From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8288823231706807645==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH RFC] bpf, x64: allow not-converged images when BPF_JIT_ALWAYS_ON is set Date: Fri, 13 Nov 2020 20:36:45 +0800 Message-ID: <202011132033.2LBB8v83-lkp@intel.com> In-Reply-To: <20201113083852.22294-1-glin@suse.com> List-Id: --===============8288823231706807645== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Gary, [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 ipvs/master v5.10-rc3 next-20201112] [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/Gary-Lin/bpf-x64-allow-not= -converged-images-when-BPF_JIT_ALWAYS_ON-is-set/20201113-164003 base: https://git.kernel.org/pub/scm/linux/kernel/git/bpf/bpf-next.git ma= ster config: x86_64-randconfig-a002-20201113 (attached as .config) compiler: clang version 12.0.0 (https://github.com/llvm/llvm-project 9e0c35= 655b6e8186baef8840b26ba4090503b554) 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 x86_64 cross compiling tool for clang build # apt-get install binutils-x86-64-linux-gnu # https://github.com/0day-ci/linux/commit/e491680a9f8f3835010cbcaa5= 8d38382ae94d1e5 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Gary-Lin/bpf-x64-allow-not-converg= ed-images-when-BPF_JIT_ALWAYS_ON-is-set/20201113-164003 git checkout e491680a9f8f3835010cbcaa58d38382ae94d1e5 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): arch/x86/net/bpf_jit_comp.c:1959:5: warning: no previous prototype for f= unction 'arch_prepare_bpf_dispatcher' [-Wmissing-prototypes] int arch_prepare_bpf_dispatcher(void *image, s64 *funcs, int num_funcs) ^ arch/x86/net/bpf_jit_comp.c:1959:1: note: declare 'static' if the functi= on is not intended to be used outside of this translation unit int arch_prepare_bpf_dispatcher(void *image, s64 *funcs, int num_funcs) ^ static = >> arch/x86/net/bpf_jit_comp.c:2050:1: warning: unused label 'out_image' [-= Wunused-label] out_image: ^~~~~~~~~~ 2 warnings generated. vim +/out_image +2050 arch/x86/net/bpf_jit_comp.c e491680a9f8f38 Gary Lin 2020-11-13 1976 = d1c55ab5e41fcd Daniel Borkmann 2016-05-13 1977 struct bpf_prog *bpf_in= t_jit_compile(struct bpf_prog *prog) f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1978 { f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1979 struct bpf_binary_head= er *header =3D NULL; 959a7579160349 Daniel Borkmann 2016-05-13 1980 struct bpf_prog *tmp, = *orig_prog =3D prog; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 1981 struct x64_jit_data *j= it_data; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1982 int proglen, oldprogle= n =3D 0; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1983 struct jit_context ctx= =3D {}; 959a7579160349 Daniel Borkmann 2016-05-13 1984 bool tmp_blinded =3D f= alse; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 1985 bool extra_pass =3D fa= lse; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1986 u8 *image =3D NULL; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1987 int *addrs; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1988 int pass; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1989 int i; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 1990 = 60b58afc96c9df Alexei Starovoitov 2017-12-14 1991 if (!prog->jit_request= ed) 959a7579160349 Daniel Borkmann 2016-05-13 1992 return orig_prog; 959a7579160349 Daniel Borkmann 2016-05-13 1993 = 959a7579160349 Daniel Borkmann 2016-05-13 1994 tmp =3D bpf_jit_blind_= constants(prog); a2c7a98301d9f9 Ingo Molnar 2018-04-27 1995 /* a2c7a98301d9f9 Ingo Molnar 2018-04-27 1996 * If blinding was req= uested and we failed during blinding, 959a7579160349 Daniel Borkmann 2016-05-13 1997 * we must fall back t= o the interpreter. 959a7579160349 Daniel Borkmann 2016-05-13 1998 */ 959a7579160349 Daniel Borkmann 2016-05-13 1999 if (IS_ERR(tmp)) 959a7579160349 Daniel Borkmann 2016-05-13 2000 return orig_prog; 959a7579160349 Daniel Borkmann 2016-05-13 2001 if (tmp !=3D prog) { 959a7579160349 Daniel Borkmann 2016-05-13 2002 tmp_blinded =3D true; 959a7579160349 Daniel Borkmann 2016-05-13 2003 prog =3D tmp; 959a7579160349 Daniel Borkmann 2016-05-13 2004 } f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2005 = 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2006 jit_data =3D prog->aux= ->jit_data; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2007 if (!jit_data) { 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2008 jit_data =3D kzalloc(= sizeof(*jit_data), GFP_KERNEL); 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2009 if (!jit_data) { 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2010 prog =3D orig_prog; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2011 goto out; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2012 } 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2013 prog->aux->jit_data = =3D jit_data; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2014 } 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2015 addrs =3D jit_data->ad= drs; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2016 if (addrs) { 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2017 ctx =3D jit_data->ctx; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2018 oldproglen =3D jit_da= ta->proglen; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2019 image =3D jit_data->i= mage; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2020 header =3D jit_data->= header; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2021 extra_pass =3D true; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2022 goto skip_init_addrs; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2023 } 7c2e988f400e83 Alexei Starovoitov 2019-07-30 2024 addrs =3D kmalloc_arra= y(prog->len + 1, sizeof(*addrs), GFP_KERNEL); 959a7579160349 Daniel Borkmann 2016-05-13 2025 if (!addrs) { 959a7579160349 Daniel Borkmann 2016-05-13 2026 prog =3D orig_prog; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2027 goto out_addrs; 959a7579160349 Daniel Borkmann 2016-05-13 2028 } f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2029 = a2c7a98301d9f9 Ingo Molnar 2018-04-27 2030 /* a2c7a98301d9f9 Ingo Molnar 2018-04-27 2031 * Before first pass, = make a rough estimation of addrs[] a2c7a98301d9f9 Ingo Molnar 2018-04-27 2032 * each BPF instructio= n is translated to less than 64 bytes f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2033 */ 7c2e988f400e83 Alexei Starovoitov 2019-07-30 2034 for (proglen =3D 0, i = =3D 0; i <=3D prog->len; i++) { f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2035 proglen +=3D 64; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2036 addrs[i] =3D proglen; f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2037 } f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2038 ctx.cleanup_addr =3D p= roglen; 1c2a088a6626d4 Alexei Starovoitov 2017-12-14 2039 skip_init_addrs: f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2040 = a2c7a98301d9f9 Ingo Molnar 2018-04-27 2041 /* a2c7a98301d9f9 Ingo Molnar 2018-04-27 2042 * JITed image shrinks= with every pass and the loop iterates a2c7a98301d9f9 Ingo Molnar 2018-04-27 2043 * until the image sto= ps shrinking. Very large BPF programs 3f7352bf21f8fd Alexei Starovoitov 2015-05-22 2044 * may converge on the= last pass. In such case do one more a2c7a98301d9f9 Ingo Molnar 2018-04-27 2045 * pass to emit the fi= nal image. 3f7352bf21f8fd Alexei Starovoitov 2015-05-22 2046 */ e491680a9f8f38 Gary Lin 2020-11-13 2047 for (pass =3D 0; pass = < MAX_JIT_PASSES || image; pass++) { f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2048 proglen =3D do_jit(pr= og, addrs, image, oldproglen, &ctx); f3c2af7ba17a83 Alexei Starovoitov 2014-05-13 2049 if (proglen <=3D 0) { 3aab8884c9eb99 Daniel Borkmann 2018-05-02 @2050 out_image: --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --===============8288823231706807645== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICMlwrl8AAy5jb25maWcAlFzNd9u2st/3r9BpN72Ltrbj+KTvHS9AEpRQkQQDkJLsDY/jKKnf 9UeubPcm//2bAUASAIdq2kVqYQbfg5nfDAb86YefFuz15enh5uXu9ub+/tvi8/5xf7h52X9cfLq7 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