From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1752764AbcBWOt6 (ORCPT ); Tue, 23 Feb 2016 09:49:58 -0500 Received: from mga03.intel.com ([134.134.136.65]:6525 "EHLO mga03.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1751059AbcBWOt4 (ORCPT ); Tue, 23 Feb 2016 09:49:56 -0500 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.22,489,1449561600"; d="gz'50?scan'50,208,50";a="922118668" Date: Tue, 23 Feb 2016 22:48:34 +0800 From: kbuild test robot To: Mel Gorman Cc: kbuild-all@01.org, Rafael Wysocki , Doug Smythies , Stephane Gasparini , Srinivas Pandruvada , Dirk Brandewie , Ingo Molnar , Peter Zijlstra , Matt Fleming , Mike Galbraith , Linux-PM , LKML , Mel Gorman Subject: Re: [PATCH 1/1] intel_pstate: Increase hold-off time before samples are scaled v2 Message-ID: <201602232203.ZpZW3dHN%fengguang.wu@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="EVF5PPMfhYS0aIcm" Content-Disposition: inline In-Reply-To: <1456237784-17205-1-git-send-email-mgorman@techsingularity.net> User-Agent: Mutt/1.5.23 (2014-03-12) X-SA-Exim-Connect-IP: X-SA-Exim-Mail-From: fengguang.wu@intel.com X-SA-Exim-Scanned: No (on bee); SAEximRunCond expanded to false Sender: linux-kernel-owner@vger.kernel.org List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --EVF5PPMfhYS0aIcm Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Mel, [auto build test WARNING on pm/linux-next] [also build test WARNING on next-20160223] [cannot apply to v4.5-rc5] [if your patch is applied to the wrong git tree, please drop us a note to help improving the system] url: https://github.com/0day-ci/linux/commits/Mel-Gorman/intel_pstate-Increase-hold-off-time-before-samples-are-scaled-v2/20160223-223212 base: https://git.kernel.org/pub/scm/linux/kernel/git/rafael/linux-pm.git linux-next config: i386-randconfig-x006-201608 (attached as .config) reproduce: # save the attached .config to linux build tree make ARCH=i386 All warnings (new ones prefixed by >>): drivers/cpufreq/intel_pstate.c: In function 'get_target_pstate_use_performance': >> drivers/cpufreq/intel_pstate.c:957:49: warning: unused variable 'sample_ratio' [-Wunused-variable] int32_t core_busy, max_pstate, current_pstate, sample_ratio; ^ vim +/sample_ratio +957 drivers/cpufreq/intel_pstate.c 63d1d656 Philippe Longepe 2015-12-04 941 63d1d656 Philippe Longepe 2015-12-04 942 e70eed2b Philippe Longepe 2015-12-04 943 /* e70eed2b Philippe Longepe 2015-12-04 944 * The load can be estimated as the ratio of the mperf counter e70eed2b Philippe Longepe 2015-12-04 945 * running at a constant frequency during active periods e70eed2b Philippe Longepe 2015-12-04 946 * (C0) and the time stamp counter running at the same frequency e70eed2b Philippe Longepe 2015-12-04 947 * also during C-states. e70eed2b Philippe Longepe 2015-12-04 948 */ 63d1d656 Philippe Longepe 2015-12-04 949 cpu_load = div64_u64(int_tofp(100) * mperf, sample->tsc); e70eed2b Philippe Longepe 2015-12-04 950 cpu->sample.busy_scaled = cpu_load; e70eed2b Philippe Longepe 2015-12-04 951 e70eed2b Philippe Longepe 2015-12-04 952 return cpu->pstate.current_pstate - pid_calc(&cpu->pid, cpu_load); e70eed2b Philippe Longepe 2015-12-04 953 } e70eed2b Philippe Longepe 2015-12-04 954 157386b6 Philippe Longepe 2015-12-04 955 static inline int32_t get_target_pstate_use_performance(struct cpudata *cpu) 93f0822d Dirk Brandewie 2013-02-06 956 { c4ee841f Dirk Brandewie 2014-05-29 @957 int32_t core_busy, max_pstate, current_pstate, sample_ratio; 402c43ed Rafael J. Wysocki 2016-02-05 958 u64 duration_ns; 93f0822d Dirk Brandewie 2013-02-06 959 e0d4c8f8 Kristen Carlson Accardi 2014-12-10 960 /* e0d4c8f8 Kristen Carlson Accardi 2014-12-10 961 * core_busy is the ratio of actual performance to max e0d4c8f8 Kristen Carlson Accardi 2014-12-10 962 * max_pstate is the max non turbo pstate available e0d4c8f8 Kristen Carlson Accardi 2014-12-10 963 * current_pstate was the pstate that was requested during e0d4c8f8 Kristen Carlson Accardi 2014-12-10 964 * the last sample period. e0d4c8f8 Kristen Carlson Accardi 2014-12-10 965 * :::::: The code at line 957 was first introduced by commit :::::: c4ee841f602e5eef8eab673295c49c5b49d7732b intel_pstate: add sample time scaling :::::: TO: Dirk Brandewie :::::: CC: Rafael J. 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agQD1iCNrbUmas9YCVAlb1qzgMuJ9ZM8vFacLI2ScEPDgRoidBZ2JRKwtU+TId/oXSDpsB5p 2Jthg4AW2oV4XVzLujX4NwVD9DLuvwJ+BgCZBUVc5mZPKBYoTCKpNFLjxKWjSsbDQVTcFlWp c+3VHkqiZKRSJQstTMpfkfL3D62Rv1L+VlsgkyYuslSubBroYYWKGOgAlgONL5s8dBh4nuOW G0ZfHJrZ6cMLtYuHtCIZ8OLuBBMniSbyDEsErHdWGouyTsVSdejqUI+QCcX4KWrNUdXrrhrn uQ6vIEkCbtmY/8LhqqdHEKcsmIu0CEyozPhWU3JFZkaK9yqj992LzzQXIdU8vTNixVlszoc4 plailN3ifsHwHdd4EJeRXvW+BTW+Q6CDQvcsgfMhPKnA/H+H1HijpGYBAA== --EVF5PPMfhYS0aIcm-- From mboxrd@z Thu Jan 1 00:00:00 1970 From: kbuild test robot Subject: Re: [PATCH 1/1] intel_pstate: Increase hold-off time before samples are scaled v2 Date: Tue, 23 Feb 2016 22:48:34 +0800 Message-ID: <201602232203.ZpZW3dHN%fengguang.wu@intel.com> References: <1456237784-17205-1-git-send-email-mgorman@techsingularity.net> Mime-Version: 1.0 Content-Type: multipart/mixed; boundary="EVF5PPMfhYS0aIcm" Return-path: Received: from mga03.intel.com ([134.134.136.65]:6525 "EHLO mga03.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1751059AbcBWOt4 (ORCPT ); Tue, 23 Feb 2016 09:49:56 -0500 Content-Disposition: inline In-Reply-To: <1456237784-17205-1-git-send-email-mgorman@techsingularity.net> Sender: linux-pm-owner@vger.kernel.org List-Id: linux-pm@vger.kernel.org Cc: kbuild-all@01.org, Rafael Wysocki , Doug Smythies , Stephane Gasparini , Srinivas Pandruvada , Dirk Brandewie , Ingo Molnar , Peter Zijlstra , Matt Fleming , Mike Galbraith , Linux-PM , LKML , Mel Gorman --EVF5PPMfhYS0aIcm Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Mel, [auto build test WARNING on pm/linux-next] [also build test WARNING on next-20160223] [cannot apply to v4.5-rc5] [if your patch is applied to the wrong git tree, please drop us a note to help improving the system] url: https://github.com/0day-ci/linux/commits/Mel-Gorman/intel_pstate-Increase-hold-off-time-before-samples-are-scaled-v2/20160223-223212 base: https://git.kernel.org/pub/scm/linux/kernel/git/rafael/linux-pm.git linux-next config: i386-randconfig-x006-201608 (attached as .config) reproduce: # save the attached .config to linux build tree make ARCH=i386 All warnings (new ones prefixed by >>): drivers/cpufreq/intel_pstate.c: In function 'get_target_pstate_use_performance': >> drivers/cpufreq/intel_pstate.c:957:49: warning: unused variable 'sample_ratio' [-Wunused-variable] int32_t core_busy, max_pstate, current_pstate, sample_ratio; ^ vim +/sample_ratio +957 drivers/cpufreq/intel_pstate.c 63d1d656 Philippe Longepe 2015-12-04 941 63d1d656 Philippe Longepe 2015-12-04 942 e70eed2b Philippe Longepe 2015-12-04 943 /* e70eed2b Philippe Longepe 2015-12-04 944 * The load can be estimated as the ratio of the mperf counter e70eed2b Philippe Longepe 2015-12-04 945 * running at a constant frequency during active periods e70eed2b Philippe Longepe 2015-12-04 946 * (C0) and the time stamp counter running at the same frequency e70eed2b Philippe Longepe 2015-12-04 947 * also during C-states. e70eed2b Philippe Longepe 2015-12-04 948 */ 63d1d656 Philippe Longepe 2015-12-04 949 cpu_load = div64_u64(int_tofp(100) * mperf, sample->tsc); e70eed2b Philippe Longepe 2015-12-04 950 cpu->sample.busy_scaled = cpu_load; e70eed2b Philippe Longepe 2015-12-04 951 e70eed2b Philippe Longepe 2015-12-04 952 return cpu->pstate.current_pstate - pid_calc(&cpu->pid, cpu_load); e70eed2b Philippe Longepe 2015-12-04 953 } e70eed2b Philippe Longepe 2015-12-04 954 157386b6 Philippe Longepe 2015-12-04 955 static inline int32_t get_target_pstate_use_performance(struct cpudata *cpu) 93f0822d Dirk Brandewie 2013-02-06 956 { c4ee841f Dirk Brandewie 2014-05-29 @957 int32_t core_busy, max_pstate, current_pstate, sample_ratio; 402c43ed Rafael J. Wysocki 2016-02-05 958 u64 duration_ns; 93f0822d Dirk Brandewie 2013-02-06 959 e0d4c8f8 Kristen Carlson Accardi 2014-12-10 960 /* e0d4c8f8 Kristen Carlson Accardi 2014-12-10 961 * core_busy is the ratio of actual performance to max e0d4c8f8 Kristen Carlson Accardi 2014-12-10 962 * max_pstate is the max non turbo pstate available e0d4c8f8 Kristen Carlson Accardi 2014-12-10 963 * current_pstate was the pstate that was requested during e0d4c8f8 Kristen Carlson Accardi 2014-12-10 964 * the last sample period. e0d4c8f8 Kristen Carlson Accardi 2014-12-10 965 * :::::: The code at line 957 was first introduced by commit :::::: c4ee841f602e5eef8eab673295c49c5b49d7732b intel_pstate: add sample time scaling :::::: TO: Dirk Brandewie :::::: CC: Rafael J. 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