From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6551325550171746725==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:637 npc_update_entry() error: buffer overflow 'field->kw_mask' 7 <= 7 Date: Fri, 23 Jul 2021 14:58:29 +0800 Message-ID: <202107231421.1myc4Lw4-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============6551325550171746725== 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: Subbaraya Sundeep CC: Jakub Kicinski CC: Sunil Goutham CC: Naveen Mamindlapalli tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 8baef6386baaefb776bdd09b5c7630cf057c51c6 commit: 55307fcb925846d760ed80f4a8359dd4331c52bd octeontx2-af: Add mbox mes= sages to install and delete MCAM rules date: 8 months ago :::::: branch date: 3 hours ago :::::: commit date: 8 months ago config: mips-randconfig-m031-20210723 (attached as .config) compiler: mips64-linux-gcc (GCC) 10.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter New smatch warnings: drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:637 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:638 npc_update_entry= () error: buffer overflow 'dummy.kw' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:643 npc_update_entry= () error: buffer overflow 'dummy.kw_mask' 7 <=3D 7 Old smatch warnings: drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:642 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:651 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:653 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 8 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:654 npc_update_entry= () error: buffer overflow 'dummy.kw' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:655 npc_update_entry= () error: buffer overflow 'dummy.kw' 7 <=3D 8 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:659 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:661 npc_update_entry= () error: buffer overflow 'field->kw_mask' 7 <=3D 8 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:662 npc_update_entry= () error: buffer overflow 'dummy.kw_mask' 7 <=3D 7 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:663 npc_update_entry= () error: buffer overflow 'dummy.kw_mask' 7 <=3D 8 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c:1206 rvu_mbox_handle= r_npc_delete_flow() error: dereferencing freed memory 'iter' vim +637 drivers/net/ethernet/marvell/octeontx2/af/rvu_npc_fs.c 55307fcb925846 Subbaraya Sundeep 2020-11-15 588 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 589 /* npc_update_entry - Bas= ed on the masks generated during 55307fcb925846 Subbaraya Sundeep 2020-11-15 590 * the key scanning, upda= tes the given entry with value and 55307fcb925846 Subbaraya Sundeep 2020-11-15 591 * masks for the field of= interest. Maximum 16 bytes of a packet 55307fcb925846 Subbaraya Sundeep 2020-11-15 592 * header can be extracte= d by HW hence lo and hi are sufficient. 55307fcb925846 Subbaraya Sundeep 2020-11-15 593 * When field bytes are l= ess than or equal to 8 then hi should be 55307fcb925846 Subbaraya Sundeep 2020-11-15 594 * 0 for value and mask. 55307fcb925846 Subbaraya Sundeep 2020-11-15 595 * 55307fcb925846 Subbaraya Sundeep 2020-11-15 596 * If exact match of valu= e is required then mask should be all 1's. 55307fcb925846 Subbaraya Sundeep 2020-11-15 597 * If any bits in mask ar= e 0 then corresponding bits in value are 55307fcb925846 Subbaraya Sundeep 2020-11-15 598 * dont care. 55307fcb925846 Subbaraya Sundeep 2020-11-15 599 */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 600 static void npc_update_en= try(struct rvu *rvu, enum key_fields type, 55307fcb925846 Subbaraya Sundeep 2020-11-15 601 struct mcam_entry= *entry, u64 val_lo, 55307fcb925846 Subbaraya Sundeep 2020-11-15 602 u64 val_hi, u64 m= ask_lo, u64 mask_hi, u8 intf) 55307fcb925846 Subbaraya Sundeep 2020-11-15 603 { 55307fcb925846 Subbaraya Sundeep 2020-11-15 604 struct npc_mcam *mcam = =3D &rvu->hw->mcam; 55307fcb925846 Subbaraya Sundeep 2020-11-15 605 struct mcam_entry dummy = =3D { {0} }; 55307fcb925846 Subbaraya Sundeep 2020-11-15 606 struct npc_key_field *fi= eld; 55307fcb925846 Subbaraya Sundeep 2020-11-15 607 u64 kw1, kw2, kw3; 55307fcb925846 Subbaraya Sundeep 2020-11-15 608 u8 shift; 55307fcb925846 Subbaraya Sundeep 2020-11-15 609 int i; 55307fcb925846 Subbaraya Sundeep 2020-11-15 610 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 611 field =3D &mcam->rx_key_= fields[type]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 612 if (is_npc_intf_tx(intf)) 55307fcb925846 Subbaraya Sundeep 2020-11-15 613 field =3D &mcam->tx_key= _fields[type]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 614 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 615 if (!field->nr_kws) 55307fcb925846 Subbaraya Sundeep 2020-11-15 616 return; 55307fcb925846 Subbaraya Sundeep 2020-11-15 617 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 618 for (i =3D 0; i < NPC_MA= X_KWS_IN_KEY; i++) { 55307fcb925846 Subbaraya Sundeep 2020-11-15 619 if (!field->kw_mask[i]) 55307fcb925846 Subbaraya Sundeep 2020-11-15 620 continue; 55307fcb925846 Subbaraya Sundeep 2020-11-15 621 /* place key value in k= w[x] */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 622 shift =3D __ffs64(field= ->kw_mask[i]); 55307fcb925846 Subbaraya Sundeep 2020-11-15 623 /* update entry value */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 624 kw1 =3D (val_lo << shif= t) & field->kw_mask[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 625 dummy.kw[i] =3D kw1; 55307fcb925846 Subbaraya Sundeep 2020-11-15 626 /* update entry mask */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 627 kw1 =3D (mask_lo << shi= ft) & field->kw_mask[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 628 dummy.kw_mask[i] =3D kw= 1; 55307fcb925846 Subbaraya Sundeep 2020-11-15 629 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 630 if (field->nr_kws =3D= =3D 1) 55307fcb925846 Subbaraya Sundeep 2020-11-15 631 break; 55307fcb925846 Subbaraya Sundeep 2020-11-15 632 /* place remaining bits= of key value in kw[x + 1] */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 633 if (field->nr_kws =3D= =3D 2) { 55307fcb925846 Subbaraya Sundeep 2020-11-15 634 /* update entry value = */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 635 kw2 =3D shift ? val_lo= >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 636 kw2 |=3D (val_hi << sh= ift); 55307fcb925846 Subbaraya Sundeep 2020-11-15 @637 kw2 &=3D field->kw_mas= k[i + 1]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 @638 dummy.kw[i + 1] =3D kw= 2; 55307fcb925846 Subbaraya Sundeep 2020-11-15 639 /* update entry mask */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 640 kw2 =3D shift ? mask_l= o >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 641 kw2 |=3D (mask_hi << s= hift); 55307fcb925846 Subbaraya Sundeep 2020-11-15 642 kw2 &=3D field->kw_mas= k[i + 1]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 @643 dummy.kw_mask[i + 1] = =3D kw2; 55307fcb925846 Subbaraya Sundeep 2020-11-15 644 break; 55307fcb925846 Subbaraya Sundeep 2020-11-15 645 } 55307fcb925846 Subbaraya Sundeep 2020-11-15 646 /* place remaining bits= of key value in kw[x + 1], kw[x + 2] */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 647 if (field->nr_kws =3D= =3D 3) { 55307fcb925846 Subbaraya Sundeep 2020-11-15 648 /* update entry value = */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 649 kw2 =3D shift ? val_lo= >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 650 kw2 |=3D (val_hi << sh= ift); 55307fcb925846 Subbaraya Sundeep 2020-11-15 651 kw2 &=3D field->kw_mas= k[i + 1]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 652 kw3 =3D shift ? val_hi= >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 653 kw3 &=3D field->kw_mas= k[i + 2]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 654 dummy.kw[i + 1] =3D kw= 2; 55307fcb925846 Subbaraya Sundeep 2020-11-15 655 dummy.kw[i + 2] =3D kw= 3; 55307fcb925846 Subbaraya Sundeep 2020-11-15 656 /* update entry mask */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 657 kw2 =3D shift ? mask_l= o >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 658 kw2 |=3D (mask_hi << s= hift); 55307fcb925846 Subbaraya Sundeep 2020-11-15 659 kw2 &=3D field->kw_mas= k[i + 1]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 660 kw3 =3D shift ? mask_h= i >> (64 - shift) : 0; 55307fcb925846 Subbaraya Sundeep 2020-11-15 661 kw3 &=3D field->kw_mas= k[i + 2]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 662 dummy.kw_mask[i + 1] = =3D kw2; 55307fcb925846 Subbaraya Sundeep 2020-11-15 663 dummy.kw_mask[i + 2] = =3D kw3; 55307fcb925846 Subbaraya Sundeep 2020-11-15 664 break; 55307fcb925846 Subbaraya Sundeep 2020-11-15 665 } 55307fcb925846 Subbaraya Sundeep 2020-11-15 666 } 55307fcb925846 Subbaraya Sundeep 2020-11-15 667 /* dummy is ready with v= alues and masks for given key 55307fcb925846 Subbaraya Sundeep 2020-11-15 668 * field now clear and u= pdate input entry with those 55307fcb925846 Subbaraya Sundeep 2020-11-15 669 */ 55307fcb925846 Subbaraya Sundeep 2020-11-15 670 for (i =3D 0; i < NPC_MA= X_KWS_IN_KEY; i++) { 55307fcb925846 Subbaraya Sundeep 2020-11-15 671 if (!field->kw_mask[i]) 55307fcb925846 Subbaraya Sundeep 2020-11-15 672 continue; 55307fcb925846 Subbaraya Sundeep 2020-11-15 673 entry->kw[i] &=3D ~fiel= d->kw_mask[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 674 entry->kw_mask[i] &=3D = ~field->kw_mask[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 675 = 55307fcb925846 Subbaraya Sundeep 2020-11-15 676 entry->kw[i] |=3D dummy= .kw[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 677 entry->kw_mask[i] |=3D = dummy.kw_mask[i]; 55307fcb925846 Subbaraya Sundeep 2020-11-15 678 } 55307fcb925846 Subbaraya Sundeep 2020-11-15 679 } 55307fcb925846 Subbaraya Sundeep 2020-11-15 680 = --- 0-DAY CI Kernel Test Service, Intel Corporation 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