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https://github.com/finegrain-ai/refiners.git
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471ef91d1c
PyTorch chose to make it Any because they expect its users' code to be "highly dynamic": https://github.com/pytorch/pytorch/pull/104321 It is not the case for us, in Refiners having untyped code goes contrary to one of our core principles. Note that there is currently an open PR in PyTorch to return `Module | Tensor`, but in practice this is not always correct either: https://github.com/pytorch/pytorch/pull/115074 I also moved Residuals-related code from SD1 to latent_diffusion because SDXL should not depend on SD1.
270 lines
9.9 KiB
Python
270 lines
9.9 KiB
Python
import argparse
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import types
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from typing import Any, Callable, cast
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import torch
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import torch.nn as nn
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from segment_anything import build_sam_vit_h # type: ignore
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from segment_anything.modeling.common import LayerNorm2d # type: ignore
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from torch import Tensor
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import refiners.fluxion.layers as fl
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from refiners.fluxion.model_converter import ModelConverter
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from refiners.fluxion.utils import load_tensors, manual_seed, save_to_safetensors
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from refiners.foundationals.segment_anything.image_encoder import PositionalEncoder, SAMViTH
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from refiners.foundationals.segment_anything.mask_decoder import MaskDecoder
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from refiners.foundationals.segment_anything.prompt_encoder import MaskEncoder, PointEncoder
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class FacebookSAM(nn.Module):
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image_encoder: nn.Module
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prompt_encoder: nn.Module
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mask_decoder: nn.Module
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build_sam_vit_h = cast(Callable[[], FacebookSAM], build_sam_vit_h)
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assert issubclass(LayerNorm2d, nn.Module)
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custom_layers = {LayerNorm2d: fl.LayerNorm2d}
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class Args(argparse.Namespace):
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source_path: str
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output_path: str
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half: bool
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verbose: bool
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def convert_mask_encoder(prompt_encoder: nn.Module) -> dict[str, Tensor]:
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manual_seed(seed=0)
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refiners_mask_encoder = MaskEncoder()
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converter = ModelConverter(
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source_model=prompt_encoder.mask_downscaling,
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target_model=refiners_mask_encoder,
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custom_layer_mapping=custom_layers, # type: ignore
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)
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x = torch.randn(1, 256, 256)
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mapping = converter.map_state_dicts(source_args=(x,))
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assert mapping
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source_state_dict = prompt_encoder.mask_downscaling.state_dict()
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target_state_dict = refiners_mask_encoder.state_dict()
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# Mapping handled manually (see below) because nn.Parameter is a special case
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del target_state_dict["no_mask_embedding"]
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converted_source = converter._convert_state_dict( # pyright: ignore[reportPrivateUsage]
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source_state_dict=source_state_dict, target_state_dict=target_state_dict, state_dict_mapping=mapping
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)
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state_dict: dict[str, Tensor] = {
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"no_mask_embedding": nn.Parameter(data=prompt_encoder.no_mask_embed.weight.clone()), # type: ignore
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}
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state_dict.update(converted_source)
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refiners_mask_encoder.load_state_dict(state_dict=state_dict)
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return state_dict
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def convert_point_encoder(prompt_encoder: nn.Module) -> dict[str, Tensor]:
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manual_seed(seed=0)
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point_embeddings: list[Tensor] = [pe.weight for pe in prompt_encoder.point_embeddings] + [
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prompt_encoder.not_a_point_embed.weight
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] # type: ignore
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pe = prompt_encoder.pe_layer.positional_encoding_gaussian_matrix # type: ignore
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assert isinstance(pe, Tensor)
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state_dict: dict[str, Tensor] = {
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"Residual.PointTypeEmbedding.weight": nn.Parameter(data=torch.cat(tensors=point_embeddings, dim=0)),
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"CoordinateEncoder.Linear.weight": nn.Parameter(data=pe.T.contiguous()),
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}
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refiners_prompt_encoder = PointEncoder()
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refiners_prompt_encoder.load_state_dict(state_dict=state_dict)
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return state_dict
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def convert_vit(vit: nn.Module) -> dict[str, Tensor]:
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manual_seed(seed=0)
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refiners_sam_vit_h = SAMViTH()
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converter = ModelConverter(
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source_model=vit,
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target_model=refiners_sam_vit_h,
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custom_layer_mapping=custom_layers, # type: ignore
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)
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converter.skip_init_check = True
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x = torch.randn(1, 3, 1024, 1024)
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mapping = converter.map_state_dicts(source_args=(x,))
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assert mapping
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mapping["PositionalEncoder.Parameter.weight"] = "pos_embed"
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target_state_dict = refiners_sam_vit_h.state_dict()
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del target_state_dict["PositionalEncoder.Parameter.weight"]
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source_state_dict = vit.state_dict()
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pos_embed = source_state_dict["pos_embed"]
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del source_state_dict["pos_embed"]
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target_rel_keys = [
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(
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f"Transformer.TransformerLayer_{i}.Residual_1.FusedSelfAttention.RelativePositionAttention.horizontal_embedding",
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f"Transformer.TransformerLayer_{i}.Residual_1.FusedSelfAttention.RelativePositionAttention.vertical_embedding",
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)
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for i in range(1, 33)
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]
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source_rel_keys = [(f"blocks.{i}.attn.rel_pos_w", f"blocks.{i}.attn.rel_pos_h") for i in range(32)]
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rel_items: dict[str, Tensor] = {}
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for (key_w, key_h), (target_key_w, target_key_h) in zip(source_rel_keys, target_rel_keys):
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rel_items[target_key_w] = source_state_dict[key_w]
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rel_items[target_key_h] = source_state_dict[key_h]
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del source_state_dict[key_w]
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del source_state_dict[key_h]
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del target_state_dict[target_key_w]
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del target_state_dict[target_key_h]
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converted_source = converter._convert_state_dict( # pyright: ignore[reportPrivateUsage]
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source_state_dict=source_state_dict, target_state_dict=target_state_dict, state_dict_mapping=mapping
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)
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positional_encoder = refiners_sam_vit_h.layer("PositionalEncoder", PositionalEncoder)
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embed = pos_embed.reshape_as(positional_encoder.layer("Parameter", fl.Parameter).weight)
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converted_source["PositionalEncoder.Parameter.weight"] = embed # type: ignore
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converted_source.update(rel_items)
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refiners_sam_vit_h.load_state_dict(state_dict=converted_source)
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assert converter.compare_models((x,), threshold=1e-2)
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return converted_source
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def convert_mask_decoder(mask_decoder: nn.Module) -> dict[str, Tensor]:
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manual_seed(seed=0)
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refiners_mask_decoder = MaskDecoder()
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image_embedding = torch.randn(1, 256, 64, 64)
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dense_positional_embedding = torch.randn(1, 256, 64, 64)
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point_embedding = torch.randn(1, 3, 256)
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mask_embedding = torch.randn(1, 256, 64, 64)
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from segment_anything.modeling.common import LayerNorm2d # type: ignore
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import refiners.fluxion.layers as fl
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assert issubclass(LayerNorm2d, nn.Module)
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custom_layers = {LayerNorm2d: fl.LayerNorm2d}
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converter = ModelConverter(
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source_model=mask_decoder,
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target_model=refiners_mask_decoder,
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custom_layer_mapping=custom_layers, # type: ignore
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)
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inputs = {
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"image_embeddings": image_embedding,
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"image_pe": dense_positional_embedding,
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"sparse_prompt_embeddings": point_embedding,
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"dense_prompt_embeddings": mask_embedding,
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"multimask_output": True,
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}
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refiners_mask_decoder.set_image_embedding(image_embedding)
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refiners_mask_decoder.set_point_embedding(point_embedding)
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refiners_mask_decoder.set_mask_embedding(mask_embedding)
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refiners_mask_decoder.set_dense_positional_embedding(dense_positional_embedding)
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mapping = converter.map_state_dicts(source_args=inputs, target_args={})
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assert mapping is not None
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mapping["IOUMaskEncoder"] = "iou_token"
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state_dict = converter._convert_state_dict( # type: ignore
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source_state_dict=mask_decoder.state_dict(),
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target_state_dict=refiners_mask_decoder.state_dict(),
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state_dict_mapping=mapping,
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)
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state_dict["IOUMaskEncoder.weight"] = torch.cat(
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tensors=[mask_decoder.iou_token.weight, mask_decoder.mask_tokens.weight], dim=0
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) # type: ignore
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refiners_mask_decoder.load_state_dict(state_dict=state_dict)
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refiners_mask_decoder.set_image_embedding(image_embedding)
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refiners_mask_decoder.set_point_embedding(point_embedding)
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refiners_mask_decoder.set_mask_embedding(mask_embedding)
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refiners_mask_decoder.set_dense_positional_embedding(dense_positional_embedding)
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# Perform (1) upscaling then (2) mask prediction in this order (= like in the official implementation) to make
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# `compare_models` happy (MaskPrediction's Matmul runs those in the reverse order by default)
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matmul = refiners_mask_decoder.ensure_find(fl.Matmul)
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def forward_swapped_order(self: Any, *args: Any) -> Any:
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y = self[1](*args) # (1)
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x = self[0](*args) # (2)
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return torch.matmul(input=x, other=y)
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matmul.forward = types.MethodType(forward_swapped_order, matmul)
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assert converter.compare_models(source_args=inputs, target_args={}, threshold=1e-3)
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return state_dict
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def main() -> None:
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parser = argparse.ArgumentParser(description="Converts a Segment Anything ViT model to a Refiners SAMViTH model")
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parser.add_argument(
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"--from",
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type=str,
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dest="source_path",
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default="sam_vit_h_4b8939.pth",
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# required=True,
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help="Path to the Segment Anything model weights",
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)
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parser.add_argument(
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"--to",
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type=str,
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dest="output_path",
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default="segment-anything-h.safetensors",
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help="Output path for converted model (as safetensors).",
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)
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parser.add_argument("--half", action="store_true", default=False, help="Convert to half precision. Default: False")
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parser.add_argument(
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"--verbose",
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action="store_true",
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default=False,
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help="Prints additional information during conversion. Default: False",
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)
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args = parser.parse_args(namespace=Args())
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sam_h = build_sam_vit_h() # type: ignore
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sam_h.load_state_dict(state_dict=load_tensors(args.source_path))
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vit_state_dict = convert_vit(vit=sam_h.image_encoder)
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mask_decoder_state_dict = convert_mask_decoder(mask_decoder=sam_h.mask_decoder)
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point_encoder_state_dict = convert_point_encoder(prompt_encoder=sam_h.prompt_encoder)
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mask_encoder_state_dict = convert_mask_encoder(prompt_encoder=sam_h.prompt_encoder)
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output_state_dict = {
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**{".".join(("image_encoder", key)): value for key, value in vit_state_dict.items()},
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**{".".join(("mask_decoder", key)): value for key, value in mask_decoder_state_dict.items()},
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**{".".join(("point_encoder", key)): value for key, value in point_encoder_state_dict.items()},
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**{".".join(("mask_encoder", key)): value for key, value in mask_encoder_state_dict.items()},
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}
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if args.half:
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output_state_dict = {key: value.half() for key, value in output_state_dict.items()}
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save_to_safetensors(path=args.output_path, tensors=output_state_dict)
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if __name__ == "__main__":
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main()
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