Atlas Vector Search
Overview
In this guide, you can learn how to use the Atlas Vector Search feature
in the Kotlin driver. The Aggregates
builders class provides the
the vectorSearch()
helper method that you can use to
create a $vectorSearch
pipeline stage. This pipeline stage allows you to perform a semantic
search on your documents. A semantic search is a type of search which
locates information that is similar in meaning, but not necessarily
identical, to your provided search term or phrase.
Important
Feature Compatibility
To learn what versions of MongoDB Atlas support this feature, see Limitations in the MongoDB Atlas documentation.
Perform a Vector Search
To use this feature, you must create a vector search index and index your vector embeddings. To learn about how to programmatically create a vector search index, see the Atlas Search and Vector Search Indexes section in the Indexes guide. To learn more about vector embeddings, see How to Index Vector Embeddings for Vector Search in the Atlas documentation.
After you create a vector search index on your vector embeddings, you can reference this index in your pipeline stage, as shown in the following section.
Vector Search Example
The example in this section uses data modeled with the following Kotlin data class:
data class MovieAlt( val title: String, val year: Int, val plot: String, val plotEmbedding: List<Double> )
This example shows how to build an aggregation pipeline that uses the
vectorSearch()
method to perform an exact vector search with the following
specifications:
Searches
plotEmbedding
field values by using vector embeddings of a string valueUses the
mflix_movies_embedding_index
vector search indexReturns 1 document
Filters for documents in which the
year
value is at least2016
Aggregates.vectorSearch( SearchPath.fieldPath(MovieAlt::plotEmbedding.name), BinaryVector.floatVector(floatArrayOf(0.0001f, 1.12345f, 2.23456f, 3.34567f, 4.45678f)), "mflix_movies_embedding_index", 1.toLong(), exactVectorSearchOptions().filter(Filters.gte(MovieAlt::year.name, 2016)) )
Tip
Query Vector Type
The preceding example creates an instance of BinaryVector
to
serve as the query vector, but you can also create a List
of
Double
instances. However, we recommend that you use the
BinaryVector
type to improve storage efficiency.
Tip
Kotlin Vector Search Examples
Visit the Atlas documentation to find more tutorials on using the Kotlin driver to perform Atlas Vector Searches.
API Documentation
To learn more about the methods and types mentioned in this guide, see the following API documentation: