# misc misc: cuda: True device: 0 checkpoint_interval: 1 log_interval: 812 desc: null precond: False dry_run: False data: root_dir: "data_cache" name: DFAUST_fmap_30 n_fmap: 30 out: "fmap_exps" cond: False template_path: "data/template.ply" normalize: True pairs: False abs: True add_name: do: False name: "bis" architecture: model: "DiT" name_arch: "DiT-S/4" input_type: "img" cond: False # Conditioning with 3D-CODED ## loss params #loss: # w_gt: False # if one wants to train as a supervised method, one should set w_gt=True # w_ortho: 1 # orthogonal loss for functional map (default: 1) # w_Qortho: 0 # orthogonal loss for complex functional map (default: 1) # w_bij: 1 # w_res: 1 # residual loss for functional map (default: 1) # w_rank: -0.1 # w_srnf: 1 # min_alpha: 1 # max_alpha: 100 # hyper_params: iterations: 200 batch_size: 256 lr: 0.001 lr_rampup_kimg: 10000 # Learning rate ramp-up duration ema_halflife_nshape : 500 # ema half-life of the exponential moving average (EMA) of model weights. ema_rampup_ratio : 0.05 # EMA ramp-up coefficient, None = no rampup. dropout: 0 loss_name: 'VPLoss' ls : 1 #loss scaling perfs: fp16: False workers: 1 resume: pkl: null transfer: null kimg_per_tick: 5 snapshot_ticks: 50 state_dump_ticks: 50