HADA: Human-AI Agent Decision Alignment Architecture
Tapio Pitk\"aranta, Leena Pitk\"aranta

TL;DR
HADA is a flexible, open-source architecture that aligns AI and human decision-making with organizational values through conversational, role-specific agents, demonstrated on a credit-scoring model.
Contribution
It introduces a protocol-agnostic, multi-agent framework for human-AI alignment, with empirical validation in real-world decision pipelines.
Findings
Complete decision traceability across roles
Improved bias detection and mitigation
Enhanced transparency and ethical compliance
Abstract
We present HADA (Human-AI Agent Decision Alignment), a protocol- and framework agnostic reference architecture that keeps both large language model (LLM) agents and legacy algorithms aligned with organizational targets and values. HADA wraps any algorithm or LLM in role-specific stakeholder agents -- business, data-science, audit, ethics, and customer -- each exposing conversational APIs so that technical and non-technical actors can query, steer, audit, or contest every decision across strategic, tactical, and real-time horizons. Alignment objectives, KPIs, and value constraints are expressed in natural language and are continuously propagated, logged, and versioned while thousands of heterogeneous agents run on different orchestration stacks. A cloud-native proof of concept packages a production credit-scoring model (getLoanDecision) and deploys it on Docker/Kubernetes/Python; five…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Multi-Agent Systems and Negotiation · Ethics and Social Impacts of AI
