From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============9052776461491532057==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH] powerpc: avoid broken GCC __attribute__((optimize)) Date: Wed, 28 Oct 2020 18:08:16 +0800 Message-ID: <202010281845.gwfIScGd-lkp@intel.com> In-Reply-To: <20201028080433.26799-1-ardb@kernel.org> List-Id: --===============9052776461491532057== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Ard, I love your patch! Yet something to improve: [auto build test ERROR on powerpc/next] [also build test ERROR on linus/master linux/master v5.10-rc1 next-20201028] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use '--base' as documented in https://git-scm.com/docs/git-format-patch] url: https://github.com/0day-ci/linux/commits/Ard-Biesheuvel/powerpc-avo= id-broken-GCC-__attribute__-optimize/20201028-160558 base: https://git.kernel.org/pub/scm/linux/kernel/git/powerpc/linux.git n= ext config: powerpc64-randconfig-r003-20201028 (attached as .config) compiler: clang version 12.0.0 (https://github.com/llvm/llvm-project 50dfa1= 9cc799ae7cddd39a95dbfce675a12672ad) reproduce (this is a W=3D1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # install powerpc64 cross compiling tool for clang build # apt-get install binutils-powerpc64-linux-gnu # https://github.com/0day-ci/linux/commit/5ccccdce42ea4f2316ac2bf79= d5311dc77a70e6e git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Ard-Biesheuvel/powerpc-avoid-broke= n-GCC-__attribute__-optimize/20201028-160558 git checkout 5ccccdce42ea4f2316ac2bf79d5311dc77a70e6e # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dpowerpc64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): >> arch/powerpc/kernel/paca.c:244:6: error: variable has incomplete type 'v= oid' void __nostackprotector setup_paca(struct paca_struct *new_paca) ^ >> arch/powerpc/kernel/paca.c:244:24: error: expected ';' after top level d= eclarator void __nostackprotector setup_paca(struct paca_struct *new_paca) ^ ; >> arch/powerpc/kernel/paca.c:274:2: error: use of undeclared identifier 'p= aca_nr_cpu_ids'; did you mean 'nr_cpu_ids'? paca_nr_cpu_ids =3D nr_cpu_ids; ^~~~~~~~~~~~~~~ nr_cpu_ids include/linux/cpumask.h:39:21: note: 'nr_cpu_ids' declared here extern unsigned int nr_cpu_ids; ^ >> arch/powerpc/kernel/paca.c:274:18: error: explicitly assigning value of = variable of type 'unsigned int' to itself [-Werror,-Wself-assign] paca_nr_cpu_ids =3D nr_cpu_ids; ~~~~~~~~~~~~~~~ ^ ~~~~~~~~~~ arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' BUG_ON(cpu >=3D paca_nr_cpu_ids); ^ arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' arch/powerpc/kernel/paca.c:328:2: error: use of undeclared identifier 'p= aca_nr_cpu_ids'; did you mean 'nr_cpu_ids'? paca_nr_cpu_ids =3D nr_cpu_ids; ^~~~~~~~~~~~~~~ nr_cpu_ids include/linux/cpumask.h:39:21: note: 'nr_cpu_ids' declared here extern unsigned int nr_cpu_ids; ^ arch/powerpc/kernel/paca.c:328:18: error: explicitly assigning value of = variable of type 'unsigned int' to itself [-Werror,-Wself-assign] paca_nr_cpu_ids =3D nr_cpu_ids; ~~~~~~~~~~~~~~~ ^ ~~~~~~~~~~ 9 errors generated. -- >> arch/powerpc/kernel/paca.c:244:6: error: variable has incomplete type 'v= oid' void __nostackprotector setup_paca(struct paca_struct *new_paca) ^ >> arch/powerpc/kernel/paca.c:244:24: error: expected ';' after top level d= eclarator void __nostackprotector setup_paca(struct paca_struct *new_paca) ^ ; >> arch/powerpc/kernel/paca.c:274:2: error: use of undeclared identifier 'p= aca_nr_cpu_ids'; did you mean 'nr_cpu_ids'? paca_nr_cpu_ids =3D nr_cpu_ids; ^~~~~~~~~~~~~~~ nr_cpu_ids include/linux/cpumask.h:39:21: note: 'nr_cpu_ids' declared here extern unsigned int nr_cpu_ids; ^ arch/powerpc/kernel/paca.c:274:18: warning: explicitly assigning value o= f variable of type 'unsigned int' to itself [-Wself-assign] paca_nr_cpu_ids =3D nr_cpu_ids; ~~~~~~~~~~~~~~~ ^ ~~~~~~~~~~ arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' BUG_ON(cpu >=3D paca_nr_cpu_ids); ^ arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' arch/powerpc/kernel/paca.c:290:16: error: use of undeclared identifier '= paca_nr_cpu_ids' arch/powerpc/kernel/paca.c:328:2: error: use of undeclared identifier 'p= aca_nr_cpu_ids'; did you mean 'nr_cpu_ids'? paca_nr_cpu_ids =3D nr_cpu_ids; ^~~~~~~~~~~~~~~ nr_cpu_ids include/linux/cpumask.h:39:21: note: 'nr_cpu_ids' declared here extern unsigned int nr_cpu_ids; ^ arch/powerpc/kernel/paca.c:328:18: warning: explicitly assigning value o= f variable of type 'unsigned int' to itself [-Wself-assign] paca_nr_cpu_ids =3D nr_cpu_ids; ~~~~~~~~~~~~~~~ ^ ~~~~~~~~~~ 2 warnings and 7 errors generated. vim +/void +244 arch/powerpc/kernel/paca.c 1426d5a3bd07589 Michael Ellerman 2010-01-28 242 = fc53b4202e61c7e Matt Evans 2010-07-07 243 /* Put the paca poi= nter into r13 and SPRG_PACA */ 7053f80d96967d8 Michael Ellerman 2020-03-20 @244 void __nostackprote= ctor setup_paca(struct paca_struct *new_paca) fc53b4202e61c7e Matt Evans 2010-07-07 245 { 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 246 /* Setup r13 */ fc53b4202e61c7e Matt Evans 2010-07-07 247 local_paca =3D new= _paca; 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 248 = fc53b4202e61c7e Matt Evans 2010-07-07 249 #ifdef CONFIG_PPC_B= OOK3E 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 250 /* On Book3E, init= ialize the TLB miss exception frames */ fc53b4202e61c7e Matt Evans 2010-07-07 251 mtspr(SPRN_SPRG_TL= B_EXFRAME, local_paca->extlb); 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 252 #else d4a8e98621543d5 Daniel Axtens 2020-03-20 253 /* d4a8e98621543d5 Daniel Axtens 2020-03-20 254 * In HV mode, we = setup both HPACA and PACA to avoid problems 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 255 * if we do a GET_= PACA() before the feature fixups have been d4a8e98621543d5 Daniel Axtens 2020-03-20 256 * applied. d4a8e98621543d5 Daniel Axtens 2020-03-20 257 * d4a8e98621543d5 Daniel Axtens 2020-03-20 258 * Normally you sh= ould test against CPU_FTR_HVMODE, but CPU features d4a8e98621543d5 Daniel Axtens 2020-03-20 259 * are not yet set= up when we first reach here. 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 260 */ d4a8e98621543d5 Daniel Axtens 2020-03-20 261 if (mfmsr() & MSR_= HV) 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 262 mtspr(SPRN_SPRG_H= PACA, local_paca); fc53b4202e61c7e Matt Evans 2010-07-07 263 #endif 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 264 mtspr(SPRN_SPRG_PA= CA, local_paca); 2dd60d79e020262 Benjamin Herrenschmidt 2011-01-20 265 = fc53b4202e61c7e Matt Evans 2010-07-07 266 } fc53b4202e61c7e Matt Evans 2010-07-07 267 = d2e60075a3d4422 Nicholas Piggin 2018-02-14 268 static int __initda= ta paca_nr_cpu_ids; d2e60075a3d4422 Nicholas Piggin 2018-02-14 269 static int __initda= ta paca_ptrs_size; 59f577743d71bf7 Nicholas Piggin 2018-02-14 270 static int __initda= ta paca_struct_size; 1426d5a3bd07589 Michael Ellerman 2010-01-28 271 = 59f577743d71bf7 Nicholas Piggin 2018-02-14 272 void __init allocat= e_paca_ptrs(void) 59f577743d71bf7 Nicholas Piggin 2018-02-14 273 { 59f577743d71bf7 Nicholas Piggin 2018-02-14 @274 paca_nr_cpu_ids = =3D nr_cpu_ids; 59f577743d71bf7 Nicholas Piggin 2018-02-14 275 = 59f577743d71bf7 Nicholas Piggin 2018-02-14 276 paca_ptrs_size =3D= sizeof(struct paca_struct *) * nr_cpu_ids; 1269f7b83f2cf79 Christophe Leroy 2019-03-11 277 paca_ptrs =3D memb= lock_alloc_raw(paca_ptrs_size, SMP_CACHE_BYTES); 1269f7b83f2cf79 Christophe Leroy 2019-03-11 278 if (!paca_ptrs) 1269f7b83f2cf79 Christophe Leroy 2019-03-11 279 panic("Failed to = allocate %d bytes for paca pointers\n", 1269f7b83f2cf79 Christophe Leroy 2019-03-11 280 paca_ptrs_s= ize); 1269f7b83f2cf79 Christophe Leroy 2019-03-11 281 = 59f577743d71bf7 Nicholas Piggin 2018-02-14 282 memset(paca_ptrs, = 0x88, paca_ptrs_size); 59f577743d71bf7 Nicholas Piggin 2018-02-14 283 } 1426d5a3bd07589 Michael Ellerman 2010-01-28 284 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============9052776461491532057== Content-Type: application/gzip 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