Return-Path: X-Original-To: apmail-climate-dev-archive@minotaur.apache.org Delivered-To: apmail-climate-dev-archive@minotaur.apache.org Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by minotaur.apache.org (Postfix) with SMTP id D5075189E8 for ; Mon, 27 Jul 2015 20:21:11 +0000 (UTC) Received: (qmail 45974 invoked by uid 500); 27 Jul 2015 20:21:11 -0000 Delivered-To: apmail-climate-dev-archive@climate.apache.org Received: (qmail 45931 invoked by uid 500); 27 Jul 2015 20:21:11 -0000 Mailing-List: contact dev-help@climate.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: dev@climate.apache.org Delivered-To: mailing list dev@climate.apache.org Received: (qmail 45920 invoked by uid 99); 27 Jul 2015 20:21:11 -0000 Received: from Unknown (HELO spamd3-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Mon, 27 Jul 2015 20:21:11 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd3-us-west.apache.org (ASF Mail Server at spamd3-us-west.apache.org) with ESMTP id 52322191393 for ; Mon, 27 Jul 2015 20:21:11 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd3-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 0.971 X-Spam-Level: X-Spam-Status: No, score=0.971 tagged_above=-999 required=6.31 tests=[KAM_LAZY_DOMAIN_SECURITY=1, RCVD_IN_MSPIKE_H3=-0.01, RCVD_IN_MSPIKE_WL=-0.01, T_RP_MATCHES_RCVD=-0.01, URIBL_BLOCKED=0.001] autolearn=disabled Received: from mx1-us-west.apache.org ([10.40.0.8]) by localhost (spamd3-us-west.apache.org [10.40.0.10]) (amavisd-new, port 10024) with ESMTP id kBi10kD-nR7k for ; Mon, 27 Jul 2015 20:21:05 +0000 (UTC) Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by mx1-us-west.apache.org (ASF Mail Server at mx1-us-west.apache.org) with SMTP id 033B523130 for ; Mon, 27 Jul 2015 20:21:04 +0000 (UTC) Received: (qmail 45828 invoked by uid 99); 27 Jul 2015 20:21:04 -0000 Received: from arcas.apache.org (HELO arcas.apache.org) (140.211.11.28) by apache.org (qpsmtpd/0.29) with ESMTP; Mon, 27 Jul 2015 20:21:04 +0000 Date: Mon, 27 Jul 2015 20:21:04 +0000 (UTC) From: "Huikyo Lee (JIRA)" To: dev@climate.incubator.apache.org Message-ID: In-Reply-To: References: Subject: [jira] [Updated] (CLIMATE-643) Updating some of examples MIME-Version: 1.0 Content-Type: text/plain; charset=utf-8 Content-Transfer-Encoding: 7bit X-JIRA-FingerPrint: 30527f35849b9dde25b450d4833f0394 [ https://issues.apache.org/jira/browse/CLIMATE-643?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ] Huikyo Lee updated CLIMATE-643: ------------------------------- Due Date: 31/Jul/15 (was: 14/Jun/15) Description: Paul L. suggested some ideas to update examples. For example, "knmi_to_cru_full_bias.py" needs to be updated with better description. The model to model bias could be replaced by model to observation data bias. The goal is providing 5 examples all based on an actual published papers. Currently, OCW examples generate wrong results when there is missing data in observational datasets. It is important to mask those grid points with missing values in model datasets so that no metrics calculation is done at those grid points. In other words, if any of observation/model dataset has missing value at a grid point, non-missing values in the other datasets need to be masked. was:Paul L. suggested some ideas to update examples. For example, "knmi_to_cru_full_bias.py" needs to be updated with better description. The model to model bias could be replaced by model to observation data bias. The goal is providing 5 examples all based on an actual published papers. > Updating some of examples > ------------------------- > > Key: CLIMATE-643 > URL: https://issues.apache.org/jira/browse/CLIMATE-643 > Project: Apache Open Climate Workbench > Issue Type: Improvement > Components: general > Affects Versions: 1.0.0 > Reporter: Huikyo Lee > Assignee: Huikyo Lee > Fix For: 1.0.0 > > > Paul L. suggested some ideas to update examples. For example, "knmi_to_cru_full_bias.py" needs to be updated with better description. The model to model bias could be replaced by model to observation data bias. The goal is providing 5 examples all based on an actual published papers. > Currently, OCW examples generate wrong results when there is missing data in observational datasets. It is important to mask those grid points with missing values in model datasets so that no metrics calculation is done at those grid points. In other words, if any of observation/model dataset has missing value at a grid point, non-missing values in the other datasets need to be masked. -- This message was sent by Atlassian JIRA (v6.3.4#6332)