The article discusses the challenges and pitfalls of scaling up reinforcement learning (RL) systems, emphasizing the tendency to overestimate the effectiveness of incremental improvements. It critiques the "just one more scale-up" mentality and highlights historical examples where such optimism led to disappointing results in AI development.