Why Do We Need Sherpa
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Published on ● Video Link: https://www.youtube.com/watch?v=RE3eMFhFPwU
Sherpa was born to fill the gaps in today’s agentic frameworks by bringing the proven power of hierarchical state machines to AI workflows. Unlike flat graph or linear workflow tools, Sherpa lets you model complex systems just like avionics and other mission‑critical software do. It also cleanly separates “flow” (your state definitions), “policy” (how decisions get made at each state), and “actions” (the code you invoke on transitions or within states).
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