Intuition Founder Criticizes AI Training on Inferior Data


Intuition Founder Criticizes AI Training on Inferior Data


Darius Baruo
Nov 01, 2025 01:03

Intuition’s Billy Luedtke highlights concerns about AI models being trained on low-quality data, emphasizing the potential risks of recursive AI learning.

As artificial intelligence (AI) continues to advance, concerns about the quality of data used in training these models are becoming increasingly prevalent. Billy Luedtke, the founder of Intuition, has voiced his concerns about the deteriorating quality of data being used to train AI systems, according to CoinMarketCap.

AI’s Dependence on Data Quality

Luedtke emphasizes that the effectiveness of AI is heavily reliant on the quality of data it is fed. He describes the current situation as a “slop-in, slop-out” era, highlighting that as AI becomes more recursive, the problem could worsen. Recursive AI refers to the phenomenon where AI models are trained on data generated by other AI, potentially compounding any existing data quality issues.

Challenges in AI Training

The increasing use of AI systems is revealing limitations that are difficult to overcome. While the models themselves are becoming more sophisticated, the data they are trained on has not seen the same quality improvements. This discrepancy could lead to significant challenges in AI development and application, as models may not perform optimally if trained on subpar data.

Decentralized Models as a Solution

Luedtke points out that decentralized models might have an advantage in terms of technology and user experience. By leveraging decentralized systems, AI models could potentially access a more diverse and higher quality data set, mitigating some of the issues associated with current data practices.

The insights shared by Luedtke underscore the importance of addressing data quality concerns in AI training. As AI continues to integrate into various sectors, ensuring that models are trained on robust, high-quality data will be crucial for their success and reliability.

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