# Copyright (c) Microsoft Corporation. # SPDX-License-Identifier: Apache-2.0 # DeepSpeed Team import torch def quantize_transformer_layer(orig_layer_impl, model, megatron=False, preln=False): """ Quantize bert-style transformer layers with DeepSpeed's transformer layer Arguments: orig_layer_impl (torch.nn.Module): the original transformer layer implementation to look for, e.g., transformers.models.bert.modeling_bert.BertLayer or transformers.BertLayer model (torch.nn.Module): user's nn.module representing their model megatron (bool): megatron model-parallel implementation (this is supported for inference only) preln (bool): does the original layer implementation do pre or post layer norm? Note: For Bert kind of models, we inject based on the DeepSpeed-Example models, if not setting huggingface flag. Returns: Updated nn.module with quantized transformer layers """ def quantize_weight(weight): return weight.to(torch.int8) def megatron_layer_quantize(layer): layer.attention.query_key_value.weight.data = quantize_weight(layer.attention.query_key_value.weight.data) layer.attention.dense.weight.data = quantize_weight(layer.attention.dense.weight.data) layer.mlp.dense_h_to_4h.weight.data = quantize_weight(layer.mlp.dense_h_to_4h.weight.data) layer.mlp.dense_4h_to_h.weight.data = quantize_weight(layer.mlp.dense_4h_to_h.weight.data) def bert_layer_quantize(layer): layer.attention.self.query.weight.data = quantize_weight(layer.attention.self.query.weight.data) layer.attention.self.key.weight.data = quantize_weight(layer.attention.self.key.weight.data) layer.attention.self.value.weight.data = quantize_weight(layer.attention.self.value.weight.data) layer.attention.output.dense.weight.data = quantize_weight(layer.attention.output.dense.weight.data) if preln: layer.intermediate.dense_act.weight.data = quantize_weight(layer.intermediate.dense_act.weight.data) else: layer.intermediate.dense.weight.data = quantize_weight(layer.intermediate.dense.weight.data) layer.output.dense.weight.data = quantize_weight(layer.output.dense.weight.data) def quantize_fn(child): if megatron: # Quantize megatron GPT2 / GPT3 trained model megatron_layer_quantize(child) else: # Quantize either DeepSpeed or HuggingFace trained model bert_layer_quantize(child) return child return quantize_module(model=model, orig_class=orig_layer_impl, quantize_fn=quantize_fn) def quantize_module(model, orig_class, quantize_fn): policy = {orig_class: quantize_fn} return _quantize_module(model, policy) def _quantize_module(model, policies): for name, child in model.named_children(): if child.__class__ in policies: orig = repr(child) setattr(model, name, policies[child.__class__](child)) new = getattr(model, name) else: _quantize_module(child, policies) return model