Lead Machine Learning Engineer

London
1 week ago
Create job alert

Lead ML Engineer
London - Hybrid
£80,000 - £95,000 + Bonus + Pension + Car Scheme + Technology Benefits + EAP Programme + Flexible working

This is an incredible opportunity for a Lead ML Engineer to join a fast paced and forward-thinking business always looking to innovate and lead from the front in the technology world.

The company are a leading organisation in the energy sector, dedicated to delivering innovative solutions and improving operational efficiency. As part of their Data Science team, you will be at the forefront of cutting-edge projects, helping to shape the future of data-driven decision-making and machine learning infrastructure.

In this role, you will lead machine learning projects from concept to production, develop platform tools, and collaborate with data scientists to build data pipelines. You'll mentor junior team members, work with IT teams to advance projects, and improve deployment processes. Additionally, you'll design and maintain cloud infrastructure, ensure high-quality code, and participate in code reviews.

The ideal candidate will have hands-on industry experience in software engineering, machine learning engineering, data science, DevOps, and cloud infrastructure. They will be highly proficient in Python, including libraries such as Pandas and scikit-learn, and possess strong SQL skills. A deep understanding of software engineering best practices and hands-on experience with tools like Azure, GitHub Actions, Terraform, Packer, Airflow, Docker, Kubernetes, and Linux/Windows VM administration is essential.

An incredible opportunity for a confident and commercial ML Engineer to lead from the front working with cutting edge technology and driving company growth.

The Role:

Lead machine learning projects from concept to production.
Develop platform tools and collaborate with data scientists to build data pipelines.
Mentor junior team members and support their technical growth.
Work closely with IT teams to advance project goals and improve deployment processes.
Design and maintain cloud infrastructure to support machine learning initiatives.
Ensure high-quality code and actively participate in code reviews to maintain code quality.
The Person:

Hands-on industry experience in software engineering, machine learning engineering, data science, DevOps, and cloud infrastructure.
Proficiency in Python, including libraries such as Pandas and scikit-learn, and strong SQL skills.
Deep understanding of software engineering best practices.
Experience with tools like Azure, GitHub Actions, Terraform, Packer, Airflow, Docker, and Kubernetes.
Expertise in Linux/Windows VM administration.
Solid knowledge of modern security and networking principles

Related Jobs

View all jobs

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead Machine Learning Engineer - GenAI

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead 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.

10 Essential Books to Read to Nail Your Data Science Career in the UK

Data science continues to be one of the most exciting and rapidly evolving fields in tech. With industries across the UK—ranging from finance and healthcare to e-commerce and government—embracing data-driven decision-making, the demand for skilled data scientists has soared. Whether you're a recent graduate looking for your first role or a professional aiming to advance your career, staying updated through books is crucial. In this article, we explore ten essential books every data science job seeker in the UK should read. Each book provides valuable insights into core concepts, practical applications, and industry-standard tools, helping you build skills employers are actively looking for.

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.