From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1754372AbbKGVUW (ORCPT ); Sat, 7 Nov 2015 16:20:22 -0500 Received: from mga09.intel.com ([134.134.136.24]:21010 "EHLO mga09.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1753135AbbKGVUQ (ORCPT ); Sat, 7 Nov 2015 16:20:16 -0500 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.20,258,1444719600"; d="gz'50?scan'50,208,50";a="680519846" Date: Sun, 8 Nov 2015 05:18:50 +0800 From: kbuild test robot To: Sandy Harris Cc: kbuild-all@01.org, "Theodore Ts\\\\'o" , Jason Cooper , "H. Peter Anvin" , John Denker , linux-kernel@vger.kernel.org, linux-crypto@vger.kernel.org Subject: Re: [PATCH 7/7] Create generated/random_init.h, used by random driver Message-ID: <201511080527.N9UQrWZO%fengguang.wu@intel.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="HlL+5n6rz5pIUxbD" Content-Disposition: inline In-Reply-To: <1446906642-19372-7-git-send-email-sandyinchina@gmail.com> User-Agent: Mutt/1.5.23 (2014-03-12) X-SA-Exim-Connect-IP: X-SA-Exim-Mail-From: fengguang.wu@intel.com X-SA-Exim-Scanned: No (on bee); SAEximRunCond expanded to false Sender: linux-kernel-owner@vger.kernel.org List-ID: X-Mailing-List: linux-kernel@vger.kernel.org --HlL+5n6rz5pIUxbD Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Sandy, [auto build test ERROR on: char-misc/char-misc-testing] [also build test ERROR on: v4.3 next-20151106] url: https://github.com/0day-ci/linux/commits/Sandy-Harris/A-couple-of-generated-files/20151107-223540 config: x86_64-allmodconfig (attached as .config) reproduce: # save the attached .config to linux build tree make ARCH=x86_64 All error/warnings (new ones prefixed by >>): drivers/char/random_gcm.c:2366:28: sparse: non-ANSI function declaration of function 'mix_const_all' drivers/char/random_gcm.c:2379:21: sparse: non-ANSI function declaration of function 'big_mix' drivers/char/random_gcm.c:2443:21: sparse: non-ANSI function declaration of function 'top_mix' drivers/char/random_gcm.c:2518:26: sparse: non-ANSI function declaration of function 'clear_addmul' drivers/char/random_gcm.c:3208:25: sparse: non-ANSI function declaration of function 'init_random' drivers/char/random_gcm.c:3571:26: sparse: non-ANSI function declaration of function 'counter_any' drivers/char/random_gcm.c:3652:23: sparse: non-ANSI function declaration of function 'load_input' drivers/char/random_gcm.c:3702:27: sparse: non-ANSI function declaration of function 'load_constants' drivers/char/random_gcm.c:477:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:478:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:496:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:497:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:514:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:515:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:530:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:531:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:3471:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3474:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3477:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3488:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3495:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3496:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3497:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3517:9: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3541:9: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3547:17: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3555:24: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3555:58: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3555:51: sparse: cast from unknown type drivers/char/random_gcm.c:3560:17: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3709:58: sparse: undefined identifier 'ARRAY_WORDS' drivers/char/random_gcm.c:3709:25: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:2371:19: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:2652:38: sparse: undefined identifier 'counter' >> drivers/char/random_gcm.c:477:7: error: 'constants' undeclared here (not in a function) .A = constants, ^ drivers/char/random_gcm.c: In function 'mix_first': >> drivers/char/random_gcm.c:2652:31: error: 'counter' undeclared (first use in this function) addmul( (u8 *) accum, (u8 *) counter, 16, (u8 *) r->B) ; ^ drivers/char/random_gcm.c:2652:31: note: each undeclared identifier is reported only once for each function it appears in drivers/char/random_gcm.c: In function 'count': drivers/char/random_gcm.c:3471:4: error: 'counter' undeclared (first use in this function) counter[1] += counter[3] ; ^ drivers/char/random_gcm.c: In function 'buffer2counter': drivers/char/random_gcm.c:3541:2: error: 'counter' undeclared (first use in this function) counter[0] ^= jiffies ; ^ drivers/char/random_gcm.c: In function 'load_constants': >> drivers/char/random_gcm.c:3709:27: warning: left-hand operand of comma expression has no effect [-Wunused-value] for( i = 0, p = constants, ret = 1 ; ret && (i < ARRAY_WORDS) ; i++, p++ ) { ^ >> drivers/char/random_gcm.c:3709:51: error: 'ARRAY_WORDS' undeclared (first use in this function) for( i = 0, p = constants, ret = 1 ; ret && (i < ARRAY_WORDS) ; i++, p++ ) { ^ sparse warnings: (new ones prefixed by >>) drivers/char/random_gcm.c:2366:28: sparse: non-ANSI function declaration of function 'mix_const_all' drivers/char/random_gcm.c:2379:21: sparse: non-ANSI function declaration of function 'big_mix' drivers/char/random_gcm.c:2443:21: sparse: non-ANSI function declaration of function 'top_mix' drivers/char/random_gcm.c:2518:26: sparse: non-ANSI function declaration of function 'clear_addmul' drivers/char/random_gcm.c:3208:25: sparse: non-ANSI function declaration of function 'init_random' drivers/char/random_gcm.c:3571:26: sparse: non-ANSI function declaration of function 'counter_any' drivers/char/random_gcm.c:3652:23: sparse: non-ANSI function declaration of function 'load_input' drivers/char/random_gcm.c:3702:27: sparse: non-ANSI function declaration of function 'load_constants' drivers/char/random_gcm.c:477:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:478:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:496:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:497:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:514:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:515:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:530:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:531:14: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:3471:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3474:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3477:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3488:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3495:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3496:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3497:25: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3517:9: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3541:9: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3547:17: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3555:24: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3555:58: sparse: undefined identifier 'counter' >> drivers/char/random_gcm.c:3555:51: sparse: cast from unknown type drivers/char/random_gcm.c:3560:17: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:3709:58: sparse: undefined identifier 'ARRAY_WORDS' drivers/char/random_gcm.c:3709:25: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:2371:19: sparse: undefined identifier 'constants' drivers/char/random_gcm.c:2652:38: sparse: undefined identifier 'counter' drivers/char/random_gcm.c:477:7: error: 'constants' undeclared here (not in a function) .A = constants, ^ drivers/char/random_gcm.c: In function 'mix_first': drivers/char/random_gcm.c:2652:31: error: 'counter' undeclared (first use in this function) addmul( (u8 *) accum, (u8 *) counter, 16, (u8 *) r->B) ; ^ drivers/char/random_gcm.c:2652:31: note: each undeclared identifier is reported only once for each function it appears in drivers/char/random_gcm.c: In function 'count': drivers/char/random_gcm.c:3471:4: error: 'counter' undeclared (first use in this function) counter[1] += counter[3] ; ^ drivers/char/random_gcm.c: In function 'buffer2counter': drivers/char/random_gcm.c:3541:2: error: 'counter' undeclared (first use in this function) counter[0] ^= jiffies ; ^ drivers/char/random_gcm.c: In function 'load_constants': drivers/char/random_gcm.c:3709:27: warning: left-hand operand of comma expression has no effect [-Wunused-value] for( i = 0, p = constants, ret = 1 ; ret && (i < ARRAY_WORDS) ; i++, p++ ) { ^ drivers/char/random_gcm.c:3709:51: error: 'ARRAY_WORDS' undeclared (first use in this function) for( i = 0, p = constants, ret = 1 ; ret && (i < ARRAY_WORDS) ; i++, p++ ) { ^ vim +/constants +477 drivers/char/random_gcm.c da17cbfa Sandy Harris 2015-11-07 461 unsigned int initialized:1; da17cbfa Sandy Harris 2015-11-07 462 unsigned int limit:1; da17cbfa Sandy Harris 2015-11-07 463 unsigned int last_data_init:1; da17cbfa Sandy Harris 2015-11-07 464 __u8 last_data[EXTRACT_SIZE]; da17cbfa Sandy Harris 2015-11-07 465 u32 *A, *B, which, count ; da17cbfa Sandy Harris 2015-11-07 466 u32 *p, *q, *end, size ; da17cbfa Sandy Harris 2015-11-07 467 }; da17cbfa Sandy Harris 2015-11-07 468 da17cbfa Sandy Harris 2015-11-07 469 static void push_to_pool(struct work_struct *work); da17cbfa Sandy Harris 2015-11-07 470 da17cbfa Sandy Harris 2015-11-07 471 static struct entropy_store input_pool = { da17cbfa Sandy Harris 2015-11-07 472 .poolinfo = &poolinfo_table[0], da17cbfa Sandy Harris 2015-11-07 473 .name = "input", da17cbfa Sandy Harris 2015-11-07 474 .limit = 1, da17cbfa Sandy Harris 2015-11-07 475 .lock = __SPIN_LOCK_UNLOCKED(input_pool.lock), da17cbfa Sandy Harris 2015-11-07 476 .pool = pools, da17cbfa Sandy Harris 2015-11-07 @477 .A = constants, da17cbfa Sandy Harris 2015-11-07 478 .B = constants+4, da17cbfa Sandy Harris 2015-11-07 479 .which = 0, da17cbfa Sandy Harris 2015-11-07 480 .count = 0, da17cbfa Sandy Harris 2015-11-07 481 .size = INPUT_POOL_WORDS, da17cbfa Sandy Harris 2015-11-07 482 .p = pools, da17cbfa Sandy Harris 2015-11-07 483 .q = pools + (INPUT_POOL_WORDS/2), da17cbfa Sandy Harris 2015-11-07 484 .end = pools + INPUT_POOL_WORDS da17cbfa Sandy Harris 2015-11-07 485 }; :::::: The code at line 477 was first introduced by commit :::::: da17cbfaa5c53120c6c5797cf2dc6bd4123b6869 Different version of driver using hash from AES-GCM Compiled if CONFIG_RANDOM_GCM=y :::::: TO: Sandy Harris :::::: CC: 0day robot --- 0-DAY kernel test infrastructure Open Source Technology Center https://lists.01.org/pipermail/kbuild-all Intel Corporation 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