Staff Data Scientist
New Today
đ Who We Are:
We're rebuilding the energy transaction system, making it transparent and fair.
tem exists to put power back in the hands of people. Todayâs wholesale energy market is stacked in favour of the few. It's a product of an age of oil and gas, riddled with markups and middlemen. Weâre changing that.
Our product, REDâ˘, built on a proprietary pricing engine that bypasses the wholesale market, enables businesses to buy the energy produced by renewable generators directly. That's 100% transparent transactions, ensuring affordable bills and fair compensation, to give every business ownership and control over where their energy comes from.
Since launching in 2021, weâve saved UK businesses and generators over ÂŁ20 million, powering a growing network of forwardâthinking companies, from Pizza Pilgrims to Silverstone. Backed by topâtier VCs such as Atomico and Albion, weâre creating a new category in energy - one thatâs local, decentralised, and built on trust.
đ
The Role:
Do you want to work on one of the hardest and most important problems in energy: how to allocate, price, and fulfil renewable electricity contracts efficiently at scale?
Energy markets today are opaque, inefficient, and expensive. At tem, weâre building the intelligence layer that reduces the cost of transacting electricity and unlocks access to renewables - by owning the core algorithms that sit at the heart of pricing, matching, and risk.
Weâre looking for a Staff Data Scientist to play a key handsâon role in developing Rosso, our proprietary pricing and allocation engine, and adjacent optimisation systems such as P442 matching and Red Score logic. This role is focused on firstâprinciples modelling, optimisation, and productionâgrade ML systems, with real commercial impact.
Youâll work on greenfield problems where there is limited precedent, helping bring core optimisation IP fully inâhouse and into production â reducing dependency on third parties and shaping how energy markets operate at scale.
đ Responsibilities
Own and build core optimisation systems: Design, implement, and operate ML and optimisation models that power pricing, matching, and allocation within Rosso and related systems, from research through to production.
Solve complex applied problems: Develop linear programming and optimisation solutions for batch and nearârealâtime use cases, balancing cost, risk, portfolio constraints, and commercial outcomes.
Ship productionâgrade models: Build and maintain endâtoâend ML and optimisation pipelines in the cloud (AWS preferred), ensuring robustness, explainability, and operational reliability.
Develop core IP inâhouse: Replace thirdâparty logic with highâquality internal implementations, iterating quickly as product and market understanding evolves.
Collaborate and influence: Work closely with product, engineering, and commercial teams to translate business needs into effective technical solutions, communicating clearly with nonâtechnical stakeholders.
Raise engineering standards: Contribute to best practices in modelling, experimentation, and code quality, and provide informal mentorship to junior engineers and data scientists.
đŻ Requirements
Mustâhaves
Strong optimisation background: experience with linear programming, operations research, or constrained optimisation in realâworld systems.
Handsâon ML / data science experience: proven ability to build and ship models that matter.
Production mindset: experience designing, deploying, and maintaining cloudâbased ML or optimisation systems.
Firstâprinciples thinking: comfortable working in ambiguous, greenfield problem spaces.
Strong Python skills and experience with the standard data science stack.
Commercial awareness: understands how technical decisions translate into business impact.
Niceâtoâhaves
PhD or equivalent experience in applied maths, operations research, or machine learning.
Experience with pricing systems, allocation problems, or risk modelling.
Familiarity with energy markets, trading, or infrastructureâheavy domains.
Experience with time series forecasting, Bayesian methods, or causal inference.
Exposure to MLOps practices and AWSâbased data platforms.
⨠Benefits & Perks:
Competitive salary - our current band for this role is ÂŁ105,000 or equivalent in local currency.
We review salaries twice a year using realâtime market data, with transparent, consistent pay for the same role and level.
Stock Options - everyone on the team has ownership in our mission.
25 days holiday + public holidays - Swap public holidays for ones that matter most to you. Plus, get an extra day off for your birthday đ.
Remote & flexible working - Weâre fully remote with clear core hours, and no internal meetings on Friday afternoons.
Home working & wellbeing budgets:
Up to ÂŁ1,200 / âŹ1,200 annually to upgrade your remote setup (coâworking passes, equipment, etc.).
Up to ÂŁ150 / âŹ150 monthly on anything that supports your wellbeing â from therapy to gym memberships to meditation apps.
đŁď¸ Interview Process:
Our processes normally take around 3â4 weeks from first call to offer â please let us know about any adjustments to timelines that may be required.
First call with our Talent Team (30 min). This is to understand your experience, motivations, and discuss the role in more detail.
Behaviour Interview with our Head of Data (45 min). This is your chance to really understand the role, the expectations, and ensure alignment on ways of working.
Technical Interviews with the Team (90 mins). Youâll meet members of the team, and one of our CoâFounders, to dig into your technical skills around modelling and machine learning engineering.
CultureâAdd Interview with Stakeholders (45 min). The final session will be with our CEO and CTO, and will explore how your values align with ours, and is designed to be a genuine twoâway conversation, your chance to understand what itâs really like to work at tem.
We welcome applications from people of all backgrounds, experiences, and identities, including those that are traditionally underrepresented in the tech and energy sectors. If youâre excited about this role but not sure you meet every requirement, weâd still love to hear from you. Your unique perspective could be exactly what weâre looking for.
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- Location:
- United Kingdom
- Job Type:
- FullTime