Connect with us

Hi, what are you looking for?

Top Stories

AI’s Efficiency Crisis: Why R&D Must Embrace ‘Inefficiencies’ for Breakthrough Innovation

Professor Kim Eui-seok warns that while AI boosts R&D efficiency by 100x, true innovation requires embracing ‘inefficiencies’ to uncover hidden opportunities worth 100 trillion won.

Professor Kim Eui-seok from the Graduate School of Technology Management at KAIST has raised concerns about the limitations of artificial intelligence (AI) in research and development. As AI agents increasingly automate tasks by running thousands of virtual simulations, they are enhancing efficiencies dramatically—reportedly increasing data processing speeds by 100 times and reducing costs to one-tenth. However, these gains have not led to the groundbreaking innovations many anticipated, leaving chief technology officers and researchers feeling disheartened.

“The analysis was finished in a day, and the completeness of the results increased, so why isn’t there a ‘one shot’ that will surprise the world?” Kim stated, emphasizing that while AI excels at improving existing products through gradual innovation, it often does so within the boundaries of established knowledge.

The core issue lies in the nature of AI itself; it operates as a “probability” machine, generating outcomes based on the patterns it learns from vast datasets. While this is effective for optimization, it tends to guide companies towards the “peak of the mean” in a normal distribution curve. However, major breakthroughs that have historically transformed industries often arise from unexplained outliers, suggesting that companies may need to rethink how they utilize AI in their R&D processes.

To foster true innovation, Kim proposes a multi-faceted approach. Firstly, he advocates for a ‘noise conservation area’ where researchers actively re-evaluate data that AI might classify as irrelevant. This could potentially unearth next-generation materials or technologies hidden among what AI deems “trash.”

Secondly, Kim emphasizes the need to separate ‘exploration’ from ‘utilization’. While AI is adept at leveraging existing knowledge to improve products, human researchers should focus on formulating bold hypotheses that challenge AI’s predictive abilities. Performance indicators should then measure not just success rates, but also how far teams venture away from AI-generated predictions.

Finally, there is a call for a shift in leadership within R&D departments. Previously, R&D leaders aimed to increase the chances of success through calculated risk. Now, Kim argues, leaders must cultivate a mindset that embraces uncertainty and even embraces failure in pursuit of transformative ideas. “Drastic thinking transitions and sometimes rough intuition are needed in the context of problems that can allocate resources on dangerous paths with low probability of success,” he explained.

Kim’s insights underline a critical paradigm shift: in evolutionary terms, the most adaptable groups for survival are not necessarily the most refined but are those that incorporate variants capable of responding to changing conditions. While AI can provide efficiency and precision, it lacks the heterogeneity required to foster innovative thought.

He warns that if R&D centers are operating too smoothly and efficiently, it may indicate a stagnation crisis. “Right now, you have to throw a grain of sand of ‘inefficient other things’ into that smooth situation,” Kim advised. Innovation, he argues, often occurs where efficiency ends, suggesting that hidden opportunities, potentially worth 100 trillion won, lie within the noise of inefficient processes.

The implications of Kim’s assertions are significant for the future of technology development, as companies grapple with the balance between AI’s powerful capabilities and the unpredictable nature of human creativity. As industries evolve, they may need to embrace a dual-track approach that leverages AI for optimization while simultaneously encouraging human researchers to venture into the unknown.

As the dialogue around AI’s role in innovation expands, the need for a strategic shift in R&D practices could become vital for companies aiming to remain competitive in a rapidly evolving technological landscape.

See also
Staff
Written By

The AiPressa Staff team brings you comprehensive coverage of the artificial intelligence industry, including breaking news, research developments, business trends, and policy updates. Our mission is to keep you informed about the rapidly evolving world of AI technology.

You May Also Like

AI Cybersecurity

Schools leverage AI to enhance cybersecurity, but experts warn that AI-driven threats like advanced phishing and malware pose new risks.

AI Tools

Only 42% of employees globally are confident in computational thinking, with less than 20% demonstrating AI-ready skills, threatening productivity and innovation.

AI Research

Krites boosts curated response rates by 3.9x for large language models while maintaining latency, revolutionizing AI caching efficiency.

AI Marketing

HCLTech and Cisco unveil the AI-driven Fluid Contact Center, improving customer engagement and efficiency while addressing 96% of agents' complex interaction challenges.

Top Stories

Cohu, Inc. posts Q4 2025 sales rise to $122.23M but widens annual loss to $74.27M, highlighting risks amid semiconductor market volatility.

Top Stories

ValleyNXT Ventures launches the ₹400 crore Bharat Breakthrough Fund to accelerate seed-stage AI and defence startups with a unique VC-plus-accelerator model

AI Regulation

Clarkesworld halts new submissions amid a surge of AI-generated stories, prompting industry-wide adaptations as publishers face unprecedented content challenges.

AI Technology

Donald Thompson of Workplace Options emphasizes the critical role of psychological safety in AI integration, advocating for human-centered leadership to enhance organizational culture.

© 2025 AIPressa · Part of Buzzora Media · All rights reserved. This website provides general news and educational content for informational purposes only. While we strive for accuracy, we do not guarantee the completeness or reliability of the information presented. The content should not be considered professional advice of any kind. Readers are encouraged to verify facts and consult appropriate experts when needed. We are not responsible for any loss or inconvenience resulting from the use of information on this site. Some images used on this website are generated with artificial intelligence and are illustrative in nature. They may not accurately represent the products, people, or events described in the articles.