From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0317588821246535156==" MIME-Version: 1.0 From: kernel test robot Subject: Re: [PATCH] skbuff: Switch structure bounds to struct_group() Date: Fri, 19 Nov 2021 08:40:47 +0800 Message-ID: <202111190811.V28qMJWc-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============0317588821246535156== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org In-Reply-To: <20211118183615.1281978-1-keescook@chromium.org> References: <20211118183615.1281978-1-keescook@chromium.org> TO: Kees Cook Hi Kees, I love your patch! Perhaps something to improve: [auto build test WARNING on kees/for-next/pstore] [also build test WARNING on net-next/master net/master linus/master v5.16-r= c1 next-20211118] [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/Kees-Cook/skbuff-Switch-st= ructure-bounds-to-struct_group/20211119-023639 base: https://git.kernel.org/pub/scm/linux/kernel/git/kees/linux.git for-= next/pstore :::::: branch date: 6 hours ago :::::: commit date: 6 hours ago config: x86_64-randconfig-s031-20211118 (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.4-dirty # https://github.com/0day-ci/linux/commit/fc83cc3a3fb04bbc702c6c59a= b17f87a3a9d6946 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Kees-Cook/skbuff-Switch-structure-= bounds-to-struct_group/20211119-023639 git checkout fc83cc3a3fb04bbc702c6c59ab17f87a3a9d6946 # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' O=3D= build_dir ARCH=3Dx86_64 SHELL=3D/bin/bash net/x25/ If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) net/x25/x25_timer.c: note: in included file (through include/net/net_nam= espace.h, include/linux/netdevice.h, include/net/sock.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/sysctl_net_x25.c: note: in included file: >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_subr.c: note: in included file: >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_route.c: note: in included file (through include/linux/if_ar= p.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_dev.c: note: in included file (through include/net/net_names= pace.h, include/linux/netdevice.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_forward.c: note: in included file (through include/linux/if_= arp.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/af_x25.c: note: in included file (through include/net/net_namesp= ace.h, include/linux/netdevice.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_in.c: note: in included file: >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_link.c: note: in included file (through include/net/net_name= space.h, include/linux/netdevice.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_out.c: note: in included file: >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_facilities.c: note: in included file: >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list -- net/x25/x25_proc.c: note: in included file (through include/net/net_name= space.h): >> include/linux/skbuff.h:820:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:822:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:846:1: sparse: sparse: directive in macro's argum= ent list include/linux/skbuff.h:848:1: sparse: sparse: directive in macro's argum= ent list vim +820 include/linux/skbuff.h 6a5bcd84e886a9a Ilias Apalodimas 2021-06-07 810 = fc83cc3a3fb04bb Kees Cook 2021-11-18 811 /* Fields enclosed i= n headers group are copied b1937227316417a Eric Dumazet 2014-09-28 812 * using a single me= mcpy() in __copy_skb_header() b1937227316417a Eric Dumazet 2014-09-28 813 */ fc83cc3a3fb04bb Kees Cook 2021-11-18 814 struct_group(headers, 4031ae6edb92f7e Alexander Duyck 2012-01-27 815 = 233577a22089fac Hannes Frederic Sowa 2014-09-12 816 /* if you move pkt_ty= pe around you also must adapt those constants */ 233577a22089fac Hannes Frederic Sowa 2014-09-12 817 #ifdef __BIG_ENDIAN_B= ITFIELD 233577a22089fac Hannes Frederic Sowa 2014-09-12 818 #define PKT_TYPE_MAX = (7 << 5) 233577a22089fac Hannes Frederic Sowa 2014-09-12 819 #else 233577a22089fac Hannes Frederic Sowa 2014-09-12 @820 #define PKT_TYPE_MAX 7 ^1da177e4c3f415 Linus Torvalds 2005-04-16 821 #endif 233577a22089fac Hannes Frederic Sowa 2014-09-12 822 #define PKT_TYPE_OFFS= ET() offsetof(struct sk_buff, __pkt_type_offset) fe55f6d5c0cfec4 Vegard Nossum 2008-08-30 823 = d2f273f0a920525 Randy Dunlap 2020-02-15 824 /* private: */ 233577a22089fac Hannes Frederic Sowa 2014-09-12 825 __u8 __pkt_type_of= fset[0]; d2f273f0a920525 Randy Dunlap 2020-02-15 826 /* public: */ b1937227316417a Eric Dumazet 2014-09-28 827 __u8 pkt_type:3; b1937227316417a Eric Dumazet 2014-09-28 828 __u8 ignore_df:1; b1937227316417a Eric Dumazet 2014-09-28 829 __u8 nf_trace:1; b1937227316417a Eric Dumazet 2014-09-28 830 __u8 ip_summed:2; 3853b5841c01a3f Tom Herbert 2010-11-21 831 __u8 ooo_okay:1; 8b7008620b84527 Stefano Brivio 2018-07-11 832 = 61b905da33ae25e Tom Herbert 2014-03-24 833 __u8 l4_hash:1; a3b18ddb9cc1056 Tom Herbert 2014-07-01 834 __u8 sw_hash:1; 6e3e939f3b1bf85 Johannes Berg 2011-11-09 835 __u8 wifi_acked_va= lid:1; 6e3e939f3b1bf85 Johannes Berg 2011-11-09 836 __u8 wifi_acked:1; 3bdc0eba0b8b477 Ben Greear 2012-02-11 837 __u8 no_fcs:1; 77cffe23c1f8883 Tom Herbert 2014-08-27 838 /* Indicates the inn= er headers are valid in the skbuff. */ 6a674e9c75b17e7 Joseph Gasparakis 2012-12-07 839 __u8 encapsulation= :1; 7e2b10c1e52ca37 Tom Herbert 2014-06-04 840 __u8 encap_hdr_csu= m:1; 5d0c2b95bc57cf8 Tom Herbert 2014-06-10 841 __u8 csum_valid:1; 8b7008620b84527 Stefano Brivio 2018-07-11 842 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --===============0317588821246535156== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICH7hlmEAAy5jb25maWcAjFxNd9w2r973V8xJN+0ire04vum5xwtKoiR2JFEhpZmxNzqOM0l9 6o++9vi+yb+/AKkPkoIm7aLxAOA3CDwASf38088r9np4erg53N3e3N9/X33dP+6fbw77z6svd/f7 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