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import torch |
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from hydra.core.config_store import ConfigStore |
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from cosmos_predict1.autoregressive.configs.base.callbacks import BASIC_CALLBACKS, VIDEO_TEACHER_FORCING_CALLBACK |
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from cosmos_predict1.autoregressive.configs.base.dataloader import get_tealrobot_video |
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from cosmos_predict1.autoregressive.configs.base.optim import LambdaLinearLR |
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from cosmos_predict1.autoregressive.configs.experiment.video2video.basic import register_experiments |
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from cosmos_predict1.utils import config, log |
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from cosmos_predict1.utils.lazy_config import LazyCall as L |
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from cosmos_predict1.utils.scheduler import WarmupCosineLR |
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def register_checkpoint(cs): |
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checkpoint_local = config.CheckpointConfig( |
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save_iter=5000, |
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broadcast_via_filesystem=True, |
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) |
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cs.store(group="checkpoint", package="checkpoint", name="local", node=checkpoint_local) |
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def register_callbacks(cs): |
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cs.store(group="callbacks", package="trainer.callbacks", name="basic", node=BASIC_CALLBACKS) |
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cs.store( |
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group="callbacks", |
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package="trainer.callbacks", |
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name="video_teacher_forcing", |
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node=VIDEO_TEACHER_FORCING_CALLBACK, |
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) |
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def register_scheduler(cs): |
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cs.store( |
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group="scheduler", |
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package="scheduler", |
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name="warmup_cosine_lr", |
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node=L(WarmupCosineLR)(optimizer=None, warmup_iters=5000, lr_decay_iters="${trainer.max_iter}", min_lr=1e-8), |
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) |
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cs.store(group="scheduler", package="scheduler", name="lambdalinear", node=LambdaLinearLR) |
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def register_optimizer(cs): |
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cs.store( |
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group="optimizer", |
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package="optimizer", |
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name="fused_adamw", |
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node=L(torch.optim.AdamW)(params=None, lr=1e-3, weight_decay=0.05, fused=True), |
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) |
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cs.store( |
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group="optimizer", |
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package="optimizer", |
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name="sgd", |
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node=L(torch.optim.SGD)(params=None, lr=5e-6, momentum=0.9), |
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) |
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def register_training_data(cs): |
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cs.store( |
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group="data_train", |
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package="dataloader_train", |
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name="tealrobot_video_small", |
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node=get_tealrobot_video(num_frames=33, video_size=[384, 640]), |
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) |
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cs.store(group="data_train", package="dataloader_train", name="tealrobot_video", node=get_tealrobot_video()) |
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def register_configs(): |
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log.info("Registering configs for autoregressive_base") |
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cs = ConfigStore.instance() |
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register_callbacks(cs) |
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register_checkpoint(cs) |
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register_optimizer(cs) |
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register_scheduler(cs) |
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register_training_data(cs) |
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register_experiments(cs) |
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