From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============4776078813140376855==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [djwong-xfs:scrub-rtsummary 23/25] fs/xfs/scrub/array.c:627:2: error: implicit declaration of function 'trace_xfbma_sort_stats' Date: Tue, 23 Jun 2020 15:22:36 +0800 Message-ID: <202006231534.GlSY4MJD%lkp@intel.com> List-Id: --===============4776078813140376855== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/djwong/xfs-linux.gi= t scrub-rtsummary head: 6a3195f0b8086aa941c656f91b7a0498e15aad0d commit: 6fdc49bc994d255e80d09aece3521849005b956a [23/25] xfs: create a big = array data structure config: x86_64-kexec (attached as .config) compiler: gcc-9 (Debian 9.3.0-13) 9.3.0 reproduce (this is a W=3D1 build): git checkout 6fdc49bc994d255e80d09aece3521849005b956a # save the attached .config to linux build tree make W=3D1 ARCH=3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): fs/xfs/scrub/array.c: In function 'xfbma_sort': >> fs/xfs/scrub/array.c:627:2: error: implicit declaration of function 'tra= ce_xfbma_sort_stats' [-Werror=3Dimplicit-function-declaration] 627 | trace_xfbma_sort_stats(array->nr, max_stack_depth, max_stack_us= ed, | ^~~~~~~~~~~~~~~~~~~~~~ cc1: some warnings being treated as errors vim +/trace_xfbma_sort_stats +627 fs/xfs/scrub/array.c 468 = 469 /* 470 * For array subsets smaller than 4 elements, it's slightly faster t= o use 471 * insertion sort than quicksort's stack machine. 472 */ 473 #define ISORT_THRESHOLD (4) 474 int 475 xfbma_sort( 476 struct xfbma *array, 477 xfbma_cmp_fn cmp_fn) 478 { 479 int64_t *stack; 480 int64_t *beg; 481 int64_t *end; 482 void *pivot =3D xfbma_temp(array, 0); 483 void *temp =3D xfbma_temp(array, 1); 484 int64_t lo, mid, hi; 485 const int max_stack_depth =3D ilog2(array->nr) + 1; 486 int stack_depth =3D 0; 487 int max_stack_used =3D 0; 488 int error =3D 0; 489 = 490 if (array->nr =3D=3D 0) 491 return 0; 492 if (array->nr >=3D QSORT_MAX_RECS) 493 return -E2BIG; 494 if (array->nr <=3D ISORT_THRESHOLD) 495 return xfbma_isort(array, cmp_fn, 0, array->nr - 1); 496 = 497 /* Allocate our pointer stacks for sorting. */ 498 stack =3D kmem_alloc(sizeof(int64_t) * 2 * max_stack_depth, 499 KM_NOFS | KM_MAYFAIL); 500 if (!stack) 501 return -ENOMEM; 502 beg =3D stack; 503 end =3D &stack[max_stack_depth]; 504 = 505 beg[0] =3D 0; 506 end[0] =3D array->nr; 507 while (stack_depth >=3D 0) { 508 lo =3D beg[stack_depth]; 509 hi =3D end[stack_depth] - 1; 510 = 511 /* Nothing left in this partition to sort; pop stack. */ 512 if (lo >=3D hi) { 513 stack_depth--; 514 continue; 515 } 516 = 517 /* Small enough for insertion sort? */ 518 if (hi - lo <=3D ISORT_THRESHOLD) { 519 error =3D xfbma_isort(array, cmp_fn, lo, hi); 520 if (error) 521 goto out_free; 522 stack_depth--; 523 continue; 524 } 525 = 526 /* Pick a pivot, move it to a[lo] and stash it. */ 527 mid =3D lo + ((hi - lo) / 2); 528 error =3D xfbma_qsort_pivot(array, cmp_fn, lo, mid, hi); 529 if (error) 530 goto out_free; 531 = 532 error =3D xfbma_get(array, lo, pivot); 533 if (error) 534 goto out_free; 535 = 536 /* 537 * Rearrange a[lo..hi] such that everything smaller than the 538 * pivot is on the left side of the range and everything larger 539 * than the pivot is on the right side of the range. 540 */ 541 while (lo < hi) { 542 /* 543 * Decrement hi until it finds an a[hi] less than the 544 * pivot value. 545 */ 546 error =3D xfbma_get(array, hi, temp); 547 if (error) 548 goto out_free; 549 while (cmp_fn(temp, pivot) >=3D 0 && lo < hi) { 550 hi--; 551 error =3D xfbma_get(array, hi, temp); 552 if (error) 553 goto out_free; 554 } 555 = 556 /* Copy that item (a[hi]) to a[lo]. */ 557 if (lo < hi) { 558 error =3D xfbma_set(array, lo++, temp); 559 if (error) 560 goto out_free; 561 } 562 = 563 /* 564 * Increment lo until it finds an a[lo] greater than 565 * the pivot value. 566 */ 567 error =3D xfbma_get(array, lo, temp); 568 if (error) 569 goto out_free; 570 while (cmp_fn(temp, pivot) <=3D 0 && lo < hi) { 571 lo++; 572 error =3D xfbma_get(array, lo, temp); 573 if (error) 574 goto out_free; 575 } 576 = 577 /* Copy that item (a[lo]) to a[hi]. */ 578 if (lo < hi) { 579 error =3D xfbma_set(array, hi--, temp); 580 if (error) 581 goto out_free; 582 } 583 } 584 = 585 /* 586 * Put our pivot value in the correct place@a[lo]. All 587 * values between a[beg[i]] and a[lo - 1] should be less than 588 * the pivot; and all values between a[lo + 1] and a[end[i]-1] 589 * should be greater than the pivot. 590 */ 591 error =3D xfbma_set(array, lo, pivot); 592 if (error) 593 goto out_free; 594 = 595 /* 596 * Set up the pointers for the next iteration. We push onto 597 * the stack all of the unsorted values between a[lo + 1] and 598 * a[end[i]], and we tweak the current stack frame to point to 599 * the unsorted values between a[beg[i]] and a[lo] so that 600 * those values will be sorted when we pop the stack. 601 */ 602 beg[stack_depth + 1] =3D lo + 1; 603 end[stack_depth + 1] =3D end[stack_depth]; 604 end[stack_depth++] =3D lo; 605 = 606 /* Check our stack usage. */ 607 max_stack_used =3D max(max_stack_used, stack_depth); 608 if (stack_depth >=3D max_stack_depth) { 609 ASSERT(0); 610 error =3D -EFSCORRUPTED; 611 goto out_free; 612 } 613 = 614 /* 615 * Always start with the smaller of the two partitions to keep 616 * the amount of recursion in check. 617 */ 618 if (end[stack_depth] - beg[stack_depth] > 619 end[stack_depth - 1] - beg[stack_depth - 1]) { 620 swap(beg[stack_depth], beg[stack_depth - 1]); 621 swap(end[stack_depth], end[stack_depth - 1]); 622 } 623 } 624 = 625 out_free: 626 kfree(stack); > 627 trace_xfbma_sort_stats(array->nr, max_stack_depth, max_stack_used, 628 error); 629 return error; 630 } 631 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============4776078813140376855== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICC+n8V4AAy5jb25maWcAlBzLctw28p6vmHIuycFZPWyVU1s6YEhwBh6SYABwNKMLS5HHjmpt yavHrv332w2AZAMEx9kcHA268Wr0Gw3+/NPPC/by/PDl5vnu9ubz5++LT4f7w+PN8+HD4uPd58M/ F7lc1NIseC7Mb4Bc3t2/fPvHt3cX3cWbxdvf3v128vrx9myxOTzeHz4vsof7j3efXqD/3cP9Tz// lMm6EKsuy7otV1rIujN8Zy5ffbq9ff374pf88Ofdzf3i99/OYZjT81/dX69IN6G7VZZdfu+bVuNQ l7+fnJ+c9IAyH9rPzt+c2P+GcUpWrwbwCRk+Y3VXinozTkAaO22YEVkAWzPdMV11K2lkEiBq6MpH kFB/dFdSkRmWrShzIyreGbYseaelMiPUrBVnOQxTSPgHUDR2BVL+vFjZk/m8eDo8v3wdiStqYTpe bzumgAyiEuby/AzQ+7XJqhEwjeHaLO6eFvcPzzjCQDeZsbInzatXqeaOtXSzdv2dZqUh+Gu25d2G 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