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=-7.4 required=3.0 tests=HEADER_FROM_DIFFERENT_DOMAINS, MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING,SPF_PASS,T_MIXED_ES,URIBL_BLOCKED, USER_AGENT_MUTT 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 4FD85C65BAE for ; Thu, 13 Dec 2018 06:18:42 +0000 (UTC) Received: from vger.kernel.org (vger.kernel.org [209.132.180.67]) by mail.kernel.org (Postfix) with ESMTP id E0AFA20672 for ; Thu, 13 Dec 2018 06:18:41 +0000 (UTC) DMARC-Filter: OpenDMARC Filter v1.3.2 mail.kernel.org E0AFA20672 Authentication-Results: mail.kernel.org; dmarc=fail (p=none dis=none) header.from=intel.com Authentication-Results: mail.kernel.org; spf=none smtp.mailfrom=linux-mips-owner@vger.kernel.org Received: (majordomo@vger.kernel.org) by vger.kernel.org via listexpand id S1727011AbeLMGSl (ORCPT ); Thu, 13 Dec 2018 01:18:41 -0500 Received: from mga01.intel.com ([192.55.52.88]:17948 "EHLO mga01.intel.com" rhost-flags-OK-OK-OK-OK) by vger.kernel.org with ESMTP id S1726919AbeLMGSl (ORCPT ); Thu, 13 Dec 2018 01:18:41 -0500 X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False Received: from orsmga001.jf.intel.com ([10.7.209.18]) by fmsmga101.fm.intel.com with ESMTP/TLS/DHE-RSA-AES256-GCM-SHA384; 12 Dec 2018 22:18:39 -0800 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.56,347,1539673200"; d="gz'50?scan'50,208,50";a="118412740" Received: from lkp-server01.sh.intel.com (HELO lkp-server01) ([10.239.97.150]) by orsmga001.jf.intel.com with ESMTP; 12 Dec 2018 22:18:30 -0800 Received: from kbuild by lkp-server01 with local (Exim 4.89) (envelope-from ) id 1gXKKL-0002vo-FL; Thu, 13 Dec 2018 14:18:29 +0800 Date: Thu, 13 Dec 2018 14:17:57 +0800 From: kbuild test robot To: Rafael David Tinoco Cc: kbuild-all@01.org, Russell King , Catalin Marinas , Will Deacon , Tony Luck , Fenghua Yu , Ralf Baechle , Paul Burton , James Hogan , Benjamin Herrenschmidt , Paul Mackerras , Michael Ellerman , Martin Schwidefsky , Heiko Carstens , Yoshinori Sato , Rich Felker , "David S . Miller" , Thomas Gleixner , Ingo Molnar , Borislav Petkov , "H . Peter Anvin" , x86@kernel.org, Minchan Kim , Nitin Gupta , Sergey Senozhatsky , Rafael David Tinoco , Christophe Leroy , "Aneesh Kumar K . V" , Ram Pai , Nicholas Piggin , Vasily Gorbik , Anthony Yznaga , Khalid Aziz , Joerg Roedel , Juergen Gross , "Kirill A . Shutemov" , Andy Lutomirski , Jiri Kosina , linux-arm-kernel@lists.infradead.org, linux-kernel@vger.kernel.org, linux-ia64@vger.kernel.org, linux-mips@vger.kernel.org, linuxppc-dev@lists.ozlabs.org, linux-s390@vger.kernel.org, linux-sh@vger.kernel.org, sparclinux@vger.kernel.org, linux-mm@kvack.org Subject: Re: [PATCH] mm/zsmalloc.c: Fix zsmalloc 32-bit PAE support Message-ID: <201812131411.idLMWrbq%fengguang.wu@intel.com> References: <20181210142105.6750-1-rafael.tinoco@linaro.org> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="mP3DRpeJDSE+ciuQ" Content-Disposition: inline In-Reply-To: <20181210142105.6750-1-rafael.tinoco@linaro.org> User-Agent: Mutt/1.5.23 (2014-03-12) Sender: linux-mips-owner@vger.kernel.org Precedence: bulk List-ID: X-Mailing-List: linux-mips@vger.kernel.org --mP3DRpeJDSE+ciuQ Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Rafael, Thank you for the patch! Yet something to improve: [auto build test ERROR on linus/master] [also build test ERROR on v4.20-rc6 next-20181212] [if your patch is applied to the wrong git tree, please drop us a note to help improve the system] url: https://github.com/0day-ci/linux/commits/Rafael-David-Tinoco/mm-zsmalloc-c-Fix-zsmalloc-32-bit-PAE-support/20181211-020704 config: mips-allmodconfig (attached as .config) compiler: mips-linux-gnu-gcc (Debian 7.2.0-11) 7.2.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # save the attached .config to linux build tree GCC_VERSION=7.2.0 make.cross ARCH=mips All error/warnings (new ones prefixed by >>): >> mm/zsmalloc.c:116:5: error: #error "MAX_POSSIBLE_PHYSMEM_BITS is wrong for this arch"; #error "MAX_POSSIBLE_PHYSMEM_BITS is wrong for this arch"; ^~~~~ In file included from include/linux/cache.h:5:0, from arch/mips/include/asm/cpu-info.h:15, from arch/mips/include/asm/cpu-features.h:13, from arch/mips/include/asm/bitops.h:21, from include/linux/bitops.h:19, from include/linux/kernel.h:11, from include/linux/list.h:9, from include/linux/module.h:9, from mm/zsmalloc.c:33: >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/uapi/linux/kernel.h:13:40: note: in definition of macro '__KERNEL_DIV_ROUND_UP' #define __KERNEL_DIV_ROUND_UP(n, d) (((n) + (d) - 1) / (d)) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ >> mm/zsmalloc.c:151:59: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' #define ZS_SIZE_CLASSES (DIV_ROUND_UP(ZS_MAX_ALLOC_SIZE - ZS_MIN_ALLOC_SIZE, \ ^~~~~~~~~~~~~~~~~ >> mm/zsmalloc.c:256:32: note: in expansion of macro 'ZS_SIZE_CLASSES' struct size_class *size_class[ZS_SIZE_CLASSES]; ^~~~~~~~~~~~~~~ >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/uapi/linux/kernel.h:13:40: note: in definition of macro '__KERNEL_DIV_ROUND_UP' #define __KERNEL_DIV_ROUND_UP(n, d) (((n) + (d) - 1) / (d)) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ >> mm/zsmalloc.c:151:59: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' #define ZS_SIZE_CLASSES (DIV_ROUND_UP(ZS_MAX_ALLOC_SIZE - ZS_MIN_ALLOC_SIZE, \ ^~~~~~~~~~~~~~~~~ >> mm/zsmalloc.c:256:32: note: in expansion of macro 'ZS_SIZE_CLASSES' struct size_class *size_class[ZS_SIZE_CLASSES]; ^~~~~~~~~~~~~~~ >> mm/zsmalloc.c:256:21: error: variably modified 'size_class' at file scope struct size_class *size_class[ZS_SIZE_CLASSES]; ^~~~~~~~~~ In file included from include/linux/kernel.h:10:0, from include/linux/list.h:9, from include/linux/module.h:9, from mm/zsmalloc.c:33: mm/zsmalloc.c: In function 'get_size_class_index': >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/linux/compiler.h:76:40: note: in definition of macro 'likely' # define likely(x) __builtin_expect(!!(x), 1) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ mm/zsmalloc.c:543:20: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' if (likely(size > ZS_MIN_ALLOC_SIZE)) ^~~~~~~~~~~~~~~~~ >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/linux/compiler.h:76:40: note: in definition of macro 'likely' # define likely(x) __builtin_expect(!!(x), 1) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ mm/zsmalloc.c:543:20: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' if (likely(size > ZS_MIN_ALLOC_SIZE)) ^~~~~~~~~~~~~~~~~ In file included from include/linux/cache.h:5:0, from arch/mips/include/asm/cpu-info.h:15, from arch/mips/include/asm/cpu-features.h:13, from arch/mips/include/asm/bitops.h:21, from include/linux/bitops.h:19, from include/linux/kernel.h:11, from include/linux/list.h:9, from include/linux/module.h:9, from mm/zsmalloc.c:33: >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/uapi/linux/kernel.h:13:40: note: in definition of macro '__KERNEL_DIV_ROUND_UP' #define __KERNEL_DIV_ROUND_UP(n, d) (((n) + (d) - 1) / (d)) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ mm/zsmalloc.c:544:29: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' idx = DIV_ROUND_UP(size - ZS_MIN_ALLOC_SIZE, ^~~~~~~~~~~~~~~~~ >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/uapi/linux/kernel.h:13:40: note: in definition of macro '__KERNEL_DIV_ROUND_UP' #define __KERNEL_DIV_ROUND_UP(n, d) (((n) + (d) - 1) / (d)) ^ >> mm/zsmalloc.c:133:2: note: in expansion of macro 'MAX' MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^~~ mm/zsmalloc.c:544:29: note: in expansion of macro 'ZS_MIN_ALLOC_SIZE' idx = DIV_ROUND_UP(size - ZS_MIN_ALLOC_SIZE, ^~~~~~~~~~~~~~~~~ In file included from include/linux/list.h:9:0, from include/linux/module.h:9, from mm/zsmalloc.c:33: >> mm/zsmalloc.c:133:49: warning: right shift count is negative [-Wshift-count-negative] MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) ^ include/linux/kernel.h:861:27: note: in definition of macro '__cmp' #define __cmp(x, y, op) ((x) op (y) ? (x) : (y)) ^ include/linux/kernel.h:937:27: note: in expansion of macro '__careful_cmp' #define min_t(type, x, y) __careful_cmp((type)(x), (type)(y), <) ^~~~~~~~~~~~~ >> mm/zsmalloc.c:547:9: note: in expansion of macro 'min_t' return min_t(int, ZS_SIZE_CLASSES - 1, idx); ^~~~~ vim +116 mm/zsmalloc.c 32 > 33 #include 34 #include 35 #include 36 #include 37 #include 38 #include 39 #include 40 #include 41 #include 42 #include 43 #include 44 #include 45 #include 46 #include 47 #include 48 #include 49 #include 50 #include 51 #include 52 #include 53 #include 54 #include 55 #include 56 #include 57 #include 58 59 #define ZSPAGE_MAGIC 0x58 60 61 /* 62 * This must be power of 2 and greater than of equal to sizeof(link_free). 63 * These two conditions ensure that any 'struct link_free' itself doesn't 64 * span more than 1 page which avoids complex case of mapping 2 pages simply 65 * to restore link_free pointer values. 66 */ 67 #define ZS_ALIGN 8 68 69 /* 70 * A single 'zspage' is composed of up to 2^N discontiguous 0-order (single) 71 * pages. ZS_MAX_ZSPAGE_ORDER defines upper limit on N. 72 */ 73 #define ZS_MAX_ZSPAGE_ORDER 2 74 #define ZS_MAX_PAGES_PER_ZSPAGE (_AC(1, UL) << ZS_MAX_ZSPAGE_ORDER) 75 76 #define ZS_HANDLE_SIZE (sizeof(unsigned long)) 77 78 /* 79 * Object location (, ) is encoded as 80 * as single (unsigned long) handle value. 81 * 82 * Note that object index starts from 0. 83 */ 84 85 /* 86 * Memory for allocating for handle keeps object position by 87 * encoding and the encoded value has a room 88 * in least bit(ie, look at obj_to_location). 89 * We use the bit to synchronize between object access by 90 * user and migration. 91 */ 92 #define HANDLE_PIN_BIT 0 93 94 /* 95 * Head in allocated object should have OBJ_ALLOCATED_TAG 96 * to identify the object was allocated or not. 97 * It's okay to add the status bit in the least bit because 98 * header keeps handle which is 4byte-aligned address so we 99 * have room for two bit at least. 100 */ 101 #define OBJ_ALLOCATED_TAG 1 102 #define OBJ_TAG_BITS 1 103 104 /* 105 * MAX_POSSIBLE_PHYSMEM_BITS should be defined by all archs using zsmalloc: 106 * Trying to guess it from MAX_PHYSMEM_BITS, or considering it BITS_PER_LONG, 107 * proved to be wrong by not considering PAE capabilities, or using SPARSEMEM 108 * only headers, leading to bad object encoding due to object index overflow. 109 */ 110 #ifndef MAX_POSSIBLE_PHYSMEM_BITS 111 #define MAX_POSSIBLE_PHYSMEM_BITS BITS_PER_LONG 112 #error "MAX_POSSIBLE_PHYSMEM_BITS HAS to be defined by arch using zsmalloc"; 113 #else 114 #ifndef CONFIG_64BIT 115 #if (MAX_POSSIBLE_PHYSMEM_BITS >= (BITS_PER_LONG + PAGE_SHIFT - OBJ_TAG_BITS)) > 116 #error "MAX_POSSIBLE_PHYSMEM_BITS is wrong for this arch"; 117 #endif 118 #endif 119 #endif 120 121 #define _PFN_BITS (MAX_POSSIBLE_PHYSMEM_BITS - PAGE_SHIFT) 122 #define OBJ_INDEX_BITS (BITS_PER_LONG - _PFN_BITS - OBJ_TAG_BITS) > 123 #define OBJ_INDEX_MASK ((_AC(1, UL) << OBJ_INDEX_BITS) - 1) 124 125 #define FULLNESS_BITS 2 126 #define CLASS_BITS 8 127 #define ISOLATED_BITS 3 128 #define MAGIC_VAL_BITS 8 129 130 #define MAX(a, b) ((a) >= (b) ? (a) : (b)) 131 /* ZS_MIN_ALLOC_SIZE must be multiple of ZS_ALIGN */ 132 #define ZS_MIN_ALLOC_SIZE \ > 133 MAX(32, (ZS_MAX_PAGES_PER_ZSPAGE << PAGE_SHIFT >> OBJ_INDEX_BITS)) 134 /* each chunk includes extra space to keep handle */ 135 #define ZS_MAX_ALLOC_SIZE PAGE_SIZE 136 137 /* 138 * On systems with 4K page size, this gives 255 size classes! There is a 139 * trader-off here: 140 * - Large number of size classes is potentially wasteful as free page are 141 * spread across these classes 142 * - Small number of size classes causes large internal fragmentation 143 * - Probably its better to use specific size classes (empirically 144 * determined). NOTE: all those class sizes must be set as multiple of 145 * ZS_ALIGN to make sure link_free itself never has to span 2 pages. 146 * 147 * ZS_MIN_ALLOC_SIZE and ZS_SIZE_CLASS_DELTA must be multiple of ZS_ALIGN 148 * (reason above) 149 */ 150 #define ZS_SIZE_CLASS_DELTA (PAGE_SIZE >> CLASS_BITS) > 151 #define ZS_SIZE_CLASSES (DIV_ROUND_UP(ZS_MAX_ALLOC_SIZE - ZS_MIN_ALLOC_SIZE, \ 152 ZS_SIZE_CLASS_DELTA) + 1) 153 154 enum fullness_group { 155 ZS_EMPTY, 156 ZS_ALMOST_EMPTY, 157 ZS_ALMOST_FULL, 158 ZS_FULL, 159 NR_ZS_FULLNESS, 160 }; 161 162 enum zs_stat_type { 163 CLASS_EMPTY, 164 CLASS_ALMOST_EMPTY, 165 CLASS_ALMOST_FULL, 166 CLASS_FULL, 167 OBJ_ALLOCATED, 168 OBJ_USED, 169 NR_ZS_STAT_TYPE, 170 }; 171 172 struct zs_size_stat { 173 unsigned long objs[NR_ZS_STAT_TYPE]; 174 }; 175 176 #ifdef CONFIG_ZSMALLOC_STAT 177 static struct dentry *zs_stat_root; 178 #endif 179 180 #ifdef CONFIG_COMPACTION 181 static struct vfsmount *zsmalloc_mnt; 182 #endif 183 184 /* 185 * We assign a page to ZS_ALMOST_EMPTY fullness group when: 186 * n <= N / f, where 187 * n = number of allocated objects 188 * N = total number of objects zspage can store 189 * f = fullness_threshold_frac 190 * 191 * Similarly, we assign zspage to: 192 * ZS_ALMOST_FULL when n > N / f 193 * ZS_EMPTY when n == 0 194 * ZS_FULL when n == N 195 * 196 * (see: fix_fullness_group()) 197 */ 198 static const int fullness_threshold_frac = 4; 199 static size_t huge_class_size; 200 201 struct size_class { 202 spinlock_t lock; 203 struct list_head fullness_list[NR_ZS_FULLNESS]; 204 /* 205 * Size of objects stored in this class. Must be multiple 206 * of ZS_ALIGN. 207 */ 208 int size; 209 int objs_per_zspage; 210 /* Number of PAGE_SIZE sized pages to combine to form a 'zspage' */ 211 int pages_per_zspage; 212 213 unsigned int index; 214 struct zs_size_stat stats; 215 }; 216 217 /* huge object: pages_per_zspage == 1 && maxobj_per_zspage == 1 */ 218 static void SetPageHugeObject(struct page *page) 219 { 220 SetPageOwnerPriv1(page); 221 } 222 223 static void ClearPageHugeObject(struct page *page) 224 { 225 ClearPageOwnerPriv1(page); 226 } 227 228 static int PageHugeObject(struct page *page) 229 { 230 return PageOwnerPriv1(page); 231 } 232 233 /* 234 * Placed within free objects to form a singly linked list. 235 * For every zspage, zspage->freeobj gives head of this list. 236 * 237 * This must be power of 2 and less than or equal to ZS_ALIGN 238 */ 239 struct link_free { 240 union { 241 /* 242 * Free object index; 243 * It's valid for non-allocated object 244 */ 245 unsigned long next; 246 /* 247 * Handle of allocated object. 248 */ 249 unsigned long handle; 250 }; 251 }; 252 253 struct zs_pool { 254 const char *name; 255 > 256 struct size_class *size_class[ZS_SIZE_CLASSES]; 257 struct kmem_cache *handle_cachep; 258 struct kmem_cache *zspage_cachep; 259 260 atomic_long_t pages_allocated; 261 262 struct zs_pool_stats stats; 263 264 /* Compact classes */ 265 struct shrinker shrinker; 266 --- 0-DAY kernel test infrastructure Open Source Technology Center https://lists.01.org/pipermail/kbuild-all Intel Corporation --mP3DRpeJDSE+ciuQ Content-Type: application/gzip Content-Disposition: attachment; filename=".config.gz" Content-Transfer-Encoding: base64 H4sICPTrEVwAAy5jb25maWcAjDxrc9u2st/7KzTph9vOOWlt2XGSe8cfQBCUUJEEA0AP+wtG tZXEU1v2yMpp8+/vLvgCQFA5mUxs7i7e+8YiP//084R8Oz4/bY8Pd9vHx++TL7v97rA97u4n nx8ed/83ScWkFHrCUq5/A+L8Yf/tn9+fHl5eJ5e/Tc9+O3t7uLuaLHaH/e5xQp/3nx++fIPm D8/7n37+Cf7+DMCnF+jp8L8TbPX2ETt4+2X/7e2Xu7vJL+nuz4ftfvL+tyl0dX7+a/0bNKSi 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