Senior Software Engineer, ML Ops (Basé à London)

Jobleads
London
3 days ago
Create job alert

Please visit ourcareers siteto find out more about working at Ki.

Job Details: Senior Software Engineer, ML Ops

Vacancy Name:Senior Software Engineer, ML Ops

Employment Type:Permanent

Location:London

Role Details

Who are we?
Look at the latest headlines and you will see something Ki insures. Think space shuttles, world tours, wind farms, and even footballers’ legs. Ki’s mission is simple: Digitally disrupt and revolutionise a 335-year-old market. Working with Google and UCL, Ki has created a platform that uses algorithms, machine learning, and large language models to give insurance brokers quotes in seconds rather than days. Ki is proudly the biggest global algorithmic insurance carrier and the fastest growing syndicate in the Lloyd's of London market, and the first ever to make $100m in profit in 3 years. Ki’s teams have varied backgrounds and work together in an agile, cross-functional way to build the very best experience for its customers. Ki has big ambitions but needs more excellent minds to challenge the status-quo and help it reach new horizons.

What’s the role?
Our broker platform is the core technology to Ki's success – allowing us to evolve underwriting intelligently and unlock massive scale. We're a multi-disciplined team, bringing together expertise in software and data engineering, full stack development, platform operations, algorithm research, and data science. Our squads focus on delivering high-impact features – we favour a highly iterative, analytical approach. Initially, you would be working as part of the core technology group in the model ops squad. The Model Ops squad is focused on enabling Ki to build and deploy best-in-market algorithmic underwriting models and graphs of models at scale. Sample products you might be involved in building include developer tooling, microservice orchestration systems, ML model serving infrastructure, and feature serving and storage infrastructure.

Principal Accountabilities

  1. Build robust and scalable software for business critical, web-based applications.
  2. Design, build, test, document and maintain APIs and integrations.
  3. Ensure quality control using industry standard techniques such as automated testing, pairing, and code review.
  4. Document technical design and analysis work.
  5. Assess current system architecture and identify opportunities for growth and improvement.
  6. Build mock-ups or prototypes to explore and troubleshoot new initiatives.
  7. Explore new ideas and emerging technologies, develop prototypes quickly.
  8. Uphold and advance the wider engineering team’s principles and ways of working.
  9. Serve as a domain expert for one or more of Ki’s core technologies.
  10. Mentor and coach colleagues in both engineering and business domain subjects.

Required Skills and Experience

  1. Experience as a mid-senior level engineer working across a modern stack.
  2. Strong software engineering principles (SOLID, DRY, data modelling).
  3. Professional experience with a server-side language, ideally Python.
  4. Comfortable working with cloud infrastructure, infrastructure as code, familiar with standard logging and monitoring tools used to investigate issues.
  5. Experience with continuous integration, or ideally, continuous delivery.
  6. Strong familiarity with build tools and version control tools (e.g. Git/Github).
  7. Experience working in agile teams, following Scrum or Kanban, participating in regular ceremonies including stand-ups, planning, and retrospectives.
  8. Previous experience of software development in the financial markets, Fintech or Insurtech is preferable.
  9. Experience or interest in building developer tooling, platform engineering, and/or machine learning is desirable.

Our culture

Inclusion & Diversity is at the heart of our business at Ki. We recognise that diversity in age, race, gender, ethnicity, sexual orientation, physical ability, thought and social background bring richness to our working environment. No matter who you are, where you’re from, how you think, or who you love, we believe you should be you.

You’ll get a highly competitive remuneration and benefits package. This is kept under constant review to make sure it stays relevant. We understand the power of saying thank you and take time to acknowledge and reward extraordinary effort by teams or individuals.

#J-18808-Ljbffr

Related Jobs

View all jobs

AI/ ML Solution Engineer

Data Engineer, Belfast

Senior Software Engineer - MLOps

Snr ML Engineer - Machine Learning, LLMs, MLOps, RAG, Prompt Engineering, UK Remote (Basé à London)

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Navigating Data Science Career Fairs Like a Pro: Preparing Your Pitch, Questions to Ask, and Follow-Up Strategies to Stand Out

Data science has taken centre stage in the modern workplace. Organisations rely on data-driven insights to shape everything from product innovation and customer experience to operational efficiency and strategic planning. As a result, there is a growing need for skilled data scientists who can analyse large volumes of data, build predictive models, communicate findings effectively, and collaborate cross-functionally. If you are looking to accelerate your data science career—or even land your first role—attending data science career fairs can be a game-changer. Unlike traditional online applications, face-to-face interactions let you showcase your personality, passion, and communication skills in addition to your technical expertise. However, to stand out in a busy environment, you need a clear strategy: from polishing your personal pitch and asking thoughtful questions to following up with a memorable message. In this article, we’ll guide you through every step of making a strong impression at data science career fairs in the UK and beyond.

Common Pitfalls Data Science Job Seekers Face and How to Avoid Them

Data science has become a linchpin for decision-making and innovation across countless industries, from finance and healthcare to tech and retail. The demand for data scientists in the UK continues to climb, with businesses seeking professionals who can interpret complex datasets, build predictive models, and communicate actionable insights. Despite this high demand, the job market can be extremely competitive—and many applicants unknowingly fall into avoidable traps. Whether you’re an aspiring data scientist fresh out of university, a professional transitioning from a quantitative role, or a seasoned analyst looking to expand your skill set, it’s crucial to navigate your job search effectively. In this article, we explore the most common pitfalls data science job seekers face and provide pragmatic advice to help you stand out. By refining your CV, portfolio, interview strategies, and communication skills, you can significantly increase your chances of landing a rewarding data science role. If you’re looking for your next data science job in the UK, don’t forget to explore the listings at Data Science Jobs. Read on to discover how to avoid critical mistakes and position yourself for success.

Career Paths in Data Science: From Entry-Level Analysis to Leadership and Beyond

Data is the lifeblood of modern business, and Data Scientists are the experts who turn raw information into strategic insights. From building recommendation engines to predicting market trends, the impact of data science extends across virtually every industry—finance, healthcare, retail, manufacturing, and beyond. In the UK, data-driven decision-making is critical to remaining competitive in a global market, making data science one of the most sought-after career paths. But how does one launch a career in data science, and how can professionals progress from entry-level analysts to senior leadership roles? In this comprehensive guide, we’ll explore the typical career trajectory, from junior data scientist to chief data officer, discussing the key skills, qualifications, and strategic moves you need to succeed. Whether you’re a recent graduate, transitioning from another technical field, or an experienced data scientist aiming for management, you’ll find actionable insights on forging a successful career in the UK data science sector.