From the Hudson Desk
Field notes from real enterprise AI deployments — strategy, closed loops, and what the slides leave out.
Zero-trust sovereign AI: compliance and risk inside the ECB zone
Reconciling AI agent autonomous execution with strict banking risk frameworks (ECB guidelines, GDPR). Lessons learned on setting quality gates.
Model arbitrage: orchestrating multi-LLM pipelines in production
Choosing between public tier-1s, custom fine-tunes, and private on-premise open-source models inside high-regulatory constraints. Lessons learned on latency vs cost.
Dismantling human middleware: how we structured the legible organization
A case study of replacing middle-management coordination hierarchies with real-time model telemetry. Lessons learned on cultural pushback and operational audits.
The CTO perspective: designing for ephemeral software factories
How modern architecture treats application logic as temporary. Lessons learned on model upgrades and code regeneration pipeline setups.
The CEO perspective: navigating the token-based balance sheet
Moving from headcount-based ROI to token-budget optimization. Lessons learned about pricing risk and model switching costs in enterprise consulting.
The 18-month playbook: from AI assessment to measurable ROI
How three TMT enterprises moved from pilot purgatory to production — and what their first 90 days actually looked like.
