集合由一个或多个分区组成。在创建新集合时,Milvus会创建一个默认分区_default
1.准备模式
需要创建的集合必须包含一个主键字段和一个向量字段。INT64和String是主键字段支持的数据类型。
首先,准备必要的参数,包括字段模式、集合模式和集合名称。
from pymilvus import CollectionSchema, FieldSchema, DataType
book_id = FieldSchema(
name="book_id",
dtype=DataType.INT64,
is_primary=True,
)
book_name = FieldSchema(
name="book_name",
dtype=DataType.VARCHAR,
max_length=200,
# The default value will be used if this field is left empty during data inserts or upserts.
# The data type of `default_value` must be the same as that specified in `dtype`.
default_value="Unknown"
)
word_count = FieldSchema(
name="word_count",
dtype=DataType.INT64,
# The default value will be used if this field is left empty during data inserts or upserts.
# The data type of `default_value` must be the same as that specified in `dtype`.
default_value=9999
)
book_intro = FieldSchema(
name="book_intro",
dtype=DataType.FLOAT_VECTOR,
dim=2
)
# 集合的定义
schema = CollectionSchema(
fields=[book_id, book_name, word_count, book_intro],
description="Test book search",
enable_dynamic_field=True
)
collection_name = "book"
也可以使用预定义的模式新建集合:
from pymilvus import Collection
collection = Collection(
name=collection_name,
schema=schema,
using='default',
shards_num=2
)
使用rename_collection方法
from pymilvus import Collection, FieldSchema, CollectionSchema, DataType, connections, utility
connections.connect(alias="default")
schema = CollectionSchema(fields=[
... FieldSchema("int64", DataType.INT64, description="int64", is_primary=True),
... FieldSchema("float_vector", DataType.FLOAT_VECTOR, is_primary=False, dim=128),
... ])
collection = Collection(name="old_collection", schema=schema)
utility.rename_collection("old_collection", "new_collection") # Output: True
utility.drop_collection("new_collection")
utility.has_collection("new_collection") # Output: False
主要还是修改生存时间
collection.set_properties(properties={
"collection.ttl.seconds": 1800})
1.检查集合是否存在
from pymilvus import utility
utility.has_collection("book")
2.检查集合的细节信息
from pymilvus import Collection
collection = Collection("book") # Get an existing collection.
collection.schema # Return the schema.CollectionSchema of the collection.
collection.description # Return the description of the collection.
collection.name # Return the name of the collection.
collection.is_empty # Return the boolean value that indicates if the collection is empty.
collection.num_entities # Return the number of entities in the collection.
collection.primary_field # Return the schema.FieldSchema of the primary key field.
collection.partitions # Return the list[Partition] object.
collection.indexes # Return the list[Index] object.
collection.properties # Return the expiration time of data in the collection.
3.列出索引的集合
from pymilvus import utility
utility.list_collections()
from pymilvus import utility
utility.drop_collection("book")
1.创建集合的别名
在创建集合时可以,也可以如下:
from pymilvus import utility
utility.create_alias(
collection_name = "book",
alias = "publication"
)
2.删除别名
from pymilvus import utility
utility.drop_alias(alias = "publication")
3.修改别名
from pymilvus import utility
utility.alter_alias(
collection_name = "book",
alias = "publication"
)
1.Milvus 中的所有搜索和查询操作都在内存中执行。
在当前版本中,所有在线查询节点都将根据用户指定的副本数分为多个副本组。所有副本组都应具有最小的内存资源来加载所提供的集合的一个副本。
from pymilvus import Collection, utility
# Get an existing collection.
collection = Collection("book")
collection.load(replica_number=2)
# Check the loading progress and loading status
utility.load_state("book")
# Output: <LoadState: Loaded>
utility.loading_progress("book")
# Output: {'loading_progress': 100%}
2.获取副本信息
from pymilvus import Collection
collection = Collection("book") # Get an existing collection.
collection.load(replica_number=2) # Load collection as 2 replicas
result = collection.get_replicas()
print(result)
八、释放集合
在搜索或查询后释放集合以减少内存使用
from pymilvus import Collection
collection = Collection("book") # Get an existing collection.
collection.release()
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