From mboxrd@z Thu Jan 1 00:00:00 1970 Received: from mga03.intel.com (mga03.intel.com [134.134.136.65]) (using TLSv1.2 with cipher ECDHE-RSA-AES256-GCM-SHA384 (256/256 bits)) (No client certificate requested) by smtp.subspace.kernel.org (Postfix) with ESMTPS id 9D1EE10F9 for ; Wed, 26 Oct 2022 11:00:51 +0000 (UTC) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/simple; d=intel.com; i=@intel.com; q=dns/txt; s=Intel; t=1666782051; x=1698318051; h=date:from:to:cc:subject:message-id:references: mime-version:in-reply-to; bh=ybFpNZJlR2mSezUTIrJC4g/UMOXjOZ7MjtGiaXZxfQc=; b=L1rJXXUpIJTzDKEclg02rjWDPqBli5W0efylta1qv3BSw6lRUej70XXT 7P7jK+cRiFwCfKNMFRlsWC2QGh+2dpwP1twKFrd/8PmdWAc8ORXtKhCFC Fx2QviPKNJwaGNezcAdqNlaEvwrFcx0hs4ZbUnkuabzn6iJzim0WtIesI ldxoa+yX4uVNqNwmpTBiXE1pb9vOc8jEOGg5v9+xBlH8XVGTwo7/33Q4G 1rkfQ0fIP6o3kF8NJalozPwVyCcUlZZw5SKG4FKmtVWfmu0OGedhLMtO5 Cme8Agq/VDebPIcg2S8tcZu4WwspYP5bvYmbeAjTwhWMtyINaBU03cgJp A==; X-IronPort-AV: E=McAfee;i="6500,9779,10511"; a="309607258" X-IronPort-AV: E=Sophos;i="5.95,214,1661842800"; d="gz'50?scan'50,208,50";a="309607258" Received: from orsmga004.jf.intel.com ([10.7.209.38]) by orsmga103.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 26 Oct 2022 04:00:50 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=McAfee;i="6500,9779,10511"; a="757263491" X-IronPort-AV: E=Sophos;i="5.95,214,1661842800"; d="gz'50?scan'50,208,50";a="757263491" Received: from lkp-server02.sh.intel.com (HELO b6d29c1a0365) ([10.239.97.151]) by orsmga004.jf.intel.com with ESMTP; 26 Oct 2022 04:00:49 -0700 Received: from kbuild by b6d29c1a0365 with local (Exim 4.96) (envelope-from ) id 1one9Q-0007KO-1D; Wed, 26 Oct 2022 11:00:48 +0000 Date: Wed, 26 Oct 2022 18:59:52 +0800 From: kernel test robot To: Pratyush Kumar Khan Cc: oe-kbuild-all@lists.linux.dev Subject: Re: [RFC PATCH 1/4] kParser: Add new kParser KMOD Message-ID: <202210261849.CS0CG1eB-lkp@intel.com> References: <20221026075054.119069-2-pratyush@sipanda.io> Precedence: bulk X-Mailing-List: oe-kbuild-all@lists.linux.dev List-Id: List-Subscribe: List-Unsubscribe: MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="GpBR4lXiix5cgnXT" Content-Disposition: inline In-Reply-To: <20221026075054.119069-2-pratyush@sipanda.io> --GpBR4lXiix5cgnXT Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Pratyush, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on next-20221026] [also build test WARNING on v6.1-rc2] [cannot apply to bpf-next/master bpf/master linus/master v6.1-rc2 v6.1-rc1 v6.0] [If your patch is applied to the wrong git tree, kindly drop us a note. And when submitting patch, we suggest to use '--base' as documented in https://git-scm.com/docs/git-format-patch#_base_tree_information] url: https://github.com/intel-lab-lkp/linux/commits/Pratyush-Kumar-Khan/kParser-Add-new-kParser-KMOD/20221026-165116 patch link: https://lore.kernel.org/r/20221026075054.119069-2-pratyush%40sipanda.io patch subject: [RFC PATCH 1/4] kParser: Add new kParser KMOD config: sh-allmodconfig (attached as .config) compiler: sh4-linux-gcc (GCC) 12.1.0 reproduce (this is a W=1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # https://github.com/intel-lab-lkp/linux/commit/943db3b621ddd36681b3738a6747a9411e075a97 git remote add linux-review https://github.com/intel-lab-lkp/linux git fetch --no-tags linux-review Pratyush-Kumar-Khan/kParser-Add-new-kParser-KMOD/20221026-165116 git checkout 943db3b621ddd36681b3738a6747a9411e075a97 # save the config file mkdir build_dir && cp config build_dir/.config COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-12.1.0 make.cross W=1 O=build_dir ARCH=sh SHELL=/bin/bash net/kparser/ If you fix the issue, kindly add following tag where applicable | Reported-by: kernel test robot All warnings (new ones prefixed by >>): In file included from include/asm-generic/bug.h:22, from arch/sh/include/asm/bug.h:112, from include/linux/ktime.h:26, from include/linux/timer.h:6, from include/linux/workqueue.h:9, from include/linux/rhashtable.h:25, from net/kparser/kparser_cmds.c:10: net/kparser/kparser_cmds.c: In function 'alloc_first_rsp': include/linux/kern_levels.h:5:25: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'unsigned int' [-Wformat=] 5 | #define KERN_SOH "\001" /* ASCII Start Of Header */ | ^~~~~~ include/linux/printk.h:429:25: note: in definition of macro 'printk_index_wrap' 429 | _p_func(_fmt, ##__VA_ARGS__); \ | ^~~~ include/linux/printk.h:480:9: note: in expansion of macro 'printk' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~ include/linux/kern_levels.h:9:25: note: in expansion of macro 'KERN_SOH' 9 | #define KERN_ALERT KERN_SOH "1" /* action must be taken immediately */ | ^~~~~~~~ include/linux/printk.h:480:16: note: in expansion of macro 'KERN_ALERT' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~~~~~ net/kparser/kparser_cmds.c:673:17: note: in expansion of macro 'pr_alert' 673 | pr_alert("%s:kzalloc failed for rsp, size:%lu\n", __func__, sizeof(**rsp)); | ^~~~~~~~ net/kparser/kparser_cmds.c: In function 'kparser_init': >> net/kparser/kparser_cmds.c:709:26: warning: format '%lu' expects argument of type 'long unsigned int', but argument 5 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds.c:709:17: note: in expansion of macro 'pr_debug' 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ^~~~~~~~ net/kparser/kparser_cmds.c:709:44: note: format string is defined here 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ~~^ | | | long unsigned int | %u >> net/kparser/kparser_cmds.c:709:26: warning: format '%lu' expects argument of type 'long unsigned int', but argument 6 has type 'unsigned int' [-Wformat=] 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds.c:709:17: note: in expansion of macro 'pr_debug' 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ^~~~~~~~ net/kparser/kparser_cmds.c:709:61: note: format string is defined here 709 | pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", | ~~^ | | | long unsigned int | %u net/kparser/kparser_cmds.c: In function 'kparser_config_handler_preprocess': net/kparser/kparser_cmds.c:786:26: warning: format '%lu' expects argument of type 'long unsigned int', but argument 6 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds.c:786:17: note: in expansion of macro 'pr_debug' 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ^~~~~~~~ net/kparser/kparser_cmds.c:786:41: note: format string is defined here 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ~~^ | | | long unsigned int | %u net/kparser/kparser_cmds.c:786:26: warning: format '%lu' expects argument of type 'long unsigned int', but argument 10 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds.c:786:17: note: in expansion of macro 'pr_debug' 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ^~~~~~~~ net/kparser/kparser_cmds.c:786:54: note: format string is defined here 786 | pr_debug("{%s:%d}:[%p %lu %p %p %p %lu %d]\n", | ~~^ | | | long unsigned int | %u -- net/kparser/kparser_cmds_ops.c: In function 'kparser_cmd_create_pre_process': >> net/kparser/kparser_cmds_ops.c:58:66: warning: format '%lu' expects argument of type 'long unsigned int', but argument 5 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 58 | "%s:Object allocation failed for size:%lu", | ~~^ | | | long unsigned int | %u 59 | op, kobjsize); | ~~~~~~~~ | | | size_t {aka unsigned int} net/kparser/kparser_cmds_ops.c: In function 'kparser_create_cond_table_ent': >> net/kparser/kparser_cmds_ops.c:202:63: warning: format '%lu' expects argument of type 'long unsigned int', but argument 6 has type 'unsigned int' [-Wformat=] 202 | "%s: krealloc() err, ents:%d, size:%lu", | ~~^ | | | long unsigned int | %u 203 | __func__, (*proto_table)->table.num_ents, 204 | sizeof(struct kparser_condexpr_expr)); | ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ | | | unsigned int In file included from include/asm-generic/bug.h:22, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/thread_info.h:13, from include/asm-generic/preempt.h:5, from ./arch/sh/include/generated/asm/preempt.h:1, from include/linux/preempt.h:78, from include/linux/spinlock.h:56, from include/linux/mmzone.h:8, from include/linux/gfp.h:7, from include/linux/slab.h:15, from net/kparser/kparser_cmds_ops.c:9: net/kparser/kparser_cmds_ops.c: In function 'kparser_read_cond_table': include/linux/kern_levels.h:5:25: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 5 | #define KERN_SOH "\001" /* ASCII Start Of Header */ | ^~~~~~ include/linux/printk.h:429:25: note: in definition of macro 'printk_index_wrap' 429 | _p_func(_fmt, ##__VA_ARGS__); \ | ^~~~ include/linux/printk.h:480:9: note: in expansion of macro 'printk' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~ include/linux/kern_levels.h:9:25: note: in expansion of macro 'KERN_SOH' 9 | #define KERN_ALERT KERN_SOH "1" /* action must be taken immediately */ | ^~~~~~~~ include/linux/printk.h:480:16: note: in expansion of macro 'KERN_ALERT' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~~~~~ net/kparser/kparser_cmds_ops.c:307:25: note: in expansion of macro 'pr_alert' 307 | pr_alert("%s:krealloc failed for rsp, len:%lu\n", | ^~~~~~~~ net/kparser/kparser_cmds_ops.c: In function 'kparser_create_cond_tables_ent': net/kparser/kparser_cmds_ops.c:367:63: warning: format '%lu' expects argument of type 'long unsigned int', but argument 6 has type 'unsigned int' [-Wformat=] 367 | "%s: krealloc() err, ents:%d, size:%lu", | ~~^ | | | long unsigned int | %u 368 | __func__, (*proto_table)->table.num_ents, 369 | sizeof(struct kparser_condexpr_table *)); | ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ | | | unsigned int net/kparser/kparser_cmds_ops.c: In function 'kparser_read_cond_tables': include/linux/kern_levels.h:5:25: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 5 | #define KERN_SOH "\001" /* ASCII Start Of Header */ | ^~~~~~ include/linux/printk.h:429:25: note: in definition of macro 'printk_index_wrap' 429 | _p_func(_fmt, ##__VA_ARGS__); \ | ^~~~ include/linux/printk.h:480:9: note: in expansion of macro 'printk' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~ include/linux/kern_levels.h:9:25: note: in expansion of macro 'KERN_SOH' 9 | #define KERN_ALERT KERN_SOH "1" /* action must be taken immediately */ | ^~~~~~~~ include/linux/printk.h:480:16: note: in expansion of macro 'KERN_ALERT' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~~~~~ net/kparser/kparser_cmds_ops.c:467:25: note: in expansion of macro 'pr_alert' 467 | pr_alert("%s:krealloc failed for rsp, len:%lu\n", | ^~~~~~~~ net/kparser/kparser_cmds_ops.c: In function 'kparser_read_counter_table': include/linux/kern_levels.h:5:25: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 5 | #define KERN_SOH "\001" /* ASCII Start Of Header */ | ^~~~~~ include/linux/printk.h:429:25: note: in definition of macro 'printk_index_wrap' 429 | _p_func(_fmt, ##__VA_ARGS__); \ | ^~~~ include/linux/printk.h:480:9: note: in expansion of macro 'printk' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~ include/linux/kern_levels.h:9:25: note: in expansion of macro 'KERN_SOH' 9 | #define KERN_ALERT KERN_SOH "1" /* action must be taken immediately */ | ^~~~~~~~ include/linux/printk.h:480:16: note: in expansion of macro 'KERN_ALERT' 480 | printk(KERN_ALERT pr_fmt(fmt), ##__VA_ARGS__) | ^~~~~~~~~~ net/kparser/kparser_cmds_ops.c:755:25: note: in expansion of macro 'pr_alert' 755 | pr_alert("%s:krealloc failed for rsp, len:%lu\n", __func__, *rsp_len); | ^~~~~~~~ net/kparser/kparser_cmds_ops.c: In function 'kparser_create_metalist': net/kparser/kparser_cmds_ops.c:1054:71: warning: format '%lu' expects argument of type 'long unsigned int', but argument 6 has type 'unsigned int' [-Wformat=] 1054 | "%s: krealloc() err, ents:%d, size:%lu", | ~~^ | | | long unsigned int | %u 1055 | op, kmdl->metadata_table.num_ents, sizeof(*kmde)); | ~~~~~~~~~~~~~ -- In file included from include/asm-generic/bug.h:22, from arch/sh/include/asm/bug.h:112, from include/linux/bug.h:5, from include/linux/thread_info.h:13, from include/asm-generic/preempt.h:5, from ./arch/sh/include/generated/asm/preempt.h:1, from include/linux/preempt.h:78, from include/linux/spinlock.h:56, from include/linux/kref.h:16, from net/kparser/kparser.h:14, from net/kparser/kparser_cmds_dump_ops.c:9: net/kparser/kparser_cmds_dump_ops.c: In function 'kparser_dump_proto_node': >> net/kparser/kparser_cmds_dump_ops.c:137:18: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 137 | pr_debug("min_len:%lu\n", obj->min_len); | ^~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:137:9: note: in expansion of macro 'pr_debug' 137 | pr_debug("min_len:%lu\n", obj->min_len); | ^~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:137:29: note: format string is defined here 137 | pr_debug("min_len:%lu\n", obj->min_len); | ~~^ | | | long unsigned int | %u net/kparser/kparser_cmds_dump_ops.c: In function 'kparser_dump_tlv_parse_node': net/kparser/kparser_cmds_dump_ops.c:191:18: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 191 | pr_debug("proto_tlv_node.min_len: %lu\n", obj->proto_tlv_node.min_len); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:191:9: note: in expansion of macro 'pr_debug' 191 | pr_debug("proto_tlv_node.min_len: %lu\n", obj->proto_tlv_node.min_len); | ^~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:191:45: note: format string is defined here 191 | pr_debug("proto_tlv_node.min_len: %lu\n", obj->proto_tlv_node.min_len); | ~~^ | | | long unsigned int | %u net/kparser/kparser_cmds_dump_ops.c:192:18: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 192 | pr_debug("proto_tlv_node.max_len: %lu\n", obj->proto_tlv_node.max_len); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:192:9: note: in expansion of macro 'pr_debug' 192 | pr_debug("proto_tlv_node.max_len: %lu\n", obj->proto_tlv_node.max_len); | ^~~~~~~~ net/kparser/kparser_cmds_dump_ops.c:192:45: note: format string is defined here 192 | pr_debug("proto_tlv_node.max_len: %lu\n", obj->proto_tlv_node.max_len); | ~~^ | | | long unsigned int | %u net/kparser/kparser_cmds_dump_ops.c: In function 'kparser_dump_tlvs_proto_node': net/kparser/kparser_cmds_dump_ops.c:252:18: warning: format '%lu' expects argument of type 'long unsigned int', but argument 3 has type 'size_t' {aka 'unsigned int'} [-Wformat=] 252 | pr_debug("start_offset:%lu\n", obj->start_offset); | ^~~~~~~~~~~~~~~~~~~~ include/linux/printk.h:347:21: note: in definition of macro 'pr_fmt' 347 | #define pr_fmt(fmt) fmt | ^~~ include/linux/dynamic_debug.h:247:9: note: in expansion of macro '__dynamic_func_call_cls' 247 | __dynamic_func_call_cls(__UNIQUE_ID(ddebug), cls, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:249:9: note: in expansion of macro '_dynamic_func_call_cls' 249 | _dynamic_func_call_cls(_DPRINTK_CLASS_DFLT, fmt, func, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~~~~~~~ include/linux/dynamic_debug.h:268:9: note: in expansion of macro '_dynamic_func_call' 268 | _dynamic_func_call(fmt, __dynamic_pr_debug, \ | ^~~~~~~~~~~~~~~~~~ include/linux/printk.h:581:9: note: in expansion of macro 'dynamic_pr_debug' 581 | dynamic_pr_debug(fmt, ##__VA_ARGS__) | ^~~~~~~~~~~~~~~~ .. vim +709 net/kparser/kparser_cmds.c 682 683 /* initialize kParser's name space manager contexts */ 684 int kparser_init(void) 685 { 686 int err, i, j; 687 688 pr_debug("IN: %s:%s:%d\n", __FILE__, __func__, __LINE__); 689 690 for (i = 0; i < (sizeof(g_mod_namespaces) / 691 sizeof(g_mod_namespaces[0])); i++) { 692 if (!g_mod_namespaces[i]) 693 continue; 694 695 err = rhashtable_init(&g_mod_namespaces[i]->htbl_name.tbl, 696 &g_mod_namespaces[i]->htbl_name.tbl_params); 697 if (err) 698 goto handle_error; 699 700 err = rhashtable_init(&g_mod_namespaces[i]->htbl_id.tbl, 701 &g_mod_namespaces[i]->htbl_id.tbl_params); 702 if (err) 703 goto handle_error; 704 705 g_mod_namespaces[i]->bv_len = 706 ((KPARSER_KMOD_ID_MAX - KPARSER_KMOD_ID_MIN) / 707 BITS_PER_TYPE(unsigned long)) + 1; 708 > 709 pr_debug("{%s:%d}:bv_len:%lu, total_bytes:%lu, range:[%d:%d]\n", 710 __func__, __LINE__, 711 g_mod_namespaces[i]->bv_len, 712 sizeof(__u32) * g_mod_namespaces[i]->bv_len, 713 KPARSER_KMOD_ID_MAX, KPARSER_KMOD_ID_MIN); 714 715 g_mod_namespaces[i]->bv = kcalloc(g_mod_namespaces[i]->bv_len, sizeof(__u32), 716 GFP_KERNEL); 717 718 if (!g_mod_namespaces[i]->bv) { 719 pr_alert("%s: kzalloc() failed\n", __func__); 720 goto handle_error; 721 } 722 723 memset(g_mod_namespaces[i]->bv, 0xff, g_mod_namespaces[i]->bv_len * sizeof(__u32)); 724 } 725 726 pr_debug("OUT: %s:%s:%d:err:%d\n", __FILE__, __func__, __LINE__, err); 727 728 return 0; 729 730 handle_error: 731 for (j = 0; j < i; j++) { 732 if (!g_mod_namespaces[j]) 733 continue; 734 735 rhashtable_destroy(&g_mod_namespaces[j]->htbl_name.tbl); 736 rhashtable_destroy(&g_mod_namespaces[j]->htbl_id.tbl); 737 738 kparser_free(g_mod_namespaces[j]->bv); 739 g_mod_namespaces[j]->bv_len = 0; 740 } 741 742 pr_debug("OUT: %s() failed, err: %d\n", __func__, err); 743 744 return err; 745 } 746 -- 0-DAY CI Kernel Test Service https://01.org/lkp --GpBR4lXiix5cgnXT Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICG4KWWMAAy5jb25maWcAjFxdc9s2s75/f4UmvWlnTlrLTpR0zugCJEEKFUkwBKgP33AU W0k8tS0fWe7b/PuzC34BIEipNw33WXwtdhe7C8i//OeXCXk7HZ52p4e73ePjz8n3/fP+uDvt 7yffHh73/zsJ+CTlckIDJn8H5vjh+e3fP15/TGa/T3+/en+8u54s98fn/ePEPzx/e/j+Bm0f Ds//+eU/Pk9DFpW+X65oLhhPS0k3cv7u9ceH94/Yy/vvd3eTXyPf/20yvcbe3mltmCgBmf9s SFHXz3x6fTW9umqZY5JGLdaSiVB9pEXXB5Aatuubz10PcYCsXhh0rEBys2rAlTbdBfRNRFKy NGYp7fqpoZSXWc5DFtMyTEsiZd6xZGTBgd4t7qZtzFMh88KXPBcdP8u/lGueL4ECUv5lEqkN 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