Mizo Automatic Speech Recognition (ASR) Models v3.0

xlsr-1b-mizonal3-E3-lus-v2026.06

This model is a fine-tuned version of facebook/wav2vec2-xls-r-1b on the MiZonal v3.0 dataset. Note: ~1 hour of conversational speech was added to this dataset version.

It achieves the following results on the evaluation set:

  • Wer: 24.0306
  • Cer: 5.1391
  • Real Time Factor: 0.0042

Quick Inference

import torch
import librosa
from transformers import Wav2Vec2Processor, Wav2Vec2ForCTC

device = "cuda" if torch.cuda.is_available() else "cpu"

processor = Wav2Vec2Processor.from_pretrained("andrewbawitlung/xlsr-1b-mizonal3-E3-lus-v2026.06")
model = Wav2Vec2ForCTC.from_pretrained("andrewbawitlung/xlsr-1b-mizonal3-E3-lus-v2026.06").to(device)

audio, sr = librosa.load("your_audio.wav", sr=16000)
input_values = processor(audio, sampling_rate=16000, return_tensors="pt").input_values.to(device)

with torch.no_grad():
    logits = model(input_values).logits

predicted_ids = torch.argmax(logits, dim=-1)
transcription = processor.batch_decode(predicted_ids)[0]
print(transcription)

Model description

Experiment Configurations

This repository is part of a series of experiments. The different configurations are:

  • E1 (Baseline): Standard training configuration.
  • E2 (Noise): Training with background noise augmentation.
  • E3 (Speed): Training with speed perturbation augmentation.
  • E4 (SpecAug): Training with SpecAugment (time and frequency masking).
  • E5 (Combined): Training with a combination of all augmentations.

All Models in this Family

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 0.0003
  • train_batch_size: 8
  • eval_batch_size: 8
  • seed: 42
  • optimizer: OptimizerNames.ADAMW_TORCH_FUSED
  • lr_scheduler_type: SchedulerType.LINEAR
  • num_epochs: 8

Training results

step epoch train_loss eval_loss eval_wer eval_cer learning_rate grad_norm
250 0.30 0.7400 0.4306 44.95 11.22 1.49e-04 1.18
500 0.61 0.4544 0.3607 40.47 9.99 2.99e-04 0.77
750 0.91 0.3348 0.2852 32.36 7.69 2.88e-04 0.82
1000 1.21 0.2393 0.2309 26.78 5.99 2.75e-04 1.10
1250 1.52 0.1961 0.2153 25.04 5.56 2.63e-04 0.59
1500 1.82 0.1514 0.2291 24.72 5.57 2.51e-04 0.39
1750 2.12 0.1142 0.2020 21.92 4.66 2.38e-04 0.46
2000 2.43 0.1140 0.2130 22.41 4.89 2.26e-04 0.31
2250 2.73 0.1346 0.2073 22.78 4.90 2.14e-04 0.54
2500 3.03 0.2568 0.3712 25.74 5.77 2.02e-04 0.83
2750 3.34 1.1509 1.2241 68.30 24.99 1.89e-04 3.00
3000 3.64 1.5828 1.4634 94.28 62.98 1.77e-04 1.01
3250 3.94 1.6651 1.5738 99.80 78.44 1.65e-04 1.55
3500 4.25 1.5348 1.4266 97.69 54.04 1.52e-04 2.07
3750 4.55 1.4105 1.3147 87.25 38.78 1.40e-04 1.71
4000 4.85 1.4030 1.3064 72.53 24.47 1.28e-04 3.74
4250 5.16 1.5054 1.4667 69.57 20.30 1.15e-04 5.71
4500 5.46 1.7501 1.6419 71.23 17.13 1.03e-04 3.50
4750 5.77 1.7955 1.6913 93.22 21.60 9.08e-05 0.00
5000 6.07 1.8022 1.6813 99.23 25.38 7.84e-05 0.00
5250 6.37 1.8675 1.6999 99.36 25.29 6.61e-05 0.00
5500 6.68 1.8234 1.6999 99.36 25.29 5.38e-05 0.00
5750 6.98 1.8892 1.6999 99.36 25.29 4.15e-05 0.00
6000 7.28 1.9035 1.6999 99.36 25.29 2.92e-05 0.00
6250 7.59 1.8068 1.6999 99.36 25.29 1.69e-05 0.00
6500 7.89 1.9037 1.6999 99.36 25.29 4.58e-06 0.00
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