Fullstack Developer

Manchester
8 months ago
Applications closed

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Data Engineer – GCP/DSS

Job Title: Full-Stack Developer
Location: Remote (UK - flexible remote/office options)
Salary and Benefits: Competitive salary + Performance Bonuses + Pension + Health Benefits + Professional Development Support

We are hiring for a Full-Stack Developer for an AI-driven lead generation business operating within a UK-regulated environment.

Our client is a rapidly growing company that specialises in delivering high-intent, high-quality leads while maintaining strict compliance with Financial Conduct Authority (FCA) and General Data Protection Regulation (GDPR) standards. Leveraging advanced APIs, their platform focuses on enhancing eligibility criteria and creating frictionless customer journeys to maximise conversion rates and lead quality.

The Full-Stack Developer will play a key role in designing, developing, and optimising their digital lead generation platforms. The successful candidate will be passionate about automation, API integrations, and building conversion-focused user experiences, with a strong awareness of data privacy, security, and compliance.

Responsibilities:

Develop and maintain full-stack web applications focused on lead generation workflows.
Optimise and scale platform performance to manage growing lead volumes.
Integrate and manage secure, encrypted API communications.
Build responsive, conversion-driven user interfaces using React.js, Next.js, Tailwind CSS, and more.
Ensure robust platform security and compliance with GDPR and FCA regulations.
Troubleshoot, debug, and upgrade systems for enhanced functionality and user experience.
Manage cloud deployments through AWS or Replit, including scaling and performance tuning.
Collaborate with marketing, compliance, and technical teams to enhance systems and processes.
Participate in code reviews, testing, and documentation to ensure high-quality deliverables.Skills and Experience Required:

Strong proficiency in JavaScript, React.js, Next.js, Node.js, and Express.js.
Expertise in building responsive interfaces with HTML5, CSS3, and Tailwind CSS.
Experience with Supabase or similar PostgreSQL database solutions.
In-depth knowledge of RESTful APIs, API security protocols, and encryption standards (e.g., AES-256).
Cloud hosting and deployment skills with AWS or Replit, and familiarity with Vercel.
Version control expertise using Git and GitHub.
3-5 years of full-stack development experience, ideally within a lead generation or regulated (fintech, insurance) environment.
Clear understanding of GDPR, FCA regulations, and secure data management.
Strong collaboration, problem-solving, and communication skills.Desirable Skills:

Experience with AI/ML integration for lead scoring or segmentation.
Knowledge of Google Cloud, Azure, Docker, Kubernetes, or encrypted data pipelines.
Familiarity with geolocation APIs like Ideal Postcodes.Benefits Include:

Competitive salary with performance-based bonuses.
Flexible hybrid working options.
Professional development support including training and certifications.
Health benefits package and workplace pension.
Opportunity to work with cutting-edge AI and API technologies in a collaborative, innovative environment.Click Apply Now if you are interested in this Full-Stack Developer opportunity

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