Anthropic’s advisor strategy
Anthropic’s new Advisor Strategy framework is very promising.
The first image shows how users can now pair a more capable model (like Opus) as a strategic “Advisor” with a faster, cheaper model (like Sonnet or Haiku) as the “Executor” in a single Claude API call. This mirrors the actor-critic logic: the Executor (actor) invokes the Advisor (critic) as needed, with both operating on a shared context to optimize performance and cost.
The second image is a Nano Banana illustration for my year-end reflection on LLM interfaces, where I discussed using IDE tools to bridge different model families from multiple providers and benefit from complementary error patterns, a modular take on the same actor-critic setup.
In a modeling workflow, for example, the actor codes for data cleaning, while the critic serves as the reviewer to ensure variables are correctly coded and align with methodological assumptions. Anthropic’s framework automates this workflow within a single provider.



