# Copyright (c) Microsoft Corporation. # SPDX-License-Identifier: Apache-2.0 # DeepSpeed Team from typing import Iterable, Optional, Tuple import torch import deepspeed.comm as dist from ...allocator import empty_from from ...inference_utils import ActivationType, DtypeEnum from .. import * from ...modules.configs import * from ...modules.interfaces import * from ...ragged import RaggedBatchWrapper from .containers import Phi3NonTransformerContainer, Phi3TransformerContainer class Phi3InferenceModel(DSTransformerModelBase): """ Inference model implementation for ragged batching for Llama-2 models. """ _non_transformer: Optional[Phi3NonTransformerContainer] """ Embed + unembed container. Specializing the type annotation. """ _transformer: Optional[Iterable[Phi3TransformerContainer]] """ Per-layer transformer container. Specializing the type annotation. """ """ Properties inherited from `DSInferenceModelBase` """ @property def max_sequence_length(self) -> int: return self._config.max_seq_length """ Properties inherited from `DSTransformerModelBase` """ @property def num_layers(self) -> int: return self._config.num_hidden_layers @property def model_dim(self) -> int: return self._config.hidden_size @property def vocab_size(self) -> int: return self._config.vocab_size @property def head_size(self) -> int: return self.model_dim // self.n_heads @property def n_heads(self) -> int: return self._config.num_attention_heads @property def intermediate_dim(self) -> int: return self._config.intermediate_size @property def n_heads_kv(self) -> int: return self._config.num_key_value_heads @property def activation_dtype(self) -> DtypeEnum: if self._config.torch_dtype == torch.float16: return DtypeEnum.fp16 elif self._config.torch_dtype == torch.bfloat16: return DtypeEnum.bf16 else: raise NotImplementedError("Only fp16 and bf16 are supported") @property def mlp_activation_fn(self) -> ActivationType: activation = self._config.hidden_act.lower() if activation == "gelu": return ActivationType.GEGLU elif activation == "relu": return ActivationType.ReGLU elif activation == "gegelu": return ActivationType.GEGLU elif activation == "silu": return ActivationType.SiGLU else: raise NotImplementedError(f"Activation {activation} not supported") @property def norm_type(self) -> NormTypeEnum: return NormTypeEnum.RMSNorm @property def positional_embedding_type(self) -> PositionalEmbeddingType: return PositionalEmbeddingType.rotate_half @property def positional_embedding_config(self) -> Optional[RotateHalfConfig]: return RotateHalfConfig(theta_base=self._config.rope_theta) """ Forward implementations """ def _forward_embed(self, ragged_batch: RaggedBatchWrapper) -> torch.Tensor: """ Performs the embedding lookup prior to running the transformer of the model. Arguments: ragged_batch (RaggedBatchWrapper): The batch to embed. Returns: torch.Tensor: The embedded batch. """ embed = self.embed(ragged_batch, self._non_transformer.word_emb) if embed.shape[-1] != self.model_dim: raise ValueError(f"Embedding output shape {embed.shape} does not match model_dim {self.model_dim}") return embed def _forward_transformer_layer(self, layer_idx: int, residual: torch.Tensor, hidden_states: torch.Tensor, ragged_batch_info: RaggedBatchWrapper) -> Tuple[torch.Tensor, torch.Tensor]: """ Executes one (slightly offset) layer of the transformer. This implementation does a peak-ahead optimization to fuse the layer norm of the next layer into the current layer. Arguments: layer_idx (int): The index of the layer to execute. residual (torch.Tensor): The residual tensor from the previous layer. hidden_states (torch.Tensor): The hidden states from the previous layer. This is the hidden states after pre normalization. ragged_batch_info (RaggedBatchWrapper): The batch metadata. """ cur_params = self._transformer[layer_idx] kv_cache = self.state_manager.get_cache(layer_idx) hidden_states = self.qkv(hidden_states, cur_params.qkv_w, b=None) hidden_states = self.attn(hidden_states, kv_cache, ragged_batch_info) hidden_states = self.attn_out(hidden_states, cur_params.attn_out_w, b=None) if self.tp_size > 1: dist.all_reduce(hidden_states, group=self._base_mp_group) residual, hidden_states = self.norm(residual, hidden_states, cur_params.mlp_norm_gamma, beta=None) hidden_states = self.mlp_1(hidden_states, cur_params.mlp_1_w, b=None) hidden_states = self.mlp_2(hidden_states, cur_params.mlp_2_w, b=None) if self.tp_size > 1: dist.all_reduce(hidden_states, group=self._base_mp_group) if layer_idx != self.num_layers - 1: next_params = self._transformer[layer_idx + 1] residual, hidden_states = self.norm(residual, hidden_states, next_params.attn_norm_gamma, beta=None) else: # On last layer, we just need to perform the residual add. Adding into the residual # here is safe. residual.add_(hidden_states) return residual, hidden_states def _forward_unembed(self, hidden_states: torch.Tensor, ragged_batch_info: RaggedBatchWrapper) -> torch.Tensor: """ Performs unembedding of the hidden states to logits. This will only sample the final token of each sequence. """ logits = self.unembed(hidden_states, self._non_transformer.word_unembed_w, ragged_batch_info, gamma=self._non_transformer.final_norm_gamma) if self.tp_size > 1: comm_buffer = empty_from(self._comm_logits, (self.tp_size, logits.shape[0], logits.shape[1])) full_logits = empty_from(self._return_logits, (logits.shape[0], self.vocab_size)) dist.all_gather_into_tensor(comm_buffer, logits, group=self._base_mp_group) full_logits.copy_(comm_buffer.permute(1, 0, 2).reshape(logits.shape[0], self.vocab_size)) return full_logits else: return logits def forward(self, wrapped_batch: RaggedBatchWrapper) -> torch.Tensor: residual = self._forward_embed(wrapped_batch) residual, hidden_states = self.norm(residual, None, gamma=self._transformer[0].attn_norm_gamma, beta=None) for layer_idx in range(self.num_layers): residual, hidden_states = self._forward_transformer_layer(layer_idx, residual, hidden_states, wrapped_batch) return self._forward_unembed(residual, wrapped_batch)