Files
microWakeWord-Trainer-Nvidi…/cli/setup_audioset
2026-01-17 16:23:24 -06:00

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#!/bin/bash
set -euo pipefail
PROGPATH=$(realpath "$0")
PROGDIR=$(dirname "${PROGPATH}")
source "${PROGDIR}/shell.functions"
if [ "${HELP}" == "true" ] ; then
cat <<EOF >&2
Usage: $0 [ --cleanup-archives ] [ --cleanup-input-files ] [ --data-dir=<data_dir> ]
--cleanup-archives : Automatically clean up any downloaded archvies after
extraction.
--cleanup-intermediate-files
: Automatically clean up the intermediate files after they've
: converted to 16k.
<data_dir> : Path to the data directory.
: Default: ${DATA_DIR}
EOF
exit 1
fi
mkdir -p "${DATA_DIR}/training_datasets/downloads" || :
cd "${DATA_DIR}/training_datasets"
echo "***** Checking audioset *****"
AUDIO_URL="https://huggingface.co/datasets/agkphysics/AudioSet/resolve"
AUDIO_DIR="./audioset"
mkdir -p "${AUDIO_DIR}"
AUDIO16K_DIR="./audioset_16k"
mkdir -p "${AUDIO16K_DIR}"
AUDIO_FILECOUNT="./downloads/audioset_filecount"
AUDIO_IN_GLOB="*.flac"
declare -A filecounts
for i in {0..9} ; do
fname="bal_train0${i}.tar"
filecounts[${fname}]=0
done
get_filecounts filecounts "${AUDIO_FILECOUNT}"
REV_CANDIDATES=(
"6762f044d1c88619c7f2006486036192128fb07e"
"0049167e89f259a010c3f070fe3666d9e5242836"
"ceb9eaaa7844c9ad7351e659c84a572e376ad06d"
"main"
)
TAR_PATTERNS=(
"data/bal_train0"
"data/bal_train/bal_train0"
)
find_rev() {
for rev in "${REV_CANDIDATES[@]}" ; do
for pattern in "${TAR_PATTERNS[@]}" ; do
url="https://huggingface.co/datasets/agkphysics/AudioSet/resolve/${rev}/${pattern}0.tar"
curl -I -L --fail -s "${url}" > /dev/null && echo "${rev},${pattern}"
done
done
echo ""
}
converter() {
# shellcheck source=/dev/null
source "${DATA_DIR}/.venv/bin/activate"
python - "${AUDIO_DIR}" "${AUDIO16K_DIR}" <<-EOF
import os, sys
from pathlib import Path
from datetime import datetime, timezone
import numpy as np
import scipy.io.wavfile
import librosa
def write_wav(dst: Path, data: np.ndarray, sr: int):
dst.parent.mkdir(parents=True, exist_ok=True)
x = np.clip(data, -1.0, 1.0)
scipy.io.wavfile.write(dst, sr, (x * 32767).astype(np.int16))
audioset_dir = Path(sys.argv[1])
audioset_out = Path(sys.argv[2])
flacs = list(audioset_dir.rglob("*.flac"))
total = len(flacs)
print(f" FLAC files: {total}")
print(" Converting AudioSet → 16k mono WAV")
print(" Sit tight — this step can take a while.")
print("")
audioset_bad = []
ok = 0
skipped = 0
START = datetime.now(timezone.utc).replace(microsecond=0)
# Heartbeat interval (prints every N files)
HEARTBEAT_EVERY = 500
for idx, p in enumerate(flacs, start=1):
try:
outfile = audioset_out / (p.stem + ".wav")
if outfile.exists():
skipped += 1
else:
y, _ = librosa.load(p, sr=16000, mono=True)
if y.size == 0:
raise ValueError("empty audio")
write_wav(outfile, y, 16000)
ok += 1
except Exception as e:
audioset_bad.append(f"{p}:{e}")
if idx == 1 or (idx % HEARTBEAT_EVERY) == 0 or idx == total:
print(f" Progress: {idx}/{total} (ok={ok}, skipped={skipped}, failed={len(audioset_bad)})")
if audioset_bad:
(audioset_out / "audioset_corrupted_files.log").write_text("\n".join(audioset_bad))
END = datetime.now(timezone.utc).replace(microsecond=0)
elapsed = END - START
print("")
print(f" AudioSet complete ({ok} ok, {skipped} skipped, {len(audioset_bad)} failed) Elapsed: {elapsed}")
EOF
}
expected_filecount=$(get_total_filecount filecounts)
actual_filecount=$(find "${AUDIO16K_DIR}" -name "*.wav" 2>/dev/null | wc -l) || :
write_filecount=false
# Option B behavior: if we already have output WAVs, don't re-download/re-extract/re-convert
if [ "${actual_filecount}" -ne 0 ] ; then
echo " Existing ${AUDIO16K_DIR} present (${actual_filecount} wav); skipping extract/convert"
else
dl=$(find_rev)
[ -n "$dl" ] || { echo " Could not locate an AudioSet revision with FLAC tarballs still present on HF." ; exit 1 ; }
rev=${dl%%,*}
pattern=${dl##*,}
echo " Checking 10 tarballs"
for i in {0..9} ; do
fname="downloads/bal_train0${i}.tar"
if [ ! -f "${fname}" ] ; then
echo " Downloading bal_train0${i}.tar"
url="${AUDIO_URL}/${rev}/${pattern}${i}.tar"
curl -L -s --fail "${url}" -o "${fname}" || { echo "Could not fetch ${fname} at rev ${rev}; continuing." ; continue ; }
fi
tarball_filecount=$(tar -tvf "${fname}" | wc -l )
filecounts["bal_train0${i}.tar"]=${tarball_filecount}
write_filecount=true
echo " Untarring bal_train0${i}.tar"
tar -xf "${fname}" -C "${AUDIO_DIR}"
if "${CLEANUP_ARCHIVES}" && [ -f "${fname}" ] ; then
echo " Cleaning up bal_train0${i}.tar"
rm -rf "${fname}"
fi
done
rm -rf "${AUDIO16K_DIR}/audioset_corrupted_files.log" || :
converter
# Recompute counts and warn (but do not fail)
expected_filecount=$(get_total_filecount filecounts)
actual_filecount=$(find "${AUDIO16K_DIR}" -name "*.wav" 2>/dev/null | wc -l) || :
if [ "${actual_filecount}" -ne "${expected_filecount}" ] ; then
echo " Converted file count(${actual_filecount}) != expected file count(${expected_filecount})" >&2
echo " WARNING: mismatch is expected if some AudioSet files are corrupted; continuing." >&2
fi
fi
if ${write_filecount} ; then
write_filecounts filecounts "${AUDIO_FILECOUNT}"
fi
if "${CLEANUP_ARCHIVES}" ; then
for i in {0..9} ; do
fname="downloads/bal_train0${i}.tar"
if [ -f "${fname}" ] ; then
echo " Cleaning up bal_train0${i}.tar"
rm -rf "${fname}"
fi
done
fi
if "${CLEANUP_INTERMEDIATE_FILES}" && [ -d "${AUDIO_DIR}" ] ; then
echo " Cleaning up ${AUDIO_DIR}"
rm -rf "${AUDIO_DIR}"
fi
echo " Audioset complete"
exit 0