# Dataset settings dataset = dict( type="VariableVideoTextDataset", transform_name="resize_crop", ) # webvid bucket_config = { # 20s/it "144p": {1: (1.0, 475), 51: (1.0, 51), 102: (1.0, 27), 204: (1.0, 13), 408: (1.0, 6)}, # --- "256": {1: (1.0, 297), 51: (0.5, 20), 102: (0.5, 10), 204: (0.5, 5), 408: ((0.5, 0.5), 2)}, "240p": {1: (1.0, 297), 51: (0.5, 20), 102: (0.5, 10), 204: (0.5, 5), 408: ((0.5, 0.4), 2)}, # --- "360p": {1: (1.0, 141), 51: (0.5, 8), 102: (0.5, 4), 204: (0.5, 2), 408: ((0.5, 0.3), 1)}, "512": {1: (1.0, 141), 51: (0.5, 8), 102: (0.5, 4), 204: (0.5, 2), 408: ((0.5, 0.2), 1)}, # --- "480p": {1: (1.0, 89), 51: (0.5, 5), 102: (0.5, 3), 204: ((0.5, 0.5), 1), 408: (0.0, None)}, # --- "720p": {1: (0.3, 36), 51: (0.2, 2), 102: (0.1, 1), 204: (0.0, None)}, "1024": {1: (0.3, 36), 51: (0.1, 2), 102: (0.1, 1), 204: (0.0, None)}, # --- "1080p": {1: (0.1, 5)}, # --- "2048": {1: (0.05, 5)}, } grad_checkpoint = True # Acceleration settings num_workers = 8 num_bucket_build_workers = 16 dtype = "bf16" plugin = "zero2" # Model settings model = dict( type="STDiT3-XL/2", from_pretrained=None, qk_norm=True, enable_flash_attn=True, enable_layernorm_kernel=True, freeze_y_embedder=True, ) vae = dict( type="OpenSoraVAE_V1_2", from_pretrained="/mnt/jfs/sora_checkpoints/vae-pipeline", micro_frame_size=17, micro_batch_size=4, ) text_encoder = dict( type="t5", from_pretrained="DeepFloyd/t5-v1_1-xxl", model_max_length=300, shardformer=True, local_files_only=True, ) scheduler = dict( type="rflow", use_timestep_transform=True, sample_method="logit-normal", ) # Mask settings # 25% mask_ratios = { "random": 0.01, "intepolate": 0.002, "quarter_random": 0.002, "quarter_head": 0.002, "quarter_tail": 0.002, "quarter_head_tail": 0.002, "image_random": 0.0, "image_head": 0.22, "image_tail": 0.005, "image_head_tail": 0.005, } # Log settings seed = 42 outputs = "outputs" wandb = False epochs = 1000 log_every = 10 ckpt_every = 200 # optimization settings load = None grad_clip = 1.0 lr = 1e-4 ema_decay = 0.99 adam_eps = 1e-15 warmup_steps = 1000