I got the following problem. I want to measure the
gst_efficieny and the
gld_efficiency for my cuda application using
nvprof. The documentation distributed with cuda 5.0 tells me to generate these using the following formulas for devices with compute capability 2.0-3.0:
gld_efficiency = 100 * gld_requested_throughput/ gld_throughput gst_efficiency 100 * gst_requested_throughput / gst_throughput
For the required metrics the following formulas are given:
gld_throughput = ((128 * global_load_hit) + (l2_subp0_read_requests + l2_subp1_read_requests) * 32 - (l1_local_ld_miss * 128)) / gputime gst_throughput = (l2_subp0_write_requests + l2_subp1_write_requests) * 32 - (l1_local_ld_miss * 128)) / gputime gld_requested_throughput = (gld_inst_8bit + 2 * gld_inst_16bit + 4 * gld_inst_32bit + 8 * gld_inst_64bit + 16 * gld_inst_128bit) / gputime gst_requested_throughput = (gst_inst_8bit + 2 * gst_inst_16bit + 4 * gst_inst_32bit + 8 * gst_inst_64bit + 16 * gst_inst_128bit) / gputime
Since for the metrics used no formula is given I assume that these are events which can be counted by nvprof. But some of the events seem not to be available on my gtx 460 (also tried gtx 560 Ti). I pasted the output of
Any ideas what's going wrong or what I'm misinterpreting?
I don't want to use CUDA Visual Profiler, since I'm trying to analyse my application for different parameters. I therefore want to run
nvprof using multiple parameter configurations, recording multiple events (each one in its one run) and then output the data in tables. I got this automated already and working for other metrics (i.e. instructions issued) and want to do this for load and store efficiency. This is why I'm not interested in solution involving
nvvp. By the way, for my application
nvvp fails to calculate the metrics required for store-efficiency so it doesn't help my at all in this case.