Pinecone Python SDK

The official Pinecone Python SDK.
Documentation
Upgrading the SDK
[!NOTE]
The official SDK package was renamed from pinecone-client to pinecone beginning in version 5.1.0.
Please remove pinecone-client from your project dependencies and add pinecone instead to get
the latest updates.
For notes on changes between major versions, see Upgrading
Prerequisites
- The Pinecone Python SDK requires Python 3.10 or greater. It has been tested with CPython versions from 3.10 to 3.13.
- Before you can use the Pinecone SDK, you must sign up for an account and find your API key in the Pinecone console dashboard at https://app.pinecone.io.
Installation
The Pinecone Python SDK is distributed on PyPI using the package name pinecone. By default the pinecone has a minimal set of dependencies, but you can install some extras to unlock additional functionality.
Available extras:
pinecone[asyncio] will add a dependency on aiohttp and enable usage of PineconeAsyncio, the asyncio-enabled version of the client for use with highly asynchronous modern web frameworks such as FastAPI.
pinecone[grpc] will add dependencies on grpcio and related libraries needed to make pinecone data calls such as upsert and query over GRPC for a modest performance improvement. See the guide on tuning performance.
Installing with pip
# Install the latest version
pip3 install pinecone
# Install the latest version, with optional dependencies
pip3 install "pinecone[asyncio,grpc]"
Installing with uv
uv is a modern package manager that runs 10-100x faster than pip and supports most pip syntax.
# Install the latest version
uv add pinecone
# Install the latest version, optional dependencies
uv add "pinecone[asyncio,grpc]"
Installing with poetry
# Install the latest version
poetry add pinecone
# Install the latest version, with optional dependencies
poetry add pinecone --extras asyncio --extras grpc
Quickstart
Bringing your own vectors to Pinecone
from pinecone import (
Pinecone,
ServerlessSpec,
CloudProvider,
AwsRegion,
VectorType
)
pc = Pinecone(api_key='YOUR_API_KEY')
index_config = pc.create_index(
name="index-name",
dimension=1536,
spec=ServerlessSpec(
cloud=CloudProvider.AWS,
region=AwsRegion.US_EAST_1
),
vector_type=VectorType.DENSE
)
idx = pc.Index(host=index_config.host)
idx.upsert(
vectors=[
("id1", [0.1, 0.2, 0.3, 0.4, ...], {"metadata_key": "value1"}),
("id2", [0.2, 0.3, 0.4, 0.5, ...], {"metadata_key": "value2"}),
],
namespace="example-namespace"
)
query_embedding = [...]
idx.query(
vector=query_embedding,
top_k=10,
include_metadata=True,
filter={"metadata_key": { "$eq": "value1" }}
)
Bring your own data using Pinecone integrated inference
from pinecone import (
Pinecone,
CloudProvider,
AwsRegion,
EmbedModel,
)
pc = Pinecone(api_key="<<PINECONE_API_KEY>>")
index_config = pc.create_index_for_model(
name="my-model-index",
cloud=CloudProvider.AWS,
region=AwsRegion.US_EAST_1,
embed=IndexEmbed(
model=EmbedModel.Multilingual_E5_Large,
field_map={"text": "my_text_field"}
)
)
idx = pc.Index(host=index_config.host)
idx.upsert_records(
namespace="my-namespace",
records=[
{
"_id": "test1",
"my_text_field": "Apple is a popular fruit known for its sweetness and crisp texture.",
},
{
"_id": "test2",
"my_text_field": "The tech company Apple is known for its innovative products like the iPhone.",
},
{
"_id": "test3",
"my_text_field": "Many people enjoy eating apples as a healthy snack.",
},
{
"_id": "test4",
"my_text_field": "Apple Inc. has revolutionized the tech industry with its sleek designs and user-friendly interfaces.",
},
{
"_id": "test5",
"my_text_field": "An apple a day keeps the doctor away, as the saying goes.",
},
{
"_id": "test6",
"my_text_field": "Apple Computer Company was founded on April 1, 1976, by Steve Jobs, Steve Wozniak, and Ronald Wayne as a partnership.",
},
],
)
from pinecone import SearchQuery, SearchRerank, RerankModel
response = index.search_records(
namespace="my-namespace",
query=SearchQuery(
inputs={
"text": "Apple corporation",
},
top_k=3
),
rerank=SearchRerank(
model=RerankModel.Bge_Reranker_V2_M3,
rank_fields=["my_text_field"],
top_n=3,
),
)
Pinecone Assistant
Installing the Pinecone Assistant Python plugin
The pinecone-plugin-assistant package is now bundled by default when installing pinecone. It does not need to be installed separately in order to use Pinecone Assistant.
For more information on Pinecone Assistant, see the Pinecone Assistant documentation.
More information on usage
Detailed information on specific ways of using the SDK are covered in these other pages.
Issues & Bugs
If you notice bugs or have feedback, please file an issue.
You can also get help in the Pinecone Community Forum.
Contributing
If you'd like to make a contribution, or get setup locally to develop the Pinecone Python SDK, please see our contributing guide