I love figuring out how things work. Whether it was learning languages, mapping survey logic, or designing data flows between teams, I’ve always chased that moment when a complex system finally makes sense.
Data engineering is the first field that lets me live in that space every day. I get to build the structures that make information move — to design, optimize, and watch things click into place. The satisfaction is the same as it’s always been: understanding patterns deeply and turning them into something that works in the real world.
Long before I deployed my first Airflow DAG, I was running data pipelines — they just happened to involve humans, spreadsheets, and field surveys across seven projects. I’ve always loved solving the puzzle of messy, mismatched data and designing systems that bring order to chaos.
Learning Python and cloud tooling finally gave me the freedom to engineer the kind of systems I used to imagine: automated, scalable, and elegant. I think in patterns — whether in languages, logic, or data architecture — and that’s what makes data engineering so satisfying to me. It’s the same curiosity that drove me to learn foreign languages years ago; now it’s expressed in code.
Experienced data professional transitioning from analytics and nonprofit programs into Data Engineer with previously 10 years experience in data-related roles with overseas humanitarian projects & the judicial sector.