This site uses cookies to improve your experience. To help us insure we adhere to various privacy regulations, please select your country/region of residence. If you do not select a country, we will assume you are from the United States. Select your Cookie Settings or view our Privacy Policy and Terms of Use.
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Used for the proper function of the website
Used for monitoring website traffic and interactions
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Strictly Necessary: Used for the proper function of the website
Performance/Analytics: Used for monitoring website traffic and interactions
Within the DataManagement industry, it’s becoming clear that the old model of rounding up massive amounts of data, dumping it into a data lake, and building an API to extract needed information isn’t working. The post Why Graph Databases Are an Essential Choice for MasterDataManagement appeared first on DATAVERSITY.
Masterdatamanagement uses a combination of tools and business processes to ensure the organization’s masterdata is complete, accurate, and consistent. Masterdata describes all the “relatively stable” data that is critical for operating the business.
This reliance has spurred a significant shift across industries, driven by advancements in artificial intelligence (AI) and machine learning (ML), which thrive on comprehensive, high-quality data.
This problem will become more complex as organizations adopt new resource-intensive technologies like AI and generate even more data. By 2025, the IDC expects worldwide data to reach 175 zettabytes, more […] The post Why MasterDataManagement (MDM) and AI Go Hand in Hand appeared first on DATAVERSITY.
As the MasterDataManagement (MDM) solutions market continues to mature, it’s become increasingly clear that the program management aspects of the discipline are at least as important, if not more so, than the technology solution being implemented. Click to learn more about author Bill O’Kane.
As a frequent reviewer of data and strategy books, I am always interested in understanding authors’ perspectives on datagovernance. Two recent books have ideas that are worthy of datagovernance professionals: “Rewired” by Eric Lamarre, Kate Smaje, and Rodney W. Wixom, Cynthia M. Beath, and […]
Whether through acquisition or organic growth, the amount of enterprise data coming into the organization can feel exponential as the business hires more people, opens new locations, and serves new customers. The post Building a Grassroots DataManagement and DataGovernance Program appeared first on DATAVERSITY.
As I’ve been working to challenge the status quo on DataGovernance – I get a lot of questions about how it will “really” work. The post Dear Laura: Should We Hire Full-Time Data Stewards? Click to learn more about author Laura Madsen. Welcome to the Dear Laura blog series! Last year I wrote […].
Domain-specific datagovernance has been of focus lately in various industries. In this article, I simplify what it means and how it is done. What is DataGovernance? If you ask twenty people in a room what datagovernance is, you might get twenty different answers.
Part 1 of this article considered the key takeaways in datagovernance, discussed at Enterprise Data World 2024. […] The post Enterprise Data World 2024 Takeaways: Key Trends in Applying AI to DataManagement appeared first on DATAVERSITY.
In my eight years as a Gartner analyst covering MasterDataManagement (MDM) and two years advising clients and prospects at a leading vendor, I have seen first-hand the importance of taking a multidomain approach to MDM. Click to learn more about author Bill O’Kane.
Unfortunately, a lot of those data breaches come from poorly organized or secure data. The solution to these sensitive issues in the healthcare industry is simple: datagovernance. Better yet, an efficient datagovernance plan that can clear up numerous […].
The role of data products has become pivotal, driving organizations towards insightful decision-making and competitive advantage. However, ensuring the achievement of these data products demands the strategic integration of Non-Invasive DataGovernance (NIDG). Central to this cooperation is the […]
Masterdata lays the foundation for your supplier and customer relationships. However, teams often fail to reap the full benefits […] The post How to Win the War Against Bad MasterData appeared first on DATAVERSITY.
Data fabric is redefining enterprise datamanagement by connecting distributed data sources, offering speedy data access, and strengthening data quality and governance. This article gives an expert outlook on the key ingredients that go into building […].
The smart factory and plant now incorporate an array of connected technologies, all generating a vast volume of data. As a result, data will continue its exponential growth, […]. The post Why Effective DataManagement Is Key in a Connected World appeared first on DATAVERSITY.
This article covers everything about enterprise datamanagement, including its definition, components, comparison with masterdatamanagement, benefits, and best practices. What Is Enterprise DataManagement (EDM)? Data breaches and regulatory compliance are also growing concerns.
Can the responsibilities for vocabulary ownership and data ownership by business stakeholders be separate? I have listened to many presentations and read many articles about datagovernance (or data stewardship if you prefer), but I have never come across anyone saying they can and should be. Should they be?
Most, if not all, organizations need help utilizing the data collected from various sources efficiently, thanks to the ever-evolving enterprise datamanagement landscape. Data is collected and stored in siloed systems 2. Different verticals or departments own different types of data 3.
Relying on this data to power business decisions is like setting sail without a map. This is why organizations have effective datamanagement in place. But what exactly is datamanagement? What Is DataManagement? It essentially supports the overall datagovernance policy.
I had something else nearly ready that was expanding on the broad questions of ethics in information and datamanagement I discussed last time, drawing on some work I’m doing with an international client and a recent roundtable discussion I had with some regulators […].
Data has been called the new oil. Now on a trajectory towards increased regulation, the data gushers of yore are being tamed. Data will become trackable, […]. Click to learn more about author Brian Platz.
Hands down one of the most frequent observations when walking the data factory at different clients is the excessive use of spreadsheets for data collection and purification. These spreadsheets are part of a critical data enrichment process for getting reports out the door on time.
In this article, we will explore some of the best Talend alternatives so you can make an informed decision when deciding between data integration tools. Manage All Your Data From End-to-End With a Single, Unified Platform Looking for the best Talend alternative? Pros: Support for multiple data sources and destinations.
Twenty-five years ago today, I published the first issue of The Data Administration Newsletter. It only took a few months to recognize that there was an audience for an “online” publication focused on data administration. […].
2020 was the kind of year that would make anyone in the predictions business more than a little gun shy. I certainly didn’t have “global pandemic” on my 2020 bingo card. And, even if I somehow did, I would never have coupled that with a “booming stock market” and median SaaS price/revenue multiples in the […].
It does not matter if the project is architecture, construction, business strategy, or the one of the many facets of data and information management. The knowledge of a Subject Matter Expert, or SME, can make or break any projects of any type. To become a SME, a team needs to have lived and worked in […].
Data quality management (DQM) has advanced considerably over the years. The full extent of the problem was first recognized during the data warehouse movement in the 1980s.
These days, there is much conversation about the necessity of the data model. The data model has been around for several decades now and can be classified as an artifact of an earlier day and age. But is the data model really out of date? And exactly why do we need a data model, anyway? […]
This quarter’s column draws on my keynote for DAMA Calgary’s contribution to DAMA Days Canada last month, which in turn drew on some of the content in the second edition of the “Data Ethics” book I wrote with my colleague Katherine O’Keefe (particularly, Chapter 3 and Chapter 11). My keynote looked at the thorny question […]
We organize all of the trending information in your field so you don't have to. Join 57,000+ users and stay up to date on the latest articles your peers are reading.
You know about us, now we want to get to know you!
Let's personalize your content
Let's get even more personalized
We recognize your account from another site in our network, please click 'Send Email' below to continue with verifying your account and setting a password.
Let's personalize your content