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Recently, there has been a new story at the intersection of crypto and AI. Under NVIDIA's technological ecosystem, NVIDIA Compute Network (NCN) has launched its own token—NVAI—aiming to turn an interesting concept into reality: allowing idle GPU hardware to contribute computing power in exchange for cryptocurrency rewards.
The core gameplay of the project is called "Proof of Compute." Simply put, you contribute your graphics card's computing resources to support AI model training and inference, and the system rewards you with tokens based on the computing power you provide. This sounds straightforward, but the underlying logic is quite deep: it links hardware computing capabilities with blockchain incentive mechanisms to form a decentralized computing power trading network.
From a technical perspective, this still has some barriers. First, it is compatible with NVIDIA's entire hardware ecosystem—supporting CUDA architecture, RTX graphics cards, Jetson edge computing platforms, and more. The code has also passed audits by well-known security agencies in the industry, which is important for user confidence. The roadmap includes node incentive systems, decentralized computing power markets, and AI model trading platforms, showing ambitious goals.
This direction is worth watching. As AI training costs continue to rise, can decentralized methods connect idle GPU resources worldwide? This is indeed a promising question. However, the actual implementation remains to be seen.