Data Analytics Manager

City of London
6 days ago
Create job alert

Data Analytics Manager (AI-Focused)

Location: Hybrid (UK)

Salary: Competitive + Equity + Benefits

Join a dynamic and rapidly growing team on a mission to revolutioniz=se AI-driven analytics. They harness cutting-edge machine learning and data science to unlock insights that shape the future of Utulties, Telco, Insurance and Fintech. As they scale, we're looking for a Data Analytics Manager who is passionate about AI, data strategy, and leading high-impact teams.

The Role

We're seeking an exceptional Data Analytics Manager to lead our analytics team, driving AI-powered insights that fuel innovation. You'll collaborate with engineers, data scientists, and product teams to develop intelligent, data-driven solutions. This is an exciting opportunity to shape a forward-thinking analytics function in a high-growth environment.

What You'll Do

Lead & Scale - Build and mentor a high-performing data analytics team, fostering a culture of curiosity and innovation.
AI-Driven Insights - Leverage machine learning and AI to uncover deep insights, driving smarter decision-making.
Strategic Impact - Develop data-driven strategies to enhance customer experiences, optimize operations, and fuel growth.
Data-Driven Decision Making - Partner with stakeholders across the business to translate data into actionable insights.
Tech & Tools - Work with modern analytics tools, cloud platforms, and AI-driven methodologies to deliver scalable solutions.
Automation & Efficiency - Design automated reporting and dashboards to streamline data accessibility and impact.

What We're Looking For

Proven experience in data analytics, business intelligence, or AI-driven analytics, ideally in fintech or a high-growth environment.
Strong leadership skills, with a track record of managing and mentoring data teams.
Deep expertise in SQL, Python, or R, plus experience with cloud-based data platforms (AWS, GCP, or Azure).
Familiarity with AI/ML techniques and their practical applications in analytics.
Strong stakeholder management, able to bridge the gap between data, tech, and business strategy.
Passion for AI, automation, and staying ahead of emerging data trends.

Excited? We'd love to hear from you! Apply now and let's have a confidential conversation

Related Jobs

View all jobs

Data & Analytics Manager

Data Analyst

Data Analytics & Reporting Manager

HR Data Analytics - Asset Manager

Process Analytics & Automation Manager

Analytics Manager

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.

Tips for Staying Inspired: How Machine Learning Pros Fuel Creativity and Innovation

Machine learning (ML) continues to reshape industries—from personalised e-commerce recommendations and autonomous vehicles to advanced healthcare diagnostics and predictive maintenance in manufacturing. Yet behind every revolutionary model lies a challenging and sometimes repetitive process: data cleaning, hyperparameter tuning, infrastructure management, stakeholder communications, and constant performance monitoring. It’s no wonder many ML professionals can experience creative fatigue or get stuck in the daily grind. So, how do machine learning experts keep their spark alive and continually generate fresh ideas? Below, you’ll find ten actionable strategies that successful ML engineers, data scientists, and research scientists use to stay innovative and push boundaries. Whether you’re an experienced practitioner or just breaking into the field, these tips can help you fuel creativity and discover new angles for solving complex problems.

Top 10 Machine Learning Career Myths Debunked: Key Facts for Aspiring Professionals

Machine learning (ML) has become one of the hottest fields in technology—touching everything from recommendation engines and self-driving cars to language translation and healthcare diagnostics. The immense potential of ML, combined with attractive compensation packages and high-profile success stories, has spurred countless professionals and students to explore this career path. Yet, despite the boom in demand and innovation, machine learning is not exempt from myths and misconceptions. At MachineLearningJobs.co.uk, we’ve had front-row seats to the real-life career journeys and hiring needs in this field. We see, time and again, that outdated assumptions—like needing a PhD from a top university or that ML is purely about deep neural networks—can mislead new entrants and even deter seasoned professionals from making a successful transition. If you’re curious about a career in machine learning or looking to take your existing ML expertise to the next level, this article is for you. Below, we debunk 10 of the most persistent myths about machine learning careers and offer a clear-eyed view of the essential skills, opportunities, and realistic paths forward. By the end, you’ll be better equipped to make informed decisions about your future in this dynamic and rewarding domain.

Global vs. Local: Comparing the UK Machine Learning Job Market to International Landscapes

How to evaluate opportunities, salaries, and work culture in machine learning across the UK, the US, Europe, and Asia Machine learning (ML) has rapidly transcended the research labs of academia to become a foundational pillar of modern technology. From recommendation engines and autonomous vehicles to fraud detection and personalised healthcare, machine learning techniques are increasingly ubiquitous, transforming how organisations operate. This surge in applications has fuelled an extraordinary global demand for ML professionals—data scientists, ML engineers, research scientists, and more. In this article, we’ll examine how the UK machine learning job market compares to prominent international hubs, including the United States, Europe, and Asia. We’ll explore hiring trends, salary ranges, workplace cultures, and the nuances of remote and overseas roles. Whether you’re a fresh graduate aiming to break into the field, a software engineer with an ML specialisation, or a seasoned professional seeking your next challenge, understanding the global ML landscape is essential for making an informed career move. By the end of this overview, you’ll be equipped with insights into which regions offer the best blend of salaries, work-life balance, and cutting-edge projects—plus practical tips on how to succeed in a domain that’s constantly evolving. Let’s dive in.