# Define dataset dataset = dict( type="VariableVideoTextDataset", data_path=None, num_frames=None, frame_interval=3, image_size=(None, None), transform_name="resize_crop", ) bucket_config = { # 6s/it "256": {1: (1.0, 256)}, "512": {1: (1.0, 80)}, "480p": {1: (1.0, 52)}, "1024": {1: (1.0, 20)}, "1080p": {1: (1.0, 8)}, } # Define acceleration num_workers = 4 num_bucket_build_workers = 16 dtype = "bf16" grad_checkpoint = True plugin = "zero2" sp_size = 1 # Define model model = dict( type="STDiT2-XL/2", from_pretrained=None, input_sq_size=512, # pretrained model is trained on 512x512 qk_norm=True, qk_norm_legacy=True, enable_flash_attn=True, enable_layernorm_kernel=True, ) vae = dict( type="VideoAutoencoderKL", from_pretrained="stabilityai/sd-vae-ft-ema", micro_batch_size=4, local_files_only=True, ) text_encoder = dict( type="t5", from_pretrained="DeepFloyd/t5-v1_1-xxl", model_max_length=200, shardformer=True, local_files_only=True, ) scheduler = dict( type="iddpm", timestep_respacing="", ) # Others seed = 42 outputs = "outputs" wandb = False epochs = 1000 log_every = 10 ckpt_every = 500 load = None batch_size = 10 # only for logging lr = 2e-5 grad_clip = 1.0