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=-7.3 required=3.0 tests=HEADER_FROM_DIFFERENT_DOMAINS, MAILING_LIST_MULTI,MENTIONS_GIT_HOSTING,SPF_HELO_NONE,SPF_PASS, USER_AGENT_SANE_1 autolearn=unavailable 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 6004AECE58B for ; Thu, 3 Oct 2019 22:51:36 +0000 (UTC) Received: from kanga.kvack.org (kanga.kvack.org [205.233.56.17]) by mail.kernel.org (Postfix) with ESMTP id B4F472133F for ; Thu, 3 Oct 2019 22:51:35 +0000 (UTC) DMARC-Filter: OpenDMARC Filter v1.3.2 mail.kernel.org B4F472133F Authentication-Results: mail.kernel.org; dmarc=fail (p=none dis=none) header.from=intel.com Authentication-Results: mail.kernel.org; spf=pass smtp.mailfrom=owner-linux-mm@kvack.org Received: by kanga.kvack.org (Postfix) id 16B818E0003; Thu, 3 Oct 2019 18:51:35 -0400 (EDT) Received: by kanga.kvack.org (Postfix, from userid 40) id 11E306B0006; Thu, 3 Oct 2019 18:51:35 -0400 (EDT) X-Delivered-To: int-list-linux-mm@kvack.org Received: by kanga.kvack.org (Postfix, from userid 63042) id F01998E0003; Thu, 3 Oct 2019 18:51:34 -0400 (EDT) X-Delivered-To: linux-mm@kvack.org Received: from forelay.hostedemail.com (smtprelay0179.hostedemail.com [216.40.44.179]) by kanga.kvack.org (Postfix) with ESMTP id AF0D86B0005 for ; Thu, 3 Oct 2019 18:51:34 -0400 (EDT) Received: from smtpin24.hostedemail.com (10.5.19.251.rfc1918.com [10.5.19.251]) by forelay05.hostedemail.com (Postfix) with SMTP id 25EC5181AC9AE for ; Thu, 3 Oct 2019 22:51:34 +0000 (UTC) X-FDA: 76003971708.24.rings81_d5f978dab435 X-HE-Tag: rings81_d5f978dab435 X-Filterd-Recvd-Size: 113956 Received: from mga12.intel.com (mga12.intel.com [192.55.52.136]) by imf12.hostedemail.com (Postfix) with ESMTP for ; Thu, 3 Oct 2019 22:51:31 +0000 (UTC) X-Amp-Result: UNKNOWN X-Amp-Original-Verdict: FILE UNKNOWN X-Amp-File-Uploaded: False Received: from fmsmga005.fm.intel.com ([10.253.24.32]) by fmsmga106.fm.intel.com with ESMTP/TLS/DHE-RSA-AES256-GCM-SHA384; 03 Oct 2019 15:51:29 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.67,254,1566889200"; d="gz'50?scan'50,208,50";a="392111261" Received: from lkp-server01.sh.intel.com (HELO lkp-server01) ([10.239.97.150]) by fmsmga005.fm.intel.com with ESMTP; 03 Oct 2019 15:51:25 -0700 Received: from kbuild by lkp-server01 with local (Exim 4.89) (envelope-from ) id 1iG9wT-000DsU-7c; Fri, 04 Oct 2019 06:51:25 +0800 Date: Fri, 4 Oct 2019 06:50:52 +0800 From: kbuild test robot To: Davidlohr Bueso Cc: kbuild-all@01.org, akpm@linux-foundation.org, walken@google.com, peterz@infradead.org, linux-kernel@vger.kernel.org, linux-mm@kvack.org, dri-devel@lists.freedesktop.org, linux-rdma@vger.kernel.org, dave@stgolabs.net, Christian =?iso-8859-1?Q?K=F6nig?= , Alex Deucher , David Airlie , Daniel Vetter , Doug Ledford , Joerg Roedel , =?iso-8859-1?B?Suly9G1l?= Glisse , Davidlohr Bueso Subject: Re: [PATCH 09/11] lib/interval-tree: convert interval_tree to half closed intervals Message-ID: <201910040653.Gpn4Ra6Z%lkp@intel.com> References: <20191003201858.11666-10-dave@stgolabs.net> MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="ysjpbxe3orgmxa7p" Content-Disposition: inline In-Reply-To: <20191003201858.11666-10-dave@stgolabs.net> X-Patchwork-Hint: ignore User-Agent: NeoMutt/20170113 (1.7.2) X-Bogosity: Ham, tests=bogofilter, spamicity=0.000000, version=1.2.4 Sender: owner-linux-mm@kvack.org Precedence: bulk X-Loop: owner-majordomo@kvack.org List-ID: --ysjpbxe3orgmxa7p Content-Type: text/plain; charset=us-ascii Content-Disposition: inline Hi Davidlohr, I love your patch! Yet something to improve: [auto build test ERROR on next-20191003] url: https://github.com/0day-ci/linux/commits/Davidlohr-Bueso/lib-interval-tree-move-to-half-closed-intervals/20191004-042411 config: arm64-allyesconfig (attached as .config) compiler: aarch64-linux-gcc (GCC) 7.4.0 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=7.4.0 make.cross ARCH=arm64 If you fix the issue, kindly add following tag Reported-by: kbuild test robot All error/warnings (new ones prefixed by >>): In file included from include/linux/swab.h:5:0, from include/uapi/linux/byteorder/big_endian.h:13, from include/linux/byteorder/big_endian.h:5, from arch/arm64/include/uapi/asm/byteorder.h:21, from include/asm-generic/bitops/le.h:6, from arch/arm64/include/asm/bitops.h:29, from include/linux/bitops.h:26, from include/linux/kernel.h:12, from include/linux/clk.h:13, from include/linux/amba/bus.h:14, from drivers//iommu/virtio-iommu.c:10: drivers//iommu/virtio-iommu.c: In function 'viommu_replay_mappings': >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:130:32: note: in definition of macro '__swab64' (__builtin_constant_p((__u64)(x)) ? \ ^ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:24:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x00000000000000ffULL) << 56) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:25:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x000000000000ff00ULL) << 40) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:26:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x0000000000ff0000ULL) << 24) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:27:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x00000000ff000000ULL) << 8) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ >> drivers//iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:28:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x000000ff00000000ULL) >> 8) | \ ^ -- In file included from include/linux/swab.h:5:0, from include/uapi/linux/byteorder/big_endian.h:13, from include/linux/byteorder/big_endian.h:5, from arch/arm64/include/uapi/asm/byteorder.h:21, from include/asm-generic/bitops/le.h:6, from arch/arm64/include/asm/bitops.h:29, from include/linux/bitops.h:26, from include/linux/kernel.h:12, from include/linux/clk.h:13, from include/linux/amba/bus.h:14, from drivers/iommu/virtio-iommu.c:10: drivers/iommu/virtio-iommu.c: In function 'viommu_replay_mappings': drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:130:32: note: in definition of macro '__swab64' (__builtin_constant_p((__u64)(x)) ? \ ^ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:24:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x00000000000000ffULL) << 56) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:25:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x000000000000ff00ULL) << 40) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:26:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x0000000000ff0000ULL) << 24) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:27:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x00000000ff000000ULL) << 8) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:28:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x000000ff00000000ULL) >> 8) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:29:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x0000ff0000000000ULL) >> 24) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:30:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0x00ff000000000000ULL) >> 40) | \ ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:31:12: note: in definition of macro '___constant_swab64' (((__u64)(x) & (__u64)0xff00000000000000ULL) >> 56))) ^ >> include/uapi/linux/byteorder/big_endian.h:31:43: note: in expansion of macro '__swab64' #define __cpu_to_le64(x) ((__force __le64)__swab64((x))) ^~~~~~~~ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:41: error: 'struct interval_tree_node' has no member named 'last' .virt_end = cpu_to_le64(mapping->iova.last), ^ include/uapi/linux/swab.h:132:12: note: in definition of macro '__swab64' __fswab64(x)) ^ >> include/linux/byteorder/generic.h:86:21: note: in expansion of macro '__cpu_to_le64' #define cpu_to_le64 __cpu_to_le64 ^~~~~~~~~~~~~ drivers/iommu/virtio-iommu.c:403:16: note: in expansion of macro 'cpu_to_le64' .virt_end = cpu_to_le64(mapping->iova.last), ^~~~~~~~~~~ vim +403 drivers//iommu/virtio-iommu.c edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 379 edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 380 /* edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 381 * viommu_replay_mappings - re-send MAP requests edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 382 * edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 383 * When reattaching a domain that was previously detached from all endpoints, edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 384 * mappings were deleted from the device. Re-create the mappings available in edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 385 * the internal tree. edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 386 */ edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 387 static int viommu_replay_mappings(struct viommu_domain *vdomain) edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 388 { edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 389 int ret = 0; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 390 unsigned long flags; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 391 struct viommu_mapping *mapping; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 392 struct interval_tree_node *node; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 393 struct virtio_iommu_req_map map; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 394 edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 395 spin_lock_irqsave(&vdomain->mappings_lock, flags); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 396 node = interval_tree_iter_first(&vdomain->mappings, 0, -1UL); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 397 while (node) { edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 398 mapping = container_of(node, struct viommu_mapping, iova); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 399 map = (struct virtio_iommu_req_map) { edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 400 .head.type = VIRTIO_IOMMU_T_MAP, edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 401 .domain = cpu_to_le32(vdomain->id), edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 402 .virt_start = cpu_to_le64(mapping->iova.start), edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 @403 .virt_end = cpu_to_le64(mapping->iova.last), edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 404 .phys_start = cpu_to_le64(mapping->paddr), edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 405 .flags = cpu_to_le32(mapping->flags), edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 406 }; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 407 edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 408 ret = viommu_send_req_sync(vdomain->viommu, &map, sizeof(map)); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 409 if (ret) edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 410 break; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 411 edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 412 node = interval_tree_iter_next(node, 0, -1UL); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 413 } edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 414 spin_unlock_irqrestore(&vdomain->mappings_lock, flags); edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 415 edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 416 return ret; edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 417 } edcd69ab9a323b Jean-Philippe Brucker 2019-01-15 418 :::::: The code at line 403 was first introduced by commit :::::: edcd69ab9a323b7ac7a86e1c44b6c9c46598391f iommu: Add virtio-iommu driver :::::: TO: Jean-Philippe Brucker :::::: CC: Michael S. 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