7 Commits

Author SHA1 Message Date
yihao.dai
c5918290e6
feat: Add import executor and manager for datanode (#29438)
This PR introduces novel importv2 roles for datanode:
1. Executor: To execute tasks, a import task will be divided into the
following steps: read data -> hash data -> sync data;
2. Manager: To manage all the tasks;

issue: https://github.com/milvus-io/milvus/issues/28521

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Signed-off-by: bigsheeper <yihao.dai@zilliz.com>
2024-01-31 20:45:04 +08:00
Xu Tong
e429965f32
Add float16 approve for multi-type part (#28427)
issue:https://github.com/milvus-io/milvus/issues/22837

Add bfloat16 vector, add the index part of float16 vector.

Signed-off-by: Writer-X <1256866856@qq.com>
2024-01-11 15:48:51 +08:00
yihao.dai
3d07b6682c
feat: Add import reader for numpy (#29253)
This PR implements a new numpy reader for import.

issue: https://github.com/milvus-io/milvus/issues/28521

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Signed-off-by: bigsheeper <yihao.dai@zilliz.com>
2024-01-08 19:42:49 +08:00
yihao.dai
23183ffb0f
feat: Add import reader for json (#29252)
This PR implements a new json reader for import.

issue: https://github.com/milvus-io/milvus/issues/28521

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Signed-off-by: bigsheeper <yihao.dai@zilliz.com>
2024-01-05 18:12:48 +08:00
yihao.dai
3561586edf
feat: Add import reader for binlog (#28910)
This PR defines the new import reader interfaces and implement a binlog
reader for import.

issue: https://github.com/milvus-io/milvus/issues/28521

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Signed-off-by: bigsheeper <yihao.dai@zilliz.com>
2024-01-05 11:48:47 +08:00
Jiquan Long
3f46c6d459
feat: support inverted index (#28783)
issue: https://github.com/milvus-io/milvus/issues/27704

Add inverted index for some data types in Milvus. This index type can
save a lot of memory compared to loading all data into RAM and speed up
the term query and range query.

Supported: `INT8`, `INT16`, `INT32`, `INT64`, `FLOAT`, `DOUBLE`, `BOOL`
and `VARCHAR`.

Not supported: `ARRAY` and `JSON`.

Note:
- The inverted index for `VARCHAR` is not designed to serve full-text
search now. We will treat every row as a whole keyword instead of
tokenizing it into multiple terms.
- The inverted index don't support retrieval well, so if you create
inverted index for field, those operations which depend on the raw data
will fallback to use chunk storage, which will bring some performance
loss. For example, comparisons between two columns and retrieval of
output fields.

The inverted index is very easy to be used.

Taking below collection as an example:

```python
fields = [
		FieldSchema(name="pk", dtype=DataType.VARCHAR, is_primary=True, auto_id=False, max_length=100),
		FieldSchema(name="int8", dtype=DataType.INT8),
		FieldSchema(name="int16", dtype=DataType.INT16),
		FieldSchema(name="int32", dtype=DataType.INT32),
		FieldSchema(name="int64", dtype=DataType.INT64),
		FieldSchema(name="float", dtype=DataType.FLOAT),
		FieldSchema(name="double", dtype=DataType.DOUBLE),
		FieldSchema(name="bool", dtype=DataType.BOOL),
		FieldSchema(name="varchar", dtype=DataType.VARCHAR, max_length=1000),
		FieldSchema(name="random", dtype=DataType.DOUBLE),
		FieldSchema(name="embeddings", dtype=DataType.FLOAT_VECTOR, dim=dim),
]
schema = CollectionSchema(fields)
collection = Collection("demo", schema)
```

Then we can simply create inverted index for field via:

```python
index_type = "INVERTED"
collection.create_index("int8", {"index_type": index_type})
collection.create_index("int16", {"index_type": index_type})
collection.create_index("int32", {"index_type": index_type})
collection.create_index("int64", {"index_type": index_type})
collection.create_index("float", {"index_type": index_type})
collection.create_index("double", {"index_type": index_type})
collection.create_index("bool", {"index_type": index_type})
collection.create_index("varchar", {"index_type": index_type})
```

Then, term query and range query on the field can be speed up
automatically by the inverted index:

```python
result = collection.query(expr='int64 in [1, 2, 3]', output_fields=["pk"])
result = collection.query(expr='int64 < 5', output_fields=["pk"])
result = collection.query(expr='int64 > 2997', output_fields=["pk"])
result = collection.query(expr='1 < int64 < 5', output_fields=["pk"])
```

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Signed-off-by: longjiquan <jiquan.long@zilliz.com>
2023-12-31 19:50:47 +08:00
XuanYang-cn
2f16339aac
Enhance InsertData and FieldData (#27436)
1. Add NewInsertData
2. Add GetRowNum(), GetMemorySize(), and, Append() for InsertData
3. Add AppendRow() for FieldData for compaction

Signed-off-by: yangxuan <xuan.yang@zilliz.com>
2023-10-17 17:36:11 +08:00