Data Management Vs Data Governance: All You Need to Know

Dec 21, 2018

issues in finance

Today, it’s the successful use, understanding, and strategy of a company’s data that defines the success of businesses. Comprehending your data and identifying ways to implement it brings up a whole range of questions, both from the stakeholders and users. Such questions include: What is the procedure for storing data? How do we know it’s timely and accurate? Can we rely on it? Data management and data governance can efficiently answer these questions. Though both these terms are used interchangeably, they are entirely different programs. In this article, we aim at clearing all doubts you may have about data management and data governance.

Want to know how data management or data governance can help you curate, process, and analyze the huge data sets of your business? Speak with our analytics experts now.

What is Data Management?

Best seen as an IT program, the goal of data management is to control and organize the resources of your data so that it is reliable, accessible, and timely whenever users call on it. The IT team in your organization who is responsible for data management may trust on a customized, comprehensive collection of practices, processes, theories, and systems that gather, validate, organize, store, protect, process, and maintain data. If the data is not treated properly, it can become useless or corrupt. Data management encloses the entire lifecycle of a data asset. Data management comprises several related categories and fields and includes the following:

  • Data architecture
  • Data governance
  • Data warehousing
  • Data quality management
  • Metadata management
  • Business intelligence and analytics
  • Data security management

What is Data Governance?

If data management is the logistics of data, then data governance can be considered to be a strategy to study them in a structured manner. Data governance is bigger and more holistic than data management as it is a crucial business program. The goal of data governance is to find tangible answers to how a company can prioritize and determine the financial benefits of data while mitigating the risks of poor data in the business. Data governance helps in determining the use of data in specific scenarios.

To ensure the reliability, safety, and trustworthiness of all data, data governance requires the involvement of all stakeholders in the business. Determining your data governance plan includes various practices, processes, and theories. It is likely to overlap with several areas of data like compliance, security, usability, privacy, and integration. The ultimate goal is to determine a comprehensive way to control data assets so that the company can get the absolute and most desired value from the data.

Benefits of Data Governance

  • It increases the value of your company’s data
  • It helps in cutting costs within other subsets of data management and help in focusing on important areas to work on.
  • It assists in boosting the overall revenue of the enterprise
  • It aids in standardizing data systems, procedures, and policies.
  • It ensures proper regulation and compliance procedures.
  • It promotes transparency and security

Ready to Harness Game-Changing Insights?

Request a free solution pilot to know how we can help you derive intelligent, actionable insights from complex, unstructured data with minimum effort to drive competitive readiness, market excellence, and success.

Recent Blogs

Supply Chain Analytics and its Importance for Businesses

Supply Chain Analytics and its Importance for Businesses

Supply chains generate massive amounts of structured and unstructured data, which, when used efficiently, can enable organizations to gain intelligent, actionable insights. Traditional supply chains, that do not make use of data analytics are siloed and slow-moving,...

read more
Four Metrics in the Telecom Industry to Make Smart Decisions

Four Metrics in the Telecom Industry to Make Smart Decisions

What you can expect from the Telecom Analytics Metrics Article IntroductionTelecom Analytics Metrics Highlights of the Telecom Analytics Metrics Article S NoTelecom Analytics Metrics1.Average Revenue Per User (ARPU)2.Minutes of Usage (MOU)3.Churn Rate4.Subscriber...

read more

Industries

Our advanced analytics expertise spans across industries, sectors, and functions, which enables us to deliver robust, agile solutions to all our clients. These are our core competencies, formed through years of experience.

Insights

Our free resources shed light on our extensive expertise and equip you with information to accelerate decision-making, growth, and innovation.

Talk to us
Talk to us