FullStack software engineer - Python

Curated
1 month ago
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Software Engineer

Co-Founder / CTO Opportunity – AI Tech Recruitment Start-Up

Co-Founder / CTO Opportunity – AI Tech Recruitment Start-Up

Senior Software Engineer, Machine Learning

Full Stack Developer

Senior MLops (Full Stack) Engineer | London | Foundation Models

Full Stack Software Engineer- Python

Climate and Sustainability Tech Start-Up.

Remote | Must be UK based | Full-time

£50,000-65,000 + equity.


No ability to offer visa sponsorship.


Curated is proud to be partnering exclusively with aclimate and sustainability-focused startupto hire aFounding Full Stack Engineer.


Led by founders from some of Europe’s fastest-growing scale-ups, this team is tackling the challenge of building a moresustainable food systemthrough technology.


If you’re passionate about leveraging technology for environmental impact and have strongbackend development experience with Python(plus some frontend exposure), this could be the perfect opportunity to shape a mission-driven product from the ground up.


What You’ll Do

• Design, build, and maintain web applications and customer-facing APIs, delivering insights powered by advanced data analytics.

• Develop a robust, scalable deployment infrastructure using best practices in DevOps.

• Integrate and analyse complex environmental datasets to support real-world decision-making.

• Collaborate with scientists and data engineers to translate research into actionable insights.


What We’re Looking For

• 3+ years of industry experience in software development, ideally in a fast-moving, early-stage environment.

• Proficiency in Python, shell scripting, PostgreSQL, Redis

• Backend experience with Node.js, Python, Ruby on Rails, Go, or similar technologies.

• Frontend experience with React, Angular, or Vue.

• Familiarity with AI, Machine Learning, and Large Language Models (LLMs).

• Strong problem-solving skills and a passion for using technology to drive climate impact.


If you want to build technology that supports a more sustainable future, we’d love to hear from you.

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