IT PARK
    Most Popular

    Berlin showcases smart city innovations

    Jun 03, 2025

    Where does the data for Big Data come from?

    Jun 15, 2025

    6 Ways to Make Money for IoT Products

    Jun 04, 2025

    IT PARK IT PARK

    • Home
    • Encyclopedia

      What is a port?

      Jul 01, 2025

      What to do with a laptop blue screen

      Jun 30, 2025

      Is it better to save the file as a zip archive or as the original file?

      Jun 29, 2025

      What is cross-site scripting attack

      Jun 28, 2025

      The difference between SLR and digital cameras

      Jun 27, 2025
    • AI

      Can AI Painting Replace Human Painters

      Jul 01, 2025

      Who owns the copyright of the paintings created by AI for you?

      Jun 30, 2025

      How does the meta universe "feed" artificial intelligence models?

      Jun 29, 2025

      Amazon Bedrock: How to Stay Competitive in Generative AI

      Jun 28, 2025

      AGI Avengers! Google Brain and DeepMind officially announced a merger

      Jun 27, 2025
    • Big Data

      Transforming the construction industry through digital twin modeling

      Jul 01, 2025

      How does big data start? From small data to big data

      Jun 30, 2025

      What is big data? What can big data do?

      Jun 29, 2025

      Benefits of big data analysis and how to analyze big data

      Jun 28, 2025

      Six benefits of big data for enterprises

      Jun 27, 2025
    • CLO

      Essential factors to consider for a successful cloud transformation journey

      Jul 01, 2025

      Building a Smart City: The Importance of Cloud Storage

      Jun 30, 2025

      SaaS sprawl: meaning, hazard, status quo and mitigation plan

      Jun 29, 2025

      What are the advantages and disadvantages of hybrid cloud?

      Jun 28, 2025

      Cloud computing has many applications in our daily life, what are the main ones?

      Jun 27, 2025
    • IoT

      6 Ways the Internet of Things is Transforming Agriculture

      Jul 01, 2025

      4 Big Challenges for IoT Data Collection and Management

      Jun 30, 2025

      Most enterprises expect a return on investment within one year of IoT deployment

      Jun 29, 2025

      What are the main applications of IoT in our real life?

      Jun 28, 2025

      IoT systems and why they are so important

      Jun 27, 2025
    • Blockchain

      Blockchain Common Consensus Mechanisms

      Jul 01, 2025

      How energy company Powerledger (POWR) is using blockchain to improve the world

      Jun 30, 2025

      Ten application scenarios for blockchain

      Jun 29, 2025

      What is a privacy coin? What is the difference between them and Bitcoin?

      Jun 28, 2025

      The difference between Bitcoin cash and Bitcoin

      Jun 27, 2025
    IT PARK
    Home » Big Data » Gartner: Data Analytics Helps Build a New Equation of Business Value
    Big Data

    Gartner: Data Analytics Helps Build a New Equation of Business Value

    This year's Gartner release on the key data and analytics trends for data and analytics leaders to leverage in the enterprise in 2022 breaks down into three main themes: energizing and diversifying the enterprise, empowering people and decision making, and institutionalizing trust.
    Updated: Jun 01, 2025
    Gartner: Data Analytics Helps Build a New Equation of Business Value

    Data analytics has increasingly become a business capability, so in 2022, Gartner put forward the concept of "building a new equation of business value" in response to the trend of data analytics. That is, more departments of enterprises need data analytics to realize more value, bring more business model thinking, and better help enterprises achieve digital transformation.

    In line with this philosophy, Gartner's Data and Analytics (D&A) Leaders in the Enterprise 2022 key data and analytics trends this year are divided into the following three themes:

         Energizing and diversifying the enterprise

    Adaptive AI systems: Gartner's "AI Engineering" initiative, which is expected to enable enterprises to use AI engineering to achieve adaptive AI systems by 2026, could help enterprises operate more AI models more effectively than enterprises without this initiative by 25 percent.

    Data-centric AI: Data-centric AI will continue to evolve and it will expand across more and more disciplines, so enterprises will need a more robust data management model to accomplish for AI operations capabilities.

    Metadata-driven data weaving: Enterprises that can better leverage data weaving to metadata management data sources can effectively reduce the tedious data management efforts of the past.

    Always Data Sharing: More and more enterprises will consider sharing data in a way that can be governed, focus on how to discover more relevant data through automated means, and use open OpenData to explore more of their data possibilities.

         People Empowerment and Decision Making

    Context-rich analytics: To provide insights that are relevant to decision makers, data and analytics leaders must provide context-rich analytics created using business module components.

    Business module assembled data and analytics: Past technologies may have been a form of solidified, monolithic software, but future technologies will use more assembled technologies to complete the building of applications.

    Decision-centric data and analytics: Companies need more and more people who can make data analysis-based recommendations and plans for business decisions at a higher level, and Gartner has proposed a decision intelligence model to help companies manage the decision chain from a top-level design perspective.

    The lack of personnel skills and literacy: enterprises need to enable users to speak about the business results after using data analytics so that they can influence more people.

         Institutionalization of trust

    Interconnected governance: Establish a virtual data and analytics governance layer across organizations, business functions, and even geographies to achieve cross-enterprise governance outcomes. 

    AI risk management: Many enterprises are doing some model governance because of regulatory and compliance drivers, so they are completely reactive when doing AI models; Gartner wants enterprises to focus on trust risk and security management for AI governance.

    Vendor and regional ecosystem: When enterprises go to build their own data analytics ecosystem, they have to consider more compatibility between vendors and vendors.

    Expansion to the edge: Data and analytics activities are increasingly operating in distributed device servers, gateways outside the data center or public cloud infrastructure.

    Now enterprises have very much data, but this data is not activated, and enterprises are often passive in executing data analysis projects and behaviors, and not very proactive in bringing out the potential value of the data. How to let more and more users can make decisions based on data has become a challenge for enterprises at this stage, doing data analysis on the cloud has become a preference, and enterprises also want to use some "self-service" tools for business users to make decisions more quickly.

    Gartner's forecast this year also made a bold prediction, more and more data analysis activities will start with digital office software, business needs at the same time will be completed in the digital office software data analysis, and based on data analysis can be completed in the digital office software business some of the actions to complete the data analysis of the closed loop.

    business Data Analytics Gartner
    Previous Article What is a holographic cell phone
    Next Article How does the meta universe "feed" artificial intelligence models?

    Related Articles

    Big Data

    Winning Business Excellence with Data Analytics

    May 20, 2025
    IoT

    The role of IoT devices in intelligent workplace technology

    Jun 25, 2025
    Big Data

    Gartner Releases Top 10 Data and Analytics Trends for 2023

    May 28, 2025
    Most Popular

    Berlin showcases smart city innovations

    Jun 03, 2025

    Where does the data for Big Data come from?

    Jun 15, 2025

    6 Ways to Make Money for IoT Products

    Jun 04, 2025
    Copyright © 2025 itheroe.com. All rights reserved. User Agreement | Privacy Policy

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