""" # Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License" # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """ from typing import Dict, Optional import paddle from fastdeploy import envs from fastdeploy.model_executor.forward_meta import XPUForwardMeta from fastdeploy.model_executor.layers.sample.sampler import Sampler from fastdeploy.platforms import current_platform from fastdeploy.worker.output import ModelOutputData if current_platform.is_xpu(): from fastdeploy.model_executor.ops.xpu import ( adjust_batch, gather_next_token, get_infer_param, get_padding_offset, limit_thinking_content_length_v1, limit_thinking_content_length_v2, save_output, save_output_topk, set_stop_value_multi_ends, speculate_clear_accept_nums, speculate_get_output_padding_offset, speculate_get_padding_offset, speculate_get_seq_lens_output, speculate_save_output, speculate_set_value_by_flags_and_idx, speculate_step_paddle, speculate_update_v3, step_paddle, update_inputs, update_inputs_v1, ) def xpu_pre_process( input_ids: paddle.Tensor, seq_lens_this_time: int, share_inputs: Dict, use_speculate_method: bool, block_size: int, draft_tokens: Optional[paddle.Tensor] = None, seq_lens_encoder: Optional[paddle.Tensor] = None, seq_lens_decoder: Optional[paddle.Tensor] = None, is_profiling: bool = False, forward_meta=None, ) -> XPUForwardMeta: """ """ max_len = input_ids.shape[1] cum_offsets_now = paddle.cumsum(max_len - seq_lens_this_time, dtype="int32") token_num = paddle.sum(seq_lens_this_time) if use_speculate_method: ( ids_remove_padding, cum_offsets, batch_id_per_token, cu_seqlens_q, cu_seqlens_k, ) = speculate_get_padding_offset( input_ids, draft_tokens, cum_offsets_now, token_num, seq_lens_this_time, seq_lens_encoder, ) seq_lens_output = speculate_get_seq_lens_output( seq_lens_this_time, seq_lens_encoder, seq_lens_decoder, ) if isinstance(seq_lens_output, list): seq_lens_output = seq_lens_output[0] output_token_num = paddle.sum(seq_lens_output) output_cum_offsets_tmp = paddle.cumsum(max_len - seq_lens_output, dtype="int32") output_padding_offset, output_cum_offsets = speculate_get_output_padding_offset( output_cum_offsets_tmp, output_token_num, seq_lens_output, max_len, ) share_inputs["output_cum_offsets"].copy_(output_cum_offsets, False) share_inputs["output_padding_offset"].copy_(output_padding_offset, False) else: ( ids_remove_padding, cum_offsets, batch_id_per_token, cu_seqlens_q, cu_seqlens_k, ) = get_padding_offset(input_ids, cum_offsets_now, token_num, seq_lens_this_time) share_inputs["ids_remove_padding"] = None # set this after adjust batch share_inputs["cum_offsets"] = cum_offsets share_inputs["batch_id_per_token"] = batch_id_per_token share_inputs["cu_seqlens_q"] = cu_seqlens_q share_inputs["cu_seqlens_k"] = cu_seqlens_k xpu_forward_meta = XPUForwardMeta( ids_remove_padding=share_inputs["ids_remove_padding"], rotary_embs=share_inputs["rope_emb"], attn_backend=None, seq_lens_encoder=share_inputs["seq_lens_encoder"], seq_lens_decoder=share_inputs["seq_lens_decoder"], seq_lens_this_time=share_inputs["seq_lens_this_time"], cum_offsets=share_inputs["cum_offsets"], batch_id_per_token=share_inputs["batch_id_per_token"], cu_seqlens_q=share_inputs["cu_seqlens_q"], cu_seqlens_k=share_inputs["cu_seqlens_k"], block_tables=share_inputs["block_tables"], caches=share_inputs["caches"], ) ( xpu_forward_meta.encoder_batch_map, xpu_forward_meta.decoder_batch_map, xpu_forward_meta.encoder_batch_idx, xpu_forward_meta.decoder_batch_idx, xpu_forward_meta.encoder_seq_lod, xpu_forward_meta.decoder_seq_lod, xpu_forward_meta.encoder_kv_lod, xpu_forward_meta.prefix_len, xpu_forward_meta.decoder_context_len, xpu_forward_meta.decoder_context_len_cache, xpu_forward_meta.prefix_block_tables, xpu_forward_meta.encoder_batch_map_cpu, xpu_forward_meta.decoder_batch_map_cpu, xpu_forward_meta.encoder_batch_idx_cpu, xpu_forward_meta.decoder_batch_idx_cpu, xpu_forward_meta.encoder_seq_lod_cpu, xpu_forward_meta.decoder_seq_lod_cpu, xpu_forward_meta.encoder_kv_lod_cpu, xpu_forward_meta.prefix_len_cpu, xpu_forward_meta.decoder_context_len_cpu, xpu_forward_meta.decoder_context_len_cache_cpu, xpu_forward_meta.len_info_cpu, ) = get_infer_param( seq_lens_encoder, seq_lens_decoder, seq_lens_this_time, xpu_forward_meta.block_tables, block_size ) xpu_forward_meta.enc_batch = xpu_forward_meta.len_info_cpu[0] xpu_forward_meta.dec_batch = xpu_forward_meta.len_info_cpu[1] xpu_forward_meta.total_enc_len = xpu_forward_meta.len_info_cpu[2] adjusted_input = adjust_batch( ids_remove_padding.reshape([-1, 1]), cum_offsets, xpu_forward_meta.encoder_seq_lod, xpu_forward_meta.decoder_seq_lod, xpu_forward_meta.encoder_batch_idx, xpu_forward_meta.decoder_batch_idx, xpu_forward_meta.encoder_seq_lod_cpu, xpu_forward_meta.decoder_seq_lod_cpu, xpu_forward_meta.encoder_batch_idx_cpu, xpu_forward_meta.decoder_batch_idx_cpu, xpu_forward_meta.len_info_cpu, None, # output_padding_offset -1, # max bs ) adjusted_input = adjusted_input.squeeze(1) share_inputs["ids_remove_padding"] = adjusted_input xpu_forward_meta.ids_remove_padding = adjusted_input # Set forward_meta.is_profiling to True to skip init_kv_signal_per_query for attention backends xpu_forward_meta.is_profiling = is_profiling return xpu_forward_meta def xpu_process_output( forward_output, cum_offsets: paddle.Tensor, xpu_forward_meta: XPUForwardMeta, share_inputs, ) -> paddle.Tensor: """ """ output_padding_offset = share_inputs.get("output_padding_offset", None) hiddden_states = gather_next_token( forward_output, cum_offsets, xpu_forward_meta.encoder_seq_lod, xpu_forward_meta.decoder_seq_lod, xpu_forward_meta.encoder_batch_map, xpu_forward_meta.decoder_batch_map, xpu_forward_meta.encoder_seq_lod_cpu, xpu_forward_meta.decoder_seq_lod_cpu, xpu_forward_meta.encoder_batch_map_cpu, xpu_forward_meta.decoder_batch_map_cpu, xpu_forward_meta.len_info_cpu, output_padding_offset, # output_padding_offset -1, # max_input_length ) return hiddden_states def xpu_post_process_normal( sampler_output: Sampler, model_output: ModelOutputData, share_inputs: Dict[str, paddle.Tensor], block_size: int = 64, skip_save_output: bool = False, think_end_id: int = None, line_break_id: int = None, ) -> None: """ """ sampled_token_ids = sampler_output.sampled_token_ids if think_end_id > 0: limit_strategy = envs.FD_LIMIT_THINKING_CONTENT_TRUNCATE_STR max_think_lens = share_inputs["max_think_lens"] step_idx = share_inputs["step_idx"] limit_think_status = share_inputs["limit_think_status"] stop_flags = share_inputs["stop_flags"] eos_token_ids = share_inputs["eos_token_id"] if limit_strategy == "": # for ernie-45-vl limit_thinking_content_length_v1( sampled_token_ids, max_think_lens, step_idx, limit_think_status, stop_flags, eos_token_ids, # 处理由于模型效果问题导致思考过程中输出eos token的问题 think_end_id, ) elif limit_strategy == "\n\n\n": # for ernie-x1 assert line_break_id > 0 limit_thinking_content_length_v2( sampled_token_ids, max_think_lens, step_idx, limit_think_status, stop_flags, think_end_id, line_break_id, ) else: raise NotImplementedError(f"Not support {limit_strategy=} for limit thinking content length.") # 1. Set stop value paddle.assign( paddle.where( model_output.stop_flags, model_output.step_idx, model_output.step_idx + 1, ), model_output.step_idx, ) length_cond = paddle.greater_equal(model_output.step_idx, model_output.max_dec_len) paddle.assign( paddle.logical_or(model_output.stop_flags, length_cond), model_output.stop_flags, ) set_stop_value_multi_ends( sampled_token_ids, model_output.stop_flags, model_output.seq_lens_this_time, model_output.eos_token_id, model_output.next_tokens, False, ) # multi ends # 2. Update the input buffer of the model with paddle.framework._no_check_dy2st_diff(): if envs.ENABLE_V1_KVCACHE_SCHEDULER and not skip_save_output: update_inputs_v1( model_output.stop_flags, model_output.not_need_stop, model_output.seq_lens_this_time, model_output.seq_lens_encoder, model_output.seq_lens_decoder, share_inputs["step_seq_lens_decoder"], share_inputs["prompt_lens"], sampled_token_ids, model_output.input_ids, share_inputs["block_tables"], model_output.stop_nums, model_output.next_tokens, model_output.is_block_step, block_size, ) else: update_inputs( model_output.stop_flags, model_output.not_need_stop, model_output.seq_lens_this_time, model_output.seq_lens_encoder, model_output.seq_lens_decoder, model_output.input_ids, model_output.stop_nums, sampled_token_ids, model_output.is_block_step, ) # 3. Transmit the model's output and stop generation signal via message queue. # In the future, we will abandon this approach. if not skip_save_output: if sampler_output.logprobs_tensors is None: save_output( sampled_token_ids, model_output.not_need_stop, model_output.mp_rank, False, # use_ep ) else: if save_output_topk is None: raise ImportError( "save_output_topk operator is not available. " "Please rebuild the XPU operators with the new get_output_msg_with_topk.cc and save_output_msg_with_topk.cc files." ) save_output_topk( sampled_token_ids, sampler_output.logprobs_tensors.logprob_token_ids, sampler_output.logprobs_tensors.logprobs, sampler_output.logprobs_tensors.selected_token_ranks, model_output.not_need_stop, model_output.mp_rank, ) def xpu_post_process_specualate( model_output: ModelOutputData, save_each_rank: bool = False, skip_save_output: bool = False ): """""" speculate_update_v3( model_output.seq_lens_encoder, model_output.seq_lens_decoder, model_output.not_need_stop, model_output.draft_tokens, model_output.actual_draft_token_num, model_output.accept_tokens, model_output.accept_num, model_output.stop_flags, model_output.seq_lens_this_time, model_output.is_block_step, model_output.stop_nums, ) if not skip_save_output: speculate_save_output( model_output.accept_tokens, model_output.accept_num, model_output.not_need_stop, model_output.mp_rank, save_each_rank, # False ) speculate_clear_accept_nums(model_output.accept_num, model_output.seq_lens_decoder) # Update pre_ids through accept tokens speculate_set_value_by_flags_and_idx( model_output.pre_ids, model_output.accept_tokens, model_output.accept_num, model_output.stop_flags, model_output.seq_lens_this_time, model_output.seq_lens_encoder, model_output.seq_lens_decoder, model_output.step_idx, ) def step_xpu( share_inputs: Dict[str, paddle.Tensor], block_size: int, enc_dec_block_num: int, speculative_decoding: bool, max_draft_token_num: int, ) -> None: """ TODO(chenhuan09): support PD """ if speculative_decoding: speculate_step_paddle( share_inputs["stop_flags"], share_inputs["seq_lens_this_time"], share_inputs["step_seq_lens_encoder"], share_inputs["seq_lens_encoder"], share_inputs["seq_lens_decoder"], share_inputs["block_tables"], share_inputs["encoder_block_lens"], share_inputs["is_block_step"], share_inputs["step_block_list"], share_inputs["step_lens"], share_inputs["recover_block_list"], share_inputs["recover_lens"], share_inputs["need_block_list"], share_inputs["need_block_len"], share_inputs["used_list_len"], share_inputs["free_list"], share_inputs["free_list_len"], share_inputs["input_ids"], share_inputs["pre_ids"], share_inputs["step_idx"], share_inputs["next_tokens"], share_inputs["first_token_ids"], share_inputs["accept_num"], block_size, enc_dec_block_num, max_draft_token_num, ) else: step_paddle( share_inputs["stop_flags"], share_inputs["seq_lens_this_time"], share_inputs["step_seq_lens_encoder"], share_inputs["seq_lens_encoder"], share_inputs["seq_lens_decoder"], share_inputs["block_tables"], share_inputs["encoder_block_lens"], share_inputs["is_block_step"], share_inputs["step_block_list"], share_inputs["step_lens"], share_inputs["recover_block_list"], share_inputs["recover_lens"], share_inputs["need_block_list"], share_inputs["need_block_len"], share_inputs["used_list_len"], share_inputs["free_list"], share_inputs["free_list_len"], share_inputs["input_ids"], share_inputs["pre_ids"], share_inputs["step_idx"], share_inputs["next_tokens"], share_inputs["first_token_ids"], block_size, enc_dec_block_num, )