Close Menu
Şevket Ayaksız

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Chainguard launches Athena, an AI-powered initiative designed

    Haziran 16, 2026

    Sony WH-1000XM6 vs. Sennheiser Momentum 5: The headphones

    Haziran 16, 2026

    Fast chargers with flagship iPhone, Samsung, and OnePlus phones

    Haziran 16, 2026
    Facebook X (Twitter) Instagram
    • software
    • Gadgets
    Facebook X (Twitter) Instagram
    Şevket AyaksızŞevket Ayaksız
    Subscribe
    • Home
    • Technology

      Fast chargers with flagship iPhone, Samsung, and OnePlus phones

      Haziran 16, 2026

      7 budget-friendly upgrades that made my TV sound dramatically better

      Haziran 16, 2026

      Valve targets a summer launch for Steam Machine but keeps pricing secret

      Haziran 7, 2026

      Intel and Phison aim to overcome local AI’s memory bottleneck

      Haziran 2, 2026

      Nvidia RTX Spark could transform the next generation of gaming handhelds

      Haziran 2, 2026
    • Adobe
    • Microsoft
    • java
    • Oracle
    Şevket Ayaksız
    Anasayfa » Evaluating Success in DataOps, Data Governance, and Data Security
    software

    Evaluating Success in DataOps, Data Governance, and Data Security

    By mustafa efeNisan 19, 2025Yorum yapılmamış3 Mins Read
    Facebook Twitter Pinterest LinkedIn Tumblr Email
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Measuring Success in DataOps, Data Governance, and Data Security: What Works

    In 2006, Clive Humby, a British mathematician, famously declared that “data is the new oil.” But just like oil, data in its raw form is not useful until it’s refined, processed, and strategically distributed. Fast forward nearly two decades, and this analogy has shaped the core practices around DataOps, data governance, and data security, three essential pillars for managing data in today’s business world. These functions not only help integrate and manage data, but they also ensure its compliance, accuracy, usability, and protection against threats.

    As AI-driven digital transformation becomes the norm, especially with the rise of generative AI products, business leaders increasingly recognize the need for robust data practices. AI governance has become a vital safeguard, but it’s equally important to measure the effectiveness of data operations, governance, and security. Despite the heavy investments in these areas, many organizations struggle to define clear metrics to gauge whether these initiatives are truly adding value and reducing risks.

    When asked about how to measure the success of these practices, several industry leaders weighed in. There’s a growing concern that businesses are investing heavily in AI without a clear understanding of whether it’s delivering measurable business outcomes. So, what metrics should organizations use to assess the value of their data operations, governance, and security strategies?

    One of the key insights shared by experts is the need to align metrics with tangible business outcomes. “To truly demonstrate business value, CIOs must focus on KPIs that tie directly to organizational goals, rather than relying on traditional IT metrics,” says Yakir Golan, CEO of Kovrr. For instance, instead of reporting on IT ticket resolution rates, businesses should highlight cost savings from automation or a reduction in forecasted risk exposure. For example, illustrating how a $2 million reduction in risk can be achieved through better data management is far more compelling to executives than technical efficiency alone.

    Data effectiveness metrics also play a crucial role. Srujan Akula, CEO of The Modern Data Company, suggests calculating data ROI, which is akin to marketing attribution. By evaluating the costs of data processing and storage against the business value they generate, companies can measure the time-to-insight and better understand how efficiently data is being leveraged to drive business decisions. These kinds of metrics allow business leaders to see the direct link between their data investments and the overall impact on the company’s bottom line.

    Post Views: 226
    java Programming Languages Software Development
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    mustafa efe
    • Website

    Related Posts

    Chainguard launches Athena, an AI-powered initiative designed

    Haziran 16, 2026

    3 unofficial Android Auto apps that transformed my car’s infotainment screen

    Haziran 16, 2026

    ChatGPT’s new “Dreaming” feature boosts memory and personalization

    Haziran 7, 2026
    Add A Comment

    Comments are closed.

    Editors Picks
    8.5

    Apple Planning Big Mac Redesign and Half-Sized Old Mac

    Ocak 5, 2021

    Autonomous Driving Startup Attracts Chinese Investor

    Ocak 5, 2021

    Onboard Cameras Allow Disabled Quadcopters to Fly

    Ocak 5, 2021
    Top Reviews
    9.1

    Review: T-Mobile Winning 5G Race Around the World

    By sevketayaksiz
    8.9

    Samsung Galaxy S21 Ultra Review: the New King of Android Phones

    By sevketayaksiz
    8.9

    Xiaomi Mi 10: New Variant with Snapdragon 870 Review

    By sevketayaksiz
    Advertisement
    Demo
    Şevket Ayaksız
    Facebook X (Twitter) Instagram YouTube
    • Home
    • Adobe
    • microsoft
    • java
    • Oracle
    • Contact
    © 2026 Theme Designed by Şevket Ayaksız.

    Type above and press Enter to search. Press Esc to cancel.