Data Science Intern
Paid internship · ~£15/hour · part-time (~15 hrs/week, flexible around study) · Falmouth or Bristol (hybrid / remote-friendly) · clear route to permanent
About usEpoetic is a small, founder-led data and analytics company working at the sharp end of environmental sensing. We turn messy real-world data from emissions-detection and methane-survey programmes — vehicle fleets, sensors and geospatial networks — into tooling, automation and analytics that help find and fix gas leaks across the country. It's genuinely useful work: better data means faster leak detection, lower emissions and safer networks. We're also developing our own next-generation environmental sensing technology.
We're growing, and this is a paid internship with a real path to a permanent role for the right person. You won't be making coffee or watching from the sidelines — you'll do real work that ships, mentored directly by the founder (first-class Computer Science / AI background, ongoing PhD research in optimisation).
Where you'll startWhatever the role, everyone starts by getting fluent in our day-to-day operational flow. It's how you learn the data, the domain and the tools properly:
- QA — checking and validating data and outputs so everything we deliver is trustworthy
- Data analysis — turning raw survey and operational data into clear answers
- GIS data annotation — working with geospatial network data: labelling, tidying, reconciling
- Running automation pipelines — operating (and gradually improving) the automated processes that keep everything moving
Once you know how the engine runs, you specialise.
Where you'll grow (the data science side)- Building trustworthy metrics and KPIs from operational and survey data
- Statistical analysis, performance and productivity insight, anomaly spotting
- Turning analysis into clear, honest reporting and visualisations stakeholders actually use
- Growing toward the harder problems we work on: forecasting, route and resource optimisation, applied ML
- Python — pandas, NumPy, scikit-learn
- Jupyter notebooks
- Data visualisation — matplotlib, Plotly
- geopandas and geospatial analysis
- SQL
- Nice to have: exposure to optimisation (OR-Tools), basic ML, QGIS/ArcGIS
- Are studying, or have recently finished, a numerate degree (Data Science, Computer Science, Maths, Physics, or similar)
- Are comfortable in Python and genuinely enjoy getting your hands into real-world data
- Are curious and rigorous — you care whether a number is actually right
- Can explain what you found to someone who isn't a data scientist
You don't need to tick every box. Enthusiasm, honesty and a good head for problems matter more than a perfect CV.
To apply- Send a CV and a couple of lines on why this interests you — plus a link to anything you've built (GitHub, a project, a notebook) if you have it — to theo@epoetic