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  • pyflink.dataframe.ai.llm.LLMAccessor.ai_classify

pyflink.dataframe.ai.llm.LLMAccessor.ai_classify#

LLMAccessor.ai_classify(input_col: str | Expression, labels: List[str], *, provider: str = None, model: str = None, config: Dict[str, str] = None) → DataFrame[source]#

Classify text into one of the provided labels.

Parameters:
  • input_col – Column name (str) or Expression for the input text.

  • labels – List of label strings.

  • provider – Provider name.

  • model – Model name.

  • config – Optional runtime config.

Returns:

  • category (STRING): the predicted label.

  • confidence (DOUBLE): confidence score.

Return type:

A new DataFrame with columns appended

Example:

>>> df.llm.ai_classify("text", ["positive", "negative"],
...                    model="qwen-plus")

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