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kebab/tasks/p3/p3-2-fastembed-adapter.md
altair823 f9714aa5cb docs(rename): kb → kebab — README, tasks/, docs/, design doc, report
마지막 commit. 모든 .md 안의 `kb` 단어 일괄 갱신.

- 19 개 crate 이름 (`kb-core`, `kb-app`, …) → `kebab-*` (Rust 모듈
  path 표기 `kb_*` → `kebab_*` 포함).
- 미래 component (`kb-tui`, `kb-desktop`, `kb-asr-whisper`, `kb-ocr`,
  `kb-mcp`, `kb-vlm`, `kb-rerank`, `kb-vision-ocr`, `kb-index`,
  `kb-smoke`, `kb-architecture`) → `kebab-*` (P6+ 가 시작될 때
  같은 prefix 사용).
- CLI 명령 예제: `kb ingest` / `kb search` / `kb ask` / `kb init` /
  `kb doctor` / `kb inspect` / `kb list` / `kb eval` →
  `kebab <verb>`. fenced code block + 인라인 backtick 모두.
- XDG paths + env vars + binary 경로 (`target/release/kb` →
  `target/release/kebab`) 동기화.
- design doc / 최초 보고서 / SMOKE / HOTFIXES / phase epic / task
  spec 모든 reference 통일.
- task-decomposition.md 의 `git -c user.name=kb` 는 과거 git history
  기록용 author 정보라 그대로 유지 (실제 git history 의 author 는
  변경 불가).
- `tasks/phase-5-evaluation.md` 의 `status: planned` →
  `completed` 도 같이 (P5-1 + P5-2 PR 머지 후 미반영분).

## 검증

- `grep -rEn "\bkb-[a-z]|\bkb_[a-z]|\.config/kb\b|kb\.sqlite|\bKB_[A-Z]"
   --include="*.md"` 0 hits (task-decomposition.md 의 git author
  제외).
- 모든 file path reference 살아있음 (renamed file 들 모두 새 path
  로 update).

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-02 04:01:55 +00:00

5.2 KiB

phase: P3 component: kebab-embed-local (fastembed adapter) task_id: p3-2 title: "fastembed-rs Embedder for multilingual-e5-small" status: completed depends_on: [p3-1] unblocks: [p3-3, p3-4] contract_source: ../../docs/superpowers/specs/2026-04-27-kebab-final-form-design.md contract_sections: [design §7.2 Embedder, report §11.3 local embedding, design §6.4 [models.embedding], design §9 versioning]

p3-2 — fastembed adapter

Goal

Provide FastembedEmbedder implementing Embedder for multilingual-e5-small (default) using fastembed-rs (ONNX runtime). Apply Document/Query prefix per §11.3. Honor batch_size from config.

Why now / why this size

First real Embedder. Drives EmbeddingId recipe (model_id + model_version + dims) downstream. Isolated from store/search so model swaps remain config-only.

Allowed dependencies

  • kebab-core
  • kebab-config
  • kebab-embed
  • fastembed = "4" (or current stable)
  • tokenizers
  • ort (transitive via fastembed)
  • tracing
  • thiserror

Forbidden dependencies

  • kebab-source-fs, kebab-parse-md, kebab-normalize, kebab-chunk, kebab-store-*, kebab-search, kebab-llm*, kebab-rag, kebab-tui, kebab-desktop, network HTTP libs (model download is fastembed's responsibility)

Inputs

input type source
kebab-config::Config.models.embedding settings runtime
EmbeddingInput[..] kebab_core::EmbeddingInput<'_>[] callers
model cache data_dir/models/fastembed/ filesystem

Outputs

output type downstream
Vec<Vec<f32>> row-aligned, dimensions = 384 kebab-store-vector, query vectors for hybrid search
model identity (EmbeddingModelId, EmbeddingVersion, usize) record fields, embedding_id recipe

Public surface (signatures only — no new types)

pub struct FastembedEmbedder { /* internal: TextEmbedding instance + model meta */ }

impl FastembedEmbedder {
    pub fn new(config: &kebab_config::Config) -> anyhow::Result<Self>;
}

impl kebab_core::Embedder for FastembedEmbedder {
    fn model_id(&self) -> kebab_core::EmbeddingModelId;
    fn model_version(&self) -> kebab_core::EmbeddingVersion;
    fn dimensions(&self) -> usize;
    fn embed(&self, inputs: &[kebab_core::EmbeddingInput<'_>]) -> anyhow::Result<Vec<Vec<f32>>>;
}

Behavior contract

  • Default model multilingual-e5-small (384 dims). model_id() returns EmbeddingModelId("multilingual-e5-small").
  • model_version() returns EmbeddingVersion("v1") initially. Bump per §9 if fastembed upgrades the bundled weights.
  • Apply e5 prefix per §11.3: input prefixed with "passage: " for EmbeddingKind::Document, "query: " for EmbeddingKind::Query BEFORE tokenization.
  • Batch processing respects config.models.embedding.batch_size. Inputs longer than the batch are split into multiple inference calls and concatenated.
  • L2-normalize each vector before returning (e5 convention).
  • Dimensions must equal config.models.embedding.dimensions AND the model's actual dim. Mismatch returns anyhow::Error at construction (not at first embed).
  • Model files cached under config.storage.model_dir/fastembed/ (downloaded on first use).
  • Determinism: identical input + identical model version → identical vectors (tolerance < 1e-6 on aggregate hash for snapshot tests).
  • No async runtime: the trait is synchronous. fastembed is sync internally.

Storage / wire effects

  • Reads/writes data_dir/models/fastembed/ (model cache).
  • Otherwise no DB or wire effects.

Test plan

kind description fixture / data
unit construction with default config returns dims=384 tmp config
unit construction with mismatched dims returns error tmp config
unit EmbeddingKind::Query vs Document for same text yield different vectors (cosine < 1.0) inline
unit output vectors are L2-normalized (norm ~= 1.0 ± 1e-3) inline
determinism identical input twice → identical output (hash-of-floats compare) inline
performance batch of 64 short inputs completes in < 5s on CI host tmp config (skip on slow CI via #[ignore])
snapshot aggregate hash of vectors for 5 known sentences stable across runs fixtures/embed/known-sentences.json

All tests under cargo test -p kebab-embed-local. Mark slow tests #[ignore] and run via cargo test -- --ignored in dedicated CI lane.

Definition of Done

  • cargo check -p kebab-embed-local passes
  • cargo test -p kebab-embed-local passes (excluding #[ignore])
  • First-run model download works under data_dir/models/fastembed/
  • No imports outside Allowed dependencies
  • PR links design §11.3, §6.4, §9

Out of scope

  • Reranker (P+).
  • Other model providers (Ollama embedding endpoint, candle) — separate adapter crates.
  • Visual / image embeddings (P6).

Risks / notes

  • ONNX runtime first-load latency on M-series Macs (Metal) can be 1-2 s; tests share a OnceCell<FastembedEmbedder>.
  • Forgetting the e5 prefix silently degrades retrieval quality. Tests must assert query/document yield distinct vectors.
  • Bumping EmbeddingVersion invalidates every embedding_id. Treat as a versioning event per §9 — provides justification in PR body.