From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5678947678038198616==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/iio/imu/adis16475.c:1201 adis16475_config_sync_mode() warn: '2100 / st->clk_freq' 123456789 can't fit into 65535 'up_scale' Date: Sun, 09 May 2021 09:20:55 +0800 Message-ID: <202105090953.B9dWP983-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============5678947678038198616== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Nuno Sa CC: Jonathan Cameron tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: b741596468b010af2846b75f5e75a842ce344a6e commit: 39c024b51b5607e9d2fc6c04c2573e4a778c728d iio: adis16475: improve sy= nc scale mode handling date: 8 weeks ago :::::: branch date: 6 hours ago :::::: commit date: 8 weeks ago config: s390-randconfig-m031-20210509 (attached as .config) compiler: s390-linux-gcc (GCC) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter smatch warnings: drivers/iio/imu/adis16475.c:1201 adis16475_config_sync_mode() warn: '2100 /= st->clk_freq' 123456789 can't fit into 65535 'up_scale' vim +1201 drivers/iio/imu/adis16475.c fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1144 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1145 static int adis16475_config_s= ync_mode(struct adis16475 *st) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1146 { fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1147 int ret; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1148 struct device *dev =3D &st->= adis.spi->dev; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1149 const struct adis16475_sync = *sync; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1150 u32 sync_mode; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1151 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1152 /* default to internal clk */ fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1153 st->clk_freq =3D st->info->i= nt_clk * 1000; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1154 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1155 ret =3D device_property_read= _u32(dev, "adi,sync-mode", &sync_mode); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1156 if (ret) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1157 return 0; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1158 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1159 if (sync_mode >=3D st->info-= >num_sync) { fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1160 dev_err(dev, "Invalid sync = mode: %u for %s\n", sync_mode, fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1161 st->info->name); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1162 return -EINVAL; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1163 } fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1164 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1165 sync =3D &st->info->sync[syn= c_mode]; 39c024b51b5607 Nuno Sa 2021-02-18 1166 st->sync_mode =3D sync->sync_mode; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1167 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1168 /* All the other modes requi= re external input signal */ fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1169 if (sync->sync_mode !=3D ADI= S16475_SYNC_OUTPUT) { fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1170 struct clk *clk =3D devm_cl= k_get(dev, NULL); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1171 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1172 if (IS_ERR(clk)) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1173 return PTR_ERR(clk); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1174 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1175 ret =3D clk_prepare_enable(= clk); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1176 if (ret) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1177 return ret; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1178 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1179 ret =3D devm_add_action_or_= reset(dev, adis16475_disable_clk, clk); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1180 if (ret) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1181 return ret; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1182 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1183 st->clk_freq =3D clk_get_ra= te(clk); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1184 if (st->clk_freq < sync->mi= n_rate || fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1185 st->clk_freq > sync->ma= x_rate) { fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1186 dev_err(dev, fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1187 "Clk rate:%u not in a val= id range:[%u %u]\n", fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1188 st->clk_freq, sync->min_r= ate, sync->max_rate); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1189 return -EINVAL; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1190 } fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1191 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1192 if (sync->sync_mode =3D=3D = ADIS16475_SYNC_SCALED) { fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1193 u16 up_scale; 39c024b51b5607 Nuno Sa 2021-02-18 1194 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1195 /* 39c024b51b5607 Nuno Sa 2021-02-18 1196 * In sync scaled mode, the IMU= sample rate is the clk_freq * sync_scale. 39c024b51b5607 Nuno Sa 2021-02-18 1197 * Hence, default the IMU sampl= e rate to the highest multiple of the input 39c024b51b5607 Nuno Sa 2021-02-18 1198 * clock lower than the IMU max= sample rate. The optimal range is 39c024b51b5607 Nuno Sa 2021-02-18 1199 * 1900-2100 sps... fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1200 */ 39c024b51b5607 Nuno Sa 2021-02-18 @1201 up_scale =3D 2100 / st->clk_fre= q; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1202 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1203 ret =3D __adis_write_reg_1= 6(&st->adis, fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1204 ADIS16475_REG_UP_SCAL= E, fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1205 up_scale); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1206 if (ret) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1207 return ret; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1208 } fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1209 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1210 st->clk_freq *=3D 1000; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1211 } fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1212 /* fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1213 * Keep in mind that the mas= k for the clk modes in adis1650* fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1214 * chips is different (1100 = instead of 11100). However, we fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1215 * are not configuring BIT(4= ) in these chips and the default fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1216 * value is 0, so we are fin= e in doing the below operations. fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1217 * I'm keeping this for simp= licity and avoiding extra variables fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1218 * in chip_info. fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1219 */ fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1220 ret =3D __adis_update_bits(&= st->adis, ADIS16475_REG_MSG_CTRL, fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1221 ADIS16475_SYNC_MODE_MASK= , sync->sync_mode); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1222 if (ret) fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1223 return ret; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1224 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1225 usleep_range(250, 260); fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1226 = fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1227 return 0; fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1228 } fff7352bf7a3ce Nuno S=C3=A1 2020-04-13 1229 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============5678947678038198616== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICNo0l2AAAy5jb25maWcAnDxbb+M2s+/9FUYLHLQP2/qSKw7yQFOUzVoStaLkS14IN/FujWad wHb6db9ff2ZIXUiJcooDtJtoZkgOh8O5kcxPP/w0IO/n12/b8/5p+/LyffB1d9gdt+fd8+DL/mX3 v4NADBKRD1jA81+BONof3v/57TS5Hw6ufx2Nfx1+Oj6NB4vd8bB7GdDXw5f913dovn89/PDTD1Qk IZ8pStWSZZKLROVsnT/8iM0/vWBPn74+PQ1+nlH6y+D+18mvwx+tNlwqQDx8r0Czpp+H++FkOKxp I5LMalQNjgLsYhoGTRcAqsjGk6umh8hCDC0W5kQqImM1E7loerEQPIl4whoUzz6rlcgWDWRa8CjI ecxUTqYRU1JkeYPN5xkjwGcSCvgHSCQ2BdH9NJjphXgZnHbn97dGmDzhuWLJUpEM+OYxzx8m43oe gpKomsiPP/rAihT2XDR7SpIot+jnZMnUgmUJi9TskacNuY2ZAmbsR0WPMfFj1o99LUQf4sqPKBIq 4jRjUjJc4Z8GJY3F92B/GhxezyjCDl5zf4kA53AJv3683FrY6DbyysOxPSFP24CFpIhyrQDWWlXg 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