From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5832911715800434636==" MIME-Version: 1.0 From: kernel test robot Subject: Re: [PATCH v33 01/12] Linux Random Number Generator Date: Sun, 23 Aug 2020 09:24:35 +0800 Message-ID: <202008230905.2ifTYxkZ%lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============5832911715800434636== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org In-Reply-To: <7836152.NyiUUSuA9g@positron.chronox.de> References: <7836152.NyiUUSuA9g@positron.chronox.de> TO: "Stephan M=C3=BCller" TO: Arnd Bergmann CC: "Greg Kroah-Hartman" CC: linux-crypto(a)vger.kernel.org CC: LKML CC: linux-api(a)vger.kernel.org CC: "Eric W. Biederman" CC: "Alexander E. Patrakov" CC: "Ahmed S. Darwish" CC: "Theodore Y. Ts'o" CC: Willy Tarreau Hi "Stephan, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on char-misc/char-misc-testing] [also build test WARNING on cryptodev/master crypto/master v5.9-rc1 next-20= 200821] [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/Stephan-M-ller/dev-random-= a-new-approach-with-full-SP800-90B-compliance/20200821-140523 base: https://git.kernel.org/pub/scm/linux/kernel/git/gregkh/char-misc.gi= t d162219c655c8cf8003128a13840d6c1e183fb80 :::::: branch date: 2 days ago :::::: commit date: 2 days ago config: arm64-randconfig-s031-20200821 (attached as .config) compiler: aarch64-linux-gcc (GCC) 9.3.0 reproduce: wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # apt-get install sparse # sparse version: v0.6.2-191-g10164920-dirty # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dgcc-9.3.0 make.cross = C=3D1 CF=3D'-fdiagnostic-prefix -D__CHECK_ENDIAN__' ARCH=3Darm64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot sparse warnings: (new ones prefixed by >>) drivers/char/lrng/lrng_drng.c:381:6: sparse: sparse: symbol 'lrng_reset'= was not declared. Should it be static? >> drivers/char/lrng/lrng_drng.c:81:13: sparse: sparse: context imbalance i= n 'lrng_drngs_init_cc20' - different lock contexts for basic block >> drivers/char/lrng/lrng_drng.c:113:13: sparse: sparse: context imbalance = in 'lrng_drng_inject' - different lock contexts for basic block >> drivers/char/lrng/lrng_drng.c:161:25: sparse: sparse: context imbalance = in 'lrng_drng_seed' - different lock contexts for basic block >> drivers/char/lrng/lrng_drng.c:318:33: sparse: sparse: context imbalance = in 'lrng_drng_get' - different lock contexts for basic block >> drivers/char/lrng/lrng_drng.c:373:9: sparse: sparse: context imbalance i= n '_lrng_reset' - different lock contexts for basic block >> drivers/char/lrng/lrng_drng.c:388:13: sparse: sparse: context imbalance = in 'lrng_drng_init_early' - different lock contexts for basic block -- >> drivers/char/lrng/lrng_chacha20.c:54:47: sparse: sparse: cast to restric= ted __le32 drivers/char/lrng/lrng_chacha20.c:58:47: sparse: sparse: cast to restric= ted __le32 -- >> drivers/char/lrng/lrng_interfaces.c:482:16: sparse: sparse: incorrect ty= pe in return expression (different base types) @@ expected unsigned int= @@ got restricted __poll_t [assigned] [usertype] mask @@ >> drivers/char/lrng/lrng_interfaces.c:482:16: sparse: expected unsigne= d int >> drivers/char/lrng/lrng_interfaces.c:482:16: sparse: got restricted _= _poll_t [assigned] [usertype] mask >> drivers/char/lrng/lrng_interfaces.c:612:18: sparse: sparse: incorrect ty= pe in initializer (different base types) @@ expected restricted __poll_= t ( *poll )( ... ) @@ got unsigned int ( * )( ... ) @@ >> drivers/char/lrng/lrng_interfaces.c:612:18: sparse: expected restric= ted __poll_t ( *poll )( ... ) >> drivers/char/lrng/lrng_interfaces.c:612:18: sparse: got unsigned int= ( * )( ... ) # https://github.com/0day-ci/linux/commit/95481f9aadd4408e56c65cd95e47b9292= 24fbc28 git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Stephan-M-ller/dev-random-a-new-approach-w= ith-full-SP800-90B-compliance/20200821-140523 git checkout 95481f9aadd4408e56c65cd95e47b929224fbc28 vim +/lrng_drngs_init_cc20 +81 drivers/char/lrng/lrng_drng.c 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 79 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 80 /* Initialize the defau= lt DRNG during boot */ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 @81 static void lrng_drngs_= init_cc20(void) 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 82 { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 83 unsigned long flags = =3D 0; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 84 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 85 if (lrng_get_available= ()) 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 86 return; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 87 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 88 lrng_drng_lock(&lrng_d= rng_init, &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 89 if (lrng_get_available= ()) { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 90 lrng_drng_unlock(&lrn= g_drng_init, &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 91 return; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 92 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 93 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 94 lrng_drng_reset(&lrng_= drng_init); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 95 lrng_cc20_init_state(&= chacha20); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 96 lrng_state_init_seed_w= ork(); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 97 lrng_drng_unlock(&lrng= _drng_init, &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 98 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 99 lrng_drng_lock(&lrng_d= rng_atomic, &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 100 lrng_drng_reset(&lrng_= drng_atomic); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 101 /* 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 102 * We do not initializ= e the state of the atomic DRNG as it is identical 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 103 * to the DRNG at this= point. 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 104 */ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 105 lrng_drng_unlock(&lrng= _drng_atomic, &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 106 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 107 lrng_set_available(); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 108 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 109 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 110 /**********************= *** Random Number Generation ***************************/ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 111 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 112 /* Inject a data buffer= into the DRNG */ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 @113 static void lrng_drng_i= nject(struct lrng_drng *drng, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 114 const u8 *inbuf= , u32 inbuflen) 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 115 { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 116 const char *drng_type = =3D unlikely(drng =3D=3D &lrng_drng_atomic) ? 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 117 "atomic" : "regular= "; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 118 unsigned long flags = =3D 0; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 119 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 120 BUILD_BUG_ON(LRNG_DRNG= _RESEED_THRESH > INT_MAX); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 121 pr_debug("seeding %s D= RNG with %u bytes\n", drng_type, inbuflen); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 122 lrng_drng_lock(drng, &= flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 123 if (drng->crypto_cb->l= rng_drng_seed_helper(drng->drng, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 124 inbuf, inbufl= en) < 0) { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 125 pr_warn("seeding of %= s DRNG failed\n", drng_type); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 126 atomic_set(&drng->req= uests, 1); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 127 } else { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 128 pr_debug("%s DRNG sta= ts since last seeding: %lu secs; generate calls: %d\n", 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 129 drng_type, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 130 (time_after(jiffies= , drng->last_seeded) ? 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 131 (jiffies - drng->l= ast_seeded) : 0) / HZ, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 132 (LRNG_DRNG_RESEED_T= HRESH - 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 133 atomic_read(&drng-= >requests))); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 134 drng->last_seeded =3D= jiffies; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 135 atomic_set(&drng->req= uests, LRNG_DRNG_RESEED_THRESH); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 136 drng->force_reseed = =3D false; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 137 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 138 if (drng->drng =3D=3D= lrng_drng_atomic.drng) { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 139 lrng_drng_atomic.las= t_seeded =3D jiffies; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 140 atomic_set(&lrng_drn= g_atomic.requests, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 141 LRNG_DRNG_RESEED= _THRESH); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 142 lrng_drng_atomic.for= ce_reseed =3D false; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 143 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 144 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 145 lrng_drng_unlock(drng,= &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 146 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 147 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 148 /* 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 149 * Perform the seeding = of the DRNG with data from noise source 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 150 */ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 151 static inline int _lrng= _drng_seed(struct lrng_drng *drng) 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 152 { 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 153 struct entropy_buf see= dbuf __aligned(LRNG_KCAPI_ALIGN); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 154 unsigned long flags = =3D 0; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 155 u32 total_entropy_bits; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 156 int ret; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 157 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 158 lrng_drng_lock(drng, &= flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 159 total_entropy_bits =3D= lrng_fill_seed_buffer(drng->crypto_cb, drng->hash, 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 160 &seedbuf, 0); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 @161 lrng_drng_unlock(drng,= &flags); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 162 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 163 /* Allow the seeding o= peration to be called again */ 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 164 lrng_pool_unlock(); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 165 lrng_init_ops(total_en= tropy_bits); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 166 ret =3D total_entropy_= bits >> 3; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 167 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 168 lrng_drng_inject(drng,= (u8 *)&seedbuf, sizeof(seedbuf)); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 169 memzero_explicit(&seed= buf, sizeof(seedbuf)); 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 170 = 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 171 return ret; 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 172 } 95481f9aadd440 Stephan M=C3=BCller 2020-08-21 173 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============5832911715800434636== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" 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