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+0000 Date: Sun, 21 Jun 2020 18:28:47 +0800 From: kernel test robot To: Jose Abreu Cc: kbuild-all@lists.01.org, linux-kernel@vger.kernel.org Subject: drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: sparse: incorrect type in assignment (different base types) Message-ID: <202006211846.IZyC7wXV%lkp@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="n8g4imXOkfNTN/H1" Content-Disposition: inline User-Agent: Mutt/1.10.1 (2018-07-13) Sender: linux-kernel-owner@vger.kernel.org Precedence: bulk List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --n8g4imXOkfNTN/H1 Content-Type: text/plain; charset=us-ascii Content-Disposition: inline tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git master head: 64677779e8962c20b580b471790fe42367750599 commit: ccfc639a94f25eb8639e8ffbecad2f6b60d22eb1 net: stmmac: selftests: Add a selftest for Flexible RX Parser date: 11 months ago config: riscv-randconfig-s031-20200621 (attached as .config) compiler: riscv32-linux-gcc (GCC) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-rc2-13-gc59158c8-dirty git checkout ccfc639a94f25eb8639e8ffbecad2f6b60d22eb1 # save the attached .config to linux build tree make W=1 C=1 ARCH=riscv CF='-fdiagnostic-prefix -D__CHECK_ENDIAN__' If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: sparse: incorrect type in assignment (different base types) @@ expected restricted __be32 [usertype] mask @@ got int @@ drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: expected restricted __be32 [usertype] mask drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: got int vim +975 drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c 916 917 #ifdef CONFIG_NET_CLS_ACT 918 static int stmmac_test_rxp(struct stmmac_priv *priv) 919 { 920 unsigned char addr[ETH_ALEN] = {0xde, 0xad, 0xbe, 0xef, 0x00, 0x00}; 921 struct tc_cls_u32_offload cls_u32 = { }; 922 struct stmmac_packet_attrs attr = { }; 923 struct tc_action **actions, *act; 924 struct tc_u32_sel *sel; 925 struct tcf_exts *exts; 926 int ret, i, nk = 1; 927 928 if (!tc_can_offload(priv->dev)) 929 return -EOPNOTSUPP; 930 if (!priv->dma_cap.frpsel) 931 return -EOPNOTSUPP; 932 933 sel = kzalloc(sizeof(*sel) + nk * sizeof(struct tc_u32_key), GFP_KERNEL); 934 if (!sel) 935 return -ENOMEM; 936 937 exts = kzalloc(sizeof(*exts), GFP_KERNEL); 938 if (!exts) { 939 ret = -ENOMEM; 940 goto cleanup_sel; 941 } 942 943 actions = kzalloc(nk * sizeof(*actions), GFP_KERNEL); 944 if (!actions) { 945 ret = -ENOMEM; 946 goto cleanup_exts; 947 } 948 949 act = kzalloc(nk * sizeof(*act), GFP_KERNEL); 950 if (!act) { 951 ret = -ENOMEM; 952 goto cleanup_actions; 953 } 954 955 cls_u32.command = TC_CLSU32_NEW_KNODE; 956 cls_u32.common.chain_index = 0; 957 cls_u32.common.protocol = htons(ETH_P_ALL); 958 cls_u32.knode.exts = exts; 959 cls_u32.knode.sel = sel; 960 cls_u32.knode.handle = 0x123; 961 962 exts->nr_actions = nk; 963 exts->actions = actions; 964 for (i = 0; i < nk; i++) { 965 struct tcf_gact *gact = to_gact(&act[i]); 966 967 actions[i] = &act[i]; 968 gact->tcf_action = TC_ACT_SHOT; 969 } 970 971 sel->nkeys = nk; 972 sel->offshift = 0; 973 sel->keys[0].off = 6; 974 sel->keys[0].val = htonl(0xdeadbeef); > 975 sel->keys[0].mask = ~0x0; 976 977 ret = stmmac_tc_setup_cls_u32(priv, priv, &cls_u32); 978 if (ret) 979 goto cleanup_act; 980 981 attr.dst = priv->dev->dev_addr; 982 attr.src = addr; 983 984 ret = __stmmac_test_loopback(priv, &attr); 985 ret = !ret; /* Shall NOT receive packet */ 986 987 cls_u32.command = TC_CLSU32_DELETE_KNODE; 988 stmmac_tc_setup_cls_u32(priv, priv, &cls_u32); 989 990 cleanup_act: 991 kfree(act); 992 cleanup_actions: 993 kfree(actions); 994 cleanup_exts: 995 kfree(exts); 996 cleanup_sel: 997 kfree(sel); 998 return ret; 999 } 1000 #else 1001 static int stmmac_test_rxp(struct stmmac_priv *priv) 1002 { 1003 return -EOPNOTSUPP; 1004 } 1005 #endif 1006 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --n8g4imXOkfNTN/H1 Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICFEh714AAy5jb25maWcAlDzbcts4su/7FarMy25tza4viTM5p/wAgSCJEUnQACjZfmFp HSWrGttK2fJc/v50gzeAbCo5U1Ox2d0AGo2+4uKf/vbTgr0dD0/b4/5h+/j41+Lr7nn3sj3u Pi++7B93/7uI1KJQdiEiaf8FxNn++e3Pf7/sXx9+X3z41+W/zn5+ebhcrHYvz7vHBT88f9l/ fYPm+8Pz3376G/z/EwCfvkFPL/+zcK0uL35+xD5+/vrwsPh7wvk/Fp+wH6DlqohlUnNeS1MD 5vqvDgQf9VpoI1Vx/ens8uysp81YkfSoM6+LlJmambxOlFVDRy1iw3RR5+xuKeqqkIW0kmXy XkQDodQ39Ubp1QCxqRYsqmURK/intswg0k0xcTJ7XLzujm/fhokstVqJolZFbfLS6xrGq0Wx rplO6kzm0l5fXqCgWhZVXspM1FYYu9i/Lp4PR+x4IEiBDaEn+BabKc6yTiDv3lHgmlW+TJaV zKLasMx69JGIWZXZOlXGFiwX1+/+/nx43v3j3cCHuTNrWXKCh1IZeVvnN5WoxDCOD8XG3GaA 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+0800 Message-ID: <202006211846.IZyC7wXV%lkp@intel.com> List-Id: --===============0093609663882459500== 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/torvalds/linux.git = master head: 64677779e8962c20b580b471790fe42367750599 commit: ccfc639a94f25eb8639e8ffbecad2f6b60d22eb1 net: stmmac: selftests: Ad= d a selftest for Flexible RX Parser date: 11 months ago config: riscv-randconfig-s031-20200621 (attached as .config) compiler: riscv32-linux-gcc (GCC) 9.3.0 reproduce: # apt-get install sparse # sparse version: v0.6.2-rc2-13-gc59158c8-dirty git checkout ccfc639a94f25eb8639e8ffbecad2f6b60d22eb1 # save the attached .config to linux build tree make W=3D1 C=3D1 ARCH=3Driscv CF=3D'-fdiagnostic-prefix -D__CHECK_E= NDIAN__' If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) >> drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: s= parse: incorrect type in assignment (different base types) @@ expected = restricted __be32 [usertype] mask @@ got int @@ drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: = expected restricted __be32 [usertype] mask drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c:975:27: sparse: = got int vim +975 drivers/net/ethernet/stmicro/stmmac/stmmac_selftests.c 916 = 917 #ifdef CONFIG_NET_CLS_ACT 918 static int stmmac_test_rxp(struct stmmac_priv *priv) 919 { 920 unsigned char addr[ETH_ALEN] =3D {0xde, 0xad, 0xbe, 0xef, 0x00, 0x0= 0}; 921 struct tc_cls_u32_offload cls_u32 =3D { }; 922 struct stmmac_packet_attrs attr =3D { }; 923 struct tc_action **actions, *act; 924 struct tc_u32_sel *sel; 925 struct tcf_exts *exts; 926 int ret, i, nk =3D 1; 927 = 928 if (!tc_can_offload(priv->dev)) 929 return -EOPNOTSUPP; 930 if (!priv->dma_cap.frpsel) 931 return -EOPNOTSUPP; 932 = 933 sel =3D kzalloc(sizeof(*sel) + nk * sizeof(struct tc_u32_key), GFP_= KERNEL); 934 if (!sel) 935 return -ENOMEM; 936 = 937 exts =3D kzalloc(sizeof(*exts), GFP_KERNEL); 938 if (!exts) { 939 ret =3D -ENOMEM; 940 goto cleanup_sel; 941 } 942 = 943 actions =3D kzalloc(nk * sizeof(*actions), GFP_KERNEL); 944 if (!actions) { 945 ret =3D -ENOMEM; 946 goto cleanup_exts; 947 } 948 = 949 act =3D kzalloc(nk * sizeof(*act), GFP_KERNEL); 950 if (!act) { 951 ret =3D -ENOMEM; 952 goto cleanup_actions; 953 } 954 = 955 cls_u32.command =3D TC_CLSU32_NEW_KNODE; 956 cls_u32.common.chain_index =3D 0; 957 cls_u32.common.protocol =3D htons(ETH_P_ALL); 958 cls_u32.knode.exts =3D exts; 959 cls_u32.knode.sel =3D sel; 960 cls_u32.knode.handle =3D 0x123; 961 = 962 exts->nr_actions =3D nk; 963 exts->actions =3D actions; 964 for (i =3D 0; i < nk; i++) { 965 struct tcf_gact *gact =3D to_gact(&act[i]); 966 = 967 actions[i] =3D &act[i]; 968 gact->tcf_action =3D TC_ACT_SHOT; 969 } 970 = 971 sel->nkeys =3D nk; 972 sel->offshift =3D 0; 973 sel->keys[0].off =3D 6; 974 sel->keys[0].val =3D htonl(0xdeadbeef); > 975 sel->keys[0].mask =3D ~0x0; 976 = 977 ret =3D stmmac_tc_setup_cls_u32(priv, priv, &cls_u32); 978 if (ret) 979 goto cleanup_act; 980 = 981 attr.dst =3D priv->dev->dev_addr; 982 attr.src =3D addr; 983 = 984 ret =3D __stmmac_test_loopback(priv, &attr); 985 ret =3D !ret; /* Shall NOT receive packet */ 986 = 987 cls_u32.command =3D TC_CLSU32_DELETE_KNODE; 988 stmmac_tc_setup_cls_u32(priv, priv, &cls_u32); 989 = 990 cleanup_act: 991 kfree(act); 992 cleanup_actions: 993 kfree(actions); 994 cleanup_exts: 995 kfree(exts); 996 cleanup_sel: 997 kfree(sel); 998 return ret; 999 } 1000 #else 1001 static int stmmac_test_rxp(struct stmmac_priv *priv) 1002 { 1003 return -EOPNOTSUPP; 1004 } 1005 #endif 1006 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0093609663882459500== Content-Type: application/gzip MIME-Version: 1.0 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