AI training data quality
Intuition’s Billy Luedtke has expressed concerns regarding the use of low-quality data in training AI models, warning about the implications of recursive AI learning. Luedtke argues that training AI systems on inferior data can lead to significant risks in their performance and reliability. He emphasizes that the quality of the data used directly affects the outcomes produced by these models. Furthermore, he highlights the potential dangers of recursive learning, where AI systems learn from flawed outputs, potentially amplifying errors. Luedtke’s remarks raise critical questions about the standards and practices surrounding AI training data, urging a reevaluation of the sources and quality of information fed into these systems.
Last updated on November 1st, 2025 at 01:00 am






