From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============0319546209091717270==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/crypto/allwinner/sun8i-ce/sun8i-ce-hash.c:412 sun8i_ce_hash_run() warn: possible memory leak of 'result' Date: Tue, 10 Nov 2020 08:22:41 +0800 Message-ID: <202011100828.ppsGj0dD-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============0319546209091717270== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Corentin Labbe CC: Herbert Xu tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: 407ab579637ced6dc32cfb2295afb7259cca4b22 commit: 56f6d5aee88d129b2424902cd630f10794550763 crypto: sun8i-ce - support= hash algorithms date: 7 weeks ago :::::: branch date: 2 hours ago :::::: commit date: 7 weeks ago config: x86_64-randconfig-m001-20201109 (attached as .config) compiler: gcc-9 (Debian 9.3.0-15) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter smatch warnings: drivers/crypto/allwinner/sun8i-ce/sun8i-ce-hash.c:412 sun8i_ce_hash_run() w= arn: possible memory leak of 'result' vim +/result +412 drivers/crypto/allwinner/sun8i-ce/sun8i-ce-hash.c 56f6d5aee88d129 Corentin Labbe 2020-09-18 248 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 249 int sun8i_ce_hash_run(struc= t crypto_engine *engine, void *breq) 56f6d5aee88d129 Corentin Labbe 2020-09-18 250 { 56f6d5aee88d129 Corentin Labbe 2020-09-18 251 struct ahash_request *areq= =3D container_of(breq, struct ahash_request, base); 56f6d5aee88d129 Corentin Labbe 2020-09-18 252 struct crypto_ahash *tfm = =3D crypto_ahash_reqtfm(areq); 56f6d5aee88d129 Corentin Labbe 2020-09-18 253 struct ahash_alg *alg =3D = __crypto_ahash_alg(tfm->base.__crt_alg); 56f6d5aee88d129 Corentin Labbe 2020-09-18 254 struct sun8i_ce_hash_reqct= x *rctx =3D ahash_request_ctx(areq); 56f6d5aee88d129 Corentin Labbe 2020-09-18 255 struct sun8i_ce_alg_templa= te *algt; 56f6d5aee88d129 Corentin Labbe 2020-09-18 256 struct sun8i_ce_dev *ce; 56f6d5aee88d129 Corentin Labbe 2020-09-18 257 struct sun8i_ce_flow *chan; 56f6d5aee88d129 Corentin Labbe 2020-09-18 258 struct ce_task *cet; 56f6d5aee88d129 Corentin Labbe 2020-09-18 259 struct scatterlist *sg; 56f6d5aee88d129 Corentin Labbe 2020-09-18 260 int nr_sgs, flow, err; 56f6d5aee88d129 Corentin Labbe 2020-09-18 261 unsigned int len; 56f6d5aee88d129 Corentin Labbe 2020-09-18 262 u32 common; 56f6d5aee88d129 Corentin Labbe 2020-09-18 263 u64 byte_count; 56f6d5aee88d129 Corentin Labbe 2020-09-18 264 __le32 *bf; 56f6d5aee88d129 Corentin Labbe 2020-09-18 265 void *buf; 56f6d5aee88d129 Corentin Labbe 2020-09-18 266 int j, i, todo; 56f6d5aee88d129 Corentin Labbe 2020-09-18 267 int nbw =3D 0; 56f6d5aee88d129 Corentin Labbe 2020-09-18 268 u64 fill, min_fill; 56f6d5aee88d129 Corentin Labbe 2020-09-18 269 __be64 *bebits; 56f6d5aee88d129 Corentin Labbe 2020-09-18 270 __le64 *lebits; 56f6d5aee88d129 Corentin Labbe 2020-09-18 271 void *result; 56f6d5aee88d129 Corentin Labbe 2020-09-18 272 u64 bs; 56f6d5aee88d129 Corentin Labbe 2020-09-18 273 int digestsize; 56f6d5aee88d129 Corentin Labbe 2020-09-18 274 dma_addr_t addr_res, addr_= pad; 56f6d5aee88d129 Corentin Labbe 2020-09-18 275 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 276 algt =3D container_of(alg,= struct sun8i_ce_alg_template, alg.hash); 56f6d5aee88d129 Corentin Labbe 2020-09-18 277 ce =3D algt->ce; 56f6d5aee88d129 Corentin Labbe 2020-09-18 278 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 279 bs =3D algt->alg.hash.halg= .base.cra_blocksize; 56f6d5aee88d129 Corentin Labbe 2020-09-18 280 digestsize =3D algt->alg.h= ash.halg.digestsize; 56f6d5aee88d129 Corentin Labbe 2020-09-18 281 if (digestsize =3D=3D SHA2= 24_DIGEST_SIZE) 56f6d5aee88d129 Corentin Labbe 2020-09-18 282 digestsize =3D SHA256_DIG= EST_SIZE; 56f6d5aee88d129 Corentin Labbe 2020-09-18 283 if (digestsize =3D=3D SHA3= 84_DIGEST_SIZE) 56f6d5aee88d129 Corentin Labbe 2020-09-18 284 digestsize =3D SHA512_DIG= EST_SIZE; 56f6d5aee88d129 Corentin Labbe 2020-09-18 285 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 286 /* the padding could be up= to two block. */ 56f6d5aee88d129 Corentin Labbe 2020-09-18 287 buf =3D kzalloc(bs * 2, GF= P_KERNEL | GFP_DMA); 56f6d5aee88d129 Corentin Labbe 2020-09-18 288 if (!buf) 56f6d5aee88d129 Corentin Labbe 2020-09-18 289 return -ENOMEM; 56f6d5aee88d129 Corentin Labbe 2020-09-18 290 bf =3D (__le32 *)buf; 56f6d5aee88d129 Corentin Labbe 2020-09-18 291 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 292 result =3D kzalloc(digests= ize, GFP_KERNEL | GFP_DMA); 56f6d5aee88d129 Corentin Labbe 2020-09-18 293 if (!result) 56f6d5aee88d129 Corentin Labbe 2020-09-18 294 return -ENOMEM; 56f6d5aee88d129 Corentin Labbe 2020-09-18 295 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 296 flow =3D rctx->flow; 56f6d5aee88d129 Corentin Labbe 2020-09-18 297 chan =3D &ce->chanlist[flo= w]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 298 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 299 #ifdef CONFIG_CRYPTO_DEV_SU= N8I_CE_DEBUG 56f6d5aee88d129 Corentin Labbe 2020-09-18 300 algt->stat_req++; 56f6d5aee88d129 Corentin Labbe 2020-09-18 301 #endif 56f6d5aee88d129 Corentin Labbe 2020-09-18 302 dev_dbg(ce->dev, "%s %s le= n=3D%d\n", __func__, crypto_tfm_alg_name(areq->base.tfm), areq->nbytes); 56f6d5aee88d129 Corentin Labbe 2020-09-18 303 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 304 cet =3D chan->tl; 56f6d5aee88d129 Corentin Labbe 2020-09-18 305 memset(cet, 0, sizeof(stru= ct ce_task)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 306 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 307 cet->t_id =3D cpu_to_le32(= flow); 56f6d5aee88d129 Corentin Labbe 2020-09-18 308 common =3D ce->variant->al= g_hash[algt->ce_algo_id]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 309 common |=3D CE_COMM_INT; 56f6d5aee88d129 Corentin Labbe 2020-09-18 310 cet->t_common_ctl =3D cpu_= to_le32(common); 56f6d5aee88d129 Corentin Labbe 2020-09-18 311 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 312 cet->t_sym_ctl =3D 0; 56f6d5aee88d129 Corentin Labbe 2020-09-18 313 cet->t_asym_ctl =3D 0; 56f6d5aee88d129 Corentin Labbe 2020-09-18 314 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 315 nr_sgs =3D dma_map_sg(ce->= dev, areq->src, sg_nents(areq->src), DMA_TO_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 316 if (nr_sgs <=3D 0 || nr_sg= s > MAX_SG) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 317 dev_err(ce->dev, "Invalid= sg number %d\n", nr_sgs); 56f6d5aee88d129 Corentin Labbe 2020-09-18 318 err =3D -EINVAL; 56f6d5aee88d129 Corentin Labbe 2020-09-18 319 goto theend; 56f6d5aee88d129 Corentin Labbe 2020-09-18 320 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 321 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 322 len =3D areq->nbytes; 56f6d5aee88d129 Corentin Labbe 2020-09-18 323 for_each_sg(areq->src, sg,= nr_sgs, i) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 324 cet->t_src[i].addr =3D cp= u_to_le32(sg_dma_address(sg)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 325 todo =3D min(len, sg_dma_= len(sg)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 326 cet->t_src[i].len =3D cpu= _to_le32(todo / 4); 56f6d5aee88d129 Corentin Labbe 2020-09-18 327 len -=3D todo; 56f6d5aee88d129 Corentin Labbe 2020-09-18 328 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 329 if (len > 0) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 330 dev_err(ce->dev, "remaini= ng len %d\n", len); 56f6d5aee88d129 Corentin Labbe 2020-09-18 331 err =3D -EINVAL; 56f6d5aee88d129 Corentin Labbe 2020-09-18 332 goto theend; 56f6d5aee88d129 Corentin Labbe 2020-09-18 333 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 334 addr_res =3D dma_map_singl= e(ce->dev, result, digestsize, DMA_FROM_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 335 cet->t_dst[0].addr =3D cpu= _to_le32(addr_res); 56f6d5aee88d129 Corentin Labbe 2020-09-18 336 cet->t_dst[0].len =3D cpu_= to_le32(digestsize / 4); 56f6d5aee88d129 Corentin Labbe 2020-09-18 337 if (dma_mapping_error(ce->= dev, addr_res)) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 338 dev_err(ce->dev, "DMA map= dest\n"); 56f6d5aee88d129 Corentin Labbe 2020-09-18 339 err =3D -EINVAL; 56f6d5aee88d129 Corentin Labbe 2020-09-18 340 goto theend; 56f6d5aee88d129 Corentin Labbe 2020-09-18 341 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 342 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 343 byte_count =3D areq->nbyte= s; 56f6d5aee88d129 Corentin Labbe 2020-09-18 344 j =3D 0; 56f6d5aee88d129 Corentin Labbe 2020-09-18 345 bf[j++] =3D cpu_to_le32(0x= 80); 56f6d5aee88d129 Corentin Labbe 2020-09-18 346 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 347 if (bs =3D=3D 64) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 348 fill =3D 64 - (byte_count= % 64); 56f6d5aee88d129 Corentin Labbe 2020-09-18 349 min_fill =3D 2 * sizeof(u= 32) + (nbw ? 0 : sizeof(u32)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 350 } else { 56f6d5aee88d129 Corentin Labbe 2020-09-18 351 fill =3D 128 - (byte_coun= t % 128); 56f6d5aee88d129 Corentin Labbe 2020-09-18 352 min_fill =3D 4 * sizeof(u= 32) + (nbw ? 0 : sizeof(u32)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 353 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 354 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 355 if (fill < min_fill) 56f6d5aee88d129 Corentin Labbe 2020-09-18 356 fill +=3D bs; 56f6d5aee88d129 Corentin Labbe 2020-09-18 357 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 358 j +=3D (fill - min_fill) /= sizeof(u32); 56f6d5aee88d129 Corentin Labbe 2020-09-18 359 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 360 switch (algt->ce_algo_id) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 361 case CE_ID_HASH_MD5: 56f6d5aee88d129 Corentin Labbe 2020-09-18 362 lebits =3D (__le64 *)&bf[= j]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 363 *lebits =3D cpu_to_le64(b= yte_count << 3); 56f6d5aee88d129 Corentin Labbe 2020-09-18 364 j +=3D 2; 56f6d5aee88d129 Corentin Labbe 2020-09-18 365 break; 56f6d5aee88d129 Corentin Labbe 2020-09-18 366 case CE_ID_HASH_SHA1: 56f6d5aee88d129 Corentin Labbe 2020-09-18 367 case CE_ID_HASH_SHA224: 56f6d5aee88d129 Corentin Labbe 2020-09-18 368 case CE_ID_HASH_SHA256: 56f6d5aee88d129 Corentin Labbe 2020-09-18 369 bebits =3D (__be64 *)&bf[= j]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 370 *bebits =3D cpu_to_be64(b= yte_count << 3); 56f6d5aee88d129 Corentin Labbe 2020-09-18 371 j +=3D 2; 56f6d5aee88d129 Corentin Labbe 2020-09-18 372 break; 56f6d5aee88d129 Corentin Labbe 2020-09-18 373 case CE_ID_HASH_SHA384: 56f6d5aee88d129 Corentin Labbe 2020-09-18 374 case CE_ID_HASH_SHA512: 56f6d5aee88d129 Corentin Labbe 2020-09-18 375 bebits =3D (__be64 *)&bf[= j]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 376 *bebits =3D cpu_to_be64(b= yte_count >> 61); 56f6d5aee88d129 Corentin Labbe 2020-09-18 377 j +=3D 2; 56f6d5aee88d129 Corentin Labbe 2020-09-18 378 bebits =3D (__be64 *)&bf[= j]; 56f6d5aee88d129 Corentin Labbe 2020-09-18 379 *bebits =3D cpu_to_be64(b= yte_count << 3); 56f6d5aee88d129 Corentin Labbe 2020-09-18 380 j +=3D 2; 56f6d5aee88d129 Corentin Labbe 2020-09-18 381 break; 56f6d5aee88d129 Corentin Labbe 2020-09-18 382 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 383 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 384 addr_pad =3D dma_map_singl= e(ce->dev, buf, j * 4, DMA_TO_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 385 cet->t_src[i].addr =3D cpu= _to_le32(addr_pad); 56f6d5aee88d129 Corentin Labbe 2020-09-18 386 cet->t_src[i].len =3D cpu_= to_le32(j); 56f6d5aee88d129 Corentin Labbe 2020-09-18 387 if (dma_mapping_error(ce->= dev, addr_pad)) { 56f6d5aee88d129 Corentin Labbe 2020-09-18 388 dev_err(ce->dev, "DMA err= or on padding SG\n"); 56f6d5aee88d129 Corentin Labbe 2020-09-18 389 err =3D -EINVAL; 56f6d5aee88d129 Corentin Labbe 2020-09-18 390 goto theend; 56f6d5aee88d129 Corentin Labbe 2020-09-18 391 } 56f6d5aee88d129 Corentin Labbe 2020-09-18 392 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 393 if (ce->variant->hash_t_dl= en_in_bits) 56f6d5aee88d129 Corentin Labbe 2020-09-18 394 cet->t_dlen =3D cpu_to_le= 32((areq->nbytes + j * 4) * 8); 56f6d5aee88d129 Corentin Labbe 2020-09-18 395 else 56f6d5aee88d129 Corentin Labbe 2020-09-18 396 cet->t_dlen =3D cpu_to_le= 32(areq->nbytes / 4 + j); 56f6d5aee88d129 Corentin Labbe 2020-09-18 397 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 398 chan->timeout =3D areq->nb= ytes; 56f6d5aee88d129 Corentin Labbe 2020-09-18 399 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 400 err =3D sun8i_ce_run_task(= ce, flow, crypto_tfm_alg_name(areq->base.tfm)); 56f6d5aee88d129 Corentin Labbe 2020-09-18 401 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 402 dma_unmap_single(ce->dev, = addr_pad, j * 4, DMA_TO_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 403 dma_unmap_sg(ce->dev, areq= ->src, nr_sgs, DMA_TO_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 404 dma_unmap_single(ce->dev, = addr_res, digestsize, DMA_FROM_DEVICE); 56f6d5aee88d129 Corentin Labbe 2020-09-18 405 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 406 kfree(buf); 56f6d5aee88d129 Corentin Labbe 2020-09-18 407 = 56f6d5aee88d129 Corentin Labbe 2020-09-18 408 memcpy(areq->result, resul= t, algt->alg.hash.halg.digestsize); 56f6d5aee88d129 Corentin Labbe 2020-09-18 409 kfree(result); 56f6d5aee88d129 Corentin Labbe 2020-09-18 410 theend: 56f6d5aee88d129 Corentin Labbe 2020-09-18 411 crypto_finalize_hash_reque= st(engine, breq, err); 56f6d5aee88d129 Corentin Labbe 2020-09-18 @412 return 0; --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============0319546209091717270== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICJm0qV8AAy5jb25maWcAlDxbd9wo0u/zK/pkXmYeMms7jjdz9vgBSajFtBAKoL74RafHaWd8 1rHzte3d5N9/VaALINSZ9UPSTRVQQN0p+ueffl6Q15enL/uX+9v9w8P3xefD4+G4fzl8WtzdPxz+ tcjEohJ6QTOmfwPk8v7x9ds/vn24aq8uF+9/+/23s7fH2/PF6nB8PDws0qfHu/vPr9D//unxp59/ 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