chơi xổ số keno trực tuyến

{"appState":{"pageLoadApiCallsStatus":true},"categoryState":{"relatedCategories":{"headers":{"timestamp":"2025-03-04T08:01:19+00:00"},"categoryId":34244,"data":{"title":"Data Management","slug":"data-management","image":{"src":null,"width":0,"height":0},"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"parentCategory":{"categoryId":34225,"title":"Business","slug":"business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"}},"childCategories":[],"description":"You get it from your customers, your products, and your employees — data. But now that you have it, how do you sort it out? Let us help.","relatedArticles":{"self":"//dummies-api.coursofppt.com/v2/articles?category=34244&offset=0&size=5"},"hasArticle":true,"hasBook":true,"articleCount":12,"bookCount":2},"_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"relatedCategoriesLoadedStatus":"success"},"listState":{"list":{"count":10,"total":12,"items":[{"headers":{"creationTime":"2025-01-16T18:58:25+00:00","modifiedTime":"2025-01-26T15:33:23+00:00","timestamp":"2025-01-26T18:01:12+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Five Must-Have Features of Data Observability","strippedTitle":"five must-have features of data observability","slug":"five-must-have-features-of-data-observability","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"Ensure the health of your data at every stage with a comprehensive data observability solution. Learn the must-have features of a strong data observability platform.","noIndex":0,"noFollow":0},"content":"In this article you will learn:\r\n<ul>\r\n \t<li><a href=\"#what\">What is data observability?</a></li>\r\n \t<li><a href=\"#why\">Why is data observability necessary for your data platform?</a></li>\r\n \t<li><a href=\"#features\">What are the must-have features of a strong data observability platform?</a></li>\r\n</ul>\r\n<div id=\"what\"></div>\r\n<h2 id=\"tab1\" >What is data observability?</h2>\r\nData is increasingly important to today’s businesses — and ensuring the quality and reliability of that data is critical. High-quality data is the fuel for everything from building new products to driving accurate decision making. <a href=\"//www.montecarlodata.com/blog-what-is-data-observability/\" target=\"_blank\" rel=\"noopener\">Data observability</a> was created to make ensuring the quality of data easier, faster, and more scalable over the long term.\r\n\r\nData observability gives organizations a complete view of their data's health at every stage — from data pipelines to infrastructure — as well as delivering at-a-glance views of dependencies and relationships between datasets. By leveraging data observability, data teams can quickly identify and resolve data quality issues before they reach data consumers, effectively reducing costs, minimizing impact, and driving confidence in the data products it protects.\r\n<div id=\"why\"></div>\r\n<h2 id=\"tab2\" >Why is data observability necessary?</h2>\r\n<em>Data downtime</em> — time when data is incomplete, erroneous, missing, or otherwise inaccurate — can be disastrous for organizations. From misallocated budgets to broken AI models, data quality issues can wreak havoc on organizations of all kinds.\r\n\r\nWhile data quality testing and monitoring are relatively common practices, data observability goes beyond the traditional methods of testing and monitoring. Data observability manages and improves data quality <em>at scale</em> by leveraging automated monitoring, custom rules, root cause analysis tools, and impact analysis to not only catch and resolve known data quality incidents faster but to detect and resolve unknown data quality issues as well.\r\n<div id=\"features\"></div>\r\n<h2 id=\"tab3\" >Five must-have elements of a strong data observability platform</h2>\r\nChoosing the right <a href=\"//www.montecarlodata.com/blog-data-observability-tools/\" target=\"_blank\" rel=\"noopener\">data observability tool</a> can help your company avoid a menagerie of serious and costly data quality incidents, so it’s important to know what features you should have on your shopping list. Below are five features you should look for when considering a data observability solution for your data stack.\r\n<ol>\r\n \t<li>\r\n<p class=\"first-para\"><strong>ML-powered deep and broad data monitoring — both out-of-the-box and custom monitors</strong></p>\r\n<p class=\"child-para\">A key aspect of an effective data observability platform is its use of machine learning (ML) for data monitoring. Platforms with ML enable teams to programmatically identify data quality and performance issues, such as data freshness, volume issues, and schema changes out-of-the-box. Data observability platforms also offer the ability to create custom monitors that are tailored to your specific business needs and applied to your most critical tables, providing deep monitoring where you need it and allowing you to tackle recurrent data issues that can crop up within specific data environments.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>End-to-end integrations across cloud and on-prem tooling</strong></p>\r\n<p class=\"child-para\">An effective data observability platform should work with tools both in the cloud and on-prem. This necessary integration allows for comprehensive oversight of your data platform, from ingestion and storage to transformation and consumption. This integration helps track data movement across a variety of settings, which improves the platform's ability to find and fix quality issues quickly and effectively.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Incident triaging and resolution workflows</strong></p>\r\n<p class=\"child-para\">To reduce the impact of data problems, it's important to have effective workflows for triaging and resolving incidents. A good data observability platform simplifies the steps to detect, triage, resolve, and measure data quality issues. This usually involves automatic alerts, tools to prioritize issues by severity and impact, and robust integrations with messaging and project management tools that complement existing workflows. Efficient prioritization means data teams can concentrate on the most urgent problems, which helps decrease delays and keeps the data accurate and reliable.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Root cause and impact analysis via field-level lineage</strong></p>\r\n<p class=\"child-para\">Identifying the underlying cause of a data quality issue is essential to preventing it in the future. An effective data observability platform will provide field-level lineage, which provides an at-a-glance view of where the data came from, how it was changed, and what dependencies or data products are impacted by it. This information allows data teams to quickly understand the root-cause of an issue upon detection, decide who’s responsible for resolving it, and determine who should be informed to minimize cost.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Performance monitoring — query optimization and cloud cost management</strong></p>\r\n<p class=\"child-para\">A key part of a strong data observability platform is performance monitoring, which includes improving query efficiency and managing cloud costs. This function helps you find and fix inefficient data queries and processes that could raise operating costs or slow down performance. By making queries more efficient and optimizing cloud resources, organizations can make their data operations more cost-effective and deliver greater value from their data platform at a significantly lower cost.</p>\r\n</li>\r\n</ol>\r\n<h2 id=\"tab4\" >Pioneering the future of reliable data with data observability</h2>\r\nImplementing a data observability platform that includes these five elements will empower your organization to reduce data downtime, improve data reliability, deliver more value for stakeholders, and foster an environment of data trust across your organization.\r\n\r\nDownload <em><a href=\"//info.montecarlodata.com/data-observability-for-dummies-monte-carlo-edition/?utm_source=third_party&utm_medium=cs&utm_campaign=dummiesguide\" target=\"_blank\" rel=\"noopener\" data-testid=\"bookSponsorDownloadButton\">Data Observability For Dummies</a></em> to discover how data observability can help you improve your data reliability, build organizational trust, and deliver even more value from your data products.","description":"In this article you will learn:\r\n<ul>\r\n \t<li><a href=\"#what\">What is data observability?</a></li>\r\n \t<li><a href=\"#why\">Why is data observability necessary for your data platform?</a></li>\r\n \t<li><a href=\"#features\">What are the must-have features of a strong data observability platform?</a></li>\r\n</ul>\r\n<div id=\"what\"></div>\r\n<h2 id=\"tab1\" >What is data observability?</h2>\r\nData is increasingly important to today’s businesses — and ensuring the quality and reliability of that data is critical. High-quality data is the fuel for everything from building new products to driving accurate decision making. <a href=\"//www.montecarlodata.com/blog-what-is-data-observability/\" target=\"_blank\" rel=\"noopener\">Data observability</a> was created to make ensuring the quality of data easier, faster, and more scalable over the long term.\r\n\r\nData observability gives organizations a complete view of their data's health at every stage — from data pipelines to infrastructure — as well as delivering at-a-glance views of dependencies and relationships between datasets. By leveraging data observability, data teams can quickly identify and resolve data quality issues before they reach data consumers, effectively reducing costs, minimizing impact, and driving confidence in the data products it protects.\r\n<div id=\"why\"></div>\r\n<h2 id=\"tab2\" >Why is data observability necessary?</h2>\r\n<em>Data downtime</em> — time when data is incomplete, erroneous, missing, or otherwise inaccurate — can be disastrous for organizations. From misallocated budgets to broken AI models, data quality issues can wreak havoc on organizations of all kinds.\r\n\r\nWhile data quality testing and monitoring are relatively common practices, data observability goes beyond the traditional methods of testing and monitoring. Data observability manages and improves data quality <em>at scale</em> by leveraging automated monitoring, custom rules, root cause analysis tools, and impact analysis to not only catch and resolve known data quality incidents faster but to detect and resolve unknown data quality issues as well.\r\n<div id=\"features\"></div>\r\n<h2 id=\"tab3\" >Five must-have elements of a strong data observability platform</h2>\r\nChoosing the right <a href=\"//www.montecarlodata.com/blog-data-observability-tools/\" target=\"_blank\" rel=\"noopener\">data observability tool</a> can help your company avoid a menagerie of serious and costly data quality incidents, so it’s important to know what features you should have on your shopping list. Below are five features you should look for when considering a data observability solution for your data stack.\r\n<ol>\r\n \t<li>\r\n<p class=\"first-para\"><strong>ML-powered deep and broad data monitoring — both out-of-the-box and custom monitors</strong></p>\r\n<p class=\"child-para\">A key aspect of an effective data observability platform is its use of machine learning (ML) for data monitoring. Platforms with ML enable teams to programmatically identify data quality and performance issues, such as data freshness, volume issues, and schema changes out-of-the-box. Data observability platforms also offer the ability to create custom monitors that are tailored to your specific business needs and applied to your most critical tables, providing deep monitoring where you need it and allowing you to tackle recurrent data issues that can crop up within specific data environments.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>End-to-end integrations across cloud and on-prem tooling</strong></p>\r\n<p class=\"child-para\">An effective data observability platform should work with tools both in the cloud and on-prem. This necessary integration allows for comprehensive oversight of your data platform, from ingestion and storage to transformation and consumption. This integration helps track data movement across a variety of settings, which improves the platform's ability to find and fix quality issues quickly and effectively.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Incident triaging and resolution workflows</strong></p>\r\n<p class=\"child-para\">To reduce the impact of data problems, it's important to have effective workflows for triaging and resolving incidents. A good data observability platform simplifies the steps to detect, triage, resolve, and measure data quality issues. This usually involves automatic alerts, tools to prioritize issues by severity and impact, and robust integrations with messaging and project management tools that complement existing workflows. Efficient prioritization means data teams can concentrate on the most urgent problems, which helps decrease delays and keeps the data accurate and reliable.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Root cause and impact analysis via field-level lineage</strong></p>\r\n<p class=\"child-para\">Identifying the underlying cause of a data quality issue is essential to preventing it in the future. An effective data observability platform will provide field-level lineage, which provides an at-a-glance view of where the data came from, how it was changed, and what dependencies or data products are impacted by it. This information allows data teams to quickly understand the root-cause of an issue upon detection, decide who’s responsible for resolving it, and determine who should be informed to minimize cost.</p>\r\n</li>\r\n \t<li>\r\n<p class=\"first-para\"><strong>Performance monitoring — query optimization and cloud cost management</strong></p>\r\n<p class=\"child-para\">A key part of a strong data observability platform is performance monitoring, which includes improving query efficiency and managing cloud costs. This function helps you find and fix inefficient data queries and processes that could raise operating costs or slow down performance. By making queries more efficient and optimizing cloud resources, organizations can make their data operations more cost-effective and deliver greater value from their data platform at a significantly lower cost.</p>\r\n</li>\r\n</ol>\r\n<h2 id=\"tab4\" >Pioneering the future of reliable data with data observability</h2>\r\nImplementing a data observability platform that includes these five elements will empower your organization to reduce data downtime, improve data reliability, deliver more value for stakeholders, and foster an environment of data trust across your organization.\r\n\r\nDownload <em><a href=\"//info.montecarlodata.com/data-observability-for-dummies-monte-carlo-edition/?utm_source=third_party&utm_medium=cs&utm_campaign=dummiesguide\" target=\"_blank\" rel=\"noopener\" data-testid=\"bookSponsorDownloadButton\">Data Observability For Dummies</a></em> to discover how data observability can help you improve your data reliability, build organizational trust, and deliver even more value from your data products.","blurb":"","authors":[],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[{"label":"What is data observability?","target":"#tab1"},{"label":"Why is data observability necessary?","target":"#tab2"},{"label":"Five must-have elements of a strong data observability platform","target":"#tab3"},{"label":"Pioneering the future of reliable data with data observability","target":"#tab4"}],"relatedArticles":{"fromBook":[],"fromCategory":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296105,"title":"Tools Used for Data Governance","slug":"tools-used-for-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296105"}},{"articleId":296085,"title":"What Is Data Governance?","slug":"what-is-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296085"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}},{"articleId":223424,"title":"Data Management Considerations for Your Business Plan","slug":"data-management-considerations-business-plan","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/223424"}}]},"hasRelatedBookFromSearch":false,"relatedBook":{"bookId":0,"slug":null,"isbn":null,"categoryList":null,"amazon":null,"image":null,"title":null,"testBankPinActivationLink":null,"bookOutOfPrint":false,"authorsInfo":null,"authors":null,"_links":null},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[null]},{&quot;key&quot;:&quot;sponsored&quot;,&quot;values&quot;:[&quot;customsolutions&quot;]}]\" id=\"du-slot-65b3f3687f354\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[null]},{&quot;key&quot;:&quot;sponsored&quot;,&quot;values&quot;:[&quot;customsolutions&quot;]}]\" id=\"du-slot-65b3f3687fb9f\"></div></div>"},"articleType":{"articleType":"Articles","articleList":null,"content":null,"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":true,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"Brought to you by Monte Carlo","brandingLink":"//www.montecarlodata.com/","brandingLogo":{"src":"//coursofppt.com/wp-content/uploads/monte-carlo-logo.png","width":184,"height":60},"sponsorAd":"","sponsorEbookTitle":"Data Observability For Dummies, Monte Carlo Special Edition","sponsorEbookLink":"//info.montecarlodata.com/data-observability-for-dummies-monte-carlo-edition/?utm_source=third_party&utm_medium=cs&utm_campaign=dummiesguide","sponsorEbookImage":{"src":"//coursofppt.com/wp-content/uploads/data-observability-for-dummies-monte-carlo-special-edition-164x255.jpg","width":164,"height":255}},"primaryLearningPath":"Solve","lifeExpectancy":"One year","lifeExpectancySetFrom":"2025-01-18T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[{"adPairKey":"sponsored","adPairValue":"customsolutions"}]},"status":"publish","visibility":"public","articleId":301483},{"headers":{"creationTime":"2023-12-05T21:53:09+00:00","modifiedTime":"2024-01-31T18:31:26+00:00","timestamp":"2024-01-31T21:01:02+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"What Is Data Governance?","strippedTitle":"what is data governance?","slug":"what-is-data-governance","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"The term data governance can seem abstract, so learn exactly what it means and how important it is to today's organizations.","noIndex":0,"noFollow":0},"content":"<figure style=\"margin: 0;\"><figcaption style=\"margin-bottom: 10px;\">Listen to the article:</figcaption><audio src=\"/wp-content/uploads/what-is-data-governance.mp3\" controls=\"controls\"><a href=\"/wp-content/uploads/what-is-data-governance.mp3\"><span data-mce-type=\"bookmark\" style=\"display: inline-block; width: 0px; overflow: hidden; line-height: 0;\" class=\"mce_SELRES_start\"></span>Download audio</a></audio></figure>\r\nTo be effective at their jobs, staff in an organization want to find the data they need quickly, and they want it to be high-quality data. This means the data needs to be accurate and current. Leaders want data to provide the basis for rich insights that enable timely and informed data-driven decision-making.\r\n\r\n[caption id=\"attachment_296089\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296089\" src=\"//coursofppt.com/wp-content/uploads/woman-looking-at-data-adobestock_457606001.jpg\" alt=\"\" width=\"630\" height=\"420\" /> ©Andrey Popov / Adobe Stock[/caption]\r\n\r\nThe legal department requires data to be handled by everyone in a manner consistent with laws and regulations. Product designers want data to inform creative decisions that align with marketplace demands and customer trends. Security professionals are tasked with ensuring that the data is appropriately protected.\r\n\r\nUndoubtedly, a wide range of stakeholders want to harness the remarkable power of data.\r\n\r\nTo achieve these and other increasingly common business demands, you need some form of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/tools-used-for-data-governance-296105/\" target=\"_blank\" rel=\"noopener\">data control and accountability</a> in your enterprise. Quality results require the diligent management of your organization’s data.\r\n<p class=\"article-tips remember\">Data governance is all about managing data well.</p>\r\n\r\n<h2 id=\"tab1\" >Well-managed data can drive growth</h2>\r\nToday, when data is managed well, it can drive innovation and growth and can be an enterprise’s most abundant and important lever for success.\r\n\r\nWell managed data can be transformational, and it can support the desirable qualities of a data-driven culture. This is when decisions at all levels of the organization are made using data in an informed and structured manner such that they deliver better outcomes internally and to customers.\r\n\r\nResearch confirms that most business leaders today want their organizations to be data-driven, but, according to a survey by NewVantage Partners, only around 32 percent are achieving that goal.\r\n\r\nSuccessful data governance also means that data risks can be minimized, and data compliance and regulatory requirements can be met with ease. This can bring important comfort to business leaders who, in some jurisdictions, can now be personally liable for issues arising from poor data management.\r\n<p class=\"article-tips remember\">Every organization manages data at some level. All businesses generate, process, use, and store data as a result of their daily operations. But there’s a huge difference between businesses that casually manage data and those that consider data to be a valuable asset and treat it accordingly. This difference is characterized by the degree in which there are formalities in managing data.</p>\r\nBroadly, the discipline in which an organization acts in recognition of the value of its <em>information assets</em> (a fancy term for data with specific value to an organization, such as a customer or product record) is called <em>enterprise information management</em> (EIM). Governing and managing data well is a central enabler of EIM, which also includes using technologies and processes to elevate data to be a shared enterprise asset.\r\n<h2 id=\"tab2\" >Data governance versus data management</h2>\r\nWithin the EIM space there are many terms that sound like they might mean the same thing. There is often confusion about the difference between data governance and data management. <em>Data governance</em> is focused on roles and responsibilities, policies, definitions, metrics, and the lifecycle of data.\r\n\r\n<em>Data management</em> is the technical implementation of data governance. For example, databases, data warehouses and lakes, application programming interfaces (APIs), analytics software, encryption, data crunching, and architectural design and implementation are all data management features and functions.\r\n<h2 id=\"tab3\" >Data governance versus information governance</h2>\r\nSimilarly, in EIM, you may want clarity on the difference between data governance and information governance. Data governance generally focuses on data, independent of its meaning. For example, you may want to govern the security of patient data and staff data from a policy and process perspective, despite their differences. The interest here is on the data, not as much on the business context.\r\n\r\n<em>Information governance</em> is entirely concerned with the meaning of the data and its relationship in terms of outcomes and value to the organization, customers, and other stakeholders.\r\n\r\nYou might experience obvious overlap between the two terms. For sure, as a data governance practitioner, to some extent you’ll be operating in both the data and information governance worlds each day. This shouldn’t present an issue as long as the strategy for data governance is well understood.\r\n\r\nMy view is that understanding the context of data, a concept known as <em>data intelligence,</em> and the desired business outcomes, complement data governance efforts in a valuable manner.\r\n<h2 id=\"tab4\" >The value of data governance</h2>\r\nIf an organization considers data to be a priority and it <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/components-of-a-data-governance-framework-296111/\" target=\"_blank\" rel=\"noopener\">puts in place processes and policies</a> to leverage the data’s value and reduce data risks, that organization is demonstrating a strong commitment to data controls and accountabilities. In other words, that organization values data governance.\r\n\r\nAn increasing number of businesses value data governance; in fact, according to Anmut, a data consultancy, 91 percent of business leaders say that data is a critical part of their organization’s success.\r\n\r\nFundamentally, data governance is driven by a desire to increase the value of data and reduce the risks associated with it. It forces a leap from an ad hoc approach to data to one that is strategic in nature.\r\n\r\nSome of the main advantages achieved by good data governance include:\r\n<ul>\r\n \t<li>Improved data quality</li>\r\n \t<li>Expanded data value</li>\r\n \t<li>Increased data compliance</li>\r\n \t<li>Improved data-driven decision-making</li>\r\n \t<li>Enhanced business performance</li>\r\n \t<li>Greater sharing and use of data across the enterprise and externally</li>\r\n \t<li>Increased data availability and accessibility</li>\r\n \t<li>Improved data search</li>\r\n \t<li>Reduced risks from data-related issues</li>\r\n \t<li>Reduced data management costs</li>\r\n \t<li>Established rules for handling data</li>\r\n</ul>\r\nAny one of these alone is desirable, but a well-executed and maintained data governance program will deliver many of these and more.\r\n\r\nIn the absence of formalized data governance, organizations will continue to struggle in achieving these advantages and may, in fact, suffer negative consequences. For example, poor quality data that is not current, inaccurate, and incomplete can lead to operating inefficiencies and poor decision-making.\r\n<p class=\"article-tips warning\">Data governance does not emerge by chance. It’s a choice and requires organizational commitment and investment.</p>","description":"<figure style=\"margin: 0;\"><figcaption style=\"margin-bottom: 10px;\">Listen to the article:</figcaption><audio src=\"/wp-content/uploads/what-is-data-governance.mp3\" controls=\"controls\"><a href=\"/wp-content/uploads/what-is-data-governance.mp3\"><span data-mce-type=\"bookmark\" style=\"display: inline-block; width: 0px; overflow: hidden; line-height: 0;\" class=\"mce_SELRES_start\"></span>Download audio</a></audio></figure>\r\nTo be effective at their jobs, staff in an organization want to find the data they need quickly, and they want it to be high-quality data. This means the data needs to be accurate and current. Leaders want data to provide the basis for rich insights that enable timely and informed data-driven decision-making.\r\n\r\n[caption id=\"attachment_296089\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296089\" src=\"//coursofppt.com/wp-content/uploads/woman-looking-at-data-adobestock_457606001.jpg\" alt=\"\" width=\"630\" height=\"420\" /> ©Andrey Popov / Adobe Stock[/caption]\r\n\r\nThe legal department requires data to be handled by everyone in a manner consistent with laws and regulations. Product designers want data to inform creative decisions that align with marketplace demands and customer trends. Security professionals are tasked with ensuring that the data is appropriately protected.\r\n\r\nUndoubtedly, a wide range of stakeholders want to harness the remarkable power of data.\r\n\r\nTo achieve these and other increasingly common business demands, you need some form of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/tools-used-for-data-governance-296105/\" target=\"_blank\" rel=\"noopener\">data control and accountability</a> in your enterprise. Quality results require the diligent management of your organization’s data.\r\n<p class=\"article-tips remember\">Data governance is all about managing data well.</p>\r\n\r\n<h2 id=\"tab1\" >Well-managed data can drive growth</h2>\r\nToday, when data is managed well, it can drive innovation and growth and can be an enterprise’s most abundant and important lever for success.\r\n\r\nWell managed data can be transformational, and it can support the desirable qualities of a data-driven culture. This is when decisions at all levels of the organization are made using data in an informed and structured manner such that they deliver better outcomes internally and to customers.\r\n\r\nResearch confirms that most business leaders today want their organizations to be data-driven, but, according to a survey by NewVantage Partners, only around 32 percent are achieving that goal.\r\n\r\nSuccessful data governance also means that data risks can be minimized, and data compliance and regulatory requirements can be met with ease. This can bring important comfort to business leaders who, in some jurisdictions, can now be personally liable for issues arising from poor data management.\r\n<p class=\"article-tips remember\">Every organization manages data at some level. All businesses generate, process, use, and store data as a result of their daily operations. But there’s a huge difference between businesses that casually manage data and those that consider data to be a valuable asset and treat it accordingly. This difference is characterized by the degree in which there are formalities in managing data.</p>\r\nBroadly, the discipline in which an organization acts in recognition of the value of its <em>information assets</em> (a fancy term for data with specific value to an organization, such as a customer or product record) is called <em>enterprise information management</em> (EIM). Governing and managing data well is a central enabler of EIM, which also includes using technologies and processes to elevate data to be a shared enterprise asset.\r\n<h2 id=\"tab2\" >Data governance versus data management</h2>\r\nWithin the EIM space there are many terms that sound like they might mean the same thing. There is often confusion about the difference between data governance and data management. <em>Data governance</em> is focused on roles and responsibilities, policies, definitions, metrics, and the lifecycle of data.\r\n\r\n<em>Data management</em> is the technical implementation of data governance. For example, databases, data warehouses and lakes, application programming interfaces (APIs), analytics software, encryption, data crunching, and architectural design and implementation are all data management features and functions.\r\n<h2 id=\"tab3\" >Data governance versus information governance</h2>\r\nSimilarly, in EIM, you may want clarity on the difference between data governance and information governance. Data governance generally focuses on data, independent of its meaning. For example, you may want to govern the security of patient data and staff data from a policy and process perspective, despite their differences. The interest here is on the data, not as much on the business context.\r\n\r\n<em>Information governance</em> is entirely concerned with the meaning of the data and its relationship in terms of outcomes and value to the organization, customers, and other stakeholders.\r\n\r\nYou might experience obvious overlap between the two terms. For sure, as a data governance practitioner, to some extent you’ll be operating in both the data and information governance worlds each day. This shouldn’t present an issue as long as the strategy for data governance is well understood.\r\n\r\nMy view is that understanding the context of data, a concept known as <em>data intelligence,</em> and the desired business outcomes, complement data governance efforts in a valuable manner.\r\n<h2 id=\"tab4\" >The value of data governance</h2>\r\nIf an organization considers data to be a priority and it <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/components-of-a-data-governance-framework-296111/\" target=\"_blank\" rel=\"noopener\">puts in place processes and policies</a> to leverage the data’s value and reduce data risks, that organization is demonstrating a strong commitment to data controls and accountabilities. In other words, that organization values data governance.\r\n\r\nAn increasing number of businesses value data governance; in fact, according to Anmut, a data consultancy, 91 percent of business leaders say that data is a critical part of their organization’s success.\r\n\r\nFundamentally, data governance is driven by a desire to increase the value of data and reduce the risks associated with it. It forces a leap from an ad hoc approach to data to one that is strategic in nature.\r\n\r\nSome of the main advantages achieved by good data governance include:\r\n<ul>\r\n \t<li>Improved data quality</li>\r\n \t<li>Expanded data value</li>\r\n \t<li>Increased data compliance</li>\r\n \t<li>Improved data-driven decision-making</li>\r\n \t<li>Enhanced business performance</li>\r\n \t<li>Greater sharing and use of data across the enterprise and externally</li>\r\n \t<li>Increased data availability and accessibility</li>\r\n \t<li>Improved data search</li>\r\n \t<li>Reduced risks from data-related issues</li>\r\n \t<li>Reduced data management costs</li>\r\n \t<li>Established rules for handling data</li>\r\n</ul>\r\nAny one of these alone is desirable, but a well-executed and maintained data governance program will deliver many of these and more.\r\n\r\nIn the absence of formalized data governance, organizations will continue to struggle in achieving these advantages and may, in fact, suffer negative consequences. For example, poor quality data that is not current, inaccurate, and incomplete can lead to operating inefficiencies and poor decision-making.\r\n<p class=\"article-tips warning\">Data governance does not emerge by chance. It’s a choice and requires organizational commitment and investment.</p>","blurb":"","authors":[{"authorId":33378,"name":"Jonathan Reichental","slug":"jonathan-reichental","description":" <p><b>Jonathan Reichental, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/33378"}}],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[{"label":"Well-managed data can drive growth","target":"#tab1"},{"label":"Data governance versus data management","target":"#tab2"},{"label":"Data governance versus information governance","target":"#tab3"},{"label":"The value of data governance","target":"#tab4"}],"relatedArticles":{"fromBook":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296105,"title":"Tools Used for Data Governance","slug":"tools-used-for-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296105"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}}],"fromCategory":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296105,"title":"Tools Used for Data Governance","slug":"tools-used-for-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296105"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}},{"articleId":223424,"title":"Data Management Considerations for Your Business Plan","slug":"data-management-considerations-business-plan","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/223424"}},{"articleId":207585,"title":"Customer Analytics For Dummies Cheat Sheet","slug":"customer-analytics-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/207585"}}]},"hasRelatedBookFromSearch":false,"relatedBook":{"bookId":295833,"slug":"data-governance-for-dummies","isbn":"9781119906773","categoryList":["business-careers-money","business","data-management"],"amazon":{"default":"//www.amazon.com/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","ca":"//www.amazon.ca/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","indigo_ca":"//www.tkqlhce.com/click-9208661-13710633?url=//www.chapters.indigo.ca/en-ca/books/product/1119906776-item.html&cjsku=978111945484","gb":"//www.amazon.co.uk/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","de":"//www.amazon.de/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20"},"image":{"src":"//coursofppt.com/wp-content/uploads/data-governance-for-dummies-cover-9781119906773-203x255.jpg","width":203,"height":255},"title":"Data Governance For Dummies","testBankPinActivationLink":"","bookOutOfPrint":true,"authorsInfo":"<p><p><b><b data-author-id=\"33378\">Jonathan Reichental</b>, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning.</p>","authors":[{"authorId":33378,"name":"Jonathan Reichental","slug":"jonathan-reichental","description":" <p><b>Jonathan Reichental, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/33378"}}],"_links":{"self":"//dummies-api.coursofppt.com/v2/books/"}},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-63d9818eac7e8\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-63d9818eacfc7\"></div></div>"},"articleType":{"articleType":"Articles","articleList":null,"content":null,"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":false,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"","brandingLink":"","brandingLogo":{"src":null,"width":0,"height":0},"sponsorAd":"","sponsorEbookTitle":"","sponsorEbookLink":"","sponsorEbookImage":{"src":null,"width":0,"height":0}},"primaryLearningPath":"Advance","lifeExpectancy":"Five years","lifeExpectancySetFrom":"2023-12-05T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[]},"status":"publish","visibility":"public","articleId":296085},{"headers":{"creationTime":"2017-03-27T16:47:37+00:00","modifiedTime":"2024-01-06T19:32:20+00:00","timestamp":"2024-01-06T21:01:03+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Customer Analytics For Dummies Cheat Sheet","strippedTitle":"customer analytics for dummies cheat sheet","slug":"customer-analytics-for-dummies-cheat-sheet","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"Customer analytics is different than many business metrics you're probably familiar with: It focuses on customers' needs rather than on the company's needs. Thr","noIndex":1,"noFollow":0},"content":"<p>Customer analytics is different than many business metrics you're probably familiar with: It focuses on customers' needs rather than on the company's needs. Through customer analytics, you can understand what drives customer satisfaction, customer loyalty, and repeat purchases. You'll also understand how your customers differ or are the same and how that may affect different pricing strategies, features, and marketing campaigns.</p>\r\n","description":"<p>Customer analytics is different than many business metrics you're probably familiar with: It focuses on customers' needs rather than on the company's needs. Through customer analytics, you can understand what drives customer satisfaction, customer loyalty, and repeat purchases. You'll also understand how your customers differ or are the same and how that may affect different pricing strategies, features, and marketing campaigns.</p>\r\n","blurb":"","authors":[{"authorId":9279,"name":"Jeff Sauro","slug":"jeff-sauro","description":" <p><b>Jeff Sauro</b> is a Six-Sigma trained statistical analyst and pioneer in quantifying the customer experience. He writes a weekly column at measuringu.com and has been an invited speaker at Fortune 500 companies, industry conferences, and as an expert witness.</p>","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9279"}}],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[],"relatedArticles":{"fromBook":[],"fromCategory":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296105,"title":"Tools Used for Data Governance","slug":"tools-used-for-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296105"}},{"articleId":296085,"title":"What Is Data Governance?","slug":"what-is-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296085"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}},{"articleId":223424,"title":"Data Management Considerations for Your Business Plan","slug":"data-management-considerations-business-plan","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/223424"}}]},"hasRelatedBookFromSearch":false,"relatedBook":{"bookId":0,"slug":null,"isbn":null,"categoryList":null,"amazon":null,"image":null,"title":null,"testBankPinActivationLink":null,"bookOutOfPrint":false,"authorsInfo":null,"authors":null,"_links":null},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[null]}]\" id=\"du-slot-63b88c0f29dc6\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[null]}]\" id=\"du-slot-63b88c0f2a65d\"></div></div>"},"articleType":{"articleType":"Cheat Sheet","articleList":[{"articleId":145750,"title":"Decide What Customer Data to Collect","slug":"decide-what-customer-data-to-collect","categoryList":[],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/145750"}},{"articleId":145808,"title":"Use the Right Methods for Your Customer Analytics","slug":"use-the-right-methods-for-your-customer-analytics","categoryList":[],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/145808"}},{"articleId":145740,"title":"The Steps of a Customer's Journey","slug":"the-steps-of-a-customers-journey","categoryList":[],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/145740"}},{"articleId":145721,"title":"Find Sample Sizes","slug":"find-sample-sizes","categoryList":[],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/145721"}}],"content":[{"title":"Decide What Customer Data to Collect","thumb":null,"image":null,"content":"<p>It&#8217;s a good idea to understand the problems and opportunities for your customers. Collect data that falls into each of these categories to get a wide range of useful data when you apply customer analytics:</p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><b>Descriptive:</b> Descriptive data includes demographic data such as gender, age, geography, and income. It also includes self-described attitudes and preferences toward products, categories, and technology. You can collect this data from purchases, registrations, surveys, interviews, and contextual inquiries.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Behavioral:</b> Behavioral data is the general pattern customers exhibit when using your products and services. It includes making purchases, registering, browsing, and using various devices for those actions.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Interaction:</b> The interaction data includes the clicks, navigation paths, and browsing activities customers take on websites and software.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Attitudinal:</b> Preference data, opinions, desirability, branding, and sentiments are usually captured in surveys, usability tests, and customer interviews.</p>\n</li>\n</ul>\n"},{"title":"Use the Right Methods for Your Customer Analytics","thumb":null,"image":null,"content":"<p>Collecting the wrong data for what you want to accomplish with your customer analytics project does you no good. Here are ten methods you can use for specific purposes:</p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><b>Voice of customer study:</b> This gives you a way to obtain the basic demographics of the people who purchase, make repeat purchases, and recommend your company and products to friends.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Customer segmentation:</b> Segmenting customers by demographics, behaviors, and profitability gives you better ideas on how to better serve current customer demographics. It also enables you to discover any unmet needs and deliver better products and services in the future.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Persona development: </b>A persona embodies the key characteristics of a customer segment by highlighting salient demographics, goals, and top tasks for development teams. Personas represent fictional customers but should be based on real data obtained from customer segmentation analyses, ethnographic research, surveys, and interviews.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Journey mapping:</b> A customer journey map helps identify problem areas customers encounter while engaging a product or service and can locate opportunities for improvement. It can also help unify often disparate and competing efforts within the same organization by providing different departments with a single document that maps the customer&#8217;s entire experience with a product, service, or company.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Top-task analysis:</b> A top-task analysis helps separate the critical few tasks from the trivial many by having customers pick their most essential tasks. Targeting your efforts on significant tasks and delivering a solid experience where it has the biggest impact means more satisfied customers and customers who are more willing to repeat purchase, return, and recommend to friends.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Usability study:</b> You find what customers find difficult about your product or website. Observing how just a few customers use the product can uncover most of the common problems with an interface.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Findability study:</b> A findability study is a specialized usability study that focuses on the taxonomy (labels and hierarchy) and ignores distractions such as the design, layout, and search capabilities.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Conjoint analysis:</b> A<i> </i>conjoint analysis produces an accurate view of customer ratings by isolating which features have the biggest impact on preference. It&#8217;s typically used in the product development stages to understand which features to build or how changing price or options affect customers&#8217; future behavior.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Key driver analysis:</b> A key driver analysis identifies which features contribute the most to customer satisfaction, customer loyalty, or any other key variable of interest. Have customers rate their satisfaction with the most important features or functional areas of an experience.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Gap analysis:</b> In a gap analysis, customers rate or rank the most important features and aspects of a product or service. Then, customers rate or rank how satisfied they are with each of the features. For each feature, you find the &#8220;gap&#8221; by subtracting the average satisfaction rating from the average importance rating.</p>\n</li>\n</ul>\n"},{"title":"The Steps of a Customer's Journey","thumb":null,"image":null,"content":"<p>A customer journey map is a visualization of the phases a customer goes through when engaging with a product or service. Apply customer analytics, start with a specific customer segment, and then work from general to specific details:</p>\n<ol class=\"level-one\">\n<li>\n<p class=\"first-para\">Pick a persona or segment.</p>\n<p class=\"child-para\">With customers segmented by demographics and behavior, you have many of the important pieces of the customer journey ready.</p>\n</li>\n<li>\n<p class=\"first-para\">Determine the stages.</p>\n<p class=\"child-para\">Construct a map around a sequence of events that happen in a timeline. This is usually awareness, consideration, preference, action, and loyalty.</p>\n</li>\n<li>\n<p class=\"first-para\">Define the steps.</p>\n<p class=\"child-para\">Construct a sequence of major steps the customer takes from awareness to post-purchase. The steps are more finely grained segments to describe the sequences through the journey.</p>\n</li>\n<li>\n<p class=\"first-para\">Identify the touchpoints.</p>\n<p class=\"child-para\">List the physical or digital interaction your customers experience during their relationship life cycle with your product or service: websites, salespeople, store, TV and radio advertisements, search engine results, direct mail, email, and social media.</p>\n</li>\n<li>\n<p class=\"first-para\">Identify customer questions at each stage.</p>\n<p class=\"child-para\">Ask your target customers what questions they have about the product or service. This helps craft branding messages, opportunities for product improvements, and the metrics you should collect to determine how well you&#8217;re addressing each stage.</p>\n</li>\n<li>\n<p class=\"first-para\">Find the pain points.</p>\n<p class=\"child-para\">At each stage (awareness, consideration, preference, action, and loyalty), understand where the customer, or prospective customer, encounters barriers or friction to making a purchase or repeat purchase.</p>\n</li>\n<li>\n<p class=\"first-para\">Define metrics for each stage.</p>\n<p class=\"child-para\">Look for metrics that are already being collected in your organization or by a third party, or collect them yourself.</p>\n</li>\n<li>\n<p class=\"first-para\">Identify who is accountable for each stage in the journey.</p>\n<p class=\"child-para\">Be sure someone is accountable to each stage, and ideally, each step. Different disciplines, from product development to marketing to usability, know their domains and metrics best.</p>\n</li>\n<li>\n<p class=\"first-para\">Uncover opportunities.</p>\n<p class=\"child-para\">Look at each of the pain points as an opportunity for innovation and improvement, and not just for damage control.</p>\n</li>\n<li>\n<p class=\"first-para\">Periodically validate.</p>\n<p class=\"child-para\">Plan on revisiting your journey map to see what information has changed and what needs to be updated.</p>\n</li>\n</ol>\n"},{"title":"Find Sample Sizes","thumb":null,"image":null,"content":"<p>With customer analytics, collecting data from a sample of customers costs a lot less and takes a lot less time than measuring every customer. The level of precision you get from even a small sample is usually sufficient to make decisions from the data.</p>\n<p>If you have a stand-alone survey or study (no comparisons), here&#8217;s the margin of error you will have for each sample size (based on a proportion of .50 and 95% confidence).</p>\n<table>\n<tr>\n<th>95% Margin of Error (+/-)</th>\n<th>Sample Size</th>\n</tr>\n<tr>\n<td>24%</td>\n<td>13</td>\n</tr>\n<tr>\n<td>20%</td>\n<td>21</td>\n</tr>\n<tr>\n<td>15%</td>\n<td>39</td>\n</tr>\n<tr>\n<td>14%</td>\n<td>46</td>\n</tr>\n<tr>\n<td>13%</td>\n<td>53</td>\n</tr>\n<tr>\n<td>12%</td>\n<td>63</td>\n</tr>\n<tr>\n<td>11%</td>\n<td>76</td>\n</tr>\n<tr>\n<td>10%</td>\n<td>93</td>\n</tr>\n<tr>\n<td>9%</td>\n<td>115</td>\n</tr>\n<tr>\n<td>8%</td>\n<td>147</td>\n</tr>\n<tr>\n<td>7%</td>\n<td>193</td>\n</tr>\n<tr>\n<td>6%</td>\n<td>263</td>\n</tr>\n<tr>\n<td>5%</td>\n<td>381</td>\n</tr>\n<tr>\n<td>4%</td>\n<td>597</td>\n</tr>\n<tr>\n<td>3%</td>\n<td>1,064</td>\n</tr>\n<tr>\n<td>2%</td>\n<td>2,398</td>\n</tr>\n</table>\n<p>If you&#8217;re conducting a comparison study (using surveys, usability studies, or findability studies), here are the sample sizes needed to be able to detect a difference (based on a proportion of .50, 90% confidence, and 80% power). The Sample Size within Subjects column represents same participants on each version, and the Sample Size between Subjects column represents different participants on each version.</p>\n<table>\n<tr>\n<th>Difference to Detect</th>\n<th>Sample Size within Subjects</th>\n<th>Sample Size between Subjects</th>\n</tr>\n<tr>\n<td>50%</td>\n<td>17</td>\n<td>22</td>\n</tr>\n<tr>\n<td>40%</td>\n<td>20</td>\n<td>34</td>\n</tr>\n<tr>\n<td>30%</td>\n<td>29</td>\n<td>64</td>\n</tr>\n<tr>\n<td>20%</td>\n<td>50</td>\n<td>150</td>\n</tr>\n<tr>\n<td>12%</td>\n<td>93</td>\n<td>426</td>\n</tr>\n<tr>\n<td>10%</td>\n<td>115</td>\n<td>614</td>\n</tr>\n<tr>\n<td>9%</td>\n<td>130</td>\n<td>760</td>\n</tr>\n<tr>\n<td>8%</td>\n<td>148</td>\n<td>962</td>\n</tr>\n<tr>\n<td>7%</td>\n<td>171</td>\n<td>1,258</td>\n</tr>\n<tr>\n<td>6%</td>\n<td>202</td>\n<td>1,714</td>\n</tr>\n<tr>\n<td>5%</td>\n<td>246</td>\n<td>2,468</td>\n</tr>\n<tr>\n<td>4%</td>\n<td>312</td>\n<td>3,860</td>\n</tr>\n<tr>\n<td>3%</td>\n<td>421</td>\n<td>6,866</td>\n</tr>\n<tr>\n<td>2%</td>\n<td>640</td>\n<td>15,452</td>\n</tr>\n<tr>\n<td>1%</td>\n<td>1,297</td>\n<td>61,822</td>\n</tr>\n</table>\n<p>If you&#8217;re conducting an A/B test to compare conversion rates, here are the sample sizes you need to detect differences from design A to design B for differences of .1% to 50% (assumes 90% confidence and 80% power). </p>\n<table>\n<tr>\n<th>Difference</th>\n<th>Each Group</th>\n<th>Total</th>\n<th>Design A Conversion Rate</th>\n<th>Design B Conversion Rate</th>\n</tr>\n<tr>\n<td>0.1%</td>\n<td>592,905</td>\n<td>1,185,810</td>\n<td>5%</td>\n<td>5.1%</td>\n</tr>\n<tr>\n<td>0.5%</td>\n<td>24,604</td>\n<td>49,208</td>\n<td>5%</td>\n<td>5.5%</td>\n</tr>\n<tr>\n<td>1.0%</td>\n<td>6,428</td>\n<td>12,856</td>\n<td>5%</td>\n<td>6.0%</td>\n</tr>\n<tr>\n<td>5.0%</td>\n<td>344</td>\n<td>688</td>\n<td>5%</td>\n<td>10.0%</td>\n</tr>\n<tr>\n<td>10.0%</td>\n<td>112</td>\n<td>224</td>\n<td>5%</td>\n<td>15.0%</td>\n</tr>\n<tr>\n<td>20.0%</td>\n<td>40</td>\n<td>80</td>\n<td>5%</td>\n<td>25.0%</td>\n</tr>\n<tr>\n<td>30.0%</td>\n<td>23</td>\n<td>46</td>\n<td>5%</td>\n<td>35.0%</td>\n</tr>\n<tr>\n<td>40.0%</td>\n<td>15</td>\n<td>30</td>\n<td>5%</td>\n<td>45.0%</td>\n</tr>\n<tr>\n<td>50.0%</td>\n<td>11</td>\n<td>22</td>\n<td>5%</td>\n<td>55.0%</td>\n</tr>\n</table>\n"}],"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":false,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"","brandingLink":"","brandingLogo":{"src":null,"width":0,"height":0},"sponsorAd":"","sponsorEbookTitle":"","sponsorEbookLink":"","sponsorEbookImage":{"src":null,"width":0,"height":0}},"primaryLearningPath":"Advance","lifeExpectancy":"One year","lifeExpectancySetFrom":"2024-01-05T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[]},"status":"publish","visibility":"public","articleId":207585},{"headers":{"creationTime":"2023-12-06T17:57:21+00:00","modifiedTime":"2023-12-07T14:34:35+00:00","timestamp":"2023-12-07T15:01:02+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Tools Used for Data Governance","strippedTitle":"tools used for data governance","slug":"tools-used-for-data-governance","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"Learn about the emergence of new data management tools, including in the areas of DataOps and DevOps, and the roles they play today.","noIndex":0,"noFollow":0},"content":"In general, the definition of a data governance tool is one that assists in the creation and maintenance of policies, procedures, and processes that control how data is stored, used, and managed.\r\n\r\nNo doubt, many aspects of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/what-is-data-governance-296085/\" target=\"_blank\" rel=\"noopener\">data governance</a> are complex, particularly in larger organizations. Fortunately, as expected from a competitive marketplace, where there is opportunity, you will find providers and their software solutions only too willing to help.\r\n\r\nAs data has grown in its significance to every organization, particularly in just the last few years during the Cambrian explosion of data, many innovative data tools have been introduced. Some of the software has emerged from the largest technology players, such as Microsoft, Oracle, IBM, CA, Informatica, and SAP, but also mid-sized and even startups have entered this lucrative space.\r\n\r\nI’m not going to list solutions here, as there’s always a risk of implying some bias or leaving out an obvious player, plus, and this is probably the bigger reason, the marketplace is changing too fast and any list I provide will inevitably be dated quickly.\r\n\r\nThe quantity and quality of innovative data tools recently introduced have been game-changers. The figure below is illustrative of many of the areas now addressed with software tools.\r\n\r\n[caption id=\"attachment_296103\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296103\" src=\"//coursofppt.com/wp-content/uploads/data-governance-areas.jpg\" alt=\"Chart showing the various areas of data governance\" width=\"630\" height=\"799\" /> ©John Wiley & Sons, Inc.<br />Software tools serve all of these data governance areas.[/caption]\r\n\r\nWith the increasing use of technologies, such as artificial intelligence, data management, governance, and analytics (and frankly, all aspects of data science) organizations have benefitted from increased automation, better decision-making, improved efficiencies and speed, higher data quality, greater compliance, and even the ability to contribute to increased revenue.\r\n<p class=\"article-tips tip\">To achieve these potential benefits, it’s certainly important for your organization to evaluate what tools may make sense.</p>\r\n\r\n<h2 id=\"tab1\" >Selecting data governance tools</h2>\r\nDetermining what tools you need, like so many things, depends on several factors. Considerations will often include:\r\n<ul>\r\n \t<li>Business priorities and requirements</li>\r\n \t<li>The suite of data tools already available in the organization</li>\r\n \t<li>The complexity of data environment</li>\r\n \t<li>The complexity of IT infrastructure</li>\r\n \t<li>Current maturity level of data governance</li>\r\n \t<li>A narrow or broad focus of data governance objectives</li>\r\n \t<li>Skill sets of data governance team and data staff across the organization</li>\r\n \t<li>Available budget</li>\r\n \t<li>Data governance team appetite for automation and system administration</li>\r\n</ul>\r\nTool requirements may emerge out of an existing pain point, like so many solutions do. But deciding on a toolset may also be the product of a requirements-gathering process that considers the items in this list and others.\r\n\r\nSome of the common features now found in data governance tools include:\r\n<ul>\r\n \t<li><strong>Data discovery, collation, and cataloging:</strong> A mechanism to identify, collate, and support data set search.</li>\r\n \t<li><strong>Data quality management:</strong> Tools that identify and correct flaws, cleanse, validate, and transform data.</li>\r\n \t<li><strong>Master data management (MDM):</strong> This is covered earlier in the chapter in the “Master data management” section.</li>\r\n \t<li><strong>Data analytics:</strong> An application to enable the discovery of insights in data.</li>\r\n \t<li><strong>Reporting platform:</strong> A solution to generate all manner of business reports.</li>\r\n \t<li><strong>Data visualization:</strong> An application that uses graphical elements as a way to see and understand trends, outliers, and patterns in data.</li>\r\n \t<li><strong>Data glossary and dictionary:</strong> A repository that contains terms and definitions used to describe data and its usage context.</li>\r\n \t<li><strong>Compliance tools:</strong> Solutions that automate and facilitate processes and procedures that support industry, legal, security and regulatory and compliance requirements.</li>\r\n \t<li><strong>Policy management:</strong> A tool that helps in the creation policies, supports their review and approval, distributes to impacted staff, and can track that team members have received or viewed content.</li>\r\n \t<li><strong>Data lineage:</strong> A solution that identifies, maps, and explains the source and destination of data, including its origin and stops along the way. Data lineage is also known as <em>data provenance</em>.</li>\r\n</ul>\r\nKeep in mind that some tools are designed to do one or more of these tasks really well, while other solutions try to provide an entire suite of solutions. Needs, cost, and complexity are factors when determining whether to buy a single feature or full-suite solution.\r\n<h2 id=\"tab2\" >DataOps and DevOps</h2>\r\nA defining characteristic of the early years of the 21st century is the need to innovate at speed. In an unforgiving marketplace, organizations that are slow to improve their internal processes or cannot bring products and services to the market are at a disadvantage, which can result in business failure.\r\n\r\nIn this context, greater emphasis has been placed on finding ways to accelerate innovation and produce more frequent deliverables.\r\n\r\nWith technology playing such a central role in innovation, it was observed that the relationship between teams that created solutions — primarily based on software — and those responsible for deploying and supporting the code, were not aligned. These two groups, the developers and the IT operations teams, for example, reported to different leaders and had dissimilar performance goals.\r\n\r\nAround 2007, a movement started to better integrate development and operations that was aptly named <em>DevOps</em>.\r\n\r\nDevOps is a reimaging of how to build and deliver solutions quickly. It incorporates automation, collaboration, communication, feedback, and iterative development cycles.\r\n\r\nIn a similar fashion, but on the premise that organizations were struggling with data volume and velocity, and the slow speed of deriving insights, it was observed that efficiencies could be gained in rethinking the lifecycle of data within the enterprise.\r\n\r\nUsing the concepts and successes of DevOps, around 2014, a new approach to data analytics emerged called <em>DataOps</em>. Some called it DevOps for data science. The figure below shows the data management areas that are being automated — the shaded areas — with DataOps.\r\n\r\n[caption id=\"attachment_296104\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296104\" src=\"//coursofppt.com/wp-content/uploads/dataops-automated-management.jpg\" alt=\"Flow chart showing data management operations that can be automated with dataops\" width=\"630\" height=\"329\" /> ©John Wiley & Sons, Inc.<br />More than half of data management operations can be automated (shaded areas) with DataOps.[/caption]\r\n<p class=\"article-tips remember\">Like DevOps, DataOps uses contemporary work approaches such as collaboration, tools, and automation to find efficiencies and deliver higher quality and quicker insights. You can think of DataOps as a way to kick data analytics into high gear.</p>\r\nCentral to DataOps is the emphasis on collaboration between participants in the data value chain. This includes data analysts, data engineers, IT team members, quality control, and data governance.\r\n\r\nIn addition, like DevOps, DataOps proposes an agile approach to delivering data solutions. Instead of long periods of requirements analysis, design, and then development, work is broken into smaller chunks and priority is given to delivering value quickly and often. Cycle times are compressed, and business users get the data they need sooner.\r\n\r\nAs an example of inefficiencies in the absence of DataOps, a marketing leader requests the development of a new monthly report. In traditional development lifecycle organization, it can take weeks and even months to elicit and validate the requirements for the report, design and develop it, receive feedback and make changes, and then deploy it.\r\n\r\nThe long cycle times lead to disappointment and missed opportunities, and it deters data requestors from even making requests. DataOps changes the game on requests like these through a mix of agile methods, improved collaboration, and automation.\r\n<p class=\"article-tips remember\">Recent research revealed that many companies that embraced DataOps and agile practices were experiencing a 60 percent increase in revenues and profit growth.</p>\r\nDataOps can be implemented through team structuring and new processes. But it can also be facilitated through new supporting tools that include artificial intelligence and automation. A dynamic marketplace has emerged that will provide you with many options and new capabilities to accelerate your data analytics cycle times.\r\n\r\nDataOps is a type of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/components-of-a-data-governance-framework-296111/\" target=\"_blank\" rel=\"noopener\">data governance</a> in that it focuses on improved and faster methods to deliver more data value and quality while also considering risk. In addition, it requires the participation and support of the data governance team to help with policies, standards, quality control, and security considerations.\r\n\r\nDataOps tools can also give data governance teams new, actionable visibility to data use, flow, and challenges in the organization.\r\n\r\nSome say DataOps is the future of data governance. The evidence is certainly pointing in that direction.","description":"In general, the definition of a data governance tool is one that assists in the creation and maintenance of policies, procedures, and processes that control how data is stored, used, and managed.\r\n\r\nNo doubt, many aspects of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/what-is-data-governance-296085/\" target=\"_blank\" rel=\"noopener\">data governance</a> are complex, particularly in larger organizations. Fortunately, as expected from a competitive marketplace, where there is opportunity, you will find providers and their software solutions only too willing to help.\r\n\r\nAs data has grown in its significance to every organization, particularly in just the last few years during the Cambrian explosion of data, many innovative data tools have been introduced. Some of the software has emerged from the largest technology players, such as Microsoft, Oracle, IBM, CA, Informatica, and SAP, but also mid-sized and even startups have entered this lucrative space.\r\n\r\nI’m not going to list solutions here, as there’s always a risk of implying some bias or leaving out an obvious player, plus, and this is probably the bigger reason, the marketplace is changing too fast and any list I provide will inevitably be dated quickly.\r\n\r\nThe quantity and quality of innovative data tools recently introduced have been game-changers. The figure below is illustrative of many of the areas now addressed with software tools.\r\n\r\n[caption id=\"attachment_296103\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296103\" src=\"//coursofppt.com/wp-content/uploads/data-governance-areas.jpg\" alt=\"Chart showing the various areas of data governance\" width=\"630\" height=\"799\" /> ©John Wiley & Sons, Inc.<br />Software tools serve all of these data governance areas.[/caption]\r\n\r\nWith the increasing use of technologies, such as artificial intelligence, data management, governance, and analytics (and frankly, all aspects of data science) organizations have benefitted from increased automation, better decision-making, improved efficiencies and speed, higher data quality, greater compliance, and even the ability to contribute to increased revenue.\r\n<p class=\"article-tips tip\">To achieve these potential benefits, it’s certainly important for your organization to evaluate what tools may make sense.</p>\r\n\r\n<h2 id=\"tab1\" >Selecting data governance tools</h2>\r\nDetermining what tools you need, like so many things, depends on several factors. Considerations will often include:\r\n<ul>\r\n \t<li>Business priorities and requirements</li>\r\n \t<li>The suite of data tools already available in the organization</li>\r\n \t<li>The complexity of data environment</li>\r\n \t<li>The complexity of IT infrastructure</li>\r\n \t<li>Current maturity level of data governance</li>\r\n \t<li>A narrow or broad focus of data governance objectives</li>\r\n \t<li>Skill sets of data governance team and data staff across the organization</li>\r\n \t<li>Available budget</li>\r\n \t<li>Data governance team appetite for automation and system administration</li>\r\n</ul>\r\nTool requirements may emerge out of an existing pain point, like so many solutions do. But deciding on a toolset may also be the product of a requirements-gathering process that considers the items in this list and others.\r\n\r\nSome of the common features now found in data governance tools include:\r\n<ul>\r\n \t<li><strong>Data discovery, collation, and cataloging:</strong> A mechanism to identify, collate, and support data set search.</li>\r\n \t<li><strong>Data quality management:</strong> Tools that identify and correct flaws, cleanse, validate, and transform data.</li>\r\n \t<li><strong>Master data management (MDM):</strong> This is covered earlier in the chapter in the “Master data management” section.</li>\r\n \t<li><strong>Data analytics:</strong> An application to enable the discovery of insights in data.</li>\r\n \t<li><strong>Reporting platform:</strong> A solution to generate all manner of business reports.</li>\r\n \t<li><strong>Data visualization:</strong> An application that uses graphical elements as a way to see and understand trends, outliers, and patterns in data.</li>\r\n \t<li><strong>Data glossary and dictionary:</strong> A repository that contains terms and definitions used to describe data and its usage context.</li>\r\n \t<li><strong>Compliance tools:</strong> Solutions that automate and facilitate processes and procedures that support industry, legal, security and regulatory and compliance requirements.</li>\r\n \t<li><strong>Policy management:</strong> A tool that helps in the creation policies, supports their review and approval, distributes to impacted staff, and can track that team members have received or viewed content.</li>\r\n \t<li><strong>Data lineage:</strong> A solution that identifies, maps, and explains the source and destination of data, including its origin and stops along the way. Data lineage is also known as <em>data provenance</em>.</li>\r\n</ul>\r\nKeep in mind that some tools are designed to do one or more of these tasks really well, while other solutions try to provide an entire suite of solutions. Needs, cost, and complexity are factors when determining whether to buy a single feature or full-suite solution.\r\n<h2 id=\"tab2\" >DataOps and DevOps</h2>\r\nA defining characteristic of the early years of the 21st century is the need to innovate at speed. In an unforgiving marketplace, organizations that are slow to improve their internal processes or cannot bring products and services to the market are at a disadvantage, which can result in business failure.\r\n\r\nIn this context, greater emphasis has been placed on finding ways to accelerate innovation and produce more frequent deliverables.\r\n\r\nWith technology playing such a central role in innovation, it was observed that the relationship between teams that created solutions — primarily based on software — and those responsible for deploying and supporting the code, were not aligned. These two groups, the developers and the IT operations teams, for example, reported to different leaders and had dissimilar performance goals.\r\n\r\nAround 2007, a movement started to better integrate development and operations that was aptly named <em>DevOps</em>.\r\n\r\nDevOps is a reimaging of how to build and deliver solutions quickly. It incorporates automation, collaboration, communication, feedback, and iterative development cycles.\r\n\r\nIn a similar fashion, but on the premise that organizations were struggling with data volume and velocity, and the slow speed of deriving insights, it was observed that efficiencies could be gained in rethinking the lifecycle of data within the enterprise.\r\n\r\nUsing the concepts and successes of DevOps, around 2014, a new approach to data analytics emerged called <em>DataOps</em>. Some called it DevOps for data science. The figure below shows the data management areas that are being automated — the shaded areas — with DataOps.\r\n\r\n[caption id=\"attachment_296104\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296104\" src=\"//coursofppt.com/wp-content/uploads/dataops-automated-management.jpg\" alt=\"Flow chart showing data management operations that can be automated with dataops\" width=\"630\" height=\"329\" /> ©John Wiley & Sons, Inc.<br />More than half of data management operations can be automated (shaded areas) with DataOps.[/caption]\r\n<p class=\"article-tips remember\">Like DevOps, DataOps uses contemporary work approaches such as collaboration, tools, and automation to find efficiencies and deliver higher quality and quicker insights. You can think of DataOps as a way to kick data analytics into high gear.</p>\r\nCentral to DataOps is the emphasis on collaboration between participants in the data value chain. This includes data analysts, data engineers, IT team members, quality control, and data governance.\r\n\r\nIn addition, like DevOps, DataOps proposes an agile approach to delivering data solutions. Instead of long periods of requirements analysis, design, and then development, work is broken into smaller chunks and priority is given to delivering value quickly and often. Cycle times are compressed, and business users get the data they need sooner.\r\n\r\nAs an example of inefficiencies in the absence of DataOps, a marketing leader requests the development of a new monthly report. In traditional development lifecycle organization, it can take weeks and even months to elicit and validate the requirements for the report, design and develop it, receive feedback and make changes, and then deploy it.\r\n\r\nThe long cycle times lead to disappointment and missed opportunities, and it deters data requestors from even making requests. DataOps changes the game on requests like these through a mix of agile methods, improved collaboration, and automation.\r\n<p class=\"article-tips remember\">Recent research revealed that many companies that embraced DataOps and agile practices were experiencing a 60 percent increase in revenues and profit growth.</p>\r\nDataOps can be implemented through team structuring and new processes. But it can also be facilitated through new supporting tools that include artificial intelligence and automation. A dynamic marketplace has emerged that will provide you with many options and new capabilities to accelerate your data analytics cycle times.\r\n\r\nDataOps is a type of <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/components-of-a-data-governance-framework-296111/\" target=\"_blank\" rel=\"noopener\">data governance</a> in that it focuses on improved and faster methods to deliver more data value and quality while also considering risk. In addition, it requires the participation and support of the data governance team to help with policies, standards, quality control, and security considerations.\r\n\r\nDataOps tools can also give data governance teams new, actionable visibility to data use, flow, and challenges in the organization.\r\n\r\nSome say DataOps is the future of data governance. The evidence is certainly pointing in that direction.","blurb":"","authors":[{"authorId":33378,"name":"Jonathan Reichental","slug":"jonathan-reichental","description":" <p><b>Jonathan Reichental, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/33378"}}],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[{"label":"Selecting data governance tools","target":"#tab1"},{"label":"DataOps and DevOps","target":"#tab2"}],"relatedArticles":{"fromBook":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296085,"title":"What Is Data Governance?","slug":"what-is-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296085"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}}],"fromCategory":[{"articleId":296111,"title":"Components of a Data Governance Framework","slug":"components-of-a-data-governance-framework","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296111"}},{"articleId":296085,"title":"What Is Data Governance?","slug":"what-is-data-governance","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/296085"}},{"articleId":295904,"title":"Data Governance For Dummies Cheat Sheet","slug":"data-governance-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/295904"}},{"articleId":223424,"title":"Data Management Considerations for Your Business Plan","slug":"data-management-considerations-business-plan","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/223424"}},{"articleId":207501,"title":"Business Intelligence For Dummies Cheat Sheet","slug":"business-intelligence-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/207501"}}]},"hasRelatedBookFromSearch":false,"relatedBook":{"bookId":295833,"slug":"data-governance-for-dummies","isbn":"9781119906773","categoryList":["business-careers-money","business","data-management"],"amazon":{"default":"//www.amazon.com/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","ca":"//www.amazon.ca/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","indigo_ca":"//www.tkqlhce.com/click-9208661-13710633?url=//www.chapters.indigo.ca/en-ca/books/product/1119906776-item.html&cjsku=978111945484","gb":"//www.amazon.co.uk/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20","de":"//www.amazon.de/gp/product/1119906776/ref=as_li_tl?ie=UTF8&tag=wiley01-20"},"image":{"src":"//coursofppt.com/wp-content/uploads/data-governance-for-dummies-cover-9781119906773-203x255.jpg","width":203,"height":255},"title":"Data Governance For Dummies","testBankPinActivationLink":"","bookOutOfPrint":true,"authorsInfo":"<p><p><b><b data-author-id=\"33378\">Jonathan Reichental</b>, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning.</p>","authors":[{"authorId":33378,"name":"Jonathan Reichental","slug":"jonathan-reichental","description":" <p><b>Jonathan Reichental, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/33378"}}],"_links":{"self":"//dummies-api.coursofppt.com/v2/books/"}},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-6390aaaef1d6b\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-6390aaaef2567\"></div></div>"},"articleType":{"articleType":"Articles","articleList":null,"content":null,"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":false,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"","brandingLink":"","brandingLogo":{"src":null,"width":0,"height":0},"sponsorAd":"","sponsorEbookTitle":"","sponsorEbookLink":"","sponsorEbookImage":{"src":null,"width":0,"height":0}},"primaryLearningPath":"Advance","lifeExpectancy":"Five years","lifeExpectancySetFrom":"2023-12-06T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[]},"status":"publish","visibility":"public","articleId":296105},{"headers":{"creationTime":"2023-12-06T19:18:09+00:00","modifiedTime":"2023-12-07T14:29:37+00:00","timestamp":"2023-12-07T15:01:02+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Components of a Data Governance Framework","strippedTitle":"components of a data governance framework","slug":"components-of-a-data-governance-framework","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"Learn about the important components involved in developing a data governance framework for your organization.","noIndex":0,"noFollow":0},"content":"You can’t buy a data governance program off-the-shelf. That’s actually good news. Organizations must implement a program relative to its level of interest, as well as its needs, budget, and capabilities.\r\n\r\nEven a modest effort can produce meaningful results. Glancing at all the areas in the figure below may seem overwhelming, but not all of these elements need to be addressed (certainly not at first), and there are different degrees in which each can be pursued. As you read and learn about them in this book, you can decide what makes most sense for your organization.\r\n\r\n[caption id=\"attachment_296109\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296109\" src=\"//coursofppt.com/wp-content/uploads/elements-data-gov-program.jpg\" alt=\"Graphic showing the most common elements of a data governance program\" width=\"630\" height=\"623\" /> ©John Wiley & Sons, Inc.<br />The most common elements of a data governance program[/caption]\r\n\r\nRegardless of how and to what degree you implement the elements of a <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/what-is-data-governance-296085/\" target=\"_blank\" rel=\"noopener\">data governance</a> program, you’ll need a basic set of guiding concepts and a structure in which to apply them. This is called the data governance framework.\r\n<p class=\"article-tips remember\">While there are many framework variations to choose from, including ISACA’s Control Objectives for Information and Related Technologies (COBIT) IT governance framework, they share some common components that address people, process, and technology.</p>\r\nI’ve done the hard work of distilling down the most important qualities of a data governance framework and captured them in the figure below. These components are explored in detail in the book <a href=\"//coursofppt.com/book/business-careers-money/business/data-management/data-governance-for-dummies-295833/\" target=\"_blank\" rel=\"noopener\"><em>Data Governance For Dummies</em></a>. It covers everything you need to know about how to implement a basic data governance framework.\r\n\r\n[caption id=\"attachment_296110\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296110\" src=\"//coursofppt.com/wp-content/uploads/data-gov-framework.jpg\" alt=\"Chart showing common components of a data governance framework\" width=\"630\" height=\"691\" /> ©John Wiley & Sons, Inc.<br />Common components of a data governance framework[/caption]\r\n\r\nThe data governance components in this figure are not in a specific order, with the exception of leadership and strategy, which is a prerequisite for the rest of the framework.\r\n<h2 id=\"tab1\" >Leadership and strategy</h2>\r\nYour data governance program must be aligned with the strategy of the organization. For example, how can data governance support the role that data plays in enabling growth in specific markets? Data plays a role in many aspects of organizational strategy, including risk management, innovation, and operational efficiencies, so you must ensure there’s a clear alignment between these aspects and the goals of data governance.\r\n<p class=\"article-tips warning\">The disconnect between business goals and data governance is the number one reason that data governance programs fail. When mapping organizational strategy to data governance, you need the support, agreement, and sponsorship of senior leadership. I’ll be blunt about this: Without full support from your organization’s leaders, your data governance efforts won’t succeed.</p>\r\n\r\n<h2 id=\"tab2\" >Roles and responsibilities</h2>\r\nYour data governance program will only be possible with the right people doing the right things at the right time. Every data governance framework includes the identification and assignment of specific roles and responsibilities, which range from the information technology (IT) team to data stewards.\r\n\r\nWhile specific roles do exist, your organization must understand that data governance requires responsibilities from nearly everyone.\r\n<h2 id=\"tab3\" >Policies, processes, and standards</h2>\r\nAt the heart of every data governance program are the policies, processes, and standards that guide responsibilities and support uniformity across the organization. Each of these must be designed, developed, and deployed. Depending on the size and complexity of the organization, this can take significant effort.\r\n\r\nPolicies, processes, and standards must include accountability and enforcement components; otherwise it’s possible they will be dead on arrival.\r\n<h2 id=\"tab4\" >Metrics</h2>\r\nThe data governance program must have a mechanism to measure whether it is delivering the expected results. Capturing metrics and delivering them to a variety of stakeholders is important for maintaining support, which includes funding.\r\n\r\nYou’ll want to know if your efforts are delivering on the promise of the program. Based on the metrics, you and your team can make continuous improvements (or make radical changes) to ensure that the program is producing value.\r\n<h2 id=\"tab5\" >Tools</h2>\r\nFortunately, a large marketplace now exists for <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/tools-used-for-data-governance-296105/\" target=\"_blank\" rel=\"noopener\">tools in support of data governance</a> and management. These include tools for master data management, data catalogs, search, security, integration, analytics, and compliance.\r\n\r\nIn recent years, many data science-related tools have made leaps in terms of incorporating ease-of-use and automation. What used to be complex has been democratized and empowered more team members to better manage and derive value from data.\r\n<h2 id=\"tab6\" >Communications and collaboration</h2>\r\nWith the introduction of data governance and the ongoing, sometimes evolving, requirements, high-quality communications are key. This takes many forms, including in-person meetings, emails, newsletters, and workshops.\r\n\r\nChange management, in particular, requires careful attention to ensure that impacted team members understand how the changes brought about by the data governance program affect them and their obligations.\r\n\r\nA large number of disparate stakeholders need to work together in order to effectively govern data. Collaboration is essential and can be the difference between success and failure. Good collaboration requires a positive culture that rewards teamwork. It also requires clear channels between teams, such as regular meetings. Online collaboration platforms are increasingly being used too.\r\n\r\n ","description":"You can’t buy a data governance program off-the-shelf. That’s actually good news. Organizations must implement a program relative to its level of interest, as well as its needs, budget, and capabilities.\r\n\r\nEven a modest effort can produce meaningful results. Glancing at all the areas in the figure below may seem overwhelming, but not all of these elements need to be addressed (certainly not at first), and there are different degrees in which each can be pursued. As you read and learn about them in this book, you can decide what makes most sense for your organization.\r\n\r\n[caption id=\"attachment_296109\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296109\" src=\"//coursofppt.com/wp-content/uploads/elements-data-gov-program.jpg\" alt=\"Graphic showing the most common elements of a data governance program\" width=\"630\" height=\"623\" /> ©John Wiley & Sons, Inc.<br />The most common elements of a data governance program[/caption]\r\n\r\nRegardless of how and to what degree you implement the elements of a <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/what-is-data-governance-296085/\" target=\"_blank\" rel=\"noopener\">data governance</a> program, you’ll need a basic set of guiding concepts and a structure in which to apply them. This is called the data governance framework.\r\n<p class=\"article-tips remember\">While there are many framework variations to choose from, including ISACA’s Control Objectives for Information and Related Technologies (COBIT) IT governance framework, they share some common components that address people, process, and technology.</p>\r\nI’ve done the hard work of distilling down the most important qualities of a data governance framework and captured them in the figure below. These components are explored in detail in the book <a href=\"//coursofppt.com/book/business-careers-money/business/data-management/data-governance-for-dummies-295833/\" target=\"_blank\" rel=\"noopener\"><em>Data Governance For Dummies</em></a>. It covers everything you need to know about how to implement a basic data governance framework.\r\n\r\n[caption id=\"attachment_296110\" align=\"alignnone\" width=\"630\"]<img class=\"size-full wp-image-296110\" src=\"//coursofppt.com/wp-content/uploads/data-gov-framework.jpg\" alt=\"Chart showing common components of a data governance framework\" width=\"630\" height=\"691\" /> ©John Wiley & Sons, Inc.<br />Common components of a data governance framework[/caption]\r\n\r\nThe data governance components in this figure are not in a specific order, with the exception of leadership and strategy, which is a prerequisite for the rest of the framework.\r\n<h2 id=\"tab1\" >Leadership and strategy</h2>\r\nYour data governance program must be aligned with the strategy of the organization. For example, how can data governance support the role that data plays in enabling growth in specific markets? Data plays a role in many aspects of organizational strategy, including risk management, innovation, and operational efficiencies, so you must ensure there’s a clear alignment between these aspects and the goals of data governance.\r\n<p class=\"article-tips warning\">The disconnect between business goals and data governance is the number one reason that data governance programs fail. When mapping organizational strategy to data governance, you need the support, agreement, and sponsorship of senior leadership. I’ll be blunt about this: Without full support from your organization’s leaders, your data governance efforts won’t succeed.</p>\r\n\r\n<h2 id=\"tab2\" >Roles and responsibilities</h2>\r\nYour data governance program will only be possible with the right people doing the right things at the right time. Every data governance framework includes the identification and assignment of specific roles and responsibilities, which range from the information technology (IT) team to data stewards.\r\n\r\nWhile specific roles do exist, your organization must understand that data governance requires responsibilities from nearly everyone.\r\n<h2 id=\"tab3\" >Policies, processes, and standards</h2>\r\nAt the heart of every data governance program are the policies, processes, and standards that guide responsibilities and support uniformity across the organization. Each of these must be designed, developed, and deployed. Depending on the size and complexity of the organization, this can take significant effort.\r\n\r\nPolicies, processes, and standards must include accountability and enforcement components; otherwise it’s possible they will be dead on arrival.\r\n<h2 id=\"tab4\" >Metrics</h2>\r\nThe data governance program must have a mechanism to measure whether it is delivering the expected results. Capturing metrics and delivering them to a variety of stakeholders is important for maintaining support, which includes funding.\r\n\r\nYou’ll want to know if your efforts are delivering on the promise of the program. Based on the metrics, you and your team can make continuous improvements (or make radical changes) to ensure that the program is producing value.\r\n<h2 id=\"tab5\" >Tools</h2>\r\nFortunately, a large marketplace now exists for <a href=\"//coursofppt.com/article/business-careers-money/business/data-management/tools-used-for-data-governance-296105/\" target=\"_blank\" rel=\"noopener\">tools in support of data governance</a> and management. These include tools for master data management, data catalogs, search, security, integration, analytics, and compliance.\r\n\r\nIn recent years, many data science-related tools have made leaps in terms of incorporating ease-of-use and automation. What used to be complex has been democratized and empowered more team members to better manage and derive value from data.\r\n<h2 id=\"tab6\" >Communications and collaboration</h2>\r\nWith the introduction of data governance and the ongoing, sometimes evolving, requirements, high-quality communications are key. This takes many forms, including in-person meetings, emails, newsletters, and workshops.\r\n\r\nChange management, in particular, requires careful attention to ensure that impacted team members understand how the changes brought about by the data governance program affect them and their obligations.\r\n\r\nA large number of disparate stakeholders need to work together in order to effectively govern data. Collaboration is essential and can be the difference between success and failure. Good collaboration requires a positive culture that rewards teamwork. It also requires clear channels between teams, such as regular meetings. Online collaboration platforms are increasingly being used too.\r\n\r\n ","blurb":"","authors":[{"authorId":33378,"name":"Jonathan Reichental","slug":"jonathan-reichental","description":" <p><b>Jonathan Reichental, PhD,</b> is a technologist, author, and professor. Along with his expertise in data governance, he also focuses on areas such as digital transformation, the fourth industrial revolution, the future of cities, and blockchain technologies. He is author of <i>Smart Cities For Dummies</i> and creator of the popular Learning Data Governance course, published by LinkedIn Learning. 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","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/33378"}}],"_links":{"self":"//dummies-api.coursofppt.com/v2/books/"}},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-6386730eec5c3\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9781119906773&quot;]}]\" id=\"du-slot-6386730eece08\"></div></div>"},"articleType":{"articleType":"Cheat Sheet","articleList":[{"articleId":0,"title":"","slug":null,"categoryList":[],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/"}}],"content":[{"title":"Creating data governance policy documents","thumb":null,"image":null,"content":"<p>A <em>policy</em> is an agreed-upon approach for guiding decisions to reach certain outcomes. Policies steer day-to-day actions in support of an organization’s philosophy, strategy, and the requirements of the marketplace, including laws and regulations.</p>\n<p>Policies are more than just rules; they communicate an organization’s values and culture.</p>\n<p>Some basic data governance policies may include:</p>\n<ul>\n<li><strong>Data access policy:</strong> This policy describes the organization’s approach to managing data security and the conditions in which a team member is granted access to data. It includes areas such as approval and security requirements.</li>\n<li><strong>Data usage policy:</strong> This policy describes the manner in which the organization expects data to be managed. It includes descriptions of what it considers data mishandling, unethical use, and the requirement to adhere to privacy laws and regulations.</li>\n<li><strong>Data provenance policy:</strong> This policy describes the expectation that certain data, such as that used in clinical trials, can be traced back to its original source and creation. It includes what business functions and data types are in scope, documentation requirements, and the necessity to record access information since data creation.</li>\n</ul>\n<h2>A seven-step process to developing a policy</h2>\n<p>The following process can help your organization develop policies that are meaningful, helpful, and consistent:</p>\n<ol>\n<li><strong> Understand: </strong>Fully analyze and document the drivers and goals of the policy. Seek approval of requirements by the right stakeholders before proceeding.</li>\n<li><strong> Research: </strong>Explore what other organizations are doing. Determine if a similar policy exists in your organization.</li>\n<li><strong> Create: </strong>Draft the policy and procedures. Collaborate with others to ensure diverse and detailed input. Be clear and concise. Avoid jargon.</li>\n<li><strong> Review: </strong>Circulate the policy widely for review and validation. Incorporate feedback.</li>\n<li><strong> Approve: </strong>Seek appropriate approval.</li>\n<li><strong> Implement: </strong>Communicate the policy. Offer training on the policy.</li>\n<li><strong> Review: </strong>Perform regular reviews and updates of the policy and procedures.</li>\n</ol>\n<h3>Creating the data governance policy document</h3>\n<p>Once a policy has been identified for creation, you need to produce the actual policy (Step 3). I suggest that the data governance office agree on a standard template, working in collaboration with other stakeholders.</p>\n<p>Consistency in documentation elevates predictability and as a result reduces the burden on policy stakeholders to have to decipher different formats.</p>\n<p>Here are the minimum suggested items to include in a data governance policy template:</p>\n<ul>\n<li><strong>Document ID:</strong> Using a unique identifier supports search and referencing.</li>\n<li><strong>Policy name:</strong> Use a name that is meaningful. For example, Data Quality and Integrity.</li>\n<li><strong>Date created:</strong> Knowing when the policy was created is useful for historical and reference purposes.</li>\n<li><strong>Last updated:</strong> This date lets the user know how current the policy is.</li>\n<li><strong>Owner:</strong> This could be the data owner, the business function, Chief Data Officer (CDO), or other. Don’t use an actual name. Instead refer to the role.</li>\n<li><strong>Purpose:</strong> This describes the reason for the policy. It should include how the policy supports the goals of the organization.</li>\n<li><strong>Scope:</strong> Here you include who and what is impacted by the policy.</li>\n<li><strong>Rules:</strong> This is a description or list of the rules that guide the policy.</li>\n<li><strong>Roles and responsibilities:</strong> This section lists specific stakeholders and their obligations.</li>\n<li><strong>Procedure:</strong> If appropriate, here’s where you list the specific steps that must be taken in support of the policy.</li>\n<li><strong>Definitions (optional):</strong> I suggest including this as a way to explain any jargon that’s unfamiliar to the user.</li>\n<li><strong>Resources:</strong> This section lists resources such as the laws and regulations that are driving the policy. It can also be links and citations to resources where users can learn more about the broader context of the policy. For example, it could include a link to understand the penalties of non-compliance.</li>\n<li><strong>Review process (optional):</strong> This section outlines details on the review process, such as how often and by whom it is updated.</li>\n</ul>\n"},{"title":"Responsibilities of a data governance council","thumb":null,"image":null,"content":"<p>On any given day, at any given moment, data responsibility is in the hands of data users. These are team members who handle data in the course of their work. Consider anyone who enters data, creates a report, submits a query, or builds an application. It could be anyone from an intern right through to a senior executive.</p>\n<p>With the implementation of a data governance program, the data responsibilities of team members take on importance and urgency.</p>\n<p class=\"article-tips remember\">These obligations are the result of teams that are created to deliver and support the goals of the data governance program. These teams have responsibilities that include deploying and overseeing strategy, creating standards, enforcing rules, and operating and maintaining the program.</p>\n<p>One of the most important leadership teams that provides strategic oversight for an organization’s data governance program is the data governance council.</p>\n<h3>The purpose of a data governance council</h3>\n<p>A data governance council (DGC) — also referred to as a data governance board or data governance committee — is an organization’s overall governing body for data governance strategy and support. Its priorities include approving policies and standards, prioritizing data efforts, enforcing policies and standards, and communicating value up and down the organization.</p>\n<p>The DGC empowers the entire organization to create value with data while also ensuring compliance with security, privacy, and other regulations.</p>\n<p>The DGC is comprised of a variety of participants who appropriately represent the organization. The team should reflect available resources, capacity, and need. If the DGC is overstaffed, people will criticize it as overkill. If it is understaffed, it won’t have sufficient capacity to provide effective oversight.</p>\n<p>The council can be run by a nominated executive, although if that is the approach, data skills and experience should be a consideration. Often, the Chief Information Officer, Chief Data Officer, or data governance manager is assigned to lead the team.</p>\n<p>Members of the DGC, sometimes referred to as <em>data governors, </em>often include one or more of the following:</p>\n<ul>\n<li>Representatives from each major business function</li>\n<li>Enterprise data steward</li>\n<li>IT manager</li>\n<li>Security analyst</li>\n<li>Legal analyst</li>\n<li>Auditor</li>\n<li>Representative for data users</li>\n<li>Depending on who is running the council, the CIO, CDO, CISO, or data governance manager</li>\n</ul>\n<p>Specific responsibilities of the DGC include:</p>\n<ul>\n<li>Approving standards, procedures, and policies. Smaller organizations may require the DGC to create these too</li>\n<li>Approving funds for data governance efforts</li>\n<li>Reviewing and approving data tools</li>\n<li>Establishing data governance goals and overseeing progress</li>\n<li>Prioritizing data projects</li>\n<li>Providing guidance and actions to the data stewardship council (DSC)  — the team made up of the organization’s data stewards</li>\n<li>Resolving enterprise-wide data issues that can’t be resolved by the DSC</li>\n<li>Communicating and promoting the value of data governance across the organization</li>\n<li>Enforcing the data governance program</li>\n<li>Evaluating the effectiveness of the data governance program and initiating course corrections as necessary</li>\n<li>Overseeing the ethical use of data</li>\n</ul>\n"}],"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":false,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"","brandingLink":"","brandingLogo":{"src":null,"width":0,"height":0},"sponsorAd":"","sponsorEbookTitle":"","sponsorEbookLink":"","sponsorEbookImage":{"src":null,"width":0,"height":0}},"primaryLearningPath":"Advance","lifeExpectancy":"Five years","lifeExpectancySetFrom":"2023-11-29T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[]},"status":"publish","visibility":"public","articleId":295904},{"headers":{"creationTime":"2017-03-27T16:47:08+00:00","modifiedTime":"2023-02-24T21:34:34+00:00","timestamp":"2023-09-14T18:19:14+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Business Intelligence For Dummies Cheat Sheet","strippedTitle":"business intelligence for dummies cheat sheet","slug":"business-intelligence-for-dummies-cheat-sheet","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"Learn some of the basics of business intelligence, including key insights, KPIs, operational data sources, and applications.","noIndex":0,"noFollow":0},"content":"Business intelligence process creates an environment for better decision-making. To make successful business decisions, you need to gain insight in business intelligence, follow the main steps of the key performance indicators (KPI) cycle, find the best source to store and process operational data, and assess and use standard business intelligence applications.","description":"Business intelligence process creates an environment for better decision-making. To make successful business decisions, you need to gain insight in business intelligence, follow the main steps of the key performance indicators (KPI) cycle, find the best source to store and process operational data, and assess and use standard business intelligence applications.","blurb":"","authors":[{"authorId":9184,"name":"Swain Scheps","slug":"swain-scheps","description":" <P><B>Kevin Blackwood </B>is a highly successful blackjack and poker player. He has written for several gaming magazines and is the author of four gambling books.</p> <p><B>Swain Scheps</B> is a games enthusiast, numbers guru, sports betting expert and the author of <i>Business Intelligence For Dummies</i> and <i>Sports Betting For Dummies</i>. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9184"}}],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[],"relatedArticles":{"fromBook":[{"articleId":193615,"title":"Essential Steps of the Key Performance Indicators Cycle","slug":"essential-steps-of-the-key-performance-indicators-cycle","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193615"}},{"articleId":193616,"title":"Common Operational Data Sources in Business Intelligence","slug":"common-operational-data-sources-in-business-intelligence","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193616"}},{"articleId":193617,"title":"Business Intelligence Insights","slug":"business-intelligence-insights","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193617"}},{"articleId":143249,"title":"Common Business Intelligence Applications","slug":"common-business-intelligence-applications","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/143249"}}],"fromCategory":[{"articleId":223424,"title":"Data Management Considerations for Your Business Plan","slug":"data-management-considerations-business-plan","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/223424"}},{"articleId":193615,"title":"Essential Steps of the Key Performance Indicators Cycle","slug":"essential-steps-of-the-key-performance-indicators-cycle","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193615"}},{"articleId":193616,"title":"Common Operational Data Sources in Business Intelligence","slug":"common-operational-data-sources-in-business-intelligence","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193616"}},{"articleId":193617,"title":"Business Intelligence Insights","slug":"business-intelligence-insights","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193617"}},{"articleId":143249,"title":"Common Business Intelligence Applications","slug":"common-business-intelligence-applications","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/143249"}}]},"hasRelatedBookFromSearch":false,"relatedBook":{"bookId":281645,"slug":"business-intelligence-for-dummies","isbn":"9780470127230","categoryList":["business-careers-money","business","data-management"],"amazon":{"default":"//www.amazon.com/gp/product/0470127236/ref=as_li_tl?ie=UTF8&tag=wiley01-20","ca":"//www.amazon.ca/gp/product/0470127236/ref=as_li_tl?ie=UTF8&tag=wiley01-20","indigo_ca":"//www.tkqlhce.com/click-9208661-13710633?url=//www.chapters.indigo.ca/en-ca/books/product/0470127236-item.html&cjsku=978111945484","gb":"//www.amazon.co.uk/gp/product/0470127236/ref=as_li_tl?ie=UTF8&tag=wiley01-20","de":"//www.amazon.de/gp/product/0470127236/ref=as_li_tl?ie=UTF8&tag=wiley01-20"},"image":{"src":"//coursofppt.com/wp-content/uploads/business-intelligence-for-dummies-cover-9780470127230-202x255.jpg","width":202,"height":255},"title":"Business Intelligence For Dummies","testBankPinActivationLink":"","bookOutOfPrint":false,"authorsInfo":"<b data-author-id=\"9184\">Swain Scheps</b> is Manager of Business Analysis at Brierley + Partners, Inc. and a technology veteran making his first foray into the world of book authoring. He wrote the masterpiece resting in your hands with a great deal of input and inspiration from BI guru and fellow <i>For Dummies</i> author Alan R. Simon.<br> In the late 1990’s Swain, along with most people reading this book, had his dot-com boom-to-bust experience with a company called. . .well, that’s not really important now is it. (Anyone interested in buying some slightly underwater stock options should contact the publisher immediately.) After that there were consulting stints at Compaq, Hewlett-Packard, and Best Crossmark developing sales support applications and reporting tools. As of this writing, Swain basks under the fluorescent lights of Brierley, a technology company whose specialty is building customer relationship and loyalty management systems for retailers. The author has had the opportunity to learn from the very best as Brierley also provides unparalleled business intelligence and analytics services for its clients.<br> Swain lives in Dallas, Texas with wife Nancy and a mere four dogs. He writes about more than just technology; his work has appeared in Fodor’s travel guide books, military history magazines, and even another <i>For Dummies</i> book.","authors":[{"authorId":9184,"name":"Swain Scheps","slug":"swain-scheps","description":" <P><B>Kevin Blackwood </B>is a highly successful blackjack and poker player. He has written for several gaming magazines and is the author of four gambling books.</p> <p><B>Swain Scheps</B> is a games enthusiast, numbers guru, sports betting expert and the author of <i>Business Intelligence For Dummies</i> and <i>Sports Betting For Dummies</i>. ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9184"}}],"_links":{"self":"//dummies-api.coursofppt.com/v2/books/"}},"collections":[],"articleAds":{"footerAd":"<div class=\"du-ad-region row\" id=\"article_page_adhesion_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_adhesion_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9780470127230&quot;]}]\" id=\"du-slot-63221b22aac76\"></div></div>","rightAd":"<div class=\"du-ad-region row\" id=\"article_page_right_ad\"><div class=\"du-ad-unit col-md-12\" data-slot-id=\"article_page_right_ad\" data-refreshed=\"false\" \r\n data-target = \"[{&quot;key&quot;:&quot;cat&quot;,&quot;values&quot;:[&quot;business-careers-money&quot;,&quot;business&quot;,&quot;data-management&quot;]},{&quot;key&quot;:&quot;isbn&quot;,&quot;values&quot;:[&quot;9780470127230&quot;]}]\" id=\"du-slot-63221b22ab7e6\"></div></div>"},"articleType":{"articleType":"Cheat Sheet","articleList":[{"articleId":193617,"title":"Business Intelligence Insights","slug":"business-intelligence-insights","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193617"}},{"articleId":193615,"title":"Essential Steps of the Key Performance Indicators Cycle","slug":"essential-steps-of-the-key-performance-indicators-cycle","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193615"}},{"articleId":193616,"title":"Common Operational Data Sources in Business Intelligence","slug":"common-operational-data-sources-in-business-intelligence","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/193616"}},{"articleId":143249,"title":"Common Business Intelligence Applications","slug":"common-business-intelligence-applications","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/143249"}}],"content":[{"title":"Business intelligence insights","thumb":null,"image":null,"content":"<p>To help your company drive smart decisions and improve the way you do business, check out this variety of forms that can provide insight into business intelligence (BI).</p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><b>Query responses:</b> Raw data produced by the BI system, allowing the user to draw immediate conclusions</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Reports:</b> Structured and formatted data, built as part of a scheduled event, or on the fly as an ad hoc report</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Derived Analysis:</b> Insights produced by interpretation of a front-end system’s output, after that application has applied rules, heuristics, other business information, and context to it, such as in a dashboard or scorecard</p>\n</li>\n</ul>\n"},{"title":"Essential steps of the key performance indicators cycle","thumb":null,"image":null,"content":"<p>Business intelligence (BI) is an activity, tool, or process that allows businesses to create clarity and support around their decision-making approach by determining key performance indicators (KPIs). The success level of any business endeavor can almost be measured or quantified in some aspect:</p>\n<p><b>Step 1:</b> Build or define the core business strategy or objectives</p>\n<p><b>Step 2:</b> Specify progress metrics (KPIs), and define thresholds that indicate degrees of success.</p>\n<p><b>Step 3:</b> Measure performance over time as a baseline</p>\n<p><b>Step 4:</b> Adjust tactics and gauge correlative changes in success metrics</p>\n<p><b>Step 5:</b> Apply lessons to subsequent strategy definition</p>\n<p>But business intelligence is very much a cultural phenomenon, moving away from gut-feel strategic choices and moving toward an evidence-driven rational approach to business.</p>\n"},{"title":"Common operational data sources in business intelligence","thumb":null,"image":null,"content":"<p>Businesses digitally store a tremendous amount of operational data, and for business intelligence to function, it needs wide-open roads between data sources. Mainframe legacy systems still form the foundation of many companies’ data centers because of their ability to process and harbor huge quantities of data. However, their data is notoriously difficult to get to as many of the legacy applications are obsolete, proprietary, or pre-standards software. Other options for data sources are:</p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><b>Enterprise Resource Planning (ERP): </b>Often implemented throughout the organization in modules that map to specific business domains, such as supply-chain, human resources, finance, accounts payable, and so on. ERP systems store a lot of transactional data used in today’s BI environments.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>Customer Relationship Management:</b> A common data source for business intelligence, CRM systems do just what they say: they process and store customer profile and behavior information, like purchase activity.</p>\n</li>\n<li>\n<p class=\"first-para\"><b>E-Commerce:</b> Web applications can act as source data systems for business intelligence platforms by feeding real-time sales activity.</p>\n</li>\n</ul>\n"},{"title":"Common business intelligence applications","thumb":null,"image":null,"content":"<p>When choosing a business intelligence application, your goal is put an effective Business Intelligence (BI) solution into place, and you&#8217;re looking at processes and software. This list represents some of the more frequently used BI applications:</p>\n<p><b>Source Data</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\">Microsoft: SQL Server, Access</p>\n</li>\n<li>\n<p class=\"first-para\">Oracle: Oracle 11g</p>\n</li>\n<li>\n<p class=\"first-para\">SAP: N/A</p>\n</li>\n<li>\n<p class=\"first-para\">IBM: DB2</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>N/A</p>\n</li>\n</ul>\n<p><b>ETL, Data Integration, Warehousing</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><i>Microsoft: </i>Integration Services <i>aka</i> SSIS (formerly known as DTS)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Oracle: </i>Warehouse Builder</p>\n</li>\n<li>\n<p class=\"first-para\"><i>SAP: </i>SAP BW</p>\n</li>\n<li>\n<p class=\"first-para\"><i>IBM: </i>DB2 Data Warehouse, Warehouse ManagerWebSphere DataStage (ETL) IBM Information Server</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>Business Objects XI R2: Data Integrator (ETL) Data Federator (virtualization) Rapid Marts (standard platform data marts)</p>\n</li>\n</ul>\n<p><b>Query and Analysis</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><i>Microsoft: </i>SQL Server Analysis Services, Access, Excel</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Oracle: </i>Warehouse Builder, Oracle Hyperion Essbase</p>\n</li>\n<li>\n<p class=\"first-para\"><i>SAP: </i>Netweaver BI</p>\n</li>\n<li>\n<p class=\"first-para\"><i>IBM: </i>Various</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>Business Objects XI R2: Web Intelligence (query tool) Voyager (OLAP) Desktop Intelligence (query tool)</p>\n</li>\n</ul>\n<p><b>Reporting, Information</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><i>Microsoft: </i>SQL Server Reporting Services, Access</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Oracle: </i>BI Suite Enterprise &amp; Standard Editions: query, analysis, reporting, Siebel Answers, Interactive Dashboards</p>\n</li>\n<li>\n<p class=\"first-para\"><i>SAP: </i>Netweaver BI</p>\n</li>\n<li>\n<p class=\"first-para\"><i>IBM: </i>BIRT, Design Studio, Alphablox</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>Crystal Reports</p>\n</li>\n</ul>\n<p><b>Other Front-End Tools</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><i>Microsoft: </i>Excel Pivot Tables, PerformancePoint 2007 (enterprise scorecarding)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Oracle: </i>Oracle Data Mining</p>\n</li>\n<li>\n<p class=\"first-para\"><i>SAP: </i>Netweaver BI</p>\n</li>\n<li>\n<p class=\"first-para\"><i>IBM: </i>IBM Intelligent Miner (data mining)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>Crystal Xcelsius (visualization tools), Crystal Vision (dashboard), InfoView (BI portal)</p>\n</li>\n</ul>\n<p><b>Specialty Apps</b></p>\n<ul class=\"level-one\">\n<li>\n<p class=\"first-para\"><i>Microsoft: </i>MS Sharepoint Server 2007 (report distribution)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Oracle: </i>Business domain operational analytics applications, Hyperion System 9 Financial Management, Financial Planning</p>\n</li>\n<li>\n<p class=\"first-para\"><i>SAP: </i>ERP Software, Financial Analytics (formerly Outlooksoft)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>IBM: </i>Websphere Content Discovery (unstructured search)</p>\n</li>\n<li>\n<p class=\"first-para\"><i>Business Objects: </i>Information OnDemand (hosted BI solutions), Performance Management (Formerly Cartesis)</p>\n</li>\n</ul>\n"}],"videoInfo":{"videoId":null,"name":null,"accountId":null,"playerId":null,"thumbnailUrl":null,"description":null,"uploadDate":null}},"sponsorship":{"sponsorshipPage":false,"backgroundImage":{"src":null,"width":0,"height":0},"brandingLine":"","brandingLink":"","brandingLogo":{"src":null,"width":0,"height":0},"sponsorAd":"","sponsorEbookTitle":"","sponsorEbookLink":"","sponsorEbookImage":{"src":null,"width":0,"height":0}},"primaryLearningPath":"Advance","lifeExpectancy":"Two years","lifeExpectancySetFrom":"2023-02-24T00:00:00+00:00","dummiesForKids":"no","sponsoredContent":"no","adInfo":"","adPairKey":[]},"status":"publish","visibility":"public","articleId":207501},{"headers":{"creationTime":"2017-08-26T14:06:59+00:00","modifiedTime":"2017-08-26T14:06:59+00:00","timestamp":"2023-09-14T18:15:28+00:00"},"data":{"breadcrumbs":[{"name":"Business, Careers, & Money","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34224"},"slug":"business-careers-money","categoryId":34224},{"name":"Business","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34225"},"slug":"business","categoryId":34225},{"name":"Data Management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"},"slug":"data-management","categoryId":34244}],"title":"Data Management Considerations for Your Business Plan","strippedTitle":"data management considerations for your business plan","slug":"data-management-considerations-business-plan","canonicalUrl":"","快速搜字段擎网站升级提高调整":{"metaDescription":"To the long-standing list of business capabilities, smart businesses are adding another category: data management. How you collect quality data, capture and mai","noIndex":0,"noFollow":0},"content":"To the long-standing list of business capabilities, smart businesses are adding another category: data management. How you collect quality data, capture and maintain business and customer information, extract usable information, monitor key indicators, insure data security, and apply your findings to enhance marketing, production, productivity, growth, and product innovation has become an increasingly important aspect of running a successful business.\r\n\r\nBusinesses leverage collected data in an ever-lengthening list of ways, including, but by no means limited to, these examples:\r\n<ul>\r\n\t<li>Increase efficiency by making customer information, production status, inventory, and other business information accessible to on-site and remote employees.</li>\r\n\t<li>Segment target customers in order to tailor offerings and messages accordingly.</li>\r\n\t<li>Offer customers predictive services; for example, social media sites present “people you may know” and online retailers provide recommendations of “purchases made by others shopping for this item” suggestions.</li>\r\n\t<li>Anticipate customer volume based on trends from past purchase patterns and forecasted anticipated conditions; for example, forecasts for utility usage or restaurant volume and selection based on weather forecasts.</li>\r\n\t<li>Track, enhance, and benefit from customer on-site visits. Some retailers use a hardware device called a <em>beacon</em> to activate and send customized messages to downloaded apps on customer mobile devices. Others improve retail and display layouts by monitoring captured video to map customer traffic and to monitor where customers stop compared to purchase volume from that point.</li>\r\n\t<li>Stay on top of reviews and ratings, encouraging customer posts by following purchases with review invitations and consistently monitoring review sites for insights and possible responses.</li>\r\n</ul>\r\nCreate data-driven products or services that can generate revenue or deliver competitive advantages. As an example of a data-driven revenue generator, LinkedIn bundles its user profile data into a recruiting and staffing tool purchased by headhunters and hiring companies. As an example of a value-added data-driven service, the real estate site Zillow offers a free automated home value estimation tool, Zestimate, that’s helped the site attract visitors, achieve top-of-mind awareness, and draw industry-leading visitor counts.\r\n<p class=\"article-tips tip\">In your written plan, include a statement about your data management plans, including the objective of data collection, the source and ownership of data, and how you plan to apply collected data to strengthen products, operations, marketing, and business operations.</p>\r\n<p class=\"article-tips remember\">As you develop data capabilities for your business, keep in mind that you need to either own or have permission to use the data you’re accessing and leveraging. Social media networks, for example, collect enough data to serve as their own data sources, whereas other businesses form data-gathering affiliations, purchase data, or harvest data from publicly available sources.</p>","description":"To the long-standing list of business capabilities, smart businesses are adding another category: data management. How you collect quality data, capture and maintain business and customer information, extract usable information, monitor key indicators, insure data security, and apply your findings to enhance marketing, production, productivity, growth, and product innovation has become an increasingly important aspect of running a successful business.\r\n\r\nBusinesses leverage collected data in an ever-lengthening list of ways, including, but by no means limited to, these examples:\r\n<ul>\r\n\t<li>Increase efficiency by making customer information, production status, inventory, and other business information accessible to on-site and remote employees.</li>\r\n\t<li>Segment target customers in order to tailor offerings and messages accordingly.</li>\r\n\t<li>Offer customers predictive services; for example, social media sites present “people you may know” and online retailers provide recommendations of “purchases made by others shopping for this item” suggestions.</li>\r\n\t<li>Anticipate customer volume based on trends from past purchase patterns and forecasted anticipated conditions; for example, forecasts for utility usage or restaurant volume and selection based on weather forecasts.</li>\r\n\t<li>Track, enhance, and benefit from customer on-site visits. Some retailers use a hardware device called a <em>beacon</em> to activate and send customized messages to downloaded apps on customer mobile devices. Others improve retail and display layouts by monitoring captured video to map customer traffic and to monitor where customers stop compared to purchase volume from that point.</li>\r\n\t<li>Stay on top of reviews and ratings, encouraging customer posts by following purchases with review invitations and consistently monitoring review sites for insights and possible responses.</li>\r\n</ul>\r\nCreate data-driven products or services that can generate revenue or deliver competitive advantages. As an example of a data-driven revenue generator, LinkedIn bundles its user profile data into a recruiting and staffing tool purchased by headhunters and hiring companies. As an example of a value-added data-driven service, the real estate site Zillow offers a free automated home value estimation tool, Zestimate, that’s helped the site attract visitors, achieve top-of-mind awareness, and draw industry-leading visitor counts.\r\n<p class=\"article-tips tip\">In your written plan, include a statement about your data management plans, including the objective of data collection, the source and ownership of data, and how you plan to apply collected data to strengthen products, operations, marketing, and business operations.</p>\r\n<p class=\"article-tips remember\">As you develop data capabilities for your business, keep in mind that you need to either own or have permission to use the data you’re accessing and leveraging. Social media networks, for example, collect enough data to serve as their own data sources, whereas other businesses form data-gathering affiliations, purchase data, or harvest data from publicly available sources.</p>","blurb":"","authors":[{"authorId":9529,"name":"Steven D. Peterson","slug":"steven-d-peterson","description":" <p><b>Paul Tiffany</b>, PhD, is a professor at the Haas School of Business, UC Berkeley.</p> <p><b>Steven D. Peterson</b>, PhD, is the founder and Managing Partner of Strategic Play.</p> <p><b>Nada Wagner</b>, MBA, is one of the principals of Next Wave Marketing and a professor at The Business School, Humber ITAL.</p>","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9529"}},{"authorId":9530,"name":"Peter E. Jaret","slug":"peter-e-jaret","description":" <p><b>Steven D. Peterson, PhD,</b> is the senior partner and founder of the management tool development company, Strategic Play.</p><p><b>Peter Jaret</b> is a frequent contributor to <i>The New York Times</i>, <i>Reader&#8217;s Digest</i>, and <i>AARP Bulletin</i>.</p><p><b>Barbara Findlay Schenck </b>is a nationally recognized marketing specialist and the author of several <i>For Dummies</i> books.</p> ","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9530"}},{"authorId":9303,"name":"Barbara Findlay Schenck","slug":"barbara-findlay-schenck","description":" <p><b>Barbara Findlay</b> Schenck has been a marketing consultant for more than 20 years, with clients ranging from small businesses to Fortune 500 companies. In addition to her experience as a small business strategist, she's also a bestselling author and nationally syndicated columnist. Visit her website at www.bizstrong.com.</p>","hasArticle":false,"_links":{"self":"//dummies-api.coursofppt.com/v2/authors/9303"}}],"primaryCategoryTaxonomy":{"categoryId":34244,"title":"Data Management","slug":"data-management","_links":{"self":"//dummies-api.coursofppt.com/v2/categories/34244"}},"secondaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"tertiaryCategoryTaxonomy":{"categoryId":0,"title":null,"slug":null,"_links":null},"trendingArticles":null,"inThisArticle":[],"relatedArticles":{"fromBook":[],"fromCategory":[{"articleId":207501,"title":"Business Intelligence For Dummies Cheat Sheet","slug":"business-intelligence-for-dummies-cheat-sheet","categoryList":["business-careers-money","business","data-management"],"_links":{"self":"//dummies-api.coursofppt.com/v2/articles/207501"}},{"articleId":193615,"title":"Essential Steps of the Key Performance Indicators 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