From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5783911460334630266==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect type in argument 1 (different address spaces) Date: Wed, 17 Nov 2021 21:15:31 +0800 Message-ID: <202111172121.rDPGYuye-lkp@intel.com> List-Id: --===============5783911460334630266== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 8ab774587903771821b59471cc723bba6d893942 commit: b3ed524f84f573ece1aa2f26e9db3c34a593e0d1 drm/msm: allow compile_tes= t on !ARM date: 7 weeks ago config: mips-allyesconfig (attached as .config) compiler: mips-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/torvalds/linux.gi= t/commit/?id=3Db3ed524f84f573ece1aa2f26e9db3c34a593e0d1 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 b3ed524f84f573ece1aa2f26e9db3c34a593e0d1 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-11.2.0 make.cross= C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' 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 >> drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_hfi.c: note: in included file: drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression -- 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 >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: sparse: incorrect = type in argument 1 (different address spaces) @@ expected void const vo= latile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: expected void = const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: sparse: incorrect= type in return expression (different address spaces) @@ expected void = [noderef] __iomem * @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: expected void= [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: sparse: incorrect= type in return expression (different address spaces) @@ expected void = [noderef] __iomem * @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: expected void= [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const vol= atile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: expected void c= onst volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: expected void= const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: expected void= const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *addr @@ got void *[noderef] mmio @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: expected void= const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: got void *[no= deref] mmio >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *addr @@ got void *[noderef] rscc @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: expected void= const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: got void *[no= deref] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: sparse: incorrect= type in assignment (different address spaces) @@ expected void *[noder= ef] mmio @@ got void [noderef] __iomem * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: expected void= *[noderef] mmio drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: got void [nod= eref] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: sparse: incorrect= type in assignment (different address spaces) @@ expected void *[noder= ef] rscc @@ got void [noderef] __iomem * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: expected void= *[noderef] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: got void [nod= eref] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *addr @@ got void *[noderef] mmio @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: expected void= const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: got void *[no= deref] mmio drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: sparse: incorrect= type in argument 1 (different address spaces) @@ expected void const v= olatile [noderef] __iomem *addr @@ got void *[noderef] rscc @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: expected void= const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: got void *[no= deref] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c: note: in included file (through d= rivers/gpu/drm/msm/adreno/a6xx_gpu.h): drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void c= onst [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect t= ype in argument 2 (different address spaces) @@ expected void [noderef]= __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [= noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference= of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereferenc= e of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect t= ype in argument 1 (different address spaces) @@ expected void const [no= deref] __iomem *addr @@ got void * @@ vim +104 drivers/gpu/drm/msm/adreno/a6xx_hfi.c 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 95 = df0dff132905974 Jordan Crouse 2018-09-20 96 static int a6xx_hfi_wait_fo= r_ack(struct a6xx_gmu *gmu, u32 id, u32 seqnum, df0dff132905974 Jordan Crouse 2018-09-20 97 u32 *payload, u32 payload= _size) df0dff132905974 Jordan Crouse 2018-09-20 98 { df0dff132905974 Jordan Crouse 2018-09-20 99 struct a6xx_hfi_queue *que= ue =3D &gmu->queues[HFI_RESPONSE_QUEUE]; df0dff132905974 Jordan Crouse 2018-09-20 100 u32 val; df0dff132905974 Jordan Crouse 2018-09-20 101 int ret; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 102 = df0dff132905974 Jordan Crouse 2018-09-20 103 /* Wait for a response */ df0dff132905974 Jordan Crouse 2018-09-20 @104 ret =3D gmu_poll_timeout(g= mu, REG_A6XX_GMU_GMU2HOST_INTR_INFO, val, df0dff132905974 Jordan Crouse 2018-09-20 105 val & A6XX_GMU_GMU2HOST_I= NTR_INFO_MSGQ, 100, 5000); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 106 = df0dff132905974 Jordan Crouse 2018-09-20 107 if (ret) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 108 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 109 "Message %s id %d timed = out waiting for response\n", df0dff132905974 Jordan Crouse 2018-09-20 110 a6xx_hfi_msg_id[id], seq= num); df0dff132905974 Jordan Crouse 2018-09-20 111 return -ETIMEDOUT; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 112 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 113 = df0dff132905974 Jordan Crouse 2018-09-20 114 /* Clear the interrupt */ df0dff132905974 Jordan Crouse 2018-09-20 115 gmu_write(gmu, REG_A6XX_GM= U_GMU2HOST_INTR_CLR, df0dff132905974 Jordan Crouse 2018-09-20 116 A6XX_GMU_GMU2HOST_INTR_IN= FO_MSGQ); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 117 = df0dff132905974 Jordan Crouse 2018-09-20 118 for (;;) { df0dff132905974 Jordan Crouse 2018-09-20 119 struct a6xx_hfi_msg_respo= nse resp; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 120 = df0dff132905974 Jordan Crouse 2018-09-20 121 /* Get the next packet */ 8167e6fa76c8f71 Jonathan Marek 2020-04-23 122 ret =3D a6xx_hfi_queue_re= ad(gmu, queue, (u32 *) &resp, df0dff132905974 Jordan Crouse 2018-09-20 123 sizeof(resp) >> 2); df0dff132905974 Jordan Crouse 2018-09-20 124 = df0dff132905974 Jordan Crouse 2018-09-20 125 /* If the queue is empty = our response never made it */ df0dff132905974 Jordan Crouse 2018-09-20 126 if (!ret) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 127 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 128 "The HFI response queue= is unexpectedly empty\n"); df0dff132905974 Jordan Crouse 2018-09-20 129 = df0dff132905974 Jordan Crouse 2018-09-20 130 return -ENOENT; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 131 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 132 = df0dff132905974 Jordan Crouse 2018-09-20 133 if (HFI_HEADER_ID(resp.he= ader) =3D=3D HFI_F2H_MSG_ERROR) { df0dff132905974 Jordan Crouse 2018-09-20 134 struct a6xx_hfi_msg_erro= r *error =3D df0dff132905974 Jordan Crouse 2018-09-20 135 (struct a6xx_hfi_msg_er= ror *) &resp; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 136 = 6a41da17e87dee2 Mamta Shukla 2018-10-20 137 DRM_DEV_ERROR(gmu->dev, = "GMU firmware error %d\n", df0dff132905974 Jordan Crouse 2018-09-20 138 error->code); df0dff132905974 Jordan Crouse 2018-09-20 139 continue; df0dff132905974 Jordan Crouse 2018-09-20 140 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 141 = df0dff132905974 Jordan Crouse 2018-09-20 142 if (seqnum !=3D HFI_HEADE= R_SEQNUM(resp.ret_header)) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 143 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 144 "Unexpected message id = %d on the response queue\n", df0dff132905974 Jordan Crouse 2018-09-20 145 HFI_HEADER_SEQNUM(resp.= ret_header)); df0dff132905974 Jordan Crouse 2018-09-20 146 continue; df0dff132905974 Jordan Crouse 2018-09-20 147 } df0dff132905974 Jordan Crouse 2018-09-20 148 = df0dff132905974 Jordan Crouse 2018-09-20 149 if (resp.error) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 150 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 151 "Message %s id %d retur= ned error %d\n", df0dff132905974 Jordan Crouse 2018-09-20 152 a6xx_hfi_msg_id[id], se= qnum, resp.error); df0dff132905974 Jordan Crouse 2018-09-20 153 return -EINVAL; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 154 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 155 = df0dff132905974 Jordan Crouse 2018-09-20 156 /* All is well, copy over= the buffer */ df0dff132905974 Jordan Crouse 2018-09-20 157 if (payload && payload_si= ze) df0dff132905974 Jordan Crouse 2018-09-20 158 memcpy(payload, resp.pay= load, df0dff132905974 Jordan Crouse 2018-09-20 159 min_t(u32, payload_size= , sizeof(resp.payload))); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 160 = df0dff132905974 Jordan Crouse 2018-09-20 161 return 0; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 162 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 163 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 164 = :::::: The code at line 104 was first introduced by commit :::::: df0dff132905974697e2a19aa8bcc0ecc447c00e drm/msm/a6xx: Poll for HFI = responses :::::: TO: Jordan Crouse :::::: CC: Rob Clark --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============5783911460334630266== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICEjklGEAAy5jb25maWcAnDxdc9u2su/9FZr04bQzTWPZjpPOHT+AJCghIgkaAGXZLxzFVlJP HTvHlk+b8+vvLvi1AEElczLTJtxdAAtgsV9Y6Oeffp6xl/3jl+3+7mZ7f/9t9nn3sHva7ne3s093 97v/myVyVkgz44kwvwNxdvfw8s+bL3dfn2dvf5+//f3o9dPNfLbaPT3s7mfx48Onu88v0Pzu8eGn n3+KZZGKRR3H9ZorLWRRG74x56+w+et77On155ub2S+LOP51Np//fvz70SvSSOgaMOffOtBi6Oh8 Pj86PjrqiTNWLHpcD2ba9lFUQx8A6siOT94NPWQJkkZpMpACKExKEEeE3SX0zXReL6SRQy8eopaV KSsTxIsiEwUfoQpZl0qmIuN1WtTMGEVIZKGNqmIjlR6gQl3Ul1KtBkhUiSwxIue1YRF0pKVCHmCP fp4t7I7fz553+5evw66JQpiaF+uaKZizyIU5Pzkexs1LZMhwjf38PGvhl1wpqWZ3z7OHxz322C+a jFnWrdqrVw5ftWaZIcAlW/N6xVXBs3pxLcphGhQTAeY4jMqucxbGbK6nWsgpxGkYca0NkRWX2345 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From: kernel test robot To: Christian =?iso-8859-1?Q?K=F6nig?= Cc: kbuild-all@lists.01.org, linux-kernel@vger.kernel.org, Rob Clark Subject: drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect type in argument 1 (different address spaces) Message-ID: <202111172121.rDPGYuye-lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="pWyiEgJYm5f9v55/" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --pWyiEgJYm5f9v55/ 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: 8ab774587903771821b59471cc723bba6d893942 commit: b3ed524f84f573ece1aa2f26e9db3c34a593e0d1 drm/msm: allow compile_test on !ARM date: 7 weeks ago config: mips-allyesconfig (attached as .config) compiler: mips-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/torvalds/linux.git/commit/?id=b3ed524f84f573ece1aa2f26e9db3c34a593e0d1 git remote add linus https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git git fetch --no-tags linus master git checkout b3ed524f84f573ece1aa2f26e9db3c34a593e0d1 # 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=mips 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 redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_SEQ_CST redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQ_REL redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_RELEASE redefined builtin:0:0: sparse: this was the original definition >> drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_hfi.c: note: in included file: drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_hfi.c:104:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression -- command-line: note: in included file: builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQUIRE redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_SEQ_CST redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQ_REL redefined builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_RELEASE redefined builtin:0:0: sparse: this was the original definition >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:362:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:387:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:460:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:467:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:493:15: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: sparse: incorrect type in return expression (different address spaces) @@ expected void [noderef] __iomem * @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: expected void [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1412:31: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: sparse: incorrect type in return expression (different address spaces) @@ expected void [noderef] __iomem * @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: expected void [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1418:31: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:858:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:860:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:862:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:864:9: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *mem @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: expected void const volatile [noderef] __iomem *mem drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1066:23: sparse: got void * >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *addr @@ got void *[noderef] mmio @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: expected void const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1458:20: sparse: got void *[noderef] mmio >> drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *addr @@ got void *[noderef] rscc @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: expected void const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1460:28: sparse: got void *[noderef] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: sparse: incorrect type in assignment (different address spaces) @@ expected void *[noderef] mmio @@ got void [noderef] __iomem * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: expected void *[noderef] mmio drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1560:19: sparse: got void [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: sparse: incorrect type in assignment (different address spaces) @@ expected void *[noderef] rscc @@ got void [noderef] __iomem * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: expected void *[noderef] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1567:27: sparse: got void [noderef] __iomem * drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *addr @@ got void *[noderef] mmio @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: expected void const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1598:20: sparse: got void *[noderef] mmio drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const volatile [noderef] __iomem *addr @@ got void *[noderef] rscc @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: expected void const volatile [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.c:1600:28: sparse: got void *[noderef] rscc drivers/gpu/drm/msm/adreno/a6xx_gmu.c: note: in included file (through drivers/gpu/drm/msm/adreno/a6xx_gpu.h): drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: expected void const [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:26: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:224:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:240:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: sparse: incorrect type in argument 2 (different address spaces) @@ expected void [noderef] __iomem *addr @@ got void * @@ drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: expected void [noderef] __iomem *addr drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:44: sparse: got void * drivers/gpu/drm/msm/adreno/a6xx_gmu.h:98:34: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.c:320:15: sparse: sparse: dereference of noderef expression drivers/gpu/drm/msm/adreno/a6xx_gmu.h:93:36: sparse: sparse: incorrect type in argument 1 (different address spaces) @@ expected void const [noderef] __iomem *addr @@ got void * @@ vim +104 drivers/gpu/drm/msm/adreno/a6xx_hfi.c 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 95 df0dff132905974 Jordan Crouse 2018-09-20 96 static int a6xx_hfi_wait_for_ack(struct a6xx_gmu *gmu, u32 id, u32 seqnum, df0dff132905974 Jordan Crouse 2018-09-20 97 u32 *payload, u32 payload_size) df0dff132905974 Jordan Crouse 2018-09-20 98 { df0dff132905974 Jordan Crouse 2018-09-20 99 struct a6xx_hfi_queue *queue = &gmu->queues[HFI_RESPONSE_QUEUE]; df0dff132905974 Jordan Crouse 2018-09-20 100 u32 val; df0dff132905974 Jordan Crouse 2018-09-20 101 int ret; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 102 df0dff132905974 Jordan Crouse 2018-09-20 103 /* Wait for a response */ df0dff132905974 Jordan Crouse 2018-09-20 @104 ret = gmu_poll_timeout(gmu, REG_A6XX_GMU_GMU2HOST_INTR_INFO, val, df0dff132905974 Jordan Crouse 2018-09-20 105 val & A6XX_GMU_GMU2HOST_INTR_INFO_MSGQ, 100, 5000); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 106 df0dff132905974 Jordan Crouse 2018-09-20 107 if (ret) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 108 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 109 "Message %s id %d timed out waiting for response\n", df0dff132905974 Jordan Crouse 2018-09-20 110 a6xx_hfi_msg_id[id], seqnum); df0dff132905974 Jordan Crouse 2018-09-20 111 return -ETIMEDOUT; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 112 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 113 df0dff132905974 Jordan Crouse 2018-09-20 114 /* Clear the interrupt */ df0dff132905974 Jordan Crouse 2018-09-20 115 gmu_write(gmu, REG_A6XX_GMU_GMU2HOST_INTR_CLR, df0dff132905974 Jordan Crouse 2018-09-20 116 A6XX_GMU_GMU2HOST_INTR_INFO_MSGQ); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 117 df0dff132905974 Jordan Crouse 2018-09-20 118 for (;;) { df0dff132905974 Jordan Crouse 2018-09-20 119 struct a6xx_hfi_msg_response resp; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 120 df0dff132905974 Jordan Crouse 2018-09-20 121 /* Get the next packet */ 8167e6fa76c8f71 Jonathan Marek 2020-04-23 122 ret = a6xx_hfi_queue_read(gmu, queue, (u32 *) &resp, df0dff132905974 Jordan Crouse 2018-09-20 123 sizeof(resp) >> 2); df0dff132905974 Jordan Crouse 2018-09-20 124 df0dff132905974 Jordan Crouse 2018-09-20 125 /* If the queue is empty our response never made it */ df0dff132905974 Jordan Crouse 2018-09-20 126 if (!ret) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 127 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 128 "The HFI response queue is unexpectedly empty\n"); df0dff132905974 Jordan Crouse 2018-09-20 129 df0dff132905974 Jordan Crouse 2018-09-20 130 return -ENOENT; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 131 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 132 df0dff132905974 Jordan Crouse 2018-09-20 133 if (HFI_HEADER_ID(resp.header) == HFI_F2H_MSG_ERROR) { df0dff132905974 Jordan Crouse 2018-09-20 134 struct a6xx_hfi_msg_error *error = df0dff132905974 Jordan Crouse 2018-09-20 135 (struct a6xx_hfi_msg_error *) &resp; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 136 6a41da17e87dee2 Mamta Shukla 2018-10-20 137 DRM_DEV_ERROR(gmu->dev, "GMU firmware error %d\n", df0dff132905974 Jordan Crouse 2018-09-20 138 error->code); df0dff132905974 Jordan Crouse 2018-09-20 139 continue; df0dff132905974 Jordan Crouse 2018-09-20 140 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 141 df0dff132905974 Jordan Crouse 2018-09-20 142 if (seqnum != HFI_HEADER_SEQNUM(resp.ret_header)) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 143 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 144 "Unexpected message id %d on the response queue\n", df0dff132905974 Jordan Crouse 2018-09-20 145 HFI_HEADER_SEQNUM(resp.ret_header)); df0dff132905974 Jordan Crouse 2018-09-20 146 continue; df0dff132905974 Jordan Crouse 2018-09-20 147 } df0dff132905974 Jordan Crouse 2018-09-20 148 df0dff132905974 Jordan Crouse 2018-09-20 149 if (resp.error) { 6a41da17e87dee2 Mamta Shukla 2018-10-20 150 DRM_DEV_ERROR(gmu->dev, df0dff132905974 Jordan Crouse 2018-09-20 151 "Message %s id %d returned error %d\n", df0dff132905974 Jordan Crouse 2018-09-20 152 a6xx_hfi_msg_id[id], seqnum, resp.error); df0dff132905974 Jordan Crouse 2018-09-20 153 return -EINVAL; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 154 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 155 df0dff132905974 Jordan Crouse 2018-09-20 156 /* All is well, copy over the buffer */ df0dff132905974 Jordan Crouse 2018-09-20 157 if (payload && payload_size) df0dff132905974 Jordan Crouse 2018-09-20 158 memcpy(payload, resp.payload, df0dff132905974 Jordan Crouse 2018-09-20 159 min_t(u32, payload_size, sizeof(resp.payload))); 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 160 df0dff132905974 Jordan Crouse 2018-09-20 161 return 0; 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 162 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 163 } 4b565ca5a2cbbbb Jordan Crouse 2018-08-06 164 :::::: The code at line 104 was first introduced by commit :::::: df0dff132905974697e2a19aa8bcc0ecc447c00e drm/msm/a6xx: Poll for HFI responses :::::: TO: Jordan Crouse :::::: CC: Rob Clark --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --pWyiEgJYm5f9v55/ Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICEjklGEAAy5jb25maWcAnDxdc9u2su/9FZr04bQzTWPZjpPOHT+AJCghIgkaAGXZLxzF 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