Metadata-Version: 2.1 Name: chromadb Version: 0.3.26 Summary: Chroma. Author-email: Jeff Huber , Anton Troynikov Project-URL: Homepage, https://github.com/chroma-core/chroma Project-URL: Bug Tracker, https://github.com/chroma-core/chroma/issues Classifier: Programming Language :: Python :: 3 Classifier: License :: OSI Approved :: Apache Software License Classifier: Operating System :: OS Independent Requires-Python: >=3.7 Description-Content-Type: text/markdown License-File: LICENSE Requires-Dist: pandas (>=1.3) Requires-Dist: requests (>=2.28) Requires-Dist: pydantic (>=1.9) Requires-Dist: hnswlib (>=0.7) Requires-Dist: clickhouse-connect (>=0.5.7) Requires-Dist: duckdb (>=0.7.1) Requires-Dist: fastapi (>=0.85.1) Requires-Dist: uvicorn[standard] (>=0.18.3) Requires-Dist: numpy (>=1.21.6) Requires-Dist: posthog (>=2.4.0) Requires-Dist: typing-extensions (>=4.5.0) Requires-Dist: pulsar-client (>=3.1.0) Requires-Dist: onnxruntime (>=1.14.1) Requires-Dist: tokenizers (>=0.13.2) Requires-Dist: tqdm (>=4.65.0) Requires-Dist: overrides (>=7.3.1) Requires-Dist: graphlib-backport (>=1.0.3) ; python_version < "3.9"

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Chroma - the open-source embedding database.
The fastest way to build Python or JavaScript LLM apps with memory!

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```bash pip install chromadb # python client # for javascript, npm install chromadb! # for client-server mode, docker-compose up -d --build ``` The core API is only 4 functions (run our [💡 Google Colab](https://colab.research.google.com/drive/1QEzFyqnoFxq7LUGyP1vzR4iLt9PpCDXv?usp=sharing) or [Replit template](https://replit.com/@swyx/BasicChromaStarter?v=1)): ```python import chromadb # setup Chroma in-memory, for easy prototyping. Can add persistence easily! client = chromadb.Client() # Create collection. get_collection, get_or_create_collection, delete_collection also available! collection = client.create_collection("all-my-documents") # Add docs to the collection. Can also update and delete. Row-based API coming soon! collection.add( documents=["This is document1", "This is document2"], # we handle tokenization, embedding, and indexing automatically. You can skip that and add your own embeddings as well metadatas=[{"source": "notion"}, {"source": "google-docs"}], # filter on these! ids=["doc1", "doc2"], # unique for each doc ) # Query/search 2 most similar results. You can also .get by id results = collection.query( query_texts=["This is a query document"], n_results=2, # where={"metadata_field": "is_equal_to_this"}, # optional filter # where_document={"$contains":"search_string"} # optional filter ) ``` ## Features - __Simple__: Fully-typed, fully-tested, fully-documented == happiness - __Integrations__: [`🦜️🔗 LangChain`](https://blog.langchain.dev/langchain-chroma/) (python and js), [`🦙 LlamaIndex`](https://twitter.com/atroyn/status/1628557389762007040) and more soon - __Dev, Test, Prod__: the same API that runs in your python notebook, scales to your cluster - __Feature-rich__: Queries, filtering, density estimation and more - __Free & Open Source__: Apache 2.0 Licensed ## Use case: ChatGPT for ______ For example, the `"Chat your data"` use case: 1. Add documents to your database. You can pass in your own embeddings, embedding function, or let Chroma embed them for you. 2. Query relevant documents with natural language. 3. Compose documents into the context window of an LLM like `GPT3` for additional summarization or analysis. ## Embeddings? What are embeddings? - [Read the guide from OpenAI](https://platform.openai.com/docs/guides/embeddings/what-are-embeddings) - __Literal__: Embedding something turns it from image/text/audio into a list of numbers. 🖼️ or 📄 => `[1.2, 2.1, ....]`. This process makes documents "understandable" to a machine learning model. - __By analogy__: An embedding represents the essence of a document. This enables documents and queries with the same essence to be "near" each other and therefore easy to find. - __Technical__: An embedding is the latent-space position of a document at a layer of a deep neural network. For models trained specifically to embed data, this is the last layer. - __A small example__: If you search your photos for "famous bridge in San Francisco". By embedding this query and comparing it to the embeddings of your photos and their metadata - it should return photos of the Golden Gate Bridge. Embeddings databases (also known as **vector databases**) store embeddings and allow you to search by nearest neighbors rather than by substrings like a traditional database. By default, Chroma uses [Sentence Transformers](https://docs.trychroma.com/embeddings#default-sentence-transformers) to embed for you but you can also use OpenAI embeddings, Cohere (multilingual) embeddings, or your own. ## Get involved Chroma is a rapidly developing project. We welcome PR contributors and ideas for how to improve the project. - [Join the conversation on Discord](https://discord.gg/MMeYNTmh3x) - `#contributing` channel - [Review the 🛣️ Roadmap and contribute your ideas](https://docs.trychroma.com/roadmap) - [Grab an issue and open a PR](https://github.com/chroma-core/chroma/issues) - [`Good first issue tag`](https://github.com/chroma-core/chroma/issues?q=is%3Aissue+is%3Aopen+label%3A%22good+first+issue%22) **Release Cadence** We currently release new tagged versions of the `pypi` and `npm` packages on Mondays. Hotfixes go out at any time during the week. ## License [Apache 2.0](./LICENSE)