From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============3601314047765256284==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH net-next] lwtunnel: be STRICT to validate the new LWTUNNEL_IP(6)_OPTS Date: Sat, 23 Nov 2019 22:11:39 +0800 Message-ID: <201911232205.uBVUISxf%lkp@intel.com> In-Reply-To: <1993c1c08a6e3e278afeb173e4f4584eea5e14aa.1574331087.git.lucien.xin@gmail.com> List-Id: --===============3601314047765256284== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Xin, Thank you for the patch! Yet something to improve: [auto build test ERROR on net/master] [also build test ERROR on v5.4-rc8] [cannot apply to net-next/master next-20191122] [if your patch is applied to the wrong git tree, please drop us a note to h= elp improve the system. BTW, we also suggest to use '--base' option to specify = the base tree in git format-patch, please see https://stackoverflow.com/a/37406= 982] url: https://github.com/0day-ci/linux/commits/Xin-Long/lwtunnel-be-STRIC= T-to-validate-the-new-LWTUNNEL_IP-6-_OPTS/20191123-204806 base: https://git.kernel.org/pub/scm/linux/kernel/git/davem/net.git 5b1d9= c17a3e0c16e1c9adf9c8a89f2735cb6dff8 config: i386-defconfig (attached as .config) compiler: gcc-7 (Debian 7.4.0-14) 7.4.0 reproduce: # save the attached .config to linux build tree make ARCH=3Di386 = If you fix the issue, kindly add following tag Reported-by: kbuild test robot All errors (new ones prefixed by >>): >> net/ipv4/ip_tunnel_core.c:214:48: error: 'LWTUNNEL_IP_OPTS' undeclared h= ere (not in a function); did you mean 'LWTUNNEL_IP_PAD'? [LWTUNNEL_IP_UNSPEC] =3D { .strict_start_type =3D LWTUNNEL_IP_OPTS }, ^~~~~~~~~~~~~~~~ LWTUNNEL_IP_PAD >> net/ipv4/ip_tunnel_core.c:332:49: error: 'LWTUNNEL_IP6_OPTS' undeclared = here (not in a function); did you mean 'LWTUNNEL_IP_OPTS'? [LWTUNNEL_IP6_UNSPEC] =3D { .strict_start_type =3D LWTUNNEL_IP6_OPTS }, ^~~~~~~~~~~~~~~~~ LWTUNNEL_IP_OPTS >> net/ipv4/ip_tunnel_core.c:339:3: error: array index in initializer not o= f integer type [LWTUNNEL_IP6_OPTS] =3D { .type =3D NLA_NESTED }, ^~~~~~~~~~~~~~~~~ net/ipv4/ip_tunnel_core.c:339:3: note: (near initialization for 'ip6_tun= _policy') vim +214 net/ipv4/ip_tunnel_core.c 212 = 213 static const struct nla_policy ip_tun_policy[LWTUNNEL_IP_MAX + 1] = =3D { > 214 [LWTUNNEL_IP_UNSPEC] =3D { .strict_start_type =3D LWTUNNEL_IP_OPTS = }, 215 [LWTUNNEL_IP_ID] =3D { .type =3D NLA_U64 }, 216 [LWTUNNEL_IP_DST] =3D { .type =3D NLA_U32 }, 217 [LWTUNNEL_IP_SRC] =3D { .type =3D NLA_U32 }, 218 [LWTUNNEL_IP_TTL] =3D { .type =3D NLA_U8 }, 219 [LWTUNNEL_IP_TOS] =3D { .type =3D NLA_U8 }, 220 [LWTUNNEL_IP_FLAGS] =3D { .type =3D NLA_U16 }, 221 }; 222 = 223 static int ip_tun_build_state(struct nlattr *attr, 224 unsigned int family, const void *cfg, 225 struct lwtunnel_state **ts, 226 struct netlink_ext_ack *extack) 227 { 228 struct ip_tunnel_info *tun_info; 229 struct lwtunnel_state *new_state; 230 struct nlattr *tb[LWTUNNEL_IP_MAX + 1]; 231 int err; 232 = 233 err =3D nla_parse_nested_deprecated(tb, LWTUNNEL_IP_MAX, attr, 234 ip_tun_policy, extack); 235 if (err < 0) 236 return err; 237 = 238 new_state =3D lwtunnel_state_alloc(sizeof(*tun_info)); 239 if (!new_state) 240 return -ENOMEM; 241 = 242 new_state->type =3D LWTUNNEL_ENCAP_IP; 243 = 244 tun_info =3D lwt_tun_info(new_state); 245 = 246 #ifdef CONFIG_DST_CACHE 247 err =3D dst_cache_init(&tun_info->dst_cache, GFP_KERNEL); 248 if (err) { 249 lwtstate_free(new_state); 250 return err; 251 } 252 #endif 253 = 254 if (tb[LWTUNNEL_IP_ID]) 255 tun_info->key.tun_id =3D nla_get_be64(tb[LWTUNNEL_IP_ID]); 256 = 257 if (tb[LWTUNNEL_IP_DST]) 258 tun_info->key.u.ipv4.dst =3D nla_get_in_addr(tb[LWTUNNEL_IP_DST]); 259 = 260 if (tb[LWTUNNEL_IP_SRC]) 261 tun_info->key.u.ipv4.src =3D nla_get_in_addr(tb[LWTUNNEL_IP_SRC]); 262 = 263 if (tb[LWTUNNEL_IP_TTL]) 264 tun_info->key.ttl =3D nla_get_u8(tb[LWTUNNEL_IP_TTL]); 265 = 266 if (tb[LWTUNNEL_IP_TOS]) 267 tun_info->key.tos =3D nla_get_u8(tb[LWTUNNEL_IP_TOS]); 268 = 269 if (tb[LWTUNNEL_IP_FLAGS]) 270 tun_info->key.tun_flags =3D nla_get_be16(tb[LWTUNNEL_IP_FLAGS]); 271 = 272 tun_info->mode =3D IP_TUNNEL_INFO_TX; 273 tun_info->options_len =3D 0; 274 = 275 *ts =3D new_state; 276 = 277 return 0; 278 } 279 = 280 static void ip_tun_destroy_state(struct lwtunnel_state *lwtstate) 281 { 282 #ifdef CONFIG_DST_CACHE 283 struct ip_tunnel_info *tun_info =3D lwt_tun_info(lwtstate); 284 = 285 dst_cache_destroy(&tun_info->dst_cache); 286 #endif 287 } 288 = 289 static int ip_tun_fill_encap_info(struct sk_buff *skb, 290 struct lwtunnel_state *lwtstate) 291 { 292 struct ip_tunnel_info *tun_info =3D lwt_tun_info(lwtstate); 293 = 294 if (nla_put_be64(skb, LWTUNNEL_IP_ID, tun_info->key.tun_id, 295 LWTUNNEL_IP_PAD) || 296 nla_put_in_addr(skb, LWTUNNEL_IP_DST, tun_info->key.u.ipv4.dst)= || 297 nla_put_in_addr(skb, LWTUNNEL_IP_SRC, tun_info->key.u.ipv4.src)= || 298 nla_put_u8(skb, LWTUNNEL_IP_TOS, tun_info->key.tos) || 299 nla_put_u8(skb, LWTUNNEL_IP_TTL, tun_info->key.ttl) || 300 nla_put_be16(skb, LWTUNNEL_IP_FLAGS, tun_info->key.tun_flags)) 301 return -ENOMEM; 302 = 303 return 0; 304 } 305 = 306 static int ip_tun_encap_nlsize(struct lwtunnel_state *lwtstate) 307 { 308 return nla_total_size_64bit(8) /* LWTUNNEL_IP_ID */ 309 + nla_total_size(4) /* LWTUNNEL_IP_DST */ 310 + nla_total_size(4) /* LWTUNNEL_IP_SRC */ 311 + nla_total_size(1) /* LWTUNNEL_IP_TOS */ 312 + nla_total_size(1) /* LWTUNNEL_IP_TTL */ 313 + nla_total_size(2); /* LWTUNNEL_IP_FLAGS */ 314 } 315 = 316 static int ip_tun_cmp_encap(struct lwtunnel_state *a, struct lwtunne= l_state *b) 317 { 318 return memcmp(lwt_tun_info(a), lwt_tun_info(b), 319 sizeof(struct ip_tunnel_info)); 320 } 321 = 322 static const struct lwtunnel_encap_ops ip_tun_lwt_ops =3D { 323 .build_state =3D ip_tun_build_state, 324 .destroy_state =3D ip_tun_destroy_state, 325 .fill_encap =3D ip_tun_fill_encap_info, 326 .get_encap_size =3D ip_tun_encap_nlsize, 327 .cmp_encap =3D ip_tun_cmp_encap, 328 .owner =3D THIS_MODULE, 329 }; 330 = 331 static const struct nla_policy ip6_tun_policy[LWTUNNEL_IP6_MAX + 1] = =3D { > 332 [LWTUNNEL_IP6_UNSPEC] =3D { .strict_start_type =3D LWTUNNEL_IP6_OPT= S }, 333 [LWTUNNEL_IP6_ID] =3D { .type =3D NLA_U64 }, 334 [LWTUNNEL_IP6_DST] =3D { .len =3D sizeof(struct in6_addr) }, 335 [LWTUNNEL_IP6_SRC] =3D { .len =3D sizeof(struct in6_addr) }, 336 [LWTUNNEL_IP6_HOPLIMIT] =3D { .type =3D NLA_U8 }, 337 [LWTUNNEL_IP6_TC] =3D { .type =3D NLA_U8 }, 338 [LWTUNNEL_IP6_FLAGS] =3D { .type =3D NLA_U16 }, > 339 [LWTUNNEL_IP6_OPTS] =3D { .type =3D NLA_NESTED }, 340 }; 341 = --- 0-DAY kernel test infrastructure Open Source Technology Cen= ter https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org Intel Corpor= ation --===============3601314047765256284== Content-Type: application/gzip MIME-Version: 1.0 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