From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============7818923840355490662==" MIME-Version: 1.0 From: kernel test robot Subject: [android-goldfish:android-5.4 4/5] drivers/hid/hid-nintendo.c:314 joycon_request_calibration() warn: right shifting more than type allows 16 vs 16 Date: Thu, 26 Nov 2020 05:15:49 +0800 Message-ID: <202011260546.iAsFdDpE-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============7818923840355490662== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org TO: Alistair Delva tree: https://android.googlesource.com/kernel/goldfish android-5.4 head: e03073f66fc4018c29fefbc5ded97a31c3e958b9 commit: e63d24388097cc5592fb085fea19f9f7e9cd1248 [4/5] FROMLIST: HID: ninte= ndo: add nintendo switch controller driver :::::: branch date: 9 months ago :::::: commit date: 9 months ago config: x86_64-randconfig-m001-20201125 (attached as .config) compiler: gcc-9 (Debian 9.3.0-15) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter New smatch warnings: drivers/hid/hid-nintendo.c:314 joycon_request_calibration() warn: right shi= fting more than type allows 16 vs 16 Old smatch warnings: drivers/hid/hid-nintendo.c:315 joycon_request_calibration() warn: right shi= fting more than type allows 16 vs 24 vim +314 drivers/hid/hid-nintendo.c e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 290 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 291 static const u16 DFLT_= STICK_CAL_CEN =3D 2000; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 292 static const u16 DFLT_= STICK_CAL_MAX =3D 3500; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 293 static const u16 DFLT_= STICK_CAL_MIN =3D 500; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 294 static int joycon_requ= est_calibration(struct joycon_ctlr *ctlr) e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 295 { e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 296 struct joycon_subcmd_= request *req; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 297 u8 buffer[sizeof(*req= ) + 5] =3D { 0 }; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 298 struct joycon_input_r= eport *report; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 299 struct joycon_stick_c= al *cal_x; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 300 struct joycon_stick_c= al *cal_y; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 301 s32 x_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 302 s32 x_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 303 s32 y_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 304 s32 y_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 305 u8 *data; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 306 u8 *raw_cal; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 307 int ret; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 308 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 309 req =3D (struct joyco= n_subcmd_request *)buffer; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 310 req->subcmd_id =3D JC= _SUBCMD_SPI_FLASH_READ; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 311 data =3D req->data; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 312 data[0] =3D 0xFF & JC= _CAL_DATA_START; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 313 data[1] =3D 0xFF & (J= C_CAL_DATA_START >> 8); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 @314 data[2] =3D 0xFF & (J= C_CAL_DATA_START >> 16); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 315 data[3] =3D 0xFF & (J= C_CAL_DATA_START >> 24); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 316 data[4] =3D JC_CAL_DA= TA_SIZE; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 317 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 318 hid_dbg(ctlr->hdev, "= requesting cal data\n"); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 319 ret =3D joycon_send_s= ubcmd(ctlr, req, 5); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 320 if (ret) { e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 321 hid_warn(ctlr->hdev, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 322 "Failed to read st= ick cal, using defaults; ret=3D%d\n", e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 323 ret); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 324 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 325 ctlr->left_stick_cal= _x.center =3D DFLT_STICK_CAL_CEN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 326 ctlr->left_stick_cal= _x.max =3D DFLT_STICK_CAL_MAX; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 327 ctlr->left_stick_cal= _x.min =3D DFLT_STICK_CAL_MIN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 328 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 329 ctlr->left_stick_cal= _y.center =3D DFLT_STICK_CAL_CEN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 330 ctlr->left_stick_cal= _y.max =3D DFLT_STICK_CAL_MAX; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 331 ctlr->left_stick_cal= _y.min =3D DFLT_STICK_CAL_MIN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 332 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 333 ctlr->right_stick_ca= l_x.center =3D DFLT_STICK_CAL_CEN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 334 ctlr->right_stick_ca= l_x.max =3D DFLT_STICK_CAL_MAX; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 335 ctlr->right_stick_ca= l_x.min =3D DFLT_STICK_CAL_MIN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 336 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 337 ctlr->right_stick_ca= l_y.center =3D DFLT_STICK_CAL_CEN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 338 ctlr->right_stick_ca= l_y.max =3D DFLT_STICK_CAL_MAX; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 339 ctlr->right_stick_ca= l_y.min =3D DFLT_STICK_CAL_MIN; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 340 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 341 return ret; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 342 } e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 343 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 344 report =3D (struct jo= ycon_input_report *)ctlr->input_buf; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 345 raw_cal =3D &report->= reply.data[5]; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 346 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 347 /* left stick calibra= tion parsing */ e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 348 cal_x =3D &ctlr->left= _stick_cal_x; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 349 cal_y =3D &ctlr->left= _stick_cal_y; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 350 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 351 x_max_above =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 0), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 352 y_max_above =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 1), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 353 cal_x->center =3D hid= _field_extract(ctlr->hdev, (raw_cal + 3), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 354 cal_y->center =3D hid= _field_extract(ctlr->hdev, (raw_cal + 4), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 355 x_min_below =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 6), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 356 y_min_below =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 7), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 357 cal_x->max =3D cal_x-= >center + x_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 358 cal_x->min =3D cal_x-= >center - x_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 359 cal_y->max =3D cal_y-= >center + y_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 360 cal_y->min =3D cal_y-= >center - y_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 361 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 362 /* right stick calibr= ation parsing */ e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 363 raw_cal +=3D 9; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 364 cal_x =3D &ctlr->righ= t_stick_cal_x; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 365 cal_y =3D &ctlr->righ= t_stick_cal_y; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 366 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 367 cal_x->center =3D hid= _field_extract(ctlr->hdev, (raw_cal + 0), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 368 cal_y->center =3D hid= _field_extract(ctlr->hdev, (raw_cal + 1), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 369 x_min_below =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 3), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 370 y_min_below =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 4), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 371 x_max_above =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 6), 0, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 372 y_max_above =3D hid_f= ield_extract(ctlr->hdev, (raw_cal + 7), 4, 12); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 373 cal_x->max =3D cal_x-= >center + x_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 374 cal_x->min =3D cal_x-= >center - x_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 375 cal_y->max =3D cal_y-= >center + y_max_above; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 376 cal_y->min =3D cal_y-= >center - y_min_below; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 377 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 378 hid_dbg(ctlr->hdev, "= calibration:\n" e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 379 "l_x_c=3D%d l_x= _max=3D%d l_x_min=3D%d\n" e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 380 "l_y_c=3D%d l_y= _max=3D%d l_y_min=3D%d\n" e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 381 "r_x_c=3D%d r_x= _max=3D%d r_x_min=3D%d\n" e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 382 "r_y_c=3D%d r_y= _max=3D%d r_y_min=3D%d\n", e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 383 ctlr->left_stic= k_cal_x.center, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 384 ctlr->left_stic= k_cal_x.max, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 385 ctlr->left_stic= k_cal_x.min, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 386 ctlr->left_stic= k_cal_y.center, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 387 ctlr->left_stic= k_cal_y.max, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 388 ctlr->left_stic= k_cal_y.min, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 389 ctlr->right_sti= ck_cal_x.center, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 390 ctlr->right_sti= ck_cal_x.max, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 391 ctlr->right_sti= ck_cal_x.min, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 392 ctlr->right_sti= ck_cal_y.center, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 393 ctlr->right_sti= ck_cal_y.max, e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 394 ctlr->right_sti= ck_cal_y.min); e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 395 = e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 396 return 0; e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 397 } e63d24388097cc5 Daniel J. Ogorchock 2019-12-29 398 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============7818923840355490662== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICPmzvl8AAy5jb25maWcAjFxbc9y2kn7Pr5hyXpIHO5Jsq5zd0gNIgiQyJEED4Fz0wlLksY8q luQdSSf2v99uACQBEJxk69TG093EtdH9daOhn3/6eUVenh/vb57vbm++fv2x+nJ4OBxvng+fVp/v vh7+d5XxVcPVimZMvQHh6u7h5ftv3z9c9pfvVu/fvHtzcbFaH44Ph6+r9PHh892XF/j47vHhp59/ gv/9DMT7b9DO8X9WX25vX/+++iU7/Hl387D6/c3bN2evz9//av4Fsilvclb0adoz2RdpevVjIMGP fkOFZLy5+v3s7dnZKFuRphhZZ04TKWn6ijXrqREglkT2RNZ9wRWPMlgD39AZa0tE09dkn9C+a1jD FCMVu6aZJ5gxSZKK/gthJj72Wy6csSUdqzLFatrTndKtSC7UxFeloCSD4eUc/l+viMSP9foWeru+ rp4Ozy/fplXEjnvabHoiCliImqmrtxe4HXa8vG4ZdKOoVKu7p9XD4zO2MAmU0B8VM77lVjwl1bDs r17FyD3p3EXWM+wlqZQjX5IN7ddUNLTqi2vWTuIuJwHORZxVXdckztldL33BlxjvgDHO3xlVZP7B 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