From mboxrd@z Thu Jan 1 00:00:00 1970 Return-Path: Received: from mga03.intel.com (mga03.intel.com [134.134.136.65]) by dpdk.org (Postfix) with ESMTP id F3FAD5F27 for ; Fri, 26 Oct 2018 06:36:29 +0200 (CEST) X-Amp-Result: UNSCANNABLE X-Amp-File-Uploaded: False Received: from fmsmga008.fm.intel.com ([10.253.24.58]) by orsmga103.jf.intel.com with ESMTP/TLS/DHE-RSA-AES256-GCM-SHA384; 25 Oct 2018 21:36:28 -0700 X-ExtLoop1: 1 X-IronPort-AV: E=Sophos;i="5.54,426,1534834800"; d="xml'?bin'?rels'?xlsx'72,48?scan'72,48,208,217,72,48";a="81695480" Received: from fmsmsx107.amr.corp.intel.com ([10.18.124.205]) by fmsmga008.fm.intel.com with ESMTP; 25 Oct 2018 21:36:28 -0700 Received: from fmsmsx122.amr.corp.intel.com (10.18.125.37) by fmsmsx107.amr.corp.intel.com (10.18.124.205) with Microsoft SMTP Server (TLS) id 14.3.319.2; Thu, 25 Oct 2018 21:36:28 -0700 Received: from shsmsx104.ccr.corp.intel.com (10.239.4.70) by fmsmsx122.amr.corp.intel.com (10.18.125.37) with Microsoft SMTP Server (TLS) id 14.3.319.2; Thu, 25 Oct 2018 21:36:27 -0700 Received: from shsmsx102.ccr.corp.intel.com ([169.254.2.84]) by SHSMSX104.ccr.corp.intel.com ([169.254.5.117]) with mapi id 14.03.0415.000; Fri, 26 Oct 2018 12:36:25 +0800 From: "Xu, Qian Q" To: "'ci@dpdk.org'" CC: "O'Driscoll, Tim" Thread-Topic: Minutes of DPDK Lab Meeting, Oct 23th Thread-Index: AdRq3NCcX8wKCohbQG6WjMhJvUk98A== Date: Fri, 26 Oct 2018 04:36:25 +0000 Message-ID: <82F45D86ADE5454A95A89742C8D1410E3BCB69C5@shsmsx102.ccr.corp.intel.com> Accept-Language: en-US Content-Language: en-US X-MS-Has-Attach: yes X-MS-TNEF-Correlator: x-titus-metadata-40: eyJDYXRlZ29yeUxhYmVscyI6IiIsIk1ldGFkYXRhIjp7Im5zIjoiaHR0cDpcL1wvd3d3LnRpdHVzLmNvbVwvbnNcL0ludGVsMyIsImlkIjoiYTc2YjViYjctZGMxMS00M2JiLTk5MDctZThmODEwOWM3M2FlIiwicHJvcHMiOlt7Im4iOiJDVFBDbGFzc2lmaWNhdGlvbiIsInZhbHMiOlt7InZhbHVlIjoiQ1RQX05UIn1dfV19LCJTdWJqZWN0TGFiZWxzIjpbXSwiVE1DVmVyc2lvbiI6IjE3LjEwLjE4MDQuNDkiLCJUcnVzdGVkTGFiZWxIYXNoIjoibjJjTEpmdE1kNzF6TjFWSkxBbFVUUlloSjNQWmpyblU2YUJhUUVyT2VqYTZRYm9NaTJwWnNpYStldjBQUjBoTyJ9 x-ctpclassification: CTP_NT dlp-product: dlpe-windows dlp-version: 11.0.400.15 dlp-reaction: no-action x-originating-ip: [10.239.127.40] Content-Type: multipart/mixed; boundary="_004_82F45D86ADE5454A95A89742C8D1410E3BCB69C5shsmsx102ccrcor_" MIME-Version: 1.0 Subject: [dpdk-ci] Minutes of DPDK Lab Meeting, Oct 23th X-BeenThere: ci@dpdk.org X-Mailman-Version: 2.1.15 Precedence: list List-Id: DPDK CI discussions List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 26 Oct 2018 04:36:31 -0000 --_004_82F45D86ADE5454A95A89742C8D1410E3BCB69C5shsmsx102ccrcor_ Content-Type: multipart/alternative; boundary="_000_82F45D86ADE5454A95A89742C8D1410E3BCB69C5shsmsx102ccrcor_" --_000_82F45D86ADE5454A95A89742C8D1410E3BCB69C5shsmsx102ccrcor_ Content-Type: text/plain; charset="us-ascii" Content-Transfer-Encoding: quoted-printable Apply Errors in Dashboard: 1. Ferruh has analyzed all the failures, see the attached excel for de= tails. Went through all the failures one by one. 2. DOC patches have been excluded. It should be fine in future. 3. Wrong tree, Intel build would poll all the sub-trees and find one s= ub-tree can build, then build. It can work for build, but consider doing th= e performance test, so we will not 4. Dependency to other patchset, this dependency is difficult to detec= t automatically since patchset has no strict format for the dependency patc= hes. The solution is not urgent requested, and can be put aside. MLX performance public status: Erez got the confirmation about the disclaimers from legal and Ali is worki= ng on the configuration documents and targeted to send the link to Jeremy b= y end of this week. Jeremy's update on dashboard: The graph to show the performance data is alm= ost done. Jermey will send out the sample screenshot following the mail. Go= od progress. And next Jeremy will check the apply errors related CI. --_000_82F45D86ADE5454A95A89742C8D1410E3BCB69C5shsmsx102ccrcor_ Content-Type: text/html; charset="us-ascii" Content-Transfer-Encoding: quoted-printable

Apply Errors in Dashboard:

1.      Ferruh has analyzed all the failures, see the attac= hed excel for details. Went through all the failures one by one.

2.      DOC patches have been excluded. It should be fine i= n future.

3.      Wrong tree, Intel build would poll all the sub-tree= s and find one sub-tree can build, then build. It can work for build, but c= onsider doing the performance test, so we will not

4.      Dependency to other patchset, this dependency is di= fficult to detect automatically since patchset has no strict format for the= dependency patches. The solution is not urgent requested, and can be put a= side.

MLX performance public status:

Erez got the confirmation about the disclaimers from= legal and Ali is working on the configuration documents and targeted to se= nd the link to Jeremy by end of this week.

 

Jeremy’s update on dashboard: The graph to sho= w the performance data is almost done. Jermey will send out the sample scre= enshot following the mail. Good progress. And next Jeremy will check the ap= ply errors related CI.

 

 

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