Senior Software Engineer - Python/DDD

Coleman Street
1 week ago
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Location: London (3 days a week in the office)

About The Opportunity:

We are one of the world’s leading Specialty Insurers, renowned for our deep expertise, unparalleled track record, and solid balance sheet. We are committed to empowering our people and delivering innovative solutions to our clients. Our London Market Underwriting & Reinsurance Performance team, consisting of Actuaries, Reinsurance Specialists, and Engineers, is focused on transforming the underwriting business with cutting-edge technology.

As a Senior Software Engineer, you will play a pivotal role in researching, designing, testing, developing, and supporting software solutions that drive the future of Property & Casualty underwriting. This is an exciting opportunity to be part of a dynamic, cross-functional team working on full-stack solutions such as Underwriting Dashboards and Actuarial Model Management platforms.

Core Responsibilities:

Collaborate with software engineers, data engineers, and underwriters to shape the future of underwriting.
Improve workflows and maintain focus on the underwriting experience.
Deliver software in small, incremental releases.
Drive technical excellence and agility across the team.
Essential Skills & Experience:

Hands-on knowledge of Domain Driven Design (DDD).
Strong experience in Python (FastAPI desirable).
3+ years of experience in developing complex software solutions.
Solid understanding of object-oriented programming and test-driven development (TDD, BDD).
Familiarity with agile software engineering practices.
Experience with AWS or Azure cloud environments.
Passion for continual learning and experimentation.
Desirable Skills:

Frontend technologies such as HTML, CSS, React.
Experience with git, CI/CD, and DevOps practices.
Exposure to Actuarial/Commercial Insurance.
Interest in Terraform and deployment pipelines in cloud platforms.
Requirements:

Must be available to work three days a week in the office

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