From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1754796AbcHVMmJ (ORCPT ); Mon, 22 Aug 2016 08:42:09 -0400 Received: from mga11.intel.com ([192.55.52.93]:5283 "EHLO mga11.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1751032AbcHVMmI (ORCPT ); Mon, 22 Aug 2016 08:42:08 -0400 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.28,559,1464678000"; d="gz'50?scan'50,208,50";a="510893" Date: Mon, 22 Aug 2016 20:40:57 +0800 From: kbuild test robot To: Heinrich Schuchardt Cc: kbuild-all@01.org, Patrik Jakobsson , Joe Perches , David Airlie , dri-devel@lists.freedesktop.org, linux-kernel@vger.kernel.org, Heinrich Schuchardt Subject: Re: [PATCH 1/1] drm/gma500: dont expose stack, mrst_lvds_find_best_pll Message-ID: <201608222028.KbYazehE%fengguang.wu@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="gBBFr7Ir9EOA20Yy" Content-Disposition: inline In-Reply-To: <1471809437-4377-1-git-send-email-xypron.glpk@gmx.de> 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 --gBBFr7Ir9EOA20Yy Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Heinrich, [auto build test ERROR on drm/drm-next] [also build test ERROR on v4.8-rc3 next-20160822] [if your patch is applied to the wrong git tree, please drop us a note to help improve the system] [Suggest to use git(>=2.9.0) format-patch --base= (or --base=auto for convenience) to record what (public, well-known) commit your patch series was built on] [Check https://git-scm.com/docs/git-format-patch for more information] url: https://github.com/0day-ci/linux/commits/Heinrich-Schuchardt/drm-gma500-dont-expose-stack-mrst_lvds_find_best_pll/20160822-040114 base: git://people.freedesktop.org/~airlied/linux.git drm-next config: x86_64-randconfig-n0-08221935 (attached as .config) compiler: gcc-4.8 (Debian 4.8.4-1) 4.8.4 reproduce: # save the attached .config to linux build tree make ARCH=x86_64 All errors (new ones prefixed by >>): In file included from arch/x86/include/asm/string.h:4:0, from include/linux/string.h:18, from include/uapi/linux/uuid.h:21, from include/linux/uuid.h:19, from include/linux/mod_devicetable.h:12, from include/linux/i2c.h:29, from drivers/gpu/drm/gma500/oaktrail_crtc.c:18: drivers/gpu/drm/gma500/oaktrail_crtc.c: In function 'mrst_lvds_find_best_pll': >> drivers/gpu/drm/gma500/oaktrail_crtc.c:197:33: error: incompatible type for argument 1 of '__memset' memset(clock, 0, sizeof(struct gma_clock_t)); ^ arch/x86/include/asm/string_64.h:78:40: note: in definition of macro 'memset' #define memset(s, c, n) __memset(s, c, n) ^ arch/x86/include/asm/string_64.h:56:7: note: expected 'void *' but argument is of type 'struct gma_clock_t' void *__memset(void *s, int c, size_t n); ^ vim +/__memset +197 drivers/gpu/drm/gma500/oaktrail_crtc.c 12 * 13 * You should have received a copy of the GNU General Public License along with 14 * this program; if not, write to the Free Software Foundation, Inc., 15 * 51 Franklin St - Fifth Floor, Boston, MA 02110-1301 USA. 16 */ 17 > 18 #include 19 #include 20 21 #include 22 #include "framebuffer.h" 23 #include "psb_drv.h" 24 #include "psb_intel_drv.h" 25 #include "psb_intel_reg.h" 26 #include "gma_display.h" 27 #include "power.h" 28 29 #define MRST_LIMIT_LVDS_100L 0 30 #define MRST_LIMIT_LVDS_83 1 31 #define MRST_LIMIT_LVDS_100 2 32 #define MRST_LIMIT_SDVO 3 33 34 #define MRST_DOT_MIN 19750 35 #define MRST_DOT_MAX 120000 36 #define MRST_M_MIN_100L 20 37 #define MRST_M_MIN_100 10 38 #define MRST_M_MIN_83 12 39 #define MRST_M_MAX_100L 34 40 #define MRST_M_MAX_100 17 41 #define MRST_M_MAX_83 20 42 #define MRST_P1_MIN 2 43 #define MRST_P1_MAX_0 7 44 #define MRST_P1_MAX_1 8 45 46 static bool mrst_lvds_find_best_pll(const struct gma_limit_t *limit, 47 struct drm_crtc *crtc, int target, 48 int refclk, struct gma_clock_t *best_clock); 49 50 static bool mrst_sdvo_find_best_pll(const struct gma_limit_t *limit, 51 struct drm_crtc *crtc, int target, 52 int refclk, struct gma_clock_t *best_clock); 53 54 static const struct gma_limit_t mrst_limits[] = { 55 { /* MRST_LIMIT_LVDS_100L */ 56 .dot = {.min = MRST_DOT_MIN, .max = MRST_DOT_MAX}, 57 .m = {.min = MRST_M_MIN_100L, .max = MRST_M_MAX_100L}, 58 .p1 = {.min = MRST_P1_MIN, .max = MRST_P1_MAX_1}, 59 .find_pll = mrst_lvds_find_best_pll, 60 }, 61 { /* MRST_LIMIT_LVDS_83L */ 62 .dot = {.min = MRST_DOT_MIN, .max = MRST_DOT_MAX}, 63 .m = {.min = MRST_M_MIN_83, .max = MRST_M_MAX_83}, 64 .p1 = {.min = MRST_P1_MIN, .max = MRST_P1_MAX_0}, 65 .find_pll = mrst_lvds_find_best_pll, 66 }, 67 { /* MRST_LIMIT_LVDS_100 */ 68 .dot = {.min = MRST_DOT_MIN, .max = MRST_DOT_MAX}, 69 .m = {.min = MRST_M_MIN_100, .max = MRST_M_MAX_100}, 70 .p1 = {.min = MRST_P1_MIN, .max = MRST_P1_MAX_1}, 71 .find_pll = mrst_lvds_find_best_pll, 72 }, 73 { /* MRST_LIMIT_SDVO */ 74 .vco = {.min = 1400000, .max = 2800000}, 75 .n = {.min = 3, .max = 7}, 76 .m = {.min = 80, .max = 137}, 77 .p1 = {.min = 1, .max = 2}, 78 .p2 = {.dot_limit = 200000, .p2_slow = 10, .p2_fast = 10}, 79 .find_pll = mrst_sdvo_find_best_pll, 80 }, 81 }; 82 83 #define MRST_M_MIN 10 84 static const u32 oaktrail_m_converts[] = { 85 0x2B, 0x15, 0x2A, 0x35, 0x1A, 0x0D, 0x26, 0x33, 0x19, 0x2C, 86 0x36, 0x3B, 0x1D, 0x2E, 0x37, 0x1B, 0x2D, 0x16, 0x0B, 0x25, 87 0x12, 0x09, 0x24, 0x32, 0x39, 0x1c, 88 }; 89 90 static const struct gma_limit_t *mrst_limit(struct drm_crtc *crtc, 91 int refclk) 92 { 93 const struct gma_limit_t *limit = NULL; 94 struct drm_device *dev = crtc->dev; 95 struct drm_psb_private *dev_priv = dev->dev_private; 96 97 if (gma_pipe_has_type(crtc, INTEL_OUTPUT_LVDS) 98 || gma_pipe_has_type(crtc, INTEL_OUTPUT_MIPI)) { 99 switch (dev_priv->core_freq) { 100 case 100: 101 limit = &mrst_limits[MRST_LIMIT_LVDS_100L]; 102 break; 103 case 166: 104 limit = &mrst_limits[MRST_LIMIT_LVDS_83]; 105 break; 106 case 200: 107 limit = &mrst_limits[MRST_LIMIT_LVDS_100]; 108 break; 109 } 110 } else if (gma_pipe_has_type(crtc, INTEL_OUTPUT_SDVO)) { 111 limit = &mrst_limits[MRST_LIMIT_SDVO]; 112 } else { 113 limit = NULL; 114 dev_err(dev->dev, "mrst_limit Wrong display type.\n"); 115 } 116 117 return limit; 118 } 119 120 /** Derive the pixel clock for the given refclk and divisors for 8xx chips. */ 121 static void mrst_lvds_clock(int refclk, struct gma_clock_t *clock) 122 { 123 clock->dot = (refclk * clock->m) / (14 * clock->p1); 124 } 125 126 static void mrst_print_pll(struct gma_clock_t *clock) 127 { 128 DRM_DEBUG_DRIVER("dotclock=%d, m=%d, m1=%d, m2=%d, n=%d, p1=%d, p2=%d\n", 129 clock->dot, clock->m, clock->m1, clock->m2, clock->n, 130 clock->p1, clock->p2); 131 } 132 133 static bool mrst_sdvo_find_best_pll(const struct gma_limit_t *limit, 134 struct drm_crtc *crtc, int target, 135 int refclk, struct gma_clock_t *best_clock) 136 { 137 struct gma_clock_t clock; 138 u32 target_vco, actual_freq; 139 s32 freq_error, min_error = 100000; 140 141 memset(best_clock, 0, sizeof(*best_clock)); 142 143 for (clock.m = limit->m.min; clock.m <= limit->m.max; clock.m++) { 144 for (clock.n = limit->n.min; clock.n <= limit->n.max; 145 clock.n++) { 146 for (clock.p1 = limit->p1.min; 147 clock.p1 <= limit->p1.max; clock.p1++) { 148 /* p2 value always stored in p2_slow on SDVO */ 149 clock.p = clock.p1 * limit->p2.p2_slow; 150 target_vco = target * clock.p; 151 152 /* VCO will increase at this point so break */ 153 if (target_vco > limit->vco.max) 154 break; 155 156 if (target_vco < limit->vco.min) 157 continue; 158 159 actual_freq = (refclk * clock.m) / 160 (clock.n * clock.p); 161 freq_error = 10000 - 162 ((target * 10000) / actual_freq); 163 164 if (freq_error < -min_error) { 165 /* freq_error will start to decrease at 166 this point so break */ 167 break; 168 } 169 170 if (freq_error < 0) 171 freq_error = -freq_error; 172 173 if (freq_error < min_error) { 174 min_error = freq_error; 175 *best_clock = clock; 176 } 177 } 178 } 179 if (min_error == 0) 180 break; 181 } 182 183 return min_error == 0; 184 } 185 186 /** 187 * Returns a set of divisors for the desired target clock with the given refclk, 188 * or FALSE. 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