From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============1402317001104307217==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/of/fdt.c:259:10: warning: Access to field 'child' results in a dereference of a null pointer (loaded from variable 'parent') [clang-analyzer-core.NullDereference] Date: Mon, 02 Aug 2021 03:28:11 +0800 Message-ID: <202108020307.K2ORYBdk-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============1402317001104307217== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: clang-built-linux(a)googlegroups.com CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Frank Rowand CC: Rob Herring tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: c7d102232649226a69dddd58a4942cf13cff4f7c commit: 649cab56de8eb2952498de9b752761ca980cb88a of: properly check for err= or returned by fdt_get_name() date: 4 months ago :::::: branch date: 2 days ago :::::: commit date: 4 months ago config: x86_64-randconfig-c001-20210731 (attached as .config) compiler: clang version 13.0.0 (https://github.com/llvm/llvm-project 4f71f5= 9bf3d9914188a11d0c41bedbb339d36ff5) reproduce (this is a W=3D1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # install x86_64 cross compiling tool for clang build # apt-get install binutils-x86-64-linux-gnu # https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.gi= t/commit/?id=3D649cab56de8eb2952498de9b752761ca980cb88a 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 649cab56de8eb2952498de9b752761ca980cb88a # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dx86_64 clang-analyzer = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot clang-analyzer warnings: (new ones prefixed by >>) drivers/hid/hid-picolcd_fb.c:148:6: note: Assuming 'bpp' is equal to 1 if (bpp =3D=3D 1) { ^~~~~~~~ drivers/hid/hid-picolcd_fb.c:148:2: note: Taking true branch if (bpp =3D=3D 1) { ^ drivers/hid/hid-picolcd_fb.c:149:3: note: Loop condition is true. Enter= ing loop body for (b =3D 7; b >=3D 0; b--) { ^ drivers/hid/hid-picolcd_fb.c:151:9: note: The value 0 is assigned to 'i' for (i =3D 0; i < 64; i++) { ^~~~~ drivers/hid/hid-picolcd_fb.c:151:4: note: Loop condition is true. Enter= ing loop body for (i =3D 0; i < 64; i++) { ^ drivers/hid/hid-picolcd_fb.c:152:14: note: The left expression of the co= mpound assignment is an uninitialized value. The computed value will also b= e garbage tdata[i] <<=3D 1; ~~~~~~~~ ^ drivers/hid/hid-picolcd_fb.c:160:14: warning: The left expression of the= compound assignment is an uninitialized value. The computed value will als= o be garbage [clang-analyzer-core.uninitialized.Assign] tdata[i] <<=3D 1; ^ drivers/hid/hid-picolcd_fb.c:437:2: note: Calling 'picolcd_fb_update' picolcd_fb_update(info); ^~~~~~~~~~~~~~~~~~~~~~~ drivers/hid/hid-picolcd_fb.c:234:2: note: Loop condition is false. Exit= ing loop spin_lock_irqsave(&fbdata->lock, flags); ^ include/linux/spinlock.h:384:2: note: expanded from macro 'spin_lock_irq= save' raw_spin_lock_irqsave(spinlock_check(lock), flags); \ ^ include/linux/spinlock.h:250:2: note: expanded from macro 'raw_spin_lock= _irqsave' do { \ ^ drivers/hid/hid-picolcd_fb.c:234:2: note: Loop condition is false. Exit= ing loop spin_lock_irqsave(&fbdata->lock, flags); ^ include/linux/spinlock.h:382:43: note: expanded from macro 'spin_lock_ir= qsave' #define spin_lock_irqsave(lock, flags) \ ^ drivers/hid/hid-picolcd_fb.c:235:6: note: Assuming field 'ready' is not = equal to 0 if (!fbdata->ready && fbdata->picolcd) ^~~~~~~~~~~~~~ drivers/hid/hid-picolcd_fb.c:235:21: note: Left side of '&&' is false if (!fbdata->ready && fbdata->picolcd) ^ drivers/hid/hid-picolcd_fb.c:247:2: note: Loop condition is true. Enter= ing loop body for (chip =3D 0; chip < 4; chip++) ^ drivers/hid/hid-picolcd_fb.c:248:3: note: Loop condition is true. Enter= ing loop body for (tile =3D 0; tile < 8; tile++) { ^ drivers/hid/hid-picolcd_fb.c:249:8: note: Assuming field 'force' is 0 if (!fbdata->force && !picolcd_fb_update_tile( ^~~~~~~~~~~~~~ drivers/hid/hid-picolcd_fb.c:249:8: note: Left side of '&&' is true drivers/hid/hid-picolcd_fb.c:249:27: note: Calling 'picolcd_fb_update_ti= le' if (!fbdata->force && !picolcd_fb_update_tile( ^~~~~~~~~~~~~~~~~~~~~~~ drivers/hid/hid-picolcd_fb.c:148:6: note: Assuming 'bpp' is not equal to= 1 if (bpp =3D=3D 1) { ^~~~~~~~ drivers/hid/hid-picolcd_fb.c:148:2: note: Taking false branch if (bpp =3D=3D 1) { ^ drivers/hid/hid-picolcd_fb.c:156:13: note: Assuming 'bpp' is equal to 8 } else if (bpp =3D=3D 8) { ^~~~~~~~ drivers/hid/hid-picolcd_fb.c:156:9: note: Taking true branch } else if (bpp =3D=3D 8) { ^ drivers/hid/hid-picolcd_fb.c:157:3: note: Loop condition is true. Enter= ing loop body for (b =3D 7; b >=3D 0; b--) { ^ drivers/hid/hid-picolcd_fb.c:159:9: note: The value 0 is assigned to 'i' for (i =3D 0; i < 64; i++) { ^~~~~ drivers/hid/hid-picolcd_fb.c:159:4: note: Loop condition is true. Enter= ing loop body for (i =3D 0; i < 64; i++) { ^ drivers/hid/hid-picolcd_fb.c:160:14: note: The left expression of the co= mpound assignment is an uninitialized value. The computed value will also b= e garbage tdata[i] <<=3D 1; ~~~~~~~~ ^ Suppressed 4 warnings (4 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. Suppressed 3 warnings (3 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. Suppressed 3 warnings (3 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. Suppressed 3 warnings (3 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. Suppressed 3 warnings (3 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. Suppressed 3 warnings (3 in non-user code). Use -header-filter=3D.* to display errors from all non-system headers. U= se -system-headers to display errors from system headers as well. 3 warnings generated. >> drivers/of/fdt.c:259:10: warning: Access to field 'child' results in a d= ereference of a null pointer (loaded from variable 'parent') [clang-analyze= r-core.NullDereference] child =3D parent->child; ^ drivers/of/fdt.c:297:16: note: Assuming 'base' is non-null bool dryrun =3D !base; ^~~~~ drivers/of/fdt.c:300:6: note: Assuming 'nodepp' is null if (nodepp) ^~~~~~ drivers/of/fdt.c:300:2: note: Taking false branch if (nodepp) ^ drivers/of/fdt.c:310:6: note: Assuming 'dad' is null if (dad) ^~~ drivers/of/fdt.c:310:2: note: Taking false branch if (dad) ^ drivers/of/fdt.c:317:7: note: 'offset' is >=3D 0 offset >=3D 0 && depth >=3D initial_depth; ^~~~~~ drivers/of/fdt.c:317:7: note: Left side of '&&' is true drivers/of/fdt.c:316:2: note: Loop condition is true. Entering loop body for (offset =3D 0; ^ drivers/of/fdt.c:319:7: note: Taking false branch if (WARN_ON_ONCE(depth >=3D FDT_MAX_DEPTH)) ^ include/asm-generic/bug.h:103:2: note: expanded from macro 'WARN_ON_ONCE' if (unlikely(__ret_warn_on)) \ ^ drivers/of/fdt.c:319:3: note: Taking false branch if (WARN_ON_ONCE(depth >=3D FDT_MAX_DEPTH)) ^ drivers/of/fdt.c:322:35: note: Left side of '&&' is false if (!IS_ENABLED(CONFIG_OF_KOBJ) && ^ drivers/of/fdt.c:326:9: note: Calling 'populate_node' ret =3D populate_node(blob, offset, &mem, nps[depth], ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/of/fdt.c:220:6: note: Assuming 'pathp' is null if (!pathp) { ^~~~~~ drivers/of/fdt.c:220:2: note: Taking true branch if (!pathp) { ^ drivers/of/fdt.c:221:3: note: Storing null pointer value *pnp =3D NULL; ^~~~~~~~~~~ drivers/of/fdt.c:326:9: note: Returning from 'populate_node' ret =3D populate_node(blob, offset, &mem, nps[depth], ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/of/fdt.c:328:7: note: Assuming 'ret' is >=3D 0 if (ret < 0) ^~~~~~~ drivers/of/fdt.c:328:3: note: Taking false branch if (ret < 0) ^ drivers/of/fdt.c:331:8: note: 'dryrun' is false if (!dryrun && nodepp && !*nodepp) ^~~~~~ drivers/of/fdt.c:331:7: note: Left side of '&&' is true if (!dryrun && nodepp && !*nodepp) ^ drivers/of/fdt.c:331:18: note: 'nodepp' is null if (!dryrun && nodepp && !*nodepp) ^~~~~~ drivers/of/fdt.c:331:25: note: Left side of '&&' is false if (!dryrun && nodepp && !*nodepp) ^ drivers/of/fdt.c:333:8: note: 'dryrun' is false if (!dryrun && !root) ^~~~~~ drivers/of/fdt.c:333:7: note: Left side of '&&' is true if (!dryrun && !root) ^ drivers/of/fdt.c:333:19: note: 'root' is null if (!dryrun && !root) ^~~~ drivers/of/fdt.c:333:3: note: Taking true branch if (!dryrun && !root) ^ drivers/of/fdt.c:334:4: note: Null pointer value stored to 'root' root =3D nps[depth+1]; ^~~~~~~~~~~~~~~~~~~ drivers/of/fdt.c:317:7: note: Assuming 'offset' is < 0 offset >=3D 0 && depth >=3D initial_depth; ^~~~~~~~~~~ drivers/of/fdt.c:317:19: note: Left side of '&&' is false offset >=3D 0 && depth >=3D initial_depth; ^ drivers/of/fdt.c:337:6: note: 'offset' is < 0 if (offset < 0 && offset !=3D -FDT_ERR_NOTFOUND) { ^~~~~~ drivers/of/fdt.c:337:6: note: Left side of '&&' is true drivers/of/fdt.c:337:20: note: Assuming the condition is false if (offset < 0 && offset !=3D -FDT_ERR_NOTFOUND) { ^~~~~~~~~~~~~~~~~~~~~~~~~~~ drivers/of/fdt.c:337:2: note: Taking false branch if (offset < 0 && offset !=3D -FDT_ERR_NOTFOUND) { ^ vim +259 drivers/of/fdt.c dfbd4c6eff35f1 Gavin Shan 2016-05-03 253 = 50800082f17645 Gavin Shan 2016-05-03 254 static void reverse_nodes(struct= device_node *parent) 50800082f17645 Gavin Shan 2016-05-03 255 { 50800082f17645 Gavin Shan 2016-05-03 256 struct device_node *child, *nex= t; 50800082f17645 Gavin Shan 2016-05-03 257 = 50800082f17645 Gavin Shan 2016-05-03 258 /* In-depth first */ 50800082f17645 Gavin Shan 2016-05-03 @259 child =3D parent->child; 50800082f17645 Gavin Shan 2016-05-03 260 while (child) { 50800082f17645 Gavin Shan 2016-05-03 261 reverse_nodes(child); 50800082f17645 Gavin Shan 2016-05-03 262 = 50800082f17645 Gavin Shan 2016-05-03 263 child =3D child->sibling; 50800082f17645 Gavin Shan 2016-05-03 264 } 50800082f17645 Gavin Shan 2016-05-03 265 = 50800082f17645 Gavin Shan 2016-05-03 266 /* Reverse the nodes in the chi= ld list */ 50800082f17645 Gavin Shan 2016-05-03 267 child =3D parent->child; 50800082f17645 Gavin Shan 2016-05-03 268 parent->child =3D NULL; 50800082f17645 Gavin Shan 2016-05-03 269 while (child) { 50800082f17645 Gavin Shan 2016-05-03 270 next =3D child->sibling; 50800082f17645 Gavin Shan 2016-05-03 271 = 50800082f17645 Gavin Shan 2016-05-03 272 child->sibling =3D parent->chi= ld; 50800082f17645 Gavin Shan 2016-05-03 273 parent->child =3D child; 50800082f17645 Gavin Shan 2016-05-03 274 child =3D next; 50800082f17645 Gavin Shan 2016-05-03 275 } 50800082f17645 Gavin Shan 2016-05-03 276 } 50800082f17645 Gavin Shan 2016-05-03 277 = :::::: The code at line 259 was first introduced by commit :::::: 50800082f17645620bfdd357ba9141c86b76363d drivers/of: Avoid recursive= ly calling unflatten_dt_node() :::::: TO: Gavin Shan :::::: CC: Rob Herring --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============1402317001104307217== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICCXdBmEAAy5jb25maWcAjDxLe9u2svv+Cn3tpmfR1oodn/TezwuIBCVUJMEAoCx5w8+x5Rzf +pEj223y7+8MwAcADtV0kVozg/e8MeBPP/w0Y2+vz4/Xr/c31w8P32af90/7w/Xr/nZ2d/+w/99Z KmelNDOeCvMrEOf3T29ff/v64bw5P5u9/3U+//Vktt4fnvYPs+T56e7+8xs0vn9++uGnHxJZZmLZ JEmz4UoLWTaGb83FjzcP10+fZ3/tDy9AN5uf/noCffz8+f71f377Df59vD8cng+/PTz89dh8OTz/ 3/7mdXZ29+/53fvfP92d3v7++/xs/uHD9Xx+e3JzNv+0v/306fT099vT87u79//6sRt1OQx7cdIB 83QMAzqhmyRn5fLim0cIwDxPB5Cl6JvPT0/gv57c6zjEQO8JK5tclGuvqwHYaMOMSALciumG6aJZ 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