Technical Lead (Python / Angular)

Adecco
2 weeks ago
Applications closed

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Job Title: Technical Lead Full Stack (Python / Angular) Salary: £100,000 - £130,000 Location: Bristol, UK Contract Type: Permanent Working Pattern: Full TimeJoin Our Client's Dynamic Team!Are you an innovative Technical Lead with a passion for driving technological advancements in the financial sector? Our client, a leading provider of advanced analytics and underwriting services in the cyber reinsurance industry, is seeking a talented individual to join their Bristol-based team. This is a unique opportunity to make a real impact in revolutionising the assessment and management of cyber risk.What You'll Do:As the Technical Lead, you'll be at the forefront of developing and scaling the organisation's cutting-edge cyber reinsurance platform. Your key responsibilities will include:Design & Architecture: Lead the architectural design and development of the platform, integrating key features such as:Ingestion of reinsurance submissionsPolicy administrationCyber risk modelling (attritional & catastrophe)Portfolio optimisationComprehensive reporting (exposure management, threat intelligence, large risk tracking, etc.)Team Leadership: Manage and grow a full-stack engineering team, specialising in high-performance computing (HPC) and web application development.Collaboration: Work closely with data science and modelling teams to ensure seamless integration of analytical models.Strategic Scaling: Develop strategies to expand the platform across additional lines of business.Hands-On Contribution: Actively contribute to the codebase, solving technical challenges, and mentoring your team.What We're Looking For:Experience: A minimum of 10 years in software engineering with a focus on data-intensive applications, and at least 5 years in a leadership role. Experience in the insurance industry is a plus.Technical Expertise:Deep proficiency in Python and hands-on experience with front-end web applications, preferably Angular.Strong understanding of HPC, large-scale data engineering, and full-stack web development.Familiarity with cloud infrastructure (GCP, AWS, Azure), DevOps practices, and data lakehouses (e.g., Databricks).Leadership Skills: Proven ability to build and lead high-performing engineering teams, while fostering collaboration between engineering and data science.Hands-On Aptitude: A willingness to contribute directly to coding and problem-solving.Key Attributes:Strategic Thinker: Align engineering initiatives with business objectives.Excellent Communicator: Ability to convey technical concepts clearly to diverse stakeholders.Innovative Mindset: Stay updated with emerging technologies and industry trends.Problem Solver: Tackle complex challenges with analytical thinking.Team Player: Foster a collaborative and inclusive environment.Why Join Us?This is more than just a job-it's an opportunity to be part of a passionate team dedicated to driving innovation in the cyber reinsurance sector. If you are ready to take on this exciting challenge and make a difference, we would love to hear from you!Apply Now!Take the next step in your career and join our client in transforming the cyber risk landscape. Submit your application today

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