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I used nvidia nvprof to profile a GPU application (Tensorflow video detection on a bunch of frames). I run the application twice with the same parameters but under different scenarios:

  1. First time: run the application on GPU without concurrent processes, i.e., single process running on one Tesla P100 GPU.
  2. Second time: run the application on GPU with concurrent processes (multiple instances of the same application in different processes).

The I use nvprof --print-api-summary or --print-gpu-summary to check the result. I found that for some API calls and kernel executions. The total number of executions or calls vary in the two scenarios.

For example, the number of API cudaLaunchKernel calls is 434480 without concurrent processes verses 432359 when with concurrent processes. You can also find the difference with the number of kernel executions, e.g., kernel maxwell_scudnn_winograd_128x128_ldg1_ldg4_tile148n_nt. What would be the reasons that lead to the difference?

/* without concurrent processes */ 
======== Profiling result:
        Type  Time(%)      Time     Calls       Avg       Min       Max  Name
  API calls:   32.13%  15.2177s    434480  35.025us  5.1550us  954.27ms  cudaLaunchKernel
               30.20%  14.3065s    942706  15.175us     361ns  77.372ms  cuEventRecord
/* with concurrent processes */
======== Profiling result:
        Type  Time(%)      Time     Calls       Avg       Min       Max  Name
  API calls:   31.72%  14.5519s    432359  33.657us  5.4570us  1.17663s  cudaLaunchKernel
               27.45%  12.5926s    942706  13.357us     361ns  67.868ms  cuEventRecord
 /* without concurrent processes */
======== Profiling result:
            Type  Time(%)      Time     Calls       Avg       Min       Max  Name
 GPU activities:   14.34%  1.21348s      6376  190.32us  46.016us  1.0832ms  maxwell_scudnn_winograd_128x128_ldg1_ldg4_tile148n_nt
                   12.04%  1.01899s      5777  176.39us  109.73us  554.62us  void cudnn::detail::implicit_convolve_sgemm<float, float, int=128, int=5, int=5, int=3, int=3, int=3, int=1, bool=1, bool=0, bool=1>(int, int, int, float const *, int, float*, cudnn::detail::implicit_convolve_sgemm<float, float, int=128, int=5, int=5, int=3, int=3, int=3, int=1, bool=1, bool=0, bool=1>*, kernel_conv_params, int, float, float, int, float, float, int, int)
/* with concurrent processes */
======== Profiling result:
            Type  Time(%)      Time     Calls       Avg       Min       Max  Name
 GPU activities:   14.15%  1.20310s      7292  164.99us  108.26us  2.7672ms  void cudnn::detail::implicit_convolve_sgemm<float, float, int=128, int=5, int=5, int=3, int=3, int=3, int=1, bool=1, bool=0, bool=1>(int, int, int, float const *, int, float*, cudnn::detail::implicit_convolve_sgemm<float, float, int=128, int=5, int=5, int=3, int=3, int=3, int=1, bool=1, bool=0, bool=1>*, kernel_conv_params, int, float, float, int, float, float, int, int)
                   12.41%  1.05525s      5164  204.35us  45.440us  3.5980ms  maxwell_scudnn_winograd_128x128_ldg1_ldg4_tile148n_nt

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