• About
  • Subscribe
  • Contact
Wednesday, May 7, 2025
    Login
  • Management Leadership
    • Growth Strategies
    • Finance
    • Operations
    • Sales and Marketing
    • Careers
  • Technology
    • Infrastructure and Platforms
    • Business Applications and Databases
    • Big Data, Analytics and Intelligence
    • Security
  • Industry Verticals
    • Finance and Insurance
    • Manufacturing
    • Logistics and Transportation
    • Retail and Wholesale
    • Hospitality and Tourism
    • Government and Public Services
    • Utilities
    • Media and Telecommunications
  • Resources
    • Whitepapers
    • PodChats
    • Videos
  • Events
No Result
View All Result
  • Management Leadership
    • Growth Strategies
    • Finance
    • Operations
    • Sales and Marketing
    • Careers
  • Technology
    • Infrastructure and Platforms
    • Business Applications and Databases
    • Big Data, Analytics and Intelligence
    • Security
  • Industry Verticals
    • Finance and Insurance
    • Manufacturing
    • Logistics and Transportation
    • Retail and Wholesale
    • Hospitality and Tourism
    • Government and Public Services
    • Utilities
    • Media and Telecommunications
  • Resources
    • Whitepapers
    • PodChats
    • Videos
  • Events
No Result
View All Result
No Result
View All Result
Home Technology Big Data, Analytics & Intelligence

Supercharging data fabrics with Gen AI

Noel Yuhanna by Noel Yuhanna
September 12, 2023
Photo by ThisIsEngineering from Pexels: https://www.pexels.com/photo/code-projected-over-woman-3861969/

Photo by ThisIsEngineering from Pexels: https://www.pexels.com/photo/code-projected-over-woman-3861969/

Data fabric has been gaining traction in the enterprise. Data fabric is a modern architecture that automates the integration of any data in real-time or near real-time from disparate sources, on-premises or in the cloud, into coherent data services that support business transactions, analytics, predictive analytics, and other workloads and patterns.

Now, with the explosion of interest in generative AI and large language models (LLMs), data fabric is poised to accelerate data democratisation.

Generative AI brings fast automation to data fabric

Forrester’s data fabric architecture already had AI/ML as a critical component within the six layers of the architecture: data management, data ingest, data processing, data orchestration, data discovery, and access.

Generative AI (GenAI) and LLMs take it to the next level with the automation of processes, pipelines, workflows, code generation, integration with natural language query, and enabling data intelligence through adaptive learning.

Moreover, with a data fabric architecture, its modular design enables organisations to take advantage of new capabilities quickly and without major infrastructure changes.

With generative AI and data fabric, organisations can:

Enable natural language to access data. Generative AI and LLM can help democratise data through natural language query (NLQ), offering a ChatGPT-like interface to access any data connected to the data fabric. While we see some vendors already offering limited NLQ capabilities, these features are still very early in their maturity.

Automate the integration of data. With data distributed across hybrid and multiple clouds, integrating data has become a top challenge. Generative AI and LLMs will simplify real-time integration through automated code generation for integration, enabling dynamic entity resolution and supporting automated data mapping and linking across silos in the data fabric.

Perform similarity searches using vector databases. Generative AI and LLMs can also leverage vector databases to do similarity searches based on the context that’s connected to the data fabric. This is a game-changer, especially with the ability to support data intelligence and the semantics of untapped data assets.

Improve data quality in real-time. Data quality is one of the top challenges, as per recent Forrester survey data. While most organisations struggle with data quality, generative AI and data fabric can help automate the detection of anomalies, perform data cleansing, and validate data, all in real-time.

Secure and govern data in real-time. Most organisations struggle with data security and governance for enterprise data, especially when data is distributed. Generative AI and data fabric will help automate discovery, classification, categorisation, and data access based on policies in real-time.

First published on Forrester Blog

Related:  Fostering a culture of innovation in AI teams
Tags: data fabricForrestergenerative AILLMreal-time
Noel Yuhanna

Noel Yuhanna

Noel Yuhanna, VP and principal analyst with Forrester, covers big data, data warehouses, data fabric, data integration, data virtualisation, Hadoop, Spark, in-memory, translytical, NoSQL, cloud, ETL, big data integration, data management, data tools, and data security for enterprise architecture professionals. His current focus is on new and emerging markets, modern data architectures, cloud and hybrid cloud deployments. Previous Work Experience Yuhanna has more than 25 years of experience in IT and has held various technical and management positions. He came to Forrester through its acquisition of Giga Information Group in 2003. Prior to joining Giga, Yuhanna spent several years at Exodus Communications and led a group responsible for planning and implementing mission-critical enterprise applications including ERP, CRM, and other internal apps. Prior to Exodus, he served as a principal consultant, benchmark specialist, and data architect for Amdahl Corporation. He worked on several very large database applications and deployed high-availability and high-scalability solutions for Fortune 100 companies. He was responsible for running the world’s fastest TPC-B benchmark on Informix at Amdahl in 1994 and built the first commercial terabyte-sized database on Oracle in the early 1990s. He worked on nCube MPP Database in the early '90s and helped enterprises scale their mission-critical applications. At his first job at Eicher Goodearth Corporation in the mid-1980s, he started working with COBOL programs and later expanded his knowledge toward data modeling, programming, and administration using RDBMS technologies. Yuhanna has spoken at numerous industry conferences around the globe and is quoted frequently in industry publications such as CNET News, Computerworld, eWeek, InfoWorld, InformationWeek, Forbes, Search.com, The Wall Street Journal, and The New York Times. He has taught several technical and management workshops on big data, data management, data integration, building scalable apps, in-memory platforms, and data virtualisation. Education Yuhanna holds a bachelor's degree in business and a postgraduate degree in business administration. He is the author of an Oracle book published by Manning Publications in 1999.

No Result
View All Result

Recent Posts

  • Agentic AI-powered AppSec platform launched for the AI era
  • IDC forecasts GenAI alone will grow at a 59.2% CAGR
  • Dataiku brings new AI capabilities to create and control AI agents
  • Microsoft reveals the rise of a new kind of organisation in the AI era
  • St Luke’s ElderCare enhances data security and user experience with Juniper

Live Poll

Categories

  • Big Data, Analytics & Intelligence
  • Business Applications & Databases
  • Business-IT Alignment
  • Careers
  • Case Studies
  • CISO
  • CISO strategies
  • Cloud, Virtualization, Operating Environments and Middleware
  • Computer, Storage, Networks, Connectivity
  • Corporate Social Responsibility
  • Customer Experience / Engagement
  • Cyber risk management
  • Cyberattacks and data breaches
  • Cybersecurity careers
  • Cybersecurity operations
  • Education
  • Education
  • Finance
  • Finance & Insurance
  • FutureCISO
  • General
  • Governance, Risk and Compliance
  • Government and Public Services
  • Growth Strategies
  • Hospitality & Tourism
  • HR, education and Training
  • Industry Verticals
  • Infrastructure & Platforms
  • Insider threats
  • Latest Stories
  • Logistics & Transportation
  • Management Leadership
  • Manufacturing
  • Media and Telecommunications
  • News Stories
  • Operations
  • Opinion
  • Opinions
  • People
  • Process
  • Remote work
  • Retail & Wholesale
  • Sales & Marketing
  • Security
  • Tactics and Strategies
  • Technology
  • Utilities
  • Videos
  • Vulnerabilities and threats
  • White Papers

Strategic Insights for Chief Information Officers

FutureCIO is about enabling the CIO, his team, the leadership and the enterprise through shared expertise, know-how and experience - through a community of shared interests and goals. It is also about discovering unknown best practices that will help realize new business models.

Quick Links

  • Videos
  • Resources
  • Subscribe
  • Contact

Cxociety Media Brands

  • FutureIoT
  • FutureCFO
  • FutureCIO

Categories

  • Privacy Policy
  • Terms of Use
  • Cookie Policy

Copyright © 2022 Cxociety Pte Ltd | Designed by Pixl

Login to your account below

or

Not a member yet? Register here

Forgotten Password?

Fill the forms bellow to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In
No Result
View All Result
  • Management Leadership
    • Growth Strategies
    • Finance
    • Operations
    • Sales and Marketing
    • Careers
  • Technology
    • Infrastructure and Platforms
    • Business Applications and Databases
    • Big Data, Analytics and Intelligence
    • Security
  • Industry Verticals
    • Finance and Insurance
    • Manufacturing
    • Logistics and Transportation
    • Retail and Wholesale
    • Hospitality and Tourism
    • Government and Public Services
    • Utilities
    • Media and Telecommunications
  • Resources
    • Whitepapers
    • PodChats
    • Videos
  • Events
Login

Copyright © 2022 Cxociety Pte Ltd | Designed by Pixl

Subscribe