Skip to content
Tiatra, LLCTiatra, LLC
Tiatra, LLC
Information Technology Solutions for Washington, DC Government Agencies
  • Home
  • About Us
  • Services
    • IT Engineering and Support
    • Software Development
    • Information Assurance and Testing
    • Project and Program Management
  • Clients & Partners
  • Careers
  • News
  • Contact
 
  • Home
  • About Us
  • Services
    • IT Engineering and Support
    • Software Development
    • Information Assurance and Testing
    • Project and Program Management
  • Clients & Partners
  • Careers
  • News
  • Contact

The case for predictive AI

AI is taking the world by storm. All forward-thinking businesses are toying with or have already invested in AI — from boutique startups to enterprise conglomerates. According to Accenture, nearly 75% of companies have already integrated AI into their business strategies, and 42% said that the return on their AI initiatives exceeded their expectations (only 1% said the return didn’t meet expectations).

The past six months have seen a particular form of AI gain popularity among business leaders: Generative AI (GenAI). According to Forrester, GenAI will have an average annual growth rate of 36% up to 2030, capturing 55% of the AI software market. However, despite this projected growth, Forrester also expects short-term adoption and productivity gains to be restricted by GenAI’s current limitations.

However, there is one form of AI that will allow businesses to see almost an immediate value: Predictive AI. Predictive AI uses advanced algorithms based on historical data patterns and existing information to forecast outcomes to predict customer preferences and market trends — providing valuable insights for decision-making. While predictive AI certainly isn’t a new concept, it’s been seen as the little brother to GenAI.

But it shouldn’t. Predictive AI can help break down the generational gaps in IT departments and address the most significant challenge for mainframe customers and users: operating hardware, software, and applications all on the mainframe.

What’s the difference?

Yes, GenAI and Predictive AI are both forms of artificial intelligence, but they have fundamental key differences that businesses must consider. It’s easy to think about these pieces of technology in two separate categories: one creates something new, the other forecasts future outcomes.

GenAI focuses on the creation of new content, generating outputs that are original and novel. It leverages techniques to learn patterns and distributions from existing data and generate new samples. GenAI models can generate realistic images, compose music, write text, and even design virtual worlds. The critical characteristic of GenAI is its ability to explicitly create something that does not exist in the training data. It captures the underlying complexity and diversity of the input and produces unique outputs that exhibit creativity and originality.

Meanwhile, Predictive AI specializes in analyzing patterns within existing data to make accurate predictions and forecasts about future outcomes. Predictive AI utilizes machine learning algorithms to learn from historical data and identify patterns and relationships. Predictive AI models can be trained to predict stock market trends, customer behavior, disease progression, and much, much more. The primary objective of Predictive AI is to extract valuable insights and make informed predictions based on available data. It aids decision-making processes, allowing businesses to optimize operations, identify potential risks, and develop data-driven strategies. Predictive AI will not only help make mainframe applications better, but it can also help predict what could potentially go wrong in an application and what to do to prevent that from happening.

Predictive AI in a hybrid cloud environment

The mainframe is a critical system of record for organizations, and its data is an invaluable source of insight for businesses. In order to operate most successfully, the mainframe must be modernized to integrate with the public and private cloud. Integrating with the cloud offers advanced analytics capabilities that can help organizations extract the most valuable insights from their data with AI in a secure environment.

Three main foundational components of technology sit on the mainframe: hardware, software, and applications. Frequently, it’s a challenge for organizations to operate all three simultaneously and securely. However, Predictive AI can help solve this operational challenge because it relies heavily on historical data, enabling users to operate the mainframe and manage enterprise applications more efficiently. Although GenAI can still be very useful to business leaders, in mission-critical environments, such as the mainframe, the technology is not yet trusted enough to be adopted.

GenAI and Predictive AI represent two distinct approaches within the broader field of artificial intelligence. Although each approach has its unique applications and use cases that empower different industries and domains, Predictive AI is best suited for work within the mainframe.

By understanding the distinctions between GenAI and Predictive AI, organizations can make better, more informed decisions for the security and optimization of the main frame. As AI continues to evolve, Predictive AI holds the potential to unlock new opportunities and shape the future of mainframe systems.

To learn how Rocket Software can help you modernize without disruption, click here.

Artificial Intelligence, Machine Learning
Read More from This Article: The case for predictive AI
Source: News

Category: NewsOctober 16, 2023
Tags: art

Post navigation

PreviousPrevious post:FinOps is the discipline enterprises need to optimize cloud spendingNextNext post:How to capitalize on ‘Trustworthy AI’

Related posts

Barb Wixom and MIT CISR on managing data like a product
May 30, 2025
Avery Dennison takes culture-first approach to AI transformation
May 30, 2025
The agentic AI assist Stanford University cancer care staff needed
May 30, 2025
Los desafíos de la era de la ‘IA en todas partes’, a fondo en Data & AI Summit 2025
May 30, 2025
“AI 비서가 팀 단위로 지원하는 효과”···퍼플렉시티, AI 프로젝트 10분 완성 도구 ‘랩스’ 출시
May 30, 2025
“ROI는 어디에?” AI 도입을 재고하게 만드는 실패 사례
May 30, 2025
Recent Posts
  • Barb Wixom and MIT CISR on managing data like a product
  • Avery Dennison takes culture-first approach to AI transformation
  • The agentic AI assist Stanford University cancer care staff needed
  • Los desafíos de la era de la ‘IA en todas partes’, a fondo en Data & AI Summit 2025
  • “AI 비서가 팀 단위로 지원하는 효과”···퍼플렉시티, AI 프로젝트 10분 완성 도구 ‘랩스’ 출시
Recent Comments
    Archives
    • May 2025
    • April 2025
    • March 2025
    • February 2025
    • January 2025
    • December 2024
    • November 2024
    • October 2024
    • September 2024
    • August 2024
    • July 2024
    • June 2024
    • May 2024
    • April 2024
    • March 2024
    • February 2024
    • January 2024
    • December 2023
    • November 2023
    • October 2023
    • September 2023
    • August 2023
    • July 2023
    • June 2023
    • May 2023
    • April 2023
    • March 2023
    • February 2023
    • January 2023
    • December 2022
    • November 2022
    • October 2022
    • September 2022
    • August 2022
    • July 2022
    • June 2022
    • May 2022
    • April 2022
    • March 2022
    • February 2022
    • January 2022
    • December 2021
    • November 2021
    • October 2021
    • September 2021
    • August 2021
    • July 2021
    • June 2021
    • May 2021
    • April 2021
    • March 2021
    • February 2021
    • January 2021
    • December 2020
    • November 2020
    • October 2020
    • September 2020
    • August 2020
    • July 2020
    • June 2020
    • May 2020
    • April 2020
    • January 2020
    • December 2019
    • November 2019
    • October 2019
    • September 2019
    • August 2019
    • July 2019
    • June 2019
    • May 2019
    • April 2019
    • March 2019
    • February 2019
    • January 2019
    • December 2018
    • November 2018
    • October 2018
    • September 2018
    • August 2018
    • July 2018
    • June 2018
    • May 2018
    • April 2018
    • March 2018
    • February 2018
    • January 2018
    • December 2017
    • November 2017
    • October 2017
    • September 2017
    • August 2017
    • July 2017
    • June 2017
    • May 2017
    • April 2017
    • March 2017
    • February 2017
    • January 2017
    Categories
    • News
    Meta
    • Log in
    • Entries feed
    • Comments feed
    • WordPress.org
    Tiatra LLC.

    Tiatra, LLC, based in the Washington, DC metropolitan area, proudly serves federal government agencies, organizations that work with the government and other commercial businesses and organizations. Tiatra specializes in a broad range of information technology (IT) development and management services incorporating solid engineering, attention to client needs, and meeting or exceeding any security parameters required. Our small yet innovative company is structured with a full complement of the necessary technical experts, working with hands-on management, to provide a high level of service and competitive pricing for your systems and engineering requirements.

    Find us on:

    FacebookTwitterLinkedin

    Submitclear

    Tiatra, LLC
    Copyright 2016. All rights reserved.