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30 Aug 2020 21:46:14 +0000 Date: Mon, 31 Aug 2020 05:45:45 +0800 From: kernel test robot To: Marc Zyngier Cc: kbuild-all@lists.01.org, linux-kernel@vger.kernel.org Subject: arch/arm64/kvm/pvtime.c:33:9: sparse: sparse: incorrect type in initializer (different base types) Message-ID: <202008310543.RFjX9OBX%lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="YZ5djTAD1cGYuMQK" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) Sender: linux-kernel-owner@vger.kernel.org Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --YZ5djTAD1cGYuMQK Content-Type: text/plain; charset=us-ascii Content-Disposition: inline tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git master head: dcc5c6f013d841e9ae74d527d312d512dfc2e2f0 commit: 9ed24f4b712b855dcf7be3025b75b051cb73a2b7 KVM: arm64: Move virt/kvm/arm to arch/arm64 date: 4 months ago config: arm64-randconfig-s031-20200831 (attached as .config) compiler: aarch64-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: v0.6.2-191-g10164920-dirty git checkout 9ed24f4b712b855dcf7be3025b75b051cb73a2b7 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-9.3.0 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 >>) >> arch/arm64/kvm/pvtime.c:33:9: sparse: sparse: incorrect type in initializer (different base types) @@ expected unsigned long long __pu_val @@ got restricted __le64 [assigned] [usertype] steal_le @@ >> arch/arm64/kvm/pvtime.c:33:9: sparse: expected unsigned long long __pu_val >> arch/arm64/kvm/pvtime.c:33:9: sparse: got restricted __le64 [assigned] [usertype] steal_le -- arch/arm64/kvm/arch_timer.c:936:66: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void *vcpu_info @@ got struct kvm_vcpu *[noderef] * @@ >> arch/arm64/kvm/arch_timer.c:936:66: sparse: expected void *vcpu_info arch/arm64/kvm/arch_timer.c:936:66: sparse: got struct kvm_vcpu *[noderef] * arch/arm64/kvm/arch_timer.c:969:74: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void *vcpu_info @@ got struct kvm_vcpu *[noderef] * @@ arch/arm64/kvm/arch_timer.c:969:74: sparse: expected void *vcpu_info arch/arm64/kvm/arch_timer.c:969:74: sparse: got struct kvm_vcpu *[noderef] * -- >> arch/arm64/kvm/vgic/vgic.c:353:17: sparse: sparse: context imbalance in 'vgic_queue_irq_unlock' - unexpected unlock >> arch/arm64/kvm/vgic/vgic.c:437:5: sparse: sparse: context imbalance in 'kvm_vgic_inject_irq' - different lock contexts for basic block -- >> arch/arm64/kvm/vgic/vgic-v3.c:314:5: sparse: sparse: context imbalance in 'vgic_v3_lpi_sync_pending_status' - different lock contexts for basic block -- >> arch/arm64/kvm/vgic/vgic-mmio.c:854:24: sparse: sparse: cast to restricted __le16 >> arch/arm64/kvm/vgic/vgic-mmio.c:856:24: sparse: sparse: cast to restricted __le32 >> arch/arm64/kvm/vgic/vgic-mmio.c:858:24: sparse: sparse: cast to restricted __le64 >> arch/arm64/kvm/vgic/vgic-mmio.c:878:22: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long data @@ got restricted __le16 [usertype] @@ >> arch/arm64/kvm/vgic/vgic-mmio.c:878:22: sparse: expected unsigned long data >> arch/arm64/kvm/vgic/vgic-mmio.c:878:22: sparse: got restricted __le16 [usertype] >> arch/arm64/kvm/vgic/vgic-mmio.c:881:22: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long data @@ got restricted __le32 [usertype] @@ arch/arm64/kvm/vgic/vgic-mmio.c:881:22: sparse: expected unsigned long data >> arch/arm64/kvm/vgic/vgic-mmio.c:881:22: sparse: got restricted __le32 [usertype] >> arch/arm64/kvm/vgic/vgic-mmio.c:884:22: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long data @@ got restricted __le64 [usertype] @@ arch/arm64/kvm/vgic/vgic-mmio.c:884:22: sparse: expected unsigned long data >> arch/arm64/kvm/vgic/vgic-mmio.c:884:22: sparse: got restricted __le64 [usertype] >> arch/arm64/kvm/vgic/vgic-mmio.c:88:17: sparse: sparse: context imbalance in 'vgic_mmio_write_group' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio.c:124:9: sparse: sparse: context imbalance in 'vgic_mmio_write_senable' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio.c:195:9: sparse: sparse: context imbalance in 'vgic_uaccess_write_senable' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio.c:278:9: sparse: sparse: context imbalance in 'vgic_mmio_write_spending' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio.c:320:9: sparse: sparse: context imbalance in 'vgic_uaccess_write_spending' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio.c:565:9: sparse: sparse: context imbalance in 'vgic_mmio_change_active' - wrong count at exit >> arch/arm64/kvm/vgic/vgic-mmio.c:773:30: sparse: sparse: context imbalance in 'vgic_write_irq_line_level_info' - different lock contexts for basic block -- >> arch/arm64/kvm/vgic/vgic-mmio-v2.c:134:9: sparse: sparse: context imbalance in 'vgic_mmio_write_sgir' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio-v2.c:244:9: sparse: sparse: context imbalance in 'vgic_mmio_write_sgipends' - different lock contexts for basic block -- >> arch/arm64/kvm/vgic/vgic-mmio-v3.c:338:9: sparse: sparse: context imbalance in 'vgic_v3_uaccess_write_pending' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-mmio-v3.c:1025:17: sparse: sparse: context imbalance in 'vgic_v3_dispatch_sgi' - different lock contexts for basic block -- >> arch/arm64/kvm/vgic/vgic-its.c:825:17: sparse: sparse: cast to restricted __le64 arch/arm64/kvm/vgic/vgic-its.c:956:24: sparse: sparse: cast to restricted __le64 >> arch/arm64/kvm/vgic/vgic-its.c:2134:13: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long long [assigned] [usertype] val @@ got restricted __le64 [usertype] @@ >> arch/arm64/kvm/vgic/vgic-its.c:2134:13: sparse: expected unsigned long long [assigned] [usertype] val >> arch/arm64/kvm/vgic/vgic-its.c:2134:13: sparse: got restricted __le64 [usertype] arch/arm64/kvm/vgic/vgic-its.c:2160:15: sparse: sparse: cast to restricted __le64 arch/arm64/kvm/vgic/vgic-its.c:2281:13: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long long [assigned] [usertype] val @@ got restricted __le64 [usertype] @@ arch/arm64/kvm/vgic/vgic-its.c:2281:13: sparse: expected unsigned long long [assigned] [usertype] val arch/arm64/kvm/vgic/vgic-its.c:2281:13: sparse: got restricted __le64 [usertype] arch/arm64/kvm/vgic/vgic-its.c:2307:17: sparse: sparse: cast to restricted __le64 arch/arm64/kvm/vgic/vgic-its.c:2405:17: sparse: sparse: cast to restricted __le64 arch/arm64/kvm/vgic/vgic-its.c:2461:13: sparse: sparse: incorrect type in assignment (different base types) @@ expected unsigned long long [assigned] [usertype] val @@ got restricted __le64 [usertype] @@ arch/arm64/kvm/vgic/vgic-its.c:2461:13: sparse: expected unsigned long long [assigned] [usertype] val arch/arm64/kvm/vgic/vgic-its.c:2461:13: sparse: got restricted __le64 [usertype] arch/arm64/kvm/vgic/vgic-its.c:2477:15: sparse: sparse: cast to restricted __le64 >> arch/arm64/kvm/vgic/vgic-its.c:280:12: sparse: sparse: context imbalance in 'update_lpi_config' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-its.c:443:9: sparse: sparse: context imbalance in 'its_sync_lpi_pending_table' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-its.c:730:12: sparse: sparse: context imbalance in 'vgic_its_trigger_msi' - different lock contexts for basic block >> arch/arm64/kvm/vgic/vgic-its.c:752:5: sparse: sparse: context imbalance in 'vgic_its_inject_cached_translation' - wrong count at exit # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git/commit/?id=9ed24f4b712b855dcf7be3025b75b051cb73a2b7 git remote add linus https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git git fetch --no-tags linus master git checkout 9ed24f4b712b855dcf7be3025b75b051cb73a2b7 vim +33 arch/arm64/kvm/pvtime.c b48c1a45a19089 virt/kvm/arm/pvtime.c Steven Price 2019-10-21 11 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 12 void kvm_update_stolen_time(struct kvm_vcpu *vcpu) 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 13 { 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 14 struct kvm *kvm = vcpu->kvm; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 15 u64 steal; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 16 __le64 steal_le; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 17 u64 offset; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 18 int idx; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 19 u64 base = vcpu->arch.steal.base; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 20 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 21 if (base == GPA_INVALID) 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 22 return; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 23 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 24 /* Let's do the local bookkeeping */ 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 25 steal = vcpu->arch.steal.steal; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 26 steal += current->sched_info.run_delay - vcpu->arch.steal.last_steal; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 27 vcpu->arch.steal.last_steal = current->sched_info.run_delay; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 28 vcpu->arch.steal.steal = steal; 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 29 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 30 steal_le = cpu_to_le64(steal); 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 31 idx = srcu_read_lock(&kvm->srcu); 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 32 offset = offsetof(struct pvclock_vcpu_stolen_time, stolen_time); 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 @33 kvm_put_guest(kvm, base + offset, steal_le, u64); 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 34 srcu_read_unlock(&kvm->srcu, idx); 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 35 } 8564d6372a7d8a virt/kvm/arm/pvtime.c Steven Price 2019-10-21 36 :::::: The code at line 33 was first introduced by commit :::::: 8564d6372a7d8a6d440441b8ed8020f97f744450 KVM: arm64: Support stolen time reporting via shared structure :::::: TO: Steven Price :::::: CC: Marc Zyngier --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --YZ5djTAD1cGYuMQK Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICNYZTF8AAy5jb25maWcAnDxZc9w2k+/5FVPJS/IQf3NJlndLDxgSJJEhCQoAR8cLayKP HVUsyTuScvz77QZ4ACA49m7KFXvQjavR6Bv86YefZuTt9flx//pwv//y5d/Z58PT4bh/PXyc fXr4cvjvWcxnJVczGjP1DpDzh6e3f/6zPz6er2dn796/m/96vD+bbQ/Hp8OXWfT89Onh8xt0 f3h++uGnH+DPT9D4+BVGOv7XbL8/3v9xvv71C47x6+f7+9nPaRT9MvvwbvVuDrgRLxOWNlHU MNkA5PLfrgl+NDsqJOPl5Yf5aj7vAHncty9X67n+rx8nJ2Xag+fW8BmRDZFFk3LFh0ksACtz VtIBxMRVc83FdmjZ1CyPFStoo8gmp43kQg1QlQlKYhgm4fA/QJHYVZMj1fT9Mns5vL59HTbN SqYaWu4aImBXrGDqcrVE6rVr40XFYBpFpZo9vMyenl9xhJ4MPCJ5t9Mffww1N6S2N6vX30iS Kws/pgmpc9VkXKqSFPTyx5+fnp8Ov/QI8lbuWGUdTNuAf0cqh/Z+xRWX7KYprmpaU3vFw5YE 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