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from typing import Optional, Callable, Union, Tuple, Any, Dict, NamedTuple |
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import torch |
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from torch import nn |
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from timm.models import create_model, VisionTransformer |
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from .enable_cpe_support import enable_cpe |
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from .input_conditioner import InputConditioner |
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from . import extra_timm_models |
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from .adaptor_base import AdaptorBase, RadioOutput, AdaptorInput |
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from . import eradio_model |
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from .enable_spectral_reparam import configure_spectral_reparam_from_args |
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class Resolution(NamedTuple): |
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height: int |
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width: int |
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class RADIOModel(nn.Module): |
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def __init__( |
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self, |
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model: nn.Module, |
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input_conditioner: InputConditioner, |
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patch_size: int, |
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max_resolution: int, |
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preferred_resolution: Resolution, |
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summary_idxs: Optional[torch.Tensor] = None, |
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window_size: int = None, |
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adaptors: Dict[str, AdaptorBase] = None, |
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): |
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super().__init__() |
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self.model = model |
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self.input_conditioner = input_conditioner |
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if summary_idxs is not None: |
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self.register_buffer('summary_idxs', summary_idxs) |
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else: |
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self.summary_idxs = None |
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self._preferred_resolution = preferred_resolution |
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self._patch_size = patch_size |
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self._max_resolution = max_resolution |
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self._window_size = window_size |
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adaptors = adaptors or dict() |
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self.adaptors = nn.ModuleDict(adaptors) |
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@property |
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def num_summary_tokens(self) -> int: |
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patch_gen = getattr(self.model, "patch_generator", None) |
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if patch_gen is not None: |
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return patch_gen.num_skip |
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elif self.model.global_pool == 'avg': |
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return 0 |
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return 1 |
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@property |
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def patch_size(self) -> int: |
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return self._patch_size |
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@property |
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def max_resolution(self) -> int: |
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return self._max_resolution |
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@property |
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def preferred_resolution(self) -> Resolution: |
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return self._preferred_resolution |
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@property |
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def window_size(self) -> int: |
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return self._window_size |
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@property |
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def min_resolution_step(self) -> int: |
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res = self.patch_size |
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if self.window_size is not None: |
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res *= self.window_size |
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return res |
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def make_preprocessor_external(self) -> Callable[[torch.Tensor], torch.Tensor]: |
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ret = self.input_conditioner |
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self.input_conditioner = nn.Identity() |
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return ret |
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def get_nearest_supported_resolution(self, height: int, width: int) -> Resolution: |
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height = int(round(height / self.min_resolution_step) * self.min_resolution_step) |
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width = int(round(width / self.min_resolution_step) * self.min_resolution_step) |
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height = max(height, self.min_resolution_step) |
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width = max(width, self.min_resolution_step) |
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return Resolution(height=height, width=width) |
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def switch_to_deploy(self): |
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fn = getattr(self.model, 'switch_to_deploy', None) |
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if fn is not None: |
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fn() |
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def forward(self, x: torch.Tensor) -> Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]: |
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x = self.input_conditioner(x) |
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y = self.model.forward_features(x) |
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if isinstance(self.model, VisionTransformer): |
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patch_gen = getattr(self.model, "patch_generator", None) |
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if patch_gen is not None: |
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all_summary = y[:, : patch_gen.num_cls_tokens] |
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if self.summary_idxs is not None: |
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bb_summary = all_summary[:, self.summary_idxs] |
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else: |
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bb_summary = all_summary |
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all_feat = y[:, patch_gen.num_skip :] |
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elif self.model.global_pool == "avg": |
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all_summary = y[:, self.model.num_prefix_tokens :].mean(dim=1) |
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bb_summary = all_summary |
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all_feat = y |
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else: |
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all_summary = y[:, 0] |
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bb_summary = all_summary |
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all_feat = y[:, 1:] |
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elif isinstance(self.model, eradio_model.ERADIO): |
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_, f = y |
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all_feat = f.flatten(2).transpose(1, 2) |
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all_summary = all_feat.mean(dim=1) |
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bb_summary = all_summary |
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elif isinstance(y, (list, tuple)): |
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all_summary, all_feat = y |
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bb_summary = all_summary |
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else: |
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raise ValueError("Unsupported model type") |
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all_feat = all_feat.float() |
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ret = RadioOutput(bb_summary.flatten(1), all_feat).to(torch.float32) |
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if self.adaptors: |
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ret = dict(backbone=ret) |
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for name, adaptor in self.adaptors.items(): |
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if all_summary.ndim == 3: |
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summary = all_summary[:, adaptor.head_idx] |
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else: |
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summary = all_summary |
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ada_input = AdaptorInput(images=x, summary=summary.float(), features=all_feat) |
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v = adaptor(ada_input).to(torch.float32) |
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ret[name] = v |
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return ret |
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def create_model_from_args(args) -> nn.Module: |
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in_chans = 3 |
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if args.in_chans is not None: |
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in_chans = args.in_chans |
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elif args.input_size is not None: |
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in_chans = args.input_size[0] |
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weight_init = args.model_kwargs.pop("weight_init", "skip") |
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model = create_model( |
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args.model, |
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pretrained=args.pretrained, |
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in_chans=in_chans, |
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num_classes=args.num_classes, |
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drop_rate=args.drop, |
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drop_path_rate=args.drop_path, |
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drop_block_rate=args.drop_block, |
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global_pool=args.gp, |
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bn_momentum=args.bn_momentum, |
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bn_eps=args.bn_eps, |
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scriptable=args.torchscript, |
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checkpoint_path=args.initial_checkpoint, |
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weight_init=weight_init, |
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**args.model_kwargs, |
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) |
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if hasattr(model, 'norm') and not getattr(args, 'model_norm', False): |
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model.norm = nn.Identity() |
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model.head = nn.Identity() |
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assert ( |
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not args.cls_token_per_teacher or args.cpe_max_size is not None |
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), "CPE must be enabled for multiple CLS tokens!" |
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if args.cpe_max_size is not None: |
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enable_cpe( |
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model, |
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args.cpe_max_size, |
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num_cls_tokens=len(args.teachers) if args.cls_token_per_teacher else 1, |
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register_multiple=args.register_multiple, |
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) |
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if args.spectral_reparam: |
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configure_spectral_reparam_from_args(model, args) |
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return model |
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