From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8381960359648294251==" MIME-Version: 1.0 From: kbuild test robot To: kbuild-all@lists.01.org Subject: [linux-next:master 9757/13554] drivers/misc/habanalabs/command_submission.c:792:3: note: in expansion of macro 'if' Date: Fri, 29 May 2020 10:14:18 +0800 Message-ID: <202005291015.ToNuMaIB%lkp@intel.com> List-Id: --===============8381960359648294251== 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: ff387fc20c697cdc887b2abf7ef494e853795a2f commit: b75f22505ac97ea680bcc3e23dcd56f421252b43 [9757/13554] habanalabs: a= dd signal/wait to CS IOCTL operations config: microblaze-randconfig-r033-20200528 (attached as .config) compiler: microblaze-linux-gcc (GCC) 9.3.0 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 git checkout b75f22505ac97ea680bcc3e23dcd56f421252b43 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = ARCH=3Dmicroblaze = If you fix the issue, kindly add following tag as appropriate Reported-by: kbuild test robot All warnings (new ones prefixed by >>, old ones prefixed by <<): In file included from include/linux/kernel.h:11, from include/linux/list.h:9, from include/linux/kobject.h:19, from include/linux/cdev.h:5, from drivers/misc/habanalabs/habanalabs.h:14, from drivers/misc/habanalabs/command_submission.c:9: drivers/misc/habanalabs/command_submission.c: In function 'cs_ioctl_signal_= wait': drivers/misc/habanalabs/command_submission.c:793:6: warning: cast to pointe= r from integer of different size [-Wint-to-pointer-cast] 793 | (void __user *) chunk->signal_seq_arr, | ^ include/linux/compiler.h:58:52: note: in definition of macro '__trace_if_va= r' 58 | #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __= trace_if_value(cond)) | ^~~~ >> drivers/misc/habanalabs/command_submission.c:792:3: note: in expansion o= f macro 'if' 792 | if (copy_from_user(signal_seq_arr, | ^~ drivers/misc/habanalabs/command_submission.c:793:6: warning: cast to pointe= r from integer of different size [-Wint-to-pointer-cast] 793 | (void __user *) chunk->signal_seq_arr, | ^ include/linux/compiler.h:58:61: note: in definition of macro '__trace_if_va= r' 58 | #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __= trace_if_value(cond)) | ^~~~ >> drivers/misc/habanalabs/command_submission.c:792:3: note: in expansion o= f macro 'if' 792 | if (copy_from_user(signal_seq_arr, | ^~ drivers/misc/habanalabs/command_submission.c:793:6: warning: cast to pointe= r from integer of different size [-Wint-to-pointer-cast] 793 | (void __user *) chunk->signal_seq_arr, | ^ include/linux/compiler.h:69:3: note: in definition of macro '__trace_if_val= ue' 69 | (cond) ? | ^~~~ include/linux/compiler.h:56:28: note: in expansion of macro '__trace_if_var' 56 | #define if(cond, ...) if ( __trace_if_var( !!(cond , ## __VA_ARGS__) )= ) | ^~~~~~~~~~~~~~ >> drivers/misc/habanalabs/command_submission.c:792:3: note: in expansion o= f macro 'if' 792 | if (copy_from_user(signal_seq_arr, | ^~ vim +/if +792 drivers/misc/habanalabs/command_submission.c 716 = 717 static int cs_ioctl_signal_wait(struct hl_fpriv *hpriv, enum hl_cs_t= ype cs_type, 718 void __user *chunks, u32 num_chunks, 719 u64 *cs_seq) 720 { 721 struct hl_device *hdev =3D hpriv->hdev; 722 struct hl_ctx *ctx =3D hpriv->ctx; 723 struct hl_cs_chunk *cs_chunk_array, *chunk; 724 struct hw_queue_properties *hw_queue_prop; 725 struct dma_fence *sig_fence =3D NULL; 726 struct hl_cs_job *job; 727 struct hl_cs *cs; 728 struct hl_cb *cb; 729 u64 *signal_seq_arr =3D NULL, signal_seq; 730 u32 size_to_copy, q_idx, signal_seq_arr_len, cb_size; 731 int rc; 732 = 733 *cs_seq =3D ULLONG_MAX; 734 = 735 if (num_chunks > HL_MAX_JOBS_PER_CS) { 736 dev_err(hdev->dev, 737 "Number of chunks can NOT be larger than %d\n", 738 HL_MAX_JOBS_PER_CS); 739 rc =3D -EINVAL; 740 goto out; 741 } 742 = 743 cs_chunk_array =3D kmalloc_array(num_chunks, sizeof(*cs_chunk_array= ), 744 GFP_ATOMIC); 745 if (!cs_chunk_array) { 746 rc =3D -ENOMEM; 747 goto out; 748 } 749 = 750 size_to_copy =3D num_chunks * sizeof(struct hl_cs_chunk); 751 if (copy_from_user(cs_chunk_array, chunks, size_to_copy)) { 752 dev_err(hdev->dev, "Failed to copy cs chunk array from user\n"); 753 rc =3D -EFAULT; 754 goto free_cs_chunk_array; 755 } 756 = 757 /* currently it is guaranteed to have only one chunk */ 758 chunk =3D &cs_chunk_array[0]; 759 q_idx =3D chunk->queue_index; 760 hw_queue_prop =3D &hdev->asic_prop.hw_queues_props[q_idx]; 761 = 762 if ((q_idx >=3D HL_MAX_QUEUES) || 763 (hw_queue_prop->type !=3D QUEUE_TYPE_EXT)) { 764 dev_err(hdev->dev, "Queue index %d is invalid\n", q_idx); 765 rc =3D -EINVAL; 766 goto free_cs_chunk_array; 767 } 768 = 769 if (cs_type =3D=3D CS_TYPE_WAIT) { 770 struct hl_cs_compl *sig_waitcs_cmpl; 771 = 772 signal_seq_arr_len =3D chunk->num_signal_seq_arr; 773 = 774 /* currently only one signal seq is supported */ 775 if (signal_seq_arr_len !=3D 1) { 776 dev_err(hdev->dev, 777 "Wait for signal CS supports only one signal CS seq\n"); 778 rc =3D -EINVAL; 779 goto free_cs_chunk_array; 780 } 781 = 782 signal_seq_arr =3D kmalloc_array(signal_seq_arr_len, 783 sizeof(*signal_seq_arr), 784 GFP_ATOMIC); 785 if (!signal_seq_arr) { 786 rc =3D -ENOMEM; 787 goto free_cs_chunk_array; 788 } 789 = 790 size_to_copy =3D chunk->num_signal_seq_arr * 791 sizeof(*signal_seq_arr); > 792 if (copy_from_user(signal_seq_arr, 793 (void __user *) chunk->signal_seq_arr, 794 size_to_copy)) { 795 dev_err(hdev->dev, 796 "Failed to copy signal seq array from user\n"); 797 rc =3D -EFAULT; 798 goto free_signal_seq_array; 799 } 800 = 801 /* currently it is guaranteed to have only one signal seq */ 802 signal_seq =3D signal_seq_arr[0]; 803 sig_fence =3D hl_ctx_get_fence(ctx, signal_seq); 804 if (IS_ERR(sig_fence)) { 805 dev_err(hdev->dev, 806 "Failed to get signal CS with seq 0x%llx\n", 807 signal_seq); 808 rc =3D PTR_ERR(sig_fence); 809 goto free_signal_seq_array; 810 } 811 = 812 if (!sig_fence) { 813 /* signal CS already finished */ 814 rc =3D 0; 815 goto free_signal_seq_array; 816 } 817 = 818 sig_waitcs_cmpl =3D 819 container_of(sig_fence, struct hl_cs_compl, base_fence); 820 = 821 if (sig_waitcs_cmpl->type !=3D CS_TYPE_SIGNAL) { 822 dev_err(hdev->dev, 823 "CS seq 0x%llx is not of a signal CS\n", 824 signal_seq); 825 dma_fence_put(sig_fence); 826 rc =3D -EINVAL; 827 goto free_signal_seq_array; 828 } 829 = 830 if (dma_fence_is_signaled(sig_fence)) { 831 /* signal CS already finished */ 832 dma_fence_put(sig_fence); 833 rc =3D 0; 834 goto free_signal_seq_array; 835 } 836 } 837 = 838 /* increment refcnt for context */ 839 hl_ctx_get(hdev, ctx); 840 = 841 rc =3D allocate_cs(hdev, ctx, cs_type, &cs); 842 if (rc) { 843 if (cs_type =3D=3D CS_TYPE_WAIT) 844 dma_fence_put(sig_fence); 845 hl_ctx_put(ctx); 846 goto free_signal_seq_array; 847 } 848 = 849 /* 850 * Save the signal CS fence for later initialization right before 851 * hanging the wait CS on the queue. 852 */ 853 if (cs->type =3D=3D CS_TYPE_WAIT) 854 cs->signal_fence =3D sig_fence; 855 = 856 hl_debugfs_add_cs(cs); 857 = 858 *cs_seq =3D cs->sequence; 859 = 860 job =3D hl_cs_allocate_job(hdev, QUEUE_TYPE_EXT, true); 861 if (!job) { 862 dev_err(hdev->dev, "Failed to allocate a new job\n"); 863 rc =3D -ENOMEM; 864 goto put_cs; 865 } 866 = 867 cb =3D hl_cb_kernel_create(hdev, PAGE_SIZE); 868 if (!cb) { 869 kfree(job); 870 rc =3D -EFAULT; 871 goto put_cs; 872 } 873 = 874 if (cs->type =3D=3D CS_TYPE_WAIT) 875 cb_size =3D hdev->asic_funcs->get_wait_cb_size(hdev); 876 else 877 cb_size =3D hdev->asic_funcs->get_signal_cb_size(hdev); 878 = 879 job->id =3D 0; 880 job->cs =3D cs; 881 job->user_cb =3D cb; 882 job->user_cb->cs_cnt++; 883 job->user_cb_size =3D cb_size; 884 job->hw_queue_id =3D q_idx; 885 = 886 /* 887 * No need in parsing, user CB is the patched CB. 888 * We call hl_cb_destroy() out of two reasons - we don't need the C= B in 889 * the CB idr anymore and to decrement its refcount as it was 890 * incremented inside hl_cb_kernel_create(). 891 */ 892 job->patched_cb =3D job->user_cb; 893 job->job_cb_size =3D job->user_cb_size; 894 hl_cb_destroy(hdev, &hdev->kernel_cb_mgr, cb->id << PAGE_SHIFT); 895 = 896 cs->jobs_in_queue_cnt[job->hw_queue_id]++; 897 = 898 list_add_tail(&job->cs_node, &cs->job_list); 899 = 900 /* increment refcount as for external queues we get completion */ 901 cs_get(cs); 902 = 903 hl_debugfs_add_job(hdev, job); 904 = 905 rc =3D hl_hw_queue_schedule_cs(cs); 906 if (rc) { 907 if (rc !=3D -EAGAIN) 908 dev_err(hdev->dev, 909 "Failed to submit CS %d.%llu to H/W queues, error %d\n", 910 ctx->asid, cs->sequence, rc); 911 goto free_cs_object; 912 } 913 = 914 rc =3D HL_CS_STATUS_SUCCESS; 915 goto put_cs; 916 = 917 free_cs_object: 918 cs_rollback(hdev, cs); 919 *cs_seq =3D ULLONG_MAX; 920 /* The path below is both for good and erroneous exits */ 921 put_cs: 922 /* We finished with the CS in this function, so put the ref */ 923 cs_put(cs); 924 free_signal_seq_array: 925 if (cs_type =3D=3D CS_TYPE_WAIT) 926 kfree(signal_seq_arr); 927 free_cs_chunk_array: 928 kfree(cs_chunk_array); 929 out: 930 return rc; 931 } 932 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org 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