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pyflink.multimodal.expression.ImageExpressionAccessor.embedding#

ImageExpressionAccessor.embedding(*, model: str = 'ViT-B/32', pretrained: str = 'openai', model_sharing: Optional[Literal['process', 'shared']] = None, concurrency: Optional[int] = None, batch_size: Optional[int] = None, num_gpus: Optional[float] = None, gpu_type: Optional[str] = None) → pyflink.table.expression.Expression[source]#

Compute image embeddings.

Equivalent to image_embedding(). See that function for full parameter details.

Parameters
  • model – Embedding model name.

  • pretrained – Pretrained weights identifier.

  • model_sharing – Optional model sharing mode.

  • concurrency – Optional execution concurrency for this operation. None uses the framework default.

  • batch_size – Optional inference batch size.

  • num_gpus – Optional number of GPUs requested for model inference.

  • gpu_type – Optional GPU type requested for model inference.

Returns

A DataFrame expression that produces ARRAY<FLOAT> embedding vectors.

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