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from collections import OrderedDict |
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import tensorrt as trt |
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from tensorrt_llm._common import default_net |
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from tensorrt_llm.functional import Tensor, cast, categorical_sample |
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from tensorrt_llm.models import LLaMAForCausalLM |
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from tensorrt_llm.models.generation_mixin import GenerationMixin |
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from ..._utils import pad_vocab_size, str_dtype_to_trt |
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from .drafter import Drafter |
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from .redrafter_helper import (_beam_search_candidates, _beams2tree, |
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_process_logits_and_hidden_states) |
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class ReDrafterForCausalLM(LLaMAForCausalLM): |
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def __init__(self, config): |
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super().__init__(config) |
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self.dtype = str_dtype_to_trt(config.dtype) |
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self.vocab_size = config.vocab_size |
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vocab_size_padded = pad_vocab_size(self.vocab_size, |
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config.mapping.tp_size) |
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self.drafter = Drafter.from_config(config, vocab_size_padded) |
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self.num_beams = config.redrafter_num_beams |
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self.beam_candidate_length = config.redrafter_draft_len_per_beam |
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self.beam_length = self.beam_candidate_length + 1 |
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self.greedy_search = config.redrafter_greedy_search |
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self.is_rnn = config.redrafter_is_rnn |
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assert self.dtype == self.drafter.dtype, f"{self.dtype} != {self.drafter.dtype}" |
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def _fwd_helper(self, hidden_states, lm_logits, embedding, drafter, |
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kwargs: dict): |
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''' |
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Must enable remove_input_padding: |
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hidden_states [total_tokens, H] |
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lm_logits [total_tokens, V] |
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1. process_logits: context vs gen |
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a. Context: just return the last hidden states, and logits/probs |
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b. Gen: |
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i. verify: use lm_logits, draft_probs, draft_indices, draft_tokens |
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ii. select hidden state and update probs |
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3. Sample token based on probs |
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4. Generate candidates using hidden_states, sampled token |
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5. Using beams, generate validation buffers, mark them as output |
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6. Mark all the outputs |
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''' |
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num_beams = self.num_beams |
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beam_length = self.beam_length |
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rand_data_sample = kwargs['rand_data_sample'] |
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position_ids_base = kwargs['position_ids_base'] |
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probs, draft_input, num_accepted_tokens, \ |
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accepted_beam_index = _process_logits_and_hidden_states( |
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self, lm_logits, hidden_states, kwargs) |
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num_accepted_tokens = num_accepted_tokens + 1 |
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next_token = categorical_sample(probs, rand_data_sample) |
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new_draft_tokens, new_draft_logits = _beam_search_candidates( |
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draft_input, next_token, embedding, drafter, self.num_beams, |
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self.beam_length, self.is_rnn) |
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active_tokens_flattened, new_draft_token_indices, new_mask, \ |
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new_position_offsets, packed_position_ids, next_num_gen_tokens, max_gen_token, \ |
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total_gen_token = _beams2tree(new_draft_tokens, num_beams, beam_length, |
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position_ids_base + num_accepted_tokens) |
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num_accepted_tokens.mark_output('num_accepted_tokens') |
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accepted_beam_index.mark_output('accepted_beam_index') |
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max_gen_token.mark_output('max_gen_token') |
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total_gen_token.mark_output('total_gen_token') |
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next_num_gen_tokens.mark_output('next_spec_decoding_generation_lengths') |
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active_tokens_flattened.mark_output('next_flat_tokens') |
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new_draft_tokens.mark_output('next_draft_tokens') |
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new_draft_logits.mark_output('next_draft_probs') |
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new_draft_token_indices.mark_output('next_draft_indices') |
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new_mask.mark_output('spec_decoding_mask') |
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new_position_offsets.mark_output('next_spec_decoding_position_offsets') |
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packed_position_ids.mark_output('packed_position_ids') |
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return next_token, probs, draft_input |
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def forward(self, *args, **kwargs): |
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""" |
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0. run base model, get logits, hidden_states |
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""" |
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extra_args = [ |
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'draft_tokens', |
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'draft_indices', |
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'draft_probs', |
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'device_request_types', |
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'redrafter_inverted_temperature', |
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'rand_data_validation', |
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'rand_data_sample', |
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'position_ids_base', |
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] |
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use_cache = True |
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base_kwargs = {k: v for k, v in kwargs.items() if k not in extra_args} |
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if use_cache and default_net().plugin_config.paged_kv_cache is False: |
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lm_logits, presents, hidden_states = super().forward( |
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*args, **base_kwargs) |
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else: |
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lm_logits, hidden_states = super().forward(*args, **base_kwargs) |
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lm_logits_cast = cast(lm_logits, self.dtype) |
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self.register_network_output("hidden_states", |
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hidden_states) |
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new_draft_tokens, new_draft_logits, probs = self._fwd_helper( |
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hidden_states, |
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lm_logits_cast, |
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self.transformer.vocab_embedding, |
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self.drafter, |
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kwargs=kwargs) |
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return new_draft_tokens, new_draft_logits, probs |
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def prepare_inputs(self, *args, **kwargs): |
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""" |
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Inputs needed: |
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Assuming, max_gen_tokens = 1 + nb*(bl - 1), counting true token |
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device_request_types: [bs] |
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draft_tokens: [bs, nb, bl] |
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draft_indices: [bs, nb, bl] |
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draft_probs: [bs, nb, bl-1, V] |
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spec_decoding_generation_lengths: [bs] |
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spec_decoding_position_offsets: [bs, max_gen_tokens] |
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spec_decoding_packed_mask: [bs, max_gen_tokens, packed_length] ** |
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redrafter_inverted_temperature: [bs] |
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rand_data_sample: [bs] |
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rand_data_validation: [bs, nb, bl-1] |
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** The mask is tricky since the boolean mask will need to be |
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packed in runtime. So, the last dim will be: |
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packed_length = ceil(max_gen_tokens/32) |
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""" |
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default_range = GenerationMixin.default_range |
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remove_input_padding = default_net().plugin_config.remove_input_padding |
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use_gpt_attention_plugin = default_net( |
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).plugin_config.gpt_attention_plugin |
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use_gemm_plugin = default_net().plugin_config.gemm_plugin |
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paged_kv_cache = default_net().plugin_config.paged_kv_cache |
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max_batch_size = kwargs['max_batch_size'] |
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assert max_batch_size is not None |
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bb_range = default_range(max_batch_size) |
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bb0_range = default_range(max_batch_size, min_range=0, opt_offset=1) |
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num_beam_tokens = self.num_beams * self.beam_length |
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max_draft_tokens = num_beam_tokens - self.num_beams |
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max_gen_token_len = 1 + max_draft_tokens |
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max_gen_token_len_range = default_range(max_gen_token_len) |
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bb_max_gen_token_len_range = default_range(max_gen_token_len * |
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max_batch_size, |
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min_range=0) |
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kwargs['speculative_decoding_draft_tokens_external'] = False |
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kwargs['max_draft_len'] = max_draft_tokens |
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kwargs['spec_decoding_is_generation_length_variable'] = True |
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inputs = super().prepare_inputs(*args, **kwargs) |
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assert inputs['spec_decoding_params'] is not None |
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enable_two_optimization_profiles = GenerationMixin.has_ctx_gen_opt_profiles( |
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use_gpt_attention_plugin, use_gemm_plugin, remove_input_padding, |
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paged_kv_cache) |
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if enable_two_optimization_profiles: |
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bb_range = [bb_range, bb_range] |
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bb0_range = [bb0_range, bb0_range] |
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max_gen_token_len_range = [ |
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max_gen_token_len_range, max_gen_token_len_range |
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] |
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bb_max_gen_token_len_range = [ |
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bb_max_gen_token_len_range, bb_max_gen_token_len_range |
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] |
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num_beams_range = [self.num_beams, self.num_beams] |
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beam_length_range = [self.beam_length, self.beam_length] |
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candidate_length_range = [ |
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self.beam_candidate_length, self.beam_candidate_length |
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] |
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vocab_size_range = [self.vocab_size, self.vocab_size] |
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else: |
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bb_range = [bb_range] |
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bb0_range = [bb0_range] |
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max_gen_token_len_range = [max_gen_token_len_range] |
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bb_max_gen_token_len_range = [bb_max_gen_token_len_range] |
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num_beams_range = [self.num_beams] |
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beam_length_range = [self.beam_length] |
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candidate_length_range = [self.beam_candidate_length] |
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vocab_size_range = [self.vocab_size] |
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device_request_types = Tensor(name='device_request_types', |
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dtype=trt.int32, |
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shape=[-1], |
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dim_range=OrderedDict([ |
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('batch_size', bb_range), |
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])) |
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draft_tokens = Tensor(name='draft_tokens', |
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dtype=trt.int32, |
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shape=[-1, self.num_beams, self.beam_length], |
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dim_range=OrderedDict([ |
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('batch_size_wt0', bb0_range), |
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('num_beams', num_beams_range), |
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('beam_length', beam_length_range), |
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])) |
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draft_indices = Tensor(name='draft_indices', |
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dtype=trt.int32, |
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shape=[-1, self.num_beams, self.beam_length], |
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dim_range=OrderedDict([ |
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('batch_size_wt0', bb0_range), |
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('num_beams', num_beams_range), |
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('beam_length', beam_length_range), |
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])) |
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draft_probs = Tensor( |
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name='draft_probs', |
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dtype=self.dtype, |
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shape=[-1, self.num_beams, self.beam_length - 1, self.vocab_size], |
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dim_range=OrderedDict([ |
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('batch_size_wt0', bb0_range), |
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('num_beams', num_beams_range), |
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('candidate_length', candidate_length_range), |
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('vocab_size', vocab_size_range), |
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])) |
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redrafter_inverted_temperature = Tensor( |
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name='redrafter_inverted_temperature', |
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dtype=self.dtype, |
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shape=[-1], |
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dim_range=OrderedDict([ |
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("batch_size", bb_range), |
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])) |
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rand_data_validation = Tensor( |
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name='rand_data_validation', |
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dtype=self.dtype, |
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shape=[-1, self.num_beams, self.beam_length - 1], |
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dim_range=OrderedDict([ |
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('batch_size_wt0', bb0_range), |
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('num_beams', num_beams_range), |
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('candidate_length', candidate_length_range), |
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])) |
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rand_data_sample = Tensor(name='rand_data_sample', |
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dtype=self.dtype, |
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shape=[-1], |
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dim_range=OrderedDict([ |
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('batch_size', bb_range), |
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])) |
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position_ids_base = Tensor( |
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name="position_ids_base", |
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dtype=trt.int32, |
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shape=[-1], |
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dim_range=OrderedDict([ |
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("batch_size", bb_range), |
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]), |
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) |
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inputs[ |
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'device_request_types'] = device_request_types |
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inputs['draft_tokens'] = draft_tokens |
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inputs['draft_indices'] = draft_indices |
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inputs['draft_probs'] = draft_probs |
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inputs[ |
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'redrafter_inverted_temperature'] = redrafter_inverted_temperature |
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inputs['rand_data_validation'] = rand_data_validation |
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inputs['rand_data_sample'] = rand_data_sample |
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inputs['position_ids_base'] = position_ids_base |
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return inputs |
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