Automatic Speech Recognition
Transformers
Safetensors
Japanese
whisper
audio
hf-asr-leaderboard
Eval Results
Inference Endpoints
kotoba-whisper-v2.1 / pipeline /test_pipeline.py
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from pprint import pprint
from datasets import load_dataset
from transformers.pipelines import pipeline
model_alias = "kotoba-tech/kotoba-whisper-v1.1"
print("""### P + S ###""")
pipe = pipeline(model=model_alias,
punctuator=True,
stable_ts=True,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
return_timestamps=True,
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### P ###""")
pipe = pipeline(model=model_alias,
punctuator=True,
stable_ts=False,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
return_timestamps=True,
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### S ###""")
pipe = pipeline(model=model_alias,
punctuator=False,
stable_ts=True,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
return_timestamps=True,
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### RAW ###""")
pipe = pipeline(model=model_alias,
punctuator=False,
stable_ts=False,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
return_timestamps=True,
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### P + S ###""")
pipe = pipeline(model=model_alias,
punctuator=True,
stable_ts=True,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### P ###""")
pipe = pipeline(model=model_alias,
punctuator=True,
stable_ts=False,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### S ###""")
pipe = pipeline(model=model_alias,
punctuator=False,
stable_ts=True,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break
print("""### RAW ###""")
pipe = pipeline(model=model_alias,
punctuator=False,
stable_ts=False,
chunk_length_s=15,
batch_size=16,
trust_remote_code=True)
dataset = load_dataset("kotoba-tech/kotoba-whisper-eval", split="train")
for i in dataset:
if i["audio"]["path"] == "long_interview_1.mp3":
i["audio"]["array"] = i["audio"]["array"][:7938000]
prediction = pipe(
i["audio"],
generate_kwargs={"language": "japanese", "task": "transcribe"}
)
pprint(prediction)
break