A path to the module that contains the class, eg. ["langchain", "llms"] Usually should be the same as the entrypoint the class is exported from.
Optional
_verboseOptional
filterA map of aliases for constructor args. Keys are the attribute names, e.g. "foo". Values are the alias that will replace the key in serialization. This is used to eg. make argument names match Python.
A map of additional attributes to merge with constructor args. Keys are the attribute names, e.g. "foo". Values are the attribute values, which will be serialized. These attributes need to be accepted by the constructor as arguments.
The final serialized identifier for the module.
A map of secrets, which will be omitted from serialization. Keys are paths to the secret in constructor args, e.g. "foo.bar.baz". Values are the secret ids, which will be used when deserializing.
Method to add documents to the vector store. It converts the documents into vectors, and adds them to the store.
Array of Document
instances.
Optional
options: { Optional
ids?: string[]Promise that resolves when the documents have been added.
Method to add vectors to the vector store. It converts the vectors into rows and inserts them into the database.
Array of vectors.
Array of Document
instances.
Optional
options: { Optional
ids?: string[]Promise that resolves when the vectors have been added.
Optional
kOrFields: number | Partial<VectorStoreRetrieverInput<VercelPostgres>>Optional
filter: MetadataOptional
callbacks: CallbacksOptional
tags: string[]Optional
metadata: Record<string, unknown>Optional
verbose: booleanMethod to perform a similarity search in the vector store. It returns
the k
most similar documents to the query vector, along with their
similarity scores.
Query vector.
Number of most similar documents to return.
Optional
filter: MetadataOptional filter to apply to the search.
Promise that resolves with an array of tuples, each containing a Document
and its similarity score.
Optional
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 new VercelPostgres
instance from an
array of Document
instances. It adds the documents to the store.
Array of Document
instances.
Embeddings instance.
Optional
dbConfig: Partial<VercelPostgresFields> & { Promise that resolves with a new instance of VercelPostgres
.
Static
fromStatic method to create a new VercelPostgres
instance from an
array of texts and their metadata. It converts the texts into
Document
instances and adds them to the store.
Array of texts.
Array of metadata objects or a single metadata object.
Embeddings instance.
Optional
dbConfig: Partial<VercelPostgresFields> & { Promise that resolves with a new instance of VercelPostgres
.
Static
initializeStatic method to create a new VercelPostgres
instance from a
connection. It creates a table if one does not exist, and calls
connect
to return a new instance of VercelPostgres
.
Embeddings instance.
Optional
config: Partial<VercelPostgresFields> & { A new instance of VercelPostgres
.
Static
lc_Protected
generateGenerates the SQL placeholders for a specific row at the provided index.
The index of the row for which placeholders need to be generated.
The SQL placeholders for the row values.
Protected
runConstructs the SQL query for inserting rows into the specified table.
The rows of data to be inserted, consisting of values and records.
The complete SQL INSERT INTO query string.
Generated using TypeDoc
Class that provides an interface to a Vercel Postgres vector database. It extends the
VectorStore
base class and implements methods for adding documents and vectors and performing similarity searches.