blob: f4683d7d877e2b6e0602ab61c26b41d45708c30e [file] [log] [blame]
{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"<font size=\"9\">Kernel Functions Profiling</font><br>\n",
"<hr>"
]
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"%load_ext autoreload\n",
"%autoreload 2"
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"import logging\n",
"from conf import LisaLogging\n",
"LisaLogging.setup()"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {
"collapsed": false
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Populating the interactive namespace from numpy and matplotlib\n"
]
}
],
"source": [
"# Generate plots inline\n",
"%pylab inline\n",
"\n",
"import json\n",
"import os\n",
"\n",
"import re\n",
"import collections\n",
"import pandas\n",
"\n",
"# Support to tests execution\n",
"from executor import Executor\n",
"from env import TestEnv"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Tests configuration"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {
"collapsed": false
},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"01:43:51 INFO : Target - Using base path: /home/bjackman/sources/lisa\n",
"01:43:51 INFO : Target - Loading custom (inline) target configuration\n",
"01:43:51 INFO : Target - Loading custom (inline) test configuration\n",
"01:43:51 INFO : Target - Devlib modules to load: ['bl', 'cpufreq']\n",
"01:43:51 INFO : Target - Connecting linux target:\n",
"01:43:51 INFO : Target - username : brendan\n",
"01:43:51 INFO : Target - host : 192.168.0.1\n",
"01:43:51 INFO : Target - password : \n",
"01:43:51 INFO : Target - Connection settings:\n",
"01:43:51 INFO : Target - {'username': 'brendan', 'host': '192.168.0.1', 'password': ''}\n",
"01:43:58 INFO : Target - Initializing target workdir:\n",
"01:43:58 INFO : Target - /home/brendan/devlib-target\n",
"01:44:04 INFO : Target - Topology:\n",
"01:44:04 INFO : Target - [[0, 3, 4, 5], [1, 2]]\n",
"01:44:07 INFO : Platform - Loading default EM:\n",
"01:44:07 INFO : Platform - /home/bjackman/sources/lisa/libs/utils/platforms/juno.json\n",
"01:44:11 INFO : FTrace - Enabled tracepoints:\n",
"01:44:11 INFO : FTrace - sched:*\n",
"01:44:11 INFO : FTrace - Kernel functions profiled:\n",
"01:44:11 INFO : FTrace - select_task_rq_fair\n",
"01:44:11 INFO : FTrace - enqueue_task_fair\n",
"01:44:11 INFO : FTrace - dequeue_task_fair\n",
"01:44:11 WARNING : Target - Using configuration provided RTApp calibration\n",
"01:44:11 INFO : Target - Using RT-App calibration values:\n",
"01:44:11 INFO : Target - {\"0\": 358, \"1\": 138, \"2\": 138, \"3\": 357, \"4\": 359, \"5\": 355}\n",
"01:44:11 WARNING : TestEnv - Wipe previous contents of the results folder:\n",
"01:44:11 WARNING : TestEnv - /home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\n",
"01:44:11 INFO : HWMon - HWMON module not enabled\n",
"01:44:11 WARNING : HWMon - Energy sampling disabled by configuration\n",
"01:44:11 INFO : TestEnv - Set results folder to:\n",
"01:44:11 INFO : TestEnv - /home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\n",
"01:44:11 INFO : TestEnv - Experiment results available also in:\n",
"01:44:11 INFO : TestEnv - /home/bjackman/sources/lisa/results_latest\n"
]
}
],
"source": [
"# Setup a target configuration\n",
"target_conf = {\n",
"\n",
" # Platform and board to target\n",
" \"platform\" : \"linux\",\n",
" \"board\" : \"juno\",\n",
"\n",
" # Login credentials\n",
" \"host\" : \"192.168.0.1\",\n",
" \"username\" : \"brendan\",\n",
" \"password\" : \"\",\n",
"\n",
" # Local installation path\n",
" \"tftp\" : {\n",
" \"folder\" : \"/var/lib/tftpboot\",\n",
" \"kernel\" : \"kern.bin\",\n",
" \"dtb\" : \"dtb.bin\",\n",
" },\n",
"\n",
" # RTApp calibration values (comment to let LISA do a calibration run)\n",
" \"rtapp-calib\" : {\n",
" \"0\": 358, \"1\": 138, \"2\": 138, \"3\": 357, \"4\": 359, \"5\": 355\n",
" },\n",
"\n",
"}\n",
"\n",
"test_conf = {\n",
" # Tools to deploy\n",
" \"tools\" : [ \"rt-app\", 'trace-cmd' ],\n",
" \n",
" # Where results are collected\n",
" # NOTE: this folder will be wiped before running the experiments\n",
" \"results_dir\" : \"KernelFunctionsProfilingExample\",\n",
"\n",
" # Modules required by these experiments\n",
" \"exclude_modules\" : [ \"hwmon\" ],\n",
" \n",
" # Kernel functions to profile for all the test\n",
" # configurations which have the \"ftrace\" flag enabled\n",
" \"ftrace\" : {\n",
" \"functions\" : [\n",
" \"select_task_rq_fair\",\n",
" \"enqueue_task_fair\",\n",
" \"dequeue_task_fair\",\n",
" ],\n",
" \"buffsize\" : 80 * 1024,\n",
" },\n",
"}\n",
"\n",
"env = TestEnv(target_conf, test_conf)"
]
},
{
"cell_type": "code",
"execution_count": 9,
"metadata": {
"collapsed": false
},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"01:50:59 INFO : Target - Loading custom (inline) test configuration\n",
"01:50:59 INFO : \n",
"01:50:59 INFO : ################################################################################\n",
"01:50:59 INFO : Executor - Experiments configuration\n",
"01:50:59 INFO : ################################################################################\n",
"01:50:59 INFO : Executor - Configured to run:\n",
"01:50:59 INFO : Executor - 2 target configurations:\n",
"01:50:59 INFO : Executor - base, eas\n",
"01:50:59 INFO : Executor - 1 workloads (3 iterations each)\n",
"01:50:59 INFO : Executor - rta\n",
"01:50:59 INFO : Executor - Total: 6 experiments\n",
"01:50:59 INFO : Executor - Results will be collected under:\n",
"01:50:59 INFO : Executor - /home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\n"
]
}
],
"source": [
"# Setup tests executions based on our configuration\n",
" \n",
"tests_conf = {\n",
" # Platform configurations to test\n",
" \"confs\" : [\n",
" {\n",
" \"tag\" : \"base\",\n",
" \"flags\" : \"ftrace\",\n",
" \"sched_features\" : \"NO_ENERGY_AWARE\",\n",
" \"cpufreq\" : {\n",
" \"governor\" : \"performance\",\n",
" },\n",
" # provide a set of files and values to write into them\n",
" \"files\" : {\n",
" # if filenames start with !/ then we verify that the content\n",
" # matches what we wrote and raise an exception if it does not.\n",
" # All filenames without an initial decorator are not verified,\n",
" # and we do not assert that the write was allowed\n",
" # (i,e, the file existed, we have write permission, etc.)\n",
" # this means we can use this for sysctls or other files whose\n",
" # presence or permissions might depend upon kernel config or\n",
" # OS support and we reasonably can proceed for either case.\n",
" '/this_file_doesnt_exist_and_we_dont_care' : '1',\n",
" '/proc/sys/kernel/sched_is_big_little' : '0',\n",
" '/proc/sys/kernel/sched_initial_task_util' : '1023',\n",
" '/proc/sys/kernel/sched_use_walt_cpu_util' : '0',\n",
" '/proc/sys/kernel/sched_use_walt_task_util' : '0',\n",
" '/proc/sys/kernel/sched_cstate_aware' : '1',\n",
" '/proc/sys/kernel/sched_walt_cpu_high_irqload' : '10000000',\n",
" '/proc/sys/kernel/sched_init_task_load_pct' : '15',\n",
" '!/proc/sys/kernel/sched_latency_ns' : '10000000',\n",
" '!/proc/sys/kernel/sched_migration_cost_ns' : '500000',\n",
" },\n",
" },\n",
" {\n",
" \"tag\" : \"eas\",\n",
" \"flags\" : \"ftrace\",\n",
" \"sched_features\" : \"ENERGY_AWARE\",\n",
" \"cpufreq\" : {\n",
" \"governor\" : \"performance\",\n",
" },\n",
" \"files\" : {\n",
" '/proc/sys/kernel/sched_is_big_little' : '1',\n",
" '/proc/sys/kernel/sched_initial_task_util' : '1023',\n",
" '/proc/sys/kernel/sched_use_walt_cpu_util' : '0',\n",
" '/proc/sys/kernel/sched_use_walt_task_util' : '0',\n",
" '/proc/sys/kernel/sched_cstate_aware' : '1',\n",
" '/proc/sys/kernel/sched_walt_cpu_high_irqload' : '10000000',\n",
" '/proc/sys/kernel/sched_init_task_load_pct' : '15',\n",
" '!/proc/sys/kernel/sched_latency_ns' : '10000000',\n",
" '!/proc/sys/kernel/sched_migration_cost_ns' : '500000',\n",
" },\n",
" },\n",
" ],\n",
" \n",
" # Workloads to run (on each platform configuration)\n",
" \"wloads\" : {\n",
" \"rta\" : {\n",
" \"type\" : \"rt-app\",\n",
" \"conf\" : {\n",
" \"class\" : \"profile\",\n",
" \"params\" : {\n",
" \"p20\" : {\n",
" \"kind\" : \"Periodic\",\n",
" \"params\" : {\n",
" \"duty_cycle_pct\" : 20,\n",
" },\n",
" \"tasks\" : \"cpus\",\n",
" },\n",
" },\n",
" },\n",
" },\n",
" },\n",
" \n",
" # Number of iterations for each configuration/workload pair\n",
" \"iterations\" : 3,\n",
"}\n",
"\n",
"executor = Executor(env, tests_conf)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Tests execution"
]
},
{
"cell_type": "code",
"execution_count": 10,
"metadata": {
"collapsed": false,
"scrolled": true
},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"01:51:01 INFO : \n",
"01:51:01 INFO : ################################################################################\n",
"01:51:01 INFO : Executor - Experiments execution\n",
"01:51:01 INFO : ################################################################################\n",
"01:51:01 INFO : \n",
"01:51:01 INFO : ================================================================================\n",
"01:51:01 INFO : TargetConfig - configuring target for [base] experiments\n",
"01:51:03 INFO : SchedFeatures - Set scheduler feature: NO_ENERGY_AWARE\n",
"01:51:04 INFO : CPUFreq - Configuring all CPUs to use [performance] governor\n",
"01:51:05 INFO : WlGen - Setup new workload rta\n",
"01:51:05 INFO : RTApp - Workload duration defined by longest task\n",
"01:51:05 INFO : RTApp - Default policy: SCHED_OTHER\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p200], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p201], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p202], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p203], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p204], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:05 INFO : RTApp - ------------------------\n",
"01:51:05 INFO : RTApp - task [task_p205], sched: using default policy\n",
"01:51:05 INFO : RTApp - | calibration CPU: 1\n",
"01:51:05 INFO : RTApp - | loops count: 1\n",
"01:51:05 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:51:05 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:51:05 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:51:06 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:51:06 INFO : Executor - Experiment 0/6, [base:rta] 1/3\n",
"01:51:06 WARNING : Executor - FTrace events collection enabled\n",
"01:51:17 INFO : WlGen - Workload execution START:\n",
"01:51:17 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:51:30 INFO : Executor - Collected FTrace binary trace:\n",
"01:51:30 INFO : Executor - <res_dir>/rtapp:base:rta/1/trace.dat\n",
"01:51:31 INFO : Executor - Collected FTrace function profiling:\n",
"01:51:31 INFO : Executor - <res_dir>/rtapp:base:rta/1/trace_stat.json\n",
"01:51:31 INFO : --------------------------------------------------------------------------------\n",
"01:51:31 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:51:31 INFO : Executor - Experiment 1/6, [base:rta] 2/3\n",
"01:51:31 WARNING : Executor - FTrace events collection enabled\n",
"01:51:43 INFO : WlGen - Workload execution START:\n",
"01:51:43 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:51:52 INFO : Executor - Collected FTrace binary trace:\n",
"01:51:52 INFO : Executor - <res_dir>/rtapp:base:rta/2/trace.dat\n",
"01:51:53 INFO : Executor - Collected FTrace function profiling:\n",
"01:51:53 INFO : Executor - <res_dir>/rtapp:base:rta/2/trace_stat.json\n",
"01:51:53 INFO : --------------------------------------------------------------------------------\n",
"01:51:53 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:51:53 INFO : Executor - Experiment 2/6, [base:rta] 3/3\n",
"01:51:53 WARNING : Executor - FTrace events collection enabled\n",
"01:52:05 INFO : WlGen - Workload execution START:\n",
"01:52:05 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:52:19 INFO : Executor - Collected FTrace binary trace:\n",
"01:52:19 INFO : Executor - <res_dir>/rtapp:base:rta/3/trace.dat\n",
"01:52:20 INFO : Executor - Collected FTrace function profiling:\n",
"01:52:20 INFO : Executor - <res_dir>/rtapp:base:rta/3/trace_stat.json\n",
"01:52:20 INFO : --------------------------------------------------------------------------------\n",
"01:52:20 INFO : \n",
"01:52:20 INFO : ================================================================================\n",
"01:52:20 INFO : TargetConfig - configuring target for [eas] experiments\n",
"01:52:22 INFO : SchedFeatures - Set scheduler feature: ENERGY_AWARE\n",
"01:52:23 INFO : CPUFreq - Configuring all CPUs to use [performance] governor\n",
"01:52:24 INFO : WlGen - Setup new workload rta\n",
"01:52:24 INFO : RTApp - Workload duration defined by longest task\n",
"01:52:24 INFO : RTApp - Default policy: SCHED_OTHER\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p200], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p201], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p202], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p203], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p204], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : RTApp - ------------------------\n",
"01:52:24 INFO : RTApp - task [task_p205], sched: using default policy\n",
"01:52:24 INFO : RTApp - | calibration CPU: 1\n",
"01:52:24 INFO : RTApp - | loops count: 1\n",
"01:52:24 INFO : RTApp - + phase_000001: duration 1.000000 [s] (10 loops)\n",
"01:52:24 INFO : RTApp - | period 100000 [us], duty_cycle 20 %\n",
"01:52:24 INFO : RTApp - | run_time 20000 [us], sleep_time 80000 [us]\n",
"01:52:24 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:52:24 INFO : Executor - Experiment 0/6, [base:rta] 1/3\n",
"01:52:24 WARNING : Executor - FTrace events collection enabled\n",
"01:52:37 INFO : WlGen - Workload execution START:\n",
"01:52:37 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:52:47 INFO : Executor - Collected FTrace binary trace:\n",
"01:52:47 INFO : Executor - <res_dir>/rtapp:base:rta/1/trace.dat\n",
"01:52:48 INFO : Executor - Collected FTrace function profiling:\n",
"01:52:48 INFO : Executor - <res_dir>/rtapp:base:rta/1/trace_stat.json\n",
"01:52:48 INFO : --------------------------------------------------------------------------------\n",
"01:52:48 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:52:48 INFO : Executor - Experiment 1/6, [base:rta] 2/3\n",
"01:52:48 WARNING : Executor - FTrace events collection enabled\n",
"01:53:00 INFO : WlGen - Workload execution START:\n",
"01:53:00 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:53:12 INFO : Executor - Collected FTrace binary trace:\n",
"01:53:12 INFO : Executor - <res_dir>/rtapp:base:rta/2/trace.dat\n",
"01:53:13 INFO : Executor - Collected FTrace function profiling:\n",
"01:53:13 INFO : Executor - <res_dir>/rtapp:base:rta/2/trace_stat.json\n",
"01:53:13 INFO : --------------------------------------------------------------------------------\n",
"01:53:13 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:53:13 INFO : Executor - Experiment 2/6, [base:rta] 3/3\n",
"01:53:13 WARNING : Executor - FTrace events collection enabled\n",
"01:53:25 INFO : WlGen - Workload execution START:\n",
"01:53:25 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:53:35 INFO : Executor - Collected FTrace binary trace:\n",
"01:53:35 INFO : Executor - <res_dir>/rtapp:base:rta/3/trace.dat\n",
"01:53:36 INFO : Executor - Collected FTrace function profiling:\n",
"01:53:36 INFO : Executor - <res_dir>/rtapp:base:rta/3/trace_stat.json\n",
"01:53:36 INFO : --------------------------------------------------------------------------------\n",
"01:53:36 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:53:36 INFO : Executor - Experiment 3/6, [eas:rta] 1/3\n",
"01:53:36 WARNING : Executor - FTrace events collection enabled\n",
"01:53:48 INFO : WlGen - Workload execution START:\n",
"01:53:48 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:53:57 INFO : Executor - Collected FTrace binary trace:\n",
"01:53:57 INFO : Executor - <res_dir>/rtapp:eas:rta/1/trace.dat\n",
"01:53:58 INFO : Executor - Collected FTrace function profiling:\n",
"01:53:58 INFO : Executor - <res_dir>/rtapp:eas:rta/1/trace_stat.json\n",
"01:53:58 INFO : --------------------------------------------------------------------------------\n",
"01:53:58 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:53:58 INFO : Executor - Experiment 4/6, [eas:rta] 2/3\n",
"01:53:58 WARNING : Executor - FTrace events collection enabled\n",
"01:54:10 INFO : WlGen - Workload execution START:\n",
"01:54:10 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:54:22 INFO : Executor - Collected FTrace binary trace:\n",
"01:54:22 INFO : Executor - <res_dir>/rtapp:eas:rta/2/trace.dat\n",
"01:54:23 INFO : Executor - Collected FTrace function profiling:\n",
"01:54:23 INFO : Executor - <res_dir>/rtapp:eas:rta/2/trace_stat.json\n",
"01:54:23 INFO : --------------------------------------------------------------------------------\n",
"01:54:23 INFO : ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~\n",
"01:54:23 INFO : Executor - Experiment 5/6, [eas:rta] 3/3\n",
"01:54:23 WARNING : Executor - FTrace events collection enabled\n",
"01:54:35 INFO : WlGen - Workload execution START:\n",
"01:54:35 INFO : WlGen - /home/brendan/devlib-target/bin/rt-app /home/brendan/devlib-target/run_dir/rta_00.json 2>&1\n",
"01:54:45 INFO : Executor - Collected FTrace binary trace:\n",
"01:54:45 INFO : Executor - <res_dir>/rtapp:eas:rta/3/trace.dat\n",
"01:54:46 INFO : Executor - Collected FTrace function profiling:\n",
"01:54:46 INFO : Executor - <res_dir>/rtapp:eas:rta/3/trace_stat.json\n",
"01:54:46 INFO : --------------------------------------------------------------------------------\n",
"01:54:46 INFO : \n",
"01:54:46 INFO : ################################################################################\n",
"01:54:46 INFO : Executor - Experiments execution completed\n",
"01:54:46 INFO : ################################################################################\n",
"01:54:46 INFO : Executor - Results available in:\n",
"01:54:46 INFO : Executor - /home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\n"
]
}
],
"source": [
"# Execute all the configured test\n",
"executor.run()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {
"collapsed": false
},
"outputs": [],
"source": [
"res_dir = \"/home/derkling/Code/lisa/results/KernelFunctionsProfilingExample\"\n",
"out_dir = \"/home/derkling/Code/lisa/results/KernelFunctionsProfilingExample/rtapp:eas:rta/2/trace.dat\"\n",
"out_dir.replace(res_dir, \"<res_dir>\")\n",
"print executor.te.res_dir"
]
},
{
"cell_type": "code",
"execution_count": 11,
"metadata": {
"collapsed": false,
"scrolled": false
},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"01:56:21 INFO : Content of the output folder /home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\n"
]
},
{
"name": "stdout",
"output_type": "stream",
"text": [
"\u001b[01;34m/home/bjackman/sources/lisa/results/KernelFunctionsProfilingExample\u001b[00m\r\n",
"├── \u001b[01;34mrtapp:base:rta\u001b[00m\r\n",
"│   ├── \u001b[01;34m1\u001b[00m\r\n",
"│   │   ├── output.log\r\n",
"│   │   ├── rta_00.json\r\n",
"│   │   ├── rt-app-task_p200-0.log\r\n",
"│   │   ├── rt-app-task_p201-1.log\r\n",
"│   │   ├── rt-app-task_p202-2.log\r\n",
"│   │   ├── rt-app-task_p203-3.log\r\n",
"│   │   ├── rt-app-task_p204-4.log\r\n",
"│   │   ├── rt-app-task_p205-5.log\r\n",
"│   │   ├── trace.dat\r\n",
"│   │   └── trace_stat.json\r\n",
"│   ├── \u001b[01;34m2\u001b[00m\r\n",
"│   │   ├── output.log\r\n",
"│   │   ├── rta_00.json\r\n",
"│   │   ├── rt-app-task_p200-0.log\r\n",
"│   │   ├── rt-app-task_p201-1.log\r\n",
"│   │   ├── rt-app-task_p202-2.log\r\n",
"│   │   ├── rt-app-task_p203-3.log\r\n",
"│   │   ├── rt-app-task_p204-4.log\r\n",
"│   │   ├── rt-app-task_p205-5.log\r\n",
"│   │   ├── trace.dat\r\n",
"│   │   └── trace_stat.json\r\n",
"│   ├── \u001b[01;34m3\u001b[00m\r\n",
"│   │   ├── output.log\r\n",
"│   │   ├── rta_00.json\r\n",
"│   │   ├── rt-app-task_p200-0.log\r\n",
"│   │   ├── rt-app-task_p201-1.log\r\n",
"│   │   ├── rt-app-task_p202-2.log\r\n",
"│   │   ├── rt-app-task_p203-3.log\r\n",
"│   │   ├── rt-app-task_p204-4.log\r\n",
"│   │   ├── rt-app-task_p205-5.log\r\n",
"│   │   ├── trace.dat\r\n",
"│   │   └── trace_stat.json\r\n",
"│   ├── kernel.config\r\n",
"│   ├── kernel.version\r\n",
"│   └── platform.json\r\n",
"└── \u001b[01;34mrtapp:eas:rta\u001b[00m\r\n",
" ├── \u001b[01;34m1\u001b[00m\r\n",
" │   ├── output.log\r\n",
" │   ├── rta_00.json\r\n",
" │   ├── rt-app-task_p200-0.log\r\n",
" │   ├── rt-app-task_p201-1.log\r\n",
" │   ├── rt-app-task_p202-2.log\r\n",
" │   ├── rt-app-task_p203-3.log\r\n",
" │   ├── rt-app-task_p204-4.log\r\n",
" │   ├── rt-app-task_p205-5.log\r\n",
" │   ├── trace.dat\r\n",
" │   └── trace_stat.json\r\n",
" ├── \u001b[01;34m2\u001b[00m\r\n",
" │   ├── output.log\r\n",
" │   ├── rta_00.json\r\n",
" │   ├── rt-app-task_p200-0.log\r\n",
" │   ├── rt-app-task_p201-1.log\r\n",
" │   ├── rt-app-task_p202-2.log\r\n",
" │   ├── rt-app-task_p203-3.log\r\n",
" │   ├── rt-app-task_p204-4.log\r\n",
" │   ├── rt-app-task_p205-5.log\r\n",
" │   ├── trace.dat\r\n",
" │   └── trace_stat.json\r\n",
" ├── \u001b[01;34m3\u001b[00m\r\n",
" │   ├── output.log\r\n",
" │   ├── rta_00.json\r\n",
" │   ├── rt-app-task_p200-0.log\r\n",
" │   ├── rt-app-task_p201-1.log\r\n",
" │   ├── rt-app-task_p202-2.log\r\n",
" │   ├── rt-app-task_p203-3.log\r\n",
" │   ├── rt-app-task_p204-4.log\r\n",
" │   ├── rt-app-task_p205-5.log\r\n",
" │   ├── trace.dat\r\n",
" │   └── trace_stat.json\r\n",
" ├── kernel.config\r\n",
" ├── kernel.version\r\n",
" └── platform.json\r\n",
"\r\n",
"8 directories, 66 files\r\n"
]
}
],
"source": [
"# Check content of the output folder\n",
"res_dir = executor.te.res_dir\n",
"logging.info('Content of the output folder %s', res_dir)\n",
"!tree {res_dir}"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Load function profiling data"
]
},
{
"cell_type": "code",
"execution_count": 12,
"metadata": {
"collapsed": false,
"scrolled": false
},
"outputs": [],
"source": [
"def autodict():\n",
" return collections.defaultdict(autodict)\n",
"\n",
"def parse_perf_stat(res_dir):\n",
" TEST_DIR_RE = re.compile(r'.*/([^:]*):([^:]*):([^:]*)')\n",
" profiling_data = autodict()\n",
"\n",
" for test_idx in sorted(os.listdir(res_dir)):\n",
" test_dir = os.path.join(res_dir, test_idx)\n",
" if not os.path.isdir(test_dir):\n",
" continue\n",
" match = TEST_DIR_RE.search(test_dir)\n",
" if not match:\n",
" continue\n",
" wtype = match.group(1)\n",
" tconf = match.group(2)\n",
" wload = match.group(3)\n",
"\n",
" #logging.info('Processing %s:%s:%s', wtype, tconf, wload)\n",
" trace_stat_file = os.path.join(test_dir, '1', 'trace_stat.json')\n",
" if not os.path.isfile(trace_stat_file):\n",
" continue\n",
" with open(trace_stat_file, 'r') as fh:\n",
" data = json.load(fh)\n",
" for cpu_id, cpu_stats in sorted(data.items()):\n",
" for fname in cpu_stats:\n",
" profiling_data[cpu_id][tconf][fname] = cpu_stats[fname]\n",
"\n",
" return profiling_data\n",
" \n",
"profiling_data = parse_perf_stat(res_dir)\n",
"#logging.info(\"Profiling data:\\n%s\", json.dumps(profiling_data, indent=4))\n",
"#profiling_data"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Build Pandas DataFrame from profiling data"
]
},
{
"cell_type": "code",
"execution_count": 13,
"metadata": {
"collapsed": false
},
"outputs": [],
"source": [
"def get_df(profiling_data):\n",
" cpu_ids = []\n",
" cpu_frames = []\n",
" for cpu_id, cpu_data in sorted(profiling_data.items()):\n",
" cpu_ids.append(cpu_id)\n",
" conf_ids = []\n",
" conf_frames = []\n",
" for conf_id, conf_data in cpu_data.iteritems():\n",
" conf_ids.append(conf_id)\n",
" function_data = pandas.DataFrame.from_dict(conf_data, orient='index')\n",
" conf_frames.append(function_data)\n",
" df = pandas.concat(conf_frames, keys=conf_ids)\n",
" cpu_frames.append(df)\n",
" df = pandas.concat(cpu_frames, keys=cpu_ids)\n",
" #df.head()\n",
" return df\n",
"\n",
"stats_df = get_df(profiling_data)\n",
"#stats_df"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Plot profiling data per function and CPU"
]
},
{
"cell_type": "code",
"execution_count": 14,
"metadata": {
"collapsed": false
},
"outputs": [],
"source": [
"def plot_stats(df, fname, axes=None):\n",
" func_data = df.xs(fname, level=2)\n",
" func_stats = func_data.xs(['avg', 's_2'], axis=1)\n",
" #func_stats\n",
" func_avg = func_stats.unstack(level=1)['avg']\n",
" func_std = func_stats.unstack(level=1)['s_2'].apply(numpy.sqrt)\n",
" func_avg.plot(kind='bar', title=fname, yerr=func_std, ax=axes);\n",
"\n",
"#plot_stats(stats_df, 'select_task_rq_fair')"
]
},
{
"cell_type": "code",
"execution_count": 15,
"metadata": {
"collapsed": false,
"scrolled": false
},
"outputs": [
{
"name": "stderr",
"output_type": "stream",
"text": [
"01:56:33 INFO : Plotting stats for [dequeue_task_fair] function\n",
"01:56:33 INFO : Plotting stats for [enqueue_task_fair] function\n",
"01:56:33 INFO : Plotting stats for [select_task_rq_fair] function\n",
"/usr/lib/pymodules/python2.7/matplotlib/collections.py:548: FutureWarning: elementwise comparison failed; returning scalar instead, but in the future will perform elementwise comparison\n",
" if self._edgecolors == 'face':\n"
]
},
{
"data": {
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VNE2aplla7vf7SZJ+v7+0DACw2oRN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\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x7f086d8887d0>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"def plot_all_functions(df):\n",
" functions = df.index.get_level_values(2).unique()\n",
" fcount = len(functions)\n",
"\n",
" fig, pltaxes = plt.subplots(fcount, 1, figsize=(16, 8*fcount))\n",
"\n",
" fig_id = 0\n",
" for fname in functions:\n",
" logging.info(\"Plotting stats for [%s] function\", fname)\n",
" if fcount > 1:\n",
" axes = pltaxes[fig_id]\n",
" else:\n",
" axes = pltaxes\n",
" plot_stats(df, fname, axes)\n",
" fig_id = fig_id + 1\n",
" \n",
"plot_all_functions(stats_df)"
]
}
],
"metadata": {
"kernelspec": {
"display_name": "Python 2",
"language": "python",
"name": "python2"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 2
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython2",
"version": "2.7.6"
}
},
"nbformat": 4,
"nbformat_minor": 0
}