Data Scientist

Acceler8 Talent
London
3 weeks ago
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This range is provided by Acceler8 Talent. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Overview

Data Scientist | Energy Tech | London (Hybrid)

A fast-growing startup in the net-zero space is looking for a Data Scientist to help build the foundation of real-time energy optimization.

With $10M+ backing from top VCs (early investors in Meta, Slack, BeReal), they’re tackling one of the energy grid’s toughest challenges: balancing supply and demand to shift usage toward cleaner, cheaper power.

  • Small, high-caliber team of engineers
  • Greenfield projects with direct real-world impact
  • Strong early-stage momentum with solid financial backing

The role:

  • Apply Python + Data Science to complex energy problems
  • Build 0→1 systems for prediction and real-time optimization
  • Work in a mission-driven, learning-focused environment

London-based | Hybrid (2–3 days/week in office)

Interested? Apply now!

Responsibilities
  • Apply Python + Data Science to complex energy problems
  • Build 0→1 systems for prediction and real-time optimization
  • Work in a mission-driven, learning-focused environment
Qualifications and Employment Details
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Information Technology, Science, and Research
  • Industries: Climate Data and Analytics, Technology, Information and Media, and Software Development

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