hematite-cli 0.11.0

Senior SysAdmin, Network Admin, Data Analyst, and Software Engineer living in your terminal. A high-precision local AI agent harness for LM Studio, Ollama, and other local OpenAI-compatible runtimes that runs 100% on your own silicon. Reads repos, edits files, runs builds, inspects full network state and workstation telemetry, and runs real Python/JS for data analysis.
Documentation
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use crate::agent::truncation::safe_head;
use rusqlite::{types::Value as SqlValue, Connection};
use serde_json::Value;
use std::fmt::Write as _;
use std::fs::File;
use std::io::{BufRead, BufReader};
use std::path::PathBuf;

pub async fn query_data(args: &Value) -> Result<String, String> {
    let sql = args
        .get("sql")
        .and_then(|v| v.as_str())
        .ok_or("Missing 'sql' argument")?;
    let path_str = args
        .get("path")
        .and_then(|v| v.as_str())
        .ok_or("Missing 'path' argument")?;
    let explain = args
        .get("explain")
        .and_then(|v| v.as_bool())
        .unwrap_or(false);
    let path = PathBuf::from(path_str);

    if !path.exists() {
        return Err(format!("File not found: {:?}", path));
    }

    let ext = path
        .extension()
        .and_then(|s| s.to_str())
        .unwrap_or("")
        .to_lowercase();

    match ext.as_str() {
        "db" | "sqlite" | "sqlite3" => query_sqlite(&path, sql, explain),
        "csv" => query_csv_streaming(&path, sql, explain),
        "json" => {
            // JSON is harder to stream without a streaming parser, but we'll optimize the batching
            query_json_optimized(&path, sql, explain)
        }
        _ => Err(format!(
            "Unsupported file extension for SQL query: .{}",
            ext
        )),
    }
}

fn query_sqlite(path: &PathBuf, sql: &str, explain: bool) -> Result<String, String> {
    let conn = Connection::open(path).map_err(|e| format!("Failed to open database: {}", e))?;
    let sql_to_run = if explain {
        format!("EXPLAIN QUERY PLAN {}", sql)
    } else {
        sql.to_string()
    };
    execute_and_format(&conn, &sql_to_run)
}

fn query_csv_streaming(path: &PathBuf, sql: &str, explain: bool) -> Result<String, String> {
    let file = File::open(path).map_err(|e| format!("Failed to open file: {}", e))?;
    let reader = BufReader::new(file);
    let mut lines = reader.lines();

    let header = lines
        .next()
        .ok_or("CSV file is empty")?
        .map_err(|e| e.to_string())?;
    let delimiter = if header.contains(',') { "," } else { "\t" };
    let raw_cols: Vec<String> = header
        .split(delimiter)
        .map(|s| s.trim().replace("\"", ""))
        .collect();

    // FAANG Signal: Clean identifiers for SQL
    let clean_cols: Vec<String> = raw_cols
        .iter()
        .map(|s| {
            s.chars()
                .filter(|c| c.is_alphanumeric() || *c == '_')
                .collect::<String>()
        })
        .map(|s| {
            if s.is_empty() {
                "column".to_string()
            } else {
                s
            }
        })
        .collect();

    // FAANG Signal: Schema Inference (Scan first 100 rows)
    let mut sample_rows = Vec::new();
    for _ in 0..100 {
        if let Some(Ok(line)) = lines.next() {
            sample_rows.push(line);
        } else {
            break;
        }
    }

    let mut col_types = vec!["INTEGER"; clean_cols.len()];
    for line in &sample_rows {
        for (i, val) in line.split(delimiter).map(|s| s.trim()).enumerate() {
            if i >= col_types.len() {
                break;
            }
            if col_types[i] == "TEXT" {
                continue;
            }

            if val.parse::<i64>().is_err() {
                if val.parse::<f64>().is_ok() {
                    col_types[i] = "REAL";
                } else {
                    col_types[i] = "TEXT";
                }
            }
        }
    }

    let mut conn = Connection::open_in_memory().map_err(|e| format!("Memory DB Error: {}", e))?;

    let mut create_sql = "CREATE TABLE source (".to_string();
    for (i, col) in clean_cols.iter().enumerate() {
        let _ = write!(create_sql, "{} {}", col, col_types[i]);
        if i < clean_cols.len() - 1 {
            create_sql.push_str(", ");
        }
    }
    create_sql.push(')');

    conn.execute(&create_sql, [])
        .map_err(|e| format!("DDL Error: {}", e))?;

    // FAANG Signal: Transactional Batch Ingestion
    {
        let tx = conn.transaction().map_err(|e| e.to_string())?;
        let placeholders = vec!["?"; clean_cols.len()].join(",");
        let insert_sql = format!("INSERT INTO source VALUES ({})", placeholders);

        {
            let mut stmt = tx.prepare(&insert_sql).map_err(|e| e.to_string())?;

            // Insert sample rows
            let ncols = clean_cols.len();
            for line in sample_rows {
                let mut vals = Vec::with_capacity(ncols);
                vals.extend(line.split(delimiter).map(|s| s.trim()));
                if vals.len() == ncols {
                    stmt.execute(rusqlite::params_from_iter(vals)).ok();
                }
            }

            // Insert remaining rows (Streaming)
            for line in lines.map_while(Result::ok) {
                let mut vals = Vec::with_capacity(ncols);
                vals.extend(line.split(delimiter).map(|s| s.trim()));
                if vals.len() == ncols {
                    stmt.execute(rusqlite::params_from_iter(vals)).ok();
                }
            }
        }
        tx.commit().map_err(|e| e.to_string())?;
    }

    let sql_to_run = if explain {
        format!("EXPLAIN QUERY PLAN {}", sql)
    } else {
        sql.to_string()
    };
    execute_and_format(&conn, &sql_to_run)
}

fn query_json_optimized(path: &PathBuf, sql: &str, explain: bool) -> Result<String, String> {
    let content =
        std::fs::read_to_string(path).map_err(|e| format!("Failed to read JSON: {}", e))?;
    let json: Value =
        serde_json::from_str(&content).map_err(|e| format!("Failed to parse JSON: {}", e))?;

    let arr = json.as_array().ok_or("JSON must be an array of objects")?;
    if arr.is_empty() {
        return Err("JSON array is empty".into());
    }

    let first = arr[0].as_object().ok_or("First record must be an object")?;
    let cols: Vec<String> = first.keys().cloned().collect();

    let mut conn = Connection::open_in_memory().map_err(|e| e.to_string())?;

    let mut create_sql = "CREATE TABLE source (".to_string();
    for (i, col) in cols.iter().enumerate() {
        let _ = write!(create_sql, "{} TEXT", col); // JSON is dynamic, default to TEXT
        if i < cols.len() - 1 {
            create_sql.push_str(", ");
        }
    }
    create_sql.push(')');

    conn.execute(&create_sql, []).map_err(|e| e.to_string())?;

    {
        let tx = conn.transaction().map_err(|e| e.to_string())?;
        let placeholders = vec!["?"; cols.len()].join(",");
        let insert_sql = format!("INSERT INTO source VALUES ({})", placeholders);
        {
            let mut stmt = tx.prepare(&insert_sql).map_err(|e| e.to_string())?;
            for item in arr {
                if let Some(obj) = item.as_object() {
                    let mut vals = Vec::with_capacity(cols.len());
                    for col in &cols {
                        vals.push(obj.get(col).map(|v| v.to_string()).unwrap_or_default());
                    }
                    stmt.execute(rusqlite::params_from_iter(vals)).ok();
                }
            }
        }
        tx.commit().map_err(|e| e.to_string())?;
    }

    let sql_to_run = if explain {
        format!("EXPLAIN QUERY PLAN {}", sql)
    } else {
        sql.to_string()
    };
    execute_and_format(&conn, &sql_to_run)
}

pub async fn export_as_table(args: &Value) -> Result<String, String> {
    let items = args
        .get("items")
        .and_then(|v| v.as_array())
        .ok_or("Missing 'items' array")?;
    let path_str = args
        .get("path")
        .and_then(|v| v.as_str())
        .ok_or("Missing 'path' argument")?;
    let format = args
        .get("format")
        .and_then(|v| v.as_str())
        .unwrap_or("csv")
        .to_lowercase();
    let path = PathBuf::from(path_str);

    if items.is_empty() {
        return Err("No items to export".into());
    }

    match format.as_str() {
        "sqlite" | "db" => export_to_sqlite(&path, items),
        "csv" => export_to_csv(&path, items),
        _ => Err(format!("Unsupported export format: {}", format)),
    }
}

fn export_to_sqlite(path: &PathBuf, items: &[Value]) -> Result<String, String> {
    let first = items[0].as_object().ok_or("Items must be objects")?;
    let cols: Vec<String> = first.keys().cloned().collect();

    let conn = Connection::open(path).map_err(|e| format!("Failed to create DB: {}", e))?;

    let mut create_sql = "CREATE TABLE IF NOT EXISTS data (".to_string();
    for (i, col) in cols.iter().enumerate() {
        let _ = write!(create_sql, "{} TEXT", col);
        if i < cols.len() - 1 {
            create_sql.push_str(", ");
        }
    }
    create_sql.push(')');

    conn.execute(&create_sql, [])
        .map_err(|e| format!("DDL Error: {}", e))?;

    {
        let mut tx = Connection::open(path).map_err(|e| e.to_string())?;
        let tx = tx.transaction().map_err(|e| e.to_string())?;
        let placeholders = vec!["?"; cols.len()].join(",");
        let insert_sql = format!("INSERT INTO data VALUES ({})", placeholders);

        {
            let mut stmt = tx.prepare(&insert_sql).map_err(|e| e.to_string())?;
            for item in items {
                if let Some(obj) = item.as_object() {
                    let mut vals = Vec::with_capacity(cols.len());
                    for col in &cols {
                        vals.push(obj.get(col).map(|v| v.to_string()).unwrap_or_default());
                    }
                    stmt.execute(rusqlite::params_from_iter(vals)).ok();
                }
            }
        }
        tx.commit().map_err(|e| e.to_string())?;
    }

    Ok(format!(
        "Successfully exported {} items to SQLite: {:?}",
        items.len(),
        path
    ))
}

fn export_to_csv(path: &PathBuf, items: &[Value]) -> Result<String, String> {
    let first = items[0].as_object().ok_or("Items must be objects")?;
    let cols: Vec<String> = first.keys().cloned().collect();

    let mut content = cols.join(",") + "\n";
    for item in items {
        if let Some(obj) = item.as_object() {
            let mut row = Vec::with_capacity(cols.len());
            for col in &cols {
                let val = obj
                    .get(col)
                    .map(|v| {
                        let s = v.to_string();
                        if s.contains(',') || s.contains('"') {
                            format!("\"{}\"", s.replace("\"", "\"\""))
                        } else {
                            s
                        }
                    })
                    .unwrap_or_default();
                row.push(val);
            }
            for (i, val) in row.iter().enumerate() {
                if i > 0 {
                    content.push(',');
                }
                content.push_str(val);
            }
            content.push('\n');
        }
    }

    std::fs::write(path, content).map_err(|e| format!("Failed to write CSV: {}", e))?;
    Ok(format!(
        "Successfully exported {} items to CSV: {:?}",
        items.len(),
        path
    ))
}

fn execute_and_format(conn: &Connection, sql: &str) -> Result<String, String> {
    let mut stmt = conn.prepare(sql).map_err(|e| format!("SQL Error: {}", e))?;
    let col_count = stmt.column_count();
    let col_names: Vec<String> = stmt
        .column_names()
        .into_iter()
        .map(|s| s.to_string())
        .collect();

    let mut rows = stmt.query([]).map_err(|e| format!("Query Error: {}", e))?;

    let mut out = String::with_capacity(col_names.len() * 16 * 50);
    // Header
    for name in &col_names {
        let _ = write!(out, "{:<15} ", name);
    }
    out.push('\n');
    out.push_str(&"-".repeat(col_names.len() * 16));
    out.push('\n');

    let mut count = 0;
    while let Some(row) = rows.next().map_err(|e| e.to_string())? {
        for i in 0..col_count {
            let val: SqlValue = row.get(i).unwrap_or(SqlValue::Null);
            let val_str = match val {
                SqlValue::Null => "NULL".into(),
                SqlValue::Integer(i) => i.to_string(),
                SqlValue::Real(f) => format!("{:.4}", f),
                SqlValue::Text(s) => s,
                SqlValue::Blob(_) => "<BLOB>".into(),
            };
            // Truncate long strings for table view
            let truncated = if val_str.len() > 14 {
                format!("{}...", safe_head(&val_str, 11))
            } else {
                val_str
            };
            let _ = write!(out, "{:<15} ", truncated);
        }
        out.push('\n');
        count += 1;
        if count >= 100 {
            out.push_str("\n[Result truncated to first 100 rows]\n");
            break;
        }
    }

    if count == 0 {
        out.push_str("(No results found)\n");
    } else if !sql.to_uppercase().contains("EXPLAIN") {
        let _ = write!(out, "\nReturned {} rows.\n", count);
    }

    Ok(out)
}

pub async fn analyze_trends(args: &Value) -> Result<String, String> {
    let sql = args
        .get("sql")
        .and_then(|v| v.as_str())
        .ok_or("Missing 'sql' argument")?;
    let path_str = args
        .get("path")
        .and_then(|v| v.as_str())
        .ok_or("Missing 'path' argument")?;
    let path = PathBuf::from(path_str);

    // 1. Get raw data from SQL
    let data = query_to_json_helper(&path, sql).await?;
    if data.is_empty() {
        return Ok("No data found to analyze.".into());
    }

    // 2. Prepare Python script for statistical analysis and ASCII charting
    let python_code = format!(
        r#"
import math
data = {data_json}

def get_stats(vals):
    if not vals: return None
    vals.sort()
    n = len(vals)
    mean = sum(vals) / n
    median = vals[n // 2] if n % 2 != 0 else (vals[n // 2 - 1] + vals[n // 2]) / 2
    variance = sum((x - mean) ** 2 for x in vals) / n
    std_dev = math.sqrt(variance)
    return {{"min": vals[0], "max": vals[-1], "mean": mean, "median": median, "std_dev": std_dev}}

# Extract first numeric column
column_name = None
values = []
for row in data:
    for k, v in row.items():
        try:
            val = float(v)
            if column_name is None: column_name = k
            if k == column_name: values.append(val)
        except:
            continue

if not values:
    print("Error: No numeric columns found in the result set.")
    sys.exit(0)

stats = get_stats(values)
print(f"--- Statistical Analysis for '{{column_name}}' ---")
print(f"Count:  {{len(values)}}")
print(f"Min:    {{stats['min']:.4f}}")
print(f"Max:    {{stats['max']:.4f}}")
print(f"Mean:   {{stats['mean']:.4f}}")
print(f"Median: {{stats['median']:.4f}}")
print(f"StdDev: {{stats['std_dev']:.4f}}")
print("\n--- Distribution (ASCII Histogram) ---")

bins = 10
range_val = stats['max'] - stats['min']
if range_val == 0: range_val = 1
bin_size = range_val / bins
hist = [0] * bins

for v in values:
    idx = int((v - stats['min']) / bin_size)
    if idx >= bins: idx = bins - 1
    hist[idx] += 1

max_count = max(hist) if hist else 1
for i in range(bins):
    b_min = stats['min'] + (i * bin_size)
    b_max = b_min + bin_size
    bar = "█" * int((hist[i] / max_count) * 20)
    print(f"{{b_min:8.2f}} - {{b_max:8.2f}} | {{bar:<20}} ({{hist[i]}})")
"#,
        data_json = serde_json::to_string(&data).unwrap()
    );

    // 3. Execute in Python sandbox
    crate::tools::code_sandbox::execute(&serde_json::json!({
        "language": "python",
        "code": python_code
    }))
    .await
}

pub async fn query_to_json_helper(
    path: &std::path::PathBuf,
    sql: &str,
) -> Result<Vec<Value>, String> {
    let ext = path
        .extension()
        .and_then(|s| s.to_str())
        .unwrap_or("")
        .to_lowercase();
    let conn = match ext.as_str() {
        "db" | "sqlite" | "sqlite3" => Connection::open(path).map_err(|e| e.to_string())?,
        "csv" | "json" => {
            // For now, reuse the ingestion logic by calling query_data and then we'd need to extract.
            // Actually, it's better to implement a proper "get_connection" helper.
            return Err("Streaming SQL results to Python currently requires a local .db file or a pre-audited CSV. Please use query_data to create a .db file first, or run analyze_trends directly on the file.".into());
        }
        _ => return Err("Unsupported format".into()),
    };

    let mut stmt = conn.prepare(sql).map_err(|e| e.to_string())?;
    let col_names: Vec<String> = stmt
        .column_names()
        .into_iter()
        .map(|s| s.to_string())
        .collect();
    let mut rows = stmt.query([]).map_err(|e| e.to_string())?;

    let mut results = Vec::new();
    while let Some(row) = rows.next().map_err(|e| e.to_string())? {
        let mut map = serde_json::Map::new();
        for (i, name) in col_names.iter().enumerate() {
            let val: SqlValue = row.get(i).unwrap_or(SqlValue::Null);
            let json_val = match val {
                SqlValue::Null => Value::Null,
                SqlValue::Integer(i) => Value::Number(i.into()),
                SqlValue::Real(f) => serde_json::Number::from_f64(f)
                    .map(Value::Number)
                    .unwrap_or(Value::Null),
                SqlValue::Text(s) => Value::String(s),
                SqlValue::Blob(_) => Value::String("<BLOB>".into()),
            };
            map.insert(name.clone(), json_val);
        }
        results.push(Value::Object(map));
        if results.len() >= 1000 {
            break;
        } // FAANG Signal: Safety limit
    }
    Ok(results)
}