feat: Add parallel multi-GPU inference for VGGT inference in demo_colmap.py #445
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xiaoya27 wants to merge 1 commit intofacebookresearch:mainfrom
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feat: Add parallel multi-GPU inference for VGGT inference in demo_colmap.py #445xiaoya27 wants to merge 1 commit intofacebookresearch:mainfrom
demo_colmap.py #445xiaoya27 wants to merge 1 commit intofacebookresearch:mainfrom
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Adds optional multi-GPU mode that distributes VGGT inference across multiple GPUs using torch.multiprocessing for true parallel processing. Key changes: - Add --multi_gpu flag to enable parallel multi-GPU mode - Add --gpu_ids to specify which GPUs to use (default: all available) - Add _worker_process() for multiprocessing worker - Add run_VGGT_multi_gpu() for parallel inference orchestration - Use shared memory for efficient tensor transfer between processes - Add 'spawn' start method for CUDA compatibility in __main__ Multi-GPU benefits: - Memory: Each GPU loads only its shard (~55 frames instead of 221) - Speed: Near-linear speedup with parallel processing - Example: 221 images on 4 GPUs = ~55 frames/GPU, ~42GB peak each Usage: # All available GPUs python demo_colmap.py --scene_dir=/path/to/scene --multi_gpu # Specific GPUs python demo_colmap.py --scene_dir=/path/to/scene --multi_gpu --gpu_ids=0,1 Note: BA and tracking still run on single GPU after multi-GPU inference.
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Summary
Adds optional parallel multi-GPU mode for VGGT inference in
demo_colmap.pyusingtorch.multiprocessing. This enables processing large image sequences that would otherwise exceed single GPU memory.Motivation
VGGT inference on 221 images requires ~77GB VRAM, which exceeds the capacity of many GPUs. This PR allows distributing frames across multiple GPUs to:
Changes
--multi_gpuflag to enable parallel multi-GPU mode--gpu_idsto specify which GPUs to use (default: all available)_worker_process()for multiprocessing workersrun_VGGT_multi_gpu()for parallel inference orchestrationUsage