what truly makes a difference is no longer who has more parameters, but who can provide more open, more reliable, and more long-term accessible AI infrastructure.
@nesaorg is essentially designing a new set of "operating rules" for AI: 🔹 Nodes can join or leave at any time, and the system can still operate normally 🔹 Machines with different performance levels can find their place in the network 🔹 Computation results can be verified by other nodes, rather than "trusting a single server" 🔹 Incentives are tied to quality, not just stacking more computing power
If in the past AI was "a platform owning the model," then @nesaorg aims to promote a network that collaboratively runs AI.
This is not just a technological upgrade, but a structural change.
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As model capabilities gradually converge,
what truly makes a difference is no longer who has more parameters,
but who can provide more open, more reliable, and more long-term accessible AI infrastructure.
@nesaorg is essentially designing a new set of "operating rules" for AI:
🔹 Nodes can join or leave at any time, and the system can still operate normally
🔹 Machines with different performance levels can find their place in the network
🔹 Computation results can be verified by other nodes, rather than "trusting a single server"
🔹 Incentives are tied to quality, not just stacking more computing power
If in the past AI was "a platform owning the model,"
then @nesaorg aims to promote a network that collaboratively runs AI.
This is not just a technological upgrade, but a structural change.