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Over the years, many AI projects have emerged within the crypto ecosystem, but frankly, most are just armchair theories. No matter how beautiful the whitepapers are, in practice they often hit technical walls or lack serious implementation plans. It wasn't until I encountered Kite that I felt I was touching on something a bit different—not just following the trend, but laying a foundation for the next stage of AI development in the shadows.
Currently, when people talk about AI, the focus is mostly on application layers: writing copy, running data analysis, generating images. These are indeed useful, but the thinking still stays at the assistant level. A real turning point is coming—AI will soon operate autonomously: negotiating, executing tasks, allocating resources, and interacting with other AIs. The speed will far surpass human capabilities. The key isn’t whether it will come or not, but how to prevent it from losing control and how to establish an economic closed loop. Kite has sensed this pain point.
What impresses me most about Kite is that from its initial architecture design, it treats AI agents as the main protagonists. Traditional blockchain assumptions still hold that every transaction is operated by a human. Kite flips this idea: future participants will be autonomous agents. Based on this premise, it has built a complete set of rules, governance structures, and accountability mechanisms—not simply handing AI a wallet and letting it go. This sets it apart from other Layer 1s, elevating it to a completely different dimension.
The most impressive part is the identity layer design. User identities, agent identities, and session identities are strictly separated—seems like a technical detail, but in reality, it solves a core problem. If an agent makes a mistake, it can be precisely traced back to which agent, in what context, making the responsibility chain clear. This is truly critical for building large-scale, trustworthy AI systems. Without this mechanism, the imagination space for agent economies would be severely limited.