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295 lines
9.2 KiB
Python
295 lines
9.2 KiB
Python
"""
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Milvus 客户端封装
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"""
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import logging
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from typing import List, Dict, Optional, Any
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import numpy as np
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from pymilvus import MilvusClient, FieldSchema, CollectionSchema, DataType, connections, Collection
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from app.core.config import settings
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from app.service.recommendation_system.config import MILVUS_COLLECTION_SKETCH_VECTORS, RECOMMENDATION_CONFIG
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logger = logging.getLogger(__name__)
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# Milvus 客户端(单例)
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_milvus_client = None
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def get_milvus_client() -> MilvusClient:
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"""获取 Milvus 客户端(单例模式)"""
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global _milvus_client
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if _milvus_client is None:
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try:
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_milvus_client = MilvusClient(
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uri=settings.MILVUS_URL,
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token=settings.MILVUS_TOKEN,
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db_name=settings.MILVUS_DB,
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)
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logger.info("Milvus 客户端连接成功")
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except Exception as e:
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logger.error(f"Milvus 客户端连接失败: {e}")
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raise
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return _milvus_client
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def create_collection():
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"""
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创建 Milvus 集合 sketch_vectors
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集合结构:
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- path (PK, varchar(512)) - 主键,MinIO 逻辑 URL
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- sys_file_id (int64, 可为NULL) - 系统文件ID
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- style (varchar(50), 可为NULL) - 风格样式
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- category (varchar(100), 可为NULL) - 类别
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- is_system_sketch (int8, 默认 1) - 标记字段:1-系统图,0-用户图
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- deprecated (int8, 默认 0) - 是否废弃
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- feature_vector (FloatVector(2048)) - 2048维特征向量
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"""
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client = get_milvus_client()
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# 检查集合是否已存在
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collections = client.list_collections()
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if MILVUS_COLLECTION_SKETCH_VECTORS in collections:
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logger.info(f"集合 {MILVUS_COLLECTION_SKETCH_VECTORS} 已存在")
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return
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try:
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# 解析 Milvus URL
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# 处理 http://host.docker.internal:19530 格式
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url_clean = settings.MILVUS_URL.replace("http://", "").replace("https://", "")
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if ":" in url_clean:
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host, port_str = url_clean.split(":", 1)
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port = int(port_str)
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else:
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host = url_clean
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port = 19530
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# 使用传统 API 创建集合(更可靠)
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# 连接到 Milvus(如果未连接)
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try:
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connections.connect(
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alias=settings.MILVUS_ALIAS,
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host=host,
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port=port,
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token=settings.MILVUS_TOKEN if settings.MILVUS_TOKEN else None
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)
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logger.info(f"已连接到 Milvus: {host}:{port}")
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except Exception as conn_e:
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# 如果连接已存在,忽略错误
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if "already exists" in str(conn_e).lower() or "Connection already exists" in str(conn_e):
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logger.info("Milvus 连接已存在")
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else:
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logger.warning(f"连接 Milvus 时出现警告: {conn_e}")
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# 定义字段
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fields = [
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FieldSchema(name="path", dtype=DataType.VARCHAR, is_primary=True, max_length=512),
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FieldSchema(name="sys_file_id", dtype=DataType.INT64),
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FieldSchema(name="style", dtype=DataType.VARCHAR, max_length=50),
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FieldSchema(name="category", dtype=DataType.VARCHAR, max_length=50),
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FieldSchema(name="is_system_sketch", dtype=DataType.INT8),
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FieldSchema(name="deprecated", dtype=DataType.INT8),
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FieldSchema(
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name="feature_vector",
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dtype=DataType.FLOAT_VECTOR,
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dim=RECOMMENDATION_CONFIG["vector_dim"]
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)
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]
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# 创建 schema
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schema = CollectionSchema(
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fields=fields,
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description="Sketch vectors collection for recommendation system"
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)
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# 创建集合
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collection = Collection(
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name=MILVUS_COLLECTION_SKETCH_VECTORS,
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schema=schema,
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using=settings.MILVUS_ALIAS
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)
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# 创建索引
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# 注意:使用 IP(内积)作为度量类型,与搜索时保持一致
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# 如果向量已归一化,IP 等价于 COSINE
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index_params = {
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"metric_type": "IP", # 内积(Inner Product)
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"index_type": "IVF_FLAT",
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"params": {"nlist": 1024}
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}
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collection.create_index(
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field_name="feature_vector",
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index_params=index_params
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)
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logger.info(f"集合 {MILVUS_COLLECTION_SKETCH_VECTORS} 创建成功")
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except Exception as e:
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logger.error(f"创建集合失败: {e}", exc_info=True)
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raise
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def insert_vectors(data: List[Dict[str, Any]]):
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"""
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批量插入向量到 Milvus
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Args:
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data: 数据列表,每个元素包含:
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- path: str
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- sys_file_id: int (可选)
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- style: str (可选)
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- category: str (可选)
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- is_system_sketch: int (默认 1)
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- deprecated: int (默认 0)
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- feature_vector: List[float] (2048维)
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"""
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if not data:
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return
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client = get_milvus_client()
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try:
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client.insert(
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collection_name=MILVUS_COLLECTION_SKETCH_VECTORS,
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data=data
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)
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logger.info(f"成功插入 {len(data)} 条向量数据")
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except Exception as e:
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logger.error(f"插入向量失败: {e}", exc_info=True)
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raise
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def query_vectors_by_paths(paths: List[str]) -> Dict[str, Dict]:
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"""
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根据 path 列表批量查询向量
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Args:
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paths: path 列表
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Returns:
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{path: {feature_vector: [...], ...}} 字典
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"""
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if not paths:
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return {}
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client = get_milvus_client()
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try:
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# 构建查询表达式
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# 使用 filter 参数而不是 expr(根据 pymilvus MilvusClient API)
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# 对于字符串列表,使用单引号包裹每个值
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path_list = ", ".join([f"'{p}'" for p in paths])
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filter_expr = f"path in [{path_list}]"
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results = client.query(
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collection_name=MILVUS_COLLECTION_SKETCH_VECTORS,
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filter=filter_expr,
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output_fields=["path", "feature_vector", "style", "category", "sys_file_id", "is_system_sketch", "deprecated"]
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)
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# 转换为字典
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result_dict = {}
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for r in results:
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result_dict[r["path"]] = r
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return result_dict
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except Exception as e:
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logger.error(f"查询向量失败: {e}", exc_info=True)
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return {}
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def search_similar_vectors(
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query_vector: np.ndarray,
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category: str,
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topk: int = 500,
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style: Optional[str] = None
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) -> List[Dict]:
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"""
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向量相似度检索
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Args:
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query_vector: 查询向量(2048维)
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category: 类别过滤
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topk: 返回数量
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style: 风格过滤(可选)
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Returns:
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检索结果列表,每个元素包含 path, score, style, category 等字段
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"""
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client = get_milvus_client()
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try:
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# 构建过滤表达式
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# 使用 filter 参数而不是 expr(根据 pymilvus MilvusClient API)
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filter_expr = f"category == '{category}' && deprecated == 0"
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if style:
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filter_expr += f" && style == '{style}'"
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# 搜索
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results = client.search(
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collection_name=MILVUS_COLLECTION_SKETCH_VECTORS,
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data=[query_vector.tolist()],
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anns_field="feature_vector",
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search_params={"metric_type": "IP", "params": {"nprobe": 10}},
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limit=topk,
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filter=filter_expr,
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output_fields=["path", "style", "category", "sys_file_id"]
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)
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# 格式化结果
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formatted_results = []
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if results and len(results) > 0:
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for hit in results[0]:
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formatted_results.append({
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"path": hit.get("entity", {}).get("path", ""),
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"score": hit.get("distance", 0.0),
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"style": hit.get("entity", {}).get("style", ""),
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"category": hit.get("entity", {}).get("category", ""),
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"sys_file_id": hit.get("entity", {}).get("sys_file_id")
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})
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return formatted_results
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except Exception as e:
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logger.error(f"向量检索失败: {e}", exc_info=True)
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return []
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def query_random_candidates(category: str, style: Optional[str] = None, limit: int = 10) -> List[Dict]:
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"""
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随机查询候选(用于探索分支)
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Args:
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category: 类别
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style: 风格(可选)
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limit: 返回数量
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Returns:
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候选列表
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"""
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client = get_milvus_client()
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try:
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# 构建过滤表达式
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filter_expr = f"category == '{category}' && deprecated == 0"
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if style:
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filter_expr += f" && style == '{style}'"
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# 查询所有符合条件的记录
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results = client.query(
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collection_name=MILVUS_COLLECTION_SKETCH_VECTORS,
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filter=filter_expr,
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output_fields=["path", "style", "category"],
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limit=10000 # 先查询大量数据,然后随机选择
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)
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# 随机选择
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if len(results) > limit:
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import random
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results = random.sample(results, limit)
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return results
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except Exception as e:
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logger.error(f"随机查询候选失败: {e}", exc_info=True)
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return []
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