From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6413704940438514553==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [tglx-devel:x86/l1dflush 7/9] arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer (different address spaces) Date: Tue, 27 Apr 2021 11:00:49 +0800 Message-ID: <202104271144.G4fgnYlt-lkp@intel.com> List-Id: --===============6413704940438514553== 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/tglx/devel.git x86/= l1dflush head: 6955fbfdad4241331d1e33362306aec3a410803a commit: 193cb89595f7f3f4549b03ab9392fb9838d123e3 [7/9] x86/mm: Prepare for = opt-in based L1D flush in switch_mm() config: i386-randconfig-s032-20210426 (attached as .config) compiler: gcc-9 (Debian 9.3.0-22) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.3-341-g8af24329-dirty # https://git.kernel.org/pub/scm/linux/kernel/git/tglx/devel.git/co= mmit/?id=3D193cb89595f7f3f4549b03ab9392fb9838d123e3 git remote add tglx-devel https://git.kernel.org/pub/scm/linux/kern= el/git/tglx/devel.git git fetch --no-tags tglx-devel x86/l1dflush git checkout 193cb89595f7f3f4549b03ab9392fb9838d123e3 # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' W=3D= 1 ARCH=3Di386 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * >> arch/x86/mm/tlb.c:354:13: sparse: sparse: incorrect type in initializer = (different address spaces) @@ expected void const [noderef] __percpu *_= _vpp_verify @@ got bool * @@ arch/x86/mm/tlb.c:354:13: sparse: expected void const [noderef] __pe= rcpu *__vpp_verify arch/x86/mm/tlb.c:354:13: sparse: got bool * vim +354 arch/x86/mm/tlb.c 336 = 337 static void l1d_flush_evaluate(unsigned long prev_mm, unsigned long = next_mm, 338 struct task_struct *next) 339 { 340 /* Flush L1D if the outgoing task requests it */ 341 if (prev_mm & LAST_USER_MM_L1D_FLUSH) 342 wrmsrl(MSR_IA32_FLUSH_CMD, L1D_FLUSH); 343 = 344 /* Check whether the incoming task opted in for L1D flush */ 345 if (likely(!(next_mm & LAST_USER_MM_L1D_FLUSH))) 346 return; 347 = 348 /* 349 * Validate that it is not running on an SMT sibling as this would 350 * make the excercise pointless because the siblings share L1D. If 351 * it runs on a SMT sibling, notify it with SIGBUS on return to 352 * user/guest 353 */ > 354 if (this_cpu_read(cpu_info.smt_active)) { 355 clear_ti_thread_flag(&next->thread_info, TIF_SPEC_L1D_FLUSH); 356 next->l1d_flush_kill.func =3D l1d_flush_force_sigbus; 357 task_work_add(next, &next->l1d_flush_kill, TWA_RESUME); 358 } 359 } 360 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============6413704940438514553== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICDh4h2AAAy5jb25maWcAjDxLc9w20vf8iinnkhyS1cP2OvWVDiAIziBDEgwAzmh0QSnyOKuK LWX12F3/+68bAEkABMfJIdZ0N979RoPff/f9iry+PH65fbm/u/38+evqj+PD8en25fhx9en+8/H/ VqVYtUKvWMn1z0Bc3z+8/u8f95cf3q/e/Xx+8fPZant8ejh+XtHHh0/3f7xC0/vHh+++/46KtuJr Q6nZMam4aI1m1/rqzR93dz/9svqhPP5+f/uw+uXny5/Pfrq4+NH99SZoxpVZU3r1dQCtp66ufjm7 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