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TextEmbeddingInput(
text: str,
task_type: typing.Optional[str] = None,
title: typing.Optional[str] = None,
)
Structural text embedding input.
Attributes |
|
---|---|
Name | Description |
text |
str
The main text content to embed. |
task_type |
Optional[str]
The name of the downstream task the embeddings will be used for. Valid values: RETRIEVAL_QUERY Specifies the given text is a query in a search/retrieval setting. RETRIEVAL_DOCUMENT Specifies the given text is a document from the corpus being searched. SEMANTIC_SIMILARITY Specifies the given text will be used for STS. CLASSIFICATION Specifies that the given text will be classified. CLUSTERING Specifies that the embeddings will be used for clustering. QUESTION_ANSWERING Specifies that the embeddings will be used for question answering. FACT_VERIFICATION Specifies that the embeddings will be used for fact verification. |
title |
Optional[str]
Optional identifier of the text content. |