pyflink.multimodal.expression.ImageExpressionAccessor.ocr#
- ImageExpressionAccessor.ocr(*, lang: Optional[Union[List[str], Tuple[str, ...]]] = None, 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]#
Run OCR on image values.
Equivalent to
image_ocr(). See that function for full parameter details.- Parameters
lang – Optional OCR language-code sequence.
model_sharing – Optional model sharing mode.
concurrency – Optional execution concurrency for this operation.
Noneuses 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<ROW>OCR results withtext,confidence, andbboxfields.