| import io | |
| from pathlib import Path | |
| import torch | |
| def save_tensor(tensor, name): | |
| f = io.BytesIO() | |
| torch.save(tensor, f, _use_new_zipfile_serialization=True) | |
| with open(name, "wb") as out_f: | |
| out_f.write(f.getbuffer()) | |
| def process_forward_dump(dump_path: Path, output_path: Path): | |
| output_path.mkdir(exist_ok=True, parents=True) | |
| data = torch.load(dump_path) | |
| arg_names = [ | |
| "bg", | |
| "means3D", | |
| "colors_precomp", | |
| "opacities", | |
| "scales", | |
| "rotations", | |
| "scale_modifier", | |
| "cov3Ds_precomp", | |
| "viewmatrix", | |
| "projmatrix", | |
| "tanfovx", | |
| "tanfovy", | |
| "image_height", | |
| "image_width", | |
| "sh", | |
| "sh_degree", | |
| "campos", | |
| "prefiltered", | |
| "debug", | |
| ] | |
| for tensor, name in zip(data, arg_names): | |
| save_tensor(tensor, str(output_path / name) + ".pt") | |
| def process_backward_dump(dump_path: Path, output_path: Path): | |
| output_path.mkdir(exist_ok=True, parents=True) | |
| data = torch.load(dump_path) | |
| arg_names = [ | |
| "bg", | |
| "means3D", | |
| "radii", | |
| "colors_precomp", | |
| "scales", | |
| "rotations", | |
| "scale_modifier", | |
| "cov3Ds_precomp", | |
| "viewmatrix", | |
| "projmatrix", | |
| "tanfovx", | |
| "tanfovy", | |
| "grad_out_color", | |
| "grad_depth", | |
| "grad_out_alpha", | |
| "sh", | |
| "sh_degree", | |
| "campos", | |
| "geomBuffer", | |
| "num_rendered", | |
| "binningBuffer", | |
| "imgBuffer", | |
| "alpha", | |
| "debug" | |
| ] | |
| for tensor, name in zip(data, arg_names): | |
| save_tensor(tensor, str(output_path / name) + ".pt") | |
| if __name__ == '__main__': | |
| global_path = Path("/home/vy/projects/gaussian-rasterizer/test_data") | |
| process_forward_dump(global_path / "snapshot_fw.dump", global_path / "forward_tensors") | |
| process_backward_dump(global_path / "snapshot_bw.dump", global_path / "backward_tensors") | |