From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2575710212208128360==" MIME-Version: 1.0 From: kernel test robot Subject: [arm-de:eas/next/integration-20210823+ 120/126] drivers/cpufreq/freq_table.c:397:20: warning: Assigned value is garbage or undefined [clang-analyzer-core.uninitialized.Assign] Date: Sun, 07 Nov 2021 14:18:56 +0800 Message-ID: <202111071440.ABNFbE6P-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============2575710212208128360== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: llvm(a)lists.linux.dev CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Vincent Donnefort CC: Deepak Kumar Mishra tree: https://git.gitlab.arm.com/linux-arm/linux-de.git eas/next/integrat= ion-20210823+ head: 8ec94141c9825682324f96b4abb80b66dccf1a49 commit: 20c0d33c8dc4e6343f969ac290284fd1bb1c269b [120/126] cpufreq: Add an = interface to mark inefficient frequencies :::::: branch date: 6 weeks ago :::::: commit date: 2 months ago config: arm-randconfig-c002-20210929 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project dc6e8d= fdfe7efecfda318d43a06fae18b40eb498) 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 arm cross compiling tool for clang build # apt-get install binutils-arm-linux-gnueabi git remote add arm-de https://git.gitlab.arm.com/linux-arm/linux-de= .git git fetch --no-tags arm-de eas/next/integration-20210823+ git checkout 20c0d33c8dc4e6343f969ac290284fd1bb1c269b # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Darm clang-analyzer = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot clang-analyzer warnings: (new ones prefixed by >>) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/minmax.h:28:26: note: expanded from macro '__cmp' #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) ^~~~~~~~~~ mm/page_alloc.c:8735:8: note: '?' condition is false max =3D min(max, 0x80000000ULL); ^ include/linux/minmax.h:45:19: note: expanded from macro 'min' #define min(x, y) __careful_cmp(x, y, <) ^ include/linux/minmax.h:38:3: note: expanded from macro '__careful_cmp' __cmp_once(x, y, __UNIQUE_ID(__x), __UNIQUE_ID(__y), op)) ^ include/linux/minmax.h:33:3: note: expanded from macro '__cmp_once' __cmp(unique_x, unique_y, op); }) ^ include/linux/minmax.h:28:26: note: expanded from macro '__cmp' #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) ^ mm/page_alloc.c:8737:6: note: Assuming 'numentries' is >=3D 'low_limit' if (numentries < low_limit) ^~~~~~~~~~~~~~~~~~~~~~ mm/page_alloc.c:8737:2: note: Taking false branch if (numentries < low_limit) ^ mm/page_alloc.c:8739:6: note: Assuming 'numentries' is <=3D 'max' if (numentries > max) ^~~~~~~~~~~~~~~~ mm/page_alloc.c:8739:2: note: Taking false branch if (numentries > max) ^ mm/page_alloc.c:8742:12: note: '?' condition is false log2qty =3D ilog2(numentries); ^ include/linux/log2.h:158:2: note: expanded from macro 'ilog2' __builtin_constant_p(n) ? \ ^ mm/page_alloc.c:8742:12: note: '?' condition is true log2qty =3D ilog2(numentries); ^ include/linux/log2.h:161:2: note: expanded from macro 'ilog2' (sizeof(n) <=3D 4) ? \ ^ mm/page_alloc.c:8742:12: note: Calling '__ilog2_u32' log2qty =3D ilog2(numentries); ^ include/linux/log2.h:162:2: note: expanded from macro 'ilog2' __ilog2_u32(n) : \ ^~~~~~~~~~~~~~ include/linux/log2.h:24:2: note: Returning the value -1 return fls(n) - 1; ^~~~~~~~~~~~~~~~~ mm/page_alloc.c:8742:12: note: Returning from '__ilog2_u32' log2qty =3D ilog2(numentries); ^ include/linux/log2.h:162:2: note: expanded from macro 'ilog2' __ilog2_u32(n) : \ ^~~~~~~~~~~~~~ mm/page_alloc.c:8742:2: note: The value 4294967295 is assigned to 'log2q= ty' log2qty =3D ilog2(numentries); ^~~~~~~~~~~~~~~~~~~~~~~~~~~ mm/page_alloc.c:8744:15: note: Assuming the condition is false gfp_flags =3D (flags & HASH_ZERO) ? GFP_ATOMIC | __GFP_ZERO : GF= P_ATOMIC; ^~~~~~~~~~~~~~~~~ mm/page_alloc.c:8744:14: note: '?' condition is false gfp_flags =3D (flags & HASH_ZERO) ? GFP_ATOMIC | __GFP_ZERO : GF= P_ATOMIC; ^ mm/page_alloc.c:8748:7: note: Assuming the condition is true if (flags & HASH_EARLY) { ^~~~~~~~~~~~~~~~~~ mm/page_alloc.c:8748:3: note: Taking true branch if (flags & HASH_EARLY) { ^ mm/page_alloc.c:8749:4: note: Taking false branch if (flags & HASH_ZERO) ^ mm/page_alloc.c:8767:11: note: Assuming 'table' is non-null } while (!table && size > PAGE_SIZE && --log2qty); ^~~~~~ mm/page_alloc.c:8767:18: note: Left side of '&&' is false } while (!table && size > PAGE_SIZE && --log2qty); ^ mm/page_alloc.c:8745:2: note: Loop condition is false. Exiting loop do { ^ mm/page_alloc.c:8769:7: note: 'table' is non-null if (!table) ^~~~~ mm/page_alloc.c:8769:2: note: Taking false branch if (!table) ^ mm/page_alloc.c:8773:18: note: The result of the left shift is undefined= due to shifting by '4294967295', which is greater or equal to the width of= type 'unsigned long' tablename, 1UL << log2qty, ilog2(size) - PAGE_SHIFT, siz= e, ^ include/linux/printk.h:420:34: note: expanded from macro 'pr_info' printk(KERN_INFO pr_fmt(fmt), ##__VA_ARGS__) ^~~~~~~~~~~ Suppressed 20 warnings (19 in non-user code, 1 with check filters). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. >> drivers/cpufreq/freq_table.c:397:20: warning: Assigned value is garbage = or undefined [clang-analyzer-core.uninitialized.Assign] pos->efficient =3D efficient; ^ ~~~~~~~~~ drivers/cpufreq/freq_table.c:372:6: note: 'efficient' declared without a= n initial value int efficient, idx; ^~~~~~~~~ drivers/cpufreq/freq_table.c:375:6: note: Assuming 'sort' is not equal t= o CPUFREQ_TABLE_UNSORTED if (sort =3D=3D CPUFREQ_TABLE_UNSORTED) { ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/cpufreq/freq_table.c:375:2: note: Taking false branch if (sort =3D=3D CPUFREQ_TABLE_UNSORTED) { ^ drivers/cpufreq/freq_table.c:382:29: note: Assuming the condition is fal= se cpufreq_for_each_entry_idx(pos, table, idx) { ^ include/linux/cpufreq.h:716:29: note: expanded from macro 'cpufreq_for_e= ach_entry_idx' for (pos =3D table, idx =3D 0; pos->frequency !=3D CPUFREQ_TABLE= _END; \ ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/cpufreq/freq_table.c:382:2: note: Loop condition is false. Execu= tion continues on line 392 cpufreq_for_each_entry_idx(pos, table, idx) { ^ include/linux/cpufreq.h:716:2: note: expanded from macro 'cpufreq_for_ea= ch_entry_idx' for (pos =3D table, idx =3D 0; pos->frequency !=3D CPUFREQ_TABLE= _END; \ ^ drivers/cpufreq/freq_table.c:392:2: note: Loop condition is true. Enter= ing loop body for (;;) { ^ drivers/cpufreq/freq_table.c:395:3: note: Taking true branch if (pos->frequency !=3D CPUFREQ_ENTRY_INVALID) { ^ drivers/cpufreq/freq_table.c:396:8: note: Assuming the condition is true if (pos->flags & CPUFREQ_INEFFICIENT_FREQ) { ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/cpufreq/freq_table.c:396:4: note: Taking true branch if (pos->flags & CPUFREQ_INEFFICIENT_FREQ) { ^ drivers/cpufreq/freq_table.c:397:20: note: Assigned value is garbage or = undefined pos->efficient =3D efficient; ^ ~~~~~~~~~ Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 2 warnings generated. Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 2 warnings generated. Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 2 warnings generated. Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 2 warnings generated. Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 2 warnings generated. Suppressed 2 warnings (2 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 19 warnings generated. Suppressed 19 warnings (19 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 18 warnings generated. Suppressed 18 warnings (18 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 20 warnings generated. fs/fuse/file.c:1392:44: warning: The left operand of '<' is a garbage va= lue [clang-analyzer-core.UndefinedBinaryOperatorResult] while (nbytes < *nbytesp && ap->num_pages < max_pages) { ^ fs/fuse/file.c:1594:2: note: Taking false branch if (fuse_is_bad(inode)) ^ fs/fuse/file.c:1597:6: note: Left side of '&&' is false if (FUSE_IS_DAX(inode)) ^ fs/fuse/fuse_i.h:1239:57: note: expanded from macro 'FUSE_IS_DAX' #define FUSE_IS_DAX(inode) (IS_ENABLED(CONFIG_FUSE_DAX) && IS_DAX(inode)) ^ fs/fuse/file.c:1600:6: note: Assuming the condition is false if (!(ff->open_flags & FOPEN_DIRECT_IO)) ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ fs/fuse/file.c:1600:2: note: Taking false branch if (!(ff->open_flags & FOPEN_DIRECT_IO)) ^ fs/fuse/file.c:1603:10: note: Calling 'fuse_direct_write_iter' return fuse_direct_write_iter(iocb, from); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ fs/fuse/file.c:1554:6: note: Assuming 'res' is > 0 if (res > 0) { ^~~~~~~ fs/fuse/file.c:1554:2: note: Taking true branch if (res > 0) { ^ fs/fuse/file.c:1555:7: note: Left side of '&&' is true if (!is_sync_kiocb(iocb) && iocb->ki_flags & IOCB_DIRECT= ) { ^ fs/fuse/file.c:1555:31: note: Assuming the condition is true if (!is_sync_kiocb(iocb) && iocb->ki_flags & IOCB_DIRECT= ) { ^~~~~~~~~~~~~~~~~~~~~~~~~~~~ fs/fuse/file.c:1555:3: note: Taking true branch if (!is_sync_kiocb(iocb) && iocb->ki_flags & IOCB_DIRECT= ) { ^ fs/fuse/file.c:1556:10: note: Calling 'fuse_direct_IO' res =3D fuse_direct_IO(iocb, from); vim +397 drivers/cpufreq/freq_table.c d417e0691ac00d Viresh Kumar 2018-02-22 367 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 368 void cpufreq_table_update= _efficiencies(struct cpufreq_policy *policy) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 369 { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 370 struct cpufreq_frequency= _table *pos, *table =3D policy->freq_table; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 371 enum cpufreq_table_sorti= ng sort =3D policy->freq_table_sorted; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 372 int efficient, idx; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 373 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 374 /* Not supported */ 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 375 if (sort =3D=3D CPUFREQ_= TABLE_UNSORTED) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 376 cpufreq_for_each_entry_= idx(pos, table, idx) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 377 pos->efficient =3D idx; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 378 return; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 379 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 380 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 381 /* The highest frequency= is always efficient */ 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 382 cpufreq_for_each_entry_i= dx(pos, table, idx) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 383 if (pos->frequency =3D= =3D CPUFREQ_ENTRY_INVALID) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 384 continue; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 385 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 386 efficient =3D idx; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 387 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 388 if (sort =3D=3D CPUFREQ= _TABLE_SORTED_DESCENDING) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 389 break; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 390 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 391 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 392 for (;;) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 393 pos =3D &table[idx]; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 394 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 395 if (pos->frequency !=3D= CPUFREQ_ENTRY_INVALID) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 396 if (pos->flags & CPUFR= EQ_INEFFICIENT_FREQ) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 @397 pos->efficient =3D ef= ficient; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 398 } else { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 399 pos->efficient =3D id= x; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 400 efficient =3D idx; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 401 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 402 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 403 = 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 404 if (sort =3D=3D CPUFREQ= _TABLE_SORTED_ASCENDING) { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 405 if (--idx < 0) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 406 break; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 407 } else { 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 408 if (table[++idx].frequ= ency =3D=3D CPUFREQ_TABLE_END) 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 409 break; 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 410 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 411 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 412 } 20c0d33c8dc4e6 Vincent Donnefort 2021-06-02 413 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org 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