However, on GPU thecudaFreeroutinemay block its caller until all previously queued work on all GPUs completes. To avoid this bottleneck,PyTorch implements a custom allocator which incrementally builds up a cache of CUDA memoryand reassigns it to later allocations without further use of CUDA APIs.