In the past few years, many people have been talking about AI infrastructure, but the real issue isn't actually the number of models, it's how to connect these capabilities together. There are more and more models, but interface fragmentation and high integration costs have actually raised the barriers for developers to use them.
@dgrid_ai is trying to solve exactly this problem. The project unifies AI RPC interfaces, connecting different models and AI Agents into the same network, allowing developers to call multiple AI capabilities within a single system.
What's even more interesting is the intelligent routing mechanism. When users request AI services, the system automatically selects the most suitable model based on cost, performance, and capability to execute the task. This model is somewhat similar to a traffic scheduling system in the AI world.
To ensure result reliability, the network introduces a Proof of Quality mechanism that verifies AI inference results, making the execution process traceable and auditable.
Looking at the entire structure from a Web3 perspective, DGrid is more like building an AI network layer. As more and more AI applications need to run on-chain, this decentralized inference network could become an important bridge connecting models and applications.
In the past few years, many people have been talking about AI infrastructure, but the real issue isn't actually the number of models, it's how to connect these capabilities together. There are more and more models, but interface fragmentation and high integration costs have actually raised the barriers for developers to use them.
@dgrid_ai is trying to solve exactly this problem. The project unifies AI RPC interfaces, connecting different models and AI Agents into the same network, allowing developers to call multiple AI capabilities within a single system.
What's even more interesting is the intelligent routing mechanism. When users request AI services, the system automatically selects the most suitable model based on cost, performance, and capability to execute the task. This model is somewhat similar to a traffic scheduling system in the AI world.
To ensure result reliability, the network introduces a Proof of Quality mechanism that verifies AI inference results, making the execution process traceable and auditable.
Looking at the entire structure from a Web3 perspective, DGrid is more like building an AI network layer. As more and more AI applications need to run on-chain, this decentralized inference network could become an important bridge connecting models and applications.
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