@FinanceYF5: Current discussions about AI Agents mostly stay in single-player mode — how to help me improve efficiency and manage my schedule. Edge City co-founder Timour Kosters raised a more thought-provoking question: Once everyone has an Agent, and these Agents start interacting with each other, what will happen? He judges…
Summary
Edge City co-founder Timour Kosters points out that current AI Agent discussions are mostly focused on single-player mode, but in the next 12-24 months, most people will have multiple Agents, and the interaction between them is the real variable.
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Cached at: 06/26/26, 12:10 PM
Now when we talk about AI agents, we’re mostly stuck in single-player mode — how to help me be more productive, manage my schedule.
Edge City co-founder timour kosters raised a more interesting question:
Once everyone has their own agent, and these agents start interacting with each other — what happens?
He predicts that in the next 12–24 months, most people will have multiple agents simultaneously.
Single-player mode is just the starting point. Multi-player mode is where the real shift happens. https://t.co/J6fVFaWNnQ
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