BeamSampler

[source]

BeamSampler class

keras_hub.samplers.BeamSampler(num_beams=5, return_all_beams=False, **kwargs)

Beam Sampler class.

This sampler implements beam search algorithm. At each time-step, beam search keeps the beams (sequences) of the top num_beams highest accumulated probabilities, and uses each one of the beams to predict candidate next tokens.

Arguments

  • num_beams: int. The number of beams that should be kept at each time-step. num_beams should be strictly positive.
  • return_all_beams: bool. When set to True, the sampler will return all beams and their respective probabilities score.

Call arguments

{{call_args}}

Examples

causal_lm = keras_hub.models.GPT2CausalLM.from_preset("gpt2_base_en")

# Pass by name to compile.
causal_lm.compile(sampler="beam")
causal_lm.generate(["Keras is a"])

# Pass by object to compile.
sampler = keras_hub.samplers.BeamSampler(num_beams=5)
causal_lm.compile(sampler=sampler)
causal_lm.generate(["Keras is a"])