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import torch.multiprocessing as mp |
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from omegaconf.omegaconf import OmegaConf, open_dict |
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from pytorch_lightning import Trainer |
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from pytorch_lightning.plugins.environments import TorchElasticEnvironment |
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from nemo.collections.nlp.models.language_modeling.megatron_gpt_prompt_learning_model import ( |
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MegatronGPTPromptLearningModel, |
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) |
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from nemo.collections.nlp.parts.nlp_overrides import ( |
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GradScaler, |
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MegatronHalfPrecisionPlugin, |
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NLPDDPStrategy, |
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NLPSaveRestoreConnector, |
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PipelineMixedPrecisionPlugin, |
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) |
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from nemo.core.config import hydra_runner |
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from nemo.utils import logging |
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from nemo.utils.exp_manager import exp_manager |
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mp.set_start_method("spawn", force=True) |
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""" |
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This is an example of how to ptune/prompt-tune a pretrained GPT model. |
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Be sure to use a .nemo gpt model with this code. If you've downloaded |
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a model from NGC or are otherwise using a MegatronLM model, please use |
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either megatron_ckpt_to_nemo.py or megatron_lm_ckpt_to_nemo.py found |
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withing this examples directory to convert your model to .nemo format. |
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""" |
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@hydra_runner(config_path="conf", config_name="megatron_gpt_prompt_learning_config") |
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def main(cfg) -> None: |
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logging.info("\n\n************** Experiment configuration ***********") |
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logging.info(f'\n{OmegaConf.to_yaml(cfg)}') |
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megatron_amp_o2 = cfg.model.get('megatron_amp_O2', False) |
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plugins = [] |
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strategy = NLPDDPStrategy(no_ddp_communication_hook=True, find_unused_parameters=False,) |
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if cfg.trainer.precision in [16, 'bf16']: |
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scaler = None |
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if cfg.trainer.precision == 16: |
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scaler = GradScaler( |
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init_scale=cfg.model.get('native_amp_init_scale', 2 ** 32), |
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growth_interval=cfg.model.get('native_amp_growth_interval', 1000), |
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hysteresis=cfg.model.get('hysteresis', 2), |
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enabled=False |
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if cfg.model.pipeline_model_parallel_size > 1 |
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else True, |
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) |
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if megatron_amp_o2: |
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plugins.append(MegatronHalfPrecisionPlugin(precision=cfg.trainer.precision, device='cuda', scaler=scaler)) |
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else: |
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plugins.append(PipelineMixedPrecisionPlugin(precision=cfg.trainer.precision, device='cuda', scaler=scaler)) |
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if cfg.get('cluster_type', None) == 'BCP': |
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plugins.append(TorchElasticEnvironment()) |
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trainer = Trainer(plugins=plugins, strategy=strategy, **cfg.trainer) |
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exp_manager(trainer, cfg.exp_manager) |
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with open_dict(cfg): |
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cfg.model.precision = cfg.trainer.precision |
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if cfg.model.get("restore_path", None): |
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model = MegatronGPTPromptLearningModel.restore_from( |
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cfg.model.restore_path, cfg.model, trainer=trainer, save_restore_connector=NLPSaveRestoreConnector() |
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) |
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else: |
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model = MegatronGPTPromptLearningModel(cfg.model, trainer=trainer) |
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trainer.fit(model) |
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if __name__ == '__main__': |
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main() |
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