AI Without Data Extraction: Building Trust‑First Infrastructure for Enterprise Decision‑Making (opens in new tab)
AI's real problem isn't model quality. The real issue is that the pipeline connecting data to decisions is unverifiable, centralized, and owned by someone other than you. A trustworthy stack separates data, compute, model, and application into distinct layers, each closing a different gap in the accountability chain. The protocols to build this already exist: permanent decentralized storage, reproducible inference environments, signed model outputs, and permissioned data contracts. By 2030, t...
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