DeCRED-base

This is a 174M encoder-decoder Ebranchformer model trained with an decoder-centric regularization technique on 6,000 hours of open-source normalised English data. It achieves Word Error Rates (WERs) comparable to openai/whisper-medium across multiple datasets with just 1/4 of the parameters.

Architecture details, training hyperparameters, and a description of the proposed technique will be added soon.

Disclaimer: The model currently produce insertions on utterances containing silence only, as it was previously not trained on such data. The fix will be added soon.

The model can be used with the pipeline class to transcribe audio files of arbitrary length.

from transformers import pipeline

model_id = "BUT-FIT/DeCRED-base"
pipe = pipeline("automatic-speech-recognition", model=model_id, feature_extractor=model_id, trust_remote_code=True)
# In newer versions of transformers (>4.31.0), there is a bug in the pipeline inference type.
# The warning can be ignored.
pipe.type = "seq2seq"

# Run beam search decoding with joint CTC-attention scorer
result_beam = pipe("audio.wav")

# Run greedy decoding without joint CTC-attention scorer
pipe.model.generation_config.ctc_weight = 0.0
pipe.model.generation_config.num_beams = 1

result_greedy = pipe("audio.wav")
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Safetensors
Model size
174M params
Tensor type
F32
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Datasets used to train BUT-FIT/DeCRED-base

Space using BUT-FIT/DeCRED-base 1

Collection including BUT-FIT/DeCRED-base

Evaluation results