From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6602671838350316362==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [RFC PATCH 14/14] bpf/tests: add tail call test suite Date: Tue, 27 Jul 2021 05:33:58 +0800 Message-ID: <202107270516.4M9dKrRn-lkp@intel.com> In-Reply-To: <20210726081738.1833704-15-johan.almbladh@anyfinetworks.com> List-Id: --===============6602671838350316362== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Johan, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on bpf-next/master] [also build test WARNING on bpf/master net/master ipvs/master net-next/mast= er v5.14-rc3 next-20210723] [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/Johan-Almbladh/bpf-tests-E= xtend-the-eBPF-test-suite/20210726-162045 base: https://git.kernel.org/pub/scm/linux/kernel/git/bpf/bpf-next.git ma= ster config: powerpc-randconfig-r014-20210726 (attached as .config) compiler: clang version 13.0.0 (https://github.com/llvm/llvm-project c63dbd= 850182797bc4b76124d08e1c320ab2365d) 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 powerpc cross compiling tool for clang build # apt-get install binutils-powerpc-linux-gnu # https://github.com/0day-ci/linux/commit/d33abdcea7dcc6b04b8707632= 6e76adf0655f617 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Johan-Almbladh/bpf-tests-Extend-th= e-eBPF-test-suite/20210726-162045 git checkout d33abdcea7dcc6b04b87076326e76adf0655f617 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dpowerpc = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :114:1: note: expanded from here __do_insb ^ arch/powerpc/include/asm/io.h:556:56: note: expanded from macro '__do_in= sb' #define __do_insb(p, b, n) readsb((PCI_IO_ADDR)_IO_BASE+(p), (b), (= n)) ~~~~~~~~~~~~~~~~~~~~~^ In file included from lib/test_bpf.c:12: In file included from include/linux/filter.h:13: In file included from include/linux/skbuff.h:31: In file included from include/linux/dma-mapping.h:10: In file included from include/linux/scatterlist.h:9: In file included from arch/powerpc/include/asm/io.h:619: arch/powerpc/include/asm/io-defs.h:45:1: warning: performing pointer ari= thmetic on a null pointer has undefined behavior [-Wnull-pointer-arithmetic] DEF_PCI_AC_NORET(insw, (unsigned long p, void *b, unsigned long c), ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :116:1: note: expanded from here __do_insw ^ arch/powerpc/include/asm/io.h:557:56: note: expanded from macro '__do_in= sw' #define __do_insw(p, b, n) readsw((PCI_IO_ADDR)_IO_BASE+(p), (b), (= n)) ~~~~~~~~~~~~~~~~~~~~~^ In file included from lib/test_bpf.c:12: In file included from include/linux/filter.h:13: In file included from include/linux/skbuff.h:31: In file included from include/linux/dma-mapping.h:10: In file included from include/linux/scatterlist.h:9: In file included from arch/powerpc/include/asm/io.h:619: arch/powerpc/include/asm/io-defs.h:47:1: warning: performing pointer ari= thmetic on a null pointer has undefined behavior [-Wnull-pointer-arithmetic] DEF_PCI_AC_NORET(insl, (unsigned long p, void *b, unsigned long c), ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :118:1: note: expanded from here __do_insl ^ arch/powerpc/include/asm/io.h:558:56: note: expanded from macro '__do_in= sl' #define __do_insl(p, b, n) readsl((PCI_IO_ADDR)_IO_BASE+(p), (b), (= n)) ~~~~~~~~~~~~~~~~~~~~~^ In file included from lib/test_bpf.c:12: In file included from include/linux/filter.h:13: In file included from include/linux/skbuff.h:31: In file included from include/linux/dma-mapping.h:10: In file included from include/linux/scatterlist.h:9: In file included from arch/powerpc/include/asm/io.h:619: arch/powerpc/include/asm/io-defs.h:49:1: warning: performing pointer ari= thmetic on a null pointer has undefined behavior [-Wnull-pointer-arithmetic] DEF_PCI_AC_NORET(outsb, (unsigned long p, const void *b, unsigned long c= ), ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :120:1: note: expanded from here __do_outsb ^ arch/powerpc/include/asm/io.h:559:58: note: expanded from macro '__do_ou= tsb' #define __do_outsb(p, b, n) writesb((PCI_IO_ADDR)_IO_BASE+(p),(b),(n= )) ~~~~~~~~~~~~~~~~~~~~~^ In file included from lib/test_bpf.c:12: In file included from include/linux/filter.h:13: In file included from include/linux/skbuff.h:31: In file included from include/linux/dma-mapping.h:10: In file included from include/linux/scatterlist.h:9: In file included from arch/powerpc/include/asm/io.h:619: arch/powerpc/include/asm/io-defs.h:51:1: warning: performing pointer ari= thmetic on a null pointer has undefined behavior [-Wnull-pointer-arithmetic] DEF_PCI_AC_NORET(outsw, (unsigned long p, const void *b, unsigned long c= ), ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :122:1: note: expanded from here __do_outsw ^ arch/powerpc/include/asm/io.h:560:58: note: expanded from macro '__do_ou= tsw' #define __do_outsw(p, b, n) writesw((PCI_IO_ADDR)_IO_BASE+(p),(b),(n= )) ~~~~~~~~~~~~~~~~~~~~~^ In file included from lib/test_bpf.c:12: In file included from include/linux/filter.h:13: In file included from include/linux/skbuff.h:31: In file included from include/linux/dma-mapping.h:10: In file included from include/linux/scatterlist.h:9: In file included from arch/powerpc/include/asm/io.h:619: arch/powerpc/include/asm/io-defs.h:53:1: warning: performing pointer ari= thmetic on a null pointer has undefined behavior [-Wnull-pointer-arithmetic] DEF_PCI_AC_NORET(outsl, (unsigned long p, const void *b, unsigned long c= ), ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~= ~~ arch/powerpc/include/asm/io.h:616:3: note: expanded from macro 'DEF_PCI_= AC_NORET' __do_##name al; \ ^~~~~~~~~~~~~~ :124:1: note: expanded from here __do_outsl ^ arch/powerpc/include/asm/io.h:561:58: note: expanded from macro '__do_ou= tsl' #define __do_outsl(p, b, n) writesl((PCI_IO_ADDR)_IO_BASE+(p),(b),(n= )) ~~~~~~~~~~~~~~~~~~~~~^ >> lib/test_bpf.c:9146:20: warning: cast to smaller integer type 'u32' (aka= 'unsigned int') from 'struct bpf_array *' [-Wpointer-to-int-cast] insn[0].imm =3D (u32)progs; ^~~~~~~~~~ >> lib/test_bpf.c:9164:7: warning: variable 'err' is used uninitialized whe= never 'if' condition is true [-Wsometimes-uninitialized] if (err) ^~~ lib/test_bpf.c:9181:9: note: uninitialized use occurs here return err; ^~~ lib/test_bpf.c:9164:3: note: remove the 'if' if its condition is always = false if (err) ^~~~~~~~ lib/test_bpf.c:9100:16: note: initialize the variable 'err' to silence t= his warning int which, err; ^ =3D 0 14 warnings generated. vim +9146 lib/test_bpf.c 9095 = 9096 static __init int prepare_tail_call_tests(struct bpf_array **pprogs) 9097 { 9098 struct bpf_array *progs; 9099 int ntests =3D ARRAY_SIZE(tail_call_tests); 9100 int which, err; 9101 = 9102 /* Allocate the table of programs to be used for tall calls */ 9103 progs =3D kzalloc(sizeof(*progs) + (ntests + 1) * sizeof(progs->ptr= s[0]), 9104 GFP_KERNEL); 9105 if (!progs) 9106 goto out_nomem; 9107 = 9108 /* Create all eBPF programs and populate the table */ 9109 for (which =3D 0; which < ntests; which++) { 9110 struct tail_call_test *test =3D &tail_call_tests[which]; 9111 struct bpf_prog *fp; 9112 int err, len, i; 9113 = 9114 /* Compute the number of program instructions */ 9115 for (len =3D 0; len < MAX_INSNS; len++) { 9116 struct bpf_insn *insn =3D &test->insns[len]; 9117 = 9118 if (len < MAX_INSNS - 1 && 9119 insn->code =3D=3D (BPF_LD | BPF_DW | BPF_IMM)) 9120 len++; 9121 if (insn->code =3D=3D 0) 9122 break; 9123 } 9124 = 9125 /* Allocate and initialize the program */ 9126 fp =3D bpf_prog_alloc(bpf_prog_size(len), 0); 9127 if (!fp) 9128 goto out_nomem; 9129 = 9130 fp->len =3D len; 9131 fp->type =3D BPF_PROG_TYPE_SOCKET_FILTER; 9132 fp->aux->stack_depth =3D test->stack_depth; 9133 memcpy(fp->insnsi, test->insns, len * sizeof(struct bpf_insn)); 9134 = 9135 /* Relocate runtime tail call offsets and addresses */ 9136 for (i =3D 0; i < len; i++) { 9137 struct bpf_insn *insn =3D &fp->insnsi[i]; 9138 int target; 9139 = 9140 if (insn->imm !=3D TAIL_CALL_MARKER) 9141 continue; 9142 = 9143 switch (insn->code) { 9144 case BPF_LD | BPF_DW | BPF_IMM: 9145 if (insn->dst_reg =3D=3D R2) { > 9146 insn[0].imm =3D (u32)progs; 9147 insn[1].imm =3D ((u64)(long)progs) >> 32; 9148 } 9149 break; 9150 = 9151 case BPF_ALU | BPF_MOV | BPF_K: 9152 case BPF_ALU64 | BPF_MOV | BPF_K: 9153 if (insn->off =3D=3D TAIL_CALL_NULL) 9154 target =3D ntests; 9155 else 9156 target =3D which + insn->off; 9157 if (insn->dst_reg =3D=3D R3) 9158 insn->imm =3D target; 9159 break; 9160 } 9161 } 9162 = 9163 fp =3D bpf_prog_select_runtime(fp, &err); > 9164 if (err) 9165 goto out_err; 9166 = 9167 progs->ptrs[which] =3D fp; 9168 } 9169 = 9170 /* The last entry contains a NULL program pointer */ 9171 progs->map.max_entries =3D ntests + 1; 9172 *pprogs =3D progs; 9173 return 0; 9174 = 9175 out_nomem: 9176 err =3D -ENOMEM; 9177 = 9178 out_err: 9179 if (progs) 9180 destroy_tail_call_tests(progs); 9181 return err; 9182 } 9183 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============6602671838350316362== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICMUi/2AAAy5jb25maWcAjDxJd+M2k/f8Cr3O5ZtD0t6605l5PkAgKCEiCRoAZdkXPllmdzzx 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