At a Glance
- Tasks: Dive deep into messy data, using Python to clean and map energy market information.
- Company: Join a remote-first team focused on innovative data solutions in the energy sector.
- Benefits: Competitive pay, paid vacation, and endless learning opportunities.
- Other info: Enjoy a flexible work environment with async collaboration and growth potential.
- Why this job: Make a real impact by transforming complex data into actionable insights.
- Qualifications: Strong Python and SQL skills, with experience in data cleaning and mapping.
The predicted salary is between 40000 - 50000 £ per year.
We need someone who understands data deeply and uses Python to wrangle it — not a platform engineer, not a pure pipeline builder, but a data specialist who's comfortable with research, investigation, and the unglamorous work of making messy energy market data actually usable.
You'll spend significant time on tasks like:
- Mapping BM units to power plants and fuel types, reconciling legacy data formats with current ones, ensuring consistency between different Elexon message types, and cleaning time-series data (outliers, gaps, overlaps).
- Some of this requires genuine investigation — cross-referencing sources, making judgment calls, documenting edge cases.
There's no API that solves these problems for you. Python is your primary tool (Pandas, Numpy, standard libraries) to minimise manual effort, but you should be comfortable that some detective work is unavoidable. If you find satisfaction in truly understanding a dataset's structure and quirks — rather than just piping data through and hoping for the best — this role is for you.
Data Mapping and Research- Map BM units from Elexon to their corresponding power plants, substations, and fuel types — combining API data, public registers, and manual research.
- Map substations to ETYS zones and grid supply points.
- Build and maintain reference/master datasets that link identifiers across disparate sources (Elexon, National Grid ESO, TEC register, etc.).
- Document mappings, assumptions, and known limitations clearly for downstream users.
- Reconcile legacy data formats with current formats (e.g., historical operational data stored in different schemas or granularities).
- Ensure consistency between different Elexon message types — understand the market data structure well enough to know why BOALF, BOD, and DISBSAD might not perfectly align and how to handle it.
- Investigate discrepancies between data sources and determine authoritative values.
- Clean time-series data: detect outliers (price spikes, meter errors), fill gaps appropriately, resolve overlapping or duplicate timestamps.
- Develop reusable Python-based cleaning routines that can be applied across datasets.
- Understand why data quality issues occur (settlement reruns, late submissions, format changes) not just patch them.
- Write and maintain Python data grabbers for energy market APIs.
- Build dbt models to transform raw data into clean, analysis-ready datasets.
- Orchestrate workflows via GitHub Actions.
- Design PostgreSQL schemas that reflect your understanding of the domain.
- Strong Python skills for data work — you're fluent with pandas, comfortable writing clean, testable code, and can build reusable data processing logic. This is not an Excel role.
- Solid SQL skills — complex queries, window functions, CTEs in PostgreSQL.
- Experience with messy, real-world data — you've done reconciliation, cleaning, or mapping work before and understand it's not always automatable.
- Methodical and detail-oriented — you notice inconsistencies and want to understand root causes.
- Good documentation habits — you know that undocumented mappings and assumptions are technical debt.
- Self-directed — you can own ambiguous problems, do your own research, and communicate findings clearly.
- Experience with energy, utilities, or market data (any geography).
- Familiarity with UK energy markets, Elexon data, or grid operations.
- dbt experience for transformation pipelines.
- Exposure to time-series data challenges (irregular timestamps, gaps, restatements).
We value candidates who can build software using agentic AI coding systems. This is fundamentally different from using code completion tools or chat-based assistants.
Not What We're Looking For- Platform/infrastructure engineers who prefer to stay above the data layer.
- People who expect clean, well-documented data as input.
- Those uncomfortable with research, ambiguity, or "manual" investigation work.
- Remote-first with async collaboration (Slack, GitHub, documented decisions).
- Core overlap with UK business hours expected (at least 4 hours daily).
- Competitive compensation based on location and experience.
Plenty of opportunities for learning and professional growth. B2B contract with a paid vacation.
Data Specialist employer: Alex Staff Agency
Contact Detail:
Alex Staff Agency Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Data Specialist
✨Tip Number 1
Get your networking game on! Connect with professionals in the energy and data sectors on LinkedIn. Join relevant groups, participate in discussions, and don’t hesitate to reach out for informational interviews. You never know who might have a lead on that perfect Data Specialist role!
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your Python projects, especially those involving data cleaning and mapping. Use GitHub to share your code and document your processes. This not only demonstrates your technical abilities but also your commitment to quality work.
✨Tip Number 3
Prepare for interviews by brushing up on your problem-solving skills. Be ready to discuss how you’ve tackled messy datasets in the past. Think about specific examples where you had to investigate discrepancies or clean time-series data — these stories will make you stand out!
✨Tip Number 4
Don’t forget to apply through our website! We love seeing candidates who are genuinely interested in joining StudySmarter. Tailor your application to highlight your experience with Python and data reconciliation, and let us know why you’re excited about this role!
We think you need these skills to ace Data Specialist
Some tips for your application 🫡
Show Off Your Python Skills: Make sure to highlight your Python expertise in your application. We want to see how you've used libraries like Pandas and Numpy to tackle messy data, so share specific examples of your work!
Be Detail-Oriented: Since this role involves a lot of data cleaning and reconciliation, we need to know that you pay attention to the nitty-gritty. Mention any experiences where you’ve had to investigate discrepancies or document your findings clearly.
Embrace the Detective Work: We love candidates who enjoy digging into data! In your application, talk about times when you’ve had to do some detective work to understand a dataset’s quirks or resolve issues. It shows us you’re up for the challenge!
Apply Through Our Website: Don’t forget to apply through our website! It’s the best way for us to keep track of your application and ensure it gets the attention it deserves. We can’t wait to hear from you!
How to prepare for a job interview at Alex Staff Agency
✨Know Your Data Inside Out
Before the interview, dive deep into the types of data you'll be working with. Familiarise yourself with energy market data, Elexon message types, and common data quality issues. Being able to discuss specific examples of how you've tackled messy data in the past will show your understanding and passion for the role.
✨Show Off Your Python Skills
Prepare to demonstrate your Python prowess, especially with libraries like Pandas and Numpy. Think about how you can explain your coding process and any reusable routines you've developed. If you have a project or code snippet that showcases your skills, bring it along to discuss!
✨Be Ready for Detective Work
This role requires a bit of sleuthing, so come prepared to talk about how you've approached investigations in previous roles. Share examples where you've had to cross-reference sources or make judgment calls on data discrepancies. Highlight your methodical approach and attention to detail.
✨Document Your Process
Good documentation habits are crucial for this position. Be ready to discuss how you document your findings, mappings, and assumptions. You might even want to share a sample of your documentation style to illustrate your commitment to clarity and reducing technical debt.