From mboxrd@z Thu Jan 1 00:00:00 1970 Received: from mga02.intel.com (mga02.intel.com [134.134.136.20]) (using TLSv1.2 with cipher ECDHE-RSA-AES256-GCM-SHA384 (256/256 bits)) (No client certificate requested) by smtp.subspace.kernel.org (Postfix) with ESMTPS id 1790672 for ; Sat, 4 Sep 2021 23:03:19 +0000 (UTC) X-IronPort-AV: E=McAfee;i="6200,9189,10097"; a="206923601" X-IronPort-AV: E=Sophos;i="5.85,269,1624345200"; d="gz'50?scan'50,208,50";a="206923601" Received: from orsmga007.jf.intel.com ([10.7.209.58]) by orsmga101.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 04 Sep 2021 16:03:18 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.85,269,1624345200"; d="gz'50?scan'50,208,50";a="468400847" Received: from lkp-server01.sh.intel.com (HELO 2115029a3e5c) ([10.239.97.150]) by orsmga007.jf.intel.com with ESMTP; 04 Sep 2021 16:03:16 -0700 Received: from kbuild by 2115029a3e5c with local (Exim 4.92) (envelope-from ) id 1mMegt-00021a-LR; Sat, 04 Sep 2021 23:03:15 +0000 Date: Sun, 5 Sep 2021 07:02:48 +0800 From: kernel test robot To: Cong Wang Cc: llvm@lists.linux.dev, kbuild-all@lists.01.org, linux-kernel@vger.kernel.org Subject: [congwang:sch_bpf 2/3] net/sched/sch_bpf.c:185:21: error: called object type 'int' is not a function or function pointer Message-ID: <202109050734.TFcRP0kk-lkp@intel.com> Precedence: bulk X-Mailing-List: llvm@lists.linux.dev List-Id: List-Subscribe: List-Unsubscribe: MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="KsGdsel6WgEHnImy" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) --KsGdsel6WgEHnImy Content-Type: text/plain; charset=us-ascii Content-Disposition: inline tree: https://github.com/congwang/linux.git sch_bpf head: f680855badd6d78b73490b5785ed3de5d68bf26b commit: ac00415a225e3cbd2c3a7fd5f38dacdfadfcc1ac [2/3] net_sched: introduce eBPF based Qdisc config: hexagon-buildonly-randconfig-r004-20210905 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project 6fe2beba7d2a41964af658c8c59dd172683ef739) reproduce (this is a W=1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # https://github.com/congwang/linux/commit/ac00415a225e3cbd2c3a7fd5f38dacdfadfcc1ac git remote add congwang https://github.com/congwang/linux.git git fetch --no-tags congwang sch_bpf git checkout ac00415a225e3cbd2c3a7fd5f38dacdfadfcc1ac # save the attached .config to linux build tree mkdir build_dir COMPILER_INSTALL_PATH=$HOME/0day COMPILER=clang make.cross O=build_dir ARCH=hexagon SHELL=/bin/bash net/sched/ If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All error/warnings (new ones prefixed by >>): >> net/sched/sch_bpf.c:144:6: warning: variable 'cl' is used uninitialized whenever 'if' condition is false [-Wsometimes-uninitialized] if (result >= 0) { ^~~~~~~~~~~~ net/sched/sch_bpf.c:164:9: note: uninitialized use occurs here return cl; ^~ net/sched/sch_bpf.c:144:2: note: remove the 'if' if its condition is always true if (result >= 0) { ^~~~~~~~~~~~~~~~~~ net/sched/sch_bpf.c:134:26: note: initialize the variable 'cl' to silence this warning struct sch_bpf_class *cl; ^ = NULL >> net/sched/sch_bpf.c:185:21: error: called object type 'int' is not a function or function pointer res = BPF_PROG_RUN(enqueue, &ctx); ~~~~~~~~~~~~^ net/sched/sch_bpf.c:254:20: error: called object type 'int' is not a function or function pointer res = BPF_PROG_RUN(dequeue, &ctx); ~~~~~~~~~~~~^ >> net/sched/sch_bpf.c:256:10: error: incompatible pointer types returning 'struct __sk_buff *' from a function with result type 'struct sk_buff *' [-Werror,-Wincompatible-pointer-types] return ctx.skb; ^~~~~~~ net/sched/sch_bpf.c:525:24: warning: unused variable 'q' [-Wunused-variable] struct sch_bpf_qdisc *q = qdisc_priv(sch); ^ 2 warnings and 3 errors generated. vim +/int +185 net/sched/sch_bpf.c 130 131 static struct sch_bpf_class *sch_bpf_classify(struct sk_buff *skb, struct Qdisc *sch, int *qerr) 132 { 133 struct sch_bpf_qdisc *q = qdisc_priv(sch); 134 struct sch_bpf_class *cl; 135 struct tcf_proto *tcf; 136 struct tcf_result res; 137 int result; 138 139 tcf = rcu_dereference_bh(q->filter_list); 140 if (!tcf) 141 return NULL; 142 *qerr = NET_XMIT_SUCCESS | __NET_XMIT_BYPASS; 143 result = tcf_classify(skb, NULL, tcf, &res, false); > 144 if (result >= 0) { 145 #ifdef CONFIG_NET_CLS_ACT 146 switch (result) { 147 case TC_ACT_QUEUED: 148 case TC_ACT_STOLEN: 149 case TC_ACT_TRAP: 150 *qerr = NET_XMIT_SUCCESS | __NET_XMIT_STOLEN; 151 fallthrough; 152 case TC_ACT_SHOT: 153 return NULL; 154 } 155 #endif 156 cl = (void *)res.class; 157 if (!cl) { 158 cl = sch_bpf_find(sch, res.classid); 159 if (!cl) 160 return NULL; 161 } 162 } 163 164 return cl; 165 } 166 167 static int sch_bpf_enqueue(struct sk_buff *skb, struct Qdisc *sch, 168 struct sk_buff **to_free) 169 { 170 struct sch_bpf_qdisc *q = qdisc_priv(sch); 171 unsigned int len = qdisc_pkt_len(skb); 172 struct sch_bpf_ctx ctx = {}; 173 struct sch_bpf_class *cl; 174 int res = NET_XMIT_SUCCESS; 175 176 cl = sch_bpf_classify(skb, sch, &res); 177 if (!cl) { 178 struct bpf_prog *enqueue; 179 180 enqueue = rcu_dereference(q->enqueue_prog.prog); 181 bpf_compute_data_pointers(skb); 182 183 ctx.skb = (struct __sk_buff *)skb; 184 ctx.nr_flows = q->clhash.hashelems; > 185 res = BPF_PROG_RUN(enqueue, &ctx); 186 if (q->direct) 187 return res; 188 switch (res) { 189 case SCH_BPF_DROP: 190 __qdisc_drop(skb, to_free); 191 return NET_XMIT_DROP; 192 } 193 cl = sch_bpf_find(sch, ctx.classid); 194 if (!cl) { 195 if (res & __NET_XMIT_BYPASS) 196 qdisc_qstats_drop(sch); 197 __qdisc_drop(skb, to_free); 198 return res; 199 } 200 } 201 202 if (cl->qdisc) { 203 res = qdisc_enqueue(skb, cl->qdisc, to_free); 204 if (res != NET_XMIT_SUCCESS) { 205 if (net_xmit_drop_count(res)) { 206 qdisc_qstats_drop(sch); 207 cl->drops++; 208 } 209 return res; 210 } 211 } else { 212 sch_bpf_skb_cb(skb)->rank = ctx.rank; 213 pq_push(&cl->pq, &skb->pqnode); 214 } 215 216 sch->qstats.backlog += len; 217 sch->q.qlen++; 218 return res; 219 } 220 221 static struct sk_buff *sch_bpf_dequeue(struct Qdisc *sch) 222 { 223 struct sch_bpf_qdisc *q = qdisc_priv(sch); 224 struct sk_buff *skb, *ret = NULL; 225 struct sch_bpf_ctx ctx = {}; 226 struct bpf_prog *dequeue; 227 struct sch_bpf_class *cl; 228 struct pq_node *flow; 229 s64 now; 230 int res; 231 232 requeue: 233 flow = pq_pop(&q->flows); 234 if (!flow) 235 return NULL; 236 237 cl = container_of(flow, struct sch_bpf_class, node); 238 if (cl->qdisc) { 239 skb = cl->qdisc->dequeue(cl->qdisc); 240 ctx.classid = cl->common.classid; 241 } else { 242 struct pq_node *p = pq_pop(&cl->pq); 243 244 if (!p) 245 return NULL; 246 skb = container_of(p, struct sk_buff, pqnode); 247 ctx.classid = cl->rank; 248 } 249 ctx.skb = (struct __sk_buff *) skb; 250 ctx.nr_flows = q->clhash.hashelems; 251 252 dequeue = rcu_dereference(q->dequeue_prog.prog); 253 bpf_compute_data_pointers(skb); 254 res = BPF_PROG_RUN(dequeue, &ctx); 255 if (q->direct) > 256 return ctx.skb; 257 switch (res) { 258 case SCH_BPF_OK: 259 ret = skb; 260 break; 261 case SCH_BPF_REQUEUE: 262 sch_bpf_skb_cb(skb)->rank = ctx.rank; 263 cl->rank = ctx.classid; 264 pq_push(&cl->pq, &skb->pqnode); 265 bstats_update(&cl->bstats, skb); 266 pq_push(&q->flows, &cl->node); 267 goto requeue; 268 case SCH_BPF_THROTTLE: 269 now = ktime_get_ns(); 270 qdisc_watchdog_schedule_ns(&q->watchdog, now + ctx.delay); 271 qdisc_qstats_overlimit(sch); 272 cl->overlimits++; 273 return NULL; 274 default: 275 kfree_skb(skb); 276 ret = NULL; 277 } 278 279 if (pq_top(&cl->pq)) 280 pq_push(&q->flows, &cl->node); 281 return ret; 282 } 283 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --KsGdsel6WgEHnImy Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" 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charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://github.com/congwang/linux.git sch_bpf head: f680855badd6d78b73490b5785ed3de5d68bf26b commit: ac00415a225e3cbd2c3a7fd5f38dacdfadfcc1ac [2/3] net_sched: introduce= eBPF based Qdisc config: hexagon-buildonly-randconfig-r004-20210905 (attached as .config) compiler: clang version 14.0.0 (https://github.com/llvm/llvm-project 6fe2be= ba7d2a41964af658c8c59dd172683ef739) 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 # https://github.com/congwang/linux/commit/ac00415a225e3cbd2c3a7fd5= f38dacdfadfcc1ac git remote add congwang https://github.com/congwang/linux.git git fetch --no-tags congwang sch_bpf git checkout ac00415a225e3cbd2c3a7fd5f38dacdfadfcc1ac # save the attached .config to linux build tree mkdir build_dir COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross O=3D= build_dir ARCH=3Dhexagon SHELL=3D/bin/bash net/sched/ If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All error/warnings (new ones prefixed by >>): >> net/sched/sch_bpf.c:144:6: warning: variable 'cl' is used uninitialized = whenever 'if' condition is false [-Wsometimes-uninitialized] if (result >=3D 0) { ^~~~~~~~~~~~ net/sched/sch_bpf.c:164:9: note: uninitialized use occurs here return cl; ^~ net/sched/sch_bpf.c:144:2: note: remove the 'if' if its condition is alw= ays true if (result >=3D 0) { ^~~~~~~~~~~~~~~~~~ net/sched/sch_bpf.c:134:26: note: initialize the variable 'cl' to silenc= e this warning struct sch_bpf_class *cl; ^ =3D NULL >> net/sched/sch_bpf.c:185:21: error: called object type 'int' is not a fun= ction or function pointer res =3D BPF_PROG_RUN(enqueue, &ctx); ~~~~~~~~~~~~^ net/sched/sch_bpf.c:254:20: error: called object type 'int' is not a fun= ction or function pointer res =3D BPF_PROG_RUN(dequeue, &ctx); ~~~~~~~~~~~~^ >> net/sched/sch_bpf.c:256:10: error: incompatible pointer types returning = 'struct __sk_buff *' from a function with result type 'struct sk_buff *' [-= Werror,-Wincompatible-pointer-types] return ctx.skb; ^~~~~~~ net/sched/sch_bpf.c:525:24: warning: unused variable 'q' [-Wunused-varia= ble] struct sch_bpf_qdisc *q =3D qdisc_priv(sch); ^ 2 warnings and 3 errors generated. vim +/int +185 net/sched/sch_bpf.c 130 = 131 static struct sch_bpf_class *sch_bpf_classify(struct sk_buff *skb, s= truct Qdisc *sch, int *qerr) 132 { 133 struct sch_bpf_qdisc *q =3D qdisc_priv(sch); 134 struct sch_bpf_class *cl; 135 struct tcf_proto *tcf; 136 struct tcf_result res; 137 int result; 138 = 139 tcf =3D rcu_dereference_bh(q->filter_list); 140 if (!tcf) 141 return NULL; 142 *qerr =3D NET_XMIT_SUCCESS | __NET_XMIT_BYPASS; 143 result =3D tcf_classify(skb, NULL, tcf, &res, false); > 144 if (result >=3D 0) { 145 #ifdef CONFIG_NET_CLS_ACT 146 switch (result) { 147 case TC_ACT_QUEUED: 148 case TC_ACT_STOLEN: 149 case TC_ACT_TRAP: 150 *qerr =3D NET_XMIT_SUCCESS | __NET_XMIT_STOLEN; 151 fallthrough; 152 case TC_ACT_SHOT: 153 return NULL; 154 } 155 #endif 156 cl =3D (void *)res.class; 157 if (!cl) { 158 cl =3D sch_bpf_find(sch, res.classid); 159 if (!cl) 160 return NULL; 161 } 162 } 163 = 164 return cl; 165 } 166 = 167 static int sch_bpf_enqueue(struct sk_buff *skb, struct Qdisc *sch, 168 struct sk_buff **to_free) 169 { 170 struct sch_bpf_qdisc *q =3D qdisc_priv(sch); 171 unsigned int len =3D qdisc_pkt_len(skb); 172 struct sch_bpf_ctx ctx =3D {}; 173 struct sch_bpf_class *cl; 174 int res =3D NET_XMIT_SUCCESS; 175 = 176 cl =3D sch_bpf_classify(skb, sch, &res); 177 if (!cl) { 178 struct bpf_prog *enqueue; 179 = 180 enqueue =3D rcu_dereference(q->enqueue_prog.prog); 181 bpf_compute_data_pointers(skb); 182 = 183 ctx.skb =3D (struct __sk_buff *)skb; 184 ctx.nr_flows =3D q->clhash.hashelems; > 185 res =3D BPF_PROG_RUN(enqueue, &ctx); 186 if (q->direct) 187 return res; 188 switch (res) { 189 case SCH_BPF_DROP: 190 __qdisc_drop(skb, to_free); 191 return NET_XMIT_DROP; 192 } 193 cl =3D sch_bpf_find(sch, ctx.classid); 194 if (!cl) { 195 if (res & __NET_XMIT_BYPASS) 196 qdisc_qstats_drop(sch); 197 __qdisc_drop(skb, to_free); 198 return res; 199 } 200 } 201 = 202 if (cl->qdisc) { 203 res =3D qdisc_enqueue(skb, cl->qdisc, to_free); 204 if (res !=3D NET_XMIT_SUCCESS) { 205 if (net_xmit_drop_count(res)) { 206 qdisc_qstats_drop(sch); 207 cl->drops++; 208 } 209 return res; 210 } 211 } else { 212 sch_bpf_skb_cb(skb)->rank =3D ctx.rank; 213 pq_push(&cl->pq, &skb->pqnode); 214 } 215 = 216 sch->qstats.backlog +=3D len; 217 sch->q.qlen++; 218 return res; 219 } 220 = 221 static struct sk_buff *sch_bpf_dequeue(struct Qdisc *sch) 222 { 223 struct sch_bpf_qdisc *q =3D qdisc_priv(sch); 224 struct sk_buff *skb, *ret =3D NULL; 225 struct sch_bpf_ctx ctx =3D {}; 226 struct bpf_prog *dequeue; 227 struct sch_bpf_class *cl; 228 struct pq_node *flow; 229 s64 now; 230 int res; 231 = 232 requeue: 233 flow =3D pq_pop(&q->flows); 234 if (!flow) 235 return NULL; 236 = 237 cl =3D container_of(flow, struct sch_bpf_class, node); 238 if (cl->qdisc) { 239 skb =3D cl->qdisc->dequeue(cl->qdisc); 240 ctx.classid =3D cl->common.classid; 241 } else { 242 struct pq_node *p =3D pq_pop(&cl->pq); 243 = 244 if (!p) 245 return NULL; 246 skb =3D container_of(p, struct sk_buff, pqnode); 247 ctx.classid =3D cl->rank; 248 } 249 ctx.skb =3D (struct __sk_buff *) skb; 250 ctx.nr_flows =3D q->clhash.hashelems; 251 = 252 dequeue =3D rcu_dereference(q->dequeue_prog.prog); 253 bpf_compute_data_pointers(skb); 254 res =3D BPF_PROG_RUN(dequeue, &ctx); 255 if (q->direct) > 256 return ctx.skb; 257 switch (res) { 258 case SCH_BPF_OK: 259 ret =3D skb; 260 break; 261 case SCH_BPF_REQUEUE: 262 sch_bpf_skb_cb(skb)->rank =3D ctx.rank; 263 cl->rank =3D ctx.classid; 264 pq_push(&cl->pq, &skb->pqnode); 265 bstats_update(&cl->bstats, skb); 266 pq_push(&q->flows, &cl->node); 267 goto requeue; 268 case SCH_BPF_THROTTLE: 269 now =3D ktime_get_ns(); 270 qdisc_watchdog_schedule_ns(&q->watchdog, now + ctx.delay); 271 qdisc_qstats_overlimit(sch); 272 cl->overlimits++; 273 return NULL; 274 default: 275 kfree_skb(skb); 276 ret =3D NULL; 277 } 278 = 279 if (pq_top(&cl->pq)) 280 pq_push(&q->flows, &cl->node); 281 return ret; 282 } 283 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0448952646391917521== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICHH2M2EAAy5jb25maWcAjDxLc9s4k/f5Faykamu+Qya2/Ei8Wz6AJChiRBA0AMqyLyzFphPt KJJLlmcm++u3Ab4AEHQyVRmb3UCz0Wj0C02//+19gF6P++/r4+Zhvd3+CL7Wu/qwPtaPwdNmW/9P ELMgZzLAMZF/wOBss3v99+O3+t/11/0uuPjj9PyPk2BRH3b1Noj2u6fN11eYvdnvfnv/W8TyhMyr KKqWmAvC8krilbx+97Bd774Gf9eHFxgXKApA4/evm+N/f/wI//++ORz2h4/b7d/fq+fD/n/rh2Nw +VTPvtRf1p8eZ+vz06vL8/XT5cXnh88PF1ePj6efZpefz+qnT2dX/3nXvXU+vPb6xGCFiCrKUD6/ 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