hermes-core 1.8.66

Core async search engine library with WASM support
Documentation
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//! Vector index building for IndexWriter
//!
//! Training is **manual-only** — decoupled from commit.
//! Call `build_vector_index()` explicitly when ready.
//! ANN indexes are built naturally during subsequent merges.

use std::io::Write;
use std::sync::Arc;

use rustc_hash::FxHashMap;

use crate::directories::DirectoryWriter;
use crate::dsl::{DenseVectorConfig, Field, FieldType, VectorIndexType};
use crate::error::{Error, Result};
use crate::segment::{SegmentId, SegmentReader};

use super::IndexWriter;

/// Maximum supported IVF centroid count. Query-side `nprobe` and serialized
/// cluster identifiers use the same practical bound.
const MAX_IVF_CLUSTERS: usize = 4096;

struct TrainedFieldUpdate {
    field_id: u32,
    index_type: VectorIndexType,
    vector_count: usize,
    num_clusters: usize,
    centroids_file: String,
    codebook_file: Option<String>,
}

/// Write adapter that rejects an artifact before its serialized form exceeds
/// the same bound enforced by the loader. Encoding directly through this
/// adapter avoids materializing a second, potentially hundreds-of-megabytes
/// copy of the trained structure.
struct SizeLimitedWriter<'a, W: Write + ?Sized> {
    inner: &'a mut W,
    written: usize,
    limit: usize,
}

impl<'a, W: Write + ?Sized> SizeLimitedWriter<'a, W> {
    fn new(inner: &'a mut W, limit: usize) -> Self {
        Self {
            inner,
            written: 0,
            limit,
        }
    }
}

impl<W: Write + ?Sized> Write for SizeLimitedWriter<'_, W> {
    fn write(&mut self, buffer: &[u8]) -> std::io::Result<usize> {
        let next_size = self
            .written
            .checked_add(buffer.len())
            .ok_or_else(|| std::io::Error::other("trained artifact size overflow"))?;
        if next_size > self.limit {
            return Err(std::io::Error::new(
                std::io::ErrorKind::InvalidData,
                format!(
                    "trained artifact exceeds the {}-byte safety limit",
                    self.limit
                ),
            ));
        }
        let written = self.inner.write(buffer)?;
        self.written += written;
        Ok(written)
    }

    fn flush(&mut self) -> std::io::Result<()> {
        self.inner.flush()
    }
}

fn validate_explicit_ivf_num_clusters(config: &DenseVectorConfig) -> Result<()> {
    match config.num_clusters {
        Some(0) => Err(Error::Schema(
            "dense vector num_clusters must be at least 1".to_string(),
        )),
        Some(value) if value > MAX_IVF_CLUSTERS => Err(Error::Schema(format!(
            "dense vector num_clusters must not exceed {MAX_IVF_CLUSTERS}, got {value}"
        ))),
        _ => Ok(()),
    }
}

/// Validate the configured centroid count and cap it to the training sample.
///
/// Corpus size drives the automatic heuristic, but training cannot produce
/// more distinct centroids than the number of sampled vectors. Keeping this
/// decision here avoids relying on a panic-prone, implicit clamp inside the
/// trainer and gives callers a schema error for invalid explicit values.
fn effective_ivf_num_clusters(
    config: &DenseVectorConfig,
    corpus_count: usize,
    sample_count: usize,
) -> Result<usize> {
    if sample_count == 0 {
        return Err(Error::Schema(
            "cannot train an IVF vector index without sample vectors".to_string(),
        ));
    }

    validate_explicit_ivf_num_clusters(config)?;
    let requested = match config.num_clusters {
        Some(value) => value,
        None => config.optimal_num_clusters(corpus_count),
    };

    Ok(requested.min(sample_count))
}

impl<D: DirectoryWriter + 'static> IndexWriter<D> {
    /// Train vector index from accumulated Flat vectors (manual, not auto-triggered).
    ///
    /// 1. Acquires a snapshot (segments safe to read)
    /// 2. Collects vectors for training
    /// 3. Trains centroids/codebooks
    /// 4. Updates metadata (marks fields as Built)
    /// 5. Publishes to ArcSwap — merges will use these automatically
    ///
    /// Existing flat segments get ANN during normal merges. No rebuild needed.
    pub async fn build_vector_index(&self) -> Result<()> {
        let dense_fields = self.get_dense_vector_fields();
        if dense_fields.is_empty() {
            log::info!("No dense vector fields configured for ANN indexing");
            return Ok(());
        }

        let artifact_update = self.segment_manager.begin_vector_artifact_update().await?;
        self.build_vector_index_locked(&dense_fields, &artifact_update)
            .await
    }

    /// Build while the SegmentManager's artifact-update gate is held.
    async fn build_vector_index_locked(
        &self,
        dense_fields: &[(Field, DenseVectorConfig)],
        artifact_update: &crate::merge::VectorArtifactUpdateGuard,
    ) -> Result<()> {
        // Check which fields need building (skip already built)
        let fields_to_build = self.get_fields_to_build(dense_fields).await;
        if fields_to_build.is_empty() {
            log::info!("All vector fields already built, skipping training");
            return Ok(());
        }

        // Reject malformed explicit settings before opening segments or
        // allocating the bounded training samples.
        for (_, config) in &fields_to_build {
            if config.uses_ivf() {
                validate_explicit_ivf_num_clusters(config)?;
            }
        }

        // Acquire snapshot — segments won't be deleted while we read them
        let snapshot = self.segment_manager.acquire_snapshot().await;
        let segment_ids = snapshot.segment_ids();
        if segment_ids.is_empty() {
            return Ok(());
        }

        // Collect vectors for training
        let (all_vectors, total_vectors) = self
            .collect_vectors_for_training(segment_ids, &fields_to_build)
            .await?;

        self.train_and_publish_fields(
            &fields_to_build,
            &all_vectors,
            &total_vectors,
            artifact_update,
        )
        .await
    }

    /// Train every requested field from pre-collected samples, then durably
    /// publish the artifacts. If any field fails, all durable field states
    /// remain Flat and the successfully written files are merely unreferenced
    /// retry targets.
    async fn train_and_publish_fields(
        &self,
        fields_to_build: &[(Field, DenseVectorConfig)],
        all_vectors: &FxHashMap<u32, Vec<Vec<f32>>>,
        total_vectors: &FxHashMap<u32, usize>,
        artifact_update: &crate::merge::VectorArtifactUpdateGuard,
    ) -> Result<()> {
        let mut updates = Vec::with_capacity(fields_to_build.len());
        for (field, config) in fields_to_build {
            if let Some(update) = self
                .train_field_index(*field, config, all_vectors, total_vectors)
                .await?
            {
                updates.push(update);
            }
        }

        if updates.is_empty() {
            // Fail loud: training was explicitly requested and produced
            // nothing — reporting success would leave callers believing the
            // fields are Built.
            let field_ids: Vec<u32> = fields_to_build.iter().map(|(field, _)| field.0).collect();
            return Err(Error::Schema(format!(
                "cannot train vector index: no training vectors were collected for \
                 field(s) {field_ids:?}; commit documents containing these fields \
                 before building"
            )));
        }

        // Durable metadata and the complete validated ArcSwap set advance in a
        // single cancellation-safe SegmentManager transaction.
        self.segment_manager
            .update_vector_metadata_and_publish(artifact_update, |meta| {
                for update in &updates {
                    meta.init_field(update.field_id, update.index_type);
                    meta.mark_field_built(
                        update.field_id,
                        update.vector_count,
                        update.num_clusters,
                        update.centroids_file.clone(),
                        update.codebook_file.clone(),
                    );
                }
            })
            .await?;

        log::info!("Vector index training complete, ANN will be built during merges");

        Ok(())
    }

    /// Rebuild vector index by retraining centroids/codebooks.
    ///
    /// Rebuilding a global artifact generation is only safe while every
    /// committed segment is still flat. IVF/ScaNN segments embed the artifact
    /// versions they were built with and cannot be interpreted by freshly
    /// trained centroids/codebooks.
    pub async fn rebuild_vector_index(&self) -> Result<()> {
        let dense_fields = self.get_dense_vector_fields();
        if dense_fields.is_empty() {
            return Ok(());
        }

        // Raise the producer gate and drain operations that may already have
        // captured the previous trained generation. New producers continue in
        // flat mode until this guard drops.
        let artifact_update = self.segment_manager.begin_vector_artifact_update().await?;
        let snapshot = self.segment_manager.acquire_snapshot().await;
        let field_ids: Vec<u32> = dense_fields.iter().map(|(field, _)| field.0).collect();
        self.reject_rebuild_with_ann_segments(snapshot.segment_ids(), &field_ids)
            .await?;

        // Reject malformed explicit settings before collecting samples.
        for (_, config) in &dense_fields {
            if config.uses_ivf() {
                validate_explicit_ivf_num_clusters(config)?;
            }
        }

        // Collect the retraining samples BEFORE the durable Built -> Flat
        // reset: a read failure (propagated by collect_vectors_for_training)
        // or an empty sample for a Built field must not destructively
        // downgrade the published artifact generation.
        let (all_vectors, total_vectors) = self
            .collect_vectors_for_training(snapshot.segment_ids(), &dense_fields)
            .await?;
        let built_fields: Vec<u32> = self
            .segment_manager
            .read_metadata(|meta| {
                field_ids
                    .iter()
                    .filter(|field_id| meta.is_field_built(**field_id))
                    .copied()
                    .collect()
            })
            .await;
        let starved_built: Vec<u32> = built_fields
            .into_iter()
            .filter(|field_id| all_vectors.get(field_id).is_none_or(|v| v.is_empty()))
            .collect();
        if !starved_built.is_empty() {
            return Err(Error::Schema(format!(
                "cannot retrain vector index: no training vectors could be collected \
                 for built field(s) {starved_built:?}; the existing trained artifacts \
                 are left in place"
            )));
        }

        // Reset metadata and the ArcSwap set together. Old fixed-name artifact
        // files are left in place until the atomic writer replaces them; this
        // avoids a cancellation window and does not accumulate generations.
        self.segment_manager
            .update_vector_metadata_and_publish(&artifact_update, |meta| {
                for field_id in &field_ids {
                    if let Some(field_meta) = meta.vector_fields.get_mut(field_id) {
                        field_meta.state = super::VectorIndexState::Flat;
                        field_meta.centroids_file = None;
                        field_meta.codebook_file = None;
                    }
                }
                meta.refresh_total_vectors();
            })
            .await?;

        log::info!("Reset vector index state to Flat, retraining from collected samples...");

        self.train_and_publish_fields(
            &dense_fields,
            &all_vectors,
            &total_vectors,
            &artifact_update,
        )
        .await
    }

    // ========================================================================
    // Helper methods
    // ========================================================================

    async fn reject_rebuild_with_ann_segments(
        &self,
        segment_ids: &[String],
        field_ids: &[u32],
    ) -> Result<()> {
        for id_str in segment_ids {
            let segment_id = SegmentId::from_hex(id_str)
                .ok_or_else(|| Error::Corruption(format!("Invalid segment ID: {id_str}")))?;
            let reader = SegmentReader::open_with_cache_blocks(
                self.directory.as_ref(),
                segment_id,
                Arc::clone(&self.schema),
                self.config.term_cache_blocks,
                self.config.store_cache_blocks,
            )
            .await?;
            Self::reject_ann_in_reader(&reader, id_str, field_ids)?;
        }
        Ok(())
    }

    fn reject_ann_in_reader(reader: &SegmentReader, id_str: &str, field_ids: &[u32]) -> Result<()> {
        for &field_id in field_ids {
            if matches!(
                reader.vector_indexes().get(&field_id),
                Some(crate::segment::VectorIndex::IVF(_))
                    | Some(crate::segment::VectorIndex::ScaNN(_))
            ) {
                return Err(Error::Schema(format!(
                    "cannot retrain vector artifacts for field {field_id}: segment {id_str} \
                     already contains an IVF/ScaNN index built with the current generation; \
                     rebuild requires all committed segments for the field to be flat"
                )));
            }
        }
        Ok(())
    }

    /// Get all dense vector fields that need ANN indexes
    fn get_dense_vector_fields(&self) -> Vec<(Field, DenseVectorConfig)> {
        self.schema
            .fields()
            .filter_map(|(field, entry)| {
                if entry.field_type == FieldType::DenseVector && entry.indexed {
                    entry
                        .dense_vector_config
                        .as_ref()
                        // Only IVF-backed indexes require a global training
                        // artifact. Standalone RaBitQ trains per segment; including
                        // it here repeatedly sampled up to 100k vectors and then
                        // returned without producing metadata.
                        .filter(|c| c.uses_ivf())
                        .map(|c| (field, c.clone()))
                } else {
                    None
                }
            })
            .collect()
    }

    /// Get fields that need building (not already built)
    async fn get_fields_to_build(
        &self,
        dense_fields: &[(Field, DenseVectorConfig)],
    ) -> Vec<(Field, DenseVectorConfig)> {
        let field_ids: Vec<u32> = dense_fields.iter().map(|(f, _)| f.0).collect();
        let built: Vec<u32> = self
            .segment_manager
            .read_metadata(|meta| {
                field_ids
                    .iter()
                    .filter(|fid| meta.is_field_built(**fid))
                    .copied()
                    .collect()
            })
            .await;
        dense_fields
            .iter()
            .filter(|(field, _)| !built.contains(&field.0))
            .cloned()
            .collect()
    }

    /// Collect vectors from segments for training, with sampling for large datasets.
    ///
    /// K-means clustering converges well with ~100K samples, so we cap collection
    /// per field to avoid loading millions of vectors into memory.
    async fn collect_vectors_for_training(
        &self,
        segment_ids: &[String],
        fields_to_build: &[(Field, DenseVectorConfig)],
    ) -> Result<(FxHashMap<u32, Vec<Vec<f32>>>, FxHashMap<u32, usize>)> {
        /// Maximum vectors per field for training. K-means converges well with ~100K samples.
        const MAX_TRAINING_VECTORS: usize = 100_000;

        let mut all_vectors: FxHashMap<u32, Vec<Vec<f32>>> = FxHashMap::default();
        let mut total_vectors: FxHashMap<u32, usize> = FxHashMap::default();
        let mut total_skipped = 0usize;
        let field_ids: Vec<u32> = fields_to_build.iter().map(|(field, _)| field.0).collect();

        for id_str in segment_ids {
            let segment_id = SegmentId::from_hex(id_str)
                .ok_or_else(|| Error::Corruption(format!("Invalid segment ID: {}", id_str)))?;
            let reader = SegmentReader::open_with_cache_blocks(
                self.directory.as_ref(),
                segment_id,
                Arc::clone(&self.schema),
                self.config.term_cache_blocks,
                self.config.store_cache_blocks,
            )
            .await?;

            // `build_vector_index` is also effectively a retrain whenever
            // metadata says Flat. A crash-interrupted rebuild from an older
            // Hermes version can leave that state beside committed ANN
            // segments, so validate generation safety during the same segment
            // scan that collects the samples.
            Self::reject_ann_in_reader(&reader, id_str, &field_ids)?;

            for (field_id, lazy_flat) in reader.flat_vectors() {
                if !fields_to_build.iter().any(|(f, _)| f.0 == *field_id) {
                    continue;
                }
                let total = total_vectors.entry(*field_id).or_default();
                *total = total.saturating_add(lazy_flat.num_vectors);
                let entry = all_vectors.entry(*field_id).or_default();
                let remaining = MAX_TRAINING_VECTORS.saturating_sub(entry.len());

                if remaining == 0 {
                    total_skipped += lazy_flat.num_vectors;
                    continue;
                }

                let n = lazy_flat.num_vectors;
                let dim = lazy_flat.dim;
                let quant = lazy_flat.quantization;

                // Determine which vector indices to collect
                let indices: Vec<usize> = if n <= remaining {
                    (0..n).collect()
                } else {
                    let step = (n / remaining).max(1);
                    (0..n).step_by(step).take(remaining).collect()
                };

                if indices.len() < n {
                    total_skipped += n - indices.len();
                }

                // Batch-read and dequantize instead of one-by-one get_vector().
                // Read failures propagate: silently skipping vectors would
                // train on an arbitrarily biased sample (or none at all) with
                // no observability.
                const BATCH: usize = 1024;
                let mut f32_buf = vec![0f32; BATCH * dim];
                for chunk in indices.chunks(BATCH) {
                    // For contiguous ranges, use batch read
                    let start = chunk[0];
                    let end = *chunk.last().unwrap();
                    if end - start + 1 == chunk.len() {
                        // Contiguous — single batch read
                        let batch_bytes = lazy_flat
                            .read_vectors_batch(start, chunk.len())
                            .await
                            .map_err(crate::Error::Io)?;
                        let floats = chunk.len() * dim;
                        f32_buf.resize(floats, 0.0);
                        crate::segment::dequantize_raw(
                            batch_bytes.as_slice(),
                            quant,
                            floats,
                            &mut f32_buf,
                        )
                        .map_err(crate::Error::Io)?;
                        for i in 0..chunk.len() {
                            entry.push(f32_buf[i * dim..(i + 1) * dim].to_vec());
                        }
                    } else {
                        // Non-contiguous (sampled) — read individually but reuse buffer
                        f32_buf.resize(dim, 0.0);
                        for &idx in chunk {
                            lazy_flat
                                .read_vector_into(idx, &mut f32_buf)
                                .await
                                .map_err(crate::Error::Io)?;
                            entry.push(f32_buf[..dim].to_vec());
                        }
                    }
                }
            }
        }

        if total_skipped > 0 {
            let collected: usize = all_vectors.values().map(|v| v.len()).sum();
            log::info!(
                "Sampled {} vectors for training (skipped {}, max {} per field)",
                collected,
                total_skipped,
                MAX_TRAINING_VECTORS,
            );
        }

        Ok((all_vectors, total_vectors))
    }

    /// Train index for a single field
    async fn train_field_index(
        &self,
        field: Field,
        config: &DenseVectorConfig,
        all_vectors: &FxHashMap<u32, Vec<Vec<f32>>>,
        total_vectors: &FxHashMap<u32, usize>,
    ) -> Result<Option<TrainedFieldUpdate>> {
        let field_id = field.0;
        let vectors = match all_vectors.get(&field_id) {
            Some(v) if !v.is_empty() => v,
            _ => return Ok(None),
        };

        let dim = config.dim;
        let sample_count = vectors.len();
        let corpus_count = total_vectors
            .get(&field_id)
            .copied()
            .unwrap_or(sample_count);
        // RaBitQ is trained independently per segment and does not need an
        // index-level centroid artifact.
        if !matches!(
            config.index_type,
            VectorIndexType::IvfRaBitQ | VectorIndexType::ScaNN
        ) {
            return Ok(None);
        }

        let num_clusters = effective_ivf_num_clusters(config, corpus_count, sample_count)?;

        log::info!(
            "Training vector index for field {} with {} sampled / {} total vectors, {} clusters (dim={})",
            field_id,
            sample_count,
            corpus_count,
            num_clusters,
            dim,
        );

        let centroids_filename = format!("field_{}_centroids.bin", field_id);
        let mut codebook_filename: Option<String> = None;

        let actual_num_clusters = match config.index_type {
            VectorIndexType::IvfRaBitQ => {
                self.train_ivf_rabitq(
                    field_id,
                    dim,
                    num_clusters,
                    config.soar.clone(),
                    vectors,
                    &centroids_filename,
                )
                .await?
            }
            VectorIndexType::ScaNN => {
                codebook_filename = Some(format!("field_{}_codebook.bin", field_id));
                self.train_scann(
                    field_id,
                    dim,
                    num_clusters,
                    config.soar.clone(),
                    vectors,
                    &centroids_filename,
                    codebook_filename.as_ref().unwrap(),
                )
                .await?
            }
            _ => unreachable!("non-IVF vector index returned above"),
        };

        Ok(Some(TrainedFieldUpdate {
            field_id,
            index_type: config.index_type,
            vector_count: corpus_count,
            num_clusters: actual_num_clusters,
            centroids_file: centroids_filename,
            codebook_file: codebook_filename,
        }))
    }

    /// Serialize a trained structure to bincode and save to an index-level file.
    async fn save_trained_artifact(
        &self,
        artifact: &impl serde::Serialize,
        filename: &str,
    ) -> Result<()> {
        let temp_filename = format!("{filename}.tmp");
        let temp_path = std::path::Path::new(&temp_filename);
        let final_path = std::path::Path::new(filename);
        let mut writer = self.directory.streaming_writer(temp_path).await?;
        let encode_result = {
            let mut limited = SizeLimitedWriter::new(
                writer.as_mut(),
                super::metadata::MAX_TRAINED_ARTIFACT_BYTES,
            );
            bincode::serde::encode_into_std_write(
                artifact,
                &mut limited,
                bincode::config::standard(),
            )
        };
        if let Err(error) = encode_result {
            drop(writer);
            let _ = self.directory.delete(temp_path).await;
            return Err(Error::Serialization(format!(
                "failed to serialize trained artifact '{filename}': {error}"
            )));
        }
        if let Err(error) = writer.finish() {
            let _ = self.directory.delete(temp_path).await;
            return Err(Error::Io(error));
        }
        if let Err(error) = self.directory.rename(temp_path, final_path).await {
            let _ = self.directory.delete(temp_path).await;
            return Err(Error::Io(error));
        }
        self.directory.sync().await?;
        Ok(())
    }

    /// Train IVF-RaBitQ centroids
    async fn train_ivf_rabitq(
        &self,
        field_id: u32,
        dim: usize,
        num_clusters: usize,
        soar: Option<crate::structures::SoarConfig>,
        vectors: &[Vec<f32>],
        centroids_filename: &str,
    ) -> Result<usize> {
        let mut coarse_config = crate::structures::CoarseConfig::new(dim, num_clusters);
        if let Some(soar) = soar {
            coarse_config = coarse_config.with_soar(soar);
        }
        let centroids = crate::structures::CoarseCentroids::train(&coarse_config, vectors);
        self.save_trained_artifact(&centroids, centroids_filename)
            .await?;

        log::info!(
            "Saved IVF-RaBitQ centroids for field {} ({} clusters, soar={})",
            field_id,
            centroids.num_clusters,
            centroids.soar_config.is_some()
        );
        Ok(centroids.num_clusters as usize)
    }

    /// Train ScaNN (IVF-PQ) centroids and codebook
    #[allow(clippy::too_many_arguments)]
    async fn train_scann(
        &self,
        field_id: u32,
        dim: usize,
        num_clusters: usize,
        soar: Option<crate::structures::SoarConfig>,
        vectors: &[Vec<f32>],
        centroids_filename: &str,
        codebook_filename: &str,
    ) -> Result<usize> {
        let mut coarse_config = crate::structures::CoarseConfig::new(dim, num_clusters);
        if let Some(soar) = soar {
            coarse_config = coarse_config.with_soar(soar);
        }
        let centroids = crate::structures::CoarseCentroids::train(&coarse_config, vectors);
        self.save_trained_artifact(&centroids, centroids_filename)
            .await?;

        let pq_config = crate::structures::PQConfig::new(dim);
        let codebook = crate::structures::PQCodebook::train(pq_config, vectors, 10);
        self.save_trained_artifact(&codebook, codebook_filename)
            .await?;

        log::info!(
            "Saved ScaNN centroids and codebook for field {} ({} clusters)",
            field_id,
            centroids.num_clusters
        );
        Ok(centroids.num_clusters as usize)
    }
}

#[cfg(test)]
mod tests {
    use super::*;

    fn ivf_config(num_clusters: Option<usize>) -> DenseVectorConfig {
        DenseVectorConfig::with_ivf(8, num_clusters, 4)
    }

    #[test]
    fn effective_clusters_follow_corpus_heuristic_but_fit_sample() {
        let config = ivf_config(None);

        assert_eq!(
            effective_ivf_num_clusters(&config, 1_000_000, 73).unwrap(),
            73
        );
        assert_eq!(
            effective_ivf_num_clusters(&config, 10_000, 1_000).unwrap(),
            100
        );
    }

    #[test]
    fn effective_clusters_clamp_explicit_value_to_sample() {
        let config = ivf_config(Some(256));
        assert_eq!(
            effective_ivf_num_clusters(&config, 1_000_000, 17).unwrap(),
            17
        );
    }

    #[test]
    fn effective_clusters_reject_invalid_explicit_bounds() {
        let zero = effective_ivf_num_clusters(&ivf_config(Some(0)), 10_000, 100)
            .unwrap_err()
            .to_string();
        assert!(zero.contains("at least 1"));

        let too_many =
            effective_ivf_num_clusters(&ivf_config(Some(MAX_IVF_CLUSTERS + 1)), 10_000, 100)
                .unwrap_err()
                .to_string();
        assert!(too_many.contains("must not exceed 4096"));
    }

    #[test]
    fn effective_clusters_reject_empty_training_sample() {
        let error = effective_ivf_num_clusters(&ivf_config(None), 10_000, 0)
            .unwrap_err()
            .to_string();
        assert!(error.contains("without sample vectors"));
    }

    #[test]
    fn artifact_writer_enforces_limit_without_writing_past_it() {
        let mut output = Vec::new();
        let mut writer = SizeLimitedWriter::new(&mut output, 3);
        writer.write_all(&[1, 2]).unwrap();
        let error = writer.write_all(&[3, 4]).unwrap_err().to_string();
        assert!(error.contains("3-byte safety limit"), "{error}");
        assert_eq!(output, vec![1, 2]);
    }

    // ===== rebuild destructive-downgrade regression tests =====

    use std::path::Path;
    use std::sync::atomic::{AtomicBool, Ordering};

    use crate::directories::{
        Directory, DirectoryWriter as DirectoryWriterTrait, FileHandle, RamDirectory, RangeReadFn,
    };
    use crate::dsl::{Document, SchemaBuilder};
    use crate::index::{IndexConfig, IndexWriter};

    const READ_FAIL_DOCS: usize = 5;
    const READ_FAIL_DIM: usize = 4;
    /// Flat entry layout of a single-field, flat-only `.vectors` file written
    /// by the segment builder (data-first format): header (16 bytes) + raw f32
    /// vectors + doc-id map + TOC + footer. Only the raw vector region is read
    /// by training collection; segment open touches the header, doc-id map,
    /// TOC, and footer, which all live outside this byte range.
    const VEC_REGION_START: u64 = 16;
    const VEC_REGION_END: u64 = VEC_REGION_START + (READ_FAIL_DOCS * READ_FAIL_DIM * 4) as u64;

    /// RamDirectory wrapper whose `.vectors` handles fail range reads of the
    /// raw vector region while `fail_vector_reads` is armed. Segment open
    /// keeps succeeding, so exactly the training-collection batch reads fail —
    /// the I/O the rebuild path used to swallow with `if let Ok`.
    #[derive(Clone, Default)]
    struct VectorReadFailDirectory {
        inner: RamDirectory,
        fail_vector_reads: Arc<AtomicBool>,
    }

    #[async_trait::async_trait]
    impl Directory for VectorReadFailDirectory {
        async fn exists(&self, path: &Path) -> std::io::Result<bool> {
            self.inner.exists(path).await
        }

        async fn file_size(&self, path: &Path) -> std::io::Result<u64> {
            self.inner.file_size(path).await
        }

        async fn open_read(&self, path: &Path) -> std::io::Result<FileHandle> {
            self.inner.open_read(path).await
        }

        async fn read_range(
            &self,
            path: &Path,
            range: std::ops::Range<u64>,
        ) -> std::io::Result<crate::directories::OwnedBytes> {
            self.inner.read_range(path, range).await
        }

        async fn list_files(&self, prefix: &Path) -> std::io::Result<Vec<std::path::PathBuf>> {
            self.inner.list_files(prefix).await
        }

        async fn open_lazy(&self, path: &Path) -> std::io::Result<FileHandle> {
            let handle = self.inner.open_lazy(path).await?;
            if path.extension().is_some_and(|ext| ext == "vectors") {
                let armed = Arc::clone(&self.fail_vector_reads);
                let len = handle.len();
                let read_fn: RangeReadFn = Arc::new(move |range: std::ops::Range<u64>| {
                    let handle = handle.clone();
                    let armed = Arc::clone(&armed);
                    Box::pin(async move {
                        if armed.load(Ordering::SeqCst)
                            && range.start >= VEC_REGION_START
                            && range.end <= VEC_REGION_END
                        {
                            return Err(std::io::Error::other("injected vector data read failure"));
                        }
                        handle.read_bytes_range(range).await
                    })
                });
                return Ok(FileHandle::lazy(len, read_fn));
            }
            Ok(handle)
        }
    }

    #[async_trait::async_trait]
    impl DirectoryWriterTrait for VectorReadFailDirectory {
        async fn write(&self, path: &Path, data: &[u8]) -> std::io::Result<()> {
            self.inner.write(path, data).await
        }

        async fn delete(&self, path: &Path) -> std::io::Result<()> {
            self.inner.delete(path).await
        }

        async fn rename(&self, from: &Path, to: &Path) -> std::io::Result<()> {
            self.inner.rename(from, to).await
        }

        async fn sync(&self) -> std::io::Result<()> {
            self.inner.sync().await
        }

        async fn streaming_writer(
            &self,
            path: &Path,
        ) -> std::io::Result<Box<dyn crate::directories::StreamingWriter>> {
            self.inner.streaming_writer(path).await
        }
    }

    /// Regression: rebuild_vector_index used to durably reset Built fields to
    /// Flat first and then swallow per-batch vector read errors with
    /// `if let Ok` during training collection, reporting success while the
    /// published trained generation had been destroyed. Read failures must
    /// propagate, and the durable Built -> Flat reset must not happen.
    #[tokio::test]
    async fn rebuild_propagates_vector_read_errors_without_downgrading_built_state() {
        let mut sb = SchemaBuilder::default();
        let embedding = sb.add_dense_vector_field_with_config(
            "embedding",
            true,
            true,
            DenseVectorConfig::with_ivf(READ_FAIL_DIM, Some(1), 1),
        );
        let schema = sb.build();

        let dir = VectorReadFailDirectory::default();
        let config = IndexConfig {
            merge_policy: Box::new(crate::merge::NoMergePolicy),
            num_indexing_threads: 1,
            ..Default::default()
        };
        let mut writer = IndexWriter::create(dir.clone(), schema, config)
            .await
            .unwrap();
        for i in 0..READ_FAIL_DOCS {
            let mut doc = Document::new();
            doc.add_dense_vector(embedding, vec![i as f32 + 1.0; READ_FAIL_DIM]);
            writer.add_document(doc).unwrap();
        }
        writer.commit().await.unwrap();
        writer.build_vector_index().await.unwrap();
        assert!(
            writer
                .segment_manager
                .read_metadata(|meta| meta.is_field_built(embedding.0))
                .await
        );
        assert!(writer.segment_manager.trained().is_some());

        // Vector data reads now fail (transient I/O error).
        dir.fail_vector_reads.store(true, Ordering::SeqCst);
        let error = writer
            .rebuild_vector_index()
            .await
            .expect_err("failed sample collection must fail the rebuild")
            .to_string();
        assert!(
            error.contains("injected vector data read failure"),
            "{error}"
        );

        // The published generation survives: no durable Built -> Flat reset.
        assert!(
            writer
                .segment_manager
                .read_metadata(|meta| meta.is_field_built(embedding.0))
                .await,
            "a failed rebuild must not durably downgrade the field to Flat"
        );
        assert!(
            writer.segment_manager.trained().is_some(),
            "a failed rebuild must not clear the published trained artifacts"
        );
    }

    /// Regression: rebuild_vector_index used to return Ok(()) after durably
    /// resetting a Built field to Flat even when no training vectors could be
    /// collected at all, silently discarding the trained generation. An empty
    /// training sample for a Built field must be a hard error raised BEFORE
    /// the durable reset.
    #[tokio::test]
    async fn rebuild_errors_before_reset_when_built_field_has_no_training_vectors() {
        let mut sb = SchemaBuilder::default();
        let title = sb.add_text_field("title", true, true);
        let embedding = sb.add_dense_vector_field_with_config(
            "embedding",
            true,
            true,
            DenseVectorConfig::with_ivf(4, Some(1), 1),
        );
        let schema = sb.build();

        let dir = RamDirectory::new();
        let config = IndexConfig {
            merge_policy: Box::new(crate::merge::NoMergePolicy),
            num_indexing_threads: 1,
            ..Default::default()
        };
        let mut writer = IndexWriter::create(dir.clone(), schema, config)
            .await
            .unwrap();
        // Committed segments carry no vectors for the field.
        for i in 0..3 {
            let mut doc = Document::new();
            doc.add_text(title, format!("doc {i}"));
            writer.add_document(doc).unwrap();
        }
        writer.commit().await.unwrap();

        // Metadata says Built while no committed segment holds vectors for the
        // field — the state a crash/degradation can leave behind. Rebuilding
        // must refuse to destroy the referenced artifacts.
        writer
            .segment_manager
            .update_metadata(|meta| {
                meta.init_field(embedding.0, VectorIndexType::IvfRaBitQ);
                meta.mark_field_built(
                    embedding.0,
                    5,
                    1,
                    format!("field_{}_centroids.bin", embedding.0),
                    None,
                );
            })
            .await
            .unwrap();

        let error = writer
            .rebuild_vector_index()
            .await
            .expect_err("an empty training sample must fail the rebuild")
            .to_string();
        assert!(error.contains("no training vectors"), "{error}");
        assert!(
            writer
                .segment_manager
                .read_metadata(|meta| meta.is_field_built(embedding.0))
                .await,
            "an empty training sample must not durably downgrade the field to Flat"
        );
    }
}