| """ |
| Configuration settings for the trajectory interpolation project. |
| |
| This file defines a function `load_config()` which returns a dictionary |
| containing various parameters grouped by their purpose (e.g., data, model, |
| diffusion, training, sampling). |
| """ |
| from types import SimpleNamespace |
| import torch |
|
|
| def load_config(): |
| config_args = { |
| 'data': { |
| 'traj_length': 256, |
| 'dataset': 'TKY_temporal', |
| 'traj_path1': './data/', |
| 'num_workers': 16, |
| }, |
| 'train': { |
| 'batch_size': 512, |
| 'n_epochs': 50, |
| 'n_iters': 5000000, |
| 'snapshot_freq': 5000, |
| 'validation_freq': 5, |
| 'dis_gpu': False, |
| }, |
| 'trans': { |
| 'input_dim': 3, |
| 'embed_dim': 512, |
| 'num_layers': 4, |
| 'num_heads': 8, |
| 'forward_dim': 256, |
| 'dropout': 0.1, |
| 'N_CLUSTER': 20, |
| }, |
| 'test': { |
| 'batch_size': 256, |
| 'last_only': True, |
| }, |
| 'diffusion': { |
| 'beta_schedule': 'linear', |
| 'beta_start': 0.0001, |
| 'beta_end': 0.05, |
| 'num_diffusion_timesteps': 500, |
| }, |
| 'model': { |
| 'type': "simple", |
| 'attr_dim': 8, |
| 'guidance_scale': 2, |
| 'in_channels': 3, |
| 'out_ch': 3, |
| 'ch': 128, |
| 'ch_mult': [1, 2, 2, 2], |
| 'num_res_blocks': 2, |
| 'attn_resolutions': [16], |
| 'dropout': 0.1, |
| 'var_type': 'fixedlarge', |
| 'resamp_with_conv': True, |
| }, |
| 'data_source': 'TKY', |
| 'data_dir': './data/TKY/manually_split/', |
| 'normalization_params_file': './data/TKY/normalization_params.json', |
| } |
| |
| |
| config = SimpleNamespace() |
| config.training = SimpleNamespace(**config_args['train']) |
| config.test = SimpleNamespace(**config_args['test']) |
| config.diffusion = SimpleNamespace(**config_args['diffusion']) |
| config.model = SimpleNamespace(**config_args['model']) |
| config.sampling = SimpleNamespace(**config_args['test']) |
| |
| config.sampling.type = 'ddim' |
| config.sampling.ddim_steps = 50 |
| config.sampling.ddim_eta = 0.0 |
| config.data = SimpleNamespace(**config_args['data']) |
| config.trans = SimpleNamespace(**config_args['trans']) |
| |
| config.device = 'cuda' if torch.cuda.is_available() else 'cpu' |
| config.masking_strategy = 'multi_segment' |
| config.mask_segments = [60, 60] |
| config.mask_ratio = 0.2 |
| config.mask_points_per_hour = 60 |
| config.z_score_normalization = False |
| config.dis_gpu = False |
| |
| |
| config.learning_rate = 1.5e-4 |
| config.batch_size = config_args['train']['batch_size'] |
| config.n_epochs = config_args['train']['n_epochs'] |
| config.validation_freq = config_args['train']['validation_freq'] |
| config.warmup_epochs = 5 |
| config.contrastive_margin = 1.0 |
| config.kmeans_memory_size = 15 |
| config.contrastive_loss_weight = 0.1 |
| config.ce_loss_weight = 0.1 |
| config.diffusion_loss_weight = 1.0 |
| config.device_id = 0 |
| config.use_amp = True |
| config.normalization_params_file = config_args['normalization_params_file'] |
| config.data_source = config_args['data_source'] |
| config.data_dir = config_args['data_dir'] |
| config.traj_length = config_args['data']['traj_length'] |
| |
| return config |