Model Details
Full Model IDaufklarer/WeSpeaker-ResNet34-LM-MLX
Pipeline / Taskaudio-classification
Librarymlx
Downloads (all-time)180.8K
Likes2
Last Modified4/12/2026
Author / Orgaufklarer
PrivateNo � public
⚡ Quick Usage (Python)
Using the 🤗 Transformers library. Install with pip install transformers
from transformers import pipeline
# Load the model
pipe = pipeline("audio-classification", model="aufklarer/WeSpeaker-ResNet34-LM-MLX")
# Run inference
result = pipe("Your input here")
print(result)����� Tags
mlxsafetensorswespeaker-resnet34-lmspeaker-embeddingspeaker-verificationspeaker-diarizationwespeakerresnetapple-siliconaudio-classificationbase_model:pyannote/wespeaker-voxceleb-resnet34-LMbase_model:finetune:pyannote/wespeaker-voxceleb-resnet34-LMlicense:mitregion:us
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Access model files, inference API, and full documentation on Hugging Face.
Open on Hugging Face →Browse Model Files ↗�� Browse All Models🤖 Task: audio-classification
This model is designed for the audio-classification task. Explore more models for this use case.
All audio-classification Models →📊 Popularity
⬇ Downloads180.8K
����� Community Likes2
🛠�� Requirements
- →Install: pip install mlx
- →Python 3.8+ recommended for Transformers.
- →GPU (CUDA) speeds up inference significantly.
- →Use model.half() for fp16 on limited VRAM.