chroma-core / chroma
- понедельник, 10 апреля 2023 г. в 00:14:21
the open source embedding database
Chroma - the open-source embedding database.
The fastest way to build Python or JavaScript LLM apps with memory!
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
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
)
🦜️🔗 LangChain
(python and js), 🦙 LlamaIndex
and more soonFor example, the "Chat your data"
use case:
GPT3
for additional summarization or analysis.What are embeddings?
[1.2, 2.1, ....]
. This process makes documents "understandable" to a machine learning model.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 to embed for you but you can also use OpenAI embeddings, Cohere (multilingual) embeddings, or your own.
Chroma is a rapidly developing project. We welcome PR contributors and ideas for how to improve the project.