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| | This guide shows you how to train policies on multiple GPUs using [Hugging Face Accelerate](https://huggingface.co/docs/accelerate).
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| | First, ensure you have accelerate installed:
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| | ```bash
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| | pip install accelerate
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| | ```
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| | You can launch training in two ways:
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| | You can specify all parameters directly in the command without running `accelerate config`:
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| | ```bash
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| | accelerate launch \
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| | $(which lerobot-train) \
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| | ```
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| | **Key accelerate parameters:**
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| | - `
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| | - `
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| | - `
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| | If you prefer to save your configuration, you can optionally configure accelerate for your hardware setup by running:
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| | ```bash
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| | accelerate config
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| | ```
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| | This interactive setup will ask you questions about your training environment (number of GPUs, mixed precision settings, etc.) and saves the configuration for future use. For a simple multi-GPU setup on a single machine, you can use these recommended settings:
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| | - Compute environment: This machine
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| | - Number of machines: 1
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| | - Number of processes: (number of GPUs you want to use)
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| | - GPU ids to use: (leave empty to use all)
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| | - Mixed precision: fp16 or bf16 (recommended for faster training)
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| | Then launch training with:
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| | ```bash
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| | accelerate launch $(which lerobot-train) \
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| | ```
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| | When you launch training with accelerate:
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| | 1. **Automatic detection**: LeRobot automatically detects if it's running under accelerate
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| | 2. **Data distribution**: Your batch is automatically split across GPUs
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| | 3. **Gradient synchronization**: Gradients are synchronized across GPUs during backpropagation
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| | 4. **Single process logging**: Only the main process logs to wandb and saves checkpoints
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| | ## Learning Rate and Training Steps Scaling
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| | **Important:** LeRobot does **NOT** automatically scale learning rates or training steps based on the number of GPUs. This gives you full control over your training hyperparameters.
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| | ### Why No Automatic Scaling?
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| | Many distributed training frameworks automatically scale the learning rate by the number of GPUs (e.g., `lr = base_lr × num_gpus`).
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| | However, LeRobot keeps the learning rate exactly as you specify it.
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| | ### When and How to Scale
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| | If you want to scale your hyperparameters when using multiple GPUs, you should do it manually:
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| | **Learning Rate Scaling:**
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| | ```bash
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| | # Example: 2 GPUs with linear LR scaling
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| | # Base LR: 1e-4, with 2 GPUs -> 2e-4
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| | accelerate launch --num_processes=2 $(which lerobot-train) \
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| | --optimizer.lr=2e-4 \
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| | --dataset.repo_id=lerobot/pusht \
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| | --policy=act
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| | ```
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| | **Training Steps Scaling:**
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| | Since the effective batch size `bs` increases with multiple GPUs (batch_size × num_gpus), you may want to reduce the number of training steps proportionally:
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| | ```bash
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| | # Example: 2 GPUs with effective batch size 2x larger
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| | # Original: batch_size=8, steps=100000
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| | # With 2 GPUs: batch_size=8 (16 in total), steps=50000
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| | accelerate launch --num_processes=2 $(which lerobot-train) \
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| | --batch_size=8 \
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| | --steps=50000 \
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| | --dataset.repo_id=lerobot/pusht \
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| | --policy=act
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| | ```
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| | ## Notes
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| | - The `--policy.use_amp` flag in `lerobot-train` is only used when **not** running with accelerate. When using accelerate, mixed precision is controlled by accelerate's configuration.
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| | - Training logs, checkpoints, and hub uploads are only done by the main process to avoid conflicts. Non-main processes have console logging disabled to prevent duplicate output.
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| | - The effective batch size is `batch_size × num_gpus`. If you use 4 GPUs with `
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| | - Learning rate scheduling is handled correctly across multiple processes—LeRobot sets `step_scheduler_with_optimizer=False` to prevent accelerate from adjusting scheduler steps based on the number of processes.
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| | - When saving or pushing models, LeRobot automatically unwraps the model from accelerate's distributed wrapper to ensure compatibility.
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| | - WandB integration automatically initializes only on the main process, preventing multiple runs from being created.
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| | For more advanced configurations and troubleshooting, see the [Accelerate documentation](https://huggingface.co/docs/accelerate). If you want to learn more about how to train on a large number of GPUs, checkout this awesome guide: [Ultrascale Playbook](https://huggingface.co/spaces/nanotron/ultrascale-playbook).
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