alicloud-ai-search-opensearch

📁 cinience/alicloud-skills 📅 2 days ago
53
总安装量
52
周安装量
#7445
全站排名
安装命令
npx skills add https://github.com/cinience/alicloud-skills --skill alicloud-ai-search-opensearch

Agent 安装分布

qoder 51
github-copilot 51
codex 51
kimi-cli 51
gemini-cli 51
cursor 51

Skill 文档

Category: provider

OpenSearch Vector Search Edition

Use the ha3engine SDK to push documents and execute HA/SQL searches. This skill focuses on API/SDK usage only (no console steps).

Prerequisites

  • Install SDK (recommended in a venv to avoid PEP 668 limits):
python3 -m venv .venv
. .venv/bin/activate
python -m pip install alibabacloud-ha3engine
  • Provide connection config via environment variables:
    • OPENSEARCH_ENDPOINT (API domain)
    • OPENSEARCH_INSTANCE_ID
    • OPENSEARCH_USERNAME
    • OPENSEARCH_PASSWORD
    • OPENSEARCH_DATASOURCE (data source name)
    • OPENSEARCH_PK_FIELD (primary key field name)

Quickstart (push + search)

import os
from alibabacloud_ha3engine import models, client
from Tea.exceptions import TeaException, RetryError

cfg = models.Config(
    endpoint=os.getenv("OPENSEARCH_ENDPOINT"),
    instance_id=os.getenv("OPENSEARCH_INSTANCE_ID"),
    protocol="http",
    access_user_name=os.getenv("OPENSEARCH_USERNAME"),
    access_pass_word=os.getenv("OPENSEARCH_PASSWORD"),
)
ha3 = client.Client(cfg)

def push_docs():
    data_source = os.getenv("OPENSEARCH_DATASOURCE")
    pk_field = os.getenv("OPENSEARCH_PK_FIELD", "id")

    documents = [
        {"fields": {"id": 1, "title": "hello", "content": "world"}, "cmd": "add"},
        {"fields": {"id": 2, "title": "faq", "content": "vector search"}, "cmd": "add"},
    ]
    req = models.PushDocumentsRequestModel({}, documents)
    return ha3.push_documents(data_source, pk_field, req)


def search_ha():
    # HA query example. Replace cluster/table names as needed.
    query_str = (
        "config=hit:5,format:json,qrs_chain:search"
        "&&query=title:hello"
        "&&cluster=general"
    )
    ha_query = models.SearchQuery(query=query_str)
    req = models.SearchRequestModel({}, ha_query)
    return ha3.search(req)

try:
    print(push_docs().body)
    print(search_ha())
except (TeaException, RetryError) as e:
    print(e)

Script quickstart

python skills/ai/search/alicloud-ai-search-opensearch/scripts/quickstart.py

Environment variables:

  • OPENSEARCH_ENDPOINT
  • OPENSEARCH_INSTANCE_ID
  • OPENSEARCH_USERNAME
  • OPENSEARCH_PASSWORD
  • OPENSEARCH_DATASOURCE
  • OPENSEARCH_PK_FIELD (optional, default id)
  • OPENSEARCH_CLUSTER (optional, default general)

Optional args: --cluster, --hit, --query.

SQL-style search

from alibabacloud_ha3engine import models

sql = "select * from <indexTableName>&&kvpair=trace:INFO;formatType:json"
sql_query = models.SearchQuery(sql=sql)
req = models.SearchRequestModel({}, sql_query)
resp = ha3.search(req)
print(resp)

Notes for Claude Code/Codex

  • Use push_documents for add/delete updates.
  • Large query strings (>30KB) should use the RESTful search API.
  • HA queries are fast and flexible for vector + keyword retrieval; SQL is helpful for structured data.

Error handling

  • Auth errors: verify username/password and instance access.
  • 4xx on push: check schema fields and pk_field alignment.
  • 5xx: retry with backoff.

References

  • SDK package: alibabacloud-ha3engine

  • Demos: data push and HA/SQL search demos in OpenSearch docs

  • Source list: references/sources.md