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https://github.com/lucidrains/DALLE2-pytorch.git
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3 Commits
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c12e067178 | ||
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c6629c431a | ||
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7ac2fc79f2 |
99
configs/train_decoder_config.example.json
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99
configs/train_decoder_config.example.json
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@@ -0,0 +1,99 @@
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{
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"unets": [
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{
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"dim": 128,
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"image_embed_dim": 768,
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"cond_dim": 64,
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"channels": 3,
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"dim_mults": [1, 2, 4, 8],
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"attn_dim_head": 32,
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"attn_heads": 16
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}
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],
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"decoder": {
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"image_sizes": [64],
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"channels": 3,
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"timesteps": 1000,
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"loss_type": "l2",
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"beta_schedule": "cosine",
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"learned_variance": true
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},
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"data": {
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"webdataset_base_url": "pipe:s3cmd get s3://bucket/path/{}.tar -",
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"embeddings_url": "s3://bucket/embeddings/path/",
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"num_workers": 4,
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"batch_size": 64,
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"start_shard": 0,
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"end_shard": 9999999,
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"shard_width": 6,
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"index_width": 4,
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"splits": {
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"train": 0.75,
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"val": 0.15,
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"test": 0.1
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},
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"shuffle_train": true,
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"resample_train": false,
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"preprocessing": {
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"RandomResizedCrop": {
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"size": [128, 128],
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"scale": [0.75, 1.0],
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"ratio": [1.0, 1.0]
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},
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"ToTensor": true
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}
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},
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"train": {
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"epochs": 20,
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"lr": 1e-4,
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"wd": 0.01,
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"max_grad_norm": 0.5,
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"save_every_n_samples": 100000,
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"n_sample_images": 6,
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"device": "cuda:0",
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"epoch_samples": null,
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"validation_samples": null,
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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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"n_evaluation_samples": 1000,
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"FID": {
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"feature": 64
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},
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"IS": {
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"feature": 64,
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"splits": 10
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},
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"KID": {
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"feature": 64,
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"subset_size": 10
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},
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"LPIPS": {
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"net_type": "vgg",
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"reduction": "mean"
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}
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},
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"tracker": {
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"tracker_type": "console",
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"data_path": "./models",
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"wandb_entity": "",
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"wandb_project": "",
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"verbose": false
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},
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"load": {
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"source": null,
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"run_path": "",
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"file_path": "",
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"resume": false
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}
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}
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@@ -1,5 +1,6 @@
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import json
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from torchvision import transforms as T
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from pydantic import BaseModel, validator
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from pydantic import BaseModel, validator, root_validator
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from typing import List, Iterable, Optional, Union, Tuple, Dict, Any
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def exists(val):
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@@ -38,6 +39,17 @@ class DecoderConfig(BaseModel):
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class Config:
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extra = "allow"
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class TrainSplitConfig(BaseModel):
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train: float = 0.75
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val: float = 0.15
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test: float = 0.1
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@root_validator
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def validate_all(cls, fields):
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if sum([*fields.values()]) != 1.:
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raise ValueError(f'{fields.keys()} must sum to 1.0')
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return fields
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class DecoderDataConfig(BaseModel):
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webdataset_base_url: str # path to a webdataset with jpg images
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embeddings_url: str # path to .npy files with embeddings
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@@ -47,11 +59,7 @@ class DecoderDataConfig(BaseModel):
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end_shard: int = 9999999
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shard_width: int = 6
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index_width: int = 4
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splits: Dict[str, float] = {
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'train': 0.75,
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'val': 0.15,
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'test': 0.1
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}
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splits: TrainSplitConfig
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shuffle_train: bool = True
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resample_train: bool = False
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preprocessing: Dict[str, Any] = {'ToTensor': True}
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@@ -104,6 +112,12 @@ class TrainDecoderConfig(BaseModel):
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tracker: TrackerConfig
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load: DecoderLoadConfig
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@classmethod
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def from_json_path(cls, json_path):
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with open(json_path) as f:
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config = json.load(f)
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return cls(**config)
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@property
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def img_preproc(self):
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def _get_transformation(transformation_name, **kwargs):
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2
setup.py
2
setup.py
@@ -10,7 +10,7 @@ setup(
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'dream = dalle2_pytorch.cli:dream'
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],
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},
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version = '0.4.0',
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version = '0.4.2',
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license='MIT',
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description = 'DALL-E 2',
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author = 'Phil Wang',
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@@ -5,7 +5,6 @@ from dalle2_pytorch.trackers import WandbTracker, ConsoleTracker
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from dalle2_pytorch.train_configs import TrainDecoderConfig
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from dalle2_pytorch.utils import Timer
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import json
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import torchvision
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import torch
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from torchmetrics.image.fid import FrechetInceptionDistance
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@@ -422,9 +421,9 @@ def initialize_training(config):
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dataloaders = create_dataloaders (
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available_shards=all_shards,
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img_preproc = config.img_preproc,
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train_prop = config.data["splits"]["train"],
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val_prop = config.data["splits"]["val"],
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test_prop = config.data["splits"]["test"],
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train_prop = config.data.splits.train,
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val_prop = config.data.splits.val,
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test_prop = config.data.splits.test,
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n_sample_images=config.train.n_sample_images,
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**config.data.dict()
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)
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@@ -449,9 +448,7 @@ def initialize_training(config):
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@click.option("--config_file", default="./train_decoder_config.json", help="Path to config file")
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def main(config_file):
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print("Recalling config from {}".format(config_file))
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with open(config_file) as f:
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config = json.load(f)
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config = TrainDecoderConfig(**config)
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config = TrainDecoderConfig.from_json_path(config_file)
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initialize_training(config)
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