From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8129640513114425152==" MIME-Version: 1.0 From: kernel test robot Subject: Re: [PATCH mac80211-next v6] mac80211: Switch to a virtual time-based airtime scheduler Date: Sat, 20 Mar 2021 08:29:03 +0800 Message-ID: <202103200814.UIN6eVVs-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============8129640513114425152== 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: <20210318213142.138707-1-toke@redhat.com> References: <20210318213142.138707-1-toke@redhat.com> TO: "Toke H=C3=B8iland-J=C3=B8rgensen" TO: linux-wireless(a)vger.kernel.org CC: "Toke H=C3=B8iland-J=C3=B8rgensen" CC: make-wifi-fast(a)lists.bufferbloat.net CC: Felix Fietkau CC: Rajkumar Manoharan CC: Kan Yan CC: Yibo Zhao Hi "Toke, I love your patch! Perhaps something to improve: [auto build test WARNING on mac80211-next/master] url: https://github.com/0day-ci/linux/commits/Toke-H-iland-J-rgensen/mac= 80211-Switch-to-a-virtual-time-based-airtime-scheduler/20210319-053617 base: https://git.kernel.org/pub/scm/linux/kernel/git/jberg/mac80211-next= .git master :::::: branch date: 27 hours ago :::::: commit date: 27 hours ago config: mips-randconfig-s032-20210318 (attached as .config) compiler: mipsel-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.3-277-gc089cd2d-dirty # https://github.com/0day-ci/linux/commit/23d429aa540736e04237eb11c= 63c03d929653774 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Toke-H-iland-J-rgensen/mac80211-Sw= itch-to-a-virtual-time-based-airtime-scheduler/20210319-053617 git checkout 23d429aa540736e04237eb11c63c03d929653774 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=3Dmips = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) command-line: note: in included file: builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQUIRE redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_SEQ_CST redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_ACQ_REL redefin= ed builtin:0:0: sparse: this was the original definition builtin:1:9: sparse: sparse: preprocessor token __ATOMIC_RELEASE redefin= ed builtin:0:0: sparse: this was the original definition >> net/mac80211/tx.c:3999:6: sparse: sparse: context imbalance in 'ieee8021= 1_txq_may_transmit' - wrong count at exit vim +/ieee80211_txq_may_transmit +3999 net/mac80211/tx.c 3ace10f5b5ad94 Kan Yan 2019-11-18 3998 = b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 @3999 bool ieee= 80211_txq_may_transmit(struct ieee80211_hw *hw, b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4000 struc= t ieee80211_txq *txq) b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4001 { 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4002 struct t= xq_info *first_txqi =3D NULL, *txqi =3D to_txq_info(txq); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4003 struct i= eee80211_local *local =3D hw_to_local(hw); 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4004 struct a= irtime_sched_info *air_sched; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4005 struct a= irtime_info *air_info; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4006 struct r= b_node *node =3D NULL; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4007 bool ret= =3D false; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4008 u64 now; b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4009 = b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4010 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4011 if (!iee= e80211_txq_airtime_check(hw, txq)) 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4012 return = false; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4013 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4014 air_sche= d =3D &local->airtime[txq->ac]; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4015 spin_loc= k_bh(&air_sched->lock); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4016 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4017 if (RB_E= MPTY_NODE(&txqi->schedule_order)) b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4018 goto ou= t; b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4019 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4020 now =3D = ktime_get_boottime_ns(); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4021 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4022 /* Like = in ieee80211_next_txq(), make sure the first station in the 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4023 * sched= uling order is eligible for transmission to avoid starvation. 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4024 */ 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4025 node =3D= rb_first_cached(&air_sched->active_txqs); 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4026 if (node= ) { 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4027 first_t= xqi =3D container_of(node, struct txq_info, 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4028 sc= hedule_order); 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4029 air_inf= o =3D to_airtime_info(&first_txqi->txq); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4030 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4031 if (air= _sched->v_t < air_info->v_t) 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4032 airtim= e_catchup_v_t(air_sched, air_info->v_t, now); 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4033 } b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4034 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4035 air_info= =3D to_airtime_info(&txqi->txq); 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4036 if (air_= info->v_t <=3D air_sched->v_t) { 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4037 air_sch= ed->last_schedule_activity =3D now; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4038 ret =3D= true; 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4039 } b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4040 = 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4041 spin_unl= ock_bh(&air_sched->lock); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4042 out: 23d429aa540736 Toke H=C3=B8iland-J=C3=B8rgensen 2021-03-18 4043 return r= et; b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4044 } b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4045 EXPORT_SY= MBOL(ieee80211_txq_may_transmit); b4809e9484da14 Toke H=C3=B8iland-J=C3=B8rgensen 2018-12-18 4046 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============8129640513114425152== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICMg3VWAAAy5jb25maWcAjDxZc9w4zu/zK7oyLzNVm1lfueorP1AU1c20JCok1W37ReXYnYxr HDvbbs/x7z+A1EFKkDNbNRsLgEASBHER6p9/+nnBng+P364PdzfX9/f/LL7uHnb768PudvHl7n73 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--===============8129640513114425152==--