From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============7739400572054015538==" MIME-Version: 1.0 From: kernel test robot Subject: arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: context imbalance in 'kvm_mmu_notifier_change_pte' - different lock contexts for basic block Date: Thu, 10 Jun 2021 21:24:00 +0800 Message-ID: <202106102153.mrePySmY-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============7739400572054015538== 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: Sean Christopherson CC: Paolo Bonzini tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: cd1245d75ce93b8fd206f4b34eb58bcfe156d5e9 commit: 8931a454aea03bab21b3b8fcdc94f674eebd1c5d KVM: Take mmu_lock when ha= ndling MMU notifier iff the hva hits a memslot date: 8 weeks ago :::::: branch date: 15 hours ago :::::: commit date: 8 weeks ago config: mips-randconfig-s031-20210610 (attached as .config) compiler: mipsel-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=3D8931a454aea03bab21b3b8fcdc94f674eebd1c5d 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 8931a454aea03bab21b3b8fcdc94f674eebd1c5d # 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=3Dmips = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) command-line: note: in included file: builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQUIRE redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_SEQ_CST redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQ_REL redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_RELEASE redefin= ed builtin:0:0: sparse: this was the original definition >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_change_pte' - different lock contexts for= basic block >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_invalidate_range_start' - different lock = contexts for basic block >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_invalidate_range_end' - different lock co= ntexts for basic block >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_clear_flush_young' - different lock conte= xts for basic block >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_clear_young' - different lock contexts fo= r basic block >> arch/mips/kvm/../../../virt/kvm/kvm_main.c:541:25: sparse: sparse: conte= xt imbalance in 'kvm_mmu_notifier_test_young' - different lock contexts for= basic block arch/mips/kvm/../../../virt/kvm/kvm_main.c:2110:9: sparse: sparse: conte= xt imbalance in 'hva_to_pfn_remapped' - unexpected unlock vim +/kvm_mmu_notifier_change_pte +541 arch/mips/kvm/../../../virt/kvm/kvm_= main.c f922bd9bf33bd5 Sean Christopherson 2021-04-01 481 = 3039bcc744980a Sean Christopherson 2021-04-01 482 static __always_inline = int __kvm_handle_hva_range(struct kvm *kvm, 3039bcc744980a Sean Christopherson 2021-04-01 483 const struct kv= m_hva_range *range) 3039bcc744980a Sean Christopherson 2021-04-01 484 { 8931a454aea03b Sean Christopherson 2021-04-01 485 bool ret =3D false, lo= cked =3D false; f922bd9bf33bd5 Sean Christopherson 2021-04-01 486 struct kvm_gfn_range g= fn_range; 3039bcc744980a Sean Christopherson 2021-04-01 487 struct kvm_memory_slot= *slot; 3039bcc744980a Sean Christopherson 2021-04-01 488 struct kvm_memslots *s= lots; 3039bcc744980a Sean Christopherson 2021-04-01 489 int i, idx; 3039bcc744980a Sean Christopherson 2021-04-01 490 = f922bd9bf33bd5 Sean Christopherson 2021-04-01 491 /* A null handler is a= llowed if and only if on_lock() is provided. */ f922bd9bf33bd5 Sean Christopherson 2021-04-01 492 if (WARN_ON_ONCE(IS_KV= M_NULL_FN(range->on_lock) && f922bd9bf33bd5 Sean Christopherson 2021-04-01 493 IS_KVM_NULL_FN(rang= e->handler))) f922bd9bf33bd5 Sean Christopherson 2021-04-01 494 return 0; f922bd9bf33bd5 Sean Christopherson 2021-04-01 495 = 3039bcc744980a Sean Christopherson 2021-04-01 496 idx =3D srcu_read_lock= (&kvm->srcu); 3039bcc744980a Sean Christopherson 2021-04-01 497 = 8931a454aea03b Sean Christopherson 2021-04-01 498 /* The on_lock() path = does not yet support lock elision. */ f922bd9bf33bd5 Sean Christopherson 2021-04-01 499 if (!IS_KVM_NULL_FN(ra= nge->on_lock)) { 8931a454aea03b Sean Christopherson 2021-04-01 500 locked =3D true; 8931a454aea03b Sean Christopherson 2021-04-01 501 KVM_MMU_LOCK(kvm); 8931a454aea03b Sean Christopherson 2021-04-01 502 = f922bd9bf33bd5 Sean Christopherson 2021-04-01 503 range->on_lock(kvm, r= ange->start, range->end); f922bd9bf33bd5 Sean Christopherson 2021-04-01 504 = f922bd9bf33bd5 Sean Christopherson 2021-04-01 505 if (IS_KVM_NULL_FN(ra= nge->handler)) f922bd9bf33bd5 Sean Christopherson 2021-04-01 506 goto out_unlock; f922bd9bf33bd5 Sean Christopherson 2021-04-01 507 } f922bd9bf33bd5 Sean Christopherson 2021-04-01 508 = 3039bcc744980a Sean Christopherson 2021-04-01 509 for (i =3D 0; i < KVM_= ADDRESS_SPACE_NUM; i++) { 3039bcc744980a Sean Christopherson 2021-04-01 510 slots =3D __kvm_memsl= ots(kvm, i); 3039bcc744980a Sean Christopherson 2021-04-01 511 kvm_for_each_memslot(= slot, slots) { 3039bcc744980a Sean Christopherson 2021-04-01 512 unsigned long hva_st= art, hva_end; 3039bcc744980a Sean Christopherson 2021-04-01 513 = 3039bcc744980a Sean Christopherson 2021-04-01 514 hva_start =3D max(ra= nge->start, slot->userspace_addr); 3039bcc744980a Sean Christopherson 2021-04-01 515 hva_end =3D min(rang= e->end, slot->userspace_addr + 3039bcc744980a Sean Christopherson 2021-04-01 516 (slot->npages <= < PAGE_SHIFT)); 3039bcc744980a Sean Christopherson 2021-04-01 517 if (hva_start >=3D h= va_end) 3039bcc744980a Sean Christopherson 2021-04-01 518 continue; 3039bcc744980a Sean Christopherson 2021-04-01 519 = 3039bcc744980a Sean Christopherson 2021-04-01 520 /* 3039bcc744980a Sean Christopherson 2021-04-01 521 * To optimize for t= he likely case where the address 3039bcc744980a Sean Christopherson 2021-04-01 522 * range is covered = by zero or one memslots, don't 3039bcc744980a Sean Christopherson 2021-04-01 523 * bother making the= se conditional (to avoid writes on 3039bcc744980a Sean Christopherson 2021-04-01 524 * the second or lat= er invocation of the handler). 3039bcc744980a Sean Christopherson 2021-04-01 525 */ 3039bcc744980a Sean Christopherson 2021-04-01 526 gfn_range.pte =3D ra= nge->pte; 3039bcc744980a Sean Christopherson 2021-04-01 527 gfn_range.may_block = =3D range->may_block; 3039bcc744980a Sean Christopherson 2021-04-01 528 = 3039bcc744980a Sean Christopherson 2021-04-01 529 /* 3039bcc744980a Sean Christopherson 2021-04-01 530 * {gfn(page) | page= intersects with [hva_start, hva_end)} =3D 3039bcc744980a Sean Christopherson 2021-04-01 531 * {gfn_start, gfn_s= tart+1, ..., gfn_end-1}. 3039bcc744980a Sean Christopherson 2021-04-01 532 */ 3039bcc744980a Sean Christopherson 2021-04-01 533 gfn_range.start =3D = hva_to_gfn_memslot(hva_start, slot); 3039bcc744980a Sean Christopherson 2021-04-01 534 gfn_range.end =3D hv= a_to_gfn_memslot(hva_end + PAGE_SIZE - 1, slot); 3039bcc744980a Sean Christopherson 2021-04-01 535 gfn_range.slot =3D s= lot; 3039bcc744980a Sean Christopherson 2021-04-01 536 = 8931a454aea03b Sean Christopherson 2021-04-01 537 if (!locked) { 8931a454aea03b Sean Christopherson 2021-04-01 538 locked =3D true; 8931a454aea03b Sean Christopherson 2021-04-01 539 KVM_MMU_LOCK(kvm); 8931a454aea03b Sean Christopherson 2021-04-01 540 } 3039bcc744980a Sean Christopherson 2021-04-01 @541 ret |=3D range->hand= ler(kvm, &gfn_range); 3039bcc744980a Sean Christopherson 2021-04-01 542 } 3039bcc744980a Sean Christopherson 2021-04-01 543 } 3039bcc744980a Sean Christopherson 2021-04-01 544 = 3039bcc744980a Sean Christopherson 2021-04-01 545 if (range->flush_on_re= t && (ret || kvm->tlbs_dirty)) 3039bcc744980a Sean Christopherson 2021-04-01 546 kvm_flush_remote_tlbs= (kvm); 3039bcc744980a Sean Christopherson 2021-04-01 547 = f922bd9bf33bd5 Sean Christopherson 2021-04-01 548 out_unlock: 8931a454aea03b Sean Christopherson 2021-04-01 549 if (locked) f922bd9bf33bd5 Sean Christopherson 2021-04-01 550 KVM_MMU_UNLOCK(kvm); f922bd9bf33bd5 Sean Christopherson 2021-04-01 551 = 3039bcc744980a Sean Christopherson 2021-04-01 552 srcu_read_unlock(&kvm-= >srcu, idx); 3039bcc744980a Sean Christopherson 2021-04-01 553 = 3039bcc744980a Sean Christopherson 2021-04-01 554 /* The notifiers are a= verse to booleans. :-( */ 3039bcc744980a Sean Christopherson 2021-04-01 555 return (int)ret; 3039bcc744980a Sean Christopherson 2021-04-01 556 } 3039bcc744980a Sean Christopherson 2021-04-01 557 = :::::: The code at line 541 was first introduced by commit :::::: 3039bcc744980afe87c612122e47a27306483bc2 KVM: Move x86's MMU notifie= r memslot walkers to generic code :::::: TO: Sean Christopherson :::::: CC: Paolo Bonzini --- 0-DAY CI Kernel Test Service, Intel Corporation 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