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AI Lab Automated Scientist Can Optimize Hyperparameters But Cannot Do Lateral Thinking

Dwarkesh Patel Podcast · Eric Jang – Building AlphaGo from scratch · May 15, 2026
AI Lab Automated Scientist Can Optimize Hyperparameters But Cannot Do Lateral Thinking
Dwarkesh Patel Podcast
Dwarkesh Patel Podcast
Eric Jang – Building AlphaGo from scratch
"Current closed models that we can access today, they don't seem to be that great at selecting what the next experiment should be in a given track, and they don't seem to be able to step back and do the lateral thinking of, wait a minute, this track doesn't really make sense. Let's go back to first principles. Often I had to catch infra bugs myself by prompting the right question to Claude."
Zhang used Claude 4.6 and 4.7 extensively for AI research automation and found models excel at hyperparameter optimization and executing specific experiments but fail at higher-level research strategy. The AI cannot determine when to abandon unproductive research directions or step back to reconsider fundamental assumptions. Zhang suggests this represents a key bottleneck in fully automated AI research, though he notes upcoming models like Mythos may address these limitations.

About this episode

In this technical deep dive, host Dwarkesh Patel interviews Eric Zhang, former VP of AI at 1X Technologies and ex-senior research scientist at Google DeepMind Robotics, who spent his recent sabbatical rebuilding AlphaGo from scratch. Zhang achieved AlphaGo-level performance for approximately $7,000 in compute costs—a dramatic reduction from DeepMind's original multi-million-dollar effort—using modern GPUs, LLM-assisted coding, and simplified architectures. The conversation provides an accessible explanation of how AlphaGo works, breaking down Monte Carlo Tree Search, policy and value networks, and the self-play training loop that enables the system to iteratively improve by distilling search into neural network forward passes. Zhang argues that AlphaGo represents a profound computational accomplishment: a 10-layer neural network somehow compresses what should be an intractable search problem, challenging traditional notions of computational complexity and suggesting NP-hard problems may be more tractable than theory predicts. He contrasts AlphaGo's elegant training approach—which provides improved action labels at every step via MCTS—with the far less efficient policy gradient methods used in LLM reinforcement learning, where models must randomly stumble upon correct answers before receiving any learning signal. Zhang also discusses his experience using Claude for automated research, finding it excellent for hyperparameter optimization and executing specific experiments but incapable of the lateral thinking required to abandon unproductive research directions. The episode concludes with broader reflections on AI research methodology, the validity of the 'bitter lesson' that compute matters more than algorithmic tricks, and what Go as a research environment might teach us about automating scientific discovery itself.

Key takeaways

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