From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2919953398112918633==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/pci/endpoint/pci-epc-mem.c:29:7: warning: Assigned value is garbage or undefined [clang-analyzer-core.uninitialized.Assign] Date: Sun, 19 Sep 2021 20:19:25 +0800 Message-ID: <202109192021.V1Li0KQG-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============2919953398112918633== 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: Jakub Jelinek CC: "Peter Zijlstra (Intel)" CC: Andrew Morton CC: Linux Memory Management List tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: d4d016caa4b85b9aa98d7ec8c84e928621a614bc commit: 2f78788b55baa3410b1ec91a576286abe1ad4d6a ilog2: improve ilog2 for c= onstant arguments date: 9 months ago :::::: branch date: 15 hours ago :::::: commit date: 9 months ago config: riscv-randconfig-c006-20210916 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project 8cbbd7= e0b2aa21ce7e416cfb63d9965518948c35) 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 riscv cross compiling tool for clang build # apt-get install binutils-riscv64-linux-gnu # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3D2f78788b55baa3410b1ec91a576286abe1ad4d6a 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 2f78788b55baa3410b1ec91a576286abe1ad4d6a # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Driscv 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/asm-generic/bug.h:104:3: note: expanded from macro 'WARN_ON_ONCE' __WARN_FLAGS(BUGFLAG_ONCE | \ ^ arch/riscv/include/asm/bug.h:79:29: note: expanded from macro '__WARN_FL= AGS' #define __WARN_FLAGS(flags) __BUG_FLAGS(BUGFLAG_WARNING|(flags)) ^ arch/riscv/include/asm/bug.h:53:32: note: expanded from macro '__BUG_FLA= GS' #define __BUG_FLAGS(flags) \ ^ kernel/irq/affinity.c:237:22: note: Division by zero numvecs * ncpus / remaining_ncpus); ^ include/linux/minmax.h:118:59: note: expanded from macro 'max_t' #define max_t(type, x, y) __careful_cmp((type)(x), (type)(y), >) ^ include/linux/minmax.h:44:17: note: expanded from macro '__careful_cmp' __cmp_once(x, y, __UNIQUE_ID(__x), __UNIQUE_ID(__y), op)) ^ include/linux/minmax.h:38:25: note: expanded from macro '__cmp_once' typeof(y) unique_y =3D (y); \ ^ Suppressed 11 warnings (4 in non-user code, 7 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. 17 warnings generated. crypto/sm3_generic.c:121:2: warning: Value stored to 'a' is never read [= clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:2: note: Value stored to 'a' is never read a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:6: warning: Although the value stored to 'b' is= used in the enclosing expression, the value is never actually read from 'b= ' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:6: note: Although the value stored to 'b' is us= ed in the enclosing expression, the value is never actually read from 'b' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:10: warning: Although the value stored to 'c' i= s used in the enclosing expression, the value is never actually read from '= c' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:10: note: Although the value stored to 'c' is u= sed in the enclosing expression, the value is never actually read from 'c' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:14: warning: Although the value stored to 'd' i= s used in the enclosing expression, the value is never actually read from '= d' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:14: note: Although the value stored to 'd' is u= sed in the enclosing expression, the value is never actually read from 'd' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:18: warning: Although the value stored to 'e' i= s used in the enclosing expression, the value is never actually read from '= e' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:18: note: Although the value stored to 'e' is u= sed in the enclosing expression, the value is never actually read from 'e' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:22: warning: Although the value stored to 'f' i= s used in the enclosing expression, the value is never actually read from '= f' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:22: note: Although the value stored to 'f' is u= sed in the enclosing expression, the value is never actually read from 'f' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:26: warning: Although the value stored to 'g' i= s used in the enclosing expression, the value is never actually read from '= g' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:26: note: Although the value stored to 'g' is u= sed in the enclosing expression, the value is never actually read from 'g' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:30: warning: Although the value stored to 'h' i= s used in the enclosing expression, the value is never actually read from '= h' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:30: note: Although the value stored to 'h' is u= sed in the enclosing expression, the value is never actually read from 'h' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:34: warning: Although the value stored to 'ss1'= is used in the enclosing expression, the value is never actually read from= 'ss1' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:34: note: Although the value stored to 'ss1' is= used in the enclosing expression, the value is never actually read from 's= s1' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~~~~~~~ crypto/sm3_generic.c:121:40: warning: Although the value stored to 'ss2'= is used in the enclosing expression, the value is never actually read from= 'ss2' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~ crypto/sm3_generic.c:121:40: note: Although the value stored to 'ss2' is= used in the enclosing expression, the value is never actually read from 's= s2' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~~~~~~~ crypto/sm3_generic.c:121:46: warning: Although the value stored to 'tt1'= is used in the enclosing expression, the value is never actually read from= 'tt1' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~ crypto/sm3_generic.c:121:46: note: Although the value stored to 'tt1' is= used in the enclosing expression, the value is never actually read from 't= t1' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~~~~~~~ crypto/sm3_generic.c:121:52: warning: Although the value stored to 'tt2'= is used in the enclosing expression, the value is never actually read from= 'tt2' [clang-analyzer-deadcode.DeadStores] a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~ crypto/sm3_generic.c:121:52: note: Although the value stored to 'tt2' is= used in the enclosing expression, the value is never actually read from 't= t2' a =3D b =3D c =3D d =3D e =3D f =3D g =3D h =3D ss1 =3D ss2 =3D = tt1 =3D tt2 =3D 0; ^ ~ Suppressed 5 warnings (5 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. 13 warnings generated. >> drivers/pci/endpoint/pci-epc-mem.c:29:7: warning: Assigned value is garb= age or undefined [clang-analyzer-core.uninitialized.Assign] size >>=3D page_shift; ^ drivers/pci/endpoint/pci-epc-mem.c:244:6: note: Assuming 'mem' is non-nu= ll if (!mem) { ^~~~ drivers/pci/endpoint/pci-epc-mem.c:244:2: note: Taking false branch if (!mem) { ^ drivers/pci/endpoint/pci-epc-mem.c:250:15: note: '?' condition is false page_shift =3D ilog2(page_size); ^ include/linux/log2.h:158:2: note: expanded from macro 'ilog2' __builtin_constant_p(n) ? \ ^ drivers/pci/endpoint/pci-epc-mem.c:250:15: note: '?' condition is false page_shift =3D ilog2(page_size); ^ include/linux/log2.h:161:2: note: expanded from macro 'ilog2' (sizeof(n) <=3D 4) ? \ ^ drivers/pci/endpoint/pci-epc-mem.c:254:10: note: Calling 'pci_epc_mem_ge= t_order' order =3D pci_epc_mem_get_order(mem, size); ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/pci/endpoint/pci-epc-mem.c:26:28: note: '?' condition is false unsigned int page_shift =3D ilog2(mem->window.page_size); ^ include/linux/log2.h:158:2: note: expanded from macro 'ilog2' __builtin_constant_p(n) ? \ ^ drivers/pci/endpoint/pci-epc-mem.c:26:28: note: '?' condition is false unsigned int page_shift =3D ilog2(mem->window.page_size); ^ include/linux/log2.h:161:2: note: expanded from macro 'ilog2' (sizeof(n) <=3D 4) ? \ ^ drivers/pci/endpoint/pci-epc-mem.c:26:28: note: Calling '__ilog2_u64' unsigned int page_shift =3D ilog2(mem->window.page_size); ^ include/linux/log2.h:163:2: note: expanded from macro 'ilog2' __ilog2_u64(n) \ ^~~~~~~~~~~~~~ include/linux/log2.h:32:2: note: Returning the value -1 return fls64(n) - 1; ^~~~~~~~~~~~~~~~~~~ drivers/pci/endpoint/pci-epc-mem.c:26:28: note: Returning from '__ilog2_= u64' unsigned int page_shift =3D ilog2(mem->window.page_size); ^ include/linux/log2.h:163:2: note: expanded from macro 'ilog2' __ilog2_u64(n) \ ^~~~~~~~~~~~~~ drivers/pci/endpoint/pci-epc-mem.c:26:2: note: 'page_shift' initialized = to 4294967295 unsigned int page_shift =3D ilog2(mem->window.page_size); ^~~~~~~~~~~~~~~~~~~~~~~ drivers/pci/endpoint/pci-epc-mem.c:29:7: note: Assigned value is garbage= or undefined size >>=3D page_shift; ^ ~~~~~~~~~~ Suppressed 12 warnings (5 in non-user code, 7 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. 4 warnings generated. Suppressed 4 warnings (4 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. 4 warnings generated. Suppressed 4 warnings (4 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. 1 warning generated. lib/math/rational.c:82:35: warning: Division by zero [clang-analyzer-cor= e.DivideZero] (max_denominator - d0) / d= 1); ^ include/linux/minmax.h:51:36: note: expanded from macro 'min' #define min(x, y) __careful_cmp(x, y, <) ^ include/linux/minmax.h:44:17: note: expanded from macro '__careful_cmp' __cmp_once(x, y, __UNIQUE_ID(__x), __UNIQUE_ID(__y), op)) ^ include/linux/minmax.h:38:25: note: expanded from macro '__cmp_once' typeof(y) unique_y =3D (y); \ ^ lib/math/rational.c:52:7: note: The value 0 is assigned to 'd1' n0 =3D d1 =3D 0; ^~~~~~ lib/math/rational.c:55:2: note: Loop condition is true. Entering loop b= ody for (;;) { ^ lib/math/rational.c:58:7: note: Assuming 'd' is not equal to 0 if (d =3D=3D 0) ^~~~~~ lib/math/rational.c:58:3: note: Taking false branch if (d =3D=3D 0) ^ lib/math/rational.c:80:8: note: Assuming 'n2' is > 'max_numerator' if ((n2 > max_numerator) || (d2 > max_denominator)) { ^~~~~~~~~~~~~~~~~~ lib/math/rational.c:80:28: note: Left side of '||' is true if ((n2 > max_numerator) || (d2 > max_denominator)) { ^ lib/math/rational.c:82:35: note: Division by zero (max_denominator - d0) / d= 1); ^ include/linux/minmax.h:51:36: note: expanded from macro 'min' #define min(x, y) __careful_cmp(x, y, <) vim +29 drivers/pci/endpoint/pci-epc-mem.c 5e8cb4033807e3 Kishon Vijay Abraham I 2017-04-10 14 = 5e8cb4033807e3 Kishon Vijay Abraham I 2017-04-10 15 /** 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 16 * pci_epc_mem_get_or= der() - determine the allocation order of a memory size 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 17 * @mem: address spac= e of the endpoint controller 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 18 * @size: the size fo= r which to get the order 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 19 * 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 20 * Reimplement get_or= der() for mem->page_size since the generic get_order 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 21 * always gets order = with a constant PAGE_SIZE. 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 22 */ 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 23 static int pci_epc_me= m_get_order(struct pci_epc_mem *mem, size_t size) 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 24 { 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 25 int order; d45e3c1a5979ef Lad Prabhakar 2020-05-07 26 unsigned int page_sh= ift =3D ilog2(mem->window.page_size); 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 27 = 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 28 size--; 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 @29 size >>=3D page_shif= t; 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 30 #if BITS_PER_LONG =3D= =3D 32 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 31 order =3D fls(size); 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 32 #else 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 33 order =3D fls64(size= ); 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 34 #endif 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 35 return order; 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 36 } 52c9285d47459c Kishon Vijay Abraham I 2017-08-18 37 = :::::: The code at line 29 was first introduced by commit :::::: 52c9285d47459cf241e144c7d8ef15941ba1b181 PCI: endpoint: Add support = for configurable page size :::::: TO: Kishon Vijay Abraham I :::::: CC: Bjorn Helgaas --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============2919953398112918633== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 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