Labsco
github logo

qdrant-clients-sdk

✓ Official36,200

by github · part of github/awesome-copilot

Qdrant provides client SDKs for various programming languages, allowing easy integration with Qdrant deployments.

🔥🔥FreeQuick setup
🧩 One of 7 skills in the github/awesome-copilot package — works on its own, and pairs well with its siblings.

Qdrant provides client SDKs for various programming languages, allowing easy integration with Qdrant deployments.

Inspect the full instructions your agent will receiveExpand

This is the exact playbook injected into your agent when the skill activates — shown here so you can audit it before installing. You don't need to read it to use the skill.

by github

Qdrant provides client SDKs for various programming languages, allowing easy integration with Qdrant deployments. npx skills add https://github.com/github/awesome-copilot --skill qdrant-clients-sdk Download ZIPGitHub36.2k

Qdrant Clients SDK

Qdrant has the following officially supported client SDKs:

API Reference

All interaction with Qdrant can happen through the REST API or gRPC API. We recommend using the REST API if you are using Qdrant for the first time or working on a prototype.

Code examples

To obtain code examples for a specific client and use case, you can send a search request to the library of curated code snippets for the Qdrant client.

Copy & paste — that's it
curl -X GET "https://snippets.qdrant.tech/search?language=python&query=how+to+upload+points"

Available languages: python, typescript, rust, java, go, csharp

Response example:

Copy & paste — that's it

## Snippet 1

*qdrant-client* (vlatest) — https://search.qdrant.tech/md/documentation/manage-data/points/

Uploads multiple vector-embedded points to a Qdrant collection using the Python qdrant_client (PointStruct) with id, payload (e.g., color), and a 3D-like vector for similarity search. It supports parallel uploads (parallel=4) and a retry policy (max_retries=3) for robust indexing. The operation is idempotent: re-uploading with the same id overwrites existing points; if ids aren’t provided, Qdrant auto-generates UUIDs.

client.upload_points(
 collection_name="{collection_name}",
 points=[
 models.PointStruct(
 id=1,
 payload={
 "color": "red",
 },
 vector=[0.9, 0.1, 0.1],
 ),
 models.PointStruct(
 id=2,
 payload={
 "color": "green",
 },
 vector=[0.1, 0.9, 0.1],
 ),
 ],
 parallel=4,
 max_retries=3,
)

Default response format is markdown, if snippet output is required in JSON format, you can add &format=json to the query string.