Front End Developer (Mid-Senior) - SaaS/Fintech

Shift F5 Limited
Farringdon
1 year ago
Applications closed

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We're currently recruiting a Front End Developer for a FinTech company revolutionising payments within the clinical trial space. They develop innovative financial solutions that streamline transactions and empower all stakeholders involved in clinical research. They're a passionate team working at the forefront of finance and healthcare technology, and are looking for talented Front End Developer to join them on their mission. The Role: As a Front End Developer, you'll play a vital role in building and maintaining their secure and scalable fintech platform used by clinical trial sites. You'll collaborate with engineers, product managers, and data scientists to design, develop, test, and deploy robust front-end solutions. Responsibilities: Develop, test, and deploy high-quality, maintainable, and efficient code using Next.js, React.js, and relevant front-end frameworks. Design and implement responsive, user-friendly interfaces that integrate seamlessly with back-end APIs. Collaborate with the UX/UI team to translate designs and wireframes into high-quality code. Ensure adherence to industry best practices for front-end development, including performance optimisation and accessibility standards. Write clean, well-documented code that adheres to best practices.Skills & Qualifications: Bachelor's degree in Computer Science, Software Engineering, or a related field (or equivalent experience). Minimum 2 years of experience as a Front End Developer or similar role. Proven experience developing and deploying web applications using Next.js, React.js, and relevant front-end technologies. Strong understanding of front-end development methodologies and best practices. Experience with API integration and working with back-end teams. Excellent problem-solving and analytical skills. Strong communication and collaboration skills. A passion for building secure, scalable, and responsive user interfaces.What's on Offer: Salary dependent on level of experience, but generally happy to match market value; Mid-level £55 - 65k, Senior - £65 - 80k, etc. Fully remote working. Potential for equity. The opportunity to work on cutting-edge technology that positively impacts the clinical trial landscape. A collaborative and supportive work environment with a focus on professional growth. For more information about Shift F5 and the opportunities we have to offer follow us on Twitter F5_Jobs Shift F5 Ltd is acting as an Employment Agency in relation to this vacancy

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