device management ================== FLAGS_paddle_num_threads ******************************************* (since 0.15.0) Control the number of threads of each paddle instance. Values accepted --------------- Int32. The default value is 1. Example ------- FLAGS_paddle_num_threads=2 will enable 2 threads as max number of threads for each instance. FLAGS_selected_gpus ******************************************* (since 1.3) Set the GPU devices used for training or inference. Values accepted --------------- A comma-separated list of device IDs, where each device ID is a nonnegative integer less than the number of GPU devices your machine have. Example ------- FLAGS_selected_gpus=0,1,2,3,4,5,6,7 makes GPU devices 0-7 to be used for training or inference. Note ------- The reason for using this flag is that we want to use collective communication between GPU devices, but with CUDA_VISIBLE_DEVICES can only use share-memory.