Optional
collectionMethod to add documents to the Qdrant database. It generates vectors
from the documents using the Embeddings
instance and then adds the
vectors to the database.
Array of Document
instances to be added to the Qdrant database.
Optional
documentOptions: QdrantAddDocumentOptionsOptional QdrantAddDocumentOptions
which has a list of JSON objects for extra querying
Promise that resolves when the documents have been added to the database.
Method to add vectors to the Qdrant database. Each vector is associated with a document, which is stored as the payload for a point in the database.
Array of vectors to be added to the Qdrant database.
Array of Document
instances associated with the vectors.
Optional
documentOptions: QdrantAddDocumentOptionsOptional QdrantAddDocumentOptions
which has a list of JSON objects for extra querying
Promise that resolves when the vectors have been added to the database.
Optional
kOrFields: number | Partial<VectorStoreRetrieverInput<QdrantVectorStore>>Optional
filter: string | objectOptional
callbacks: CallbacksOptional
tags: string[]Optional
metadata: Record<string, unknown>Optional
verbose: booleanOptional
k: numberOptional
filter: string | objectOptional
_callbacks: CallbacksMethod to search for vectors in the Qdrant database that are similar to a given query vector. The search results include the score and payload (metadata and content) for each similar vector.
Query vector to search for similar vectors in the Qdrant database.
Optional
k: numberOptional number of similar vectors to return. If not specified, all similar vectors are returned.
Optional
filter: {}Optional filter to apply to the search results.
Promise that resolves with an array of tuples, where each tuple includes a Document
instance and a score for a similar vector.
Optional
k: numberOptional
filter: string | objectOptional
_callbacks: CallbacksOptional
maxReturn documents selected using the maximal marginal relevance. Maximal marginal relevance optimizes for similarity to the query AND diversity among selected documents.
Text to look up documents similar to.
Static
fromStatic method to create a QdrantVectorStore
instance from Document
instances. The documents are added to the Qdrant database.
Array of Document
instances to be added to the Qdrant database.
Embeddings
instance used to generate vectors from the documents.
QdrantLibArgs
instance specifying the configuration for the Qdrant database.
Promise that resolves with a new QdrantVectorStore
instance.
Static
fromStatic method to create a QdrantVectorStore
instance from an existing
collection in the Qdrant database.
Embeddings
instance used to generate vectors from the documents in the collection.
QdrantLibArgs
instance specifying the configuration for the Qdrant database.
Promise that resolves with a new QdrantVectorStore
instance.
Static
fromStatic method to create a QdrantVectorStore
instance from texts. Each
text is associated with metadata and converted to a Document
instance, which is then added to the Qdrant database.
Array of texts to be converted to Document
instances and added to the Qdrant database.
Array or single object of metadata to be associated with the texts.
Embeddings
instance used to generate vectors from the texts.
QdrantLibArgs
instance specifying the configuration for the Qdrant database.
Promise that resolves with a new QdrantVectorStore
instance.
Generated using TypeDoc
Class that extends the
VectorStore
base class to interact with a Qdrant database. It includes methods for adding documents and vectors to the Qdrant database, searching for similar vectors, and ensuring the existence of a collection in the database.