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Caching based RAG primitives

Project description

rager

Composable RAG primitives with caching baked in.

Install

uv add rager

Getting started

uv run pytest
uv run prek install

For GPU (CUDA/ROCm) torch, add the matching PyTorch index to your own project and install torch from it — those builds aren't on PyPI.

Example

Wire the primitives together yourself — there is no hidden pipeline. This chunks documents, embeds and indexes each chunk, then answers a query from the nearest chunk:

chunker = SemanticChunker()
embedder = SentenceTransformerDenseEmbedder()
index = DenseIndex()
chunks = ChunkStore()
generator = TransformersGenerator()

for document in documents:
    for chunk in chunker.chunk(document):
       embedding = await embedder.embed(chunk)
       key = await index.add(embedding)
       chunks.add(key, chunk)

query = "Why do cats purr?"
(key,) = await index.similar(await embedder.embed(query), results=1)
answer = await generator.prompt(f"Answer using only the context.\n{chunks.get(key)}\n{query}")

tests/application/ has full dense and hybrid recipes.

API

Every stage is a Protocol with concrete implementations. async methods batch concurrent calls; model-backed methods cache results under .jar/.

Parsers — extract text units from files

  • Parser — protocol: units(file) returns text units, id(file) returns the content Hash.
  • UnstructuredFileParser — parses any file supported by unstructured.
  • PdfFileParser, MarkdownFileParser, CsvFileParser — aliases of UnstructuredFileParser for readable call sites.

Chunkers — split units into chunks

  • Chunker — protocol: chunk(unit) -> list[str].
  • SemanticChunker — splits on semantic boundaries with a token budget: SemanticChunker(model_name="gpt-3.5-turbo", chunk_size=1000, overlap=0).

Embedders — turn chunks into vectors

  • Embedder[E] — protocol: async embed(chunk) -> E.
  • SentenceTransformerDenseEmbedder — dense, L2-normalized DenseEmbedding via SentenceTransformers (default all-MiniLM-L6-v2).
  • SpladeSparseEmbedder — sparse SparseEmbedding via a SPLADE encoder (default prithivida/Splade_PP_en_v1).

Indexes — store vectors and search by similarity

  • Index[E, K] — protocol: async add(embedding) -> key, async remove(key), async similar(embedding, results=100) -> list[key]. Ranks by inner product (equals cosine for L2-normalized vectors). Keys are derived from embedding content, so adding the same vector twice yields one entry.
  • DenseIndex — flat FAISS index; DenseIndex(dimensions=None) infers width from the first vector unless fixed.
  • SparseIndex — inner-product search over sparse weight maps.

Fusers — merge ranked lists

  • Fuser[V] — protocol: fuse(*rankings) -> list[V].
  • ReciprocalRankFuser — reciprocal rank fusion with smoothing constant k (default 60).
  • BordaCountFuser — Borda count fusion.

Scorers — rerank chunks against a query

  • Scorer — protocol: async score(query, chunk) -> float.
  • CrossEncoderScorer — cross-encoder reranker (default cross-encoder/ms-marco-MiniLM-L6-v2).

Generators — produce an answer

  • Generator — protocol: async prompt(query) -> str.
  • TransformersGenerator — local Transformers text-generation model (default HuggingFaceTB/SmolLM2-135M-Instruct, max_new_tokens=512).

Stores — map index keys back to data

  • Store[V, K] — protocol: add(key, value), get(key) -> value | None, remove(key).
  • ChunkStore — in-memory map from key to chunk text, resolving a search hit to its source.
  • MetadataStore[M: Metadata] — in-memory map from key to per-chunk metadata.

Types

  • Hash — a blake3 hasher; the content ID returned by parsers.
  • DenseEmbeddinglist[float].
  • SparseEmbeddingdict[int, float] mapping token id to weight.
  • Metadata — protocol for metadata classes used with MetadataStore.

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