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  • Python
    • EmbeddingModels
      • VoyageEmbeddingFunction

__call__()

This operation in VoyageEmbeddingFunction takes a list of text strings and directly encodes them into vector embeddings.

The __call__() method of VoyageEmbeddingFunction shares the same functionality as encode_documents() and encode_queries().

Request syntax

# Instance created

voyage_ef = VoyageEmbeddingFunction()

# __call__ method will be called
voyage_ef(
    texts: List[str]
) -> List[np.array]

PARAMETERS:

  • texts (List[str])

    A list of string values, where each string represents text that will be passed to the embedding model for encoding. The model will generate an embedding vector for each string in the list.

RETURN TYPE:

List[np.array]

RETURNS:

A list where each element is a NumPy array.

Exceptions:

  • ImportError

    This exception will be raised when the Voyage module is not installed.

Examples

from pymilvus.model.dense import VoyageEmbeddingFunction

voyage_ef = VoyageEmbeddingFunction(
    model_name="voyage-lite-02-instruct", # Defaults to `voyage-2`
    api_key='YOUR_API_KEY' # Replace with your own Voyage API key
)

docs = [
    "Artificial intelligence was founded as an academic discipline in 1956.",
    "Alan Turing was the first person to conduct substantial research in AI.",
    "Born in Maida Vale, London, Turing was raised in southern England.",
]

voyage_ef(docs)

# [array([ 0.02582654, -0.00907086, -0.04604037, ..., -0.01227521,
#          0.04420955, -0.00038829]),
#  array([ 0.03844212, -0.01597065, -0.03728884, ..., -0.02118733,
#          0.03349845,  0.0065346 ]),
#  array([ 0.05143557, -0.01096631, -0.02690451, ..., -0.02416254,
#          0.07658645,  0.03064499])]

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