About me
Most people who end up leading AI teams started in computer science. I started by designing bridges. My first master's degree is in civil engineering from Kyiv National University of Construction and Architecture, and that background gave me something I still rely on every day: a systems-thinking instinct for how complex structures hold together under pressure.
The pivot happened when I realised software could be built the same way – layer by layer, with strong foundations and clear tolerances. I earned a second master's in computer engineering from KPI, began my career in quality assurance, and quickly moved into test automation. That obsession with reliability became the thread connecting every role that followed.
At glomex in Munich I shifted into data engineering, building real-time analytics pipelines and billing systems on AWS. At SoftConstruct I led the AJNA Sports AI team, where we stitched two 4K camera feeds into a panoramic view and used computer vision to track players and ball movement without human operators. That project taught me what it takes to ship AI to production under real-world constraints – latency budgets, hardware limits, and zero tolerance for downtime.
From there I joined GR8 Tech as Research Development Team & Tech Lead, where I designed a recommendation platform that measurably increased user engagement, built MLOps infrastructure from scratch with Kubernetes, Kubeflow, and Airflow, and created a YAML-driven DAG factory that let data scientists ship pipelines without writing code. At Honeycomb Software I was the first employee of what became the Data & AI department – I built it from scratch, set up hiring, development, and performance processes, and grew the team to twelve engineers. As Head of Data & AI I led that cross-functional group of ML, software, and DevOps engineers to ship end-to-end data and AI products – including vectorisation pipelines and multi-agent RAG systems that powered core product features. Now, as R&D Tech Lead at Monday.com, I work on the Reporting & Widgets team, tackling widget governance, scaling reporting infrastructure, performance, and bringing AI into the product where it adds real value.
What I talk about
- Production RAG & multi-agent systems – architecture, evaluation, and the gap between demo and deployment
- MLOps & data platform design – building infrastructure that lets data scientists move fast without breaking things
- Computer vision at scale – real-time video processing, edge inference, and lessons from the sports AI world
- Engineering leadership – growing teams, designing interview loops, and creating a culture of ownership
- The non-traditional path into AI – how a civil engineering mindset shaped my approach to system design
See full talk descriptions and booking info →
Outside of work, I am a Lens Champion in the Kubernetes ecosystem and a member of the AI Accelerator Institute. I run a Ukrainian-language Telegram channel Тіні Забутих Даних about data and AI, and I am always looking for opportunities to mentor engineers and share what I have learned with the broader community.