| import typing as T | |
| from yacs.config import CfgNode as CN | |
| _C: AutoConfig | |
| class Experimental(CN): | |
| SHUFFLE_IMAGES: bool | |
| BLANK_IMAGE: bool | |
| T_IMAGE: int | |
| USE_RETINA_MAPPER: bool | |
| USE_LAYER_SELECTOR: bool | |
| USE_BHV: bool | |
| USE_BHV_PASSTHROUGH: bool | |
| BEHV_ONLY: bool | |
| BEHV_SELECTION: T.Sequence | |
| BACKBONE_NOGRAD: bool | |
| STRAIGHT_FORWARD: bool | |
| STRAIGHT_FORWARD_BUT_KEEP_BACKBONE_GRAD: bool | |
| ANOTHER_SPLIT: bool | |
| SHUFFLE_VAL: bool | |
| NO_SPLIT: bool | |
| USE_DEV_MODEL: bool | |
| USE_FEAT: bool | |
| CENTER_FRAME: int | |
| REPLACE_BLANK_WITH_RANDOM: bool | |
| REPLACE_NONBLANK_WITH_RANDOM: bool | |
| USE_PREV_FRAME: bool | |
| USE_PREV_BEHV: bool | |
| USE_CURRENT_FRAME: bool | |
| USE_CURRENT_BEHV: bool | |
| USE_FTR_FRAME: bool | |
| USE_FTR_BEHV: bool | |
| USE_COORDS: bool | |
| MAX_DATASET_SIZE: int | |
| class Datamodule(CN): | |
| BATCH_SIZE: int | |
| NUM_WORKERS: int | |
| PIN_MEMORY: bool | |
| FEATURE_EXTRACTOR_MODE: bool | |
| class Dataset(CN): | |
| IMAGE_RESOLUTION: T.Sequence | |
| N_PREV_FRAMES: int | |
| N_FTR_FRAMES: int | |
| CACHE_DIR: str | |
| SUBJECT_LIST: T.Sequence | |
| ROIS: T.Sequence | |
| FMRI_SPACE: str | |
| FILTER_BY_SESSION: T.Sequence | |
| ROOT: str | |
| DARK_POSTFIX: str | |
| class Position_encoding(CN): | |
| IN_DIM: int | |
| MAX_STEPS: int | |
| FEATURES: int | |
| PERIODS: int | |
| class Lora(CN): | |
| SCALE: float | |
| RANK: int | |
| class Adaptive_ln(CN): | |
| SCALE: float | |
| class Backbone(CN): | |
| NAME: str | |
| CACHE_DIR: str | |
| LAYERS: T.Sequence | |
| FEATURE_DIMS: T.Sequence | |
| CLS_DIMS: T.Sequence | |
| LORA: Lora | |
| ADAPTIVE_LN: Adaptive_ln | |
| class Lora_1(CN): | |
| SCALE: float | |
| RANK: int | |
| class Adaptive_ln_1(CN): | |
| SCALE: float | |
| class Backbone_small(CN): | |
| NAME: str | |
| LAYERS: T.Sequence | |
| CLS_DIMS: T.Sequence | |
| T_DIM: int | |
| WIDTH: int | |
| MERGE_WIDTH: int | |
| LORA: Lora_1 | |
| ADAPTIVE_LN: Adaptive_ln_1 | |
| class Prev_feat(CN): | |
| DIM: int | |
| class Conv_head(CN): | |
| MAX_DIM: int | |
| KERNEL_SIZES: T.Sequence | |
| DEPTHS: T.Sequence | |
| WIDTH: int | |
| SIMPLE: bool | |
| class Cond(CN): | |
| USE: bool | |
| DROPOUT: float | |
| IN_DIM: int | |
| DIM: int | |
| PASSTHROUGH_DIM: int | |
| class Coords_mlp(CN): | |
| WIDTH: int | |
| DEPTH: int | |
| LOG: bool | |
| class Retina_mapper(CN): | |
| CONSTANT_SIGMA: float | |
| class Layer_selector(CN): {} | |
| class Bottleneck(CN): | |
| RANK: int | |
| OUT_DIM: int | |
| class Mlp(CN): | |
| DEPTH: int | |
| WIDTH: int | |
| class Shared(CN): | |
| USE: bool | |
| MLP: Mlp | |
| class Voxel_outs(CN): | |
| SHARED: Shared | |
| class Model(CN): | |
| WIDTH_RATIO: float | |
| BACKBONE: Backbone | |
| BACKBONE_SMALL: Backbone_small | |
| PREV_FEAT: Prev_feat | |
| CONV_HEAD: Conv_head | |
| COND: Cond | |
| MAX_TRAIN_VOXELS: int | |
| CHUNK_SIZE: int | |
| COORDS_MLP: Coords_mlp | |
| RETINA_MAPPER: Retina_mapper | |
| LAYER_SELECTOR: Layer_selector | |
| BOTTLENECK: Bottleneck | |
| VOXEL_OUTS: Voxel_outs | |
| class Sync(CN): | |
| USE: bool | |
| STAGE: str | |
| SKIP_EPOCHS: int | |
| EMA_BETA: float | |
| EMA_BIAS_CORRECTION: bool | |
| UPDATE_RULE: str | |
| EXP_SCALE: float | |
| EXP_SHIFT: float | |
| LOG_SHIFT: float | |
| EMA_KEY: str | |
| class Anneal(CN): | |
| T: int | |
| class Dark(CN): | |
| USE: bool | |
| MAX_EPOCH: int | |
| GT_ROIS: T.Sequence | |
| GT_SCALE_UP_COEF: float | |
| ANNEAL: Anneal | |
| class Loss(CN): | |
| NAME: str | |
| SMOOTH_L1_BETA: float | |
| SYNC: Sync | |
| DARK: Dark | |
| class Regularizer(CN): | |
| LAYER: float | |
| class Scheduler(CN): | |
| T_INITIAL: int | |
| T_MULT: float | |
| CYCLE_DECAY: float | |
| CYCLE_LIMIT: int | |
| WARMUP_T: int | |
| K_DECAY: float | |
| LR_MIN: float | |
| LR_MIN_WARMUP: float | |
| class Optimizer(CN): | |
| NAME: str | |
| LR: float | |
| WEIGHT_DECAY: float | |
| SCHEDULER: Scheduler | |
| class Early_stop(CN): | |
| PATIENCE: int | |
| class Checkpoint(CN): | |
| SAVE_TOP_K: int | |
| REMOVE: bool | |
| LOAD_BEST_ON_VAL: bool | |
| LOAD_BEST_ON_END: bool | |
| class Callbacks(CN): | |
| EARLY_STOP: Early_stop | |
| CHECKPOINT: Checkpoint | |
| class Trainer(CN): | |
| DDP: bool | |
| PRECISION: int | |
| GRADIENT_CLIP_VAL: float | |
| MAX_EPOCHS: int | |
| MAX_STEPS: int | |
| ACCUMULATE_GRAD_BATCHES: int | |
| VAL_CHECK_INTERVAL: float | |
| LIMIT_TRAIN_BATCHES: float | |
| LIMIT_VAL_BATCHES: float | |
| LOG_TRAIN_N_STEPS: int | |
| CALLBACKS: Callbacks | |
| class Model_soup(CN): | |
| USE: bool | |
| RECIPE: str | |
| GREEDY_TARGET: str | |
| class Analysis(CN): | |
| SAVE_NEURON_LOCATION: bool | |
| DRAW_NEURON_LOCATION: bool | |
| class AutoConfig(CN): | |
| DESCRIPTION: str | |
| EXPERIMENTAL: Experimental | |
| DATAMODULE: Datamodule | |
| DATASET: Dataset | |
| POSITION_ENCODING: Position_encoding | |
| MODEL: Model | |
| LOSS: Loss | |
| REGULARIZER: Regularizer | |
| OPTIMIZER: Optimizer | |
| TRAINER: Trainer | |
| MODEL_SOUP: Model_soup | |
| RESULTS_DIR: str | |
| CHECKPOINT_DIR: str | |
| ANALYSIS: Analysis | |