From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0920486334639032567==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [intel-lts:5.4/yocto 14047/18530] drivers/counter/intel-qep.c:863:34: sparse: sparse: incorrect type in argument 1 (different address spaces) Date: Fri, 19 Nov 2021 02:06:22 +0800 Message-ID: <202111190214.eiYrC2uj-lkp@intel.com> List-Id: --===============0920486334639032567== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/intel/linux-intel-lts.git 5.4/yocto head: 10c3d69bc60059b194dcfa816cbc1240ffb0431d commit: 2e228f3df9479e9e061cc7e0b7aba0c071ea22bf [14047/18530] REVERT-ME: T= emporary Enable D0i3 flow for PSE IOs config: ia64-randconfig-s031-20210930 (attached as .config) compiler: ia64-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://github.com/intel/linux-intel-lts/commit/2e228f3df9479e9e0= 61cc7e0b7aba0c071ea22bf git remote add intel-lts https://github.com/intel/linux-intel-lts.g= it git fetch --no-tags intel-lts 5.4/yocto git checkout 2e228f3df9479e9e061cc7e0b7aba0c071ea22bf # 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=3Dia64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> drivers/counter/intel-qep.c:863:34: sparse: sparse: incorrect type in ar= gument 1 (different address spaces) @@ expected void [noderef] = *base @@ got struct device *dev @@ drivers/counter/intel-qep.c:863:34: sparse: expected void [noderef] = *base drivers/counter/intel-qep.c:863:34: sparse: got struct device *dev drivers/counter/intel-qep.c:864:45: sparse: sparse: incorrect type in ar= gument 1 (different address spaces) @@ expected void [noderef] = *base @@ got struct device *dev @@ drivers/counter/intel-qep.c:864:45: sparse: expected void [noderef] = *base drivers/counter/intel-qep.c:864:45: sparse: got struct device *dev drivers/counter/intel-qep.c: note: in included file (through arch/ia64/i= nclude/asm/io.h, arch/ia64/include/asm/smp.h, include/linux/smp.h, ...): include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 include/asm-generic/io.h:225:22: sparse: sparse: incorrect type in argum= ent 1 (different base types) @@ expected unsigned int [usertype] value = @@ got restricted __le32 [usertype] @@ include/asm-generic/io.h:225:22: sparse: expected unsigned int [user= type] value include/asm-generic/io.h:225:22: sparse: got restricted __le32 [user= type] include/asm-generic/io.h:179:15: sparse: sparse: cast to restricted __le= 32 vim +863 drivers/counter/intel-qep.c 837 = 838 static int intel_qep_runtime_resume(struct device *dev) 839 { 840 struct pci_dev *pdev =3D container_of(dev, struct pci_dev, dev); 841 struct intel_qep *qep =3D pci_get_drvdata(pdev); 842 u32 d0i3c_reg; 843 u32 cgsr_reg; 844 = 845 cgsr_reg =3D intel_qep_readl(qep->regs, INTEL_QEP_CGSR); 846 = 847 if (cgsr_reg & INTEL_QEP_CGSR_CG) 848 intel_qep_writel(qep->regs, INTEL_QEP_CGSR, 849 (cgsr_reg & ~INTEL_QEP_CGSR_CG)); 850 = 851 d0i3c_reg =3D intel_qep_readl(qep->regs, INTEL_QEP_D0I3C); 852 = 853 if (d0i3c_reg & INTEL_QEP_D0I3_CIP) { 854 dev_info(dev, "%s d0i3c CIP detected", __func__); 855 } else { 856 = 857 if (d0i3c_reg & INTEL_QEP_D0I3_EN) 858 d0i3c_reg &=3D ~INTEL_QEP_D0I3_EN; 859 = 860 if (d0i3c_reg & INTEL_QEP_D0I3_RR) 861 d0i3c_reg |=3D INTEL_QEP_D0I3_RR; 862 = > 863 intel_qep_writel(dev, INTEL_QEP_D0I3C, d0i3c_reg); 864 d0i3c_reg =3D intel_qep_readl(dev, INTEL_QEP_D0I3C); 865 } 866 = 867 intel_qep_init(qep, false); 868 = 869 return 0; 870 } 871 #endif 872 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0920486334639032567== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICKWGlmEAAy5jb25maWcAlDxbc9s2s+/fr9C0L+1DWsu3NOeMHyAQFFGRBA2AspwXjmozqaaO 5SPJbfPvzy7AC0CCTr6ZXqLdxQJYLPaGZX78z48z8nraf9medg/bp6evs8/1c33YnurH2afdU/2/ s0jMcqFnLOL6FyBOd8+v//66215fzq5+ufzlt6vZqj48108zun/+tPv8CkN3++f//Pgf+OdHAH55 AS6H/5nhiHdPOPjd54eH2U9LSn+ezee/nP9yBpRU5DFfVpRWXFWAuvnaguBHtWZScZHfzOdn52dn HXFK8mWHO3N4JERVRGXVUmjRc3IQPE95zhyUyJWWJdVCqh7K5W11J+QKIGYzSyOZp9mxPr2+9Ivm OdcVy9cVkcsq5RnXNxfnPees4CmrNFO655wKStJ25T/80IIXJU+jSpFUO8CIxaRMdZUIpXOSsZsf fnreP9c//4DitSTqXq15QWe74+x5f8L19bhCKL6pstuSlSxIQKVQqspYJuR9RbQmNAnSlYqlfOGi 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