Next.JS Software Engineer - Remote

Marylebone High Street
9 months ago
Applications closed

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Our client is on a mission to shape the future of AI. As they expand their development team, they are looking for a talented Full Stack Developer to help build outstanding features that customers love.

About the Role:

As a Full Stack Developer, you will be responsible for designing, developing, and maintaining applications using Next.js, Supabase, and TypeScript. You will collaborate closely with product owners, UX specialists, and other developers to deliver high-quality software solutions that meet the needs of users.

What You'll Do:

  • Design and implement scalable and high-performance web applications using Next.js and Supabase.

  • Develop clean, maintainable, and efficient code in TypeScript.

  • Collaborate with cross-functional teams to define, design, and deliver new features and enhancements.

  • Participate in code reviews to maintain high standards of quality and best practices.

  • Troubleshoot and resolve issues, ensuring optimal performance and user experience.

  • Stay updated with the latest industry trends and technologies to continuously improve development practices.

    Technical Requirements:

  • Strong experience with Next.js and TypeScript.

  • Proficiency in front-end technologies such as HTML, CSS, and JavaScript.

  • Experience with API design and development, including RESTful services.

  • Familiarity with databases and data modeling, particularly with Supabase is a plus.

  • Understanding of Agile methodologies and experience working in collaborative team environments.

    Work Environment:

  • 100% remote work (EU timezone ±4 hours)

  • True flexibility - work when you're most productive

  • Virtual office on Gather for team collaboration

  • Minimal meetings, maximum productivity

    What We Offer:

  • Equity opportunities to share in our success

  • Flexible working hours for work-life balance

  • Clear career progression paths

  • A diverse, inclusive environment that values autonomy



Annual learning allowance for professional development

ALL APPLICANTS MUST BE FREE TO WORK IN THE UK
Exposed Solutions is acting as an employment agency to this client.
Please note that no terminology in this advert is intended to discriminate on any grounds, and we confirm that we will gladly accept applications from any person for this role

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