Full Stack Developer

RBU Sales UK Ltd t/a iRecruit UK
Watford
1 week ago
Applications closed

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

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

Full Stack DeveloperLocation: Either Astral House, Watford WD24 4WW or Albion House, Horsham RH12 2RWWorking Hours: 40 hrs per week (Mon - Fri) 9am Start TimePay Rate: £400 - £500 per dayVinci Construction is seeking an experienced Full Stack Engineer to support our AI and Data Science projects for an initial six-month contractResponsibilities: * Work closely with the Head of AI, AI product and project managers, and business/technology stakeholders, to gather requirements and translate those to development tasks. * Plan product versions and releases. * Assist in the development of suitable and applicable processes for release management activities * Design, develop, and maintain controlled, robust and scalable Python-based web applications using Azure technologies, ensuring high performance and responsiveness. * Collaborate with data scientists to design and create intuitive and user-friendly interfaces that enhance user experience and engagement – developing in a consistent and transparent manner, enhancing and retrofitting the development process for in flight projects. * Collaborate with data scientists to create intuitive and user-friendly interfaces that enhance user experience and engagement – developing in a consistent and transparent manner, enhancing and retrofitting emerging development processes for in-flight projects * Ensure that all development tasks are logged and documented in a systematic and agreed manner on platforms such as Azure DevOps board, Microsoft Loop, SharePoint, ITSM tooling etc. * Ensure ongoing reliable knowledge capture through suitable documentation to support ongoing service operations and collaboration * Lead and participate in daily standups and weekly development planning meetings.Experience: * No fewer than 2 years working in a full-stack development role, practicing professional software development standards * No fewer than 3 years of experience building APIs and web applications. * Some experience in front-end technologies (HTML, CSS, JavaScript, frameworks such as React, or Angular). * No fewer than 3 years of experience in back-end development with technologies like Node.js, .NET, Python, etc. * No fewer than 5 years of professional experience. * Proven experience as a Full Stack Developer or similar role, with a strong portfolio of web applications deployed on cloud, preferably Azure. * Experience with Scrum and Kanban software development process

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