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Save & Export Audio Data

Export processed audio data and transcriptions in formats optimized for ASR model training, audio-and-text applications, and downstream analysis workflows.

Output Formats

NeMo Curator’s audio curation pipeline supports several output formats tailored for different use cases:

JSONL Manifests

The primary output format for audio curation is JSONL (JSON Lines):

{"audio_filepath": "/data/audio/sample_001.wav", "text": "hello world", "pred_text": "hello world", "wer": 0.0, "duration": 2.1}
{"audio_filepath": "/data/audio/sample_002.wav", "text": "good morning", "pred_text": "good morning", "wer": 0.0, "duration": 1.8}

Metadata Fields

Standard fields included in audio manifests:

FieldTypeDescription
audio_filepathstringAbsolute path to audio file
textstringGround truth transcription
pred_textstringASR model prediction
werfloatWord Error Rate percentage
durationfloatAudio duration in seconds
languagestringLanguage identifier (optional)

Export Configuration

Using JsonlWriter

from nemo_curator.stages.text.io.writer import JsonlWriter
from nemo_curator.stages.audio.io.convert import AudioToDocumentStage

# Convert AudioTask to DocumentBatch for text writer
pipeline.add_stage(AudioToDocumentStage())

# Configure JSONL export
pipeline.add_stage(
    JsonlWriter(
        path="/output/audio_manifests",
        write_kwargs={"force_ascii": False}  # Support Unicode characters
    )
)

Directory Structure

Standard Output Layout

When source_files metadata exists, the writer generates deterministic hashed file names. Otherwise, it generates UUID-based names.

/output/audio_manifests/
├── <hash>.jsonl   # Deterministic hash if metadata.source_files present, else UUID
├── <hash>.jsonl
└── ...

Quality Control

Validation Checks

Before export, check your processed data:

from nemo_curator.stages.audio.common import PreserveByValueStage

# Filter by quality thresholds
quality_filters = [
    # Keep samples with WER &lt;= 50%
    PreserveByValueStage(
        input_value_key="wer",
        target_value=50.0,
        operator="le"
    ),
    # Keep samples with duration 1-30 seconds
    PreserveByValueStage(
        input_value_key="duration",
        target_value=1.0,
        operator="ge"
    ),
    PreserveByValueStage(
        input_value_key="duration",
        target_value=30.0,
        operator="le"
    )
]

for filter_stage in quality_filters:
    pipeline.add_stage(filter_stage)