From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8045873748792561015==" MIME-Version: 1.0 From: kernel test robot Subject: mm/mprotect.c:140:48: sparse: sparse: context imbalance in 'change_pte_range' - different lock contexts for basic block Date: Wed, 09 Jun 2021 12:35:25 +0800 Message-ID: <202106091215.gPR6eEhU-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============8045873748792561015== 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: Helge Deller CC: John David Anglin tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 368094df48e680fa51cedb68537408cfa64b788e commit: b7795074a04669d0a023babf786d29bf67c68783 parisc: Optimize per-paget= able spinlocks date: 4 months ago :::::: branch date: 11 hours ago :::::: commit date: 4 months ago config: parisc-randconfig-s032-20210607 (attached as .config) compiler: hppa64-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://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3Db7795074a04669d0a023babf786d29bf67c68783 git remote add linus https://git.kernel.org/pub/scm/linux/kernel/gi= t/torvalds/linux.git git fetch --no-tags linus master git checkout b7795074a04669d0a023babf786d29bf67c68783 # 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=3Dparisc = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> mm/mprotect.c:140:48: sparse: sparse: context imbalance in 'change_pte_r= ange' - different lock contexts for basic block -- mm/memory.c:698:1: sparse: sparse: context imbalance in 'copy_nonpresent= _pte' - different lock contexts for basic block mm/memory.c:900:9: sparse: sparse: context imbalance in 'copy_pte_range'= - different lock contexts for basic block mm/memory.c: note: in included file (through include/linux/pgtable.h, ar= ch/parisc/include/asm/io.h, include/linux/io.h, ...): arch/parisc/include/asm/pgtable.h:451:9: sparse: sparse: context imbalan= ce in 'zap_pte_range' - different lock contexts for basic block mm/memory.c:1623:16: sparse: sparse: context imbalance in '__get_locked_= pte' - different lock contexts for basic block mm/memory.c:1644:9: sparse: sparse: context imbalance in 'insert_page_in= to_pte_locked' - different lock contexts for basic block mm/memory.c:1672:9: sparse: sparse: context imbalance in 'insert_page' -= different lock contexts for basic block mm/memory.c:1964:9: sparse: sparse: context imbalance in 'insert_pfn' - = different lock contexts for basic block mm/memory.c:2183:17: sparse: sparse: context imbalance in 'remap_pte_ran= ge' - different lock contexts for basic block mm/memory.c:2419:17: sparse: sparse: context imbalance in 'apply_to_pte_= range' - unexpected unlock mm/memory.c:2912:17: sparse: sparse: context imbalance in 'wp_page_copy'= - different lock contexts for basic block mm/memory.c:3022:17: sparse: sparse: context imbalance in 'wp_pfn_shared= ' - unexpected unlock mm/memory.c:3085:19: sparse: sparse: context imbalance in 'do_wp_page' -= different lock contexts for basic block mm/memory.c:3580:9: sparse: sparse: context imbalance in 'do_anonymous_p= age' - different lock contexts for basic block mm/memory.c:3657:19: sparse: sparse: context imbalance in 'pte_alloc_one= _map' - different lock contexts for basic block mm/memory.c:3842:9: sparse: sparse: context imbalance in 'alloc_set_pte'= - different lock contexts for basic block mm/memory.c:3884:17: sparse: sparse: context imbalance in 'finish_fault'= - unexpected unlock mm/memory.c:3993:9: sparse: sparse: context imbalance in 'do_fault_aroun= d' - unexpected unlock >> mm/memory.c:4209:32: sparse: sparse: context imbalance in 'do_numa_page'= - different lock contexts for basic block mm/memory.c:4426:9: sparse: sparse: context imbalance in 'handle_pte_fau= lt' - different lock contexts for basic block mm/memory.c:4712:5: sparse: sparse: context imbalance in 'follow_pte' - = different lock contexts for basic block mm/memory.c:4802:9: sparse: sparse: context imbalance in 'follow_pfn' - = unexpected unlock vim +/change_pte_range +140 mm/mprotect.c 36f881883c5794 Kirill A. Shutemov 2015-06-24 37 = 4b10e7d562c90d Mel Gorman 2012-10-25 38 static unsigned long cha= nge_pte_range(struct vm_area_struct *vma, pmd_t *pmd, c1e6098b23bb46 Peter Zijlstra 2006-09-25 39 unsigned long addr, un= signed long end, pgprot_t newprot, 58705444c45b3c Peter Xu 2020-04-06 40 unsigned long cp_flags) ^1da177e4c3f41 Linus Torvalds 2005-04-16 41 { 0697212a411c1d Christoph Lameter 2006-06-23 42 pte_t *pte, oldpte; 705e87c0c3c384 Hugh Dickins 2005-10-29 43 spinlock_t *ptl; 7da4d641c58d20 Peter Zijlstra 2012-11-19 44 unsigned long pages =3D= 0; 3e32158767b04d Andi Kleen 2016-12-12 45 int target_node =3D NUM= A_NO_NODE; 58705444c45b3c Peter Xu 2020-04-06 46 bool dirty_accountable = =3D cp_flags & MM_CP_DIRTY_ACCT; 58705444c45b3c Peter Xu 2020-04-06 47 bool prot_numa =3D cp_f= lags & MM_CP_PROT_NUMA; 292924b2602474 Peter Xu 2020-04-06 48 bool uffd_wp =3D cp_fla= gs & MM_CP_UFFD_WP; 292924b2602474 Peter Xu 2020-04-06 49 bool uffd_wp_resolve = =3D cp_flags & MM_CP_UFFD_WP_RESOLVE; ^1da177e4c3f41 Linus Torvalds 2005-04-16 50 = 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 51 /* c1e8d7c6a7a682 Michel Lespinasse 2020-06-08 52 * Can be called with o= nly the mmap_lock for reading by 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 53 * prot_numa so we must= check the pmd isn't constantly 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 54 * changing from under = us from pmd_none to pmd_trans_huge 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 55 * and/or the other way= around. 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 56 */ 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 57 if (pmd_trans_unstable(= pmd)) 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 58 return 0; 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 59 = 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 60 /* 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 61 * The pmd points to a = regular pte so the pmd can't change c1e8d7c6a7a682 Michel Lespinasse 2020-06-08 62 * from under us even i= f the mmap_lock is only hold for 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 63 * reading. 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 64 */ 175ad4f1e7a29c Andrea Arcangeli 2017-02-22 65 pte =3D pte_offset_map_= lock(vma->vm_mm, pmd, addr, &ptl); 1ad9f620c3a22f Mel Gorman 2014-04-07 66 = 3e32158767b04d Andi Kleen 2016-12-12 67 /* Get target node for = single threaded private VMAs */ 3e32158767b04d Andi Kleen 2016-12-12 68 if (prot_numa && !(vma-= >vm_flags & VM_SHARED) && 3e32158767b04d Andi Kleen 2016-12-12 69 atomic_read(&vma->v= m_mm->mm_users) =3D=3D 1) 3e32158767b04d Andi Kleen 2016-12-12 70 target_node =3D numa_n= ode_id(); 3e32158767b04d Andi Kleen 2016-12-12 71 = 3ea277194daaea Mel Gorman 2017-08-02 72 flush_tlb_batched_pendi= ng(vma->vm_mm); 6606c3e0da5360 Zachary Amsden 2006-09-30 73 arch_enter_lazy_mmu_mod= e(); ^1da177e4c3f41 Linus Torvalds 2005-04-16 74 do { 0697212a411c1d Christoph Lameter 2006-06-23 75 oldpte =3D *pte; 0697212a411c1d Christoph Lameter 2006-06-23 76 if (pte_present(oldpte= )) { ^1da177e4c3f41 Linus Torvalds 2005-04-16 77 pte_t ptent; b191f9b106ea1a Mel Gorman 2015-03-25 78 bool preserve_write = =3D prot_numa && pte_write(oldpte); ^1da177e4c3f41 Linus Torvalds 2005-04-16 79 = e944fd67b625c0 Mel Gorman 2015-02-12 80 /* e944fd67b625c0 Mel Gorman 2015-02-12 81 * Avoid trapping fau= lts against the zero or KSM e944fd67b625c0 Mel Gorman 2015-02-12 82 * pages. See similar= comment in change_huge_pmd. e944fd67b625c0 Mel Gorman 2015-02-12 83 */ e944fd67b625c0 Mel Gorman 2015-02-12 84 if (prot_numa) { e944fd67b625c0 Mel Gorman 2015-02-12 85 struct page *page; e944fd67b625c0 Mel Gorman 2015-02-12 86 = a818f5363a0eba Huang Ying 2019-11-30 87 /* Avoid TLB flush i= f possible */ a818f5363a0eba Huang Ying 2019-11-30 88 if (pte_protnone(old= pte)) a818f5363a0eba Huang Ying 2019-11-30 89 continue; a818f5363a0eba Huang Ying 2019-11-30 90 = e944fd67b625c0 Mel Gorman 2015-02-12 91 page =3D vm_normal_p= age(vma, addr, oldpte); e944fd67b625c0 Mel Gorman 2015-02-12 92 if (!page || PageKsm= (page)) e944fd67b625c0 Mel Gorman 2015-02-12 93 continue; 10c1045f28e86a Mel Gorman 2015-02-12 94 = 859d4adc3415a6 Henry Willard 2018-01-31 95 /* Also skip shared = copy-on-write pages */ 859d4adc3415a6 Henry Willard 2018-01-31 96 if (is_cow_mapping(v= ma->vm_flags) && 859d4adc3415a6 Henry Willard 2018-01-31 97 page_mapcount(pa= ge) !=3D 1) 859d4adc3415a6 Henry Willard 2018-01-31 98 continue; 859d4adc3415a6 Henry Willard 2018-01-31 99 = 09a913a7a947fb Mel Gorman 2018-04-10 100 /* 09a913a7a947fb Mel Gorman 2018-04-10 101 * While migration c= an move some dirty pages, 09a913a7a947fb Mel Gorman 2018-04-10 102 * it cannot move th= em all from MIGRATE_ASYNC 09a913a7a947fb Mel Gorman 2018-04-10 103 * context. 09a913a7a947fb Mel Gorman 2018-04-10 104 */ 9de4f22a60f731 Huang Ying 2020-04-06 105 if (page_is_file_lru= (page) && PageDirty(page)) 09a913a7a947fb Mel Gorman 2018-04-10 106 continue; 09a913a7a947fb Mel Gorman 2018-04-10 107 = 3e32158767b04d Andi Kleen 2016-12-12 108 /* 3e32158767b04d Andi Kleen 2016-12-12 109 * Don't mess with P= TEs if page is already on the node 3e32158767b04d Andi Kleen 2016-12-12 110 * a single-threaded= process is running on. 3e32158767b04d Andi Kleen 2016-12-12 111 */ 3e32158767b04d Andi Kleen 2016-12-12 112 if (target_node =3D= =3D page_to_nid(page)) 3e32158767b04d Andi Kleen 2016-12-12 113 continue; e944fd67b625c0 Mel Gorman 2015-02-12 114 } e944fd67b625c0 Mel Gorman 2015-02-12 115 = 04a8645304500b Aneesh Kumar K.V 2019-03-05 116 oldpte =3D ptep_modif= y_prot_start(vma, addr, pte); 04a8645304500b Aneesh Kumar K.V 2019-03-05 117 ptent =3D pte_modify(= oldpte, newprot); b191f9b106ea1a Mel Gorman 2015-03-25 118 if (preserve_write) 288bc54949fc26 Aneesh Kumar K.V 2017-02-24 119 ptent =3D pte_mk_sav= edwrite(ptent); 8a0516ed8b90c9 Mel Gorman 2015-02-12 120 = 292924b2602474 Peter Xu 2020-04-06 121 if (uffd_wp) { 292924b2602474 Peter Xu 2020-04-06 122 ptent =3D pte_wrprot= ect(ptent); 292924b2602474 Peter Xu 2020-04-06 123 ptent =3D pte_mkuffd= _wp(ptent); 292924b2602474 Peter Xu 2020-04-06 124 } else if (uffd_wp_re= solve) { 292924b2602474 Peter Xu 2020-04-06 125 /* 292924b2602474 Peter Xu 2020-04-06 126 * Leave the write b= it to be handled 292924b2602474 Peter Xu 2020-04-06 127 * by PF interrupt h= andler, then 292924b2602474 Peter Xu 2020-04-06 128 * things like COW c= ould be properly 292924b2602474 Peter Xu 2020-04-06 129 * handled. 292924b2602474 Peter Xu 2020-04-06 130 */ 292924b2602474 Peter Xu 2020-04-06 131 ptent =3D pte_clear_= uffd_wp(ptent); 292924b2602474 Peter Xu 2020-04-06 132 } 292924b2602474 Peter Xu 2020-04-06 133 = 8a0516ed8b90c9 Mel Gorman 2015-02-12 134 /* Avoid taking write= faults for known dirty pages */ 64e455079e1bd7 Peter Feiner 2014-10-13 135 if (dirty_accountable= && pte_dirty(ptent) && 64e455079e1bd7 Peter Feiner 2014-10-13 136 (pte_soft_dirty(pte= nt) || 8a0516ed8b90c9 Mel Gorman 2015-02-12 137 !(vma->vm_flags & = VM_SOFTDIRTY))) { 9d85d5863fa481 Aneesh Kumar K.V 2014-02-12 138 ptent =3D pte_mkwrit= e(ptent); 4b10e7d562c90d Mel Gorman 2012-10-25 139 } 04a8645304500b Aneesh Kumar K.V 2019-03-05 @140 ptep_modify_prot_comm= it(vma, addr, pte, oldpte, ptent); 7da4d641c58d20 Peter Zijlstra 2012-11-19 141 pages++; f45ec5ff16a75f Peter Xu 2020-04-06 142 } else if (is_swap_pte= (oldpte)) { 0697212a411c1d Christoph Lameter 2006-06-23 143 swp_entry_t entry =3D= pte_to_swp_entry(oldpte); f45ec5ff16a75f Peter Xu 2020-04-06 144 pte_t newpte; 0697212a411c1d Christoph Lameter 2006-06-23 145 = 0697212a411c1d Christoph Lameter 2006-06-23 146 if (is_write_migratio= n_entry(entry)) { 0697212a411c1d Christoph Lameter 2006-06-23 147 /* 0697212a411c1d Christoph Lameter 2006-06-23 148 * A protection chec= k is difficult so 0697212a411c1d Christoph Lameter 2006-06-23 149 * just be safe and = disable write 0697212a411c1d Christoph Lameter 2006-06-23 150 */ 0697212a411c1d Christoph Lameter 2006-06-23 151 make_migration_entry= _read(&entry); c3d16e16522fe3 Cyrill Gorcunov 2013-10-16 152 newpte =3D swp_entry= _to_pte(entry); c3d16e16522fe3 Cyrill Gorcunov 2013-10-16 153 if (pte_swp_soft_dir= ty(oldpte)) c3d16e16522fe3 Cyrill Gorcunov 2013-10-16 154 newpte =3D pte_swp_= mksoft_dirty(newpte); f45ec5ff16a75f Peter Xu 2020-04-06 155 if (pte_swp_uffd_wp(= oldpte)) f45ec5ff16a75f Peter Xu 2020-04-06 156 newpte =3D pte_swp_= mkuffd_wp(newpte); f45ec5ff16a75f Peter Xu 2020-04-06 157 } else if (is_write_d= evice_private_entry(entry)) { 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 158 /* 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 159 * We do n= ot preserve soft-dirtiness. See 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 160 * copy_on= e_pte() for explanation. 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 161 */ 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 162 make_devic= e_private_entry_read(&entry); 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 163 newpte =3D= swp_entry_to_pte(entry); f45ec5ff16a75f Peter Xu 2020-04-06 164 if (pte_swp_uffd_wp(= oldpte)) f45ec5ff16a75f Peter Xu 2020-04-06 165 newpte =3D pte_swp_= mkuffd_wp(newpte); f45ec5ff16a75f Peter Xu 2020-04-06 166 } else { f45ec5ff16a75f Peter Xu 2020-04-06 167 newpte =3D oldpte; f45ec5ff16a75f Peter Xu 2020-04-06 168 } f45ec5ff16a75f Peter Xu 2020-04-06 169 = f45ec5ff16a75f Peter Xu 2020-04-06 170 if (uffd_wp) f45ec5ff16a75f Peter Xu 2020-04-06 171 newpte =3D pte_swp_m= kuffd_wp(newpte); f45ec5ff16a75f Peter Xu 2020-04-06 172 else if (uffd_wp_reso= lve) f45ec5ff16a75f Peter Xu 2020-04-06 173 newpte =3D pte_swp_c= lear_uffd_wp(newpte); 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 174 = f45ec5ff16a75f Peter Xu 2020-04-06 175 if (!pte_same(oldpte,= newpte)) { f45ec5ff16a75f Peter Xu 2020-04-06 176 set_pte_at(vma->vm_m= m, addr, pte, newpte); 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 177 pages++; 5042db43cc26f5 J=C3=A9r=C3=B4me Glisse 2017-09-08 178 } e920e14ca29b0b Mel Gorman 2013-10-07 179 } ^1da177e4c3f41 Linus Torvalds 2005-04-16 180 } while (pte++, addr += =3D PAGE_SIZE, addr !=3D end); 6606c3e0da5360 Zachary Amsden 2006-09-30 181 arch_leave_lazy_mmu_mod= e(); 705e87c0c3c384 Hugh Dickins 2005-10-29 182 pte_unmap_unlock(pte - = 1, ptl); 7da4d641c58d20 Peter Zijlstra 2012-11-19 183 = 7da4d641c58d20 Peter Zijlstra 2012-11-19 184 return pages; ^1da177e4c3f41 Linus Torvalds 2005-04-16 185 } ^1da177e4c3f41 Linus Torvalds 2005-04-16 186 = :::::: The code at line 140 was first introduced by commit :::::: 04a8645304500be88b3345b65fef7efe58016166 mm: update ptep_modify_prot= _commit to take old pte value as arg :::::: TO: Aneesh Kumar K.V :::::: CC: 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