• About Us
  • Contact Us
  • Terms & Conditions
  • Privacy Policy
Technology Hive
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • More
    • Deep Learning
    • AI in Healthcare
    • AI Regulations & Policies
    • Business
    • Cloud Computing
    • Ethics & Society
No Result
View All Result
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • More
    • Deep Learning
    • AI in Healthcare
    • AI Regulations & Policies
    • Business
    • Cloud Computing
    • Ethics & Society
No Result
View All Result
Technology Hive
No Result
View All Result
Home Artificial Intelligence (AI)

Counterintuitive’s new chip aims to escape the AI ‘twin trap’

Adam Smith – Tech Writer & Blogger by Adam Smith – Tech Writer & Blogger
October 29, 2025
in Artificial Intelligence (AI)
0
Counterintuitive’s new chip aims to escape the AI ‘twin trap’
0
SHARES
0
VIEWS
Share on FacebookShare on Twitter

Introduction to Counterintuitive

AI startup company Counterintuitive has set out to build “reasoning-native computing,” enabling machines to understand rather than simply mimic. Such a breakthrough has the potential to shift AI from pattern recognition to genuine comprehension, paving the way for systems that can think and make decisions – in other words, to be more “human-like.”

The Twin Trap Problem

Counterintuitive Chairman, Gerard Rego, spoke of what the company terms the ‘twin trap’ problem facing AI, stating the company’s first goal is to solve two key problems that limit current AI systems that prevent even the largest AI systems from being stable, efficient, and genuinely intelligent. The first trap highlights how today’s AI systems lack reliable, reproducible numerical foundations, having been built on outdated mathematical grounds. Examples include floating-point arithmetic that was designed decades ago for speed in tasks including gaming and graphics. Precision and consistency is therefore lacking.

Numerical Systems and Precision

In numerical systems, each mathematical operation introduces tiny rounding errors that can build up over time. Because of this, running the same AI model twice can provide different results, causing non-determinism. Inconsistency of this nature makes it harder to verify, reproduce, and/or audit AI decisions, particularly in fields like law, finance, and healthcare. If AI outputs can not be explained or proven clearly, they become ‘hallucinations’ – a term coined for their “lack of provability.” Modern AI has a fundamental struggle with precision that lacks truth, creating an invisible wall. The flaw has become a rigid limit, affecting overall performances, increasing costs, and wasting energy on noise corrections.

Architecture and Memory

The second trap is found in architecture. Current AI models have no memory. Instead, they predict the next frame or token with no reasoning that helped them achieve the prediction. It’s like predictive text, just on steroids, the company says. Once modern models output something, they don’t retain why they made such a decision and are unable to revisit or build on their own reasoning. It may appear that AI has reason, but it’s only mimicking reasoning, not truly understanding how conclusions are reached.

Building a World-Class Team

“Counterintuitive is building a world-class team of mathematicians, computer scientists, physicists and engineers who are veterans of leading global research labs and technology companies, and who understand the Twin Trap fundamental and solve it,” Rego said. Rego’s team has more than 80 patents pending, spanning deterministic reasoning hardware, causal memory systems, and software frameworks that it believes has the potential to “define the next generation of computing based on reasoning – not mimicry.”

Reasoning-Native Computing Research

Counterintuitive’s reasoning-native computing research aims to produce the first reasoning chip and software reasoning stack that pushes AI beyond its current limits. The company’s artificial reasoning unit (ARU) is a new type of compute, rather than a processor, that focuses on memory-driven reasoning and executes causal logic in silicon, unlike GPUs. “Our ARU stack is more than a new chip category being developed – it’s a clean break from probabilistic computing,” said Counterintuitive co-founder, Syam Appala.

Redefining Intelligence

“The ARU will usher in the next age of computing, redefining intelligence from imitation to understanding and powering the applications that impact the most important sectors of the economy without the need for massive hardware, data centre and energy budgets.” By integrating memory-driven causal logic into both hardware and software, Counterintuitive aims to develop systems that are more reliable and auditable. It marks a shift from traditional speed-focused, probabilistic AI black-box models towards more transparent and accountable reasoning.

Conclusion

Counterintuitive is working towards a breakthrough in AI technology by addressing the twin trap problem and developing reasoning-native computing. This innovation has the potential to revolutionize the field of artificial intelligence, enabling machines to truly understand and make decisions like humans. With a world-class team and over 80 patents pending, Counterintuitive is poised to define the next generation of computing.

FAQs

Q: What is Counterintuitive’s goal in AI development?
A: Counterintuitive aims to build “reasoning-native computing,” enabling machines to understand rather than simply mimic.
Q: What is the twin trap problem in AI?
A: The twin trap problem refers to the two key limitations of current AI systems: lack of reliable numerical foundations and lack of memory in architecture.
Q: How does Counterintuitive plan to address the twin trap problem?
A: Counterintuitive is building a world-class team and developing deterministic reasoning hardware, causal memory systems, and software frameworks to solve the twin trap problem.
Q: What is the potential impact of Counterintuitive’s innovation?
A: The innovation has the potential to shift AI from pattern recognition to genuine comprehension, paving the way for systems that can think and make decisions like humans.

Previous Post

Is Cognition AI Necessary with Claude Code, Cursor, and Copilot?

Next Post

Building a High-Performance Data and AI Organization

Adam Smith – Tech Writer & Blogger

Adam Smith – Tech Writer & Blogger

Adam Smith is a passionate technology writer with a keen interest in emerging trends, gadgets, and software innovations. With over five years of experience in tech journalism, he has contributed insightful articles to leading tech blogs and online publications. His expertise covers a wide range of topics, including artificial intelligence, cybersecurity, mobile technology, and the latest advancements in consumer electronics. Adam excels in breaking down complex technical concepts into engaging and easy-to-understand content for a diverse audience. Beyond writing, he enjoys testing new gadgets, reviewing software, and staying up to date with the ever-evolving tech industry. His goal is to inform and inspire readers with in-depth analysis and practical insights into the digital world.

Related Posts

Agencies Boost Client Capacity with AI-Powered Workflows
Artificial Intelligence (AI)

Agencies Boost Client Capacity with AI-Powered Workflows

by Adam Smith – Tech Writer & Blogger
December 19, 2025
Zara’s AI Revolution in Retail Workflows
Artificial Intelligence (AI)

Zara’s AI Revolution in Retail Workflows

by Adam Smith – Tech Writer & Blogger
December 19, 2025
China figured out how to sell EVs, now it has to bury their batteries
Artificial Intelligence (AI)

China figured out how to sell EVs, now it has to bury their batteries

by Adam Smith – Tech Writer & Blogger
December 18, 2025
Guided Learning Unlocks Potential of “Untrainable” Neural Networks
Artificial Intelligence (AI)

Guided Learning Unlocks Potential of “Untrainable” Neural Networks

by Adam Smith – Tech Writer & Blogger
December 18, 2025
Wall Street’s AI Gains Mean Fewer Bank Jobs
Artificial Intelligence (AI)

Wall Street’s AI Gains Mean Fewer Bank Jobs

by Adam Smith – Tech Writer & Blogger
December 18, 2025
Next Post
Building a High-Performance Data and AI Organization

Building a High-Performance Data and AI Organization

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Latest Articles

Google says new cloud-based “Private AI Compute” is just as secure as local processing

Google says new cloud-based “Private AI Compute” is just as secure as local processing

November 11, 2025
AI Helps Close Significant Care Gaps

AI Helps Close Significant Care Gaps

April 25, 2025
Google Unveils Its Most Intelligent AI Model Yet

Google Unveils Its Most Intelligent AI Model Yet

March 26, 2025

Browse by Category

  • AI in Healthcare
  • AI Regulations & Policies
  • Artificial Intelligence (AI)
  • Business
  • Cloud Computing
  • Cyber Security
  • Deep Learning
  • Ethics & Society
  • Machine Learning
  • Technology
Technology Hive

Welcome to Technology Hive, your go-to source for the latest insights, trends, and innovations in technology and artificial intelligence. We are a dynamic digital magazine dedicated to exploring the ever-evolving landscape of AI, emerging technologies, and their impact on industries and everyday life.

Categories

  • AI in Healthcare
  • AI Regulations & Policies
  • Artificial Intelligence (AI)
  • Business
  • Cloud Computing
  • Cyber Security
  • Deep Learning
  • Ethics & Society
  • Machine Learning
  • Technology

Recent Posts

  • Google Sues Search Result Scraping Firm SerpApi
  • LG TVs’ Unremovable Copilot Shortcut Issue
  • AI Coding Agents Rebuild Minesweeper with Explosive Results
  • Agencies Boost Client Capacity with AI-Powered Workflows
  • 50,000 Copilot Licences for Indian Firms

Our Newsletter

Subscribe Us To Receive Our Latest News Directly In Your Inbox!

We don’t spam! Read our privacy policy for more info.

Check your inbox or spam folder to confirm your subscription.

© Copyright 2025. All Right Reserved By Technology Hive.

No Result
View All Result
  • Home
  • Technology
  • Artificial Intelligence (AI)
  • Cyber Security
  • Machine Learning
  • AI in Healthcare
  • AI Regulations & Policies
  • Business
  • Cloud Computing
  • Ethics & Society
  • Deep Learning

© Copyright 2025. All Right Reserved By Technology Hive.

Are you sure want to unlock this post?
Unlock left : 0
Are you sure want to cancel subscription?