Senior Full Stack Developer

Dartford
10 months ago
Applications closed

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Senior Full Stack Data Engineer (Client Facing)

Senior Full Stack Data Engineer (Client Facing)

Senior Full-Stack Software Developer
Location: Hybrid
Type: Full-Time, Permanent
Join a globally recognized leader in automation and machine learning solutions, and contribute to the evolution of their acclaimed platform.
Key Responsibilities:
· Design, develop, and maintain scalable, robust software solutions.
· Collaborate with business analysts, users, and key stakeholders to deliver high-quality results.
· Support the entire SDLC, including testing and deployment.
· Work closely with the Managed Services team to provide 2nd-line support.
Technical Requirements:
· Expertise in JavaScript, CSS, HTML, Java, C#, Python.
· Experience with frameworks like React, Angular, Vue.
· Proficiency in Node.js and algorithmic complexity
· Demonstrated involvement in 3+ complex projects in the last 5 years.
What We Offer:
· Competitive salary with bonus opportunities.
· Hybrid working model (office and remote).
· 22 days holiday, increasing with tenure.
· Pension, life insurance, and employee share schemes.
Take the next step in your software development career
Apply Now

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