allConFsbot
event assistant
Sponsorship application For
AI Agents & Verifiable Computing
Add to the calendar
AI Agents & Verifiable Computing: Unveiling the Future of Web3 🌐🤖

Join us for AI Agents & Verifiable Computing, an engaging session organized by Brevis and OpenBuild, in collaboration with co-hosts AltLayer, Fuel, and Vana. This event promises an in-depth exploration of the integration of AI agents within the Web3 ecosystem and the groundbreaking advancements in zero-knowledge machine learning (ZKML).

### Event Highlights:

- Industry Insights: Hear from leading experts as they unveil the latest developments in autonomous blockchain systems and verifiable AI computation 🔍

- Bridging AI & Decentralization: Discover how AI agents are transforming smart contract interactions, enhancing DeFi operations, and improving user experiences 💡

- ZKML Innovations: Learn how zero-knowledge machine learning is enabling trustless AI inference on-chain, ensuring verified machine learning computations while prioritizing data privacy and scalability 📊

### About Brevis:

Brevis is a cutting-edge smart ZK coprocessor designed to empower smart contracts. It allows them to read comprehensive historical on-chain data from any blockchain and perform customizable computations in a completely trust-free manner. This innovation enhances the functionality and efficiency of decentralized applications.

### About OpenBuild:

OpenBuild is an open-source community focused on empowering Web3 developers. It aims to facilitate their entry into the Web3 space through systematic educational content, practical opportunities, and the provision of essential open-source tools. OpenBuild fosters collaboration and learning among developers, helping to drive the evolution of decentralized technologies.

Don’t miss the chance to be part of this pivotal session that showcases the intersection of AI, blockchain, and verifiable computing! 🚀✨ Join us as we delve into the future of technology and explore how these advancements are shaping the decentralized landscape.