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As we enter 2025, the competitive landscape of AI model training is quietly shifting. The once fierce battle over publicly available online data has now fallen into a dilemma—high-quality data sources are increasingly scarce, leaving behind a barren void. At this critical juncture, a group of training providers are collectively turning to decentralized data collaboration platforms. Why is this happening?
Simply put, traditional data trading models are like black market transactions. Buyers have no way of knowing whether the data is contaminated with AI-generated junk, and sellers cannot clarify how their data will ultimately be used. Trust is entirely a black hole.
But recently, this situation has been broken. Some emerging decentralized networks are beginning to use on-chain verification mechanisms to transform this approach. Each data transaction is accompanied by identity verification based on zero-knowledge proofs, making transaction history transparent and traceable. What does this mean? It means you are no longer buying unverifiable data blocks, but high-quality assets with "provenance." From a technical perspective, this is like upgrading a disorganized street market into a formal exchange with a notarization system.
This wave of restructuring in the data market is reshaping the entire AI training ecosystem. Networks that can provide authentic, verifiable data are attracting more and more training providers. Behind this shift reflects the industry's inevitable evolution from pursuing data volume to emphasizing data quality and trustworthiness.