"Intelligence is nothing without accurate retrieval and secure boundaries."
I lead technical vision for AI Engineering, mentoring principal engineers and architecting systems that handle the Hard Trinity of enterprise AI: Scale, Sovereignty, and Security.
After a decade engineering search infrastructure (Solr/Elasticsearch/OpenSearch) at scale, I now focus on what comes next: RAG architectures that survive adversarial pressure, agents that reason over enterprise data, and AI that runs where the data lives.
I stay sharp through CTF competitionsβbecause the best way to build secure AI is to break it first.
| Pillar | What It Means | How I Deliver |
|---|---|---|
| Scale | Systems that handle real enterprise load | RAG platforms indexing 50M+ documents, sub-second retrieval, 10,000+ users |
| Sovereignty | AI that runs without cloud dependency | Air-gapped pipelines, local LLMs, zero-trust architectures |
| Security | Treating LLM safety as adversarial engineering | Red-teaming, prompt injection defense, OWASP LLM Top 10 |
I formalize my open-source research under @ai-search-labβa "Product Lab" for hardening experimental technology into reusable enterprise patterns.
| Project | Capability | The Pitch |
|---|---|---|
| π΄ ctf-kit | Automated Red-Teaming | AI-assisted offensive security framework integrating with Claude Code & Copilot for vulnerability detection and exploit synthesis |
| π§ adaptive-knowledge-graph | Neuro-Symbolic Learning | Zero-cloud engine fusing Knowledge Graphs with LLM reasoning via Bayesian Knowledge Tracingβconsumer hardware only |
| π§± agentbricks-experiments | Lakehouse Agents | Architectural primitives for LLMs reasoning directly over Unity Catalog volumesβenterprise data as active knowledge |
| ποΈ whisper-danger-zone | Sovereign Audio | Air-gapped Whisper + Pyannote pipeline for 100% private speaker-attributed transcription |
Coming next: Extending audio pipeline with Qwen TTS/STT for fully local voice interfaces.
βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
β Standard AI Engineering β Adversarial-First Engineering β
βββββββββββββββββββββββββββββββββΌββββββββββββββββββββββββββββββββββ€
β Build β Deploy β Hope β Build β Break β Harden β Deployβ
β "Works on my prompts" β "Survives hostile inputs" β
β RAG = embed + retrieve β RAG + grounding + hallucinationβ
β β detection + guardrails β
β Trust the model β Verify, constrain, observe β
βββββββββββββββββββββββββββββββββ΄ββββββββββββββββββββββββββββββββββ
I maintain active CTF practice (2022βpresent). The "Danger Zone" repos throughout my profile are deliberate: an Applied Research Sandbox where I stress-test bleeding-edge technology before bringing patterns to enterprise.
Technical Direction
- Define AI architecture strategy across engineering organizations
- Mentor and develop principal engineers in GenAI best practices
- Translate OWASP LLM Top 10 defenses into production guardrails and CI/CD pipelines
Enterprise GenAI Platforms
- Architected centralized RAG ecosystem serving 10,000+ internal users
- Indexed 50M+ documents across engineering and product knowledge bases
- Designed "Federated Model Gateway" abstracting providers (Bedrock, Azure, Local) to prevent vendor lock-in and enable dynamic cost optimization
- Implemented distributed tracing for non-deterministic agent flows
Search at Scale
- Led hybrid search transformation (lexical β semantic β unified) for major e-commerce platforms
- Optimized JVM garbage collection and Lucene segment merging for peak traffic, significantly reducing P99 latency
| Domain | Stack |
|---|---|
| GenAI & LLM | Amazon Bedrock Β· Azure OpenAI Β· LangGraph Β· RAG Β· GraphRAG Β· Local LLMs (Ollama/Llama.cpp) Β· OWASP LLM Top 10 |
| Search & Retrieval | Elasticsearch Β· OpenSearch Β· Solr Β· Lucene Β· Vector DBs Β· Hybrid Search |
| Engineering | Python Β· Java Β· AWS Β· Databricks Β· Unity Catalog Β· System Architecture |
| Adversarial | CTF Β· Red-Teaming Β· Prompt Injection Defense Β· Adversarial ML |
Recent
- ποΈ Panel Host Β· Innovation Day 2025: AI Made Real (Brussels) β Exploring the intersection of vision, creativity, and technology in AI
Conference Talks
- Python Generators for Search Engines Β· Summer Python Meetup
- Deploying Solr in Multi-Region Environments Β· Apache Lucene/Solr London
- Effective Molecule Search in Elasticsearch Β· Cambridge Cheminformatics & Zed Conf
- Browser Fingerprinting & Privacy Β· Privacy Research
- CTF Competitions Β· Codeberry Club
Writing (coming soon)
- Building AI that survives adversarial pressure
- GraphRAG vs. naive RAG: when knowledge graphs actually matter
- Local LLM deployment patterns for enterprise privacy requirements





