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2 Commits
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4b912a38c6 | ||
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f97e55ec6b |
@@ -74,9 +74,6 @@ Settings for controlling the training hyperparameters.
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| `validation_samples` | No | `None` | The number of samples to use for validation. None mean the entire validation set. |
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| `use_ema` | No | `True` | Whether to use exponential moving average models for sampling. |
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| `ema_beta` | No | `0.99` | The ema coefficient. |
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| `save_all` | No | `False` | If True, preserves a checkpoint for every epoch. |
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| `save_latest` | No | `True` | If True, overwrites the `latest.pth` every time the model is saved. |
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| `save_best` | No | `True` | If True, overwrites the `best.pth` every time the model has a lower validation loss than all previous models. |
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| `unet_training_mask` | No | `None` | A boolean array of the same length as the number of unets. If false, the unet is frozen. A value of `None` trains all unets. |
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**<ins>Evaluate</ins>:**
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@@ -163,9 +160,10 @@ All save locations have these configuration options
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| Option | Required | Default | Description |
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| ------ | -------- | ------- | ----------- |
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| `save_to` | Yes | N/A | Must be `local`, `huggingface`, or `wandb`. |
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| `save_latest_to` | No | `latest.pth` | Sets the relative path to save the latest model to. |
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| `save_best_to` | No | `best.pth` | Sets the relative path to save the best model to every time the model has a lower validation loss than all previous models. |
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| `save_type` | No | `'checkpoint'` | The type of save. `'checkpoint'` saves a checkpoint, `'model'` saves a model without any fluff (Saves with ema if ema is enabled). |
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| `save_latest_to` | No | `None` | Sets the relative path to save the latest model to. |
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| `save_best_to` | No | `None` | Sets the relative path to save the best model to every time the model has a lower validation loss than all previous models. |
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| `save_meta_to` | No | `None` | The path to save metadata files in. This includes the config files used to start the training. |
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| `save_type` | No | `checkpoint` | The type of save. `checkpoint` saves a checkpoint, `model` saves a model without any fluff (Saves with ema if ema is enabled). |
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If using `local`
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| Option | Required | Default | Description |
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@@ -177,7 +175,6 @@ If using `huggingface`
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| ------ | -------- | ------- | ----------- |
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| `save_to` | Yes | N/A | Must be `huggingface`. |
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| `huggingface_repo` | Yes | N/A | The huggingface repository to save to. |
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| `huggingface_base_path` | Yes | N/A | The base path that checkpoints will be saved under. |
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| `token_path` | No | `None` | If logging in with the huggingface cli is not possible, point to a token file instead. |
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If using `wandb`
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@@ -56,9 +56,6 @@
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"use_ema": true,
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"ema_beta": 0.99,
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"amp": false,
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"save_all": false,
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"save_latest": true,
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"save_best": true,
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"unet_training_mask": [true]
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},
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"evaluate": {
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@@ -96,14 +93,15 @@
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},
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"save": [{
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"save_to": "wandb"
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"save_to": "wandb",
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"save_latest_to": "latest.pth"
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}, {
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"save_to": "huggingface",
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"huggingface_repo": "Veldrovive/test_model",
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"save_all": true,
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"save_latest": true,
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"save_best": true,
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"save_latest_to": "path/to/model_dir/latest.pth",
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"save_best_to": "path/to/model_dir/best.pth",
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"save_meta_to": "path/to/directory/for/assorted/files",
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"save_type": "model"
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}]
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@@ -61,9 +61,6 @@
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"use_ema": true,
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"ema_beta": 0.99,
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"amp": false,
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"save_all": false,
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"save_latest": true,
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"save_best": true,
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"unet_training_mask": [true]
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},
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"evaluate": {
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@@ -96,7 +93,8 @@
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},
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"save": [{
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"save_to": "local"
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"save_to": "local",
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"save_latest_to": "latest.pth"
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}]
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}
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}
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@@ -4,13 +4,15 @@ import json
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from pathlib import Path
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import shutil
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from itertools import zip_longest
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from typing import Optional, List, Union
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from typing import Any, Optional, List, Union
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from pydantic import BaseModel
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import torch
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from dalle2_pytorch.dalle2_pytorch import Decoder, DiffusionPrior
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from dalle2_pytorch.utils import import_or_print_error
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from dalle2_pytorch.trainer import DecoderTrainer, DiffusionPriorTrainer
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from dalle2_pytorch.version import __version__
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from packaging import version
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# constants
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@@ -21,16 +23,6 @@ DEFAULT_DATA_PATH = './.tracker-data'
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def exists(val):
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return val is not None
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# load file functions
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def load_wandb_file(run_path, file_path, **kwargs):
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wandb = import_or_print_error('wandb', '`pip install wandb` to use the wandb recall function')
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file_reference = wandb.restore(file_path, run_path=run_path)
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return file_reference.name
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def load_local_file(file_path, **kwargs):
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return file_path
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class BaseLogger:
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"""
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An abstract class representing an object that can log data.
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@@ -234,7 +226,7 @@ class LocalLoader(BaseLoader):
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def init(self, logger: BaseLogger, **kwargs) -> None:
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# Makes sure the file exists to be loaded
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if not self.file_path.exists():
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if not self.file_path.exists() and not self.only_auto_resume:
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raise FileNotFoundError(f'Model not found at {self.file_path}')
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def recall(self) -> dict:
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@@ -283,9 +275,9 @@ def create_loader(loader_type: str, data_path: str, **kwargs) -> BaseLoader:
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class BaseSaver:
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def __init__(self,
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data_path: str,
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save_latest_to: Optional[Union[str, bool]] = 'latest.pth',
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save_best_to: Optional[Union[str, bool]] = 'best.pth',
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save_meta_to: str = './',
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save_latest_to: Optional[Union[str, bool]] = None,
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save_best_to: Optional[Union[str, bool]] = None,
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save_meta_to: Optional[str] = None,
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save_type: str = 'checkpoint',
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**kwargs
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):
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@@ -295,10 +287,10 @@ class BaseSaver:
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self.save_best_to = save_best_to
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self.saving_best = save_best_to is not None and save_best_to is not False
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self.save_meta_to = save_meta_to
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self.saving_meta = save_meta_to is not None
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self.save_type = save_type
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assert save_type in ['checkpoint', 'model'], '`save_type` must be one of `checkpoint` or `model`'
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assert self.save_meta_to is not None, '`save_meta_to` must be provided'
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assert self.saving_latest or self.saving_best, '`save_latest_to` or `save_best_to` must be provided'
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assert self.saving_latest or self.saving_best or self.saving_meta, 'At least one saving option must be specified'
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def init(self, logger: BaseLogger, **kwargs) -> None:
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raise NotImplementedError
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@@ -459,6 +451,11 @@ class Tracker:
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print(f'\n\nWARNING: RUN HAS BEEN AUTO-RESUMED WITH THE LOGGER TYPE {self.logger.__class__.__name__}.\nIf this was not your intention, stop this run and set `auto_resume` to `False` in the config.\n\n')
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print(f"New logger config: {self.logger.__dict__}")
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self.save_metadata = dict(
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version = version.parse(__version__)
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) # Data that will be saved alongside the checkpoint or model
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self.blacklisted_checkpoint_metadata_keys = ['scaler', 'optimizer', 'model', 'version', 'step', 'steps'] # These keys would cause us to error if we try to save them as metadata
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assert self.logger is not None, '`logger` must be set before `init` is called'
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if self.dummy_mode:
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# The only thing we need is a loader
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@@ -507,8 +504,15 @@ class Tracker:
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# Save the config under config_name in the root folder of data_path
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shutil.copy(current_config_path, self.data_path / config_name)
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for saver in self.savers:
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remote_path = Path(saver.save_meta_to) / config_name
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saver.save_file(current_config_path, str(remote_path))
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if saver.saving_meta:
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remote_path = Path(saver.save_meta_to) / config_name
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saver.save_file(current_config_path, str(remote_path))
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def add_save_metadata(self, state_dict_key: str, metadata: Any):
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"""
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Adds a new piece of metadata that will be saved along with the model or decoder.
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"""
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self.save_metadata[state_dict_key] = metadata
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def _save_state_dict(self, trainer: Union[DiffusionPriorTrainer, DecoderTrainer], save_type: str, file_path: str, **kwargs) -> Path:
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"""
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@@ -518,24 +522,34 @@ class Tracker:
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"""
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assert save_type in ['checkpoint', 'model']
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if save_type == 'checkpoint':
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trainer.save(file_path, overwrite=True, **kwargs)
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# Create a metadata dict without the blacklisted keys so we do not error when we create the state dict
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metadata = {k: v for k, v in self.save_metadata.items() if k not in self.blacklisted_checkpoint_metadata_keys}
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trainer.save(file_path, overwrite=True, **kwargs, **metadata)
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elif save_type == 'model':
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if isinstance(trainer, DiffusionPriorTrainer):
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prior = trainer.ema_diffusion_prior.ema_model if trainer.use_ema else trainer.diffusion_prior
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state_dict = trainer.unwrap_model(prior).state_dict()
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torch.save(state_dict, file_path)
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prior: DiffusionPrior = trainer.unwrap_model(prior)
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# Remove CLIP if it is part of the model
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prior.clip = None
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model_state_dict = prior.state_dict()
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elif isinstance(trainer, DecoderTrainer):
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decoder = trainer.accelerator.unwrap_model(trainer.decoder)
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decoder: Decoder = trainer.accelerator.unwrap_model(trainer.decoder)
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# Remove CLIP if it is part of the model
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decoder.clip = None
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if trainer.use_ema:
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trainable_unets = decoder.unets
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decoder.unets = trainer.unets # Swap EMA unets in
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state_dict = decoder.state_dict()
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model_state_dict = decoder.state_dict()
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decoder.unets = trainable_unets # Swap back
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else:
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state_dict = decoder.state_dict()
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torch.save(state_dict, file_path)
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model_state_dict = decoder.state_dict()
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else:
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raise NotImplementedError('Saving this type of model with EMA mode enabled is not yet implemented. Actually, how did you get here?')
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state_dict = {
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**self.save_metadata,
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'model': model_state_dict
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}
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torch.save(state_dict, file_path)
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return Path(file_path)
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def save(self, trainer, is_best: bool, is_latest: bool, **kwargs):
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@@ -1 +1 @@
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__version__ = '0.26.1'
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__version__ = '0.26.2'
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@@ -513,6 +513,7 @@ def create_tracker(accelerator: Accelerator, config: TrainDecoderConfig, config_
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}
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tracker: Tracker = tracker_config.create(config, accelerator_config, dummy_mode=dummy)
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tracker.save_config(config_path, config_name='decoder_config.json')
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tracker.add_save_metadata(state_dict_key='config', metadata=config.dict())
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return tracker
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def initialize_training(config: TrainDecoderConfig, config_path):
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