From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: X-Spam-Checker-Version: SpamAssassin 3.4.0 (2014-02-07) on aws-us-west-2-korg-lkml-1.web.codeaurora.org X-Spam-Level: X-Spam-Status: No, score=-10.2 required=3.0 tests=BAYES_00, HEADER_FROM_DIFFERENT_DOMAINS,MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING, SPF_HELO_NONE,SPF_PASS,URIBL_BLOCKED,USER_AGENT_SANE_1 autolearn=ham autolearn_force=no version=3.4.0 Received: from mail.kernel.org (mail.kernel.org [198.145.29.99]) by smtp.lore.kernel.org (Postfix) with ESMTP id BED0BC433B4 for ; Tue, 27 Apr 2021 03:57:30 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [23.128.96.18]) by mail.kernel.org (Postfix) with ESMTP id 7A68061059 for ; Tue, 27 Apr 2021 03:57:30 +0000 (UTC) Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S232618AbhD0D6K (ORCPT ); Mon, 26 Apr 2021 23:58:10 -0400 Received: from mga09.intel.com ([134.134.136.24]:15191 "EHLO mga09.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S231363AbhD0D6K (ORCPT ); Mon, 26 Apr 2021 23:58:10 -0400 IronPort-SDR: 0hkqrynOcLYnwQqP+ozebD415VYI77i/yPLuWyZY4U5GdA2pw/eTidRjsMemzJNLZJfOuuHc/k CGoXjKAEtjnQ== X-IronPort-AV: E=McAfee;i="6200,9189,9966"; a="196555554" X-IronPort-AV: E=Sophos;i="5.82,254,1613462400"; d="gz'50?scan'50,208,50";a="196555554" Received: from fmsmga005.fm.intel.com ([10.253.24.32]) by orsmga102.jf.intel.com with ESMTP/TLS/ECDHE-RSA-AES256-GCM-SHA384; 26 Apr 2021 20:57:26 -0700 IronPort-SDR: oiikNAjDmMnuo1gP2m0QzGZwmaUAmNaL4QYXjV1TmvEZmGSMtwp7kXgpg7KnIGMRrHIjlb3x6q e29hg90rIlnA== X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.82,254,1613462400"; d="gz'50?scan'50,208,50";a="618814677" Received: from lkp-server01.sh.intel.com (HELO a48ff7ddd223) ([10.239.97.150]) by fmsmga005.fm.intel.com with ESMTP; 26 Apr 2021 20:57:23 -0700 Received: from kbuild by a48ff7ddd223 with local (Exim 4.92) (envelope-from ) id 1lbEqg-0006GL-6G; Tue, 27 Apr 2021 03:57:22 +0000 Date: Tue, 27 Apr 2021 11:57:09 +0800 From: kernel test robot To: Nick Terrell , Herbert Xu Cc: kbuild-all@lists.01.org, linux-crypto@vger.kernel.org, linux-btrfs@vger.kernel.org, squashfs-devel@lists.sourceforge.net, linux-f2fs-devel@lists.sourceforge.net, linux-kernel@vger.kernel.org, Kernel Team , Nick Terrell , Chris Mason , Petr Malat Subject: Re: [PATCH v10 3/4] lib: zstd: Upgrade to latest upstream zstd version 1.4.10 Message-ID: <202104271134.ylnPFmrH-lkp@intel.com> References: <20210426234621.870684-4-nickrterrell@gmail.com> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="mP3DRpeJDSE+ciuQ" Content-Disposition: inline In-Reply-To: <20210426234621.870684-4-nickrterrell@gmail.com> User-Agent: Mutt/1.10.1 (2018-07-13) Precedence: bulk List-ID: X-Mailing-List: linux-crypto@vger.kernel.org --mP3DRpeJDSE+ciuQ Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Nick, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on f2fs/dev-test] [also build test WARNING on cryptodev/master crypto/master kdave/for-next kees/for-next/pstore linus/master v5.12 next-20210426] [cannot apply to squashfs/master] [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] url: https://github.com/0day-ci/linux/commits/Nick-Terrell/lib-zstd-Add-kernel-specific-API/20210427-084701 base: https://git.kernel.org/pub/scm/linux/kernel/git/jaegeuk/f2fs.git dev-test config: h8300-allyesconfig (attached as .config) compiler: h8300-linux-gcc (GCC) 9.3.0 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/0day-ci/linux/commit/57bb8df6140690eaeb3f03fcdab731047c8b823e git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Nick-Terrell/lib-zstd-Add-kernel-specific-API/20210427-084701 git checkout 57bb8df6140690eaeb3f03fcdab731047c8b823e # save the attached .config to linux build tree COMPILER_INSTALL_PATH=$HOME/0day COMPILER=gcc-9.3.0 make.cross W=1 ARCH=h8300 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_doubleFast_extDict_generic': >> lib/zstd/compress/zstd_double_fast.c:501:1: warning: the frame size of 1256 bytes is larger than 1024 bytes [-Wframe-larger-than=] 501 | } | ^ lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_doubleFast': lib/zstd/compress/zstd_double_fast.c:336:1: warning: the frame size of 1224 bytes is larger than 1024 bytes [-Wframe-larger-than=] 336 | } | ^ lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_doubleFast_dictMatchState': lib/zstd/compress/zstd_double_fast.c:356:1: warning: the frame size of 1320 bytes is larger than 1024 bytes [-Wframe-larger-than=] 356 | } | ^ -- lib/zstd/compress/zstd_fast.c: In function 'ZSTD_compressBlock_fast_extDict_generic': >> lib/zstd/compress/zstd_fast.c:476:1: warning: the frame size of 1160 bytes is larger than 1024 bytes [-Wframe-larger-than=] 476 | } | ^ vim +501 lib/zstd/compress/zstd_double_fast.c 357 358 359 static size_t ZSTD_compressBlock_doubleFast_extDict_generic( 360 ZSTD_matchState_t* ms, seqStore_t* seqStore, U32 rep[ZSTD_REP_NUM], 361 void const* src, size_t srcSize, 362 U32 const mls /* template */) 363 { 364 ZSTD_compressionParameters const* cParams = &ms->cParams; 365 U32* const hashLong = ms->hashTable; 366 U32 const hBitsL = cParams->hashLog; 367 U32* const hashSmall = ms->chainTable; 368 U32 const hBitsS = cParams->chainLog; 369 const BYTE* const istart = (const BYTE*)src; 370 const BYTE* ip = istart; 371 const BYTE* anchor = istart; 372 const BYTE* const iend = istart + srcSize; 373 const BYTE* const ilimit = iend - 8; 374 const BYTE* const base = ms->window.base; 375 const U32 endIndex = (U32)((size_t)(istart - base) + srcSize); 376 const U32 lowLimit = ZSTD_getLowestMatchIndex(ms, endIndex, cParams->windowLog); 377 const U32 dictStartIndex = lowLimit; 378 const U32 dictLimit = ms->window.dictLimit; 379 const U32 prefixStartIndex = (dictLimit > lowLimit) ? dictLimit : lowLimit; 380 const BYTE* const prefixStart = base + prefixStartIndex; 381 const BYTE* const dictBase = ms->window.dictBase; 382 const BYTE* const dictStart = dictBase + dictStartIndex; 383 const BYTE* const dictEnd = dictBase + prefixStartIndex; 384 U32 offset_1=rep[0], offset_2=rep[1]; 385 386 DEBUGLOG(5, "ZSTD_compressBlock_doubleFast_extDict_generic (srcSize=%zu)", srcSize); 387 388 /* if extDict is invalidated due to maxDistance, switch to "regular" variant */ 389 if (prefixStartIndex == dictStartIndex) 390 return ZSTD_compressBlock_doubleFast_generic(ms, seqStore, rep, src, srcSize, mls, ZSTD_noDict); 391 392 /* Search Loop */ 393 while (ip < ilimit) { /* < instead of <=, because (ip+1) */ 394 const size_t hSmall = ZSTD_hashPtr(ip, hBitsS, mls); 395 const U32 matchIndex = hashSmall[hSmall]; 396 const BYTE* const matchBase = matchIndex < prefixStartIndex ? dictBase : base; 397 const BYTE* match = matchBase + matchIndex; 398 399 const size_t hLong = ZSTD_hashPtr(ip, hBitsL, 8); 400 const U32 matchLongIndex = hashLong[hLong]; 401 const BYTE* const matchLongBase = matchLongIndex < prefixStartIndex ? dictBase : base; 402 const BYTE* matchLong = matchLongBase + matchLongIndex; 403 404 const U32 curr = (U32)(ip-base); 405 const U32 repIndex = curr + 1 - offset_1; /* offset_1 expected <= curr +1 */ 406 const BYTE* const repBase = repIndex < prefixStartIndex ? dictBase : base; 407 const BYTE* const repMatch = repBase + repIndex; 408 size_t mLength; 409 hashSmall[hSmall] = hashLong[hLong] = curr; /* update hash table */ 410 411 if ((((U32)((prefixStartIndex-1) - repIndex) >= 3) /* intentional underflow : ensure repIndex doesn't overlap dict + prefix */ 412 & (repIndex > dictStartIndex)) 413 && (MEM_read32(repMatch) == MEM_read32(ip+1)) ) { 414 const BYTE* repMatchEnd = repIndex < prefixStartIndex ? dictEnd : iend; 415 mLength = ZSTD_count_2segments(ip+1+4, repMatch+4, iend, repMatchEnd, prefixStart) + 4; 416 ip++; 417 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor, iend, 0, mLength-MINMATCH); 418 } else { 419 if ((matchLongIndex > dictStartIndex) && (MEM_read64(matchLong) == MEM_read64(ip))) { 420 const BYTE* const matchEnd = matchLongIndex < prefixStartIndex ? dictEnd : iend; 421 const BYTE* const lowMatchPtr = matchLongIndex < prefixStartIndex ? dictStart : prefixStart; 422 U32 offset; 423 mLength = ZSTD_count_2segments(ip+8, matchLong+8, iend, matchEnd, prefixStart) + 8; 424 offset = curr - matchLongIndex; 425 while (((ip>anchor) & (matchLong>lowMatchPtr)) && (ip[-1] == matchLong[-1])) { ip--; matchLong--; mLength++; } /* catch up */ 426 offset_2 = offset_1; 427 offset_1 = offset; 428 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor, iend, offset + ZSTD_REP_MOVE, mLength-MINMATCH); 429 430 } else if ((matchIndex > dictStartIndex) && (MEM_read32(match) == MEM_read32(ip))) { 431 size_t const h3 = ZSTD_hashPtr(ip+1, hBitsL, 8); 432 U32 const matchIndex3 = hashLong[h3]; 433 const BYTE* const match3Base = matchIndex3 < prefixStartIndex ? dictBase : base; 434 const BYTE* match3 = match3Base + matchIndex3; 435 U32 offset; 436 hashLong[h3] = curr + 1; 437 if ( (matchIndex3 > dictStartIndex) && (MEM_read64(match3) == MEM_read64(ip+1)) ) { 438 const BYTE* const matchEnd = matchIndex3 < prefixStartIndex ? dictEnd : iend; 439 const BYTE* const lowMatchPtr = matchIndex3 < prefixStartIndex ? dictStart : prefixStart; 440 mLength = ZSTD_count_2segments(ip+9, match3+8, iend, matchEnd, prefixStart) + 8; 441 ip++; 442 offset = curr+1 - matchIndex3; 443 while (((ip>anchor) & (match3>lowMatchPtr)) && (ip[-1] == match3[-1])) { ip--; match3--; mLength++; } /* catch up */ 444 } else { 445 const BYTE* const matchEnd = matchIndex < prefixStartIndex ? dictEnd : iend; 446 const BYTE* const lowMatchPtr = matchIndex < prefixStartIndex ? dictStart : prefixStart; 447 mLength = ZSTD_count_2segments(ip+4, match+4, iend, matchEnd, prefixStart) + 4; 448 offset = curr - matchIndex; 449 while (((ip>anchor) & (match>lowMatchPtr)) && (ip[-1] == match[-1])) { ip--; match--; mLength++; } /* catch up */ 450 } 451 offset_2 = offset_1; 452 offset_1 = offset; 453 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor, iend, offset + ZSTD_REP_MOVE, mLength-MINMATCH); 454 455 } else { 456 ip += ((ip-anchor) >> kSearchStrength) + 1; 457 continue; 458 } } 459 460 /* move to next sequence start */ 461 ip += mLength; 462 anchor = ip; 463 464 if (ip <= ilimit) { 465 /* Complementary insertion */ 466 /* done after iLimit test, as candidates could be > iend-8 */ 467 { U32 const indexToInsert = curr+2; 468 hashLong[ZSTD_hashPtr(base+indexToInsert, hBitsL, 8)] = indexToInsert; 469 hashLong[ZSTD_hashPtr(ip-2, hBitsL, 8)] = (U32)(ip-2-base); 470 hashSmall[ZSTD_hashPtr(base+indexToInsert, hBitsS, mls)] = indexToInsert; 471 hashSmall[ZSTD_hashPtr(ip-1, hBitsS, mls)] = (U32)(ip-1-base); 472 } 473 474 /* check immediate repcode */ 475 while (ip <= ilimit) { 476 U32 const current2 = (U32)(ip-base); 477 U32 const repIndex2 = current2 - offset_2; 478 const BYTE* repMatch2 = repIndex2 < prefixStartIndex ? dictBase + repIndex2 : base + repIndex2; 479 if ( (((U32)((prefixStartIndex-1) - repIndex2) >= 3) /* intentional overflow : ensure repIndex2 doesn't overlap dict + prefix */ 480 & (repIndex2 > dictStartIndex)) 481 && (MEM_read32(repMatch2) == MEM_read32(ip)) ) { 482 const BYTE* const repEnd2 = repIndex2 < prefixStartIndex ? dictEnd : iend; 483 size_t const repLength2 = ZSTD_count_2segments(ip+4, repMatch2+4, iend, repEnd2, prefixStart) + 4; 484 U32 const tmpOffset = offset_2; offset_2 = offset_1; offset_1 = tmpOffset; /* swap offset_2 <=> offset_1 */ 485 ZSTD_storeSeq(seqStore, 0, anchor, iend, 0, repLength2-MINMATCH); 486 hashSmall[ZSTD_hashPtr(ip, hBitsS, mls)] = current2; 487 hashLong[ZSTD_hashPtr(ip, hBitsL, 8)] = current2; 488 ip += repLength2; 489 anchor = ip; 490 continue; 491 } 492 break; 493 } } } 494 495 /* save reps for next block */ 496 rep[0] = offset_1; 497 rep[1] = offset_2; 498 499 /* Return the last literals size */ 500 return (size_t)(iend - anchor); > 501 } 502 --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --mP3DRpeJDSE+ciuQ Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICAqBh2AAAy5jb25maWcAjFxbd9u2sn7vr9BKX/Z+aOtLoibnLD+AJCih4s0EKMl+4VIc pfWqY2fZ8j67//4MQFKcAYZy2geH3ze4DQaYGRDUzz/9PBOvh6dvu8P93e7h4Z/Zn/vH/fPu sP8y+3r/sP/fWVLOitLMZKLMryCc3T++/ve3vz5enp3NPvx6fvHr2S/Pdxez1f75cf8wi58e v97/+Qrl758ef/r5p7gsUrVo47hdy1qrsmiN3Jqrd678Lw+2rl/+vLub/WsRx/+effr18tez d6iQ0i0QV/8M0GKs6OrTGVRxlM1EsThSRzhLbBVRmoxVADSIXVy+H2vIEHGGurAUuhU6bxel KcdaEKGKTBUSUWWhTd3Epqz1iKr6ut2U9QoQUMvPs4XT8sPsZX94/T4qKqrLlSxa0JPOK1S6 UKaVxboVNfRU5cpcXV6MDeaVyiRoVhs0zjIW2TCgd0elRo2CgWqRGQQuxVq2K1kXMmsXtwo1 jJnsFimASv88ozCIzu5fZo9PBzvAoUwiU9Fkxo0GtT7Ay1KbQuTy6t2/Hp8e9/8+CugbvVYV 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WBGn013GqENGzjQPEwU1T8Jy/qodOKWaeGj5YeqfiYGAb4Iyv0YXgI56OIusaC+V7LtT8v8D SQtehtrBAwA= --mP3DRpeJDSE+ciuQ-- From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============6613137089697586595==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH v10 3/4] lib: zstd: Upgrade to latest upstream zstd version 1.4.10 Date: Tue, 27 Apr 2021 11:57:09 +0800 Message-ID: <202104271134.ylnPFmrH-lkp@intel.com> In-Reply-To: <20210426234621.870684-4-nickrterrell@gmail.com> List-Id: --===============6613137089697586595== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Nick, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on f2fs/dev-test] [also build test WARNING on cryptodev/master crypto/master kdave/for-next k= ees/for-next/pstore linus/master v5.12 next-20210426] [cannot apply to squashfs/master] [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] url: https://github.com/0day-ci/linux/commits/Nick-Terrell/lib-zstd-Add-= kernel-specific-API/20210427-084701 base: https://git.kernel.org/pub/scm/linux/kernel/git/jaegeuk/f2fs.git de= v-test config: h8300-allyesconfig (attached as .config) compiler: h8300-linux-gcc (GCC) 9.3.0 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 # https://github.com/0day-ci/linux/commit/57bb8df6140690eaeb3f03fcd= ab731047c8b823e git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Nick-Terrell/lib-zstd-Add-kernel-s= pecific-API/20210427-084701 git checkout 57bb8df6140690eaeb3f03fcdab731047c8b823e # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = W=3D1 ARCH=3Dh8300 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_do= ubleFast_extDict_generic': >> lib/zstd/compress/zstd_double_fast.c:501:1: warning: the frame size of 1= 256 bytes is larger than 1024 bytes [-Wframe-larger-than=3D] 501 | } | ^ lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_do= ubleFast': lib/zstd/compress/zstd_double_fast.c:336:1: warning: the frame size of 1= 224 bytes is larger than 1024 bytes [-Wframe-larger-than=3D] 336 | } | ^ lib/zstd/compress/zstd_double_fast.c: In function 'ZSTD_compressBlock_do= ubleFast_dictMatchState': lib/zstd/compress/zstd_double_fast.c:356:1: warning: the frame size of 1= 320 bytes is larger than 1024 bytes [-Wframe-larger-than=3D] 356 | } | ^ -- lib/zstd/compress/zstd_fast.c: In function 'ZSTD_compressBlock_fast_extD= ict_generic': >> lib/zstd/compress/zstd_fast.c:476:1: warning: the frame size of 1160 byt= es is larger than 1024 bytes [-Wframe-larger-than=3D] 476 | } | ^ vim +501 lib/zstd/compress/zstd_double_fast.c 357 = 358 = 359 static size_t ZSTD_compressBlock_doubleFast_extDict_generic( 360 ZSTD_matchState_t* ms, seqStore_t* seqStore, U32 rep[ZSTD_RE= P_NUM], 361 void const* src, size_t srcSize, 362 U32 const mls /* template */) 363 { 364 ZSTD_compressionParameters const* cParams =3D &ms->cParams; 365 U32* const hashLong =3D ms->hashTable; 366 U32 const hBitsL =3D cParams->hashLog; 367 U32* const hashSmall =3D ms->chainTable; 368 U32 const hBitsS =3D cParams->chainLog; 369 const BYTE* const istart =3D (const BYTE*)src; 370 const BYTE* ip =3D istart; 371 const BYTE* anchor =3D istart; 372 const BYTE* const iend =3D istart + srcSize; 373 const BYTE* const ilimit =3D iend - 8; 374 const BYTE* const base =3D ms->window.base; 375 const U32 endIndex =3D (U32)((size_t)(istart - base) + srcSize= ); 376 const U32 lowLimit =3D ZSTD_getLowestMatchIndex(ms, endIndex, = cParams->windowLog); 377 const U32 dictStartIndex =3D lowLimit; 378 const U32 dictLimit =3D ms->window.dictLimit; 379 const U32 prefixStartIndex =3D (dictLimit > lowLimit) ? dictLi= mit : lowLimit; 380 const BYTE* const prefixStart =3D base + prefixStartIndex; 381 const BYTE* const dictBase =3D ms->window.dictBase; 382 const BYTE* const dictStart =3D dictBase + dictStartIndex; 383 const BYTE* const dictEnd =3D dictBase + prefixStartIndex; 384 U32 offset_1=3Drep[0], offset_2=3Drep[1]; 385 = 386 DEBUGLOG(5, "ZSTD_compressBlock_doubleFast_extDict_generic (srcS= ize=3D%zu)", srcSize); 387 = 388 /* if extDict is invalidated due to maxDistance, switch to "regu= lar" variant */ 389 if (prefixStartIndex =3D=3D dictStartIndex) 390 return ZSTD_compressBlock_doubleFast_generic(ms, seqStore, r= ep, src, srcSize, mls, ZSTD_noDict); 391 = 392 /* Search Loop */ 393 while (ip < ilimit) { /* < instead of <=3D, because (ip+1) */ 394 const size_t hSmall =3D ZSTD_hashPtr(ip, hBitsS, mls); 395 const U32 matchIndex =3D hashSmall[hSmall]; 396 const BYTE* const matchBase =3D matchIndex < prefixStartInde= x ? dictBase : base; 397 const BYTE* match =3D matchBase + matchIndex; 398 = 399 const size_t hLong =3D ZSTD_hashPtr(ip, hBitsL, 8); 400 const U32 matchLongIndex =3D hashLong[hLong]; 401 const BYTE* const matchLongBase =3D matchLongIndex < prefixS= tartIndex ? dictBase : base; 402 const BYTE* matchLong =3D matchLongBase + matchLongIndex; 403 = 404 const U32 curr =3D (U32)(ip-base); 405 const U32 repIndex =3D curr + 1 - offset_1; /* offset_1 ex= pected <=3D curr +1 */ 406 const BYTE* const repBase =3D repIndex < prefixStartIndex ? = dictBase : base; 407 const BYTE* const repMatch =3D repBase + repIndex; 408 size_t mLength; 409 hashSmall[hSmall] =3D hashLong[hLong] =3D curr; /* update = hash table */ 410 = 411 if ((((U32)((prefixStartIndex-1) - repIndex) >=3D 3) /* inte= ntional underflow : ensure repIndex doesn't overlap dict + prefix */ 412 & (repIndex > dictStartIndex)) 413 && (MEM_read32(repMatch) =3D=3D MEM_read32(ip+1)) ) { 414 const BYTE* repMatchEnd =3D repIndex < prefixStartIndex = ? dictEnd : iend; 415 mLength =3D ZSTD_count_2segments(ip+1+4, repMatch+4, ien= d, repMatchEnd, prefixStart) + 4; 416 ip++; 417 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor, ien= d, 0, mLength-MINMATCH); 418 } else { 419 if ((matchLongIndex > dictStartIndex) && (MEM_read64(mat= chLong) =3D=3D MEM_read64(ip))) { 420 const BYTE* const matchEnd =3D matchLongIndex < pref= ixStartIndex ? dictEnd : iend; 421 const BYTE* const lowMatchPtr =3D matchLongIndex < p= refixStartIndex ? dictStart : prefixStart; 422 U32 offset; 423 mLength =3D ZSTD_count_2segments(ip+8, matchLong+8, = iend, matchEnd, prefixStart) + 8; 424 offset =3D curr - matchLongIndex; 425 while (((ip>anchor) & (matchLong>lowMatchPtr)) && (i= p[-1] =3D=3D matchLong[-1])) { ip--; matchLong--; mLength++; } /* catch u= p */ 426 offset_2 =3D offset_1; 427 offset_1 =3D offset; 428 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor,= iend, offset + ZSTD_REP_MOVE, mLength-MINMATCH); 429 = 430 } else if ((matchIndex > dictStartIndex) && (MEM_read32(= match) =3D=3D MEM_read32(ip))) { 431 size_t const h3 =3D ZSTD_hashPtr(ip+1, hBitsL, 8); 432 U32 const matchIndex3 =3D hashLong[h3]; 433 const BYTE* const match3Base =3D matchIndex3 < prefi= xStartIndex ? dictBase : base; 434 const BYTE* match3 =3D match3Base + matchIndex3; 435 U32 offset; 436 hashLong[h3] =3D curr + 1; 437 if ( (matchIndex3 > dictStartIndex) && (MEM_read64(m= atch3) =3D=3D MEM_read64(ip+1)) ) { 438 const BYTE* const matchEnd =3D matchIndex3 < pre= fixStartIndex ? dictEnd : iend; 439 const BYTE* const lowMatchPtr =3D matchIndex3 < = prefixStartIndex ? dictStart : prefixStart; 440 mLength =3D ZSTD_count_2segments(ip+9, match3+8,= iend, matchEnd, prefixStart) + 8; 441 ip++; 442 offset =3D curr+1 - matchIndex3; 443 while (((ip>anchor) & (match3>lowMatchPtr)) && (= ip[-1] =3D=3D match3[-1])) { ip--; match3--; mLength++; } /* catch up */ 444 } else { 445 const BYTE* const matchEnd =3D matchIndex < pref= ixStartIndex ? dictEnd : iend; 446 const BYTE* const lowMatchPtr =3D matchIndex < p= refixStartIndex ? dictStart : prefixStart; 447 mLength =3D ZSTD_count_2segments(ip+4, match+4, = iend, matchEnd, prefixStart) + 4; 448 offset =3D curr - matchIndex; 449 while (((ip>anchor) & (match>lowMatchPtr)) && (i= p[-1] =3D=3D match[-1])) { ip--; match--; mLength++; } /* catch up */ 450 } 451 offset_2 =3D offset_1; 452 offset_1 =3D offset; 453 ZSTD_storeSeq(seqStore, (size_t)(ip-anchor), anchor,= iend, offset + ZSTD_REP_MOVE, mLength-MINMATCH); 454 = 455 } else { 456 ip +=3D ((ip-anchor) >> kSearchStrength) + 1; 457 continue; 458 } } 459 = 460 /* move to next sequence start */ 461 ip +=3D mLength; 462 anchor =3D ip; 463 = 464 if (ip <=3D ilimit) { 465 /* Complementary insertion */ 466 /* done after iLimit test, as candidates could be > iend= -8 */ 467 { U32 const indexToInsert =3D curr+2; 468 hashLong[ZSTD_hashPtr(base+indexToInsert, hBitsL, 8)= ] =3D indexToInsert; 469 hashLong[ZSTD_hashPtr(ip-2, hBitsL, 8)] =3D (U32)(ip= -2-base); 470 hashSmall[ZSTD_hashPtr(base+indexToInsert, hBitsS, m= ls)] =3D indexToInsert; 471 hashSmall[ZSTD_hashPtr(ip-1, hBitsS, mls)] =3D (U32)= (ip-1-base); 472 } 473 = 474 /* check immediate repcode */ 475 while (ip <=3D ilimit) { 476 U32 const current2 =3D (U32)(ip-base); 477 U32 const repIndex2 =3D current2 - offset_2; 478 const BYTE* repMatch2 =3D repIndex2 < prefixStartInd= ex ? dictBase + repIndex2 : base + repIndex2; 479 if ( (((U32)((prefixStartIndex-1) - repIndex2) >=3D = 3) /* intentional overflow : ensure repIndex2 doesn't overlap dict + pref= ix */ 480 & (repIndex2 > dictStartIndex)) 481 && (MEM_read32(repMatch2) =3D=3D MEM_read32(ip)) )= { 482 const BYTE* const repEnd2 =3D repIndex2 < prefix= StartIndex ? dictEnd : iend; 483 size_t const repLength2 =3D ZSTD_count_2segments= (ip+4, repMatch2+4, iend, repEnd2, prefixStart) + 4; 484 U32 const tmpOffset =3D offset_2; offset_2 =3D o= ffset_1; offset_1 =3D tmpOffset; /* swap offset_2 <=3D> offset_1 */ 485 ZSTD_storeSeq(seqStore, 0, anchor, iend, 0, repL= ength2-MINMATCH); 486 hashSmall[ZSTD_hashPtr(ip, hBitsS, mls)] =3D cur= rent2; 487 hashLong[ZSTD_hashPtr(ip, hBitsL, 8)] =3D curren= t2; 488 ip +=3D repLength2; 489 anchor =3D ip; 490 continue; 491 } 492 break; 493 } } } 494 = 495 /* save reps for next block */ 496 rep[0] =3D offset_1; 497 rep[1] =3D offset_2; 498 = 499 /* Return the last literals size */ 500 return (size_t)(iend - anchor); > 501 } 502 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============6613137089697586595== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICAqBh2AAAy5jb25maWcAjFxbd9u2sn7vr9BKX/Z+aOtLoibnLD+AJCih4s0EKMl+4VIcpfWq 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