llama-stack/llama_stack/providers/adapters/memory/chroma/chroma.py
Ashwin Bharambe 9487ad8294
API Updates (#73)
* API Keys passed from Client instead of distro configuration

* delete distribution registry

* Rename the "package" word away

* Introduce a "Router" layer for providers

Some providers need to be factorized and considered as thin routing
layers on top of other providers. Consider two examples:

- The inference API should be a routing layer over inference providers,
  routed using the "model" key
- The memory banks API is another instance where various memory bank
  types will be provided by independent providers (e.g., a vector store
  is served by Chroma while a keyvalue memory can be served by Redis or
  PGVector)

This commit introduces a generalized routing layer for this purpose.

* update `apis_to_serve`

* llama_toolchain -> llama_stack

* Codemod from llama_toolchain -> llama_stack

- added providers/registry
- cleaned up api/ subdirectories and moved impls away
- restructured api/api.py
- from llama_stack.apis.<api> import foo should work now
- update imports to do llama_stack.apis.<api>
- update many other imports
- added __init__, fixed some registry imports
- updated registry imports
- create_agentic_system -> create_agent
- AgenticSystem -> Agent

* Moved some stuff out of common/; re-generated OpenAPI spec

* llama-toolchain -> llama-stack (hyphens)

* add control plane API

* add redis adapter + sqlite provider

* move core -> distribution

* Some more toolchain -> stack changes

* small naming shenanigans

* Removing custom tool and agent utilities and moving them client side

* Move control plane to distribution server for now

* Remove control plane from API list

* no codeshield dependency randomly plzzzzz

* Add "fire" as a dependency

* add back event loggers

* stack configure fixes

* use brave instead of bing in the example client

* add init file so it gets packaged

* add init files so it gets packaged

* Update MANIFEST

* bug fix

---------

Co-authored-by: Hardik Shah <hjshah@fb.com>
Co-authored-by: Xi Yan <xiyan@meta.com>
Co-authored-by: Ashwin Bharambe <ashwin@meta.com>
2024-09-17 19:51:35 -07:00

168 lines
5.1 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
import json
import uuid
from typing import List
from urllib.parse import urlparse
import chromadb
from numpy.typing import NDArray
from llama_stack.apis.memory import * # noqa: F403
from llama_stack.providers.utils.memory.vector_store import (
BankWithIndex,
EmbeddingIndex,
)
class ChromaIndex(EmbeddingIndex):
def __init__(self, client: chromadb.AsyncHttpClient, collection):
self.client = client
self.collection = collection
async def add_chunks(self, chunks: List[Chunk], embeddings: NDArray):
assert len(chunks) == len(
embeddings
), f"Chunk length {len(chunks)} does not match embedding length {len(embeddings)}"
for i, chunk in enumerate(chunks):
print(f"Adding chunk #{i} tokens={chunk.token_count}")
await self.collection.add(
documents=[chunk.json() for chunk in chunks],
embeddings=embeddings,
ids=[f"{c.document_id}:chunk-{i}" for i, c in enumerate(chunks)],
)
async def query(self, embedding: NDArray, k: int) -> QueryDocumentsResponse:
results = await self.collection.query(
query_embeddings=[embedding.tolist()],
n_results=k,
include=["documents", "distances"],
)
distances = results["distances"][0]
documents = results["documents"][0]
chunks = []
scores = []
for dist, doc in zip(distances, documents):
try:
doc = json.loads(doc)
chunk = Chunk(**doc)
except Exception:
import traceback
traceback.print_exc()
print(f"Failed to parse document: {doc}")
continue
chunks.append(chunk)
scores.append(1.0 / float(dist))
return QueryDocumentsResponse(chunks=chunks, scores=scores)
class ChromaMemoryAdapter(Memory):
def __init__(self, url: str) -> None:
print(f"Initializing ChromaMemoryAdapter with url: {url}")
url = url.rstrip("/")
parsed = urlparse(url)
if parsed.path and parsed.path != "/":
raise ValueError("URL should not contain a path")
self.host = parsed.hostname
self.port = parsed.port
self.client = None
self.cache = {}
async def initialize(self) -> None:
try:
print(f"Connecting to Chroma server at: {self.host}:{self.port}")
self.client = await chromadb.AsyncHttpClient(host=self.host, port=self.port)
except Exception as e:
import traceback
traceback.print_exc()
raise RuntimeError("Could not connect to Chroma server") from e
async def shutdown(self) -> None:
pass
async def create_memory_bank(
self,
name: str,
config: MemoryBankConfig,
url: Optional[URL] = None,
) -> MemoryBank:
bank_id = str(uuid.uuid4())
bank = MemoryBank(
bank_id=bank_id,
name=name,
config=config,
url=url,
)
collection = await self.client.create_collection(
name=bank_id,
metadata={"bank": bank.json()},
)
bank_index = BankWithIndex(
bank=bank, index=ChromaIndex(self.client, collection)
)
self.cache[bank_id] = bank_index
return bank
async def get_memory_bank(self, bank_id: str) -> Optional[MemoryBank]:
bank_index = await self._get_and_cache_bank_index(bank_id)
if bank_index is None:
return None
return bank_index.bank
async def _get_and_cache_bank_index(self, bank_id: str) -> Optional[BankWithIndex]:
if bank_id in self.cache:
return self.cache[bank_id]
collections = await self.client.list_collections()
for collection in collections:
if collection.name == bank_id:
print(collection.metadata)
bank = MemoryBank(**json.loads(collection.metadata["bank"]))
index = BankWithIndex(
bank=bank,
index=ChromaIndex(self.client, collection),
)
self.cache[bank_id] = index
return index
return None
async def insert_documents(
self,
bank_id: str,
documents: List[MemoryBankDocument],
ttl_seconds: Optional[int] = None,
) -> None:
index = await self._get_and_cache_bank_index(bank_id)
if not index:
raise ValueError(f"Bank {bank_id} not found")
await index.insert_documents(documents)
async def query_documents(
self,
bank_id: str,
query: InterleavedTextMedia,
params: Optional[Dict[str, Any]] = None,
) -> QueryDocumentsResponse:
index = await self._get_and_cache_bank_index(bank_id)
if not index:
raise ValueError(f"Bank {bank_id} not found")
return await index.query_documents(query, params)