# CAM++ Speaker Recognition Model (MLX) Converted from: `iic/speech_campplus_sv_zh_en_16k-common_advanced` ## Model Details - **Architecture**: CAM++ (Context-Aware Masking++) - **Framework**: MLX (Apple Silicon optimized) - **Input**: Mel-spectrogram features (320 dimensions) - **Output**: Speaker embedding (192 dimensions) - **Quantized**: False ## Usage ```python from huggingface_hub import snapshot_download import mlx.core as mx import sys # Download model model_path = snapshot_download("mlx-community/campp-mlx") sys.path.append(model_path) from model import CAMPPModel import json # Load model with open(f"{model_path}/config.json") as f: config = json.load(f) model = CAMPPModel( input_dim=config["input_dim"], embedding_dim=config["embedding_dim"], input_channels=config.get("input_channels", 64) ) weights = mx.load(f"{model_path}/weights.npz") model.load_weights(weights) # Use model audio_features = mx.random.normal((1, 320, 200)) # Your audio features embedding = model(audio_features) ``` ## Performance - Optimized for Apple Silicon (M1/M2/M3/M4) - Faster inference than PyTorch on Mac - Lower memory usage with MLX unified memory ## Original Paper CAM++: A Fast and Efficient Network for Speaker Verification Using Context-Aware Masking https://arxiv.org/abs/2303.00332