data: target: dataset.data_module.BIRDataModule params: # Path to training set configuration file. train_config: # Path to validation set configuration file. val_config: model: # You can set learning rate in the following configuration file. config: configs/model/cldm.yaml # Path to the checkpoints or weights you want to resume. At the begining, # this should be set to the initial weights created by scripts/make_stage2_init_weight.py. resume: lightning: seed: 231 trainer: accelerator: ddp precision: 32 # Indices of GPUs used for training. gpus: [0, 1, 2, 3, 4, 5] # Path to save logs and checkpoints. default_root_dir: # Max number of training steps (batches). max_steps: 25001 # Validation frequency in terms of training steps. val_check_interval: 500 log_every_n_steps: 50 # Accumulate gradients from multiple batches so as to increase batch size. accumulate_grad_batches: 1 callbacks: - target: model.callbacks.ImageLogger params: # Log frequency of image logger. log_every_n_steps: 1000 max_images_each_step: 4 log_images_kwargs: ~ - target: model.callbacks.ModelCheckpoint params: # Frequency of saving checkpoints. every_n_train_steps: 5000 save_top_k: -1 filename: "{step}"