
Making AI Honesty Machine-Readable: The Future of ML Data Exchange
May
21
Thursday, May 21, 2026
11:00 PM UTC
16attending
Location
Embarc Collective
About this event
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
