Senior Data Scientist (Quant)

Understanding Recruitment
London
1 week ago
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⚡Quant/Algorithmic Data Scientist | London | Decarbonize the grid


I'm searching for a Data Scientist (Quant / Power Trader) to join a fast-growing Energy Tech startup that are building the critical infrastructure to accelerate our transition to net-zero and underpin a decarbonized energy system! They are backed by top VCs & Angel Investors (previously invested in Meta, BeReal, Slack, and more!)


The team are hiring data scientists with a strong quantitative & algorithmic background to optimize energy usage in a net-zero electricity grid. This predicts and balances energy needs in real time and shifts electricity consumption to times when it is greener and cheaper!


Location:London (Hybrid, 2–3 days in-office)

Seniority:Hiring from Junior - Seniors


Why join?

✅ Work in a tight-knit team of the brightest minds in tech

✅ $10M+ in funding - early-stage impact with financial stability. Closs to +ARR.

✅ Greenfield projects building scalable, real-time energy solutions


Your Role:

Use Python & ML to drive innovation in energy optimization

Build 0-1 solutions in a mission-driven team

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