AI is not for the nerds.
The biggest shift in human history doesn't belong on your IT department's desk. It belongs on yours, where strategy meets execution. AI adoption isn't a technical project; it's a leadership decision.
Three years ago, I started building AI systems the way I thought everyone would build them: fast, minimal dependencies, straight to users. Then I looked around. Enterprise teams were still writing governance frameworks. Consultancies were still delivering PowerPoints. Offshore teams were still treating AI like another software project.
They're not slow because they lack expertise. They're slow because their structures make speed impossible.
So I keep building. Each project teaches me what theory cannot: what actually works, what doesn't, and why small teams have leverage right now, before that window closes.
AI is the fastest-adopted economically significant technology in human history. When a billion people hold this kind of power, everything changes at once. Education, work, communication, entire industries – already shifting. Much more coming.
This site is for founders who'd rather build than wait for certainty.
Research CLI → Web App
Refactored an open-source financial research CLI into a browser-based web app for user-friendly access. Claude Code-like experience. Why not ChatGPT? Secure, specialised environment with trusted, verified data sources.
Try it →31-Day Coding Streak
171,129 lines of code. 773 files created. 179 late-night sessions past midnight. 2,600 prompts. Claude Code as my co-founder, building regulated-market AI products at a pace that would make most dev teams nervous.
Agentic AI for Non-Tech Users
Developer CLI tools are incredibly efficient, but built for engineers. We are making the same power available for everyone.
See demo →brandguideAI: New Co-Founded Project
Build your brand from scratch with a brand consultant 24/7 for a fraction of the cost.
Try Free →The window is 2026–2028.
Year of the Agent
Automation cliff. AI agents handle knowledge work at scale. Companies that move now capture the advantage.
Year of the Robot
Physical automation follows. What started in software extends into the physical world.
ASI Emergence
Artificial superintelligence. The questions shift from "can AI do this?" to "what should AI do?"
Societal Response
Policy catches up. By then, the early movers have already reshaped their industries.
The companies that understand this timeline are moving now, not waiting for certainty.
Where small companies win
→ Knowledge work niches
- • Customer needs are standardized
- • Distribution is digital
- • Trust barriers are low
- • No regulatory moats protecting incumbents
Here, speed and AI fluency matter more than size.
Where scale still wins
- • Heavily regulated industries
- • Physical goods and logistics
- • Anything requiring institutional trust
- • Complex multi-stakeholder environments
Large organisations maintain advantages here, for now.
145+
Repositories. I learn by shipping, across healthcare, property, brand education, social monitoring. Real products, real users, real patterns.
250+
Deep collaboration with AI. I see multi-agent orchestration where others see chatbots, and I think about what this means for work, economics, and society.
<30 days
From concept to working product. Speed compounds; every week of building is learning that accumulates.
What I Believe
These aren't abstract opinions; they're patterns I've observed building across industries. This is the foundation for how I think about AI and business.
AI is not IT
This isn't a technology upgrade to delegate. It's a fundamental shift in leverage that belongs on the founder's desk. Understanding it yourself changes how you see every decision.
Speed is the advantage that compounds
Every week you're learning and building is a week your knowledge compounds. Waiting for certainty means falling behind those who are figuring it out in motion.
Small teams have a window
Right now, a small team that moves fast can do what used to require departments. This window exists because the technology is new and the playbooks haven't been written.
Outcomes over process
What did you ship this week? Who's using it? These questions matter more than roadmaps and governance frameworks. Results teach faster than planning.
Compliance isn't optional; it's the foundation
In regulated industries, auditability and governance aren't afterthoughts. They're built in from day one. Every AI system I build has logging, fallbacks, and human oversight baked in.
The bigger questions matter too
Post-labour economics, AGI control, the nature of intelligence itself; these aren't distractions from building. They're context for why this moment matters so much.
"I'm looking for founders and leaders who sense this shift and want to understand it, both the opportunity and the deeper implications."
What I've Built
This isn't a portfolio; it's proof of AI adoption done right in regulated environments. Healthcare. Finance. Industries where a data breach isn't just embarrassing; it's existential. Each project taught me something that theory couldn't.
I'm not a consultant who advises from the sidelines. I'm a builder who's shipped and seen what works, repeatedly, at speed.
I build production-grade AI systems where security, compliance, and interface design are one system, not three separate conversations. Deploy local AI models in healthcare without creating a new breach surface. Run patient data through AI workflows without that data ever leaving your walls.
What this looks like: local AI deployments using open-weight models, secure document retrieval for clinical environments, airtight audit logs, and controlled routing to external APIs only when your policy allows. No public internet access by default. Encryption and access controls built in from day one.
I deliver working systems, not slide decks. Security architecture plus implementation, shipped to production.
MedHubAI
Medically controlled and compliant AI conversational platform now running at 10 clinics.
Lesson learned: The best healthcare AI feels human while remaining auditable.
Property Investment Analysis
Multiple data sources pulling satellite imagery, planning data, flood risk, transport links, and market intelligence. Turns any address into a comprehensive investment thesis.
Lesson learned: The power isn't in one data source; it's in orchestrating many. Real insight comes from synthesis.
brandguide/AI
Brand building platform that helps any business owner build their brand and develop their marketing strategy through conversation. Your brand, your data, your personalised AI mentor.
Lesson learned: Consultancy-level brand and marketing strategy for a fraction of the cost, built on curated and exclusive knowledge.

claude-code-design-skill
CLI skill for Claude Code, Codex and Gemini that provides AI-powered UI/UX design assistance to developers, automating design suggestions directly in the terminal. Integrates 20 years of design experience into the developer workflow. Shortly after publication, Anthropic released their own design skill for Claude Code.
Lesson learned: The best developer tools don't remove creativity from the designer's hands; they accelerate iteration so more time can be spent on decisions that truly matter.
AGI Detector
Early warning system monitoring leading Western and Chinese AI sources for real AGI signals, with cross-referencing and severity classification (low, critical, etc.). Uses historical trend tracking and pattern recognition to distinguish normal AI progress from potential AGI breakthroughs, based on signals like recursive self-improvement, meta-learning, or cross-domain generalization.
Lesson learned: Weak signal detection isn't about perfect accuracy; it's about ensuring no critical signal goes unnoticed.
Mortgage Scam Victim Helper App
AI assistant for Hungarian foreign currency loan victims, providing personalized advice based on legal and financial data for analyzing loan constructions and exploring compensation options. Democratizes legal assistance by making complex financial information understandable and accessible. Must be installed locally to ensure data security.
Lesson learned: The information gap is the deepest form of inequality in the modern era. AI's true social value isn't in efficiency gains - it's in democratizing expert knowledge for those who were previously vulnerable.
Anna, the Oncopsychology Assistant
AI assistant developed with oncopsychologist Dr. Ágnes Riskó, providing emotional support to oncology patients from the onkopszichologia.hu content. Specifically serves the purpose that a language model can better convey complex professional material through a conversational interface than if patients or their relatives had to search for minutes on a complex website.
Lesson learned: Communicates humanly while remaining transparent; clearly defining boundaries (not medical advice) doesn't weaken the value of help, it protects both the user and the technology. True innovation isn't in AI replacing the specialist, but in functioning as a 24/7 first line while consciously redirecting to human specialists when needed.
Regional Automation Processes
Dashboard measuring automation vulnerability of regional labour markets, combining employment data, land registry data, and automation methodology with AI analysis. Monthly-updated early warning system broken down by cities, where job automation and real estate market instability could trigger dangerous processes.
Lesson learned: Macroeconomic changes don't happen in isolated sectors. The power isn't in one data source; it's in analysing the connections between many data sources.
Better Call AI
AI-powered legal research platform built on open source legal databases for German and UK law that previously had no accessible frontend. A 3.5-month development journey that evolved from pure backend semantic search to a full-stack SaaS application with AI-powered legal assistance.
Lesson learned: Open databases are potential; accessible interfaces are value. The biggest opportunity in legal tech isn't better tools for lawyers—it's making law understandable for everyone else.
Agentic for Everyone
I am building a browser-based agentic AI interface bringing the power of developer CLI systems (Claude Code, Codex, Gemini CLI) to non-technical users. Streaming responses, tool visualisation, subagent delegation—without terminal syntax or cryptic errors. The paradigm: there is no interface between you and the work.
Lesson learned: The bottleneck was never AI capability; it was interface design. Even with billions behind industry-standard software, there's always room for indie tools that actually respect how people want to work.
The Pattern I Keep Seeing
Speed compounds
Every week of shipping is learning that compounds. Every week of planning is learning that doesn't.
Orchestration wins
Single AI models aren't the breakthrough. Multi-agent systems that orchestrate context, tools, and memory; that's where magic happens.
Domain depth matters
The AI isn't the hard part. Understanding the domain deeply enough to know what to build; that's the unfair advantage.
The Conversation
These aren't marketing channels. They're distribution points for a belief system. Join the founders, leaders, and non-technical stakeholders who want to understand what's actually happening with AI adoption, and why it matters.
Newsletter
Practical AI insights for builders and leaders. No fluff, no hype; just patterns from the frontline.
Subscribe →YouTube
Technical explorations of multi-agent systems, orchestration patterns, and what I'm building now.
Watch →Agentics London
The London chapter of the global Agentics community. Practitioners sharing what's working, and what isn't.
Join us →Workshops
Intensive sessions for teams ready to move from talking about AI to actually building with it.
Learn more →Where I Speak
Ready to see what's actually possible?
The newsletter is where I share patterns, provocations, and what I'm learning from building. It's free, and you can leave anytime.