Skip to main content

A Python SDK for database search operations with vector and full-text search capabilities

Project description

Holo Search SDK

一个用于Hologres数据库搜索操作的 Python SDK,支持向量搜索和全文搜索功能。

✨ 特性

  • 🔍 向量搜索: 基于语义相似性的搜索功能
  • 📝 全文搜索: 传统的基于关键词的搜索
  • 🛡️ 类型安全: 使用类型提示和数据验证
  • 🧩 模块化设计: 清晰的分层架构,便于扩展和维护

📦 安装

从 PyPI 安装

pip install holo-search-sdk

🚀 快速开始

基本使用

import holo_search_sdk as holo

# 连接到数据库
client = holo.connect(
    host="your-host",
    port=80,
    database="your-database",
    access_key_id="your-access-key-id",
    access_key_secret="your-access-key-secret",
    schema="public"
)

# 建立连接
client.connect()

# 打开表
columns = {
    "id": ("INTEGER", "PRIMARY KEY"),
    "content": "TEXT",
    "vector": "FLOAT8[]",
    "metadata": "JSONB"
}
table = client.open_table("table_name")

# 插入数据
data = [
    [1, "Hello world", [0.1, 0.2, 0.3], {"category": "greeting"}],
    [2, "Python SDK", [0.4, 0.5, 0.6], {"category": "tech"}],
    [3, "Vector search", [0.7, 0.8, 0.9], {"category": "search"}]
]
table.insert_multi(data, ["id", "content", "vector", "metadata"])

# 设置向量索引
table.set_vector_index(
    column="vector",
    distance_method="Cosine",
    max_degree=64,
    ef_construction=400
)

# 向量搜索
query_vector = [0.1, 0.2, 0.3]
results = table.search_vector(query_vector, "vector").limit(10)

# 关闭连接
client.disconnect()

使用上下文管理器

import holo_search_sdk as holo

with holo.connect(
    host="your-host",
    port=80,
    database="your-database",
    access_key_id="your-access-key-id",
    access_key_secret="your-access-key-secret"
) as client:
    client.connect()
    
    # 执行数据库操作
    table = client.open_table("table_name")
    results = table.search_vector([0.1, 0.2, 0.3], "vector_column")
    
    # 连接会自动关闭

📚 详细文档

核心概念

1. 客户端 (Client)

客户端是与数据库交互的主要接口:

from holo_search_sdk import connect

# 创建客户端
client = connect(
    host="localhost",
    port=80,
    database="test_db",
    access_key_id="your_key",
    access_key_secret="your_secret"
)

# 建立连接
client.connect()

# 执行 SQL
result = client.execute("SELECT COUNT(*) FROM users", fetch_result=True)

# 表操作
table = client.open_table("table_name")

2. 表操作 (Table Operations)

表是数据存储和搜索的基本单位:

# 打开现有表
table = client.open_table("table_name")

# 检查表是否存在
exists = client.check_table_exist("table_name")

# 删除表
client.drop_table("table_name")

3. 数据插入

支持单条和批量数据插入:

# 插入单条记录
table.insert_one(
    [1, "标题", "内容", [0.1, 0.2, 0.3]],
    ["id", "title", "content", "vector"]
)

# 批量插入
data = [
    [1, "文档1", "内容1", [0.1, 0.2, 0.3]],
    [2, "文档2", "内容2", [0.4, 0.5, 0.6]],
    [3, "文档3", "内容3", [0.7, 0.8, 0.9]]
]
table.insert_multi(data, ["id", "title", "content", "vector"])

4. 向量索引

为向量列创建高效的搜索索引:

# 设置单个向量索引
table.set_vector_index(
    column="vector",
    distance_method="Cosine",  # 可选: "Euclidean", "InnerProduct", "Cosine"
    base_quantization_type="rabitq",  # 可选: "sq8", "sq8_uniform", "fp16", "fp32", "rabitq"
    max_degree=64,
    ef_construction=400,
    use_reorder=False,
    precise_quantization_type="fp32"
)

# 设置多个向量索引
table.set_vector_indexes({
    "content_vector": {
        "distance_method": "Cosine",
        "max_degree": 64,
        "ef_construction": 400
    },
    "title_vector": {
        "distance_method": "Euclidean",
        "max_degree": 32,
        "ef_construction": 200
    }
})

# 删除所有向量索引
table.delete_vector_indexes()

5. 向量搜索

执行语义相似性搜索:

# 基本向量搜索
query_vector = [0.1, 0.2, 0.3]
results = table.search_vector(
    vector=query_vector,
    column="vector",
    distance_method="Cosine"
)

# 带输出别名的搜索
results = table.search_vector(
    vector=query_vector,
    column="vector",
    output_name="similarity_score",
    distance_method="Cosine"
)

配置选项

连接配置

from holo_search_sdk.types import ConnectionConfig

config = ConnectionConfig(
    host="your-host.com",
    port=80,
    database="production_db",
    access_key_id="user...",
    access_key_secret="secret...",
    schema="analytics"  # 默认为 "public"
)

向量索引配置

  • distance_method: 距离计算方法

    • "Euclidean": 欧几里得距离
    • "InnerProduct": 内积距离
    • "Cosine": 余弦距离
  • base_quantization_type: 基础量化类型

    • "sq8", "sq8_uniform", "fp16", "fp32", "rabitq"
  • max_degree: 图构建过程中每个顶点尝试连接的最近邻数量 (默认: 64)

  • ef_construction: 图构建过程中的搜索深度控制 (默认: 400)

  • use_reorder: 是否使用 HGraph 高精度索引 (默认: False)

  • precise_quantization_type: 精确量化类型 (默认: "fp32")

  • precise_io_type: 精确 IO 类型 (默认: "block_memory_io")

🔧 API 参考

主要类

  • Client: 数据库客户端,管理连接和表操作
  • HoloTable: 表操作接口,支持数据插入和向量搜索
  • ConnectionConfig: 连接配置数据类

主要函数

  • connect(): 创建数据库客户端连接
  • open_table(): 打开现有表
  • insert_one(): 插入单条记录
  • insert_multi(): 批量插入记录
  • set_vector_index(): 设置向量索引
  • search_vector(): 执行向量搜索

异常类

  • HoloSearchError: 基础异常类
  • ConnectionError: 连接相关错误
  • QueryError: 查询执行错误
  • SqlError: SQL 生成错误
  • TableError: 表操作错误

📄 许可证

本项目采用 MIT 许可证 - 查看 LICENSE.txt 文件了解详情。


Holo Search SDK - 让Hologres向量和全文搜索变得简单高效 🚀

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

holo_search_sdk-0.2.2.tar.gz (25.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

holo_search_sdk-0.2.2-py3-none-any.whl (17.3 kB view details)

Uploaded Python 3

File details

Details for the file holo_search_sdk-0.2.2.tar.gz.

File metadata

  • Download URL: holo_search_sdk-0.2.2.tar.gz
  • Upload date:
  • Size: 25.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.8.6

File hashes

Hashes for holo_search_sdk-0.2.2.tar.gz
Algorithm Hash digest
SHA256 d11664fb24579fac12fdb1b50f31fa2a503230da0ce134025a25613af29262e0
MD5 b0357ea89974c538cef378cdb491bee5
BLAKE2b-256 ad6d23669a0c43e1895f0eaf6697dc91e576a1b5bdafb77437d5233afe66c745

See more details on using hashes here.

File details

Details for the file holo_search_sdk-0.2.2-py3-none-any.whl.

File metadata

File hashes

Hashes for holo_search_sdk-0.2.2-py3-none-any.whl
Algorithm Hash digest
SHA256 01836ce478eee15c988651325466109766e07cd0dfd201677df0c9c73643927e
MD5 3f07807aa7f5c3e419febde8d649d284
BLAKE2b-256 c55bb7e7207b240729a21329966fd8c61b291a5cb7d8f57409d5186ac3d0c1bd

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page