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
Enterprises are trying to manage data chaos. They also face increasing regulatory pressure because of global data regulations , such as the European Union’s General Data Protection Regulation (GDPR) and the new California Consumer Privacy Act (CCPA), that went into effect last week on Jan. GDPR: Key Differences.
So if you’re going to move from your data from on-premise legacy data stores and warehouse systems to the cloud, you should do it right the first time. And as you make this transition, you need to understand what data you have, know where it is located, and govern it along the way. Then you must bulk load the legacy data.
The erwin WFH (Work From Home) Impact Manager is a remote-work app that provides visibility and intelligence to help remote workers be more productive and process-compliant. To address these challenges erwin’s development team created a new remote-work app, erwin WFH Impact Manager. days per week, on average.
How Data Literacy Turns Data from a Burden to a Benefit. Today, data literacy is more important than ever. Data is now being used to support business decisions few executives thought they’d be making even six months ago. So, what is data literacy? What Is Data Literacy? Data Literacy Definition.
Organizations with a solid understanding of data governance (DG) are better equipped to keep pace with the speed of modern business. In this post, the erwin Experts address: What Is Data Governance? Why Is Data Governance Important? What Is Good Data Governance? What Are the Key Benefits of Data Governance?
Companies are leaning into delivering on dataintelligence and governance initiatives in 2025 according to our recent State of DataIntelligence research. Dataintelligence software is continuously evolving to enable organizations to efficiently and effectively advance new data initiatives.
M&A, new markets, products and businesses). Technology Disruption : How do we focus on innovation while leveraging existing technology, including artificial intelligence, machine learning, cloud and robotics? data protection, personal and sensitive data, tax issues and sustainability/carbon emissions)?
Data governance is best defined as the strategic, ongoing and collaborative processes involved in managing data’s access, availability, usability, quality and security in line with established internal policies and relevant data regulations. Data Governance Is Business Transformation. Enhanced : Data managed equally.
If you’re serious about a data-driven strategy , you’re going to need a data catalog. Organizations need a data catalog because it enables them to create a seamless way for employees to access and consume data and business assets in an organized manner. This also diminishes the value of data as an asset.
It provides a visual blueprint, demonstrating the connection between applications, technologies and data to the business functions they support. And thanks to data –our need to store and process it, and the insights it provides – such change is happening faster than ever. Data Governance. Data Security & Risk Management.
Modern data governance is a strategic, ongoing and collaborative practice that enables organizations to discover and track their data, understand what it means within a business context, and maximize its security, quality and value. The What: Data Governance Defined. Data governance has no standard definition.
Understanding the benefits of data modeling is more important than ever. Data modeling is the process of creating a data model to communicate data requirements, documenting data structures and entity types. In this post: What Is a Data Model? Why Is Data Modeling Important? What Is a Data Model?
When it comes to using AI and machine learning across your organization, there are many good reasons to provide your data and analytics community with an intelligentdata foundation. For instance, Large Language Models (LLMs) are known to ultimately perform better when data is structured. Lets give a for instance.
Automating data governance is key to addressing the exponentially growing volume and variety of data. erwin CMO, Mariann McDonagh recounts erwin’s vision to automate everything from day 1 of erwin Insights 2020. Data readiness is everything. The State of Data Automation.
However, even in “normal times,” business leaders need to understand how to grow, bring new products to market through organic growth or acquisition, identify new trends and opportunities, determine if new opportunities provide a return on investment, etc. Data Security & Risk Management. Artificial Intelligence.
In light of recent, high-profile data breaches, it’s past-time we re-examined strategic data governance and its role in managing regulatory requirements. for alleged violations of the European Union’s General Data Protection Regulation (GDPR). Complexity. Five Steps to GDPR/CCPA Compliance. Govern PII “at rest”.
Prashant Parikh, erwin’s Senior Vice President of Software Engineering, talks about erwin’s vision to automate every aspect of the data governance journey to increase speed to insights. Although AI and ML are massive fields with tremendous value, erwin’s approach to data governance automation is much broader.
Data lineage is the journey data takes from its creation through its transformations over time. Tracing the source of data is an arduous task. With all these diverse data sources, and if systems are integrated, it is difficult to understand the complicated data web they form much less get a simple visual flow.
Metadata management is key to wringing all the value possible from data assets. However, most organizations don’t use all the data at their disposal to reach deeper conclusions about how to drive revenue, achieve regulatory compliance or accomplish other strategic objectives. Quite simply, metadata is data about data.
Dataintelligence has a critical role to play in the supercomputing battle against Covid-19. While leveraging supercomputing power is a tremendous asset in our fight to combat this global pandemic, in order to deliver life-saving insights, you really have to understand what data you have and where it came from.
Organizations are flooded with data, so they’re scrambling to find ways to derive meaningful insights from it – and then act on them to improve the bottom line. In today’s data-driven business, enabling employees to access and understand the data that’s relevant to their roles allows them to use data and put those insights into action.
Data innovation is flourishing, driven by the confluence of exploding dataproduction, a lowered barrier to entry for big data, as well as advanced analytics, artificial intelligence and machine learning. Consumers and businesses alike have started to view data as an asset they must take steps to secure.
What do IT, data and architecture professionals and even the C-suite need to think about in a crisis? How do you help remote workers be more productive and process compliant? And today, I’m happy to announce, the free and immediate availability of erwin WFH (Work From Home) Impact Manager. Stay healthy! Click here to register.
Metadata is an important part of data governance, and as a result, most nascent data governance programs are rife with project plans for assessing and documenting metadata. But in many scenarios, it seems that the underlying driver of metadata collection projects is that it’s just something you do for data governance.
erwin released its State of Data Governance Report in February 2018, just a few months before the General Data Protection Regulation (GDPR) took effect. Download Free GDPR Guide | Step By Step Guide to Data Governance for GDPR?. How to automate data mapping. The Role of Data Automation. We wonder why.
Once you’ve determined what part(s) of your business you’ll be innovating — the next step in a digital transformation strategy is using data to get there. Constructing A Digital Transformation Strategy: Data Enablement. Many organizations prioritize data collection as part of their digital transformation strategy.
It also highlights select enterprise architecture management suite (EAMS) vendors based on size and functionality, including erwin. For “ EA stakeholders to be more productive and effective ,” not only is a central repository a necessity but collaboration and a persona-driven approach also are critical to the organization’s adoption of EA.
compliance with the General Data Protection Regulation). Accelerating the retrieval and analysis of data —so much of it unstructured—is vital to becoming a data-driven business that can effectively respond in real time to customers, partners, suppliers and other parties, and profit from these efforts. Comparing SQL and NoSQL.
Data governance is one area where business and IT never seemed to establish ownership. Early attempts at data governance treated the idea as a game of volleyball, passing ownership back and forth, with one team responsible for storing data and running applications, and one responsible for using the data for business outcomes.
What Is DataIntelligence? DataIntelligence is the analysis of multifaceted data to be used by companies to improve products and services offered and better support investments and business strategies in place. Dataintelligence can encompass both internal and external business data and information.
In these times of great uncertainty and massive disruption, is your enterprise data helping you drive better business outcomes? Assure an Unshakable Data Supply Chain to Drive Better Business Outcomes in Turbulent Times. Strong data management practices can have: Financial impact (revenue, cash flow, cost structures, etc.).
Added data quality capability ready for an AI era Data quality has never been more important than as we head into this next AI-focused era. erwinData Quality is the data quality heart of erwinDataIntelligence. erwinData Quality is the data quality heart of erwinDataIntelligence.
This past year witnessed a data governance awakening – or as the Wall Street Journal called it, a “global data governance reckoning.” There was tremendous data drama and resulting trauma – from Facebook to Equifax and from Yahoo to Marriott. So what’s on the horizon for data governance in the year ahead?
erwin positioned as a Leader in Gartner’s “2019 Magic Quadrant for Metadata Management Solutions”. We were excited to announce earlier today that erwin was named as a Leader in the @Gartner _inc “2019 Magic Quadrant for Metadata Management Solutions.”. GET THE REPORT NOW.
If you love our products, please vote. Year after year, customers vote Quest® products as their #1 choice in database solutions. This year Quest® (including erwin) is competing in 7 out of 29 product / solution categories: Best CDC Solution (Quest Shareplex). Best Data Governance Solution (erwinDataIntelligence).
The data mesh framework In the dynamic landscape of data management, the search for agility, scalability, and efficiency has led organizations to explore new, innovative approaches. One such innovation gaining traction is the data mesh framework. This empowers individual teams to own and manage their data.
Data democratization is a hot topic, but what does it mean? And more importantly, how can you successfully democratize data? The focus of data democratization has traditionally been on closing the delivery gap between IT and business users specifically while keeping data protected in that context.
At Sparkle, we’re a holistic data partner helping organizations increase their data maturity in a strategic yet pragmatic way. One of the key ingredients to ensure data is really embedded in an organization, and one of the key enablers to increase the strategic impact of data, is the setup of a successful data governance program.
Intro erwin ® Data Modeler 12.5 It requires many functional elements of an organization to come together in order to reach the ultimate stages of being able to identify, understand and fully leverage the power of its data. erwinData Modeler 12.5 erwinData Modeler 12.5 bring to you?
From overburdened data operations experts enabling data usage, to end-users struggling to access the data that matters, organizations continue to look for ways to give stakeholders the tools they need to do their jobs more effectively. A key trend proving successful in data empowerment is investing in self-service technology.
Our team here at erwin takes great pride in this distinction because customer feedback has always shaped our products and services. The solutions work in tandem to automate the processes involved in harvesting, integrating, activating and governing enterprise data according to business requirements.
And in a far-reaching area like data empowerment, erwin® by Quest® wants to help customers like you be able to use our solutions efficiently and strategically. Ultimately, we want to make sure you can reach your digital transformation goals through data. erwinData Modeler by Quest. erwinData Modeler by Quest.
If you’re a long-time erwin ® Data Modeler by Quest ® customer, you might be asking yourself, “What happened to the release naming convention of erwinData Modeler?” In 2021 erwinData Modeler released 2021R1. What’s new in erwinData Modeler R12.0? Amazon Keyspaces. Google Big Query.
Metadata is an important part of data governance, and as a result, most nascent data governance programs are rife with project plans for assessing and documenting metadata. But in many scenarios, it seems that the underlying driver of metadata collection projects is that it’s just something you do for data governance.
We organize all of the trending information in your field so you don't have to. Join 42,000+ 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