From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============4875714815166489642==" MIME-Version: 1.0 From: kernel test robot Subject: include/linux/spinlock.h:378:9: sparse: sparse: context imbalance in 'reset_queues' - unexpected unlock Date: Mon, 26 Oct 2020 05:56:34 +0800 Message-ID: <202010260526.lfvT8gJM-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============4875714815166489642== 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: Luc Van Oostenryck CC: Masahiro Yamada tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 986b9eacb25910865b50e5f298aa8e2df7642f1b commit: 80591e61a0f7e88deaada69844e4a31280c4a38f kbuild: tell sparse about = the $ARCH date: 12 months ago :::::: branch date: 3 hours ago :::::: commit date: 12 months ago config: powerpc64-randconfig-s032-20201026 (attached as .config) compiler: powerpc64-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.3-56-gc09e8239-dirty # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3D80591e61a0f7e88deaada69844e4a31280c4a38f git remote add linus https://git.kernel.org/pub/scm/linux/kernel/gi= t/torvalds/linux.git git fetch --no-tags linus master git checkout 80591e61a0f7e88deaada69844e4a31280c4a38f # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=3Dpowerpc64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot "sparse warnings: (new ones prefixed by >>)" drivers/usb/gadget/udc/fsl_udc_core.c:71:33: sparse: sparse: incorrect t= ype in initializer (different base types) @@ expected restricted __le16= [usertype] wMaxPacketSize @@ got int @@ drivers/usb/gadget/udc/fsl_udc_core.c:71:33: sparse: expected restri= cted __le16 [usertype] wMaxPacketSize drivers/usb/gadget/udc/fsl_udc_core.c:71:33: sparse: got int drivers/usb/gadget/udc/fsl_udc_core.c:512:30: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] max_pkt_length @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:512:30: sparse: expected unsig= ned int [usertype] max_pkt_length drivers/usb/gadget/udc/fsl_udc_core.c:512:30: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:707:26: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] next_dtd_ptr @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:707:26: sparse: expected unsig= ned int [usertype] next_dtd_ptr drivers/usb/gadget/udc/fsl_udc_core.c:707:26: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:711:30: sparse: sparse: invalid as= signment: &=3D drivers/usb/gadget/udc/fsl_udc_core.c:711:30: sparse: left side has t= ype unsigned int drivers/usb/gadget/udc/fsl_udc_core.c:711:30: sparse: right side has = type restricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:739:44: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] next_td_ptr @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:739:44: sparse: expected unsig= ned int [usertype] next_td_ptr drivers/usb/gadget/udc/fsl_udc_core.c:739:44: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:790:21: sparse: sparse: cast to re= stricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:792:27: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] size_ioc_sts @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:792:27: sparse: expected unsig= ned int [usertype] size_ioc_sts drivers/usb/gadget/udc/fsl_udc_core.c:792:27: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:796:24: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] buff_ptr0 @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:796:24: sparse: expected unsig= ned int [usertype] buff_ptr0 drivers/usb/gadget/udc/fsl_udc_core.c:796:24: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:797:24: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] buff_ptr1 @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:797:24: sparse: expected unsig= ned int [usertype] buff_ptr1 drivers/usb/gadget/udc/fsl_udc_core.c:797:24: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:798:24: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] buff_ptr2 @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:798:24: sparse: expected unsig= ned int [usertype] buff_ptr2 drivers/usb/gadget/udc/fsl_udc_core.c:798:24: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:799:24: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] buff_ptr3 @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:799:24: sparse: expected unsig= ned int [usertype] buff_ptr3 drivers/usb/gadget/udc/fsl_udc_core.c:799:24: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:800:24: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] buff_ptr4 @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:800:24: sparse: expected unsig= ned int [usertype] buff_ptr4 drivers/usb/gadget/udc/fsl_udc_core.c:800:24: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:824:27: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] size_ioc_sts @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:824:27: sparse: expected unsig= ned int [usertype] size_ioc_sts drivers/usb/gadget/udc/fsl_udc_core.c:824:27: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:851:47: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] next_td_ptr @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:851:47: sparse: expected unsig= ned int [usertype] next_td_ptr drivers/usb/gadget/udc/fsl_udc_core.c:851:47: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:859:26: sparse: sparse: incorrect = type in assignment (different base types) @@ expected unsigned int [use= rtype] next_td_ptr @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:859:26: sparse: expected unsig= ned int [usertype] next_td_ptr drivers/usb/gadget/udc/fsl_udc_core.c:859:26: sparse: got restricted= __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:1365:33: sparse: sparse: incorrect= type in assignment (different base types) @@ expected unsigned short [= usertype] @@ got restricted __le16 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:1365:33: sparse: expected unsi= gned short [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:1365:33: sparse: got restricte= d __le16 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1581:32: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1582:30: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1609:37: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1614:26: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1619:39: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1621:59: sparse: sparse: incorrect= type in assignment (different base types) @@ expected unsigned int [us= ertype] size_ioc_int_sts @@ got restricted __le32 [usertype] @@ drivers/usb/gadget/udc/fsl_udc_core.c:1621:59: sparse: expected unsi= gned int [usertype] size_ioc_int_sts drivers/usb/gadget/udc/fsl_udc_core.c:1621:59: sparse: got restricte= d __le32 [usertype] drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:1639:28: sparse: sparse: cast to r= estricted __le32 drivers/usb/gadget/udc/fsl_udc_core.c:2426:33: sparse: sparse: cast remo= ves address space '' of expression drivers/usb/gadget/udc/fsl_udc_core.c:2426:30: sparse: sparse: incorrect= type in assignment (different address spaces) @@ expected struct usb_s= ys_interface [noderef] *static [toplevel] usb_sys_regs @@ got v= oid * @@ drivers/usb/gadget/udc/fsl_udc_core.c:2426:30: sparse: expected stru= ct usb_sys_interface [noderef] *static [toplevel] usb_sys_regs drivers/usb/gadget/udc/fsl_udc_core.c:2426:30: sparse: got void * drivers/usb/gadget/udc/fsl_udc_core.c: note: in included file (through i= nclude/linux/seqlock.h, include/linux/time.h, include/linux/stat.h, ...): >> include/linux/spinlock.h:378:9: sparse: sparse: context imbalance in 're= set_queues' - unexpected unlock >> drivers/usb/gadget/udc/fsl_udc_core.c:2161:27: sparse: sparse: dereferen= ce of noderef expression drivers/usb/gadget/udc/fsl_udc_core.c:2164:27: sparse: sparse: dereferen= ce of noderef expression vim +/reset_queues +378 include/linux/spinlock.h c2f21ce2e31286a Thomas Gleixner 2009-12-02 375 = 3490565b633c705 Denys Vlasenko 2015-07-13 376 static __always_inline voi= d spin_unlock(spinlock_t *lock) c2f21ce2e31286a Thomas Gleixner 2009-12-02 377 { c2f21ce2e31286a Thomas Gleixner 2009-12-02 @378 raw_spin_unlock(&lock->rl= ock); c2f21ce2e31286a Thomas Gleixner 2009-12-02 379 } c2f21ce2e31286a Thomas Gleixner 2009-12-02 380 = :::::: The code at line 378 was first introduced by commit :::::: c2f21ce2e31286a0a32f8da0a7856e9ca1122ef3 locking: Implement new raw_= spinlock :::::: TO: Thomas Gleixner :::::: CC: Thomas Gleixner --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============4875714815166489642== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICGvulV8AAy5jb25maWcAjDzZcty2su/5iinn5Zw65RwtluLcW3oAQXAGGZKgAHBmpBeWLI0d 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