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| import argparse | |
| import inspect | |
| from . import gaussian_diffusion as gd | |
| from .respace import SpacedDiffusion, space_timesteps | |
| from .transformer import TransformerModel | |
| def diffusion_defaults(): | |
| """ | |
| Defaults for image and classifier training. | |
| """ | |
| return dict( | |
| analog_bit=False, | |
| learn_sigma=False, | |
| # diffusion_steps=25, | |
| diffusion_steps=1000, | |
| noise_schedule="cosine", | |
| timestep_respacing="ddim100", | |
| use_kl=False, | |
| predict_xstart=False, | |
| rescale_timesteps=False, | |
| rescale_learned_sigmas=False, | |
| # target_set=-1, | |
| # target_set=4, | |
| # target_set=5, | |
| # target_set=6, | |
| # target_set=7, | |
| target_set=8, | |
| set_name='', | |
| ) | |
| def update_arg_parser(args): | |
| args.num_channels = 512 | |
| num_coords = 16 if args.analog_bit else 2 | |
| if args.dataset=='rplan': | |
| args.input_channels = num_coords + (2*8 if not args.analog_bit else 0) # . , . , . , . , ' | |
| args.condition_channels = 89 | |
| args.out_channels = num_coords * 1 | |
| args.use_unet = False | |
| elif args.dataset=='st3d': | |
| args.input_channels = num_coords + (2*8 if not args.analog_bit else 0) # . , . , . , . , ' | |
| args.condition_channels = 89 | |
| args.out_channels = num_coords * 1 | |
| args.use_unet = False | |
| elif args.dataset=='zind': | |
| args.input_channels = num_coords + 2 * 8 | |
| args.condition_channels = 89 | |
| args.out_channels = num_coords * 1 | |
| args.use_unet = False | |
| elif args.dataset=='layout': | |
| args.use_unet = True | |
| pass #TODO NEED TO COMPLETE | |
| elif args.dataset=='outdoor': | |
| args.use_unet = True | |
| pass #TODO NEED TO COMPLETE | |
| else: | |
| assert False, "DATASET NOT FOUND" | |
| def model_and_diffusion_defaults(): | |
| """ | |
| Defaults for image training. | |
| """ | |
| res = dict( | |
| dataset='rplan', | |
| # dataset='', | |
| use_checkpoint=False, | |
| input_channels=0, | |
| condition_channels=0, | |
| out_channels=0, | |
| use_unet=False, | |
| num_channels=128 | |
| ) | |
| res.update(diffusion_defaults()) | |
| return res | |
| def create_model_and_diffusion( | |
| input_channels, | |
| condition_channels, | |
| num_channels, | |
| out_channels, | |
| dataset, | |
| use_checkpoint, | |
| use_unet, | |
| learn_sigma, | |
| diffusion_steps, | |
| noise_schedule, | |
| timestep_respacing, | |
| use_kl, | |
| predict_xstart, | |
| rescale_timesteps, | |
| rescale_learned_sigmas, | |
| analog_bit, | |
| target_set, | |
| set_name, | |
| ): | |
| model = TransformerModel(input_channels, condition_channels, num_channels, out_channels, dataset, use_checkpoint, use_unet, analog_bit) | |
| diffusion = create_gaussian_diffusion( | |
| steps=diffusion_steps, | |
| learn_sigma=learn_sigma, | |
| noise_schedule=noise_schedule, | |
| use_kl=use_kl, | |
| predict_xstart=predict_xstart, | |
| rescale_timesteps=rescale_timesteps, | |
| rescale_learned_sigmas=rescale_learned_sigmas, | |
| timestep_respacing=timestep_respacing, | |
| ) | |
| return model, diffusion | |
| def create_gaussian_diffusion( | |
| *, | |
| steps=1000, | |
| learn_sigma=False, | |
| sigma_small=False, | |
| noise_schedule="linear", | |
| use_kl=False, | |
| predict_xstart=False, | |
| rescale_timesteps=False, | |
| rescale_learned_sigmas=False, | |
| timestep_respacing="", | |
| ): | |
| betas = gd.get_named_beta_schedule(noise_schedule, steps) | |
| if use_kl: | |
| loss_type = gd.LossType.RESCALED_KL | |
| elif rescale_learned_sigmas: | |
| loss_type = gd.LossType.RESCALED_MSE | |
| else: | |
| loss_type = gd.LossType.MSE | |
| if not timestep_respacing: | |
| timestep_respacing = [steps] | |
| return SpacedDiffusion( | |
| use_timesteps=space_timesteps(steps, timestep_respacing), | |
| betas=betas, | |
| model_mean_type=( | |
| gd.ModelMeanType.EPSILON if not predict_xstart else gd.ModelMeanType.START_X | |
| ), | |
| model_var_type=( | |
| ( | |
| gd.ModelVarType.FIXED_LARGE | |
| if not sigma_small | |
| else gd.ModelVarType.FIXED_SMALL | |
| ) | |
| if not learn_sigma | |
| else gd.ModelVarType.LEARNED_RANGE | |
| ), | |
| loss_type=loss_type, | |
| rescale_timesteps=rescale_timesteps, | |
| ) | |
| def add_dict_to_argparser(parser, default_dict): | |
| for k, v in default_dict.items(): | |
| v_type = type(v) | |
| if v is None: | |
| v_type = str | |
| elif isinstance(v, bool): | |
| v_type = str2bool | |
| parser.add_argument(f"--{k}", default=v, type=v_type) | |
| def args_to_dict(args, keys): | |
| return {k: getattr(args, k) for k in keys} | |
| def str2bool(v): | |
| """ | |
| https://stackoverflow.com/questions/15008758/parsing-boolean-values-with-argparse | |
| """ | |
| if isinstance(v, bool): | |
| return v | |
| if v.lower() in ("yes", "true", "t", "y", "1"): | |
| return True | |
| elif v.lower() in ("no", "false", "f", "n", "0"): | |
| return False | |
| else: | |
| raise argparse.ArgumentTypeError("boolean value expected") | |