From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============4466834142531508747==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [tobetter-linux:odroid-5.13.y 22/93] drivers/gpu/drm/exynos/exynos_hdmi.c:727:22: warning: unsigned conversion from 'int' to 'unsigned char' changes value from '5656' to '24' Date: Fri, 18 Jun 2021 09:25:10 +0800 Message-ID: <202106180902.d7bAnVm4-lkp@intel.com> List-Id: --===============4466834142531508747== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/tobetter/linux odroid-5.13.y head: ec41beb389cd0d7ab68345d550334d44842a2cb1 commit: 17cfab84283ccb9cd712e91a385e1ae49f71ab19 [22/93] ODROID-XU4: drm/ex= ynos: add new HDMI PHY pll and resolutions + pre-build EDIDs config: csky-randconfig-s031-20210617 (attached as .config) compiler: csky-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.3-341-g8af24329-dirty # https://github.com/tobetter/linux/commit/17cfab84283ccb9cd712e91a= 385e1ae49f71ab19 git remote add tobetter-linux https://github.com/tobetter/linux git fetch --no-tags tobetter-linux odroid-5.13.y git checkout 17cfab84283ccb9cd712e91a385e1ae49f71ab19 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' W=3D1 ARCH=3Dcsky = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): >> drivers/gpu/drm/exynos/exynos_hdmi.c:727:22: warning: unsigned conversio= n from 'int' to 'unsigned char' changes value from '5656' to '24' [-Woverfl= ow] 727 | 0x01, 0xD1, 0x29, 0x1618, 0x418, 0x190, 0xF5, 0xCF, | ^~~~~~ drivers/gpu/drm/exynos/exynos_hdmi.c:727:30: warning: unsigned conversio= n from 'int' to 'unsigned char' changes value from '1048' to '24' [-Woverfl= ow] 727 | 0x01, 0xD1, 0x29, 0x1618, 0x418, 0x190, 0xF5, 0xCF, | ^~~~~ drivers/gpu/drm/exynos/exynos_hdmi.c:727:37: warning: unsigned conversio= n from 'int' to 'unsigned char' changes value from '400' to '144' [-Woverfl= ow] 727 | 0x01, 0xD1, 0x29, 0x1618, 0x418, 0x190, 0xF5, 0xCF, | ^~~~~ drivers/gpu/drm/exynos/exynos_hdmi.c:728:10: warning: unsigned conversio= n from 'int' to 'unsigned char' changes value from '360' to '104' [-Woverfl= ow] 728 | 0x8D, 0x168, 0xF5, 0xD8, 0x45, 0xA0, 0xAC, 0x80, | ^~~~~ drivers/gpu/drm/exynos/exynos_hdmi.c:165:19: warning: 'hdmi_hpd_enable' = defined but not used [-Wunused-function] 165 | static int __init hdmi_hpd_enable(char *str) | ^~~~~~~~~~~~~~~ drivers/gpu/drm/exynos/exynos_hdmi.c:151:19: warning: 'dvi_force_enable'= defined but not used [-Wunused-function] 151 | static int __init dvi_force_enable(char *str) | ^~~~~~~~~~~~~~~~ sparse warnings: (new ones prefixed by >>) >> drivers/gpu/drm/exynos/exynos_hdmi.c:727:43: sparse: sparse: cast trunca= tes bits from constant value (1618 becomes 18) drivers/gpu/drm/exynos/exynos_hdmi.c:727:51: sparse: sparse: cast trunca= tes bits from constant value (418 becomes 18) drivers/gpu/drm/exynos/exynos_hdmi.c:727:58: sparse: sparse: cast trunca= tes bits from constant value (190 becomes 90) drivers/gpu/drm/exynos/exynos_hdmi.c:728:31: sparse: sparse: cast trunca= tes bits from constant value (168 becomes 68) drivers/gpu/drm/exynos/exynos_hdmi.c: note: in included file (through ar= ch/csky/include/asm/io.h, include/linux/io.h, include/linux/irq.h, ...): include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:267:16: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:267:16: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:299:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:299:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:299:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:267:16: sparse: sparse: cast to restricted __le= 32 vim +727 drivers/gpu/drm/exynos/exynos_hdmi.c 397 = 398 static const struct hdmiphy_config hdmiphy_5420_configs[] =3D { 399 { 400 .pixel_clock =3D 25200000, 401 .conf =3D { 402 0x01, 0x52, 0x3F, 0x55, 0x40, 0x01, 0x00, 0xC8, 403 0x82, 0xC8, 0xBD, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 404 0x06, 0x80, 0x01, 0x84, 0x05, 0x02, 0x24, 0x66, 405 0x54, 0xF4, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 406 }, 407 }, 408 { 409 .pixel_clock =3D 27000000, 410 .conf =3D { 411 0x01, 0xD1, 0x22, 0x51, 0x40, 0x08, 0xFC, 0xE0, 412 0x98, 0xE8, 0xCB, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 413 0x06, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 414 0x54, 0xE4, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 415 }, 416 }, 417 { 418 .pixel_clock =3D 27027000, 419 .conf =3D { 420 0x01, 0xD1, 0x2D, 0x72, 0x40, 0x64, 0x12, 0xC8, 421 0x43, 0xE8, 0x0E, 0xD9, 0x45, 0xA0, 0xAC, 0x80, 422 0x26, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 423 0x54, 0xE3, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 424 }, 425 }, 426 { 427 .pixel_clock =3D 31490000, 428 .conf =3D { 429 0x01, 0xD1, 0x34, 0x74, 0x44, 0x3C, 0x3A, 0xC2, 430 0x81, 0xE8, 0x3B, 0xD9, 0x45, 0xA0, 0xAC, 0x80, 431 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 432 0x54, 0xC3, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 433 }, 434 }, 435 { 436 .pixel_clock =3D 32000000, 437 .conf =3D { 438 0x01, 0x51, 0x28, 0x55, 0x44, 0x40, 0x00, 0xC8, 439 0x02, 0xC8, 0xF0, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 440 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 441 0x54, 0x80, 0x25, 0x01, 0x00, 0x00, 0x01, 0x80, 442 }, 443 }, 444 /* 445 * To support Vu5A, pixel clock 33.9MHz is needed 446 * but we don't have the exact HDMI PHY table 447 * so as a workaround, the closest table will be used. 448 */ 449 { 450 .pixel_clock =3D 33900000, 451 .conf =3D { 452 0x01, 0x51, 0x28, 0x55, 0x44, 0x40, 0x00, 0xC8, 453 0x02, 0xC8, 0xF0, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 454 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 455 0x54, 0x80, 0x25, 0x01, 0x00, 0x00, 0x01, 0x80, 456 }, 457 }, 458 { 459 .pixel_clock =3D 36000000, 460 .conf =3D { 461 0x01, 0x51, 0x2D, 0x55, 0x40, 0x40, 0x00, 0xC8, 462 0x02, 0xC8, 0x0E, 0xD9, 0x45, 0xA0, 0xAC, 0x80, 463 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 464 0x54, 0xAB, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 465 }, 466 }, 467 { 468 .pixel_clock =3D 40000000, 469 .conf =3D { 470 0x01, 0xD1, 0x21, 0x31, 0x40, 0x3C, 0x28, 0xC8, 471 0x87, 0xE8, 0xC8, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 472 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 473 0x54, 0x9A, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 474 }, 475 }, 476 /* 477 * To support Vu7A+, pixel clock 49MHz is needed 478 * but we don't have the exact HDMI PHY table 479 * so as a workaround, the closest table will be used. 480 */ 481 { 482 .pixel_clock =3D 49000000, 483 .conf =3D { 484 0x01, 0x51, 0x2A, 0x32, 0x42, 0x30, 0x00, 0xC4, 485 0x83, 0xE8, 0xFC, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 486 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 487 0x54, 0x7A, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 488 }, 489 }, 490 { 491 .pixel_clock =3D 50400000, 492 .conf =3D { 493 0x01, 0x51, 0x2A, 0x32, 0x42, 0x30, 0x00, 0xC4, 494 0x83, 0xE8, 0xFC, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 495 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 496 0x54, 0x7A, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 497 }, 498 }, 499 { 500 .pixel_clock =3D 65000000, 501 .conf =3D { 502 0x01, 0xD1, 0x36, 0x34, 0x40, 0x0C, 0x04, 0xC8, 503 0x82, 0xE8, 0x45, 0xD9, 0x45, 0xA0, 0xAC, 0x80, 504 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 505 0x54, 0xBD, 0x24, 0x01, 0x00, 0x00, 0x01, 0x80, 506 }, 507 }, 508 { 509 .pixel_clock =3D 71000000, 510 .conf =3D { 511 0x01, 0xD1, 0x3B, 0x35, 0x40, 0x0C, 0x04, 0xC8, 512 0x85, 0xE8, 0x63, 0xD9, 0x45, 0xA0, 0xAC, 0x80, 513 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 514 0x54, 0x57, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 515 }, 516 }, 517 { 518 .pixel_clock =3D 73250000, 519 .conf =3D { 520 0x01, 0xD1, 0x1F, 0x10, 0x40, 0x78, 0x8D, 0xC8, 521 0x81, 0xE8, 0xB7, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 522 0x56, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 523 0x54, 0xA8, 0x24, 0x01, 0x00, 0x00, 0x01, 0x80, 524 }, 525 }, 526 { 527 .pixel_clock =3D 74170000, 528 .conf =3D { 529 0x01, 0xD1, 0x1F, 0x10, 0x40, 0x5B, 0xEF, 0xC8, 530 0x81, 0xE8, 0xB9, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 531 0x56, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 532 0x54, 0xA6, 0x24, 0x01, 0x00, 0x00, 0x01, 0x80, 533 }, 534 }, 535 { 536 .pixel_clock =3D 74250000, 537 .conf =3D { 538 0x01, 0xD1, 0x1F, 0x10, 0x40, 0x40, 0xF8, 0x08, 539 0x81, 0xE8, 0xBA, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 540 0x26, 0x80, 0x09, 0x84, 0x05, 0x22, 0x24, 0x66, 541 0x54, 0xA5, 0x24, 0x01, 0x00, 0x00, 0x01, 0x80, 542 }, 543 }, 544 { 545 .pixel_clock =3D 80140000, 546 .conf =3D { 547 0x01, 0xD1, 0x21, 0x11, 0x40, 0x3C, 0x2F, 0xC8, 548 0x87, 0xE8, 0xC8, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 549 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x86, 550 0x54, 0x99, 0x24, 0x01, 0x00, 0x00, 0x01, 0x80, 551 }, 552 }, 553 { 554 .pixel_clock =3D 83500000, 555 .conf =3D { 556 0x01, 0xD1, 0x23, 0x11, 0x40, 0x0C, 0xFB, 0xC8, 557 0x85, 0xE8, 0xD1, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 558 0x08, 0x80, 0x09, 0x84, 0x05, 0x02, 0x24, 0x66, 559 0x54, 0x4A, 0x24, 0x00, 0x00, 0x00, 0x01, 0x80, 560 }, 561 }, 562 { 563 .pixel_clock =3D 84750000, 564 .conf =3D { 565 0x01, 0xD1, 0x23, 0x11, 0x40, 0x30, 0x1E, 0xC7, 566 0x84, 0xE8, 0xD4, 0xD8, 0x45, 0xA0, 0xAC, 0x80, 567 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