Product Engineer

TEC Partners - Technical Recruitment Specialists
London
1 year ago
Applications closed

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Are you passionate about leveraging AI to tackle climate change?


A fast-growing Climate Tech startup is on a mission to drive climate investment where it’s needed most—using cutting-edge AI and machine learning to guide investors, VCs, and governments toward impactful climate solutions.


With $7M in funding, backing from the US Department of Energy, and support from top VCs, they are expanding their team to accelerate their growth.


The Role


They are looking for aProduct Engineerto join their dynamic team. You’ll be working across the full stack, contributing to a rapidly growing platform that provides industry-leading insights into the climate economy.


Tech Stack:

  • Front-end:React, TypeScript, CSS
  • Back-end:Python, Django
  • Infrastructure:AWS
  • AI & Automation:OpenAI API (for data extraction), automated data collection


You’ll be building and iterating on a young codebase, deploying features across the entire stack, and helping scale their platform.


Who They’re Looking For


  • Strong software engineering skills (focus on problem-solving, not specific tools)
  • Experience working across the stack (React, Python, AWS preferred but not required)
  • Interest in AI-powered data extraction and automation (a plus but not essential)
  • Excellent communication skills—able to collaborate with engineers, product managers, and non-technical stakeholders
  • A hands-on, pragmatic approach to building scalable, high-quality software


Why Join?

  • Compensation:£90k - £120k base + significant equity
  • Flexible Work:1 day/week in-office, rest remote
  • Growth:Work at the forefront of climate tech, contributing to a high-impact AI-powered platform
  • Culture:A supportive, fast-moving team that values kindness, collaboration, and high-quality engineering



This start-up is committed to building an inclusive team and welcomes applicants from all backgrounds. If you're excited about working at the intersection of AI and climate tech, this could be your next big opportunity.


Interested? Apply now or reach out for more details!

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