milvus-logo

Conduct a Hybrid Search

This topic describes how to conduct a hybrid search.

A hybrid search is essentially a vector search with attribute filtering. By specifying boolean expressions that filter the scalar fields or the primary key field, you can limit your search with certain conditions.

The following example shows how to perform a hybrid search on the basis of a regular vector search. Suppose you want to search for certain books based on their vectorized introductions, but you only want those within a specific range of word count. You can then specify the boolean expression to filter the word_count field in the search parameters. Milvus will search for similar vectors only among those entities that match the expression.

Load collection

All search and query operations within Milvus are executed in memory. Load the collection to memory before conducting a vector search.

from pymilvus import Collection
collection = Collection("book")      # Get an existing collection.
collection.load()
await milvusClient.collectionManager.loadCollection({
  collection_name: "book",
});
err := milvusClient.LoadCollection(
  context.Background(),   // ctx
  "book",                 // CollectionName
  false                   // async
)
if err != nil {
  log.Fatal("failed to load collection:", err.Error())
}
milvusClient.loadCollection(
  LoadCollectionParam.newBuilder()
    .withCollectionName("book")
    .build()
);
load -c book

By specifying the boolean expression, you can filter the scalar field of the entities during the vector search. The following example limits the scale of search to the vectors within a specified word_count value range.

search_param = {
  "data": [[0.1, 0.2]],
  "anns_field": "book_intro",
  "param": {"metric_type": "L2", "params": {"nprobe": 10}},
  "limit": 2,
  "expr": "word_count <= 11000",
}
res = collection.search(**search_param)
const results = await milvusClient.dataManager.search({
  collection_name: "book",
  expr: "word_count <= 11000",
  vectors: [[0.1, 0.2]],
  search_params: {
    anns_field: "book_intro",
    topk: "2",
    metric_type: "L2",
    params: JSON.stringify({ nprobe: 10 }),
  },
  vector_type: 101,    // DataType.FloatVector,
});
sp, _ := entity.NewIndexFlatSearchParam(   // NewIndex*SearchParam func
  10,                                      // searchParam
)
searchResult, err := milvusClient.Search(
  context.Background(),                    // ctx
  "book",                                  // CollectionName
  []string{},                              // partitionNames
  "word_count <= 11000",                   // expr
  []string{"book_id"},                     // outputFields
  []entity.Vector{entity.FloatVector([]float32{0.1, 0.2})}, // vectors
  "book_intro",                            // vectorField
  entity.L2,                               // metricType
  2,                                       // topK
  sp,                                      // sp
)
if err != nil {
  log.Fatal("fail to search collection:", err.Error())
}
final Integer SEARCH_K = 2;
final String SEARCH_PARAM = "{\"nprobe\":10}";
List<String> search_output_fields = Arrays.asList("book_id");
List<List<Float>> search_vectors = Arrays.asList(Arrays.asList(0.1f, 0.2f));

SearchParam searchParam = SearchParam.newBuilder()
  .withCollectionName("book")
  .withMetricType(MetricType.L2)
  .withOutFields(search_output_fields)
  .withTopK(SEARCH_K)
  .withVectors(search_vectors)
  .withVectorFieldName("book_intro")
  .withExpr("word_count <= 11000")
  .withParams(SEARCH_PARAM)
  .build();
R<SearchResults> respSearch = milvusClient.search(searchParam);
search

Collection name (book): book

The vectors of search data(the length of data is number of query (nq), the dim of every vector in data must be equal to vector field’s of collection. You can also import a csv file without headers): [[0.1, 0.2]]

The vector field used to search of collection (book_intro): book_intro

Metric type: L2

Search parameter nprobe's value: 10

The max number of returned record, also known as topk: 2

The boolean expression used to filter attribute []: word_count <= 11000

The names of partitions to search (split by "," if multiple) ['_default'] []: 

timeout []:

Guarantee Timestamp(It instructs Milvus to see all operations performed before a provided timestamp. If no such timestamp is provided, then Milvus will search all operations performed to date) [0]: 

Travel Timestamp(Specify a timestamp in a search to get results based on a data view) [0]:
Parameter Description
data Vectors to search with.
anns_field Name of the field to search on.
params Search parameter(s) specific to the index. See Vector Index for more information.
limit Number of the most similar results to return.
expr Boolean expression used to filter attribute. See Boolean Expression Rules for more information.
partition_names (optional) List of names of the partition to search in.
output_fields (optional) Name of the field to return. Vector field is not supported in current release.
timeout (optional) A duration of time in seconds to allow for RPC. Clients wait until server responds or error occurs when it is set to None.
round_decimal (optional) Number of decimal places of returned distance.
Parameter Description
collection_name Name of the collection to search in.
search_params Parameters (as an object) used for search.
vectors Vectors to search with.
vector_type Pre-check of binary or float vectors. 100 for binary vectors and 101 for float vectors.
partition_names (optional) List of names of the partition to search in.
expr (optional) Boolean expression used to filter attribute. See Boolean Expression Rules for more information.
output_fields (optional) Name of the field to return. Vector field not support in current release.
Parameter Description Options
NewIndex*SearchParam func Function to create entity.SearchParam according to different index types. For floating point vectors:
  • NewIndexFlatSearchParam (FLAT)
  • NewIndexIvfFlatSearchParam (IVF_FLAT)
  • NewIndexIvfSQ8SearchParam (IVF_SQ8)
  • NewIndexIvfPQSearchParam (RNSG)
  • NewIndexRNSGSearchParam (HNSW)
  • NewIndexHNSWSearchParam (HNSW)
  • NewIndexANNOYSearchParam (ANNOY)
  • NewIndexRHNSWFlatSearchParam (RHNSW_FLAT)
  • NewIndexRHNSW_PQSearchParam (RHNSW_PQ)
  • NewIndexRHNSW_SQSearchParam (RHNSW_SQ)
For binary vectors:
  • NewIndexBinFlatSearchParam (BIN_FLAT)
  • NewIndexBinIvfFlatSearchParam (BIN_IVF_FLAT)
searchParam Search parameter(s) specific to the index. See Vector Index for more information.
ctx Context to control API invocation process. N/A
CollectionName Name of the collection to load. N/A
partitionNames List of names of the partitions to load. All partitions will be searched if it is left empty. N/A
expr Boolean expression used to filter attribute. See Boolean Expression Rules for more information.
output_fields Name of the field to return. Vector field is not supported in current release.
vectors Vectors to search with. N/A
vectorField Name of the field to search on. N/A
metricType Metric type used for search. This parameter must be set identical to the metric type used for index building.
topK Number of the most similar results to return. N/A
sp entity.SearchParam specific to the index. N/A
Parameter Description Options
CollectionName Name of the collection to load. N/A
MetricType Metric type used for search. This parameter must be set identical to the metric type used for index building.
OutFields Name of the field to return. Vector field is not supported in current release.
TopK Number of the most similar results to return. N/A
Vectors Vectors to search with. N/A
VectorFieldName Name of the field to search on. N/A
Expr Boolean expression used to filter attribute. See Boolean Expression Rules for more information.
Params Search parameter(s) specific to the index. See Vector Index for more information.
Option Full name Description
--help n/a Displays help for using the command.

Check the returned results.

assert len(res) == 1
hits = res[0]
assert len(hits) == 2
print(f"- Total hits: {len(hits)}, hits ids: {hits.ids} ")
print(f"- Top1 hit id: {hits[0].id}, distance: {hits[0].distance}, score: {hits[0].score} ")
console.log(results.results)
fmt.Printf("%#v\n", searchResult)
for _, sr := range searchResult {
  fmt.Println(sr.IDs)
  fmt.Println(sr.Scores)
}
SearchResultsWrapper wrapperSearch = new SearchResultsWrapper(respSearch.getData().getResults());
System.out.println(wrapperSearch.getIDScore(0));
System.out.println(wrapperSearch.getFieldData("book_id", 0));
# Milvus CLI automatically returns the primary key values of the most similar vectors and their distances.

What's next

On this page