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import re |
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from collections import OrderedDict |
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import pytest |
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import torch |
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import torch.nn.functional as F |
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from einops import rearrange |
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from transformers import BertConfig |
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from transformers.models.bert.modeling_bert import BertForPreTraining as BertForPreTrainingHF |
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from transformers.models.bert.modeling_bert import BertModel as BertModelHF |
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from flash_attn.models.bert import ( |
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BertForPreTraining, |
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BertModel, |
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inv_remap_state_dict, |
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remap_state_dict, |
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) |
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from flash_attn.utils.pretrained import state_dict_from_pretrained |
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@pytest.mark.parametrize("model_name", ["bert-base-uncased", "bert-large-uncased"]) |
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def test_bert_state_dict(model_name): |
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config = BertConfig.from_pretrained(model_name) |
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pretrained_state_dict = remap_state_dict(state_dict_from_pretrained(model_name), config) |
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model = BertForPreTraining(config) |
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state_dict = model.state_dict() |
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assert state_dict.keys() == pretrained_state_dict.keys() |
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for k in state_dict.keys(): |
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assert state_dict[k].shape == pretrained_state_dict[k].shape |
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def get_hf_models(model_name, config, dtype): |
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pretrained_state_dict = state_dict_from_pretrained(model_name) |
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def key_mapping_ln_gamma_beta(key): |
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key = re.sub(r"LayerNorm.gamma$", "LayerNorm.weight", key) |
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key = re.sub(r"LayerNorm.beta$", "LayerNorm.bias", key) |
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return key |
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pretrained_state_dict = OrderedDict( |
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(key_mapping_ln_gamma_beta(k), v) for k, v in pretrained_state_dict.items() |
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) |
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model_hf = BertForPreTrainingHF(config) |
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model_hf.load_state_dict(pretrained_state_dict, strict=False) |
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model_hf.cuda().to(dtype=dtype) |
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return model_hf |
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@pytest.mark.parametrize("model_name", ["bert-base-uncased"]) |
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def test_bert_non_optimized(model_name): |
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"""Check that our implementation of BERT (without any optimizations enabled) matches the |
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HF implementation: the output of our forward pass in fp16 should be around the same as the HF |
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forward pass in fp16, when compared to the HF forward pass in fp32. |
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""" |
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dtype = torch.float16 |
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config = BertConfig.from_pretrained(model_name) |
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model = BertForPreTraining.from_pretrained(model_name, config) |
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model = model.cuda().to(dtype=dtype) |
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model_ref = get_hf_models(model_name, config, torch.float32) |
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model_hf = get_hf_models(model_name, config, dtype) |
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model.eval() |
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model_ref.eval() |
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model_hf.eval() |
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torch.manual_seed(0) |
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batch_size = 4 |
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max_seqlen = 512 |
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seqlens = torch.randint(max_seqlen // 2, max_seqlen + 1, (batch_size,), device="cuda") |
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attention_mask = torch.arange(max_seqlen, device="cuda")[None, :] < seqlens[:, None] |
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input_ids = torch.randint( |
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0, config.vocab_size, (batch_size, max_seqlen), dtype=torch.long, device="cuda" |
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) |
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out = model.bert(input_ids, attention_mask=attention_mask) |
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sequence_output, pooled_output = out.last_hidden_state, out.pooler_output |
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out_hf = model_hf.bert(input_ids, attention_mask=attention_mask) |
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sequence_output_hf, pooled_output_hf = out_hf.last_hidden_state, out_hf.pooler_output |
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out_ref = model_ref.bert(input_ids, attention_mask=attention_mask) |
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sequence_output_ref, pooled_output_ref = out_ref.last_hidden_state, out_ref.pooler_output |
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print(f"Output max diff: {(sequence_output - sequence_output_ref).abs().max().item()}") |
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print(f"Output mean diff: {(sequence_output - sequence_output_ref).abs().mean().item()}") |
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print(f"HF fp16 max diff: {(sequence_output_hf - sequence_output_ref).abs().max().item()}") |
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print(f"HF fp16 mean diff: {(sequence_output_hf - sequence_output_ref).abs().mean().item()}") |
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assert (sequence_output - sequence_output_ref).abs().max().item() < 3 * ( |
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sequence_output_hf - sequence_output_ref |
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).abs().max().item() |
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assert (pooled_output - pooled_output_ref).abs().max().item() < 3 * ( |
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pooled_output_hf - pooled_output_ref |
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).abs().max().item() |
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@pytest.mark.parametrize("model_name", ["bert-base-uncased", "bert-large-uncased"]) |
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def test_bert_optimized(model_name): |
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"""Check that our implementation of BERT (with all optimizations enabled) matches the |
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HF implementation: the output of our forward pass in fp16 should be around the same as the HF |
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forward pass in fp16, when compared to the HF forward pass in fp32. |
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""" |
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dtype = torch.float16 |
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config = BertConfig.from_pretrained(model_name) |
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config.hidden_act = "gelu_new" |
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config.use_flash_attn = True |
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config.fused_bias_fc = True |
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config.fused_mlp = True |
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config.fused_dropout_add_ln = True |
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model = BertForPreTraining.from_pretrained(model_name, config) |
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model = model.cuda().to(dtype=dtype) |
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model_ref = get_hf_models(model_name, config, torch.float32) |
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model_hf = get_hf_models(model_name, config, dtype) |
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model.eval() |
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model_ref.eval() |
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model_hf.eval() |
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torch.manual_seed(0) |
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batch_size = 4 |
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max_seqlen = 512 |
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seqlens = torch.randint(max_seqlen // 2, max_seqlen + 1, (batch_size,), device="cuda") |
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attention_mask = torch.arange(max_seqlen, device="cuda")[None, :] < seqlens[:, None] |
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input_ids = torch.randint( |
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0, config.vocab_size, (batch_size, max_seqlen), dtype=torch.long, device="cuda" |
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) |
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out = model.bert(input_ids, attention_mask=attention_mask) |
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sequence_output, pooled_output = out.last_hidden_state, out.pooler_output |
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out_hf = model_hf.bert(input_ids, attention_mask=attention_mask) |
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sequence_output_hf, pooled_output_hf = out_hf.last_hidden_state, out_hf.pooler_output |
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sequence_output_hf[~attention_mask, :] = 0.0 |
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out_ref = model_ref.bert(input_ids, attention_mask=attention_mask) |
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sequence_output_ref, pooled_output_ref = out_ref.last_hidden_state, out_ref.pooler_output |
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sequence_output_ref[~attention_mask, :] = 0.0 |
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print( |
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f"BertModel output max diff: {(sequence_output - sequence_output_ref).abs().max().item()}" |
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) |
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print( |
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f"BertModel output mean diff: {(sequence_output - sequence_output_ref).abs().mean().item()}" |
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) |
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print( |
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f"HF fp16 BertModel max diff: {(sequence_output_hf - sequence_output_ref).abs().max().item()}" |
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) |
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print( |
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f"HF fp16 BertModel mean diff: {(sequence_output_hf - sequence_output_ref).abs().mean().item()}" |
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) |
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assert (sequence_output - sequence_output_ref).abs().max().item() < 4 * ( |
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sequence_output_hf - sequence_output_ref |
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).abs().max().item() |
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assert (pooled_output - pooled_output_ref).abs().max().item() < 4 * ( |
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pooled_output_hf - pooled_output_ref |
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).abs().max().item() |
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out = model(input_ids, attention_mask=attention_mask) |
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prediction_scores, seq_relationship_scores = out.prediction_logits, out.seq_relationship_logits |
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prediction_scores = prediction_scores.clone() |
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prediction_scores[~attention_mask, :] = 0.0 |
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out_hf = model_hf(input_ids, attention_mask=attention_mask) |
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prediction_scores_hf, seq_relationship_scores_hf = ( |
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out_hf.prediction_logits, |
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out_hf.seq_relationship_logits, |
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) |
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prediction_scores_hf[~attention_mask, :] = 0.0 |
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out_ref = model_ref(input_ids, attention_mask=attention_mask) |
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prediction_scores_ref, seq_relationship_scores_ref = ( |
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out_ref.prediction_logits, |
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out_ref.seq_relationship_logits, |
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) |
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prediction_scores_ref[~attention_mask, :] = 0.0 |
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print( |
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f"prediction_scores max diff: {(prediction_scores - prediction_scores_ref).abs().max().item()}" |
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) |
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print( |
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f"prediction_scores mean diff: {(prediction_scores - prediction_scores_ref).abs().mean().item()}" |
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) |
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print( |
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f"HF fp16 prediction_scoresff: {(prediction_scores_hf - prediction_scores_ref).abs().max().item()}" |
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) |
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print( |
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f"HF fp16 prediction_scoresiff: {(prediction_scores_hf - prediction_scores_ref).abs().mean().item()}" |
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) |
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assert (prediction_scores - prediction_scores_ref).abs().max().item() < 2 * ( |
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prediction_scores_hf - prediction_scores_ref |
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).abs().max().item() |
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assert (seq_relationship_scores - seq_relationship_scores_ref).abs().max().item() < 2 * ( |
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seq_relationship_scores_hf - seq_relationship_scores_ref |
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).abs().max().item() |
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@pytest.mark.parametrize("last_layer_subset", [False, True]) |
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@pytest.mark.parametrize("has_key_padding_mask", [True, False]) |
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@pytest.mark.parametrize("model_name", ["bert-base-uncased", "bert-large-uncased"]) |
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def test_bert_dense_seq_output(model_name, has_key_padding_mask, last_layer_subset): |
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"""Check that our implementation of BERT (with all optimizations enabled) matches the |
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HF implementation: the output of our forward pass in fp16 should be around the same as the HF |
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forward pass in fp16, when compared to the HF forward pass in fp32. |
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""" |
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dtype = torch.float16 |
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config = BertConfig.from_pretrained(model_name) |
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config.hidden_act = "gelu_new" |
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config.use_flash_attn = True |
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config.fused_bias_fc = True |
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config.fused_mlp = True |
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config.fused_dropout_add_ln = True |
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config.dense_seq_output = True |
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config.last_layer_subset = last_layer_subset |
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config.use_xentropy = True |
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model = BertForPreTraining.from_pretrained(model_name, config) |
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model = model.cuda().to(dtype=dtype) |
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model_ref = get_hf_models(model_name, config, torch.float32) |
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model_hf = get_hf_models(model_name, config, dtype) |
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model.eval() |
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model_ref.eval() |
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model_hf.eval() |
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torch.manual_seed(0) |
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batch_size = 4 |
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max_seqlen = 512 |
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seqlens = torch.randint(max_seqlen // 2, max_seqlen + 1, (batch_size,), device="cuda") |
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if has_key_padding_mask: |
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attention_mask = torch.arange(max_seqlen, device="cuda")[None, :] < seqlens[:, None] |
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else: |
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attention_mask = None |
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input_ids = torch.randint( |
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0, config.vocab_size, (batch_size, max_seqlen), dtype=torch.long, device="cuda" |
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) |
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labels = torch.randint( |
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0, config.vocab_size, (batch_size, max_seqlen), dtype=torch.long, device="cuda" |
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) |
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if attention_mask is not None: |
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labels[~attention_mask] = 0 |
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labels[(torch.rand(batch_size, max_seqlen, device="cuda") > 0.15)] = 0 |
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masked_tokens_mask = labels.flatten() > 0 |
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next_sequence_label = torch.randint(0, 2, (batch_size,), device="cuda") |
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out = model( |
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input_ids, |
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attention_mask=attention_mask, |
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labels=labels, |
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next_sentence_label=next_sequence_label, |
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) |
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prediction_scores, seq_relationship_scores = out.prediction_logits, out.seq_relationship_logits |
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out_hf = model_hf( |
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input_ids, |
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attention_mask=attention_mask, |
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labels=labels, |
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next_sentence_label=next_sequence_label, |
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) |
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prediction_scores_hf, seq_relationship_scores_hf = ( |
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out_hf.prediction_logits, |
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out_hf.seq_relationship_logits, |
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) |
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prediction_scores_hf = rearrange(prediction_scores_hf, "b s d -> (b s) d")[masked_tokens_mask] |
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out_ref = model_ref( |
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input_ids, |
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attention_mask=attention_mask, |
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labels=labels, |
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next_sentence_label=next_sequence_label, |
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) |
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prediction_scores_ref, seq_relationship_scores_ref = ( |
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out_ref.prediction_logits, |
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out_ref.seq_relationship_logits, |
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) |
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prediction_scores_ref = rearrange(prediction_scores_ref, "b s d -> (b s) d")[masked_tokens_mask] |
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print( |
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f"prediction_scores max diff: {(prediction_scores - prediction_scores_ref).abs().max().item()}" |
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) |
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print( |
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f"prediction_scores mean diff: {(prediction_scores - prediction_scores_ref).abs().mean().item()}" |
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) |
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print( |
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f"HF fp16 prediction_scoresff: {(prediction_scores_hf - prediction_scores_ref).abs().max().item()}" |
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) |
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print( |
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f"HF fp16 prediction_scoresiff: {(prediction_scores_hf - prediction_scores_ref).abs().mean().item()}" |
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) |
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assert (prediction_scores - prediction_scores_ref).abs().max().item() < 2 * ( |
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prediction_scores_hf - prediction_scores_ref |
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).abs().max().item() |
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assert (seq_relationship_scores - seq_relationship_scores_ref).abs().max().item() < 2 * ( |
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seq_relationship_scores_hf - seq_relationship_scores_ref |
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).abs().max().item() |
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@pytest.mark.parametrize("model_name", ["bert-base-uncased", "bert-large-uncased"]) |
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def test_inv_remap_state_dict(model_name: str): |
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""" |
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Verify that we can convert a HF BERT model to flash_attn and back. |
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""" |
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state_dict = state_dict_from_pretrained(model_name) |
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config = BertConfig.from_pretrained(model_name) |
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flash_state_dict = remap_state_dict(state_dict, config) |
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recovered_state_dict = inv_remap_state_dict(flash_state_dict, config) |
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assert set(state_dict.keys()) == set(recovered_state_dict.keys()) |
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for k in state_dict.keys(): |
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assert state_dict[k].shape == recovered_state_dict[k].shape |
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torch.testing.assert_close(state_dict[k], recovered_state_dict[k], rtol=1e-6, atol=1e-6) |
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