Making AI Honesty Machine-Readable: The Future of ML Data Exchange
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When ML models extract facts, crucial metadata like confidence, provenance, and temporal validity are often discarded, forcing downstream systems to treat all AI assertions as equally true.
This hands-on workshop introduces jsonld-ex, an open-source Python library that extends the W3C JSON-LD standard with assertion-level metadata. Through three interactive Google Colab notebooks, we will explore two formal algebras built on this framework:
- The Confidence Algebra: Grounded in Jøsang's Subjective Logic, this replaces lossy scalar scores with rich opinion tuples. Learn principled methods for multi-source fusion, trust discounting, conflict detection, and temporal decay.
- The Compliance Algebra: Model regulatory obligations (like GDPR) as dynamic epistemic states. We will cover operators for jurisdictional composition, derivation chains, consent lifecycles, and erasure verification across data lineage graphs.
- Applied Practice: Build an end-to-end, confidence-aware knowledge extraction pipeline with round-trip interoperability to W3C standards.
Note: This will be a two part series
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