From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6453485670529529577==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:543:54: sparse: got unsigned char COPYING CREDITS Documentation Kbuild Kconfig LICENSES MAINTAINERS Makefile README arch block certs crypto drivers fs include init ipc kernel lib mm net samples scripts security sound tools usr virt Date: Sat, 03 Oct 2020 11:23:09 +0800 Message-ID: <202010031106.m2GPJd7a-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============6453485670529529577== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Luo bin tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: d3d45f8220d60a0b2aaaacf8fb2be4e6ffd9008e commit: a425b6e1c69ba907b72b737a4d44f8cfbc43ce3c hinic: add mailbox functio= n support date: 5 months ago :::::: branch date: 6 hours ago :::::: commit date: 5 months ago config: x86_64-randconfig-s022-20201003 (attached as .config) compiler: gcc-9 (Debian 9.3.0-15) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-201-g24bdaac6-dirty # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3Da425b6e1c69ba907b72b737a4d44f8cfbc43ce3c git remote add linus https://git.kernel.org/pub/scm/linux/kernel/gi= t/torvalds/linux.git git fetch --no-tags linus master git checkout a425b6e1c69ba907b72b737a4d44f8cfbc43ce3c # save the attached .config to linux build tree make W=3D1 C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH= =3Dx86_64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot echo echo "sparse warnings: (new ones prefixed by >>)" echo drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:543:54: sparse: sparse= : incorrect type in argument 2 (different address spaces) @@ expected v= oid volatile [noderef] *addr @@ got unsigned char [usertype] * = @@ drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:543:54: sparse: ex= pected void volatile [noderef] *addr >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:543:54: sparse: go= t unsigned char [usertype] * drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:566:58: sparse: sparse= : incorrect type in argument 2 (different address spaces) @@ expected v= oid volatile [noderef] *addr @@ got unsigned char [usertype] * = @@ drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:566:58: sparse: ex= pected void volatile [noderef] *addr drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:566:58: sparse: go= t unsigned char [usertype] * drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:601:6: sparse: sparse:= symbol 'dump_mox_reg' was not declared. Should it be static? >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:618:22: sparse: sparse= : cast to restricted __be64 drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:1057:25: sparse: spars= e: incorrect type in assignment (different address spaces) @@ expected = unsigned char [usertype] *data @@ got void [noderef] * @@ >> drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:1057:25: sparse: e= xpected unsigned char [usertype] *data drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c:1057:25: sparse: g= ot void [noderef] * drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c: note: in included fil= e: drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:250:16: sparse: sparse: = cast to restricted __be32 drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: sparse: = incorrect type in argument 1 (different base types) @@ expected unsigne= d int val @@ got restricted __be32 [usertype] @@ drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: expe= cted unsigned int val drivers/net/ethernet/huawei/hinic/hinic_hw_if.h:256:16: sparse: got = restricted __be32 [usertype] vim +543 drivers/net/ethernet/huawei/hinic/hinic_hw_mbox.c a425b6e1c69ba90 Luo bin 2020-04-25 535 = a425b6e1c69ba90 Luo bin 2020-04-25 536 static void mbox_copy_header(struc= t hinic_hwdev *hwdev, a425b6e1c69ba90 Luo bin 2020-04-25 537 struct hinic_send_mbox *mb= ox, u64 *header) a425b6e1c69ba90 Luo bin 2020-04-25 538 { a425b6e1c69ba90 Luo bin 2020-04-25 539 u32 i, idx_max =3D MBOX_HEADER_SZ= / sizeof(u32); a425b6e1c69ba90 Luo bin 2020-04-25 540 u32 *data =3D (u32 *)header; a425b6e1c69ba90 Luo bin 2020-04-25 541 = a425b6e1c69ba90 Luo bin 2020-04-25 542 for (i =3D 0; i < idx_max; i++) a425b6e1c69ba90 Luo bin 2020-04-25 @543 __raw_writel(*(data + i), mbox->= data + i * sizeof(u32)); a425b6e1c69ba90 Luo bin 2020-04-25 544 } a425b6e1c69ba90 Luo bin 2020-04-25 545 = a425b6e1c69ba90 Luo bin 2020-04-25 546 static void mbox_copy_send_data(st= ruct hinic_hwdev *hwdev, a425b6e1c69ba90 Luo bin 2020-04-25 547 struct hinic_send_mbox *mbox, = void *seg, a425b6e1c69ba90 Luo bin 2020-04-25 548 u16 seg_len) a425b6e1c69ba90 Luo bin 2020-04-25 549 { a425b6e1c69ba90 Luo bin 2020-04-25 550 u8 mbox_max_buf[MBOX_SEG_LEN] =3D= {0}; a425b6e1c69ba90 Luo bin 2020-04-25 551 u32 data_len, chk_sz =3D sizeof(u= 32); a425b6e1c69ba90 Luo bin 2020-04-25 552 u32 *data =3D seg; a425b6e1c69ba90 Luo bin 2020-04-25 553 u32 i, idx_max; a425b6e1c69ba90 Luo bin 2020-04-25 554 = a425b6e1c69ba90 Luo bin 2020-04-25 555 /* The mbox message should be ali= gned in 4 bytes. */ a425b6e1c69ba90 Luo bin 2020-04-25 556 if (seg_len % chk_sz) { a425b6e1c69ba90 Luo bin 2020-04-25 557 memcpy(mbox_max_buf, seg, seg_le= n); a425b6e1c69ba90 Luo bin 2020-04-25 558 data =3D (u32 *)mbox_max_buf; a425b6e1c69ba90 Luo bin 2020-04-25 559 } a425b6e1c69ba90 Luo bin 2020-04-25 560 = a425b6e1c69ba90 Luo bin 2020-04-25 561 data_len =3D seg_len; a425b6e1c69ba90 Luo bin 2020-04-25 562 idx_max =3D ALIGN(data_len, chk_s= z) / chk_sz; a425b6e1c69ba90 Luo bin 2020-04-25 563 = a425b6e1c69ba90 Luo bin 2020-04-25 564 for (i =3D 0; i < idx_max; i++) a425b6e1c69ba90 Luo bin 2020-04-25 565 __raw_writel(*(data + i), a425b6e1c69ba90 Luo bin 2020-04-25 566 mbox->data + MBOX_HEADER_S= Z + i * sizeof(u32)); a425b6e1c69ba90 Luo bin 2020-04-25 567 } a425b6e1c69ba90 Luo bin 2020-04-25 568 = a425b6e1c69ba90 Luo bin 2020-04-25 569 static void write_mbox_msg_attr(st= ruct hinic_mbox_func_to_func *func_to_func, a425b6e1c69ba90 Luo bin 2020-04-25 570 u16 dst_func, u16 dst_aeqn, u1= 6 seg_len, a425b6e1c69ba90 Luo bin 2020-04-25 571 int poll) a425b6e1c69ba90 Luo bin 2020-04-25 572 { a425b6e1c69ba90 Luo bin 2020-04-25 573 u16 rsp_aeq =3D (dst_aeqn =3D=3D = 0) ? 0 : HINIC_MBOX_RSP_AEQN; a425b6e1c69ba90 Luo bin 2020-04-25 574 u32 mbox_int, mbox_ctrl; a425b6e1c69ba90 Luo bin 2020-04-25 575 = a425b6e1c69ba90 Luo bin 2020-04-25 576 mbox_int =3D HINIC_MBOX_INT_SET(d= st_func, DST_FUNC) | a425b6e1c69ba90 Luo bin 2020-04-25 577 HINIC_MBOX_INT_SET(dst_aeqn, = DST_AEQN) | a425b6e1c69ba90 Luo bin 2020-04-25 578 HINIC_MBOX_INT_SET(rsp_aeq, S= RC_RESP_AEQN) | a425b6e1c69ba90 Luo bin 2020-04-25 579 HINIC_MBOX_INT_SET(NO_DMA_ATT= RIBUTE_VAL, STAT_DMA) | a425b6e1c69ba90 Luo bin 2020-04-25 580 HINIC_MBOX_INT_SET(ALIGN(MBOX= _SEG_LEN + MBOX_HEADER_SZ + a425b6e1c69ba90 Luo bin 2020-04-25 581 MBOX_INFO_SZ, MBOX_SEG_L= EN_ALIGN) >> 2, a425b6e1c69ba90 Luo bin 2020-04-25 582 TX_SIZE) | a425b6e1c69ba90 Luo bin 2020-04-25 583 HINIC_MBOX_INT_SET(STRONG_ORD= ER, STAT_DMA_SO_RO) | a425b6e1c69ba90 Luo bin 2020-04-25 584 HINIC_MBOX_INT_SET(WRITE_BACK= , WB_EN); a425b6e1c69ba90 Luo bin 2020-04-25 585 = a425b6e1c69ba90 Luo bin 2020-04-25 586 hinic_hwif_write_reg(func_to_func= ->hwif, a425b6e1c69ba90 Luo bin 2020-04-25 587 HINIC_FUNC_CSR_MAILBOX_INT= _OFFSET_OFF, mbox_int); a425b6e1c69ba90 Luo bin 2020-04-25 588 = a425b6e1c69ba90 Luo bin 2020-04-25 589 wmb(); /* writing the mbox int at= tributes */ a425b6e1c69ba90 Luo bin 2020-04-25 590 mbox_ctrl =3D HINIC_MBOX_CTRL_SET= (TX_NOT_DONE, TX_STATUS); a425b6e1c69ba90 Luo bin 2020-04-25 591 = a425b6e1c69ba90 Luo bin 2020-04-25 592 if (poll) a425b6e1c69ba90 Luo bin 2020-04-25 593 mbox_ctrl |=3D HINIC_MBOX_CTRL_S= ET(NOT_TRIGGER, TRIGGER_AEQE); a425b6e1c69ba90 Luo bin 2020-04-25 594 else a425b6e1c69ba90 Luo bin 2020-04-25 595 mbox_ctrl |=3D HINIC_MBOX_CTRL_S= ET(TRIGGER, TRIGGER_AEQE); a425b6e1c69ba90 Luo bin 2020-04-25 596 = a425b6e1c69ba90 Luo bin 2020-04-25 597 hinic_hwif_write_reg(func_to_func= ->hwif, a425b6e1c69ba90 Luo bin 2020-04-25 598 HINIC_FUNC_CSR_MAILBOX_CON= TROL_OFF, mbox_ctrl); a425b6e1c69ba90 Luo bin 2020-04-25 599 } a425b6e1c69ba90 Luo bin 2020-04-25 600 = a425b6e1c69ba90 Luo bin 2020-04-25 601 void dump_mox_reg(struct hinic_hwd= ev *hwdev) a425b6e1c69ba90 Luo bin 2020-04-25 602 { a425b6e1c69ba90 Luo bin 2020-04-25 603 u32 val; a425b6e1c69ba90 Luo bin 2020-04-25 604 = a425b6e1c69ba90 Luo bin 2020-04-25 605 val =3D hinic_hwif_read_reg(hwdev= ->hwif, a425b6e1c69ba90 Luo bin 2020-04-25 606 HINIC_FUNC_CSR_MAILBOX_CONTR= OL_OFF); a425b6e1c69ba90 Luo bin 2020-04-25 607 dev_err(&hwdev->hwif->pdev->dev, = "Mailbox control reg: 0x%x\n", val); a425b6e1c69ba90 Luo bin 2020-04-25 608 = a425b6e1c69ba90 Luo bin 2020-04-25 609 val =3D hinic_hwif_read_reg(hwdev= ->hwif, a425b6e1c69ba90 Luo bin 2020-04-25 610 HINIC_FUNC_CSR_MAILBOX_INT_O= FFSET_OFF); a425b6e1c69ba90 Luo bin 2020-04-25 611 dev_err(&hwdev->hwif->pdev->dev, = "Mailbox interrupt offset: 0x%x\n", a425b6e1c69ba90 Luo bin 2020-04-25 612 val); a425b6e1c69ba90 Luo bin 2020-04-25 613 } a425b6e1c69ba90 Luo bin 2020-04-25 614 = a425b6e1c69ba90 Luo bin 2020-04-25 615 static u16 get_mbox_status(struct = hinic_send_mbox *mbox) a425b6e1c69ba90 Luo bin 2020-04-25 616 { a425b6e1c69ba90 Luo bin 2020-04-25 617 /* write back is 16B, but only us= e first 4B */ a425b6e1c69ba90 Luo bin 2020-04-25 @618 u64 wb_val =3D be64_to_cpu(*mbox-= >wb_status); a425b6e1c69ba90 Luo bin 2020-04-25 619 = a425b6e1c69ba90 Luo bin 2020-04-25 620 rmb(); /* verify reading before c= heck */ a425b6e1c69ba90 Luo bin 2020-04-25 621 = a425b6e1c69ba90 Luo bin 2020-04-25 622 return (u16)(wb_val & MBOX_WB_STA= TUS_ERRCODE_MASK); a425b6e1c69ba90 Luo bin 2020-04-25 623 } a425b6e1c69ba90 Luo bin 2020-04-25 624 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============6453485670529529577== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICFjpd18AAy5jb25maWcAlDxNc9w2svf8iqnkkhySlWRb67xXOoAkOIMMSdAAODPShaXI40S1 tuSV5N34379uACQBsDnOc6ViD7rx1ehvNPjDdz+s2JeXx0+3L/d3tx8/fl39cXw4Pt2+HN+vPtx/ PP7vqpCrRpoVL4T5BZCr+4cvf/3jr7eX/eXr1Ztf/vnL2c9Pdxer7fHp4fhxlT8+fLj/4wv0v398 +O6H7+C/H6Dx02cY6ul/Vn/c3f386+rH4vj7/e3D6tdfXkHv8zc/uX8Bbi6bUqz7PO+F7td5fvV1 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