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Something I’ve been thinking about lately is how people often overlook one important part of AI infrastructure, the data pipeline.
Most people focus on the models themselves, but models only improve when the data feeding them keeps evolving.
That’s where @PerceptronNTWK becomes interesting to me.
Instead of depending on static datasets controlled by a few centralized providers, the network treats data generation as a continuous process.
Participants help gather raw web data from across the internet.
Then the protocol works on refining that information into structured datasets that AI systems can actually learn from.
From my perspective, this creates a more dynamic flow of data.
As more participants contribute, the dataset keeps improving and expanding.
That kind of system could help AI models stay updated with real-time information rather than relying only on old, fixed datasets.