From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============7292876287002737068==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: Re: [PATCH RFC v1 4/6] swiotlb: enable 64-bit swiotlb Date: Thu, 04 Feb 2021 12:10:50 +0800 Message-ID: <202102041243.ZsvxEceW-lkp@intel.com> In-Reply-To: <20210203233709.19819-5-dongli.zhang@oracle.com> List-Id: --===============7292876287002737068== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable Hi Dongli, [FYI, it's a private test report for your RFC patch.] [auto build test WARNING on powerpc/next] [also build test WARNING on linus/master v5.11-rc6 next-20210125] [cannot apply to swiotlb/linux-next xen-tip/linux-next] [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/Dongli-Zhang/swiotlb-64-bi= t-DMA-buffer/20210204-074426 base: https://git.kernel.org/pub/scm/linux/kernel/git/powerpc/linux.git n= ext config: powerpc64-randconfig-r036-20210202 (attached as .config) compiler: clang version 13.0.0 (https://github.com/llvm/llvm-project 275c6a= f7d7f1ed63a03d05b4484413e447133269) 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 # install powerpc64 cross compiling tool for clang build # apt-get install binutils-powerpc64-linux-gnu # https://github.com/0day-ci/linux/commit/bb094f75bbb66bf693fc13a99= 90702b3a88ae93f git remote add linux-review https://github.com/0day-ci/linux git fetch --no-tags linux-review Dongli-Zhang/swiotlb-64-bit-DMA-bu= ffer/20210204-074426 git checkout bb094f75bbb66bf693fc13a9990702b3a88ae93f # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dpowerpc64 = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All warnings (new ones prefixed by >>): >> kernel/dma/swiotlb.c:524:33: warning: result of comparison of constant 1= 8446744073709551615 with expression of type 'unsigned long' is always false= [-Wtautological-constant-out-of-range-compare] if (swiotlb_nr > 1 && dma_mask =3D=3D DMA_BIT_MASK(64)) ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:56:47: note: expanded from macro 'if' #define if(cond, ...) if ( __trace_if_var( !!(cond , ## __VA_ARGS__) ) ) ~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:58:86: note: expanded from macro '__trace_if_va= r' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __tr= ace_if_value(cond)) ~~~~= ~~~~~~~~~~~~~^~~~~ include/linux/compiler.h:69:3: note: expanded from macro '__trace_if_val= ue' (cond) ? \ ^~~~ >> kernel/dma/swiotlb.c:524:33: warning: result of comparison of constant 1= 8446744073709551615 with expression of type 'unsigned long' is always false= [-Wtautological-constant-out-of-range-compare] if (swiotlb_nr > 1 && dma_mask =3D=3D DMA_BIT_MASK(64)) ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:56:47: note: expanded from macro 'if' #define if(cond, ...) if ( __trace_if_var( !!(cond , ## __VA_ARGS__) ) ) ~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:58:52: note: expanded from macro '__trace_if_va= r' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __tr= ace_if_value(cond)) ^~~~ >> kernel/dma/swiotlb.c:524:33: warning: result of comparison of constant 1= 8446744073709551615 with expression of type 'unsigned long' is always false= [-Wtautological-constant-out-of-range-compare] if (swiotlb_nr > 1 && dma_mask =3D=3D DMA_BIT_MASK(64)) ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:56:47: note: expanded from macro 'if' #define if(cond, ...) if ( __trace_if_var( !!(cond , ## __VA_ARGS__) ) ) ~~~~~~~~~~~~~~~~~~~^~~~~~~~~~~~~~~~~~~~~~~~ include/linux/compiler.h:58:61: note: expanded from macro '__trace_if_va= r' #define __trace_if_var(cond) (__builtin_constant_p(cond) ? (cond) : __tr= ace_if_value(cond)) ^~~~ 3 warnings generated. Kconfig warnings: (for reference only) WARNING: unmet direct dependencies detected for HOTPLUG_CPU Depends on SMP && (PPC_PSERIES || PPC_PMAC || PPC_POWERNV || FSL_SOC_BOO= KE Selected by - PM_SLEEP_SMP && SMP && (ARCH_SUSPEND_POSSIBLE || ARCH_HIBERNATION_POSS= IBLE && PM_SLEEP vim +524 kernel/dma/swiotlb.c 506 = 507 phys_addr_t swiotlb_tbl_map_single(struct device *hwdev, phys_addr_t= orig_addr, 508 size_t mapping_size, size_t alloc_size, 509 enum dma_data_direction dir, unsigned long attrs) 510 { 511 dma_addr_t tbl_dma_addr; 512 unsigned long flags; 513 phys_addr_t tlb_addr; 514 unsigned int nslots, stride, index, wrap; 515 int i; 516 unsigned long mask; 517 unsigned long offset_slots; 518 unsigned long max_slots; 519 unsigned long tmp_io_tlb_used; 520 unsigned long dma_mask =3D min_not_zero(*hwdev->dma_mask, 521 hwdev->bus_dma_limit); 522 int type; 523 = > 524 if (swiotlb_nr > 1 && dma_mask =3D=3D DMA_BIT_MASK(64)) 525 type =3D SWIOTLB_HI; 526 else 527 type =3D SWIOTLB_LO; 528 = 529 if (no_iotlb_memory[type]) 530 panic("Can not allocate SWIOTLB buffer earlier and can't now provi= de you with the DMA bounce buffer"); 531 = 532 if (mem_encrypt_active()) 533 pr_warn_once("Memory encryption is active and system is using DMA = bounce buffers\n"); 534 = 535 if (mapping_size > alloc_size) { 536 dev_warn_once(hwdev, "Invalid sizes (mapping: %zd bytes, alloc: %z= d bytes)", 537 mapping_size, alloc_size); 538 return (phys_addr_t)DMA_MAPPING_ERROR; 539 } 540 = 541 tbl_dma_addr =3D phys_to_dma_unencrypted(hwdev, io_tlb_start[type]); 542 = 543 mask =3D dma_get_seg_boundary(hwdev); 544 = 545 tbl_dma_addr &=3D mask; 546 = 547 offset_slots =3D ALIGN(tbl_dma_addr, 1 << IO_TLB_SHIFT) >> IO_TLB_S= HIFT; 548 = 549 /* 550 * Carefully handle integer overflow which can occur when mask =3D= =3D ~0UL. 551 */ 552 max_slots =3D mask + 1 553 ? ALIGN(mask + 1, 1 << IO_TLB_SHIFT) >> IO_TLB_SHIFT 554 : 1UL << (BITS_PER_LONG - IO_TLB_SHIFT); 555 = 556 /* 557 * For mappings greater than or equal to a page, we limit the stride 558 * (and hence alignment) to a page size. 559 */ 560 nslots =3D ALIGN(alloc_size, 1 << IO_TLB_SHIFT) >> IO_TLB_SHIFT; 561 if (alloc_size >=3D PAGE_SIZE) 562 stride =3D (1 << (PAGE_SHIFT - IO_TLB_SHIFT)); 563 else 564 stride =3D 1; 565 = 566 BUG_ON(!nslots); 567 = 568 /* 569 * Find suitable number of IO TLB entries size that will fit this 570 * request and allocate a buffer from that IO TLB pool. 571 */ 572 spin_lock_irqsave(&io_tlb_lock, flags); 573 = 574 if (unlikely(nslots > io_tlb_nslabs[type] - io_tlb_used[type])) 575 goto not_found; 576 = 577 index =3D ALIGN(io_tlb_index[type], stride); 578 if (index >=3D io_tlb_nslabs[type]) 579 index =3D 0; 580 wrap =3D index; 581 = 582 do { 583 while (iommu_is_span_boundary(index, nslots, offset_slots, 584 max_slots)) { 585 index +=3D stride; 586 if (index >=3D io_tlb_nslabs[type]) 587 index =3D 0; 588 if (index =3D=3D wrap) 589 goto not_found; 590 } 591 = 592 /* 593 * If we find a slot that indicates we have 'nslots' number of 594 * contiguous buffers, we allocate the buffers from that slot 595 * and mark the entries as '0' indicating unavailable. 596 */ 597 if (io_tlb_list[type][index] >=3D nslots) { 598 int count =3D 0; 599 = 600 for (i =3D index; i < (int) (index + nslots); i++) 601 io_tlb_list[type][i] =3D 0; 602 for (i =3D index - 1; 603 (OFFSET(i, IO_TLB_SEGSIZE) !=3D IO_TLB_SEGSIZE - 1) && 604 io_tlb_list[type][i]; 605 i--) 606 io_tlb_list[type][i] =3D ++count; 607 tlb_addr =3D io_tlb_start[type] + (index << IO_TLB_SHIFT); 608 = 609 /* 610 * Update the indices to avoid searching in the next 611 * round. 612 */ 613 io_tlb_index[type] =3D ((index + nslots) < io_tlb_nslabs[type] 614 ? (index + nslots) : 0); 615 = 616 goto found; 617 } 618 index +=3D stride; 619 if (index >=3D io_tlb_nslabs[type]) 620 index =3D 0; 621 } while (index !=3D wrap); 622 = 623 not_found: 624 tmp_io_tlb_used =3D io_tlb_used[type]; 625 = 626 spin_unlock_irqrestore(&io_tlb_lock, flags); 627 if (!(attrs & DMA_ATTR_NO_WARN) && printk_ratelimit()) 628 dev_warn(hwdev, "%s swiotlb buffer is full (sz: %zd bytes), total = %lu (slots), used %lu (slots)\n", 629 swiotlb_name[type], alloc_size, io_tlb_nslabs[type], tmp_io_tlb_= used); 630 return (phys_addr_t)DMA_MAPPING_ERROR; 631 found: 632 io_tlb_used[type] +=3D nslots; 633 spin_unlock_irqrestore(&io_tlb_lock, flags); 634 = 635 /* 636 * Save away the mapping from the original address to the DMA addre= ss. 637 * This is needed when we sync the memory. Then we sync the buffer= if 638 * needed. 639 */ 640 for (i =3D 0; i < nslots; i++) 641 io_tlb_orig_addr[type][index+i] =3D orig_addr + (i << IO_TLB_SHIFT= ); 642 if (!(attrs & DMA_ATTR_SKIP_CPU_SYNC) && 643 (dir =3D=3D DMA_TO_DEVICE || dir =3D=3D DMA_BIDIRECTIONAL)) 644 swiotlb_bounce(orig_addr, tlb_addr, mapping_size, DMA_TO_DEVICE); 645 = 646 return tlb_addr; 647 } 648 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all@lists.01.org --===============7292876287002737068== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICLJuG2AAAy5jb25maWcAjFxbd9u4rn6fX+HVeZn9sDu+JGl7zsoDLVEya0lURMp28qLlOmon Z9K423G6239/AOoGSlQ689CpAV5BEPgAQv39t98n7OV8/Lo/Pxz2j48/J1/Kp/K0P5f3k88Pj+X/ Tnw5SaSecF/ot9A4enh6+fHnt+N/y9O3w+Ty7Wz2dvrv02E+WZenp/Jx4h2fPj98eYERHo5Pv/3+ myeTQISF5xUbnikhk0Lznb5+c3jcP32ZfC9Pz9BuMlu8nb6dTv748nD+nz//hD+/PpxOx9Ofj4/f 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--===============7292876287002737068==--