Null, type coercion bugs) get skipped — same
1511        // posture as create_hnsw_index for non-vector values.
1512    }
1513
1514    let table_mut = db.get_table_mut(table_name.to_string())?;
1515    table_mut.fts_indexes.push(FtsIndexEntry {
1516        name: index_name.to_string(),
1517        column_name: column_name.to_string(),
1518        index: idx,
1519        needs_rebuild: false,
1520    });
1521    Ok(index_name.to_string())
1522}
1523
1524/// Stable, deterministic hash of a string into a u64 RNG seed. FNV-1a;
1525/// avoids pulling in `std::hash::DefaultHasher` (which is randomized
1526/// per process).
1527fn hash_str_to_seed(s: &str) -> u64 {
1528    let mut h: u64 = 0xCBF29CE484222325;
1529    for b in s.as_bytes() {
1530        h ^= *b as u64;
1531        h = h.wrapping_mul(0x100000001B3);
1532    }
1533    h
1534}
1535
1536/// Cheap clone helper — `DataType` intentionally doesn't derive `Clone`
1537/// because the enum has no ergonomic reason to be cloneable elsewhere.
1538fn clone_datatype(dt: &DataType) -> DataType {
1539    match dt {
1540        DataType::Integer => DataType::Integer,
1541        DataType::Text => DataType::Text,
1542        DataType::Real => DataType::Real,
1543        DataType::Bool => DataType::Bool,
1544        DataType::Vector(dim) => DataType::Vector(*dim),
1545        DataType::Json => DataType::Json,
1546        DataType::None => DataType::None,
1547        DataType::Invalid => DataType::Invalid,
1548    }
1549}
1550
1551fn extract_single_table_name(tables: &[TableWithJoins]) -> Result<String> {
1552    if tables.len() != 1 {
1553        return Err(SQLRiteError::NotImplemented(
1554            "multi-table DELETE is not supported yet".to_string(),
1555        ));
1556    }
1557    extract_table_name(&tables[0])
1558}
1559
1560fn extract_table_name(twj: &TableWithJoins) -> Result<String> {
1561    if !twj.joins.is_empty() {
1562        return Err(SQLRiteError::NotImplemented(
1563            "JOIN is not supported yet".to_string(),
1564        ));
1565    }
1566    match &twj.relation {
1567        TableFactor::Table { name, .. } => Ok(name.to_string()),
1568        _ => Err(SQLRiteError::NotImplemented(
1569            "only plain table references are supported".to_string(),
1570        )),
1571    }
1572}
1573
1574/// Tells the executor how to produce its candidate rowid list.
1575enum RowidSource {
1576    /// The WHERE was simple enough to probe a secondary index directly.
1577    /// The `Vec` already contains exactly the rows the index matched;
1578    /// no further WHERE evaluation is needed (the probe is precise).
1579    IndexProbe(Vec<i64>),
1580    /// No applicable index; caller falls back to walking `table.rowids()`
1581    /// and evaluating the WHERE on each row.
1582    FullScan,
1583}
1584
1585/// Try to satisfy `WHERE` with an index probe. Currently supports the
1586/// simplest shape: a single `col = literal` (or `literal = col`) where
1587/// `col` is on a secondary index. AND/OR/range predicates fall back to
1588/// full scan — those can be layered on later without changing the caller.
1589fn select_rowids(table: &Table, selection: Option<&Expr>) -> Result<RowidSource> {
1590    let Some(expr) = selection else {
1591        return Ok(RowidSource::FullScan);
1592    };
1593    let Some((col, literal)) = try_extract_equality(expr) else {
1594        return Ok(RowidSource::FullScan);
1595    };
1596    let Some(idx) = table.index_for_column(&col) else {
1597        return Ok(RowidSource::FullScan);
1598    };
1599
1600    // Convert the literal into a runtime Value. If the literal type doesn't
1601    // match the column's index we still need correct semantics — evaluate
1602    // the WHERE against every row. Fall back to full scan.
1603    let literal_value = match convert_literal(&literal) {
1604        Ok(v) => v,
1605        Err(_) => return Ok(RowidSource::FullScan),
1606    };
1607
1608    // Index lookup returns the full list of rowids matching this equality
1609    // predicate. For unique indexes that's at most one; for non-unique it
1610    // can be many.
1611    let mut rowids = idx.lookup(&literal_value);
1612    rowids.sort_unstable();
1613    Ok(RowidSource::IndexProbe(rowids))
1614}
1615
1616/// Recognizes `expr` as a simple equality on a column reference against a
1617/// literal. Returns `(column_name, literal_value)` if the shape matches;
1618/// `None` otherwise. Accepts both `col = literal` and `literal = col`.
1619fn try_extract_equality(expr: &Expr) -> Option<(String, sqlparser::ast::Value)> {
1620    // Peel off Nested parens so `WHERE (x = 1)` is recognized too.
1621    let peeled = match expr {
1622        Expr::Nested(inner) => inner.as_ref(),
1623        other => other,
1624    };
1625    let Expr::BinaryOp { left, op, right } = peeled else {
1626        return None;
1627    };
1628    if !matches!(op, BinaryOperator::Eq) {
1629        return None;
1630    }
1631    let col_from = |e: &Expr| -> Option<String> {
1632        match e {
1633            Expr::Identifier(ident) => Some(ident.value.clone()),
1634            Expr::CompoundIdentifier(parts) => parts.last().map(|p| p.value.clone()),
1635            _ => None,
1636        }
1637    };
1638    let literal_from = |e: &Expr| -> Option<sqlparser::ast::Value> {
1639        if let Expr::Value(v) = e {
1640            Some(v.value.clone())
1641        } else {
1642            None
1643        }
1644    };
1645    if let (Some(c), Some(l)) = (col_from(left), literal_from(right)) {
1646        return Some((c, l));
1647    }
1648    if let (Some(l), Some(c)) = (literal_from(left), col_from(right)) {
1649        return Some((c, l));
1650    }
1651    None
1652}
1653
1654/// Recognizes the HNSW-probable query pattern and probes the graph
1655/// if a matching index exists.
1656///
1657/// Looks for ORDER BY `vec_distance_l2(<col>, <bracket-array literal>)`
1658/// where the table has an HNSW index attached to `<col>`. On a match,
1659/// returns the top-k rowids straight from the graph (O(log N)). On
1660/// any miss — different function name, no matching index, query
1661/// dimension wrong, etc. — returns `None` and the caller falls through
1662/// to the bounded-heap brute-force path (7c) or the full sort (7b),
1663/// preserving correct results regardless of whether the HNSW pathway
1664/// kicked in.
1665///
1666/// Phase 7d.2 caveats:
1667/// - Only `vec_distance_l2` is recognized. Cosine and dot fall through
1668///   to brute-force because we don't yet expose a per-index distance
1669///   knob (deferred to Phase 7d.x — see `docs/phase-7-plan.md`).
1670/// - Only ASCENDING order makes sense for "k nearest" — DESC ORDER BY
1671///   `vec_distance_l2(...) LIMIT k` would mean "k farthest", which
1672///   isn't what the index is built for. We don't bother to detect
1673///   `ascending == false` here; the optimizer just skips and the
1674///   fallback path handles it correctly (slower).
1675fn try_hnsw_probe(table: &Table, order_expr: &Expr, k: usize) -> Option<Vec<i64>> {
1676    if k == 0 {
1677        return None;
1678    }
1679
1680    // Pattern-match: order expr must be a function call vec_distance_l2(a, b).
1681    let func = match order_expr {
1682        Expr::Function(f) => f,
1683        _ => return None,
1684    };
1685    let fname = match func.name.0.as_slice() {
1686        [ObjectNamePart::Identifier(ident)] => ident.value.to_lowercase(),
1687        _ => return None,
1688    };
1689    if fname != "vec_distance_l2" {
1690        return None;
1691    }
1692
1693    // Extract the two args as raw Exprs.
1694    let arg_list = match &func.args {
1695        FunctionArguments::List(l) => &l.args,
1696        _ => return None,
1697    };
1698    if arg_list.len() != 2 {
1699        return None;
1700    }
1701    let exprs: Vec<&Expr> = arg_list
1702        .iter()
1703        .filter_map(|a| match a {
1704            FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => Some(e),
1705            _ => None,
1706        })
1707        .collect();
1708    if exprs.len() != 2 {
1709        return None;
1710    }
1711
1712    // One arg must be a column reference (the indexed col); the other
1713    // must be a bracket-array literal (the query vector). Try both
1714    // orderings — pgvector's idiom puts the column on the left, but
1715    // SQL is commutative for distance.
1716    let (col_name, query_vec) = match identify_indexed_arg_and_literal(exprs[0], exprs[1]) {
1717        Some(v) => v,
1718        None => match identify_indexed_arg_and_literal(exprs[1], exprs[0]) {
1719            Some(v) => v,
1720            None => return None,
1721        },
1722    };
1723
1724    // Find the HNSW index on this column.
1725    let entry = table
1726        .hnsw_indexes
1727        .iter()
1728        .find(|e| e.column_name == col_name)?;
1729
1730    // Dimension sanity check — the query vector must match the
1731    // indexed column's declared dimension. If it doesn't, the brute-
1732    // force fallback would also error at the vec_distance_l2 dim-check;
1733    // returning None here lets that path produce the user-visible
1734    // error message.
1735    let declared_dim = match table.columns.iter().find(|c| c.column_name == col_name) {
1736        Some(c) => match &c.datatype {
1737            DataType::Vector(d) => *d,
1738            _ => return None,
1739        },
1740        None => return None,
1741    };
1742    if query_vec.len() != declared_dim {
1743        return None;
1744    }
1745
1746    // Probe the graph. Vectors are looked up from the table's row
1747    // storage — a closure rather than a `&Table` so the algorithm
1748    // module stays decoupled from the SQL types.
1749    let column_for_closure = col_name.clone();
1750    let table_ref = table;
1751    let result = entry.index.search(&query_vec, k, |id| {
1752        match table_ref.get_value(&column_for_closure, id) {
1753            Some(Value::Vector(v)) => v,
1754            _ => Vec::new(),
1755        }
1756    });
1757    Some(result)
1758}
1759
1760/// Phase 8b — FTS optimizer hook.
1761///
1762/// Recognizes `ORDER BY bm25_score(<col>, '<query>') DESC LIMIT <k>`
1763/// and serves it from the FTS index instead of full-scanning. Returns
1764/// `Some(rowids)` already sorted by descending BM25 (with rowid
1765/// ascending as tie-break), or `None` to fall through to scalar eval.
1766///
1767/// **Known limitation (mirrors `try_hnsw_probe`).** This shortcut
1768/// ignores any `WHERE` clause. The canonical FTS query has a
1769/// `WHERE fts_match(<col>, '<q>')` predicate, which is implicitly
1770/// satisfied by the probe results — so dropping it is harmless.
1771/// Anything *else* in the WHERE (`AND status = 'published'`) gets
1772/// silently skipped on the optimizer path. Per Phase 8 plan Q6 we
1773/// match HNSW's posture here; a correctness-preserving multi-index
1774/// composer is deferred.
1775fn try_fts_probe(table: &Table, order_expr: &Expr, ascending: bool, k: usize) -> Option<Vec<i64>> {
1776    if k == 0 || ascending {
1777        // BM25 is "higher = better"; ASC ranking is almost certainly a
1778        // user mistake. Fall through so the caller gets either an
1779        // explicit error from scalar eval or the slow correct path.
1780        return None;
1781    }
1782
1783    let func = match order_expr {
1784        Expr::Function(f) => f,
1785        _ => return None,
1786    };
1787    let fname = match func.name.0.as_slice() {
1788        [ObjectNamePart::Identifier(ident)] => ident.value.to_lowercase(),
1789        _ => return None,
1790    };
1791    if fname != "bm25_score" {
1792        return None;
1793    }
1794
1795    let arg_list = match &func.args {
1796        FunctionArguments::List(l) => &l.args,
1797        _ => return None,
1798    };
1799    if arg_list.len() != 2 {
1800        return None;
1801    }
1802    let exprs: Vec<&Expr> = arg_list
1803        .iter()
1804        .filter_map(|a| match a {
1805            FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => Some(e),
1806            _ => None,
1807        })
1808        .collect();
1809    if exprs.len() != 2 {
1810        return None;
1811    }
1812
1813    // Arg 0 must be a bare column identifier.
1814    let col_name = match exprs[0] {
1815        Expr::Identifier(ident) if ident.quote_style.is_none() => ident.value.clone(),
1816        _ => return None,
1817    };
1818
1819    // Arg 1 must be a single-quoted string literal. Anything else
1820    // (column reference, function call) requires per-row evaluation —
1821    // we'd lose the whole point of the probe.
1822    let query = match exprs[1] {
1823        Expr::Value(v) => match &v.value {
1824            AstValue::SingleQuotedString(s) => s.clone(),
1825            _ => return None,
1826        },
1827        _ => return None,
1828    };
1829
1830    let entry = table
1831        .fts_indexes
1832        .iter()
1833        .find(|e| e.column_name == col_name)?;
1834
1835    let scored = entry.index.query(&query, &Bm25Params::default());
1836    let mut out: Vec<i64> = scored.into_iter().map(|(id, _)| id).collect();
1837    if out.len() > k {
1838        out.truncate(k);
1839    }
1840    Some(out)
1841}
1842
1843/// Helper for `try_hnsw_probe`: given two function args, identify which
1844/// one is a bare column identifier (the indexed column) and which is a
1845/// bracket-array literal (the query vector). Returns
1846/// `Some((column_name, query_vec))` on a match, `None` otherwise.
1847fn identify_indexed_arg_and_literal(a: &Expr, b: &Expr) -> Option<(String, Vec<f32>)> {
1848    let col_name = match a {
1849        Expr::Identifier(ident) if ident.quote_style.is_none() => ident.value.clone(),
1850        _ => return None,
1851    };
1852    let lit_str = match b {
1853        Expr::Identifier(ident) if ident.quote_style == Some('[') => {
1854            format!("[{}]", ident.value)
1855        }
1856        _ => return None,
1857    };
1858    let v = parse_vector_literal(&lit_str).ok()?;
1859    Some((col_name, v))
1860}
1861
1862/// One entry in the bounded-heap top-k path. Holds a pre-evaluated
1863/// sort key + the rowid it came from. The `asc` flag inverts `Ord`
1864/// so a single `BinaryHeap<HeapEntry>` works for both ASC and DESC
1865/// without wrapping in `std::cmp::Reverse` at the call site:
1866///
1867///   - ASC LIMIT k = "k smallest": natural Ord. Max-heap top is the
1868///     largest currently kept; new items smaller than top displace.
1869///   - DESC LIMIT k = "k largest": Ord reversed. Max-heap top is now
1870///     the smallest currently kept (under reversed Ord, smallest
1871///     looks largest); new items larger than top displace.
1872///
1873/// In both cases the displacement test reduces to "new entry < heap top".
1874struct HeapEntry {
1875    key: Value,
1876    rowid: i64,
1877    asc: bool,
1878}
1879
1880impl PartialEq for HeapEntry {
1881    fn eq(&self, other: &Self) -> bool {
1882        self.cmp(other) == Ordering::Equal
1883    }
1884}
1885
1886impl Eq for HeapEntry {}
1887
1888impl PartialOrd for HeapEntry {
1889    fn partial_cmp(&self, other: &Self) -> Option<Ordering> {
1890        Some(self.cmp(other))
1891    }
1892}
1893
1894impl Ord for HeapEntry {
1895    fn cmp(&self, other: &Self) -> Ordering {
1896        let raw = compare_values(Some(&self.key), Some(&other.key));
1897        if self.asc { raw } else { raw.reverse() }
1898    }
1899}
1900
1901/// Bounded-heap top-k selection. Returns at most `k` rowids in the
1902/// caller's desired order (ascending key for `order.ascending`,
1903/// descending otherwise).
1904///
1905/// O(N log k) where N = `matching.len()`. Caller must check
1906/// `k < matching.len()` for this to be a win — for k ≥ N the
1907/// `sort_rowids` full-sort path is the same asymptotic cost without
1908/// the heap overhead.
1909fn select_topk(
1910    matching: &[i64],
1911    table: &Table,
1912    order: &OrderByClause,
1913    k: usize,
1914) -> Result<Vec<i64>> {
1915    use std::collections::BinaryHeap;
1916
1917    if k == 0 || matching.is_empty() {
1918        return Ok(Vec::new());
1919    }
1920
1921    let mut heap: BinaryHeap<HeapEntry> = BinaryHeap::with_capacity(k + 1);
1922
1923    for &rowid in matching {
1924        let key = eval_expr(&order.expr, table, rowid)?;
1925        let entry = HeapEntry {
1926            key,
1927            rowid,
1928            asc: order.ascending,
1929        };
1930
1931        if heap.len() < k {
1932            heap.push(entry);
1933        } else {
1934            // peek() returns the largest under our direction-aware Ord
1935            // — the worst entry currently kept. Displace it iff the
1936            // new entry is "better" (i.e. compares Less).
1937            if entry < *heap.peek().unwrap() {
1938                heap.pop();
1939                heap.push(entry);
1940            }
1941        }
1942    }
1943
1944    // `into_sorted_vec` returns ascending under our direction-aware Ord:
1945    //   ASC: ascending by raw key (what we want)
1946    //   DESC: ascending under reversed Ord = descending by raw key (what
1947    //         we want for an ORDER BY DESC LIMIT k result)
1948    Ok(heap
1949        .into_sorted_vec()
1950        .into_iter()
1951        .map(|e| e.rowid)
1952        .collect())
1953}
1954
1955fn sort_rowids(rowids: &mut [i64], table: &Table, order: &OrderByClause) -> Result<()> {
1956    // Phase 7b: ORDER BY now accepts any expression (column ref,
1957    // arithmetic, function call, …). Pre-compute the sort key for
1958    // every rowid up front so the comparator is called O(N log N)
1959    // times against pre-evaluated Values rather than re-evaluating
1960    // the expression O(N log N) times. Not strictly necessary today,
1961    // but vital once 7d's HNSW index lands and this same code path
1962    // could be running tens of millions of distance computations.
1963    let mut keys: Vec<(i64, Result<Value>)> = rowids
1964        .iter()
1965        .map(|r| (*r, eval_expr(&order.expr, table, *r)))
1966        .collect();
1967
1968    // Surface the FIRST evaluation error if any. We could be lazy
1969    // and let sort_by encounter it, but `Ord::cmp` can't return a
1970    // Result and we'd have to swallow errors silently.
1971    for (_, k) in &keys {
1972        if let Err(e) = k {
1973            return Err(SQLRiteError::General(format!(
1974                "ORDER BY expression failed: {e}"
1975            )));
1976        }
1977    }
1978
1979    keys.sort_by(|(_, ka), (_, kb)| {
1980        // Both unwrap()s are safe — we just verified above that
1981        // every key Result is Ok.
1982        let va = ka.as_ref().unwrap();
1983        let vb = kb.as_ref().unwrap();
1984        let ord = compare_values(Some(va), Some(vb));
1985        if order.ascending { ord } else { ord.reverse() }
1986    });
1987
1988    // Write the sorted rowids back into the caller's slice.
1989    for (i, (rowid, _)) in keys.into_iter().enumerate() {
1990        rowids[i] = rowid;
1991    }
1992    Ok(())
1993}
1994
1995fn compare_values(a: Option<&Value>, b: Option<&Value>) -> Ordering {
1996    match (a, b) {
1997        (None, None) => Ordering::Equal,
1998        (None, _) => Ordering::Less,
1999        (_, None) => Ordering::Greater,
2000        (Some(a), Some(b)) => match (a, b) {
2001            (Value::Null, Value::Null) => Ordering::Equal,
2002            (Value::Null, _) => Ordering::Less,
2003            (_, Value::Null) => Ordering::Greater,
2004            (Value::Integer(x), Value::Integer(y)) => x.cmp(y),
2005            (Value::Real(x), Value::Real(y)) => x.partial_cmp(y).unwrap_or(Ordering::Equal),
2006            (Value::Integer(x), Value::Real(y)) => {
2007                (*x as f64).partial_cmp(y).unwrap_or(Ordering::Equal)
2008            }
2009            (Value::Real(x), Value::Integer(y)) => {
2010                x.partial_cmp(&(*y as f64)).unwrap_or(Ordering::Equal)
2011            }
2012            (Value::Text(x), Value::Text(y)) => x.cmp(y),
2013            (Value::Bool(x), Value::Bool(y)) => x.cmp(y),
2014            // Cross-type fallback: stringify and compare; keeps ORDER BY total.
2015            (x, y) => x.to_display_string().cmp(&y.to_display_string()),
2016        },
2017    }
2018}
2019
2020/// Returns `true` if the row at `rowid` matches the predicate expression.
2021pub fn eval_predicate(expr: &Expr, table: &Table, rowid: i64) -> Result<bool> {
2022    eval_predicate_scope(expr, &SingleTableScope::new(table, rowid))
2023}
2024
2025/// Scope-aware predicate evaluation. The single-table fast path wraps
2026/// this with a [`SingleTableScope`]; the join executor wraps it with
2027/// a [`JoinedScope`].
2028pub(crate) fn eval_predicate_scope(expr: &Expr, scope: &dyn RowScope) -> Result<bool> {
2029    let v = eval_expr_scope(expr, scope)?;
2030    match v {
2031        Value::Bool(b) => Ok(b),
2032        Value::Null => Ok(false), // SQL NULL in a WHERE is treated as false
2033        Value::Integer(i) => Ok(i != 0),
2034        other => Err(SQLRiteError::Internal(format!(
2035            "WHERE clause must evaluate to boolean, got {}",
2036            other.to_display_string()
2037        ))),
2038    }
2039}
2040
2041/// Single-table convenience wrapper around [`eval_expr_scope`].
2042fn eval_expr(expr: &Expr, table: &Table, rowid: i64) -> Result<Value> {
2043    eval_expr_scope(expr, &SingleTableScope::new(table, rowid))
2044}
2045
2046fn eval_expr_scope(expr: &Expr, scope: &dyn RowScope) -> Result<Value> {
2047    match expr {
2048        Expr::Nested(inner) => eval_expr_scope(inner, scope),
2049
2050        Expr::Identifier(ident) => {
2051            // Phase 7b — sqlparser parses bracket-array literals like
2052            // `[0.1, 0.2, 0.3]` as bracket-quoted identifiers (it inherits
2053            // MSSQL `[name]` syntax). When we see `quote_style == Some('[')`
2054            // in expression-evaluation position (SELECT projection, WHERE,
2055            // ORDER BY, function args), parse the bracketed content as a
2056            // vector literal so the rest of the executor can compare /
2057            // distance-compute against it. Same trick the INSERT parser
2058            // uses; the executor needed its own copy because expression
2059            // eval runs on a different code path.
2060            if ident.quote_style == Some('[') {
2061                let raw = format!("[{}]", ident.value);
2062                let v = parse_vector_literal(&raw)?;
2063                return Ok(Value::Vector(v));
2064            }
2065            scope.lookup(None, &ident.value)
2066        }
2067
2068        Expr::CompoundIdentifier(parts) => {
2069            // `qualifier.col` — single-table scope ignores the qualifier
2070            // (legacy behavior). Joined scope dispatches to the table
2071            // matching `qualifier`. The compound form must have at
2072            // least two parts; deeper paths (`db.schema.t.col`) are
2073            // not supported.
2074            match parts.as_slice() {
2075                [only] => scope.lookup(None, &only.value),
2076                [q, c] => scope.lookup(Some(&q.value), &c.value),
2077                _ => Err(SQLRiteError::NotImplemented(format!(
2078                    "compound identifier with {} parts is not supported",
2079                    parts.len()
2080                ))),
2081            }
2082        }
2083
2084        Expr::Value(v) => convert_literal(&v.value),
2085
2086        Expr::UnaryOp { op, expr } => {
2087            let inner = eval_expr_scope(expr, scope)?;
2088            match op {
2089                UnaryOperator::Not => match inner {
2090                    Value::Bool(b) => Ok(Value::Bool(!b)),
2091                    Value::Null => Ok(Value::Null),
2092                    other => Err(SQLRiteError::Internal(format!(
2093                        "NOT applied to non-boolean value: {}",
2094                        other.to_display_string()
2095                    ))),
2096                },
2097                UnaryOperator::Minus => match inner {
2098                    Value::Integer(i) => Ok(Value::Integer(-i)),
2099                    Value::Real(f) => Ok(Value::Real(-f)),
2100                    Value::Null => Ok(Value::Null),
2101                    other => Err(SQLRiteError::Internal(format!(
2102                        "unary minus on non-numeric value: {}",
2103                        other.to_display_string()
2104                    ))),
2105                },
2106                UnaryOperator::Plus => Ok(inner),
2107                other => Err(SQLRiteError::NotImplemented(format!(
2108                    "unary operator {other:?} is not supported"
2109                ))),
2110            }
2111        }
2112
2113        Expr::BinaryOp { left, op, right } => match op {
2114            BinaryOperator::And => {
2115                let l = eval_expr_scope(left, scope)?;
2116                let r = eval_expr_scope(right, scope)?;
2117                Ok(Value::Bool(as_bool(&l)? && as_bool(&r)?))
2118            }
2119            BinaryOperator::Or => {
2120                let l = eval_expr_scope(left, scope)?;
2121                let r = eval_expr_scope(right, scope)?;
2122                Ok(Value::Bool(as_bool(&l)? || as_bool(&r)?))
2123            }
2124            cmp @ (BinaryOperator::Eq
2125            | BinaryOperator::NotEq
2126            | BinaryOperator::Lt
2127            | BinaryOperator::LtEq
2128            | BinaryOperator::Gt
2129            | BinaryOperator::GtEq) => {
2130                let l = eval_expr_scope(left, scope)?;
2131                let r = eval_expr_scope(right, scope)?;
2132                // Any comparison involving NULL is unknown → false in a WHERE.
2133                if matches!(l, Value::Null) || matches!(r, Value::Null) {
2134                    return Ok(Value::Bool(false));
2135                }
2136                let ord = compare_values(Some(&l), Some(&r));
2137                let result = match cmp {
2138                    BinaryOperator::Eq => ord == Ordering::Equal,
2139                    BinaryOperator::NotEq => ord != Ordering::Equal,
2140                    BinaryOperator::Lt => ord == Ordering::Less,
2141                    BinaryOperator::LtEq => ord != Ordering::Greater,
2142                    BinaryOperator::Gt => ord == Ordering::Greater,
2143                    BinaryOperator::GtEq => ord != Ordering::Less,
2144                    _ => unreachable!(),
2145                };
2146                Ok(Value::Bool(result))
2147            }
2148            arith @ (BinaryOperator::Plus
2149            | BinaryOperator::Minus
2150            | BinaryOperator::Multiply
2151            | BinaryOperator::Divide
2152            | BinaryOperator::Modulo) => {
2153                let l = eval_expr_scope(left, scope)?;
2154                let r = eval_expr_scope(right, scope)?;
2155                eval_arith(arith, &l, &r)
2156            }
2157            BinaryOperator::StringConcat => {
2158                let l = eval_expr_scope(left, scope)?;
2159                let r = eval_expr_scope(right, scope)?;
2160                if matches!(l, Value::Null) || matches!(r, Value::Null) {
2161                    return Ok(Value::Null);
2162                }
2163                Ok(Value::Text(format!(
2164                    "{}{}",
2165                    l.to_display_string(),
2166                    r.to_display_string()
2167                )))
2168            }
2169            other => Err(SQLRiteError::NotImplemented(format!(
2170                "binary operator {other:?} is not supported yet"
2171            ))),
2172        },
2173
2174        // SQLR-7 — `col IS NULL` / `col IS NOT NULL`. Identifier
2175        // evaluation already maps a missing rowid in the column's
2176        // BTreeMap to `Value::Null`, so this works uniformly for
2177        // explicit NULL inserts, omitted columns, and (post-Phase 7e)
2178        // legacy "Null"-sentinel TEXT cells. NULLs are never inserted
2179        // into secondary / HNSW / FTS indexes, so an IS NULL probe
2180        // correctly falls through to a full scan via `select_rowids`.
2181        Expr::IsNull(inner) => {
2182            let v = eval_expr_scope(inner, scope)?;
2183            Ok(Value::Bool(matches!(v, Value::Null)))
2184        }
2185        Expr::IsNotNull(inner) => {
2186            let v = eval_expr_scope(inner, scope)?;
2187            Ok(Value::Bool(!matches!(v, Value::Null)))
2188        }
2189
2190        // SQLR-3 — LIKE / NOT LIKE / ILIKE. Pattern matching uses our
2191        // own iterative two-pointer matcher (see `agg::like_match`).
2192        // SQLite's default is case-insensitive ASCII; we follow that.
2193        // ILIKE is also case-insensitive (a no-op switch here, but we
2194        // keep the arm explicit so SQLite users typing ILIKE get the
2195        // expected semantics rather than a NotImplemented).
2196        Expr::Like {
2197            negated,
2198            any,
2199            expr: lhs,
2200            pattern,
2201            escape_char,
2202        } => eval_like(
2203            scope,
2204            *negated,
2205            *any,
2206            lhs,
2207            pattern,
2208            escape_char.as_ref(),
2209            true,
2210        ),
2211        Expr::ILike {
2212            negated,
2213            any,
2214            expr: lhs,
2215            pattern,
2216            escape_char,
2217        } => eval_like(
2218            scope,
2219            *negated,
2220            *any,
2221            lhs,
2222            pattern,
2223            escape_char.as_ref(),
2224            true,
2225        ),
2226
2227        // SQLR-3 — IN (list) / NOT IN (list). Subquery form is rejected.
2228        // Three-valued logic: if the LHS is NULL, return NULL; if any
2229        // list entry is NULL and no match was found, return NULL too.
2230        // WHERE coerces NULL → false at line ~1494, so the practical
2231        // effect is "row excluded" — matches SQLite.
2232        Expr::InList {
2233            expr: lhs,
2234            list,
2235            negated,
2236        } => eval_in_list(scope, lhs, list, *negated),
2237        Expr::InSubquery { .. } => Err(SQLRiteError::NotImplemented(
2238            "IN (subquery) is not supported (only literal lists are)".to_string(),
2239        )),
2240
2241        // Phase 7b — function-call dispatch. Currently only the three
2242        // vector-distance functions; this match arm becomes the single
2243        // place to register more SQL functions later (e.g. abs(),
2244        // length(), …) without re-touching the rest of the executor.
2245        //
2246        // Operator forms (`<->` `<=>` `<#>`) are NOT plumbed here: two
2247        // of three don't parse natively in sqlparser (we'd need a
2248        // string-preprocessing pass or a sqlparser fork). Deferred to
2249        // a follow-up sub-phase; see docs/phase-7-plan.md's "Scope
2250        // corrections" note.
2251        Expr::Function(func) => eval_function(func, scope),
2252
2253        other => Err(SQLRiteError::NotImplemented(format!(
2254            "unsupported expression in WHERE/projection: {other:?}"
2255        ))),
2256    }
2257}
2258
2259/// Dispatches an `Expr::Function` to its built-in implementation.
2260/// Currently only the three vec_distance_* functions; other functions
2261/// surface as `NotImplemented` errors with the function name in the
2262/// message so users see what they tried.
2263fn eval_function(func: &sqlparser::ast::Function, scope: &dyn RowScope) -> Result<Value> {
2264    // Function name lives in `name.0[0]` for unqualified calls. Anything
2265    // qualified (e.g. `pkg.fn(...)`) falls through to NotImplemented.
2266    let name = match func.name.0.as_slice() {
2267        [ObjectNamePart::Identifier(ident)] => ident.value.to_lowercase(),
2268        _ => {
2269            return Err(SQLRiteError::NotImplemented(format!(
2270                "qualified function names not supported: {:?}",
2271                func.name
2272            )));
2273        }
2274    };
2275
2276    match name.as_str() {
2277        "vec_distance_l2" | "vec_distance_cosine" | "vec_distance_dot" => {
2278            let (a, b) = extract_two_vector_args(&name, &func.args, scope)?;
2279            let dist = match name.as_str() {
2280                "vec_distance_l2" => vec_distance_l2(&a, &b),
2281                "vec_distance_cosine" => vec_distance_cosine(&a, &b)?,
2282                "vec_distance_dot" => vec_distance_dot(&a, &b),
2283                _ => unreachable!(),
2284            };
2285            // Widen f32 → f64 for the runtime Value. Vectors are stored
2286            // as f32 (consistent with industry convention for embeddings),
2287            // but the executor's numeric type is f64 so distances slot
2288            // into Value::Real cleanly and can be compared / ordered with
2289            // other reals via the existing arithmetic + comparison paths.
2290            Ok(Value::Real(dist as f64))
2291        }
2292        // Phase 7e — JSON functions. All four parse the JSON text on
2293        // demand (we don't cache parsed values), then resolve a path
2294        // (default `$` = root). The path resolver handles `.key` for
2295        // object access and `[N]` for array index. SQLite-style.
2296        "json_extract" => json_fn_extract(&name, &func.args, scope),
2297        "json_type" => json_fn_type(&name, &func.args, scope),
2298        "json_array_length" => json_fn_array_length(&name, &func.args, scope),
2299        "json_object_keys" => json_fn_object_keys(&name, &func.args, scope),
2300        // Phase 8b — FTS scalars. Both consult an FTS index attached to
2301        // the named column; both error if no index exists (the index is
2302        // a hard prerequisite, mirroring SQLite FTS5's MATCH).
2303        //
2304        // SQLR-5 — these only work in a single-table scope because they
2305        // need the owning `Table` to look up an FTS index by name and
2306        // they key results by the row's rowid. In a joined query the
2307        // index lookup would be ambiguous (which table's FTS?) and the
2308        // scoring rowid is per-table. Reject up front rather than
2309        // silently wrong-result.
2310        "fts_match" | "bm25_score" => {
2311            let Some((table, rowid)) = scope.single_table_view() else {
2312                return Err(SQLRiteError::NotImplemented(format!(
2313                    "{name}() is not yet supported inside a JOIN query — \
2314                     use it on a single-table SELECT or move the FTS lookup into a subquery"
2315                )));
2316            };
2317            let (entry, query) = resolve_fts_args(&name, &func.args, table, scope)?;
2318            Ok(match name.as_str() {
2319                "fts_match" => Value::Bool(entry.index.matches(rowid, &query)),
2320                "bm25_score" => {
2321                    Value::Real(entry.index.score(rowid, &query, &Bm25Params::default()))
2322                }
2323                _ => unreachable!(),
2324            })
2325        }
2326        // SQLR-3: catch aggregate names used in scalar position (e.g.
2327        // `WHERE COUNT(*) > 1`) with a clearer message than "unknown
2328        // function". HAVING isn't supported yet, hence the explicit nudge.
2329        "count" | "sum" | "avg" | "min" | "max" => Err(SQLRiteError::NotImplemented(format!(
2330            "aggregate function '{name}' is not allowed in WHERE / projection-scalar position; \
2331             use it as a top-level projection item (HAVING is not yet supported)"
2332        ))),
2333        other => Err(SQLRiteError::NotImplemented(format!(
2334            "unknown function: {other}(...)"
2335        ))),
2336    }
2337}
2338
2339/// Helper for `fts_match` / `bm25_score`: pull the column reference out
2340/// of arg 0 (a bare identifier — we need the *name*, not the per-row
2341/// value), evaluate arg 1 as a Text query string, and look up the FTS
2342/// index attached to that column. Errors if any step fails.
2343fn resolve_fts_args<'t>(
2344    fn_name: &str,
2345    args: &FunctionArguments,
2346    table: &'t Table,
2347    scope: &dyn RowScope,
2348) -> Result<(&'t FtsIndexEntry, String)> {
2349    let arg_list = match args {
2350        FunctionArguments::List(l) => &l.args,
2351        _ => {
2352            return Err(SQLRiteError::General(format!(
2353                "{fn_name}() expects exactly two arguments: (column, query_text)"
2354            )));
2355        }
2356    };
2357    if arg_list.len() != 2 {
2358        return Err(SQLRiteError::General(format!(
2359            "{fn_name}() expects exactly 2 arguments, got {}",
2360            arg_list.len()
2361        )));
2362    }
2363
2364    // Arg 0: bare column identifier. Must resolve syntactically to a
2365    // column name (we can't accept arbitrary expressions because we
2366    // need the column to look up the index, not the column's value).
2367    let col_expr = match &arg_list[0] {
2368        FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => e,
2369        other => {
2370            return Err(SQLRiteError::NotImplemented(format!(
2371                "{fn_name}() argument 0 must be a column name, got {other:?}"
2372            )));
2373        }
2374    };
2375    let col_name = match col_expr {
2376        Expr::Identifier(ident) => ident.value.clone(),
2377        Expr::CompoundIdentifier(parts) => parts
2378            .last()
2379            .map(|p| p.value.clone())
2380            .ok_or_else(|| SQLRiteError::Internal("empty compound identifier".to_string()))?,
2381        other => {
2382            return Err(SQLRiteError::General(format!(
2383                "{fn_name}() argument 0 must be a column reference, got {other:?}"
2384            )));
2385        }
2386    };
2387
2388    // Arg 1: query string. Evaluated through the normal expression
2389    // pipeline so callers can pass a literal `'rust db'` or an
2390    // expression that yields TEXT.
2391    let q_expr = match &arg_list[1] {
2392        FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => e,
2393        other => {
2394            return Err(SQLRiteError::NotImplemented(format!(
2395                "{fn_name}() argument 1 must be a text expression, got {other:?}"
2396            )));
2397        }
2398    };
2399    let query = match eval_expr_scope(q_expr, scope)? {
2400        Value::Text(s) => s,
2401        other => {
2402            return Err(SQLRiteError::General(format!(
2403                "{fn_name}() argument 1 must be TEXT, got {}",
2404                other.to_display_string()
2405            )));
2406        }
2407    };
2408
2409    let entry = table
2410        .fts_indexes
2411        .iter()
2412        .find(|e| e.column_name == col_name)
2413        .ok_or_else(|| {
2414            SQLRiteError::General(format!(
2415                "{fn_name}({col_name}, ...): no FTS index on column '{col_name}' \
2416                 (run CREATE INDEX <name> ON <table> USING fts({col_name}) first)"
2417            ))
2418        })?;
2419    Ok((entry, query))
2420}
2421
2422// -----------------------------------------------------------------
2423// Phase 7e — JSON path-extraction functions
2424// -----------------------------------------------------------------
2425
2426/// Extracts the JSON-typed text + optional path string out of a
2427/// function call's args. Used by all four json_* functions.
2428///
2429/// Arity rules (matching SQLite JSON1):
2430///   - 1 arg  → JSON value, path defaults to `$` (root)
2431///   - 2 args → (JSON value, path text)
2432///
2433/// Returns `(json_text, path)` so caller can serde_json::from_str
2434/// + walk_json_path on it.
2435fn extract_json_and_path(
2436    fn_name: &str,
2437    args: &FunctionArguments,
2438    scope: &dyn RowScope,
2439) -> Result<(String, String)> {
2440    let arg_list = match args {
2441        FunctionArguments::List(l) => &l.args,
2442        _ => {
2443            return Err(SQLRiteError::General(format!(
2444                "{fn_name}() expects 1 or 2 arguments"
2445            )));
2446        }
2447    };
2448    if !(arg_list.len() == 1 || arg_list.len() == 2) {
2449        return Err(SQLRiteError::General(format!(
2450            "{fn_name}() expects 1 or 2 arguments, got {}",
2451            arg_list.len()
2452        )));
2453    }
2454    // Evaluate first arg → must produce text.
2455    let first_expr = match &arg_list[0] {
2456        FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => e,
2457        other => {
2458            return Err(SQLRiteError::NotImplemented(format!(
2459                "{fn_name}() argument 0 has unsupported shape: {other:?}"
2460            )));
2461        }
2462    };
2463    let json_text = match eval_expr_scope(first_expr, scope)? {
2464        Value::Text(s) => s,
2465        Value::Null => {
2466            return Err(SQLRiteError::General(format!(
2467                "{fn_name}() called on NULL — JSON column has no value for this row"
2468            )));
2469        }
2470        other => {
2471            return Err(SQLRiteError::General(format!(
2472                "{fn_name}() argument 0 is not JSON-typed: got {}",
2473                other.to_display_string()
2474            )));
2475        }
2476    };
2477
2478    // Path defaults to root `$` when omitted.
2479    let path = if arg_list.len() == 2 {
2480        let path_expr = match &arg_list[1] {
2481            FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => e,
2482            other => {
2483                return Err(SQLRiteError::NotImplemented(format!(
2484                    "{fn_name}() argument 1 has unsupported shape: {other:?}"
2485                )));
2486            }
2487        };
2488        match eval_expr_scope(path_expr, scope)? {
2489            Value::Text(s) => s,
2490            other => {
2491                return Err(SQLRiteError::General(format!(
2492                    "{fn_name}() path argument must be a string literal, got {}",
2493                    other.to_display_string()
2494                )));
2495            }
2496        }
2497    } else {
2498        "$".to_string()
2499    };
2500
2501    Ok((json_text, path))
2502}
2503
2504/// Walks a `serde_json::Value` along a JSONPath subset:
2505///   - `$` is the root
2506///   - `.key` for object access (key may not contain `.` or `[`)
2507///   - `[N]` for array index (N a non-negative integer)
2508///   - chains arbitrarily: `$.foo.bar[0].baz`
2509///
2510/// Returns `Ok(None)` for "path didn't match anything" (NULL in SQL),
2511/// `Err` for malformed paths. Matches SQLite JSON1's semantic
2512/// distinction: missing-key = NULL, malformed-path = error.
2513fn walk_json_path<'a>(
2514    value: &'a serde_json::Value,
2515    path: &str,
2516) -> Result<Option<&'a serde_json::Value>> {
2517    let mut chars = path.chars().peekable();
2518    if chars.next() != Some('$') {
2519        return Err(SQLRiteError::General(format!(
2520            "JSON path must start with '$', got `{path}`"
2521        )));
2522    }
2523    let mut current = value;
2524    while let Some(&c) = chars.peek() {
2525        match c {
2526            '.' => {
2527                chars.next();
2528                let mut key = String::new();
2529                while let Some(&c) = chars.peek() {
2530                    if c == '.' || c == '[' {
2531                        break;
2532                    }
2533                    key.push(c);
2534                    chars.next();
2535                }
2536                if key.is_empty() {
2537                    return Err(SQLRiteError::General(format!(
2538                        "JSON path has empty key after '.' in `{path}`"
2539                    )));
2540                }
2541                match current.get(&key) {
2542                    Some(v) => current = v,
2543                    None => return Ok(None),
2544                }
2545            }
2546            '[' => {
2547                chars.next();
2548                let mut idx_str = String::new();
2549                while let Some(&c) = chars.peek() {
2550                    if c == ']' {
2551                        break;
2552                    }
2553                    idx_str.push(c);
2554                    chars.next();
2555                }
2556                if chars.next() != Some(']') {
2557                    return Err(SQLRiteError::General(format!(
2558                        "JSON path has unclosed `[` in `{path}`"
2559                    )));
2560                }
2561                let idx: usize = idx_str.trim().parse().map_err(|_| {
2562                    SQLRiteError::General(format!(
2563                        "JSON path has non-integer index `[{idx_str}]` in `{path}`"
2564                    ))
2565                })?;
2566                match current.get(idx) {
2567                    Some(v) => current = v,
2568                    None => return Ok(None),
2569                }
2570            }
2571            other => {
2572                return Err(SQLRiteError::General(format!(
2573                    "JSON path has unexpected character `{other}` in `{path}` \
2574                     (expected `.`, `[`, or end-of-path)"
2575                )));
2576            }
2577        }
2578    }
2579    Ok(Some(current))
2580}
2581
2582/// Converts a serde_json scalar to a SQLRite Value. For composite
2583/// types (object, array) returns the JSON-encoded text — callers
2584/// pattern-match on shape from the calling json_* function.
2585fn json_value_to_sql(v: &serde_json::Value) -> Value {
2586    match v {
2587        serde_json::Value::Null => Value::Null,
2588        serde_json::Value::Bool(b) => Value::Bool(*b),
2589        serde_json::Value::Number(n) => {
2590            // Match SQLite: integer if it fits an i64, else f64.
2591            if let Some(i) = n.as_i64() {
2592                Value::Integer(i)
2593            } else if let Some(f) = n.as_f64() {
2594                Value::Real(f)
2595            } else {
2596                Value::Null
2597            }
2598        }
2599        serde_json::Value::String(s) => Value::Text(s.clone()),
2600        // Objects + arrays come out as JSON-encoded text. Same as
2601        // SQLite's json_extract: composite results round-trip through
2602        // text rather than being modeled as a richer Value type.
2603        composite => Value::Text(composite.to_string()),
2604    }
2605}
2606
2607fn json_fn_extract(name: &str, args: &FunctionArguments, scope: &dyn RowScope) -> Result<Value> {
2608    let (json_text, path) = extract_json_and_path(name, args, scope)?;
2609    let parsed: serde_json::Value = serde_json::from_str(&json_text).map_err(|e| {
2610        SQLRiteError::General(format!("{name}() got invalid JSON `{json_text}`: {e}"))
2611    })?;
2612    match walk_json_path(&parsed, &path)? {
2613        Some(v) => Ok(json_value_to_sql(v)),
2614        None => Ok(Value::Null),
2615    }
2616}
2617
2618fn json_fn_type(name: &str, args: &FunctionArguments, scope: &dyn RowScope) -> Result<Value> {
2619    let (json_text, path) = extract_json_and_path(name, args, scope)?;
2620    let parsed: serde_json::Value = serde_json::from_str(&json_text).map_err(|e| {
2621        SQLRiteError::General(format!("{name}() got invalid JSON `{json_text}`: {e}"))
2622    })?;
2623    let resolved = match walk_json_path(&parsed, &path)? {
2624        Some(v) => v,
2625        None => return Ok(Value::Null),
2626    };
2627    let ty = match resolved {
2628        serde_json::Value::Null => "null",
2629        serde_json::Value::Bool(true) => "true",
2630        serde_json::Value::Bool(false) => "false",
2631        serde_json::Value::Number(n) => {
2632            if n.is_i64() || n.is_u64() {
2633                "integer"
2634            } else {
2635                "real"
2636            }
2637        }
2638        serde_json::Value::String(_) => "text",
2639        serde_json::Value::Array(_) => "array",
2640        serde_json::Value::Object(_) => "object",
2641    };
2642    Ok(Value::Text(ty.to_string()))
2643}
2644
2645fn json_fn_array_length(
2646    name: &str,
2647    args: &FunctionArguments,
2648    scope: &dyn RowScope,
2649) -> Result<Value> {
2650    let (json_text, path) = extract_json_and_path(name, args, scope)?;
2651    let parsed: serde_json::Value = serde_json::from_str(&json_text).map_err(|e| {
2652        SQLRiteError::General(format!("{name}() got invalid JSON `{json_text}`: {e}"))
2653    })?;
2654    let resolved = match walk_json_path(&parsed, &path)? {
2655        Some(v) => v,
2656        None => return Ok(Value::Null),
2657    };
2658    match resolved.as_array() {
2659        Some(arr) => Ok(Value::Integer(arr.len() as i64)),
2660        None => Err(SQLRiteError::General(format!(
2661            "{name}() resolved to a non-array value at path `{path}`"
2662        ))),
2663    }
2664}
2665
2666fn json_fn_object_keys(
2667    name: &str,
2668    args: &FunctionArguments,
2669    scope: &dyn RowScope,
2670) -> Result<Value> {
2671    let (json_text, path) = extract_json_and_path(name, args, scope)?;
2672    let parsed: serde_json::Value = serde_json::from_str(&json_text).map_err(|e| {
2673        SQLRiteError::General(format!("{name}() got invalid JSON `{json_text}`: {e}"))
2674    })?;
2675    let resolved = match walk_json_path(&parsed, &path)? {
2676        Some(v) => v,
2677        None => return Ok(Value::Null),
2678    };
2679    let obj = resolved.as_object().ok_or_else(|| {
2680        SQLRiteError::General(format!(
2681            "{name}() resolved to a non-object value at path `{path}`"
2682        ))
2683    })?;
2684    // SQLite's json_object_keys is a table-valued function (one row
2685    // per key). Without set-returning function support we can't
2686    // reproduce that shape; instead return the keys as a JSON array
2687    // text. Caller can iterate via json_array_length + json_extract,
2688    // or just treat it as a serialized list. Document this divergence
2689    // in supported-sql.md.
2690    let keys: Vec<serde_json::Value> = obj
2691        .keys()
2692        .map(|k| serde_json::Value::String(k.clone()))
2693        .collect();
2694    Ok(Value::Text(serde_json::Value::Array(keys).to_string()))
2695}
2696
2697/// Extracts exactly two `Vec<f32>` arguments from a function call,
2698/// validating arity and that both sides are Vector-typed with matching
2699/// dimensions. Used by all three vec_distance_* functions.
2700fn extract_two_vector_args(
2701    fn_name: &str,
2702    args: &FunctionArguments,
2703    scope: &dyn RowScope,
2704) -> Result<(Vec<f32>, Vec<f32>)> {
2705    let arg_list = match args {
2706        FunctionArguments::List(l) => &l.args,
2707        _ => {
2708            return Err(SQLRiteError::General(format!(
2709                "{fn_name}() expects exactly two vector arguments"
2710            )));
2711        }
2712    };
2713    if arg_list.len() != 2 {
2714        return Err(SQLRiteError::General(format!(
2715            "{fn_name}() expects exactly 2 arguments, got {}",
2716            arg_list.len()
2717        )));
2718    }
2719    let mut out: Vec<Vec<f32>> = Vec::with_capacity(2);
2720    for (i, arg) in arg_list.iter().enumerate() {
2721        let expr = match arg {
2722            FunctionArg::Unnamed(FunctionArgExpr::Expr(e)) => e,
2723            other => {
2724                return Err(SQLRiteError::NotImplemented(format!(
2725                    "{fn_name}() argument {i} has unsupported shape: {other:?}"
2726                )));
2727            }
2728        };
2729        let val = eval_expr_scope(expr, scope)?;
2730        match val {
2731            Value::Vector(v) => out.push(v),
2732            other => {
2733                return Err(SQLRiteError::General(format!(
2734                    "{fn_name}() argument {i} is not a vector: got {}",
2735                    other.to_display_string()
2736                )));
2737            }
2738        }
2739    }
2740    let b = out.pop().unwrap();
2741    let a = out.pop().unwrap();
2742    if a.len() != b.len() {
2743        return Err(SQLRiteError::General(format!(
2744            "{fn_name}(): vector dimensions don't match (lhs={}, rhs={})",
2745            a.len(),
2746            b.len()
2747        )));
2748    }
2749    Ok((a, b))
2750}
2751
2752/// Euclidean (L2) distance: √Σ(aᵢ − bᵢ)².
2753/// Smaller-is-closer; identical vectors return 0.0.
2754pub(crate) fn vec_distance_l2(a: &[f32], b: &[f32]) -> f32 {
2755    debug_assert_eq!(a.len(), b.len());
2756    let mut sum = 0.0f32;
2757    for i in 0..a.len() {
2758        let d = a[i] - b[i];
2759        sum += d * d;
2760    }
2761    sum.sqrt()
2762}
2763
2764/// Cosine distance: 1 − (a·b) / (‖a‖·‖b‖).
2765/// Smaller-is-closer; identical (non-zero) vectors return 0.0,
2766/// orthogonal vectors return 1.0, opposite-direction vectors return 2.0.
2767///
2768/// Errors if either vector has zero magnitude — cosine similarity is
2769/// undefined for the zero vector and silently returning NaN would
2770/// poison `ORDER BY` ranking. Callers who want the silent-NaN
2771/// behavior can compute `vec_distance_dot(a, b) / (norm(a) * norm(b))`
2772/// themselves.
2773pub(crate) fn vec_distance_cosine(a: &[f32], b: &[f32]) -> Result<f32> {
2774    debug_assert_eq!(a.len(), b.len());
2775    let mut dot = 0.0f32;
2776    let mut norm_a_sq = 0.0f32;
2777    let mut norm_b_sq = 0.0f32;
2778    for i in 0..a.len() {
2779        dot += a[i] * b[i];
2780        norm_a_sq += a[i] * a[i];
2781        norm_b_sq += b[i] * b[i];
2782    }
2783    let denom = (norm_a_sq * norm_b_sq).sqrt();
2784    if denom == 0.0 {
2785        return Err(SQLRiteError::General(
2786            "vec_distance_cosine() is undefined for zero-magnitude vectors".to_string(),
2787        ));
2788    }
2789    Ok(1.0 - dot / denom)
2790}
2791
2792/// Negated dot product: −(a·b).
2793/// pgvector convention — negated so smaller-is-closer like L2 / cosine.
2794/// For unit-norm vectors `vec_distance_dot(a, b) == vec_distance_cosine(a, b) - 1`.
2795pub(crate) fn vec_distance_dot(a: &[f32], b: &[f32]) -> f32 {
2796    debug_assert_eq!(a.len(), b.len());
2797    let mut dot = 0.0f32;
2798    for i in 0..a.len() {
2799        dot += a[i] * b[i];
2800    }
2801    -dot
2802}
2803
2804/// Evaluates an integer/real arithmetic op. NULL on either side propagates.
2805/// Mixed Integer/Real promotes to Real. Divide/Modulo by zero → error.
2806fn eval_arith(op: &BinaryOperator, l: &Value, r: &Value) -> Result<Value> {
2807    if matches!(l, Value::Null) || matches!(r, Value::Null) {
2808        return Ok(Value::Null);
2809    }
2810    match (l, r) {
2811        (Value::Integer(a), Value::Integer(b)) => match op {
2812            BinaryOperator::Plus => Ok(Value::Integer(a.wrapping_add(*b))),
2813            BinaryOperator::Minus => Ok(Value::Integer(a.wrapping_sub(*b))),
2814            BinaryOperator::Multiply => Ok(Value::Integer(a.wrapping_mul(*b))),
2815            BinaryOperator::Divide => {
2816                if *b == 0 {
2817                    Err(SQLRiteError::General("division by zero".to_string()))
2818                } else {
2819                    Ok(Value::Integer(a / b))
2820                }
2821            }
2822            BinaryOperator::Modulo => {
2823                if *b == 0 {
2824                    Err(SQLRiteError::General("modulo by zero".to_string()))
2825                } else {
2826                    Ok(Value::Integer(a % b))
2827                }
2828            }
2829            _ => unreachable!(),
2830        },
2831        // Anything involving a Real promotes both sides to f64.
2832        (a, b) => {
2833            let af = as_number(a)?;
2834            let bf = as_number(b)?;
2835            match op {
2836                BinaryOperator::Plus => Ok(Value::Real(af + bf)),
2837                BinaryOperator::Minus => Ok(Value::Real(af - bf)),
2838                BinaryOperator::Multiply => Ok(Value::Real(af * bf)),
2839                BinaryOperator::Divide => {
2840                    if bf == 0.0 {
2841                        Err(SQLRiteError::General("division by zero".to_string()))
2842                    } else {
2843                        Ok(Value::Real(af / bf))
2844                    }
2845                }
2846                BinaryOperator::Modulo => {
2847                    if bf == 0.0 {
2848                        Err(SQLRiteError::General("modulo by zero".to_string()))
2849                    } else {
2850                        Ok(Value::Real(af % bf))
2851                    }
2852                }
2853                _ => unreachable!(),
2854            }
2855        }
2856    }
2857}
2858
2859fn as_number(v: &Value) -> Result<f64> {
2860    match v {
2861        Value::Integer(i) => Ok(*i as f64),
2862        Value::Real(f) => Ok(*f),
2863        Value::Bool(b) => Ok(if *b { 1.0 } else { 0.0 }),
2864        other => Err(SQLRiteError::General(format!(
2865            "arithmetic on non-numeric value '{}'",
2866            other.to_display_string()
2867        ))),
2868    }
2869}
2870
2871fn as_bool(v: &Value) -> Result<bool> {
2872    match v {
2873        Value::Bool(b) => Ok(*b),
2874        Value::Null => Ok(false),
2875        Value::Integer(i) => Ok(*i != 0),
2876        other => Err(SQLRiteError::Internal(format!(
2877            "expected boolean, got {}",
2878            other.to_display_string()
2879        ))),
2880    }
2881}
2882
2883// -----------------------------------------------------------------
2884// SQLR-3 — LIKE / IN evaluators
2885// -----------------------------------------------------------------
2886
2887#[allow(clippy::too_many_arguments)]
2888fn eval_like(
2889    scope: &dyn RowScope,
2890    negated: bool,
2891    any: bool,
2892    lhs: &Expr,
2893    pattern: &Expr,
2894    escape_char: Option<&AstValue>,
2895    case_insensitive: bool,
2896) -> Result<Value> {
2897    if any {
2898        return Err(SQLRiteError::NotImplemented(
2899            "LIKE ANY (...) is not supported".to_string(),
2900        ));
2901    }
2902    if escape_char.is_some() {
2903        return Err(SQLRiteError::NotImplemented(
2904            "LIKE ... ESCAPE '<char>' is not supported (default `\\` escape only)".to_string(),
2905        ));
2906    }
2907
2908    let l = eval_expr_scope(lhs, scope)?;
2909    let p = eval_expr_scope(pattern, scope)?;
2910    if matches!(l, Value::Null) || matches!(p, Value::Null) {
2911        return Ok(Value::Null);
2912    }
2913    let text = match l {
2914        Value::Text(s) => s,
2915        other => other.to_display_string(),
2916    };
2917    let pat = match p {
2918        Value::Text(s) => s,
2919        other => other.to_display_string(),
2920    };
2921    let m = like_match(&text, &pat, case_insensitive);
2922    Ok(Value::Bool(if negated { !m } else { m }))
2923}
2924
2925fn eval_in_list(scope: &dyn RowScope, lhs: &Expr, list: &[Expr], negated: bool) -> Result<Value> {
2926    let l = eval_expr_scope(lhs, scope)?;
2927    if matches!(l, Value::Null) {
2928        return Ok(Value::Null);
2929    }
2930    let mut saw_null = false;
2931    for item in list {
2932        let r = eval_expr_scope(item, scope)?;
2933        if matches!(r, Value::Null) {
2934            saw_null = true;
2935            continue;
2936        }
2937        if compare_values(Some(&l), Some(&r)) == Ordering::Equal {
2938            return Ok(Value::Bool(!negated));
2939        }
2940    }
2941    if saw_null {
2942        // SQLite three-valued IN: unmatched + a NULL on the RHS → NULL.
2943        // WHERE coerces NULL → false, so the row is excluded either way.
2944        Ok(Value::Null)
2945    } else {
2946        Ok(Value::Bool(negated))
2947    }
2948}
2949
2950// -----------------------------------------------------------------
2951// SQLR-3 — Aggregation phase, DISTINCT, post-projection sort
2952// -----------------------------------------------------------------
2953
2954/// Walk `matching` rowids, partition into groups (one synthetic group
2955/// when `group_by` is empty), update one `AggState` per aggregate
2956/// projection slot per group, then materialize one output row per
2957/// group in projection order. Group-key columns surface their original
2958/// `Value` (captured the first time the group was seen); aggregate
2959/// slots surface `AggState::finalize()`.
2960fn aggregate_rows(
2961    table: &Table,
2962    matching: &[i64],
2963    group_by: &[String],
2964    proj_items: &[ProjectionItem],
2965) -> Result<Vec<Vec<Value>>> {
2966    // Build the per-projection-slot accumulator template once. Each
2967    // group clones this template on first sight. Non-aggregate slots
2968    // hold a "captured group-key value" (`None` until set).
2969    let template: Vec<Option<AggState>> = proj_items
2970        .iter()
2971        .map(|i| match &i.kind {
2972            ProjectionKind::Aggregate(call) => Some(AggState::new(call)),
2973            ProjectionKind::Column { .. } => None,
2974        })
2975        .collect();
2976
2977    // Linear-scan group lookup. For typical ad-hoc queries (cardinality
2978    // ≪ 10k), this is fine; if grouping cardinality grows, swap to a
2979    // HashMap<Vec<DistinctKey>, usize> keyed by the same DistinctKey
2980    // wrapper. Order-preserving for readable output (groups appear in
2981    // first-occurrence order, matching SQLite's typical behavior).
2982    let mut keys: Vec<Vec<DistinctKey>> = Vec::new();
2983    let mut group_states: Vec<Vec<Option<AggState>>> = Vec::new();
2984    let mut group_key_values: Vec<Vec<Value>> = Vec::new();
2985
2986    for &rowid in matching {
2987        let mut key_values: Vec<Value> = Vec::with_capacity(group_by.len());
2988        let mut key: Vec<DistinctKey> = Vec::with_capacity(group_by.len());
2989        for col in group_by {
2990            let v = table.get_value(col, rowid).unwrap_or(Value::Null);
2991            key.push(DistinctKey::from_value(&v));
2992            key_values.push(v);
2993        }
2994        let idx = match keys.iter().position(|k| k == &key) {
2995            Some(i) => i,
2996            None => {
2997                keys.push(key);
2998                group_states.push(template.clone());
2999                group_key_values.push(key_values);
3000                keys.len() - 1
3001            }
3002        };
3003
3004        for (slot, item) in proj_items.iter().enumerate() {
3005            if let ProjectionKind::Aggregate(call) = &item.kind {
3006                let v = match &call.arg {
3007                    AggregateArg::Star => Value::Null,
3008                    AggregateArg::Column(c) => table.get_value(c, rowid).unwrap_or(Value::Null),
3009                };
3010                if let Some(state) = group_states[idx][slot].as_mut() {
3011                    state.update(&v)?;
3012                }
3013            }
3014        }
3015    }
3016
3017    // No groups but no aggregate-only "implicit one row" semantic to
3018    // emit: e.g. `SELECT dept FROM t GROUP BY dept` over an empty
3019    // matching set should produce zero rows. `SELECT COUNT(*) FROM t`
3020    // (no GROUP BY) DOES produce one row even on empty input — the
3021    // single-synthetic-group path below handles it.
3022    if keys.is_empty() && group_by.is_empty() {
3023        // Synthetic single empty group so we still emit one row with
3024        // initial accumulator finals (e.g. COUNT(*) → 0).
3025        keys.push(Vec::new());
3026        group_states.push(template.clone());
3027        group_key_values.push(Vec::new());
3028    }
3029
3030    // Project: one row per group, in projection order.
3031    let mut rows: Vec<Vec<Value>> = Vec::with_capacity(keys.len());
3032    for (group_idx, _) in keys.iter().enumerate() {
3033        let mut row: Vec<Value> = Vec::with_capacity(proj_items.len());
3034        for (slot, item) in proj_items.iter().enumerate() {
3035            match &item.kind {
3036                ProjectionKind::Column { name: c, .. } => {
3037                    // The validation in execute_select_rows guarantees
3038                    // bare-column projections are also in `group_by`.
3039                    let pos = group_by
3040                        .iter()
3041                        .position(|g| g == c)
3042                        .expect("validated to be in GROUP BY");
3043                    row.push(group_key_values[group_idx][pos].clone());
3044                }
3045                ProjectionKind::Aggregate(_) => {
3046                    let state = group_states[group_idx][slot]
3047                        .as_ref()
3048                        .expect("aggregate slot has state");
3049                    row.push(state.finalize());
3050                }
3051            }
3052        }
3053        rows.push(row);
3054    }
3055    Ok(rows)
3056}
3057
3058/// SELECT DISTINCT post-pass. Walks the rows once with a `HashSet` of
3059/// row-keys, preserving first-occurrence order. NULL == NULL for
3060/// dedupe purposes, which matches the SQL DISTINCT semantic.
3061fn dedupe_rows(rows: Vec<Vec<Value>>) -> Vec<Vec<Value>> {
3062    use std::collections::HashSet;
3063    let mut seen: HashSet<Vec<DistinctKey>> = HashSet::new();
3064    let mut out = Vec::with_capacity(rows.len());
3065    for row in rows {
3066        let key: Vec<DistinctKey> = row.iter().map(DistinctKey::from_value).collect();
3067        if seen.insert(key) {
3068            out.push(row);
3069        }
3070    }
3071    out
3072}
3073
3074/// Sort output rows for the aggregating path. ORDER BY can reference
3075/// either an output column name (alias or bare GROUP BY column) or an
3076/// aggregate function call by display form (e.g. `COUNT(*)`).
3077fn sort_output_rows(
3078    rows: &mut [Vec<Value>],
3079    columns: &[String],
3080    proj_items: &[ProjectionItem],
3081    order: &OrderByClause,
3082) -> Result<()> {
3083    let target_idx = resolve_order_by_index(&order.expr, columns, proj_items)?;
3084    rows.sort_by(|a, b| {
3085        let va = &a[target_idx];
3086        let vb = &b[target_idx];
3087        let ord = compare_values(Some(va), Some(vb));
3088        if order.ascending { ord } else { ord.reverse() }
3089    });
3090    Ok(())
3091}
3092
3093/// Map an ORDER BY expression to the index of the output column that
3094/// should drive the sort.
3095fn resolve_order_by_index(
3096    expr: &Expr,
3097    columns: &[String],
3098    proj_items: &[ProjectionItem],
3099) -> Result<usize> {
3100    // Bare identifier — match against output names (alias-first).
3101    let target_name: Option<String> = match expr {
3102        Expr::Identifier(ident) => Some(ident.value.clone()),
3103        Expr::CompoundIdentifier(parts) => parts.last().map(|p| p.value.clone()),
3104        Expr::Function(_) => None,
3105        Expr::Nested(inner) => return resolve_order_by_index(inner, columns, proj_items),
3106        other => {
3107            return Err(SQLRiteError::NotImplemented(format!(
3108                "ORDER BY expression not supported on aggregating queries: {other:?}"
3109            )));
3110        }
3111    };
3112    if let Some(name) = target_name {
3113        if let Some(i) = columns.iter().position(|c| c.eq_ignore_ascii_case(&name)) {
3114            return Ok(i);
3115        }
3116        return Err(SQLRiteError::Internal(format!(
3117            "ORDER BY references unknown column '{name}' in the SELECT output"
3118        )));
3119    }
3120    // Function form: match by display name against any aggregate item
3121    // whose canonical display equals the user's call. Tolerate case
3122    // differences in the function name.
3123    if let Expr::Function(func) = expr {
3124        let user_disp = format_function_display(func);
3125        for (i, item) in proj_items.iter().enumerate() {
3126            if let ProjectionKind::Aggregate(call) = &item.kind
3127                && call.display_name().eq_ignore_ascii_case(&user_disp)
3128            {
3129                return Ok(i);
3130            }
3131        }
3132        return Err(SQLRiteError::Internal(format!(
3133            "ORDER BY references aggregate '{user_disp}' that isn't in the SELECT output"
3134        )));
3135    }
3136    Err(SQLRiteError::Internal(
3137        "ORDER BY expression could not be resolved against the output columns".to_string(),
3138    ))
3139}
3140
3141/// Format a sqlparser function call into the same canonical form
3142/// `AggregateCall::display_name()` uses, so ORDER BY on
3143/// `COUNT(*)` / `SUM(salary)` matches its projection counterpart.
3144fn format_function_display(func: &sqlparser::ast::Function) -> String {
3145    let name = match func.name.0.as_slice() {
3146        [ObjectNamePart::Identifier(ident)] => ident.value.to_uppercase(),
3147        _ => format!("{:?}", func.name).to_uppercase(),
3148    };
3149    let inner = match &func.args {
3150        FunctionArguments::List(l) => {
3151            let distinct = matches!(
3152                l.duplicate_treatment,
3153                Some(sqlparser::ast::DuplicateTreatment::Distinct)
3154            );
3155            let arg = l.args.first().map(|a| match a {
3156                FunctionArg::Unnamed(FunctionArgExpr::Wildcard) => "*".to_string(),
3157                FunctionArg::Unnamed(FunctionArgExpr::Expr(Expr::Identifier(i))) => i.value.clone(),
3158                FunctionArg::Unnamed(FunctionArgExpr::Expr(Expr::CompoundIdentifier(parts))) => {
3159                    parts.last().map(|p| p.value.clone()).unwrap_or_default()
3160                }
3161                _ => String::new(),
3162            });
3163            match (distinct, arg) {
3164                (true, Some(a)) if a != "*" => format!("DISTINCT {a}"),
3165                (_, Some(a)) => a,
3166                _ => String::new(),
3167            }
3168        }
3169        _ => String::new(),
3170    };
3171    format!("{name}({inner})")
3172}
3173
3174fn convert_literal(v: &sqlparser::ast::Value) -> Result<Value> {
3175    use sqlparser::ast::Value as AstValue;
3176    match v {
3177        AstValue::Number(n, _) => {
3178            if let Ok(i) = n.parse::<i64>() {
3179                Ok(Value::Integer(i))
3180            } else if let Ok(f) = n.parse::<f64>() {
3181                Ok(Value::Real(f))
3182            } else {
3183                Err(SQLRiteError::Internal(format!(
3184                    "could not parse numeric literal '{n}'"
3185                )))
3186            }
3187        }
3188        AstValue::SingleQuotedString(s) => Ok(Value::Text(s.clone())),
3189        AstValue::Boolean(b) => Ok(Value::Bool(*b)),
3190        AstValue::Null => Ok(Value::Null),
3191        other => Err(SQLRiteError::NotImplemented(format!(
3192            "unsupported literal value: {other:?}"
3193        ))),
3194    }
3195}
3196
3197#[cfg(test)]
3198mod tests {
3199    use super::*;
3200
3201    // -----------------------------------------------------------------
3202    // Phase 7b — Vector distance function math
3203    // -----------------------------------------------------------------
3204
3205    /// Float comparison helper — distance results need a small epsilon
3206    /// because we accumulate sums across many f32 multiplies.
3207    fn approx_eq(a: f32, b: f32, eps: f32) -> bool {
3208        (a - b).abs() < eps
3209    }
3210
3211    #[test]
3212    fn vec_distance_l2_identical_is_zero() {
3213        let v = vec![0.1, 0.2, 0.3];
3214        assert_eq!(vec_distance_l2(&v, &v), 0.0);
3215    }
3216
3217    #[test]
3218    fn vec_distance_l2_unit_basis_is_sqrt2() {
3219        // [1, 0] vs [0, 1]: distance = √((1-0)² + (0-1)²) = √2 ≈ 1.414
3220        let a = vec![1.0, 0.0];
3221        let b = vec![0.0, 1.0];
3222        assert!(approx_eq(vec_distance_l2(&a, &b), 2.0_f32.sqrt(), 1e-6));
3223    }
3224
3225    #[test]
3226    fn vec_distance_l2_known_value() {
3227        // [0, 0, 0] vs [3, 4, 0]: √(9 + 16 + 0) = 5 (the classic 3-4-5 triangle).
3228        let a = vec![0.0, 0.0, 0.0];
3229        let b = vec![3.0, 4.0, 0.0];
3230        assert!(approx_eq(vec_distance_l2(&a, &b), 5.0, 1e-6));
3231    }
3232
3233    #[test]
3234    fn vec_distance_cosine_identical_is_zero() {
3235        let v = vec![0.1, 0.2, 0.3];
3236        let d = vec_distance_cosine(&v, &v).unwrap();
3237        assert!(approx_eq(d, 0.0, 1e-6), "cos(v,v) = {d}, expected ≈ 0");
3238    }
3239
3240    #[test]
3241    fn vec_distance_cosine_orthogonal_is_one() {
3242        // Two orthogonal unit vectors should have cosine distance = 1.0
3243        // (cosine similarity = 0 → distance = 1 - 0 = 1).
3244        let a = vec![1.0, 0.0];
3245        let b = vec![0.0, 1.0];
3246        assert!(approx_eq(vec_distance_cosine(&a, &b).unwrap(), 1.0, 1e-6));
3247    }
3248
3249    #[test]
3250    fn vec_distance_cosine_opposite_is_two() {
3251        // a and -a have cosine similarity = -1 → distance = 1 - (-1) = 2.
3252        let a = vec![1.0, 0.0, 0.0];
3253        let b = vec![-1.0, 0.0, 0.0];
3254        assert!(approx_eq(vec_distance_cosine(&a, &b).unwrap(), 2.0, 1e-6));
3255    }
3256
3257    #[test]
3258    fn vec_distance_cosine_zero_magnitude_errors() {
3259        // Cosine is undefined for the zero vector — error rather than NaN.
3260        let a = vec![0.0, 0.0];
3261        let b = vec![1.0, 0.0];
3262        let err = vec_distance_cosine(&a, &b).unwrap_err();
3263        assert!(format!("{err}").contains("zero-magnitude"));
3264    }
3265
3266    #[test]
3267    fn vec_distance_dot_negates() {
3268        // a·b = 1*4 + 2*5 + 3*6 = 32. Negated → -32.
3269        let a = vec![1.0, 2.0, 3.0];
3270        let b = vec![4.0, 5.0, 6.0];
3271        assert!(approx_eq(vec_distance_dot(&a, &b), -32.0, 1e-6));
3272    }
3273
3274    #[test]
3275    fn vec_distance_dot_orthogonal_is_zero() {
3276        // Orthogonal vectors have dot product 0 → negated is also 0.
3277        let a = vec![1.0, 0.0];
3278        let b = vec![0.0, 1.0];
3279        assert_eq!(vec_distance_dot(&a, &b), 0.0);
3280    }
3281
3282    #[test]
3283    fn vec_distance_dot_unit_norm_matches_cosine_minus_one() {
3284        // For unit-norm vectors: dot(a,b) = cos(a,b)
3285        // → -dot(a,b) = -cos(a,b) = (1 - cos(a,b)) - 1 = vec_distance_cosine(a,b) - 1.
3286        // Useful sanity check that the two functions agree on unit vectors.
3287        let a = vec![0.6f32, 0.8]; // unit norm: √(0.36+0.64) = 1
3288        let b = vec![0.8f32, 0.6]; // unit norm too
3289        let dot = vec_distance_dot(&a, &b);
3290        let cos = vec_distance_cosine(&a, &b).unwrap();
3291        assert!(approx_eq(dot, cos - 1.0, 1e-5));
3292    }
3293
3294    // -----------------------------------------------------------------
3295    // Phase 7c — bounded-heap top-k correctness + benchmark
3296    // -----------------------------------------------------------------
3297
3298    use crate::sql::db::database::Database;
3299    use crate::sql::parser::select::SelectQuery;
3300    use sqlparser::dialect::SQLiteDialect;
3301    use sqlparser::parser::Parser;
3302
3303    /// Builds a `docs(id INTEGER PK, score REAL)` table with N rows of
3304    /// distinct positive scores so top-k tests aren't sensitive to
3305    /// tie-breaking (heap is unstable; full-sort is stable; we want
3306    /// both to agree without arguing about equal-score row order).
3307    ///
3308    /// **Why positive scores:** the INSERT parser doesn't currently
3309    /// handle `Expr::UnaryOp(Minus, …)` for negative number literals
3310    /// (it would parse `-3.14` as a unary expression and the value
3311    /// extractor would skip it). That's a pre-existing bug, out of
3312    /// scope for 7c. Using the Knuth multiplicative hash gives us
3313    /// distinct positive scrambled values without dancing around the
3314    /// negative-literal limitation.
3315    fn seed_score_table(n: usize) -> Database {
3316        let mut db = Database::new("tempdb".to_string());
3317        crate::sql::process_command(
3318            "CREATE TABLE docs (id INTEGER PRIMARY KEY, score REAL);",
3319            &mut db,
3320        )
3321        .expect("create");
3322        for i in 0..n {
3323            // Knuth multiplicative hash mod 1_000_000 — distinct,
3324            // dense in [0, 999_999], no collisions for n up to ~tens
3325            // of thousands.
3326            let score = ((i as u64).wrapping_mul(2_654_435_761) % 1_000_000) as f64;
3327            let sql = format!("INSERT INTO docs (score) VALUES ({score});");
3328            crate::sql::process_command(&sql, &mut db).expect("insert");
3329        }
3330        db
3331    }
3332
3333    /// Helper: parses an SQL SELECT into a SelectQuery so we can drive
3334    /// `select_topk` / `sort_rowids` directly without the rest of the
3335    /// process_command pipeline.
3336    fn parse_select(sql: &str) -> SelectQuery {
3337        let dialect = SQLiteDialect {};
3338        let mut ast = Parser::parse_sql(&dialect, sql).expect("parse");
3339        let stmt = ast.pop().expect("one statement");
3340        SelectQuery::new(&stmt).expect("select-query")
3341    }
3342
3343    #[test]
3344    fn topk_matches_full_sort_asc() {
3345        // Build N=200, top-k=10. Bounded heap output must equal
3346        // full-sort-then-truncate output (both produce ASC order).
3347        let db = seed_score_table(200);
3348        let table = db.get_table("docs".to_string()).unwrap();
3349        let q = parse_select("SELECT * FROM docs ORDER BY score ASC LIMIT 10;");
3350        let order = q.order_by.as_ref().unwrap();
3351        let all_rowids = table.rowids();
3352
3353        // Full-sort path
3354        let mut full = all_rowids.clone();
3355        sort_rowids(&mut full, table, order).unwrap();
3356        full.truncate(10);
3357
3358        // Bounded-heap path
3359        let topk = select_topk(&all_rowids, table, order, 10).unwrap();
3360
3361        assert_eq!(topk, full, "top-k via heap should match full-sort+truncate");
3362    }
3363
3364    #[test]
3365    fn topk_matches_full_sort_desc() {
3366        // Same with DESC — verifies the direction-aware Ord wrapper.
3367        let db = seed_score_table(200);
3368        let table = db.get_table("docs".to_string()).unwrap();
3369        let q = parse_select("SELECT * FROM docs ORDER BY score DESC LIMIT 10;");
3370        let order = q.order_by.as_ref().unwrap();
3371        let all_rowids = table.rowids();
3372
3373        let mut full = all_rowids.clone();
3374        sort_rowids(&mut full, table, order).unwrap();
3375        full.truncate(10);
3376
3377        let topk = select_topk(&all_rowids, table, order, 10).unwrap();
3378
3379        assert_eq!(
3380            topk, full,
3381            "top-k DESC via heap should match full-sort+truncate"
3382        );
3383    }
3384
3385    #[test]
3386    fn topk_k_larger_than_n_returns_everything_sorted() {
3387        // The executor branches off to the full-sort path when k >= N,
3388        // but if a caller invokes select_topk directly with k > N, it
3389        // should still produce all-sorted output (no truncation
3390        // because we don't have N items to truncate to k).
3391        let db = seed_score_table(50);
3392        let table = db.get_table("docs".to_string()).unwrap();
3393        let q = parse_select("SELECT * FROM docs ORDER BY score ASC LIMIT 1000;");
3394        let order = q.order_by.as_ref().unwrap();
3395        let topk = select_topk(&table.rowids(), table, order, 1000).unwrap();
3396        assert_eq!(topk.len(), 50);
3397        // All scores in ascending order.
3398        let scores: Vec<f64> = topk
3399            .iter()
3400            .filter_map(|r| match table.get_value("score", *r) {
3401                Some(Value::Real(f)) => Some(f),
3402                _ => None,
3403            })
3404            .collect();
3405        assert!(scores.windows(2).all(|w| w[0] <= w[1]));
3406    }
3407
3408    #[test]
3409    fn topk_k_zero_returns_empty() {
3410        let db = seed_score_table(10);
3411        let table = db.get_table("docs".to_string()).unwrap();
3412        let q = parse_select("SELECT * FROM docs ORDER BY score ASC LIMIT 1;");
3413        let order = q.order_by.as_ref().unwrap();
3414        let topk = select_topk(&table.rowids(), table, order, 0).unwrap();
3415        assert!(topk.is_empty());
3416    }
3417
3418    #[test]
3419    fn topk_empty_input_returns_empty() {
3420        let db = seed_score_table(0);
3421        let table = db.get_table("docs".to_string()).unwrap();
3422        let q = parse_select("SELECT * FROM docs ORDER BY score ASC LIMIT 5;");
3423        let order = q.order_by.as_ref().unwrap();
3424        let topk = select_topk(&[], table, order, 5).unwrap();
3425        assert!(topk.is_empty());
3426    }
3427
3428    #[test]
3429    fn topk_works_through_select_executor_with_distance_function() {
3430        // Integration check that the executor actually picks the
3431        // bounded-heap path on a KNN-shaped query and produces the
3432        // correct top-k.
3433        let mut db = Database::new("tempdb".to_string());
3434        crate::sql::process_command(
3435            "CREATE TABLE docs (id INTEGER PRIMARY KEY, e VECTOR(2));",
3436            &mut db,
3437        )
3438        .unwrap();
3439        // Five rows with distinct distances from probe [1.0, 0.0]:
3440        //   id=1 [1.0, 0.0]   distance=0
3441        //   id=2 [2.0, 0.0]   distance=1
3442        //   id=3 [0.0, 3.0]   distance=√(1+9) = √10 ≈ 3.16
3443        //   id=4 [1.0, 4.0]   distance=4
3444        //   id=5 [10.0, 10.0] distance=√(81+100) ≈ 13.45
3445        for v in &[
3446            "[1.0, 0.0]",
3447            "[2.0, 0.0]",
3448            "[0.0, 3.0]",
3449            "[1.0, 4.0]",
3450            "[10.0, 10.0]",
3451        ] {
3452            crate::sql::process_command(&format!("INSERT INTO docs (e) VALUES ({v});"), &mut db)
3453                .unwrap();
3454        }
3455        let resp = crate::sql::process_command(
3456            "SELECT id FROM docs ORDER BY vec_distance_l2(e, [1.0, 0.0]) ASC LIMIT 3;",
3457            &mut db,
3458        )
3459        .unwrap();
3460        // Top-3 closest to [1.0, 0.0] are id=1, id=2, id=3 (in that order).
3461        // The status message tells us how many rows came back.
3462        assert!(resp.contains("3 rows returned"), "got: {resp}");
3463    }
3464
3465    /// Manual benchmark — not run by default. Recommended invocation:
3466    ///
3467    ///     cargo test -p sqlrite-engine --lib topk_benchmark --release \
3468    ///         -- --ignored --nocapture
3469    ///
3470    /// (`--release` matters: Rust's optimized sort gets very fast under
3471    /// optimization, so the heap's relative advantage is best observed
3472    /// against a sort that's also been optimized.)
3473    ///
3474    /// Measured numbers on an Apple Silicon laptop with N=10_000 + k=10:
3475    ///   - bounded heap:    ~820µs
3476    ///   - full sort+trunc: ~1.5ms
3477    ///   - ratio:           ~1.8×
3478    ///
3479    /// The advantage is real but moderate at this size because the sort
3480    /// key here is a single REAL column read (cheap) and Rust's sort_by
3481    /// has a very low constant factor. The asymptotic O(N log k) vs
3482    /// O(N log N) advantage scales with N and with per-row work — KNN
3483    /// queries where the sort key is `vec_distance_l2(col, [...])` are
3484    /// where this path really pays off, because each key evaluation is
3485    /// itself O(dim) and the heap path skips the per-row evaluation
3486    /// in the comparator (see `sort_rowids` for the contrast).
3487    #[test]
3488    #[ignore]
3489    fn topk_benchmark() {
3490        use std::time::Instant;
3491        const N: usize = 10_000;
3492        const K: usize = 10;
3493
3494        let db = seed_score_table(N);
3495        let table = db.get_table("docs".to_string()).unwrap();
3496        let q = parse_select("SELECT * FROM docs ORDER BY score ASC LIMIT 10;");
3497        let order = q.order_by.as_ref().unwrap();
3498        let all_rowids = table.rowids();
3499
3500        // Time bounded heap.
3501        let t0 = Instant::now();
3502        let _topk = select_topk(&all_rowids, table, order, K).unwrap();
3503        let heap_dur = t0.elapsed();
3504
3505        // Time full sort + truncate.
3506        let t1 = Instant::now();
3507        let mut full = all_rowids.clone();
3508        sort_rowids(&mut full, table, order).unwrap();
3509        full.truncate(K);
3510        let sort_dur = t1.elapsed();
3511
3512        let ratio = sort_dur.as_secs_f64() / heap_dur.as_secs_f64().max(1e-9);
3513        println!("\n--- topk_benchmark (N={N}, k={K}) ---");
3514        println!("  bounded heap:   {heap_dur:?}");
3515        println!("  full sort+trunc: {sort_dur:?}");
3516        println!("  speedup ratio:  {ratio:.2}×");
3517
3518        // Soft assertion. Floor is 1.4× because the cheap-key
3519        // benchmark hovers around 1.8× empirically; setting this too
3520        // close to the measured value risks flaky CI on slower
3521        // runners. Floor of 1.4× still catches an actual regression
3522        // (e.g., if select_topk became O(N²) or stopped using the
3523        // heap entirely).
3524        assert!(
3525            ratio > 1.4,
3526            "bounded heap should be substantially faster than full sort, but ratio = {ratio:.2}"
3527        );
3528    }
3529
3530    // ---------------------------------------------------------------------
3531    // SQLR-7 — IS NULL / IS NOT NULL
3532    // ---------------------------------------------------------------------
3533
3534    /// Helper for IS NULL tests: run a SELECT through process_command and
3535    /// return the rendered table as a String so the test can assert on the
3536    /// row-count line without re-implementing the executor.
3537    fn run_select(db: &mut Database, sql: &str) -> String {
3538        crate::sql::process_command(sql, db).expect("select")
3539    }
3540
3541    #[test]
3542    fn where_is_null_returns_null_rows() {
3543        let mut db = Database::new("t".to_string());
3544        crate::sql::process_command(
3545            "CREATE TABLE t (id INTEGER PRIMARY KEY, n INTEGER);",
3546            &mut db,
3547        )
3548        .unwrap();
3549        crate::sql::process_command("INSERT INTO t (id, n) VALUES (1, 10);", &mut db).unwrap();
3550        crate::sql::process_command("INSERT INTO t (id, n) VALUES (2, NULL);", &mut db).unwrap();
3551        crate::sql::process_command("INSERT INTO t (id, n) VALUES (3, 30);", &mut db).unwrap();
3552        crate::sql::process_command("INSERT INTO t (id, n) VALUES (4, NULL);", &mut db).unwrap();
3553
3554        let response = run_select(&mut db, "SELECT id FROM t WHERE n IS NULL;");
3555        assert!(
3556            response.contains("2 rows returned"),
3557            "IS NULL should return 2 rows, got: {response}"
3558        );
3559    }
3560
3561    #[test]
3562    fn where_is_not_null_returns_non_null_rows() {
3563        let mut db = Database::new("t".to_string());
3564        crate::sql::process_command(
3565            "CREATE TABLE t (id INTEGER PRIMARY KEY, n INTEGER);",
3566            &mut db,
3567        )
3568        .unwrap();
3569        crate::sql::process_command("INSERT INTO t (id, n) VALUES (1, 10);", &mut db).unwrap();
3570        crate::sql::process_command("INSERT INTO t (id, n) VALUES (2, NULL);", &mut db).unwrap();
3571        crate::sql::process_command("INSERT INTO t (id, n) VALUES (3, 30);", &mut db).unwrap();
3572
3573        let response = run_select(&mut db, "SELECT id FROM t WHERE n IS NOT NULL;");
3574        assert!(
3575            response.contains("2 rows returned"),
3576            "IS NOT NULL should return 2 rows, got: {response}"
3577        );
3578    }
3579
3580    #[test]
3581    fn where_is_null_on_indexed_column() {
3582        // UNIQUE on a TEXT column gets an automatic secondary index.
3583        // NULLs aren't stored in the index, so IS NULL falls through to
3584        // a full scan via select_rowids — verify the full-scan path is
3585        // still correct.
3586        let mut db = Database::new("t".to_string());
3587        crate::sql::process_command(
3588            "CREATE TABLE t (id INTEGER PRIMARY KEY, name TEXT UNIQUE);",
3589            &mut db,
3590        )
3591        .unwrap();
3592        crate::sql::process_command("INSERT INTO t (id, name) VALUES (1, 'alice');", &mut db)
3593            .unwrap();
3594        crate::sql::process_command("INSERT INTO t (id, name) VALUES (2, NULL);", &mut db).unwrap();
3595        crate::sql::process_command("INSERT INTO t (id, name) VALUES (3, 'bob');", &mut db)
3596            .unwrap();
3597
3598        let null_rows = run_select(&mut db, "SELECT id FROM t WHERE name IS NULL;");
3599        assert!(
3600            null_rows.contains("1 row returned"),
3601            "indexed IS NULL should return 1 row, got: {null_rows}"
3602        );
3603        let not_null_rows = run_select(&mut db, "SELECT id FROM t WHERE name IS NOT NULL;");
3604        assert!(
3605            not_null_rows.contains("2 rows returned"),
3606            "indexed IS NOT NULL should return 2 rows, got: {not_null_rows}"
3607        );
3608    }
3609
3610    #[test]
3611    fn where_is_null_works_on_omitted_column() {
3612        // No DEFAULT, column missing from the INSERT column list — the
3613        // BTreeMap entry never gets written, get_value returns None,
3614        // eval_expr maps that to Value::Null, and IS NULL matches.
3615        let mut db = Database::new("t".to_string());
3616        crate::sql::process_command(
3617            "CREATE TABLE t (id INTEGER PRIMARY KEY, qty INTEGER, label TEXT);",
3618            &mut db,
3619        )
3620        .unwrap();
3621        crate::sql::process_command(
3622            "INSERT INTO t (id, qty, label) VALUES (1, 7, 'a');",
3623            &mut db,
3624        )
3625        .unwrap();
3626        // qty omitted on row 2.
3627        crate::sql::process_command("INSERT INTO t (id, label) VALUES (2, 'b');", &mut db).unwrap();
3628
3629        let response = run_select(&mut db, "SELECT id FROM t WHERE qty IS NULL;");
3630        assert!(
3631            response.contains("1 row returned"),
3632            "IS NULL should match the omitted-column row, got: {response}"
3633        );
3634    }
3635
3636    #[test]
3637    fn where_is_null_combines_with_and_or() {
3638        // Sanity check that the new arms compose with the existing
3639        // boolean operators in eval_expr — `n IS NULL AND id > 1`
3640        // should narrow correctly.
3641        let mut db = Database::new("t".to_string());
3642        crate::sql::process_command(
3643            "CREATE TABLE t (id INTEGER PRIMARY KEY, n INTEGER);",
3644            &mut db,
3645        )
3646        .unwrap();
3647        crate::sql::process_command("INSERT INTO t (id, n) VALUES (1, NULL);", &mut db).unwrap();
3648        crate::sql::process_command("INSERT INTO t (id, n) VALUES (2, NULL);", &mut db).unwrap();
3649        crate::sql::process_command("INSERT INTO t (id, n) VALUES (3, 30);", &mut db).unwrap();
3650
3651        let response = run_select(&mut db, "SELECT id FROM t WHERE n IS NULL AND id > 1;");
3652        assert!(
3653            response.contains("1 row returned"),
3654            "IS NULL combined with AND should match exactly row 2, got: {response}"
3655        );
3656    }
3657
3658    // ---------------------------------------------------------------------
3659    // SQLR-3 — LIKE / IN / DISTINCT / GROUP BY / aggregates
3660    // ---------------------------------------------------------------------
3661
3662    /// Seed a small employees table the analytical tests share.
3663    fn seed_employees() -> Database {
3664        let mut db = Database::new("t".to_string());
3665        crate::sql::process_command(
3666            "CREATE TABLE emp (id INTEGER PRIMARY KEY, name TEXT, dept TEXT, salary INTEGER);",
3667            &mut db,
3668        )
3669        .unwrap();
3670        let rows = [
3671            "INSERT INTO emp (name, dept, salary) VALUES ('Alice', 'eng', 100);",
3672            "INSERT INTO emp (name, dept, salary) VALUES ('alex',  'eng', 120);",
3673            "INSERT INTO emp (name, dept, salary) VALUES ('Bob',   'eng', 100);",
3674            "INSERT INTO emp (name, dept, salary) VALUES ('Carol', 'sales', 90);",
3675            "INSERT INTO emp (name, dept, salary) VALUES ('Dave',  'sales', NULL);",
3676            "INSERT INTO emp (name, dept, salary) VALUES ('Eve',   'ops', 80);",
3677        ];
3678        for sql in rows {
3679            crate::sql::process_command(sql, &mut db).unwrap();
3680        }
3681        db
3682    }
3683
3684    /// Drive `execute_select_rows` directly so tests can assert on typed values.
3685    fn run_rows(db: &Database, sql: &str) -> SelectResult {
3686        let q = parse_select(sql);
3687        execute_select_rows(q, db).expect("select")
3688    }
3689
3690    // ----- LIKE -----
3691
3692    #[test]
3693    fn like_percent_prefix_case_insensitive() {
3694        let db = seed_employees();
3695        let r = run_rows(&db, "SELECT name FROM emp WHERE name LIKE 'a%';");
3696        // Matches Alice and alex (case-insensitive ASCII).
3697        let names: Vec<_> = r.rows.iter().map(|r| r[0].to_display_string()).collect();
3698        assert_eq!(names.len(), 2, "expected 2 rows, got {names:?}");
3699        assert!(names.contains(&"Alice".to_string()));
3700        assert!(names.contains(&"alex".to_string()));
3701    }
3702
3703    #[test]
3704    fn like_underscore_singlechar() {
3705        let db = seed_employees();
3706        let r = run_rows(&db, "SELECT name FROM emp WHERE name LIKE '_ve';");
3707        // Eve matches; alex does not (3 chars vs 4).
3708        let names: Vec<_> = r.rows.iter().map(|r| r[0].to_display_string()).collect();
3709        assert_eq!(names, vec!["Eve".to_string()]);
3710    }
3711
3712    #[test]
3713    fn not_like_excludes_match() {
3714        let db = seed_employees();
3715        let r = run_rows(&db, "SELECT name FROM emp WHERE name NOT LIKE 'a%';");
3716        // Excludes Alice + alex; 4 rows remain.
3717        assert_eq!(r.rows.len(), 4);
3718    }
3719
3720    #[test]
3721    fn like_with_null_excludes_row() {
3722        let db = seed_employees();
3723        // Match 'sales' rows where salary is NULL → just Dave.
3724        let r = run_rows(
3725            &db,
3726            "SELECT name FROM emp WHERE dept LIKE 'sales' AND salary IS NULL;",
3727        );
3728        assert_eq!(r.rows.len(), 1);
3729        assert_eq!(r.rows[0][0].to_display_string(), "Dave");
3730    }
3731
3732    // ----- IN -----
3733
3734    #[test]
3735    fn in_list_positive() {
3736        let db = seed_employees();
3737        let r = run_rows(&db, "SELECT name FROM emp WHERE id IN (1, 3, 5);");
3738        let names: Vec<_> = r.rows.iter().map(|r| r[0].to_display_string()).collect();
3739        assert_eq!(names.len(), 3);
3740        assert!(names.contains(&"Alice".to_string()));
3741        assert!(names.contains(&"Bob".to_string()));
3742        assert!(names.contains(&"Dave".to_string()));
3743    }
3744
3745    #[test]
3746    fn not_in_excludes_listed() {
3747        let db = seed_employees();
3748        let r = run_rows(&db, "SELECT name FROM emp WHERE id NOT IN (1, 2);");
3749        // 6 rows total - 2 excluded = 4.
3750        assert_eq!(r.rows.len(), 4);
3751    }
3752
3753    #[test]
3754    fn in_list_with_null_three_valued() {
3755        let db = seed_employees();
3756        // x = 1 should match; for other rows the NULL in the list yields
3757        // unknown → false in WHERE → excluded.
3758        let r = run_rows(&db, "SELECT name FROM emp WHERE id IN (1, NULL);");
3759        assert_eq!(r.rows.len(), 1);
3760        assert_eq!(r.rows[0][0].to_display_string(), "Alice");
3761    }
3762
3763    // ----- DISTINCT -----
3764
3765    #[test]
3766    fn distinct_single_column() {
3767        let db = seed_employees();
3768        let r = run_rows(&db, "SELECT DISTINCT dept FROM emp;");
3769        // 3 distinct depts: eng, sales, ops.
3770        assert_eq!(r.rows.len(), 3);
3771    }
3772
3773    #[test]
3774    fn distinct_multi_column_with_null() {
3775        let db = seed_employees();
3776        // (dept, salary) tuples — the two 'eng' / 100 rows collapse.
3777        let r = run_rows(&db, "SELECT DISTINCT dept, salary FROM emp;");
3778        // 6 input rows; (eng, 100) appears twice → 5 distinct tuples.
3779        assert_eq!(r.rows.len(), 5);
3780    }
3781
3782    // ----- Aggregates without GROUP BY -----
3783
3784    #[test]
3785    fn count_star_no_groupby() {
3786        let db = seed_employees();
3787        let r = run_rows(&db, "SELECT COUNT(*) FROM emp;");
3788        assert_eq!(r.rows.len(), 1);
3789        assert_eq!(r.rows[0][0], Value::Integer(6));
3790    }
3791
3792    #[test]
3793    fn count_col_skips_nulls() {
3794        let db = seed_employees();
3795        let r = run_rows(&db, "SELECT COUNT(salary) FROM emp;");
3796        // 6 rows, 1 NULL salary → COUNT(salary) = 5.
3797        assert_eq!(r.rows[0][0], Value::Integer(5));
3798    }
3799
3800    #[test]
3801    fn count_distinct_dedupes_and_skips_nulls() {
3802        let db = seed_employees();
3803        let r = run_rows(&db, "SELECT COUNT(DISTINCT salary) FROM emp;");
3804        // Distinct non-null salaries: {100, 120, 90, 80} → 4.
3805        assert_eq!(r.rows[0][0], Value::Integer(4));
3806    }
3807
3808    #[test]
3809    fn sum_int_stays_integer() {
3810        let db = seed_employees();
3811        let r = run_rows(&db, "SELECT SUM(salary) FROM emp;");
3812        // 100 + 120 + 100 + 90 + 80 = 490 (NULL skipped).
3813        assert_eq!(r.rows[0][0], Value::Integer(490));
3814    }
3815
3816    #[test]
3817    fn avg_returns_real() {
3818        let db = seed_employees();
3819        let r = run_rows(&db, "SELECT AVG(salary) FROM emp;");
3820        // 490 / 5 = 98.0
3821        match &r.rows[0][0] {
3822            Value::Real(v) => assert!((v - 98.0).abs() < 1e-9),
3823            other => panic!("expected Real, got {other:?}"),
3824        }
3825    }
3826
3827    #[test]
3828    fn min_max_skip_nulls() {
3829        let db = seed_employees();
3830        let r = run_rows(&db, "SELECT MIN(salary), MAX(salary) FROM emp;");
3831        assert_eq!(r.rows[0][0], Value::Integer(80));
3832        assert_eq!(r.rows[0][1], Value::Integer(120));
3833    }
3834
3835    #[test]
3836    fn aggregates_on_empty_table_emit_one_row() {
3837        let mut db = Database::new("t".to_string());
3838        crate::sql::process_command("CREATE TABLE t (x INTEGER);", &mut db).unwrap();
3839        let r = run_rows(
3840            &db,
3841            "SELECT COUNT(*), SUM(x), AVG(x), MIN(x), MAX(x) FROM t;",
3842        );
3843        assert_eq!(r.rows.len(), 1);
3844        assert_eq!(r.rows[0][0], Value::Integer(0));
3845        assert_eq!(r.rows[0][1], Value::Null);
3846        assert_eq!(r.rows[0][2], Value::Null);
3847        assert_eq!(r.rows[0][3], Value::Null);
3848        assert_eq!(r.rows[0][4], Value::Null);
3849    }
3850
3851    // ----- GROUP BY -----
3852
3853    #[test]
3854    fn group_by_single_col_with_count() {
3855        let db = seed_employees();
3856        let r = run_rows(&db, "SELECT dept, COUNT(*) FROM emp GROUP BY dept;");
3857        assert_eq!(r.rows.len(), 3);
3858        // Build a map for a stable assertion regardless of group order.
3859        let mut by_dept: std::collections::HashMap<String, i64> = Default::default();
3860        for row in &r.rows {
3861            let d = row[0].to_display_string();
3862            let c = match &row[1] {
3863                Value::Integer(i) => *i,
3864                v => panic!("expected Integer count, got {v:?}"),
3865            };
3866            by_dept.insert(d, c);
3867        }
3868        assert_eq!(by_dept["eng"], 3);
3869        assert_eq!(by_dept["sales"], 2);
3870        assert_eq!(by_dept["ops"], 1);
3871    }
3872
3873    #[test]
3874    fn group_by_with_where_filter() {
3875        let db = seed_employees();
3876        let r = run_rows(
3877            &db,
3878            "SELECT dept, SUM(salary) FROM emp WHERE salary > 80 GROUP BY dept;",
3879        );
3880        // After WHERE, ops drops out (Eve = 80 excluded). eng has 3 rows
3881        // contributing (100+120+100=320); sales has 1 (90; Dave NULL skipped).
3882        let by: std::collections::HashMap<String, i64> = r
3883            .rows
3884            .iter()
3885            .map(|row| {
3886                (
3887                    row[0].to_display_string(),
3888                    match &row[1] {
3889                        Value::Integer(i) => *i,
3890                        v => panic!("expected Integer sum, got {v:?}"),
3891                    },
3892                )
3893            })
3894            .collect();
3895        assert_eq!(by.len(), 2);
3896        assert_eq!(by["eng"], 320);
3897        assert_eq!(by["sales"], 90);
3898    }
3899
3900    #[test]
3901    fn group_by_without_aggregates_is_distinct() {
3902        let db = seed_employees();
3903        let r = run_rows(&db, "SELECT dept FROM emp GROUP BY dept;");
3904        assert_eq!(r.rows.len(), 3);
3905    }
3906
3907    #[test]
3908    fn order_by_count_desc() {
3909        let db = seed_employees();
3910        let r = run_rows(
3911            &db,
3912            "SELECT dept, COUNT(*) AS n FROM emp GROUP BY dept ORDER BY n DESC LIMIT 2;",
3913        );
3914        assert_eq!(r.rows.len(), 2);
3915        // Top group is 'eng' with 3.
3916        assert_eq!(r.rows[0][0].to_display_string(), "eng");
3917        assert_eq!(r.rows[0][1], Value::Integer(3));
3918    }
3919
3920    #[test]
3921    fn order_by_aggregate_call_form() {
3922        let db = seed_employees();
3923        // No alias — ORDER BY references the aggregate by its display form.
3924        let r = run_rows(
3925            &db,
3926            "SELECT dept, COUNT(*) FROM emp GROUP BY dept ORDER BY COUNT(*) DESC;",
3927        );
3928        assert_eq!(r.rows.len(), 3);
3929        assert_eq!(r.rows[0][0].to_display_string(), "eng");
3930    }
3931
3932    #[test]
3933    fn group_by_invalid_bare_column_errors() {
3934        // `name` is neither aggregated nor in GROUP BY → must error at parse.
3935        let mut db = Database::new("t".to_string());
3936        crate::sql::process_command(
3937            "CREATE TABLE t (id INTEGER PRIMARY KEY, dept TEXT, name TEXT);",
3938            &mut db,
3939        )
3940        .unwrap();
3941        let err = crate::sql::process_command("SELECT dept, name FROM t GROUP BY dept;", &mut db);
3942        assert!(err.is_err(), "should reject bare 'name' not in GROUP BY");
3943    }
3944
3945    #[test]
3946    fn aggregate_in_where_errors_friendly() {
3947        let mut db = Database::new("t".to_string());
3948        crate::sql::process_command("CREATE TABLE t (x INTEGER);", &mut db).unwrap();
3949        crate::sql::process_command("INSERT INTO t (x) VALUES (1);", &mut db).unwrap();
3950        let err = crate::sql::process_command("SELECT x FROM t WHERE COUNT(*) > 0;", &mut db);
3951        assert!(err.is_err(), "aggregates must not be allowed in WHERE");
3952    }
3953
3954    // ---------------------------------------------------------------------
3955    // SQLR-5 — JOINs (INNER / LEFT OUTER / RIGHT OUTER / FULL OUTER)
3956    // ---------------------------------------------------------------------
3957
3958    /// Two-table fixture used across the join tests. `customers` has
3959    /// (1: Alice, 2: Bob, 3: Carol). `orders` has (id, customer_id,
3960    /// amount): (1, 1, 100), (2, 1, 200), (3, 2, 50), (4, 4, 999).
3961    /// Customer 3 (Carol) has no orders; order 4 has no customer
3962    /// (dangling foreign key) — together they exercise both sides of
3963    /// the outer-join NULL-padding.
3964    fn seed_join_fixture() -> Database {
3965        let mut db = Database::new("t".to_string());
3966        for sql in [
3967            "CREATE TABLE customers (id INTEGER PRIMARY KEY, name TEXT);",
3968            "CREATE TABLE orders (id INTEGER PRIMARY KEY, customer_id INTEGER, amount INTEGER);",
3969            "INSERT INTO customers (name) VALUES ('Alice');",
3970            "INSERT INTO customers (name) VALUES ('Bob');",
3971            "INSERT INTO customers (name) VALUES ('Carol');",
3972            "INSERT INTO orders (customer_id, amount) VALUES (1, 100);",
3973            "INSERT INTO orders (customer_id, amount) VALUES (1, 200);",
3974            "INSERT INTO orders (customer_id, amount) VALUES (2, 50);",
3975            "INSERT INTO orders (customer_id, amount) VALUES (4, 999);",
3976        ] {
3977            crate::sql::process_command(sql, &mut db).unwrap();
3978        }
3979        db
3980    }
3981
3982    #[test]
3983    fn inner_join_returns_only_matched_rows() {
3984        let db = seed_join_fixture();
3985        let r = run_rows(
3986            &db,
3987            "SELECT customers.name, orders.amount FROM customers \
3988             INNER JOIN orders ON customers.id = orders.customer_id;",
3989        );
3990        assert_eq!(r.columns, vec!["name".to_string(), "amount".to_string()]);
3991        // Alice: 100, 200; Bob: 50. Carol drops (no orders), order 4 drops
3992        // (no customer). 3 rows.
3993        let pairs: Vec<(String, i64)> = r
3994            .rows
3995            .iter()
3996            .map(|row| {
3997                (
3998                    row[0].to_display_string(),
3999                    match row[1] {
4000                        Value::Integer(i) => i,
4001                        ref v => panic!("expected integer amount, got {v:?}"),
4002                    },
4003                )
4004            })
4005            .collect();
4006        assert_eq!(pairs.len(), 3);
4007        assert!(pairs.contains(&("Alice".to_string(), 100)));
4008        assert!(pairs.contains(&("Alice".to_string(), 200)));
4009        assert!(pairs.contains(&("Bob".to_string(), 50)));
4010    }
4011
4012    #[test]
4013    fn bare_join_defaults_to_inner() {
4014        let db = seed_join_fixture();
4015        let r = run_rows(
4016            &db,
4017            "SELECT customers.name FROM customers \
4018             JOIN orders ON customers.id = orders.customer_id;",
4019        );
4020        assert_eq!(r.rows.len(), 3, "JOIN without prefix should be INNER");
4021    }
4022
4023    #[test]
4024    fn left_outer_join_preserves_unmatched_left() {
4025        let db = seed_join_fixture();
4026        let r = run_rows(
4027            &db,
4028            "SELECT customers.name, orders.amount FROM customers \
4029             LEFT OUTER JOIN orders ON customers.id = orders.customer_id;",
4030        );
4031        // Alice: two rows. Bob: one row. Carol: one NULL-padded row.
4032        // Order 4 is dropped (left side has no customer for id=4).
4033        assert_eq!(r.rows.len(), 4);
4034        let carol = r
4035            .rows
4036            .iter()
4037            .find(|row| row[0].to_display_string() == "Carol")
4038            .expect("Carol should appear with a NULL-padded right side");
4039        assert_eq!(carol[1], Value::Null);
4040    }
4041
4042    #[test]
4043    fn right_outer_join_preserves_unmatched_right() {
4044        let db = seed_join_fixture();
4045        let r = run_rows(
4046            &db,
4047            "SELECT customers.name, orders.amount FROM customers \
4048             RIGHT OUTER JOIN orders ON customers.id = orders.customer_id;",
4049        );
4050        // 3 matched rows + 1 dangling order (id=4, customer_id=4 with no
4051        // matching customer). Total 4. Carol drops because the right
4052        // table has no row pointing at her.
4053        assert_eq!(r.rows.len(), 4);
4054        let dangling = r
4055            .rows
4056            .iter()
4057            .find(|row| matches!(row[1], Value::Integer(999)))
4058            .expect("dangling order 999 should appear with a NULL-padded customer name");
4059        assert_eq!(dangling[0], Value::Null);
4060    }
4061
4062    #[test]
4063    fn full_outer_join_preserves_both_sides() {
4064        let db = seed_join_fixture();
4065        let r = run_rows(
4066            &db,
4067            "SELECT customers.name, orders.amount FROM customers \
4068             FULL OUTER JOIN orders ON customers.id = orders.customer_id;",
4069        );
4070        // 3 matched + 1 unmatched left (Carol) + 1 unmatched right
4071        // (order 999) = 5 rows.
4072        assert_eq!(r.rows.len(), 5);
4073        // Carol with NULL amount.
4074        assert!(
4075            r.rows
4076                .iter()
4077                .any(|row| row[0].to_display_string() == "Carol" && matches!(row[1], Value::Null))
4078        );
4079        // 999 with NULL name.
4080        assert!(
4081            r.rows
4082                .iter()
4083                .any(|row| matches!(row[1], Value::Integer(999)) && matches!(row[0], Value::Null))
4084        );
4085    }
4086
4087    #[test]
4088    fn join_with_table_aliases_resolves_qualifiers() {
4089        let db = seed_join_fixture();
4090        let r = run_rows(
4091            &db,
4092            "SELECT c.name, o.amount FROM customers AS c \
4093             INNER JOIN orders AS o ON c.id = o.customer_id;",
4094        );
4095        assert_eq!(r.rows.len(), 3);
4096        assert_eq!(r.columns, vec!["name".to_string(), "amount".to_string()]);
4097    }
4098
4099    #[test]
4100    fn join_with_where_filter_applies_after_join() {
4101        let db = seed_join_fixture();
4102        // Filter to only orders >= 100. With INNER JOIN, this drops Bob's
4103        // 50-amount order, leaving Alice's 100 and 200.
4104        let r = run_rows(
4105            &db,
4106            "SELECT customers.name, orders.amount FROM customers \
4107             INNER JOIN orders ON customers.id = orders.customer_id \
4108             WHERE orders.amount >= 100;",
4109        );
4110        assert_eq!(r.rows.len(), 2);
4111        assert!(
4112            r.rows
4113                .iter()
4114                .all(|row| row[0].to_display_string() == "Alice")
4115        );
4116    }
4117
4118    #[test]
4119    fn left_join_with_where_on_right_side_is_not_inner() {
4120        // WHERE on the right side that excludes NULL turns LEFT JOIN
4121        // back into INNER JOIN semantically. Verify the executor
4122        // applies the WHERE *after* the join padded NULLs in.
4123        let db = seed_join_fixture();
4124        let r = run_rows(
4125            &db,
4126            "SELECT customers.name, orders.amount FROM customers \
4127             LEFT OUTER JOIN orders ON customers.id = orders.customer_id \
4128             WHERE orders.amount IS NULL;",
4129        );
4130        // Only Carol survives — she's the only customer with no order.
4131        assert_eq!(r.rows.len(), 1);
4132        assert_eq!(r.rows[0][0].to_display_string(), "Carol");
4133        assert_eq!(r.rows[0][1], Value::Null);
4134    }
4135
4136    #[test]
4137    fn select_star_over_join_emits_all_columns_from_both_tables() {
4138        let db = seed_join_fixture();
4139        let r = run_rows(
4140            &db,
4141            "SELECT * FROM customers \
4142             INNER JOIN orders ON customers.id = orders.customer_id;",
4143        );
4144        // customers has 2 cols (id, name), orders has 3 cols
4145        // (id, customer_id, amount). 5 columns total. Header order
4146        // follows source order — primary table first.
4147        assert_eq!(
4148            r.columns,
4149            vec![
4150                "id".to_string(),
4151                "name".to_string(),
4152                "id".to_string(),
4153                "customer_id".to_string(),
4154                "amount".to_string(),
4155            ]
4156        );
4157        assert_eq!(r.rows.len(), 3);
4158    }
4159
4160    #[test]
4161    fn join_order_by_sorts_full_joined_rows() {
4162        let db = seed_join_fixture();
4163        let r = run_rows(
4164            &db,
4165            "SELECT c.name, o.amount FROM customers AS c \
4166             INNER JOIN orders AS o ON c.id = o.customer_id \
4167             ORDER BY o.amount;",
4168        );
4169        let amounts: Vec<i64> = r
4170            .rows
4171            .iter()
4172            .map(|row| match row[1] {
4173                Value::Integer(i) => i,
4174                ref v => panic!("expected integer, got {v:?}"),
4175            })
4176            .collect();
4177        assert_eq!(amounts, vec![50, 100, 200]);
4178    }
4179
4180    #[test]
4181    fn join_limit_truncates_after_join_and_sort() {
4182        let db = seed_join_fixture();
4183        let r = run_rows(
4184            &db,
4185            "SELECT c.name, o.amount FROM customers AS c \
4186             INNER JOIN orders AS o ON c.id = o.customer_id \
4187             ORDER BY o.amount DESC LIMIT 2;",
4188        );
4189        assert_eq!(r.rows.len(), 2);
4190        // Top two by amount DESC: 200 (Alice), 100 (Alice).
4191        let amounts: Vec<i64> = r
4192            .rows
4193            .iter()
4194            .map(|row| match row[1] {
4195                Value::Integer(i) => i,
4196                ref v => panic!("expected integer, got {v:?}"),
4197            })
4198            .collect();
4199        assert_eq!(amounts, vec![200, 100]);
4200    }
4201
4202    #[test]
4203    fn three_table_join_chains_correctly() {
4204        let mut db = Database::new("t".to_string());
4205        for sql in [
4206            "CREATE TABLE a (id INTEGER PRIMARY KEY, label TEXT);",
4207            "CREATE TABLE b (id INTEGER PRIMARY KEY, a_id INTEGER, tag TEXT);",
4208            "CREATE TABLE c (id INTEGER PRIMARY KEY, b_id INTEGER, note TEXT);",
4209            "INSERT INTO a (label) VALUES ('a-one');",
4210            "INSERT INTO a (label) VALUES ('a-two');",
4211            "INSERT INTO b (a_id, tag) VALUES (1, 'b1');",
4212            "INSERT INTO b (a_id, tag) VALUES (2, 'b2');",
4213            "INSERT INTO c (b_id, note) VALUES (1, 'c1');",
4214        ] {
4215            crate::sql::process_command(sql, &mut db).unwrap();
4216        }
4217        let r = run_rows(
4218            &db,
4219            "SELECT a.label, b.tag, c.note FROM a \
4220             INNER JOIN b ON a.id = b.a_id \
4221             INNER JOIN c ON b.id = c.b_id;",
4222        );
4223        // Only b1 has a c row. So one combined row.
4224        assert_eq!(r.rows.len(), 1);
4225        assert_eq!(r.rows[0][0].to_display_string(), "a-one");
4226        assert_eq!(r.rows[0][1].to_display_string(), "b1");
4227        assert_eq!(r.rows[0][2].to_display_string(), "c1");
4228    }
4229
4230    #[test]
4231    fn ambiguous_unqualified_column_in_join_errors() {
4232        // Both customers and orders have a column named `id`. An
4233        // unqualified `id` in the SELECT must error rather than
4234        // silently picking one side.
4235        let db = seed_join_fixture();
4236        let q = parse_select(
4237            "SELECT id FROM customers INNER JOIN orders ON customers.id = orders.customer_id;",
4238        );
4239        let res = execute_select_rows(q, &db);
4240        assert!(res.is_err(), "unqualified ambiguous 'id' should error");
4241    }
4242
4243    #[test]
4244    fn join_self_without_alias_is_rejected() {
4245        let mut db = Database::new("t".to_string());
4246        crate::sql::process_command(
4247            "CREATE TABLE n (id INTEGER PRIMARY KEY, parent INTEGER);",
4248            &mut db,
4249        )
4250        .unwrap();
4251        let q = parse_select("SELECT n.id FROM n INNER JOIN n ON n.id = n.parent;");
4252        let res = execute_select_rows(q, &db);
4253        assert!(
4254            res.is_err(),
4255            "self-join without an alias should error on duplicate qualifier"
4256        );
4257    }
4258
4259    #[test]
4260    fn using_or_natural_join_returns_not_implemented() {
4261        let mut db = Database::new("t".to_string());
4262        crate::sql::process_command("CREATE TABLE a (id INTEGER PRIMARY KEY);", &mut db).unwrap();
4263        crate::sql::process_command("CREATE TABLE b (id INTEGER PRIMARY KEY);", &mut db).unwrap();
4264        let err = crate::sql::process_command("SELECT * FROM a INNER JOIN b USING (id);", &mut db);
4265        assert!(err.is_err(), "USING is not yet supported");
4266
4267        let err = crate::sql::process_command("SELECT * FROM a NATURAL JOIN b;", &mut db);
4268        assert!(err.is_err(), "NATURAL is not supported");
4269    }
4270
4271    #[test]
4272    fn aggregates_over_join_are_rejected() {
4273        let db = seed_join_fixture();
4274        let err = crate::sql::process_command(
4275            "SELECT COUNT(*) FROM customers \
4276             INNER JOIN orders ON customers.id = orders.customer_id;",
4277            &mut seed_join_fixture(),
4278        );
4279        assert!(err.is_err(), "aggregates over JOIN are not yet supported");
4280        let _ = db; // keep compiler happy if unused
4281    }
4282
4283    #[test]
4284    fn left_join_with_no_matches_pads_every_row() {
4285        let mut db = Database::new("t".to_string());
4286        for sql in [
4287            "CREATE TABLE a (id INTEGER PRIMARY KEY, x INTEGER);",
4288            "CREATE TABLE b (id INTEGER PRIMARY KEY, y INTEGER);",
4289            "INSERT INTO a (x) VALUES (1);",
4290            "INSERT INTO a (x) VALUES (2);",
4291            "INSERT INTO b (y) VALUES (10);",
4292        ] {
4293            crate::sql::process_command(sql, &mut db).unwrap();
4294        }
4295        // ON condition matches nothing.
4296        let r = run_rows(
4297            &db,
4298            "SELECT a.x, b.y FROM a LEFT OUTER JOIN b ON a.x = b.y;",
4299        );
4300        assert_eq!(r.rows.len(), 2);
4301        for row in &r.rows {
4302            assert_eq!(row[1], Value::Null);
4303        }
4304    }
4305
4306    #[test]
4307    fn left_outer_join_order_by_places_nulls_first() {
4308        // NULL ordering matches the engine-wide rule: NULL is Less
4309        // than every concrete value (see compare_values). So an
4310        // ORDER BY of a NULL-padded right column puts the
4311        // outer-join row at the top under ASC.
4312        let db = seed_join_fixture();
4313        let r = run_rows(
4314            &db,
4315            "SELECT c.name, o.amount FROM customers AS c \
4316             LEFT OUTER JOIN orders AS o ON c.id = o.customer_id \
4317             ORDER BY o.amount ASC;",
4318        );
4319        assert_eq!(r.rows.len(), 4);
4320        // Carol's NULL amount sorts first.
4321        assert_eq!(r.rows[0][0].to_display_string(), "Carol");
4322        assert_eq!(r.rows[0][1], Value::Null);
4323    }
4324
4325    #[test]
4326    fn chained_left_outer_join_preserves_left_through_two_levels() {
4327        // A LEFT JOIN B LEFT JOIN C — a row in A with no match in B
4328        // must survive both joins with NULL padding for both sides.
4329        let mut db = Database::new("t".to_string());
4330        for sql in [
4331            "CREATE TABLE a (id INTEGER PRIMARY KEY, label TEXT);",
4332            "CREATE TABLE b (id INTEGER PRIMARY KEY, a_id INTEGER, tag TEXT);",
4333            "CREATE TABLE c (id INTEGER PRIMARY KEY, b_id INTEGER, note TEXT);",
4334            "INSERT INTO a (label) VALUES ('a-one');",
4335            "INSERT INTO a (label) VALUES ('a-two');",
4336            // b only matches a-one.
4337            "INSERT INTO b (a_id, tag) VALUES (1, 'b1');",
4338            // No c rows at all.
4339        ] {
4340            crate::sql::process_command(sql, &mut db).unwrap();
4341        }
4342        let r = run_rows(
4343            &db,
4344            "SELECT a.label, b.tag, c.note FROM a \
4345             LEFT OUTER JOIN b ON a.id = b.a_id \
4346             LEFT OUTER JOIN c ON b.id = c.b_id;",
4347        );
4348        // Two rows: a-one + b1 with c=NULL, and a-two with b=NULL+c=NULL.
4349        assert_eq!(r.rows.len(), 2);
4350        let by_label: std::collections::HashMap<String, &Vec<Value>> = r
4351            .rows
4352            .iter()
4353            .map(|row| (row[0].to_display_string(), row))
4354            .collect();
4355        assert_eq!(by_label["a-one"][1].to_display_string(), "b1");
4356        assert_eq!(by_label["a-one"][2], Value::Null);
4357        assert_eq!(by_label["a-two"][1], Value::Null);
4358        assert_eq!(by_label["a-two"][2], Value::Null);
4359    }
4360
4361    #[test]
4362    fn on_clause_referencing_not_yet_joined_table_errors_clearly() {
4363        // ON should only see tables joined so far. Referencing a
4364        // table that hasn't joined yet is a clean error rather than
4365        // silently NULL-coalescing into "ON evaluated false".
4366        let mut db = Database::new("t".to_string());
4367        for sql in [
4368            "CREATE TABLE a (id INTEGER PRIMARY KEY, x INTEGER);",
4369            "CREATE TABLE b (id INTEGER PRIMARY KEY, x INTEGER);",
4370            "CREATE TABLE c (id INTEGER PRIMARY KEY, x INTEGER);",
4371            "INSERT INTO a (x) VALUES (1);",
4372            "INSERT INTO b (x) VALUES (1);",
4373            "INSERT INTO c (x) VALUES (1);",
4374        ] {
4375            crate::sql::process_command(sql, &mut db).unwrap();
4376        }
4377        let q =
4378            parse_select("SELECT a.x FROM a INNER JOIN b ON a.x = c.x INNER JOIN c ON b.x = c.x;");
4379        let res = execute_select_rows(q, &db);
4380        assert!(
4381            res.is_err(),
4382            "ON referencing not-yet-joined table 'c' should error"
4383        );
4384    }
4385
4386    #[test]
4387    fn join_on_truthy_integer_is_accepted() {
4388        // ON `1` should be treated as true, like WHERE 1. Verifies
4389        // the executor reuses eval_predicate_scope's truthiness
4390        // semantic on JOIN conditions.
4391        let mut db = Database::new("t".to_string());
4392        for sql in [
4393            "CREATE TABLE a (id INTEGER PRIMARY KEY, x INTEGER);",
4394            "CREATE TABLE b (id INTEGER PRIMARY KEY, y INTEGER);",
4395            "INSERT INTO a (x) VALUES (1);",
4396            "INSERT INTO a (x) VALUES (2);",
4397            "INSERT INTO b (y) VALUES (10);",
4398            "INSERT INTO b (y) VALUES (20);",
4399        ] {
4400            crate::sql::process_command(sql, &mut db).unwrap();
4401        }
4402        let r = run_rows(&db, "SELECT a.x, b.y FROM a INNER JOIN b ON 1;");
4403        // ON 1 is always true → cross product → 2 × 2 = 4 rows.
4404        assert_eq!(r.rows.len(), 4);
4405    }
4406
4407    #[test]
4408    fn full_join_on_empty_tables_returns_empty() {
4409        let mut db = Database::new("t".to_string());
4410        for sql in [
4411            "CREATE TABLE a (id INTEGER PRIMARY KEY, x INTEGER);",
4412            "CREATE TABLE b (id INTEGER PRIMARY KEY, y INTEGER);",
4413        ] {
4414            crate::sql::process_command(sql, &mut db).unwrap();
4415        }
4416        let r = run_rows(
4417            &db,
4418            "SELECT a.x, b.y FROM a FULL OUTER JOIN b ON a.x = b.y;",
4419        );
4420        assert!(r.rows.is_empty());
4421    }
4422}