← Back to Skills Marketplace
cinience

Aliyun Dashvector Search

by cinience · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
111
Downloads
0
Stars
0
Active Installs
1
Versions
Install in OpenClaw
/install aliyun-dashvector-search
Description
Use when building vector retrieval with DashVector using the Python SDK. Use when creating collections, upserting docs, and running similarity search with fi...
README (SKILL.md)

Category: provider

DashVector Vector Search

Use DashVector to manage collections and perform vector similarity search with optional filters and sparse vectors.

Prerequisites

  • Install SDK (recommended in a venv to avoid PEP 668 limits):
python3 -m venv .venv
. .venv/bin/activate
python -m pip install dashvector
  • Provide credentials and endpoint via environment variables:
    • DASHVECTOR_API_KEY
    • DASHVECTOR_ENDPOINT (cluster endpoint)

Normalized operations

Create collection

  • name (str)
  • dimension (int)
  • metric (str: cosine | dotproduct | euclidean)
  • fields_schema (optional dict of field types)

Upsert docs

  • docs list of {id, vector, fields} or tuples
  • Supports sparse_vector and multi-vector collections

Query docs

  • vector or id (one required; if both empty, only filter is applied)
  • topk (int)
  • filter (SQL-like where clause)
  • output_fields (list of field names)
  • include_vector (bool)

Quickstart (Python SDK)

import os
import dashvector
from dashvector import Doc

client = dashvector.Client(
    api_key=os.getenv("DASHVECTOR_API_KEY"),
    endpoint=os.getenv("DASHVECTOR_ENDPOINT"),
)

# 1) Create a collection
ret = client.create(
    name="docs",
    dimension=768,
    metric="cosine",
    fields_schema={"title": str, "source": str, "chunk": int},
)
assert ret

# 2) Upsert docs
collection = client.get(name="docs")
ret = collection.upsert(
    [
        Doc(id="1", vector=[0.01] * 768, fields={"title": "Intro", "source": "kb", "chunk": 0}),
        Doc(id="2", vector=[0.02] * 768, fields={"title": "FAQ", "source": "kb", "chunk": 1}),
    ]
)
assert ret

# 3) Query
ret = collection.query(
    vector=[0.01] * 768,
    topk=5,
    filter="source = 'kb' AND chunk >= 0",
    output_fields=["title", "source", "chunk"],
    include_vector=False,
)
for doc in ret:
    print(doc.id, doc.fields)

Script quickstart

python skills/ai/search/aliyun-dashvector-search/scripts/quickstart.py

Environment variables:

  • DASHVECTOR_API_KEY
  • DASHVECTOR_ENDPOINT
  • DASHVECTOR_COLLECTION (optional)
  • DASHVECTOR_DIMENSION (optional)

Optional args: --collection, --dimension, --topk, --filter.

Notes for Claude Code/Codex

  • Prefer upsert for idempotent ingestion.
  • Keep dimension aligned to your embedding model output size.
  • Use filters to enforce tenant or dataset scoping.
  • If using sparse vectors, pass sparse_vector={token_id: weight, ...} when upserting/querying.

Error handling

  • 401/403: invalid DASHVECTOR_API_KEY
  • 400: invalid collection schema or dimension mismatch
  • 429/5xx: retry with exponential backoff

Validation

mkdir -p output/aliyun-dashvector-search
for f in skills/ai/search/aliyun-dashvector-search/scripts/*.py; do
  python3 -m py_compile "$f"
done
echo "py_compile_ok" > output/aliyun-dashvector-search/validate.txt

Pass criteria: command exits 0 and output/aliyun-dashvector-search/validate.txt is generated.

Output And Evidence

  • Save artifacts, command outputs, and API response summaries under output/aliyun-dashvector-search/.
  • Include key parameters (region/resource id/time range) in evidence files for reproducibility.

Workflow

  1. Confirm user intent, region, identifiers, and whether the operation is read-only or mutating.
  2. Run one minimal read-only query first to verify connectivity and permissions.
  3. Execute the target operation with explicit parameters and bounded scope.
  4. Verify results and save output/evidence files.

References

  • DashVector Python SDK: Client.create, Collection.upsert, Collection.query

  • Source list: references/sources.md

Usage Guidance
This skill appears to implement a straightforward DashVector Python quickstart and is internally coherent, but note the registry metadata omission: the script and SKILL.md require DASHVECTOR_API_KEY and DASHVECTOR_ENDPOINT even though the metadata lists none. Before installing or running: 1) Provide only a scoped API key with least privilege for the target DashVector cluster; avoid using highly privileged credentials. 2) Review the dashvector Python package source or install from a trusted package index to ensure package provenance. 3) Run the recommended read-only connectivity check first (per workflow) to verify credentials and endpoint before performing create/upsert operations, since the quickstart performs mutations. 4) Keep secrets out of logs and CI output and store them in your secret manager. If you want stronger assurance, ask the publisher to correct the registry metadata to declare required env vars.
Capability Analysis
Type: OpenClaw Skill Name: aliyun-dashvector-search Version: 1.0.0 The skill bundle provides a standard integration for Alibaba Cloud's DashVector service. The Python script (scripts/quickstart.py) and instructions (SKILL.md) demonstrate legitimate usage of the official 'dashvector' SDK for collection management and similarity search, using environment variables for authentication without any signs of data exfiltration, malicious execution, or prompt injection.
Capability Assessment
Purpose & Capability
Name/description describe DashVector vector search and the included script and SKILL.md implement exactly that: creating collections, upserting docs, and querying. However, the registry metadata lists no required environment variables while the SKILL.md and quickstart.py clearly require DASHVECTOR_API_KEY and DASHVECTOR_ENDPOINT — an oversight in metadata but not evidence of malicious behavior.
Instruction Scope
Instructions are narrowly scoped to DashVector operations (install SDK, set DASHVECTOR_API_KEY and DASHVECTOR_ENDPOINT, create collection, upsert, query, save outputs). They do not instruct reading unrelated system files, harvesting other credentials, or calling unexpected external endpoints.
Install Mechanism
No install spec is included (instruction-only). SKILL.md recommends installing the dashvector package via pip in a venv, which is a standard, low-risk recommendation. Nothing attempts to download arbitrary archives or run non-standard installers.
Credentials
The environment variables the skill uses (DASHVECTOR_API_KEY, DASHVECTOR_ENDPOINT, optional DASHVECTOR_COLLECTION and DASHVECTOR_DIMENSION) are appropriate and proportional for a hosted vector DB client. The concern is that the package metadata incorrectly declares 'no required env vars' — users should be aware the script will exit if the two primary env vars are not supplied.
Persistence & Privilege
The skill does not request permanent/always-enabled presence, does not modify other skills, and does not write system-wide configuration. It performs normal file output under a local output/ directory as instructed.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install aliyun-dashvector-search
  3. After installation, invoke the skill by name or use /aliyun-dashvector-search
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
- Initial release of aliyun-dashvector-search skill. - Enables creating collections, upserting documents, and running vector similarity searches with DashVector via the Python SDK. - Supports collection schema definition, document upserts (including sparse vectors), and advanced filtered queries. - Provides Python and script-based quickstart instructions, plus environment variable configuration. - Includes detailed workflow, error handling, and validation steps for robust integration.
Metadata
Slug aliyun-dashvector-search
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Aliyun Dashvector Search?

Use when building vector retrieval with DashVector using the Python SDK. Use when creating collections, upserting docs, and running similarity search with fi... It is an AI Agent Skill for Claude Code / OpenClaw, with 111 downloads so far.

How do I install Aliyun Dashvector Search?

Run "/install aliyun-dashvector-search" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Aliyun Dashvector Search free?

Yes, Aliyun Dashvector Search is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Aliyun Dashvector Search support?

Aliyun Dashvector Search is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Aliyun Dashvector Search?

It is built and maintained by cinience (@cinience); the current version is v1.0.0.

💬 Comments