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train:
home_dir: ''
seed: 0
checkpoint: ['', 0]
batch_size: 32
max_epochs: 10000
eval_freq: 7200 # seconds
checkpoint_freq: 50
checkpoints: []
lr: 0.0001
warmup_steps: 1000
decay_steps: 2_000_000
clip_grad_norm: True
grad_clip_val: 1.0
weight_decay: 0.0
n_eval_samples: 8
sample_length_range: [50, 512]
sc_num_seqs: 4
eval_loss_t: [0.1, 0.3, 0.5, 0.7, 0.9]
self_cond_train_prob: 0.9
subsample_eval_set: 0.05
crop_conditional: False
data:
pdb_path: 'datasets/ingraham_cath_dataset'
fixed_size: 384
n_aatype_tokens: 21
se3_data_augment: True
sigma_data: 10.0
diffusion:
training:
function: 'lognormal'
psigma_mean: -1.2
psigma_std: 1.2
sampling:
function: 'uniform'
s_min: 0.001
s_max: 80
model:
task: 'backbone' # 'backbone', 'allatom', 'seqdes', 'codesign'
pretrained_modules: [] # 'struct_model', 'mpnn_model'
struct_model_checkpoint: ''
mpnn_model_checkpoint: ''
crop_conditional: False
dummy_fill_masked_atoms: False
struct_model:
arch: 'uvit'
n_atoms: 37 # keep same shapes, just zero out sidechains
n_channel: 256
noise_cond_mult: 4
uvit:
patch_size: 1
n_layers: 6
n_heads: 8
dim_head: 32
n_filt_per_layer: []
n_blocks_per_layer: 2
cat_pwd_to_conv: False
conv_skip_connection: False
position_embedding_type: 'absolute_residx'
mpnn_model:
use_self_conditioning: True
label_smoothing: 0.1
n_channel: 128
n_layers: 3
n_neighbors: 32
noise_cond_mult: 4
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