Hi, I'm
Cloud Data Engineer with 4+ years of hands-on AWS experience, specialising in designing and delivering scalable, cloud-native data platforms. I thrive at the intersection of data engineering, DevOps, and backend development — turning messy, high-volume datasets into reliable, cost-efficient pipelines.
Most recently I led the data platform modernisation for a global automotive enterprise, cutting analysis costs by over 50% and time-to-result by over 75%. I work with Python, Terraform, and the broader AWS data stack every day, and I bring rigorous testing practices (full pyramid) to everything I ship.
demicon — Global Automotive Enterprise
Automotive
Led the design and delivery of a cloud-native data analysis platform for a global automotive client, replacing a manual Excel-based process. The platform reduced analysis costs by >50% and time-to-result by >75%, and laid the groundwork for future AI-driven analytics.
Sports Tech Startup
Sports Tech
Contributed to a mobile running coaching application, building the entire backend from scratch in a small, agile team alongside a professional runner and a frontend developer.
CLF-C02
Amazon Web Services
DEA-C01
Amazon Web Services
A serverless AWS engine that surfaces hidden economic and geopolitical relationships between nations.
Ingests decades of World Bank indicator data and computes cross-correlations across all country pairs, synthesising raw signals into Patterns, Influence Cascades, and Relationship Clusters. Orchestrated by a 6-phase AWS Step Functions state machine spanning Lambda, Batch (Graviton Spot), Glue, and Athena.
Full project breakdown ↗Whether you're interested in what QGI patterns reveal about your region or sector, want to discuss a cloud data engineering engagement, or are looking to recruit — reach out.