Machine Learning Street Talk (MLST)

When AI Discovers The Next Transformer - Robert Lange (Sakana)

177 snips
Mar 13, 2026
Robert Lange, founding researcher at Sakana AI who builds open-ended program search and evolutionary LLM methods, discusses Shinka Evolve. He talks about combining LLMs with evolutionary algorithms, co-evolving problems and solutions, model ensembles with adaptive selection, and sample-efficient breakthroughs like circle packing and contest results. They also cover verification challenges, meta-evolution, and how researchers might shepherd autonomous runs.
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ADVICE

Archive And Parallelize Program Mutations

  • Maintain a program archive and parallelize edits so discoveries diffuse across the search tree.
  • Use parent sampling, LLM-powered mutations, and evidence logging to propagate useful program fragments globally.
INSIGHT

Model Ensembles With Bandit Selection Improves Mutations

  • Ensembling frontier LLMs and adaptively selecting among them improves search; credit assignment between models is hard.
  • They use a UCB bandit to prefer models that historically produced beneficial mutations for similar nodes.
INSIGHT

Diverse Mutation Operators Drive Novel Combinations

  • Diverse mutation operators (diff patches, full rewrites, crossover) enable escaping local optima and combining concepts.
  • Circle packing evolution showed crossover and reheating stages that merged ideas across branches.
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