From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1757708AbeD0LzO (ORCPT ); Fri, 27 Apr 2018 07:55:14 -0400 Received: from mga04.intel.com ([192.55.52.120]:51031 "EHLO mga04.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1751416AbeD0LzN (ORCPT ); Fri, 27 Apr 2018 07:55:13 -0400 X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.49,335,1520924400"; d="gz'50?scan'50,208,50";a="223877971" Date: Fri, 27 Apr 2018 19:55:04 +0800 From: kbuild test robot To: kys@linuxonhyperv.com Cc: kbuild-all@01.org, x86@kernel.org, gregkh@linuxfoundation.org, linux-kernel@vger.kernel.org, devel@linuxdriverproject.org, olaf@aepfle.de, apw@canonical.com, jasowang@redhat.com, tglx@linutronix.de, hpa@zytor.com, sthemmin@microsoft.com, Michael.H.Kelley@microsoft.com, vkuznets@redhat.com, "K. Y. Srinivasan" Subject: Re: [PATCH 2/5] X86: Hyper-V: Enable IPI enlightenments Message-ID: <201804271859.knaN67cE%fengguang.wu@intel.com> References: <20180425181250.8740-2-kys@linuxonhyperv.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="KsGdsel6WgEHnImy" Content-Disposition: inline In-Reply-To: <20180425181250.8740-2-kys@linuxonhyperv.com> User-Agent: Mutt/1.5.23 (2014-03-12) X-SA-Exim-Connect-IP: X-SA-Exim-Mail-From: fengguang.wu@intel.com X-SA-Exim-Scanned: No (on bee); SAEximRunCond expanded to false Sender: linux-kernel-owner@vger.kernel.org List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --KsGdsel6WgEHnImy Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Srinivasan, I love your patch! Yet something to improve: [auto build test ERROR on v4.17-rc2] [also build test ERROR on next-20180426] [cannot apply to tip/x86/core] [if your patch is applied to the wrong git tree, please drop us a note to help improve the system] url: https://github.com/0day-ci/linux/commits/kys-linuxonhyperv-com/X86-Hyper-V-APIC-enlightenments/20180427-114416 config: i386-randconfig-s1-04271426 (attached as .config) compiler: gcc-6 (Debian 6.4.0-9) 6.4.0 20171026 reproduce: # save the attached .config to linux build tree make ARCH=i386 All errors (new ones prefixed by >>): arch/x86/hyperv/hv_apic.c: In function 'hv_apic_read': arch/x86/hyperv/hv_apic.c:73:10: error: implicit declaration of function 'native_apic_mem_read' [-Werror=implicit-function-declaration] return native_apic_mem_read(reg); ^~~~~~~~~~~~~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_apic_write': arch/x86/hyperv/hv_apic.c:87:3: error: implicit declaration of function 'native_apic_mem_write' [-Werror=implicit-function-declaration] native_apic_mem_write(reg, val); ^~~~~~~~~~~~~~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_send_ipi': arch/x86/hyperv/hv_apic.c:155:3: error: invalid use of undefined type 'struct apic' orig_apic.send_IPI(cpu, vector); ^~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_send_ipi_mask': arch/x86/hyperv/hv_apic.c:161:3: error: invalid use of undefined type 'struct apic' orig_apic.send_IPI_mask(mask, vector); ^~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_send_ipi_mask_allbutself': arch/x86/hyperv/hv_apic.c:174:3: error: invalid use of undefined type 'struct apic' orig_apic.send_IPI_mask_allbutself(mask, vector); ^~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_send_ipi_all': arch/x86/hyperv/hv_apic.c:185:3: error: invalid use of undefined type 'struct apic' orig_apic.send_IPI_all(vector); ^~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_send_ipi_self': arch/x86/hyperv/hv_apic.c:191:3: error: invalid use of undefined type 'struct apic' orig_apic.send_IPI_self(vector); ^~~~~~~~~ arch/x86/hyperv/hv_apic.c: In function 'hv_apic_init': arch/x86/hyperv/hv_apic.c:204:16: error: 'apic' undeclared (first use in this function) orig_apic = *apic; ^~~~ arch/x86/hyperv/hv_apic.c:204:16: note: each undeclared identifier is reported only once for each function it appears in >> arch/x86/hyperv/hv_apic.c:204:3: error: 'orig_apic' has an incomplete type 'struct apic' orig_apic = *apic; ^~~~~~~~~ arch/x86/hyperv/hv_apic.c:217:3: error: implicit declaration of function 'apic_set_eoi_write' [-Werror=implicit-function-declaration] apic_set_eoi_write(hv_apic_eoi_write); ^~~~~~~~~~~~~~~~~~ arch/x86/hyperv/hv_apic.c: At top level: >> arch/x86/hyperv/hv_apic.c:39:20: error: storage size of 'orig_apic' isn't known static struct apic orig_apic; ^~~~~~~~~ cc1: some warnings being treated as errors vim +204 arch/x86/hyperv/hv_apic.c 38 > 39 static struct apic orig_apic; 40 41 static u64 hv_apic_icr_read(void) 42 { 43 u64 reg_val; 44 45 rdmsrl(HV_X64_MSR_ICR, reg_val); 46 return reg_val; 47 } 48 49 static void hv_apic_icr_write(u32 low, u32 id) 50 { 51 u64 reg_val; 52 53 reg_val = SET_APIC_DEST_FIELD(id); 54 reg_val = reg_val << 32; 55 reg_val |= low; 56 57 wrmsrl(HV_X64_MSR_ICR, reg_val); 58 } 59 60 static u32 hv_apic_read(u32 reg) 61 { 62 u32 reg_val, hi; 63 64 switch (reg) { 65 case APIC_EOI: 66 rdmsr(HV_X64_MSR_EOI, reg_val, hi); 67 return reg_val; 68 case APIC_TASKPRI: 69 rdmsr(HV_X64_MSR_TPR, reg_val, hi); 70 return reg_val; 71 72 default: 73 return native_apic_mem_read(reg); 74 } 75 } 76 77 static void hv_apic_write(u32 reg, u32 val) 78 { 79 switch (reg) { 80 case APIC_EOI: 81 wrmsr(HV_X64_MSR_EOI, val, 0); 82 break; 83 case APIC_TASKPRI: 84 wrmsr(HV_X64_MSR_TPR, val, 0); 85 break; 86 default: 87 native_apic_mem_write(reg, val); 88 } 89 } 90 91 static void hv_apic_eoi_write(u32 reg, u32 val) 92 { 93 wrmsr(HV_X64_MSR_EOI, val, 0); 94 } 95 96 /* 97 * IPI implementation on Hyper-V. 98 */ 99 100 static int __send_ipi_mask(const struct cpumask *mask, int vector) 101 { 102 int cur_cpu, vcpu; 103 struct ipi_arg_non_ex **arg; 104 struct ipi_arg_non_ex *ipi_arg; 105 int ret = 1; 106 unsigned long flags; 107 108 if (cpumask_empty(mask)) 109 return 0; 110 111 if (!hv_hypercall_pg) 112 return ret; 113 114 if ((vector < HV_IPI_LOW_VECTOR) || (vector > HV_IPI_HIGH_VECTOR)) 115 return ret; 116 117 local_irq_save(flags); 118 arg = (struct ipi_arg_non_ex **)this_cpu_ptr(hyperv_pcpu_input_arg); 119 120 ipi_arg = *arg; 121 if (unlikely(!ipi_arg)) 122 goto ipi_mask_done; 123 124 125 ipi_arg->vector = vector; 126 ipi_arg->reserved = 0; 127 ipi_arg->cpu_mask = 0; 128 129 for_each_cpu(cur_cpu, mask) { 130 vcpu = hv_cpu_number_to_vp_number(cur_cpu); 131 if (vcpu >= 64) 132 goto ipi_mask_done; 133 134 __set_bit(vcpu, (unsigned long *)&ipi_arg->cpu_mask); 135 } 136 137 ret = hv_do_hypercall(HVCALL_SEND_IPI, ipi_arg, NULL); 138 139 ipi_mask_done: 140 local_irq_restore(flags); 141 return ret; 142 } 143 144 static int __send_ipi_one(int cpu, int vector) 145 { 146 struct cpumask mask = CPU_MASK_NONE; 147 148 cpumask_set_cpu(cpu, &mask); 149 return __send_ipi_mask(&mask, vector); 150 } 151 152 static void hv_send_ipi(int cpu, int vector) 153 { 154 if (__send_ipi_one(cpu, vector)) 155 orig_apic.send_IPI(cpu, vector); 156 } 157 158 static void hv_send_ipi_mask(const struct cpumask *mask, int vector) 159 { 160 if (__send_ipi_mask(mask, vector)) 161 orig_apic.send_IPI_mask(mask, vector); 162 } 163 164 static void hv_send_ipi_mask_allbutself(const struct cpumask *mask, int vector) 165 { 166 unsigned int this_cpu = smp_processor_id(); 167 struct cpumask new_mask; 168 const struct cpumask *local_mask; 169 170 cpumask_copy(&new_mask, mask); 171 cpumask_clear_cpu(this_cpu, &new_mask); 172 local_mask = &new_mask; 173 if (__send_ipi_mask(local_mask, vector)) 174 orig_apic.send_IPI_mask_allbutself(mask, vector); 175 } 176 177 static void hv_send_ipi_allbutself(int vector) 178 { 179 hv_send_ipi_mask_allbutself(cpu_online_mask, vector); 180 } 181 182 static void hv_send_ipi_all(int vector) 183 { 184 if (__send_ipi_mask(cpu_online_mask, vector)) 185 orig_apic.send_IPI_all(vector); 186 } 187 188 static void hv_send_ipi_self(int vector) 189 { 190 if (__send_ipi_one(smp_processor_id(), vector)) > 191 orig_apic.send_IPI_self(vector); 192 } 193 194 void __init hv_apic_init(void) 195 { 196 if (ms_hyperv.hints & HV_X64_CLUSTER_IPI_RECOMMENDED) { 197 if (hyperv_pcpu_input_arg == NULL) 198 goto msr_based_access; 199 200 pr_info("Hyper-V: Using IPI hypercalls\n"); 201 /* 202 * Set the IPI entry points. 203 */ > 204 orig_apic = *apic; --- 0-DAY kernel test infrastructure Open Source Technology Center https://lists.01.org/pipermail/kbuild-all Intel Corporation --KsGdsel6WgEHnImy Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICF344loAAy5jb25maWcAlFxLd9w2st7nV/RxNjOLSfSy4nvu0QINgmxMkwQDgP3QhkeR 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