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Embeddable AI engine for inference, embeddings, vector search, and fine-tuning

Project description

Jammi AI

Jammi is an embeddable AI engine that brings model inference into your data pipeline. Register data sources, run SQL queries, generate embeddings, search with vector similarity, fine-tune models on your domain, and evaluate results — all without leaving your application.

Install

pip install jammi-ai

For CUDA/GPU support:

pip install jammi-ai-cu12

Quickstart

The 5-minute walkthrough — install, connect, register a source, generate embeddings, search — lives in cookbook/quickstart/ with a runnable quickstart.py gated by CI. The condensed version:

import jammi_ai

db = jammi_ai.connect(gpu_device=-1)
db.add_source("corpus", url="cookbook/fixtures/tiny_corpus.parquet", format="parquet")

MODEL = "sentence-transformers/all-MiniLM-L6-v2"
db.generate_text_embeddings(source="corpus", model=MODEL, columns=["content"], key="id")

query_vec = db.encode_text_query(MODEL, "quantum computing applications")
results = db.search("corpus", query=query_vec, k=5).run()
print(results.to_pandas())

For runnable end-to-end recipes — mutable tables, trigger streams, eval, fine-tuning, Flight SQL — see cookbook/.

Features

  • SQL over local files — query Parquet, CSV, and JSON via DataFusion
  • Federated queries — join local files with PostgreSQL or MySQL
  • Text embeddings — load any BERT-family model from Hugging Face Hub (or local safetensors / ONNX) and persist results to Parquet with ANN indexes
  • Image embeddings — CLIP-style vision encoders
  • Vector search — ANN similarity search with automatic brute-force fallback
  • SearchBuilder — fluent API for .filter(), .sort(), .join(), .annotate(), .limit(), .select(), .run()
  • Evidence provenanceretrieved_by and annotated_by tracking on every search result
  • Fine-tuning — LoRA / deep LoRA adapters with contrastive loss to improve embeddings for your domain
  • Evaluation — recall@k, precision@k, MRR, nDCG, accuracy, F1, and A/B model comparison
  • Model caching — LRU eviction, ref-counted guards, single-flight loading
  • GPU scheduling — memory-budget admission control with RAII permits
  • Crash recovery — recovers embedding tables stuck in "building" state on restart

SearchBuilder

search = db.search("patents", query=query_vec, k=20)
search.filter("year >= 2020")
search.sort("similarity", descending=True)
search.limit(5)
search.select(["id", "title", "similarity"])
results = search.run()   # pyarrow.Table

All results are returned as pyarrow.Table — zero-copy from the Rust engine.

Fine-tuning

job = db.fine_tune(
    source="patents",
    model="sentence-transformers/all-MiniLM-L6-v2",
    triplets="triplets_train.parquet",
)
job.wait()

Requirements

  • Python 3.9+
  • Linux (x86_64) or macOS (Apple Silicon or Intel)

Windows is not yet supported due to a dependency on POSIX memory-mapping APIs.

Running the OSS server

For deployments that need a long-running Flight SQL + gRPC service rather than an embedded library, the workspace ships a Docker image:

docker run --rm \
  -p 8080:8080 -p 8081:8081 \
  -v jammi_data:/var/lib/jammi \
  ghcr.io/f-inverse/jammi-ai-server:latest

curl http://localhost:8080/healthz
# {"status":"ok","version":"0.8.0"}

The OSS server is single-tenant — the deployer's network is the auth boundary. See Deploy as a Server for the full guide.

Documentation

Full documentation, including guides for SQL queries, embeddings, search, fine-tuning, and evaluation:

https://f-inverse.github.io/jammi-ai/

For the engine's design philosophy — what belongs in Jammi versus a consumer's own repo, how embeddings are consumed, and how it deploys — see Design Philosophy.

License

Apache-2.0

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