MIDAS is an open platform for governing execution authority at decision surfaces across agents, AI systems, and enterprise workflows.
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Updated
Apr 3, 2026 - Go
MIDAS is an open platform for governing execution authority at decision surfaces across agents, AI systems, and enterprise workflows.
A long-form article introducing the Twin Test: a practical standard for high-stakes machine learning where models must show nearest “twin” examples, neighborhood tightness, mixed-vs-homogeneous evidence, and “no reliable twins” abstention. Argues similarity and evidence packets beat probability scores for trust and safety.
A long-form article and practical framework for designing machine learning systems that warn instead of decide. Covers regimes vs decimals, levers over labels, reversible alerts, anti-coercion UI patterns, auditability, and the “Warning Card” template, so ML preserves human agency while staying useful under uncertainty.
Longform article reframing abstention (reject option / selective prediction) as product design, not model weakness. Covers coverage as a KPI, calibration as a prerequisite, threshold selection under review capacity and risk, queue/UX design for human-in-the-loop workflows, and anti-patterns that break safety in production.
AI/ML Engineer — Decision Ops • LLM Observability • GenAI/RAG Systems
Event-driven NLP governance architecture using FastStream, Redpanda, and PostgreSQL with auditability, human-in-the-loop control, and ethical safeguards.
Stock redistribution and fairness-based transfer recommendations (Excel/VBA prototype).
Control-plane architecture for AI & agentic systems: governance as admission control, decision admissibility, and audit-grade evidence.
A governed system for translating applied AI research into auditable, decision-ready artifacts.
Research repository by Xufen Tu exploring human judgment, decision architecture, and responsibility structures in complex AI-mediated systems.
Deterministic governance system for AI-driven marketing that separates diagnostics, human reasoning, and execution into strictly controlled layers.
CFS (Cognitive Flow System) — a causal influence framework for modeling how decisions emerge in complex systems through structured causal constraints. DOI: https://doi.org/10.5281/zenodo.19142077 DOI: https://doi.org/10.5281/zenodo.19103972
Open-source framework for Decision Traces in complex decision systems. Providing a verifiable audit trail for observable, explainable, and humane choices in software and agentic engineering
Defines the Selection Layer — the decision system through which AI models determine visibility, inclusion, and recommendation.
Turn-based control architectures
Optimization-driven product selection for commercial buying decisions under budget and business constraints.
Strategic multi-dimensional customer segmentation decision system aligning marketing investment with profitability and ROI
A design framework for decision-centered automation, governance, and early misalignment detection.
Analytics and automation builder focused on turning operational data into practical decision tools. Background in commercial and retail planning, moving toward decision systems and analytics engineering.
AI-assisted evidence review workflow for regulated financial services, featuring structured claim extraction, evidence sufficiency scoring, contradiction detection, audit-ready traceability, human-in-the-loop review routing, and evaluation-driven safeguards.
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