Delayed parameter initialization - Amazon SageMaker
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Delayed parameter initialization

Initialization of a large model for training is not always possible with the limited GPU memory. To resolve this problem of insufficient GPU memory, you can initialize the model on CPU memory. However, for larger models with more than 20 or 40 billion parameters, even CPU memory might not be enough. For such case, we recommend that you initialize the model on what PyTorch calls a meta device, which allows the creation of tensors without any data attached to them. A tensor on a meta device only needs the shape information, and this allows to create a large model with its parameters on meta devices. Hugging Face Accelerate provides the context manager init_empty_weights to help create such model on meta devices while initializing the buffers on a regular device. Before training starts, PyTorch FSDP initializes the model parameters. This delayed parameter initialization feature of SMP v2 delays this creation of model parameters to happen after PyTorch FSDP performs parameter sharding. PyTorch FSDP accepts a parameter initialization function (param_init_fn) when sharding the modules, and it calls param_init_fn for each module. The param_init_fn API takes a module as an argument and initializes all the parameters in it, not including the parameters of any child module. Note that this behavior differs from the native PyTorch v2.0.1 which has a bug causing the parameters to be initialized multiple times.

SMP v2 provides the torch.sagemaker.delayed_param.DelayedParamIniter API for applying delayed parameter initialization.

The following code snippets show how to apply the torch.sagemaker.delayed_param.DelayedParamIniter API to your training script.

Assume that you have a PyTorch FSDP training script as follows.

# Creation of model on meta device from accelerate import init_empty_weights with init_empty_weights(): model = create_model() # Define a param init fn, below is an example for Hugging Face GPTNeoX. def init_weights(module): d = torch.cuda.current_device() # Note that below doesn't work if you have buffers in the model # buffers will need to reinitialized after this call module.to_empty(device=d, recurse=False) if isinstance(module, (nn.Linear, Conv1D)): module.weight.data.normal_(mean=0.0, std=args.initializer_range) if module.bias: module.bias.data.zero_() elif isinstance(module, nn.Embedding): module.weight.data.normal_(mean=0.0, std=args.initializer_range) if module.padding_idx: module.weight.data[module.padding_idx].zero_() elif isinstance(module, nn.LayerNorm): module.bias.data.zero_() module.weight.data.fill_(1.0) # Changes to FSDP wrapper. model = FSDP( model, ..., param_init_fn=init_weights ) # At this point model is initialized and sharded for sharded data parallelism.

Note that the delayed parameter initialization approach is not model agnostic. To resolve this issue, you need to write an init_weights function as shown in the preceding example to match the initialization in the original model definition, and it should cover all the parameters of the model. To simplify this process of preparing such init_weights function, SMP v2 implements this initialization function for the following models: GPT-2, GPT-J, GPT-NeoX, and Llama from Hugging Face Transformers. The torch.sagemaker.delayed_param.DelayedParamIniter API also works with the SMP tensor parallel implementation, torch.sagemaker.tensor_parallel.transformer.TransformerLMHead model, that you can call after the torch.sagemaker.transform API call.

Using the torch.sagemaker.delayed_param.DelayedParamIniter API, you can adapt your PyTorch FSDP script as follows. After creating a model with empty weights, register the torch.sagemaker.delayed_param.DelayedParamIniter API to the model, and define an object of it. Pass the object to the param_init_fn of the PyTorch FSDP class.

from torch.sagemaker.delayed_param import DelayedParamIniter from accelerate import init_empty_weights with init_empty_weights(): model = create_model() delayed_initer = DelayedParamIniter(model) with delayed_initer.validate_params_and_buffers_inited(): model = FSDP( model, ..., param_init_fn=delayed_initer.get_param_init_fn() )

Notes on tied weights

When training models with tied weights, we need to take special care to tie the weights after initializing the weights with delayed parameter initialization. PyTorch FSDP does not have a mechanism to tie the weights after initializing them using param_init_fn as above. To address such cases we added API to allow a post_init_hook_fn, which can be used to tie the weights. You can pass any function in there which accepts the module as argument, but we also have a predefined post_param_init_fn defined in DelayedParamIniter which calls tie_weights method of the module if it exists. Note that it’s safe to always pass in post_param_init_fn even if there’s no tie_weights method for the module.

with delayed_initer.validate_params_and_buffers_inited(): model = FSDP( model, ..., param_init_fn=delayed_initer.get_param_init_fn(), post_param_init_fn=delayed_initer.get_post_param_init_fn() )