From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============2423325376818655259==" MIME-Version: 1.0 From: kernel test robot Subject: [jfern:coresched 14/40] kernel/sched/core.c:4708 pick_next_task() error: potentially dereferencing uninitialized 'next'. Date: Sun, 15 Nov 2020 03:22:47 +0800 Message-ID: <202011150343.YgO95D3W-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============2423325376818655259== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org TO: "Joel Fernandes (Google)" tree: https://git.kernel.org/pub/scm/linux/kernel/git/jfern/linux.git cor= esched head: fc6ad0fc1a8f12256f39aed3eef69d3b9780b80d commit: e7a440f33a800ee9fdf07defb1176932ab4a59b1 [14/40] sched: Simplify th= e core pick loop for optimized case :::::: branch date: 5 hours ago :::::: commit date: 26 hours ago config: i386-randconfig-m021-20201115 (attached as .config) compiler: gcc-9 (Debian 9.3.0-15) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter smatch warnings: kernel/sched/core.c:4708 pick_next_task() error: potentially dereferencing = uninitialized 'next'. vim +/next +4708 kernel/sched/core.c 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4633 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4634 static struct tas= k_struct * 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4635 pick_next_task(st= ruct rq *rq, struct task_struct *prev, struct rq_flags *rf) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4636 { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4637 struct task_stru= ct *next, *max =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4638 const struct sch= ed_class *class; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4639 const struct cpu= mask *smt_mask; e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4640) bool fi_before = =3D false; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4641 bool need_sync; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4642 int i, j, cpu; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4643 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4644 if (!sched_core_= enabled(rq)) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4645 return __pick_n= ext_task(rq, prev, rf); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4646 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4647 cpu =3D cpu_of(r= q); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4648 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4649 /* Stopper task = is switching into idle, no need core-wide selection. */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4650 if (cpu_is_offli= ne(cpu)) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4651 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4652 * Reset core_p= ick so that we don't enter the fastpath when 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4653 * coming onlin= e. core_pick would already be migrated to 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4654 * another cpu = during offline. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4655 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4656 rq->core_pick = =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4657 return __pick_n= ext_task(rq, prev, rf); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4658 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4659 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4660 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4661 * If there were= no {en,de}queues since we picked (IOW, the task 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4662 * pointers are = all still valid), and we haven't scheduled the last 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4663 * pick yet, do = so now. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4664 * 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4665 * rq->core_pick= can be NULL if no selection was made for a CPU because 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4666 * it was either= offline or went offline during a sibling's core-wide 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4667 * selection. In= this case, do a core-wide selection. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4668 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4669 if (rq->core->co= re_pick_seq =3D=3D rq->core->core_task_seq && 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4670 rq->core->co= re_pick_seq !=3D rq->core_sched_seq && 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4671 rq->core_pic= k) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4672 WRITE_ONCE(rq->= core_sched_seq, rq->core->core_pick_seq); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4673 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4674 next =3D rq->co= re_pick; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4675 if (next !=3D p= rev) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4676 put_prev_task(= rq, prev); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4677 set_next_task(= rq, next); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4678 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4679 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4680 rq->core_pick = =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4681 return next; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4682 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4683 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4684 put_prev_task_ba= lance(rq, prev, rf); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4685 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4686 smt_mask =3D cpu= _smt_mask(cpu); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4687 need_sync =3D !!= rq->core->core_cookie; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4688 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4689 /* reset state */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4690 rq->core->core_c= ookie =3D 0UL; ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4691 if (rq->core->co= re_forceidle) { ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4692 need_sync =3D t= rue; e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4693) fi_before =3D t= rue; ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4694 rq->core->core_= forceidle =3D false; ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4695 } e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4696) = e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4697) /* e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4698) * Optimize for = common case where this CPU has no cookies e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4699) * and there are= no cookied tasks running on siblings. e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4700) */ e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4701) if (!need_sync) { e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4702) for_each_class(= class) { e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4703) next =3D class= ->pick_task(rq); e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4704) if (next) e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4705) break; e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4706) } e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4707) = e7a440f33a800ee Joel Fernandes (Google 2020-11-05 @4708) if (!next->core= _cookie) { e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4709) rq->core_pick = =3D NULL; e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4710) goto done; e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4711) } e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4712) need_sync =3D t= rue; e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4713) } e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4714) = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4715 for_each_cpu(i, = smt_mask) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4716 struct rq *rq_i= =3D cpu_rq(i); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4717 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4718 rq_i->core_pick= =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4719 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4720 if (i !=3D cpu) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4721 update_rq_cloc= k(rq_i); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4722 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4723 = e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4724) /* Reset the sna= pshot if core is no longer in force-idle. */ e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4725) if (!fi_before) { e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4726) for_each_cpu(i,= smt_mask) { e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4727) struct rq *rq_= i =3D cpu_rq(i); e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4728) rq_i->cfs.min_= vruntime_fi =3D rq_i->cfs.min_vruntime; e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4729) } e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4730) } e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4731) = e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4732) /* e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4733) * core->core_ta= sk_seq, core->core_pick_seq, rq->core_sched_seq e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4734) * e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4735) * @task_seq gua= rds the task state ({en,de}queues) e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4736) * @pick_seq is = the @task_seq we did a selection on e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4737) * @sched_seq is= the @pick_seq we scheduled e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4738) * e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4739) * However, pree= mptions can cause multiple picks on the same task set. e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4740) * 'Fix' this by= also increasing @task_seq for every pick. e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4741) */ e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4742) rq->core->core_t= ask_seq++; e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4743) = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4744 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4745 * Try and selec= t tasks for each sibling in decending sched_class 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4746 * order. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4747 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4748 for_each_class(c= lass) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4749 again: 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4750 for_each_cpu_wr= ap(i, smt_mask, cpu) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4751 struct rq *rq_= i =3D cpu_rq(i); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4752 struct task_st= ruct *p; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4753 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4754 if (rq_i->core= _pick) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4755 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4756 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4757 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4758 * If this sib= ling doesn't yet have a suitable task to 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4759 * run; ask fo= r the most elegible task, given the 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4760 * highest pri= ority task already selected for this 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4761 * core. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4762 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4763 p =3D pick_tas= k(rq_i, class, max); e7a440f33a800ee Joel Fernandes (Google 2020-11-05 4764) if (!p) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4765 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4766 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4767 rq_i->core_pic= k =3D p; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4768 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4769 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4770 * If this new= candidate is of higher priority than the 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4771 * previous; a= nd they're incompatible; we need to wipe 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4772 * the slate a= nd start over. pick_task makes sure that 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4773 * p's priorit= y is more than max if it doesn't match 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4774 * max's cooki= e. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4775 * 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4776 * NOTE: this = is a linear max-filter and is thus bounded 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4777 * in executio= n time. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4778 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4779 if (!max || !c= ookie_match(max, p)) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4780 struct task_s= truct *old_max =3D max; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4781 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4782 rq->core->cor= e_cookie =3D p->core_cookie; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4783 max =3D p; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4784 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4785 if (old_max) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4786 for_each_cpu= (j, smt_mask) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4787 if (j =3D= =3D i) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4788 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4789 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4790 cpu_rq(j)->= core_pick =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4791 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4792 goto again; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4793 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4794 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4795 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4796 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4797 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4798 rq->core->core_p= ick_seq =3D rq->core->core_task_seq; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4799 next =3D rq->cor= e_pick; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4800 rq->core_sched_s= eq =3D rq->core->core_pick_seq; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4801 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4802 /* Something sho= uld have been selected for current CPU */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4803 WARN_ON_ONCE(!ne= xt); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4804 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4805 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4806 * Reschedule si= blings 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4807 * 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4808 * NOTE: L1TF --= at this point we're no longer running the old task and 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4809 * sending an IP= I (below) ensures the sibling will no longer be running 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4810 * their task. T= his ensures there is no inter-sibling overlap between 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4811 * non-matching = user state. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4812 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4813 for_each_cpu(i, = smt_mask) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4814 struct rq *rq_i= =3D cpu_rq(i); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4815 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4816 /* 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4817 * An online si= bling might have gone offline before a task 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4818 * could be pic= ked for it, or it might be offline but later 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4819 * happen to co= me online, but its too late and nothing was 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4820 * picked for i= t. That's Ok - it will pick tasks for itself, 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4821 * so ignore it. 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4822 */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4823 if (!rq_i->core= _pick) 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4824 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4825 = ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4826 if (is_task_rq_= idle(rq_i->core_pick) && rq_i->nr_running && ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4827 !rq_i->core= ->core_forceidle) { ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4828 rq_i->core->co= re_forceidle =3D true; ba9df3989cb9de9 Vineeth Pillai 2020-08-28 4829 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4830 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4831 if (i =3D=3D cp= u) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4832 rq_i->core_pic= k =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4833 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4834 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4835 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4836 /* Did we break= L1TF mitigation requirements? */ 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4837 WARN_ON_ONCE(!c= ookie_match(next, rq_i->core_pick)); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4838 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4839 if (rq_i->curr = =3D=3D rq_i->core_pick) { 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4840 rq_i->core_pic= k =3D NULL; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4841 continue; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4842 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4843 = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4844 resched_curr(rq= _i); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4845 } 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4846 = e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4847) /* Snapshot if c= ore is in force-idle. */ e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4848) if (!fi_before &= & rq->core->core_forceidle) { e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4849) for_each_cpu(i,= smt_mask) { e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4850) struct rq *rq_= i =3D cpu_rq(i); e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4851) rq_i->cfs.min_= vruntime_fi =3D rq_i->cfs.min_vruntime; e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4852) } e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4853) } e4fe729c9bf5c1e Joel Fernandes (Google 2020-06-30 4854) = 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4855 done: 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4856 set_next_task(rq= , next); 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4857 return next; 620989bb8ec95d4 Peter Zijlstra 2020-06-30 4858 } 4a04834e4eede5d Peter Zijlstra 2020-06-30 4859 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============2423325376818655259== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" 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