# ASI Roadmap 2025

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The ASI Alliance laid out an ambitious and realistic timeline for progressing our core technologies. This roadmap outlines key initiatives across four interconnected areas: Ecosystem, Deployment (Applications), AI models/systems, and Infrastructure. These initiatives are designed to foster collaboration, drive technological advancements, and build scalable infrastructure for decentralized AI and true AGI.

Our commitment to creating decentralized, democratic, inclusive, and beneficial AGI has never been more resolute. There is still more research and development needed to get to human-level AGI —and shortly after, ASI— but we have charted a clear roadmap to advance our decentralized AI infrastructure and advance the other research and development streams that are being pursued within the Alliance, namely the Hyperon Neural-Symbolic Evolutionary approach, LLMs, World-World models, and Agent Networks.

Going into 2025, we will take a series of concrete steps to execute against these plans, expanding our ecosystem, and defining a clear strategy to lead in the AGI era. Each of these moves opens new opportunities for the ASI ecosystem, and their impact will continue to be felt far into the future.


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