From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============7904830812872853423==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [kees:kspp/memcpy/next-20210618/v0 81/82] drivers/acpi/apei/erst.c:792:9: sparse: sparse: incorrect type in argument 1 (different address spaces) Date: Tue, 22 Jun 2021 05:53:12 +0800 Message-ID: <202106220558.EGKcFkWf-lkp@intel.com> List-Id: --===============7904830812872853423== 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/kees/linux.git kspp= /memcpy/next-20210618/v0 head: fd2aa2a169de8bde9502e7a2fc48cd03d4bfd996 commit: 6d805912063804ea975440760b79392fc0c03948 [81/82] fortify: Work arou= nd Clang inlining bugs config: x86_64-rhel-8.3-kselftests (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/kees/linux.git/co= mmit/?id=3D6d805912063804ea975440760b79392fc0c03948 git remote add kees https://git.kernel.org/pub/scm/linux/kernel/git= /kees/linux.git git fetch --no-tags kees kspp/memcpy/next-20210618/v0 git checkout 6d805912063804ea975440760b79392fc0c03948 # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' W=3D= 1 ARCH=3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) drivers/acpi/apei/erst.c:272:13: sparse: sparse: incorrect type in assig= nment (different address spaces) @@ expected void *src @@ got void = [noderef] __iomem * @@ drivers/acpi/apei/erst.c:272:13: sparse: expected void *src drivers/acpi/apei/erst.c:272:13: sparse: got void [noderef] __iomem * drivers/acpi/apei/erst.c:275:13: sparse: sparse: incorrect type in assig= nment (different address spaces) @@ expected void *dst @@ got void = [noderef] __iomem * @@ drivers/acpi/apei/erst.c:275:13: sparse: expected void *dst drivers/acpi/apei/erst.c:275:13: sparse: got void [noderef] __iomem * drivers/acpi/apei/erst.c:277:25: sparse: sparse: incorrect type in argum= ent 1 (different address spaces) @@ expected void volatile [noderef] __= iomem *addr @@ got void *src @@ drivers/acpi/apei/erst.c:277:25: sparse: expected void volatile [nod= eref] __iomem *addr drivers/acpi/apei/erst.c:277:25: sparse: got void *src drivers/acpi/apei/erst.c:283:17: sparse: sparse: incorrect type in argum= ent 1 (different address spaces) @@ expected void volatile [noderef] __= iomem *addr @@ got void *src @@ drivers/acpi/apei/erst.c:283:17: sparse: expected void volatile [nod= eref] __iomem *addr drivers/acpi/apei/erst.c:283:17: sparse: got void *src drivers/acpi/apei/erst.c:284:17: sparse: sparse: incorrect type in argum= ent 1 (different address spaces) @@ expected void volatile [noderef] __= iomem *addr @@ got void *dst @@ drivers/acpi/apei/erst.c:284:17: sparse: expected void volatile [nod= eref] __iomem *addr drivers/acpi/apei/erst.c:284:17: sparse: got void *dst drivers/acpi/apei/erst.c:792:9: sparse: sparse: incorrect type in argume= nt 1 (different address spaces) @@ expected void *p @@ got void [no= deref] __iomem *static [toplevel] vaddr @@ drivers/acpi/apei/erst.c:792:9: sparse: expected void *p drivers/acpi/apei/erst.c:792:9: sparse: got void [noderef] __iomem *= static [toplevel] vaddr >> drivers/acpi/apei/erst.c:792:9: sparse: sparse: incorrect type in argume= nt 1 (different address spaces) @@ expected void const * @@ got voi= d [noderef] __iomem *static [toplevel] vaddr @@ drivers/acpi/apei/erst.c:792:9: sparse: expected void const * drivers/acpi/apei/erst.c:792:9: sparse: got void [noderef] __iomem *= static [toplevel] vaddr drivers/acpi/apei/erst.c:793:20: sparse: sparse: incorrect type in assig= nment (different address spaces) @@ expected struct cper_record_header = *rcd_erange @@ got void [noderef] __iomem *static [toplevel] vaddr @@ drivers/acpi/apei/erst.c:793:20: sparse: expected struct cper_record= _header *rcd_erange drivers/acpi/apei/erst.c:793:20: sparse: got void [noderef] __iomem = *static [toplevel] vaddr drivers/acpi/apei/erst.c:830:17: sparse: sparse: incorrect type in assig= nment (different address spaces) @@ expected struct cper_record_header = *rcd_tmp @@ got void [noderef] __iomem * @@ drivers/acpi/apei/erst.c:830:17: sparse: expected struct cper_record= _header *rcd_tmp drivers/acpi/apei/erst.c:830:17: sparse: got void [noderef] __iomem * -- drivers/misc/sgi-gru/grukdump.c:60:17: sparse: sparse: incorrect type in= argument 1 (different address spaces) @@ expected void *p @@ got v= oid [noderef] __user *[addressable] ubuf @@ drivers/misc/sgi-gru/grukdump.c:60:17: sparse: expected void *p drivers/misc/sgi-gru/grukdump.c:60:17: sparse: got void [noderef] __= user *[addressable] ubuf >> drivers/misc/sgi-gru/grukdump.c:60:17: sparse: sparse: incorrect type in= argument 1 (different address spaces) @@ expected void const * @@ = got void [noderef] __user *[addressable] ubuf @@ drivers/misc/sgi-gru/grukdump.c:60:17: sparse: expected void const * drivers/misc/sgi-gru/grukdump.c:60:17: sparse: got void [noderef] __= user *[addressable] ubuf drivers/misc/sgi-gru/grukdump.c:129:17: sparse: sparse: incorrect type i= n assignment (different address spaces) @@ expected struct gru_context_= configuration_handle *ubufcch @@ got void [noderef] __user *[assigned] = ubuf @@ drivers/misc/sgi-gru/grukdump.c:129:17: sparse: expected struct gru_= context_configuration_handle *ubufcch drivers/misc/sgi-gru/grukdump.c:129:17: sparse: got void [noderef] _= _user *[assigned] ubuf drivers/misc/sgi-gru/grukdump.c:192:14: sparse: sparse: incorrect type i= n assignment (different address spaces) @@ expected void [noderef] __us= er *ubuf @@ got void *[addressable] [assigned] buf @@ drivers/misc/sgi-gru/grukdump.c:192:14: sparse: expected void [noder= ef] __user *ubuf drivers/misc/sgi-gru/grukdump.c:192:14: sparse: got void *[addressab= le] [assigned] buf drivers/misc/sgi-gru/grukdump.c:193:17: sparse: sparse: incorrect type i= n assignment (different address spaces) @@ expected void [noderef] __us= er *ubufend @@ got void * @@ drivers/misc/sgi-gru/grukdump.c:193:17: sparse: expected void [noder= ef] __user *ubufend drivers/misc/sgi-gru/grukdump.c:193:17: sparse: got void * -- drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: sparse: incorrect ty= pe in argument 1 (different address spaces) @@ expected void *p @@ = got unsigned char [noderef] [usertype] __iomem * @@ drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: expected void *p drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: got unsigned cha= r [noderef] [usertype] __iomem * >> drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: sparse: incorrect ty= pe in argument 1 (different address spaces) @@ expected void const * @@= got unsigned char [noderef] [usertype] __iomem * @@ drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: expected void co= nst * drivers/gpu/drm/gma500/framebuffer.c:293:9: sparse: got unsigned cha= r [noderef] [usertype] __iomem * vim +792 drivers/acpi/apei/erst.c a08f82d08053fb Huang Ying 2010-05-18 766 = a08f82d08053fb Huang Ying 2010-05-18 767 int erst_write(const struct cper= _record_header *record) a08f82d08053fb Huang Ying 2010-05-18 768 { a08f82d08053fb Huang Ying 2010-05-18 769 int rc; a08f82d08053fb Huang Ying 2010-05-18 770 unsigned long flags; a08f82d08053fb Huang Ying 2010-05-18 771 struct cper_record_header *rcd_= erange; a08f82d08053fb Huang Ying 2010-05-18 772 = a08f82d08053fb Huang Ying 2010-05-18 773 if (erst_disable) a08f82d08053fb Huang Ying 2010-05-18 774 return -ENODEV; a08f82d08053fb Huang Ying 2010-05-18 775 = a08f82d08053fb Huang Ying 2010-05-18 776 if (memcmp(record->signature, C= PER_SIG_RECORD, CPER_SIG_SIZE)) a08f82d08053fb Huang Ying 2010-05-18 777 return -EINVAL; a08f82d08053fb Huang Ying 2010-05-18 778 = a08f82d08053fb Huang Ying 2010-05-18 779 if (erst_erange.attr & ERST_RAN= GE_NVRAM) { 3b38bb5f7f0635 Huang Ying 2010-12-02 780 if (!raw_spin_trylock_irqsave(= &erst_lock, flags)) a08f82d08053fb Huang Ying 2010-05-18 781 return -EBUSY; a08f82d08053fb Huang Ying 2010-05-18 782 rc =3D __erst_write_to_nvram(r= ecord); 3b38bb5f7f0635 Huang Ying 2010-12-02 783 raw_spin_unlock_irqrestore(&er= st_lock, flags); a08f82d08053fb Huang Ying 2010-05-18 784 return rc; a08f82d08053fb Huang Ying 2010-05-18 785 } a08f82d08053fb Huang Ying 2010-05-18 786 = a08f82d08053fb Huang Ying 2010-05-18 787 if (record->record_length > ers= t_erange.size) a08f82d08053fb Huang Ying 2010-05-18 788 return -EINVAL; a08f82d08053fb Huang Ying 2010-05-18 789 = 3b38bb5f7f0635 Huang Ying 2010-12-02 790 if (!raw_spin_trylock_irqsave(&= erst_lock, flags)) a08f82d08053fb Huang Ying 2010-05-18 791 return -EBUSY; a08f82d08053fb Huang Ying 2010-05-18 @792 memcpy(erst_erange.vaddr, recor= d, record->record_length); a08f82d08053fb Huang Ying 2010-05-18 793 rcd_erange =3D erst_erange.vadd= r; a08f82d08053fb Huang Ying 2010-05-18 794 /* signature for serialization = system */ a08f82d08053fb Huang Ying 2010-05-18 795 memcpy(&rcd_erange->persistence= _information, "ER", 2); a08f82d08053fb Huang Ying 2010-05-18 796 = a08f82d08053fb Huang Ying 2010-05-18 797 rc =3D __erst_write_to_storage(= 0); 3b38bb5f7f0635 Huang Ying 2010-12-02 798 raw_spin_unlock_irqrestore(&ers= t_lock, flags); a08f82d08053fb Huang Ying 2010-05-18 799 = a08f82d08053fb Huang Ying 2010-05-18 800 return rc; a08f82d08053fb Huang Ying 2010-05-18 801 } a08f82d08053fb Huang Ying 2010-05-18 802 EXPORT_SYMBOL_GPL(erst_write); a08f82d08053fb Huang Ying 2010-05-18 803 = :::::: The code at line 792 was first introduced by commit :::::: a08f82d08053fb6e3aa3635c2c26456d96337c8b ACPI, APEI, Error Record Se= rialization Table (ERST) support :::::: TO: Huang Ying :::::: CC: Len Brown 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