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Train Embedding Models on Apple silicon with MLX and the Hugging Face Hub

Project description

MLX-Embeddings-LoRA

image

With MLX-Embeddings-LoRA you can, train embedding models locally on Apple Silicon using MLX. Built on top of mlx-embeddings, supporting all models available in that package with contrastive learning algorithms optimized for semantic search, retrieval, and similarity tasks. Including:

  • Qwen3
  • XLM-RoBERTa
  • BERT
  • ModernBERT

Features

  • 🚀 Efficient Training Methods

    • LoRA: Low-Rank Adaptation for efficient fine-tuning
    • DoRA: Weight-Decomposed Low-Rank Adaptation
    • Full-precision: Train all model parameters
    • Quantized training: QLoRA with 4-bit, 6-bit, or 8-bit quantization
  • 📊 Contrastive Learning Algorithms

    • InfoNCE Loss: Temperature-scaled contrastive loss with in-batch negatives
    • Multiple Negatives Ranking Loss: Efficient ranking with batch negatives
    • Triplet Loss: Margin-based triplet optimization
    • NT-Xent Loss: Normalized temperature-scaled cross entropy (SimCLR-style)

So far only Text based embedding models and contrastive learning is supported, more features and algorythms are to come.

  • 🔧 Flexible Dataset Support

    • Hugging Face datasets
    • JSONL files
    • Optional negative examples (auto-generated from batch if not provided)
  • Apple Silicon Optimized

    • Native MLX acceleration
    • Memory-efficient training
    • Gradient accumulation support

Installation

pip install -U mlx-embeddings-lora

Quick Start

Basic Training

mlx_embeddings_lora.train \
  --model mlx-community/all-MiniLM-L6-v2-4bit \
  --train \
  --data mlx-community/sentence-compression \
  --iters 600

With Configuration File

mlx_embeddings_lora.train --config config.yaml

Command-line flags will override corresponding values in the config file.

Dataset Format

Your dataset should contain anchor-positive pairs:

JSONL Format

{"anchor": "How do I reset my password?", "positive": "What's the process for password recovery?", "negative": "What's the weather today?"}
{"anchor": "Python tutorial for beginners", "positive": "Learn Python basics step by step"}
{"anchor": "Machine learning introduction", "positive": "Getting started with ML", "negative": "JavaScript frameworks overview"}

Note: The negative field is optional. If not provided, the training algorithm will automatically use in-batch negatives from other examples in the batch.

Key Parameters

Training Method

  • --train-type: Choose training method
    • lora (default): Low-Rank Adaptation
    • dora: Weight-Decomposed Low-Rank Adaptation
    • full: Full parameter fine-tuning

LoRA Configuration

  • --lora-rank: Rank of LoRA matrices (default: 16)
  • --lora-alpha: LoRA scaling factor (default: 32)
  • --lora-dropout: Dropout probability (default: 0.05)

Quantization

  • --quantize: Enable quantized training (QLoRA)
  • --quantize-bits: Quantization bits (4, 6, or 8)

Loss Function

  • --loss-type: Contrastive loss algorithm
    • infonce: InfoNCE with temperature scaling (recommended)
    • mnr: Multiple Negatives Ranking Loss
    • triplet: Triplet loss with margin
    • nt_xent: NT-Xent (SimCLR-style)

Training Hyperparameters

  • --batch-size: Training batch size (default: 32)
  • --learning-rate: Learning rate (default: 5e-5)
  • --iters: Number of training iterations (default: 1000)
  • --max-seq-length: Maximum sequence length (default: 512)
  • --gradient-accumulation-steps: Accumulate gradients over multiple steps

Core Training Parameters

# Model and data
--model <model_path>              # Model path or HF repo
--data <data_path>                # Dataset path or HF dataset name
--train-type lora                 # lora, dora, or full
--train-mode infonce              # infonce, mnr, triplet, nt_xent

# Training schedule
--batch-size 4                    # Batch size
--iters 1000                      # Training iterations
--epochs 3                        # Training epochs (ignored if iters set)
--learning-rate 1e-5              # Learning rate
--gradient-accumulation-steps 1   # Gradient accumulation

# Model architecture
--num-layers 16                   # Layers to fine-tune (-1 for all)
--max-seq-length 2048            # Maximum sequence length

# LoRA parameters
--lora-parameters '{"rank": 8, "dropout": 0.0, "scale": 10.0}'

# Optimization
--optimizer adam                  # adam, adamw, qhadam, muon
--lr-schedule cosine             # Learning rate schedule
--grad-checkpoint                # Enable gradient checkpointing

# Quantization
--load-in-4bits                  # 4-bit quantization
--load-in-6bits                  # 6-bit quantization  
--load-in-8bits                  # 8-bit quantization

# Monitoring
--steps-per-report 10            # Steps between loss reports
--steps-per-eval 200             # Steps between validation
--val-batches 25                 # Validation batches (-1 for all)
--wandb project_name             # WandB logging

# Checkpointing
--adapter-path ./adapters        # Save/load path for adapters
--save-every 100                 # Save frequency
--resume-adapter-file <path>     # Resume from checkpoint
--fuse                           # Fuse and save trained model

Advanced Features

Automatic Negative Sampling

If your dataset doesn't include negative examples, the training will automatically use in-batch negatives:

{"anchor": "Query 1", "positive": "Relevant doc 1"}
{"anchor": "Query 2", "positive": "Relevant doc 2"}
{"anchor": "Query 3", "positive": "Relevant doc 3"}

For each anchor, positives from other examples in the batch serve as negatives.

Gradient Accumulation

For larger effective batch sizes with limited memory:

mlx_embeddings_lora.train \
  --model your-model \
  --batch-size 16 \
  --gradient-accumulation-steps 4  # Effective batch size: 64

Model Export

After training, export your fine-tuned model and upload to Hugging Face:

mlx_embeddings_lora.export \
  --model ./output/checkpoint-1000 \
  --output ./my-finetuned-model \
  --repo username/model-name

Performance Tips

  1. Start with LoRA: More memory efficient than full fine-tuning
  2. Use in-batch negatives: Skip explicit negatives for efficiency
  3. Tune temperature: Lower (0.05-0.07) for harder negatives, higher (0.1-0.2) for softer
  4. Batch size: Larger batches = more negatives = better performance
  5. Gradient accumulation: Increase effective batch size without OOM
  6. QLoRA for large models: Use 4-bit quantization for models >1B parameters

Citation

If you use mlx-embeddings-lora in your research, please cite:

@software{mlx_embeddings_lora,
  title = {mlx-embeddings-lora: Efficient Embedding Model Training on Apple Silicon},
  author = {Gökdneiz Gülmez},
  year = {2025},
  url = {https://github.com/Goekdeniz-Guelmez/mlx-embeddings-lora}
}

Contributing

Contributions are welcome! Please see CONTRIBUTING.md for guidelines.

License

MIT License - see LICENSE for details.

Acknowledgments

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