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A tiny, zero-dependency BM25-lite in-memory text search index.

Project description

zerosearch

A tiny, zero-dependency BM25-lite in-memory text search index — standard library only, a single small module, and good enough to power retrieval for a RAG pipeline. Designed to run anywhere Python runs, including constrained environments like Cloudflare Python Workers (Pyodide) where pulling in scikit-learn/numpy is not an option.

It is a spiritual cousin of minsearch: same Index / .fit() / .search() API, but reimplemented from scratch with no third-party dependencies.

Drop-in replacement

zerosearch mirrors the minsearch API — Index(text_fields, keyword_fields), index.fit(docs), and index.search(query, filter_dict, boost_dict, num_results) — so you can swap it in without changing your call sites. It is used exactly this way in DataTalksClub/faq-assistant as the retrieval engine.

Note on ranking vs minsearch: zerosearch uses BM25-lite scoring, not minsearch's TF-IDF + cosine similarity — different algorithms, so the rankings are not bit-for-bit identical. Retrieval quality is on par, though: on the faq-assistant benchmark zerosearch matches minsearch's recall (it surfaces the same relevant documents in the top results), it just orders them differently. It is 100% identical to the in-repo BM25-lite engine it replaced.

Install

pip install zerosearch

Usage

from zerosearch import Index

docs = [
    {"id": "1", "title": "Docker compose basics", "text": "how to start services", "course": "de"},
    {"id": "2", "title": "Kafka consumers", "text": "consumer groups explained", "course": "de"},
]

index = Index(
    text_fields=["title", "text"],
    keyword_fields=["id", "course"],
)
index.fit(docs)

results = index.search(
    "how do I start docker compose",
    filter_dict={"course": "de"},             # exact-match keyword filter
    boost_dict={"title": 3.0, "text": 1.0},   # per-field boosts
    num_results=5,
)
for result in results:
    print(result["score"], result["title"])

Each result is a shallow copy of the original document dict with an added "score" key.

Saving & loading a prebuilt index

fit() does all the tokenization work up front. For latency-sensitive or cold-start-sensitive deployments (serverless functions, CLIs) you can build the index once — e.g. in CI — and ship the prebuilt artifact, so the process loads in milliseconds instead of re-tokenizing the whole corpus on startup.

# build step (CI / offline)
Index(text_fields=["title", "text"], keyword_fields=["id", "course"]).fit(docs).save("index.zsx")

# runtime (loads in ~ms, no re-tokenization)
index = Index.load("index.zsx")
results = index.search("docker compose")

dumps() / loads() are the in-memory equivalents (return/accept bytes). The artifact is a marshal blob, so documents must hold only marshal-able values (the JSON-like types a search corpus normally contains). Loading verifies a format tag and the platform's array item sizes and raises ValueError on a mismatch — rebuild from source if the format version or Python/platform changed. If you built with a custom tokenizer, pass it back in: Index.load("index.zsx", tokenizer=my_tokenizer) (the default tokenizer plus its stop words restore automatically).

How it works

  • Packed runtime statefit() builds with Counter scaffolding, then compacts the index into flat array buffers (a CSR-style postings list). That packed form is what search() reads and what save()/load() round-trip, so a prebuilt index loads without rebuilding any Python objects per document.

  • Tokenizer — lowercased word/number tokens; keeps + . # _ - inside a token so c++, node.js, f-string survive (a token must start with a letter/digit). Drops 1-character tokens and a small English stop-word list (both overridable).

  • Inverted index — built once in fit(). A query only scores documents that actually contain a query term, so search is fast even on large corpora.

  • Ranking — BM25-lite: each query term contributes boost * idf * (term_frequency / sqrt(field_length)) per field. IDF and document frequencies are computed over the filtered candidate set.

Customizing

index = Index(
    text_fields=["title", "text"],
    stop_words={"the", "a", "an"},          # replace the default stop words
    tokenizer=lambda s: s.lower().split(),  # or plug in your own tokenizer
)
index.fit(docs)

License

WTFPL.

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