From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on aws-us-west-2-korg-lkml-1.web.codeaurora.org Received: from mail.kernel.org (mail.kernel.org [198.145.29.99]) by smtp.lore.kernel.org (Postfix) with ESMTP id 8D53CC433F5 for ; Sun, 14 Nov 2021 14:04:05 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [23.128.96.18]) by mail.kernel.org (Postfix) with ESMTP id 70D0D61104 for ; Sun, 14 Nov 2021 14:04:05 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S236073AbhKNOGx (ORCPT ); Sun, 14 Nov 2021 09:06:53 -0500 Received: from mga07.intel.com ([134.134.136.100]:47137 "EHLO mga07.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S234393AbhKNOFv (ORCPT ); Sun, 14 Nov 2021 09:05:51 -0500 X-IronPort-AV: E=McAfee;i="6200,9189,10167"; a="296755299" X-IronPort-AV: E=Sophos;i="5.87,234,1631602800"; d="gz'50?scan'50,208,50";a="296755299" Received: from orsmga004.jf.intel.com ([10.7.209.38]) by orsmga105.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 14 Nov 2021 06:02:41 -0800 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.87,234,1631602800"; d="gz'50?scan'50,208,50";a="603558629" Received: from lkp-server02.sh.intel.com (HELO c20d8bc80006) ([10.239.97.151]) by orsmga004.jf.intel.com with ESMTP; 14 Nov 2021 06:02:40 -0800 Received: from kbuild by c20d8bc80006 with local (Exim 4.92) (envelope-from ) id 1mmG5f-000LRY-AT; Sun, 14 Nov 2021 14:02:39 +0000 Date: Sun, 14 Nov 2021 22:02:23 +0800 From: kernel test robot To: Nicolas Saenz Julienne Cc: kbuild-all@lists.01.org, linux-kernel@vger.kernel.org Subject: [nsaenz-rpi:wip 4/5] mm/page_alloc.c:1472:30: sparse: sparse: incorrect type in assignment (different modifiers) Message-ID: <202111142216.hRfoGXLE-lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="PEIAKu/WMn1b1Hv9" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --PEIAKu/WMn1b1Hv9 Content-Type: text/plain; charset=us-ascii Content-Disposition: inline tree: https://git.kernel.org/pub/scm/linux/kernel/git/nsaenz/linux-rpi.git wip head: a6f29192b1e2bf93a6ab7c25c854307431124b8b commit: fa796c53bdbc3c8619a6f8d7d2d530e4c2e76ba9 [4/5] mm/page_alloc: Access to lists in 'struct per_cpu_pages' indirectly config: arm64-randconfig-s031-20211008 (attached as .config) compiler: aarch64-linux-gcc (GCC) 11.2.0 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: v0.6.4-dirty # https://git.kernel.org/pub/scm/linux/kernel/git/nsaenz/linux-rpi.git/commit/?id=fa796c53bdbc3c8619a6f8d7d2d530e4c2e76ba9 git remote add nsaenz-rpi https://git.kernel.org/pub/scm/linux/kernel/git/nsaenz/linux-rpi.git git fetch --no-tags nsaenz-rpi wip git checkout fa796c53bdbc3c8619a6f8d7d2d530e4c2e76ba9 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-11.2.0 make.cross C=1 CF='-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=arm64 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> mm/page_alloc.c:1472:30: sparse: sparse: incorrect type in assignment (different modifiers) @@ expected struct list_head *list @@ got struct list_head [noderef] * @@ mm/page_alloc.c:1472:30: sparse: expected struct list_head *list mm/page_alloc.c:1472:30: sparse: got struct list_head [noderef] * >> mm/page_alloc.c:3383:40: sparse: sparse: incorrect type in argument 2 (different modifiers) @@ expected struct list_head *head @@ got struct list_head [noderef] * @@ mm/page_alloc.c:3383:40: sparse: expected struct list_head *head mm/page_alloc.c:3383:40: sparse: got struct list_head [noderef] * mm/page_alloc.c:5987:17: sparse: sparse: incorrect type in initializer (different address spaces) @@ expected void const [noderef] __percpu *__vpp_verify @@ got struct per_cpu_pages [noderef] __percpu ** @@ mm/page_alloc.c:5987:17: sparse: expected void const [noderef] __percpu *__vpp_verify mm/page_alloc.c:5987:17: sparse: got struct per_cpu_pages [noderef] __percpu ** mm/page_alloc.c:5987:17: sparse: sparse: incorrect type in initializer (different address spaces) @@ expected void const [noderef] __percpu *__vpp_verify @@ got struct per_cpu_pages [noderef] __percpu ** @@ mm/page_alloc.c:5987:17: sparse: expected void const [noderef] __percpu *__vpp_verify mm/page_alloc.c:5987:17: sparse: got struct per_cpu_pages [noderef] __percpu ** mm/page_alloc.c:5987:17: sparse: sparse: incorrect type in initializer (different address spaces) @@ expected void const [noderef] __percpu *__vpp_verify @@ got struct per_cpu_pages [noderef] __percpu ** @@ mm/page_alloc.c:5987:17: sparse: expected void const [noderef] __percpu *__vpp_verify mm/page_alloc.c:5987:17: sparse: got struct per_cpu_pages [noderef] __percpu ** mm/page_alloc.c:5987:17: sparse: sparse: incorrect type in initializer (different address spaces) @@ expected void const [noderef] __percpu *__vpp_verify @@ got struct per_cpu_pages [noderef] __percpu ** @@ mm/page_alloc.c:5987:17: sparse: expected void const [noderef] __percpu *__vpp_verify mm/page_alloc.c:5987:17: sparse: got struct per_cpu_pages [noderef] __percpu ** mm/page_alloc.c:5987:17: sparse: sparse: incorrect type in initializer (different address spaces) @@ expected void const [noderef] __percpu *__vpp_verify @@ got struct per_cpu_pages [noderef] __percpu ** @@ mm/page_alloc.c:5987:17: sparse: expected void const [noderef] __percpu *__vpp_verify mm/page_alloc.c:5987:17: sparse: got struct per_cpu_pages [noderef] __percpu ** >> mm/page_alloc.c:6892:47: sparse: sparse: incorrect type in argument 1 (different modifiers) @@ expected struct list_head *list @@ got struct list_head [noderef] * @@ mm/page_alloc.c:6892:47: sparse: expected struct list_head *list mm/page_alloc.c:6892:47: sparse: got struct list_head [noderef] * >> mm/page_alloc.c:1457:17: sparse: sparse: dereference of noderef expression mm/page_alloc.c:1512:9: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3104:13: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3105:42: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3218:29: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3223:37: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3384:9: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3386:13: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3618:14: sparse: sparse: incorrect type in assignment (different modifiers) @@ expected struct list_head *list @@ got struct list_head [noderef] * @@ mm/page_alloc.c:3618:14: sparse: expected struct list_head *list mm/page_alloc.c:3618:14: sparse: got struct list_head [noderef] * mm/page_alloc.c:3638:25: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3645:17: sparse: sparse: dereference of noderef expression mm/page_alloc.c: note: in included file (through include/linux/mm.h): include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer mm/page_alloc.c:3618:14: sparse: sparse: incorrect type in assignment (different modifiers) @@ expected struct list_head *list @@ got struct list_head [noderef] * @@ mm/page_alloc.c:3618:14: sparse: expected struct list_head *list mm/page_alloc.c:3618:14: sparse: got struct list_head [noderef] * mm/page_alloc.c:3638:25: sparse: sparse: dereference of noderef expression mm/page_alloc.c:3645:17: sparse: sparse: dereference of noderef expression include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer include/linux/gfp.h:353:27: sparse: sparse: restricted gfp_t degrades to integer mm/page_alloc.c:5890:76: sparse: sparse: dereference of noderef expression mm/page_alloc.c:5984:76: sparse: sparse: dereference of noderef expression mm/page_alloc.c:5987:17: sparse: sparse: dereference of noderef expression mm/page_alloc.c:5987:17: sparse: sparse: dereference of noderef expression mm/page_alloc.c:5987:17: sparse: sparse: dereference of noderef expression mm/page_alloc.c:5987:17: sparse: sparse: dereference of noderef expression vim +1472 mm/page_alloc.c 1428 1429 /* 1430 * Frees a number of pages from the PCP lists 1431 * Assumes all pages on list are in same zone, and of same order. 1432 * count is the number of pages to free. 1433 * 1434 * If the zone was previously in an "all pages pinned" state then look to 1435 * see if this freeing clears that state. 1436 * 1437 * And clear the zone's pages_scanned counter, to hold off the "all pages are 1438 * pinned" detection logic. 1439 */ 1440 static void free_pcppages_bulk(struct zone *zone, int count, 1441 struct per_cpu_pages *pcp, 1442 struct pcplists *lp) 1443 { 1444 int pindex = 0; 1445 int batch_free = 0; 1446 int nr_freed = 0; 1447 unsigned int order; 1448 int prefetch_nr = READ_ONCE(pcp->batch); 1449 bool isolated_pageblocks; 1450 struct page *page, *tmp; 1451 LIST_HEAD(head); 1452 1453 /* 1454 * Ensure proper count is passed which otherwise would stuck in the 1455 * below while (list_empty(list)) loop. 1456 */ > 1457 count = min(lp->count, count); 1458 while (count > 0) { 1459 struct list_head *list; 1460 1461 /* 1462 * Remove pages from lists in a round-robin fashion. A 1463 * batch_free count is maintained that is incremented when an 1464 * empty list is encountered. This is so more pages are freed 1465 * off fuller lists instead of spinning excessively around empty 1466 * lists 1467 */ 1468 do { 1469 batch_free++; 1470 if (++pindex == NR_PCP_LISTS) 1471 pindex = 0; > 1472 list = &lp->lists[pindex]; 1473 } while (list_empty(list)); 1474 1475 /* This is the only non-empty list. Free them all. */ 1476 if (batch_free == NR_PCP_LISTS) 1477 batch_free = count; 1478 1479 order = pindex_to_order(pindex); 1480 BUILD_BUG_ON(MAX_ORDER >= (1<lru); 1485 nr_freed += 1 << order; 1486 count -= 1 << order; 1487 1488 if (bulkfree_pcp_prepare(page)) 1489 continue; 1490 1491 /* Encode order with the migratetype */ 1492 page->index <<= NR_PCP_ORDER_WIDTH; 1493 page->index |= order; 1494 1495 list_add_tail(&page->lru, &head); 1496 1497 /* 1498 * We are going to put the page back to the global 1499 * pool, prefetch its buddy to speed up later access 1500 * under zone->lock. It is believed the overhead of 1501 * an additional test and calculating buddy_pfn here 1502 * can be offset by reduced memory latency later. To 1503 * avoid excessive prefetching due to large count, only 1504 * prefetch buddy for the first pcp->batch nr of pages. 1505 */ 1506 if (prefetch_nr) { 1507 prefetch_buddy(page); 1508 prefetch_nr--; 1509 } 1510 } while (count > 0 && --batch_free && !list_empty(list)); 1511 } 1512 lp->count -= nr_freed; 1513 1514 /* 1515 * local_lock_irq held so equivalent to spin_lock_irqsave for 1516 * both PREEMPT_RT and non-PREEMPT_RT configurations. 1517 */ 1518 spin_lock(&zone->lock); 1519 isolated_pageblocks = has_isolate_pageblock(zone); 1520 1521 /* 1522 * Use safe version since after __free_one_page(), 1523 * page->lru.next will not point to original list. 1524 */ 1525 list_for_each_entry_safe(page, tmp, &head, lru) { 1526 int mt = get_pcppage_migratetype(page); 1527 1528 /* mt has been encoded with the order (see above) */ 1529 order = mt & NR_PCP_ORDER_MASK; 1530 mt >>= NR_PCP_ORDER_WIDTH; 1531 1532 /* MIGRATE_ISOLATE page should not go to pcplists */ 1533 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