# Hedgewater 2.0

**Hedgewater 2.0** is the first permissionless framework for deploying autonomous AI trading agents on **HyperEVM**. It allows anyone to build a fully automated, strategy-driven trading agent that mirrors their personal trading philosophy—executing 24/7 with precision, discipline, and zero emotion. Wallets are secured via **Privy**, ensuring safety without compromising autonomy.

Imagine an agent that not only understands your strategy but follows it flawlessly—no second-guessing, no fear, no greed. AI agents based on your strategy, that takes out emotion out of trading. People can build smart strategies, but sticking to them without letting emotions interfere is where they often fail.\
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From first principles, we believe the future of DeFi will be shaped not by more human users, but by **millions of intelligent AI agents** acting as autonomous market participants. Think of agents like APIs. Just as modular frameworks like **React** and **Angular** transformed websites into complex, multifunctional “web apps,” AI agents are now evolving from simple automation tools into powerful, specialized microservices for DeFi.

AI agents are on a similar path, decoupling and becoming 10x more sophisticated. Hedgewater 2.0 is built from the ground up with this approach in mind.


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