From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on aws-us-west-2-korg-lkml-1.web.codeaurora.org X-Spam-Level: X-Spam-Status: No, score=-10.2 required=3.0 tests=BAYES_00, HEADER_FROM_DIFFERENT_DOMAINS,MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING, SPF_HELO_NONE,SPF_PASS,USER_AGENT_SANE_1 autolearn=ham autolearn_force=no version=3.4.0 Received: from mail.kernel.org (mail.kernel.org [198.145.29.99]) by smtp.lore.kernel.org (Postfix) with ESMTP id D657CC433ED for ; Thu, 20 May 2021 04:52:57 +0000 (UTC) Received: from kanga.kvack.org (kanga.kvack.org [205.233.56.17]) by mail.kernel.org (Postfix) with ESMTP id 09A7061184 for ; Thu, 20 May 2021 04:52:56 +0000 (UTC) DMARC-Filter: OpenDMARC Filter v1.3.2 mail.kernel.org 09A7061184 Authentication-Results: mail.kernel.org; dmarc=fail (p=none dis=none) header.from=intel.com Authentication-Results: mail.kernel.org; spf=pass smtp.mailfrom=owner-linux-mm@kvack.org Received: by kanga.kvack.org (Postfix) id 5C0546B006C; Thu, 20 May 2021 00:52:56 -0400 (EDT) Received: by kanga.kvack.org (Postfix, from userid 40) id 570336B006E; Thu, 20 May 2021 00:52:56 -0400 (EDT) X-Delivered-To: int-list-linux-mm@kvack.org Received: by kanga.kvack.org (Postfix, from userid 63042) id 39BC16B0070; Thu, 20 May 2021 00:52:56 -0400 (EDT) X-Delivered-To: linux-mm@kvack.org Received: from forelay.hostedemail.com (smtprelay0217.hostedemail.com [216.40.44.217]) by kanga.kvack.org (Postfix) with ESMTP id E066B6B006C for ; Thu, 20 May 2021 00:52:55 -0400 (EDT) Received: from smtpin23.hostedemail.com (10.5.19.251.rfc1918.com [10.5.19.251]) by forelay04.hostedemail.com (Postfix) with ESMTP id 7101CBF07 for ; Thu, 20 May 2021 04:52:55 +0000 (UTC) X-FDA: 78160389510.23.F05D0C4 Received: from mga04.intel.com (mga04.intel.com [192.55.52.120]) by imf15.hostedemail.com (Postfix) with ESMTP id E508BA0009D9 for ; Thu, 20 May 2021 04:52:50 +0000 (UTC) IronPort-SDR: 7Bx/DV72JMMtyY32jKldxhNWnseUMZpcg9iYmYtRSfec8hxJw5pC2iRBe6vAcre67GWyDlqn0b QkqIXMph6wvw== X-IronPort-AV: E=McAfee;i="6200,9189,9989"; a="199189041" X-IronPort-AV: E=Sophos;i="5.82,313,1613462400"; d="gz'50?scan'50,208,50";a="199189041" Received: from fmsmga008.fm.intel.com ([10.253.24.58]) by fmsmga104.fm.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 19 May 2021 21:52:47 -0700 IronPort-SDR: yPJ7BfxsPzddT9YKlPZUYsD7IfXTXmdCajAf8RYzPv/5lgm/XS6ZN+0dzJTAOrOTgkJmThVUju 7IsTVEItuujQ== X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.82,313,1613462400"; d="gz'50?scan'50,208,50";a="440145653" Received: from lkp-server02.sh.intel.com (HELO 1b329be5b008) ([10.239.97.151]) by fmsmga008.fm.intel.com with ESMTP; 19 May 2021 21:52:45 -0700 Received: from kbuild by 1b329be5b008 with local (Exim 4.92) (envelope-from ) id 1ljaft-0000Qz-4V; Thu, 20 May 2021 04:52:45 +0000 Date: Thu, 20 May 2021 12:52:05 +0800 From: kernel test robot To: Stephen Rothwell Cc: kbuild-all@lists.01.org, Linux Memory Management List Subject: [linux-next:master 3800/3829] net/netfilter/nft_set_pipapo_avx2.c:1135:10: error: implicit declaration of function 'nft_pipapo_lookup'; did you mean 'nft_pipapo_avx2_lookup'? Message-ID: <202105201202.KwssJTLc-lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="W/nzBZO5zC0uMSeA" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) Authentication-Results: imf15.hostedemail.com; dkim=none; dmarc=fail reason="No valid SPF, No valid DKIM" header.from=intel.com (policy=none); spf=none (imf15.hostedemail.com: domain of lkp@intel.com has no SPF policy when checking 192.55.52.120) smtp.mailfrom=lkp@intel.com X-Rspamd-Server: rspam05 X-Rspamd-Queue-Id: E508BA0009D9 X-Stat-Signature: juh178qt64kf8jy1nemgkpjo96s6r3ry X-HE-Tag: 1621486370-166150 X-Bogosity: Ham, tests=bogofilter, spamicity=0.000000, version=1.2.4 Sender: owner-linux-mm@kvack.org Precedence: bulk X-Loop: owner-majordomo@kvack.org List-ID: --W/nzBZO5zC0uMSeA Content-Type: text/plain; charset=us-ascii Content-Disposition: inline tree: https://git.kernel.org/pub/scm/linux/kernel/git/next/linux-next.git master head: 9f24705effef8c3b9eca00d70594ef7e0364a6da commit: 3b4f9530977112ddf177282e396d0715dc60b9a3 [3800/3829] fix up for merge involving nft_pipapo_lookup() config: x86_64-randconfig-a001-20210520 (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce (this is a W=1 build): # https://git.kernel.org/pub/scm/linux/kernel/git/next/linux-next.git/commit/?id=3b4f9530977112ddf177282e396d0715dc60b9a3 git remote add linux-next https://git.kernel.org/pub/scm/linux/kernel/git/next/linux-next.git git fetch --no-tags linux-next master git checkout 3b4f9530977112ddf177282e396d0715dc60b9a3 # save the attached .config to linux build tree make W=1 ARCH=x86_64 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): net/netfilter/nft_set_pipapo_avx2.c: In function 'nft_pipapo_avx2_lookup': >> net/netfilter/nft_set_pipapo_avx2.c:1135:10: error: implicit declaration of function 'nft_pipapo_lookup'; did you mean 'nft_pipapo_avx2_lookup'? [-Werror=implicit-function-declaration] 1135 | return nft_pipapo_lookup(net, set, key, ext); | ^~~~~~~~~~~~~~~~~ | nft_pipapo_avx2_lookup cc1: some warnings being treated as errors vim +1135 net/netfilter/nft_set_pipapo_avx2.c 7400b063969bdca Stefano Brivio 2020-03-07 1107 7400b063969bdca Stefano Brivio 2020-03-07 1108 /** 7400b063969bdca Stefano Brivio 2020-03-07 1109 * nft_pipapo_avx2_lookup() - Lookup function for AVX2 implementation 7400b063969bdca Stefano Brivio 2020-03-07 1110 * @net: Network namespace 7400b063969bdca Stefano Brivio 2020-03-07 1111 * @set: nftables API set representation 7400b063969bdca Stefano Brivio 2020-03-07 1112 * @elem: nftables API element representation containing key data 7400b063969bdca Stefano Brivio 2020-03-07 1113 * @ext: nftables API extension pointer, filled with matching reference 7400b063969bdca Stefano Brivio 2020-03-07 1114 * 7400b063969bdca Stefano Brivio 2020-03-07 1115 * For more details, see DOC: Theory of Operation in nft_set_pipapo.c. 7400b063969bdca Stefano Brivio 2020-03-07 1116 * 7400b063969bdca Stefano Brivio 2020-03-07 1117 * This implementation exploits the repetitive characteristic of the algorithm 7400b063969bdca Stefano Brivio 2020-03-07 1118 * to provide a fast, vectorised version using the AVX2 SIMD instruction set. 7400b063969bdca Stefano Brivio 2020-03-07 1119 * 7400b063969bdca Stefano Brivio 2020-03-07 1120 * Return: true on match, false otherwise. 7400b063969bdca Stefano Brivio 2020-03-07 1121 */ 7400b063969bdca Stefano Brivio 2020-03-07 1122 bool nft_pipapo_avx2_lookup(const struct net *net, const struct nft_set *set, 7400b063969bdca Stefano Brivio 2020-03-07 1123 const u32 *key, const struct nft_set_ext **ext) 7400b063969bdca Stefano Brivio 2020-03-07 1124 { 7400b063969bdca Stefano Brivio 2020-03-07 1125 struct nft_pipapo *priv = nft_set_priv(set); 7400b063969bdca Stefano Brivio 2020-03-07 1126 unsigned long *res, *fill, *scratch; 7400b063969bdca Stefano Brivio 2020-03-07 1127 u8 genmask = nft_genmask_cur(net); 7400b063969bdca Stefano Brivio 2020-03-07 1128 const u8 *rp = (const u8 *)key; 7400b063969bdca Stefano Brivio 2020-03-07 1129 struct nft_pipapo_match *m; 7400b063969bdca Stefano Brivio 2020-03-07 1130 struct nft_pipapo_field *f; 7400b063969bdca Stefano Brivio 2020-03-07 1131 bool map_index; 7400b063969bdca Stefano Brivio 2020-03-07 1132 int i, ret = 0; 7400b063969bdca Stefano Brivio 2020-03-07 1133 f0b3d338064e1fe Stefano Brivio 2021-05-10 1134 if (unlikely(!irq_fpu_usable())) f0b3d338064e1fe Stefano Brivio 2021-05-10 @1135 return nft_pipapo_lookup(net, set, key, ext); f0b3d338064e1fe Stefano Brivio 2021-05-10 1136 7400b063969bdca Stefano Brivio 2020-03-07 1137 m = rcu_dereference(priv->match); 7400b063969bdca Stefano Brivio 2020-03-07 1138 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1139 /* This also protects access to all data related to scratch maps. 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1140 * 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1141 * Note that we don't need a valid MXCSR state for any of the 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1142 * operations we use here, so pass 0 as mask and spare a LDMXCSR 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1143 * instruction. 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1144 */ 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1145 kernel_fpu_begin_mask(0); 7400b063969bdca Stefano Brivio 2020-03-07 1146 7400b063969bdca Stefano Brivio 2020-03-07 1147 scratch = *raw_cpu_ptr(m->scratch_aligned); 7400b063969bdca Stefano Brivio 2020-03-07 1148 if (unlikely(!scratch)) { 7400b063969bdca Stefano Brivio 2020-03-07 1149 kernel_fpu_end(); 7400b063969bdca Stefano Brivio 2020-03-07 1150 return false; 7400b063969bdca Stefano Brivio 2020-03-07 1151 } 7400b063969bdca Stefano Brivio 2020-03-07 1152 map_index = raw_cpu_read(nft_pipapo_avx2_scratch_index); 7400b063969bdca Stefano Brivio 2020-03-07 1153 7400b063969bdca Stefano Brivio 2020-03-07 1154 res = scratch + (map_index ? m->bsize_max : 0); 7400b063969bdca Stefano Brivio 2020-03-07 1155 fill = scratch + (map_index ? 0 : m->bsize_max); 7400b063969bdca Stefano Brivio 2020-03-07 1156 7400b063969bdca Stefano Brivio 2020-03-07 1157 /* Starting map doesn't need to be set for this implementation */ 7400b063969bdca Stefano Brivio 2020-03-07 1158 7400b063969bdca Stefano Brivio 2020-03-07 1159 nft_pipapo_avx2_prepare(); 7400b063969bdca Stefano Brivio 2020-03-07 1160 7400b063969bdca Stefano Brivio 2020-03-07 1161 next_match: 7400b063969bdca Stefano Brivio 2020-03-07 1162 nft_pipapo_for_each_field(f, i, m) { 7400b063969bdca Stefano Brivio 2020-03-07 1163 bool last = i == m->field_count - 1, first = !i; 7400b063969bdca Stefano Brivio 2020-03-07 1164 :::::: The code at line 1135 was first introduced by commit :::::: f0b3d338064e1fe7531f0d2977e35f3b334abfb4 netfilter: nft_set_pipapo_avx2: Add irq_fpu_usable() check, fallback to non-AVX2 version :::::: TO: Stefano Brivio :::::: CC: Pablo Neira Ayuso --- 0-DAY CI Kernel Test Service, Intel Corporation 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Subject: [linux-next:master 3800/3829] net/netfilter/nft_set_pipapo_avx2.c:1135:10: error: implicit declaration of function 'nft_pipapo_lookup'; did you mean 'nft_pipapo_avx2_lookup'? Date: Thu, 20 May 2021 12:52:05 +0800 Message-ID: <202105201202.KwssJTLc-lkp@intel.com> List-Id: --===============1002877205036859557== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/next/linux-next.git= master head: 9f24705effef8c3b9eca00d70594ef7e0364a6da commit: 3b4f9530977112ddf177282e396d0715dc60b9a3 [3800/3829] fix up for mer= ge involving nft_pipapo_lookup() config: x86_64-randconfig-a001-20210520 (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce (this is a W=3D1 build): # https://git.kernel.org/pub/scm/linux/kernel/git/next/linux-next.g= it/commit/?id=3D3b4f9530977112ddf177282e396d0715dc60b9a3 git remote add linux-next https://git.kernel.org/pub/scm/linux/kern= el/git/next/linux-next.git git fetch --no-tags linux-next master git checkout 3b4f9530977112ddf177282e396d0715dc60b9a3 # save the attached .config to linux build tree make W=3D1 ARCH=3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): net/netfilter/nft_set_pipapo_avx2.c: In function 'nft_pipapo_avx2_lookup= ': >> net/netfilter/nft_set_pipapo_avx2.c:1135:10: error: implicit declaration= of function 'nft_pipapo_lookup'; did you mean 'nft_pipapo_avx2_lookup'? [-= Werror=3Dimplicit-function-declaration] 1135 | return nft_pipapo_lookup(net, set, key, ext); | ^~~~~~~~~~~~~~~~~ | nft_pipapo_avx2_lookup cc1: some warnings being treated as errors vim +1135 net/netfilter/nft_set_pipapo_avx2.c 7400b063969bdca Stefano Brivio 2020-03-07 1107 = 7400b063969bdca Stefano Brivio 2020-03-07 1108 /** 7400b063969bdca Stefano Brivio 2020-03-07 1109 * nft_pipapo_avx2_lookup(= ) - Lookup function for AVX2 implementation 7400b063969bdca Stefano Brivio 2020-03-07 1110 * @net: Network namespace 7400b063969bdca Stefano Brivio 2020-03-07 1111 * @set: nftables API set = representation 7400b063969bdca Stefano Brivio 2020-03-07 1112 * @elem: nftables API ele= ment representation containing key data 7400b063969bdca Stefano Brivio 2020-03-07 1113 * @ext: nftables API exte= nsion pointer, filled with matching reference 7400b063969bdca Stefano Brivio 2020-03-07 1114 * 7400b063969bdca Stefano Brivio 2020-03-07 1115 * For more details, see D= OC: Theory of Operation in nft_set_pipapo.c. 7400b063969bdca Stefano Brivio 2020-03-07 1116 * 7400b063969bdca Stefano Brivio 2020-03-07 1117 * This implementation exp= loits the repetitive characteristic of the algorithm 7400b063969bdca Stefano Brivio 2020-03-07 1118 * to provide a fast, vect= orised version using the AVX2 SIMD instruction set. 7400b063969bdca Stefano Brivio 2020-03-07 1119 * 7400b063969bdca Stefano Brivio 2020-03-07 1120 * Return: true on match, = false otherwise. 7400b063969bdca Stefano Brivio 2020-03-07 1121 */ 7400b063969bdca Stefano Brivio 2020-03-07 1122 bool nft_pipapo_avx2_looku= p(const struct net *net, const struct nft_set *set, 7400b063969bdca Stefano Brivio 2020-03-07 1123 const u32 *key, con= st struct nft_set_ext **ext) 7400b063969bdca Stefano Brivio 2020-03-07 1124 { 7400b063969bdca Stefano Brivio 2020-03-07 1125 struct nft_pipapo *priv = =3D nft_set_priv(set); 7400b063969bdca Stefano Brivio 2020-03-07 1126 unsigned long *res, *fill= , *scratch; 7400b063969bdca Stefano Brivio 2020-03-07 1127 u8 genmask =3D nft_genmas= k_cur(net); 7400b063969bdca Stefano Brivio 2020-03-07 1128 const u8 *rp =3D (const u= 8 *)key; 7400b063969bdca Stefano Brivio 2020-03-07 1129 struct nft_pipapo_match *= m; 7400b063969bdca Stefano Brivio 2020-03-07 1130 struct nft_pipapo_field *= f; 7400b063969bdca Stefano Brivio 2020-03-07 1131 bool map_index; 7400b063969bdca Stefano Brivio 2020-03-07 1132 int i, ret =3D 0; 7400b063969bdca Stefano Brivio 2020-03-07 1133 = f0b3d338064e1fe Stefano Brivio 2021-05-10 1134 if (unlikely(!irq_fpu_usa= ble())) f0b3d338064e1fe Stefano Brivio 2021-05-10 @1135 return nft_pipapo_lookup= (net, set, key, ext); f0b3d338064e1fe Stefano Brivio 2021-05-10 1136 = 7400b063969bdca Stefano Brivio 2020-03-07 1137 m =3D rcu_dereference(pri= v->match); 7400b063969bdca Stefano Brivio 2020-03-07 1138 = 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1139 /* This also protects acc= ess to all data related to scratch maps. 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1140 * 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1141 * Note that we don't nee= d a valid MXCSR state for any of the 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1142 * operations we use here= , so pass 0 as mask and spare a LDMXCSR 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1143 * instruction. 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1144 */ 0dc0f088e7314e0 Stefano Brivio 2021-05-10 1145 kernel_fpu_begin_mask(0); 7400b063969bdca Stefano Brivio 2020-03-07 1146 = 7400b063969bdca Stefano Brivio 2020-03-07 1147 scratch =3D *raw_cpu_ptr(= m->scratch_aligned); 7400b063969bdca Stefano Brivio 2020-03-07 1148 if (unlikely(!scratch)) { 7400b063969bdca Stefano Brivio 2020-03-07 1149 kernel_fpu_end(); 7400b063969bdca Stefano Brivio 2020-03-07 1150 return false; 7400b063969bdca Stefano Brivio 2020-03-07 1151 } 7400b063969bdca Stefano Brivio 2020-03-07 1152 map_index =3D raw_cpu_rea= d(nft_pipapo_avx2_scratch_index); 7400b063969bdca Stefano Brivio 2020-03-07 1153 = 7400b063969bdca Stefano Brivio 2020-03-07 1154 res =3D scratch + (map_i= ndex ? m->bsize_max : 0); 7400b063969bdca Stefano Brivio 2020-03-07 1155 fill =3D scratch + (map_i= ndex ? 0 : m->bsize_max); 7400b063969bdca Stefano Brivio 2020-03-07 1156 = 7400b063969bdca Stefano Brivio 2020-03-07 1157 /* Starting map doesn't n= eed to be set for this implementation */ 7400b063969bdca Stefano Brivio 2020-03-07 1158 = 7400b063969bdca Stefano Brivio 2020-03-07 1159 nft_pipapo_avx2_prepare(); 7400b063969bdca Stefano Brivio 2020-03-07 1160 = 7400b063969bdca Stefano Brivio 2020-03-07 1161 next_match: 7400b063969bdca Stefano Brivio 2020-03-07 1162 nft_pipapo_for_each_field= (f, i, m) { 7400b063969bdca Stefano Brivio 2020-03-07 1163 bool last =3D i =3D=3D m= ->field_count - 1, first =3D !i; 7400b063969bdca Stefano Brivio 2020-03-07 1164 = :::::: The code at line 1135 was first introduced by commit :::::: f0b3d338064e1fe7531f0d2977e35f3b334abfb4 netfilter: nft_set_pipapo_a= vx2: Add irq_fpu_usable() check, fallback to non-AVX2 version :::::: TO: Stefano Brivio :::::: CC: Pablo Neira Ayuso --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============1002877205036859557== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICIjkpWAAAy5jb25maWcAjBzLctw28p6vmHIuycGJJMsqp7Z0AEmQRIYkaACchy4sWRo7qpUl rx678d9vNwCSAAiO40OiQTdejX6jwZ9/+nlFXl8ev16/3N1c399/X305PByerl8Ot6vPd/eHf60y vmq4WtGMqd8Aubp7eP37978/XPQX56v3v52+++3k7dPN2Wp9eHo43K/Sx4fPd19eYYC7x4effv4p 5U3Oij5N+w0VkvGmV3SnLt98ubl5+8fql+zw6e76YfXHbzjM2dmv5q83Tjcm+yJNL78PTcU01OUf J+9OTkbcijTFCBqbidRDNN00BDQNaGfv3p+cDe1VhqhJnk2o0BRHdQAnzmpT0vQVa9bTCE5jLxVR LPVgJSyGyLovuOJRAGugK3VAvJFKdKniQk6tTHzst1w48yYdqzLFatorklS0l1yoCapKQQlst8k5 /AdQJHaF8/p5Vejzv189H15ev00nyBqmetpseiJg+6xm6vLdGaCPy6pbBtMoKtXq7nn18PiCIwy9 O9KyvoQpqdAoDoV5SqqBlG/exJp70rnE0TvrJamUg1+SDe3XVDS06osr1k7oLiQByFkcVF3VJA7Z 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