Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Manager, Data Science and Machine Learning, Audit and Assurance

ACCA Careers
London
3 days ago
Create job alert
Overview

Manager, Data Science and Machine Learning, Audit and Assurance – ACCA Careers

Join to apply for the Manager, Data Science and Machine Learning, Audit and Assurance role at ACCA Careers.

Connect to your Industry: Our Audit and Assurance practice encompasses skills across regulation and finance with a deep analytics capability. We harness these to provide Assurance to those charged with governance, serving the public interest. Working in Assurance means you will have an opportunity to work alongside leading experts, as we help build and enhance trust between businesses and the public, by responding to emerging issues and protecting the public interest. Providing assurance to help businesses become more resilient, agile and better prepared for the future.

Responsibilities
  • Providing data analytics/data science services to deliver meaningful insights to our clients and help them to understand the risks and key drivers for their business through the use of software such as Python, R, Azure, Databricks/other ML services, SQL, Tableau and Power BI.
  • Development and delivery of new and innovative data science and machine learning tools and solutions to support evolving audit and assurance needs.
  • Helping the team to support our clients in all areas of large data handling, manipulation, analysis, and modelling.
  • Working effectively in diverse teams within an inclusive team culture where people are recognized for their contribution.
QualificationsEssential
  • Strong problem-solving skills, and capable of generating original solutions to real-world problems.
  • Experience of coaching junior data scientists/analysts.
  • Experience in reviewing code and documentation to a high standard.
  • Experience in using Python (pandas, numpy, scikit-learn).
  • End-to-end experience of managing multiple data science and analytics projects in different industries and with different types of data (text, numerical, categorical).
  • Experience in project management experience in a DevOps environment.
  • Experience in using cloud environment (e.g. Azure, AWS).
  • Experience using Git.
  • Solid understanding of mathematics, probability, and statistics.
  • Deep knowledge in a range of machine learning techniques (Supervised and unsupervised).
  • Understanding of Large Language Models, Generative AI frameworks, prompt engineering, fine tuning, resource augmentation.
  • Strong communication and data presentation skills with the ability to build convincing recommendations and sell these to a non-technical audience.
  • Self-driven, able to work independently yet acts as a team player
  • Able to apply data science principles through a business lens.
Desirable
  • Experience of using R.
  • Familiar with, preferably experienced in, Deep Learning (e.g. RNNs, CNNs) or NLP techniques (e.g. TF-IDF, word-embedding).
  • Experience developing Generative AI projects.
  • Experience of exercising software engineering best practices. E.g. test-driven development, smart data structure and algorithm selection.
  • Experience in using cloud environment (e.g. Azure, AWS).
  • Experience using Azure Databricks, Azure MLflow, Azure ML services and/or other ML services.
  • Experience using Excel, SQL, PowerBI, Tableau.
  • Experience using Docker and Kubernetes.
  • Experience working in an Agile development team.
  • Experience delivering data science for financial industry or large/complex organisations.
Connect to your business - Audit & Assurance

We know it's not just about the numbers. Often, we let the technology take care of those. It's about the creative and collective thinking of our people. We're redefining the future of audit. Come join us.

Assurance: Businesses need to be resilient and transparent in their reporting to build trust and confidence. Assurance practitioners play a key role in achieving this through independent review and challenge of management's views on a range of regulatory and reporting requirements, whether financial, operational or compliance in nature.

Other highlights

Hybrid working: You’ll be based in London with hybrid working. Our hybrid model enables collaboration in both virtual and physical spaces. Depending on role, you may work in your local office, virtual collaboration spaces, client sites, and remotely. The firm supports flexible working and wellbeing. Please check with your recruiter for specifics.

Return to work: For this role we can offer coaching and support designed for returners to refresh knowledge and skills after a career break of two years or more.

Our commitment to you: We foster a culture where everyone belongs, feels supported and heard, with a focus on wellbeing and continuous learning. You will be supported to grow technically and personally, and to lead when ready.

Sign in to set job alerts and discover more opportunities.

Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Engineering and Information Technology
  • Industries: Accounting


#J-18808-Ljbffr

Related Jobs

View all jobs

Manager, Data Science and Machine Learning, Audit and Assurance

Data Science Manager (Market Research)

Global Head of Data Science

Graduate Data Science Consultant

Senior Manager, AI Architect and Data Scientist, Central Business Services

Senior Manager, AI Architect and Data Scientist, Central Business Services

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

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

Industry Insights

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

The Best Free Tools & Platforms to Practise Data Science Skills in 2025/26

Data science continues to be one of the most exciting, high-growth career paths in the UK and worldwide. From predicting customer behaviour to detecting fraud and driving healthcare innovations, data scientists are at the forefront of digital transformation. But breaking into the field isn’t just about having a degree. Employers are looking for candidates who can demonstrate practical data science skills — analysing datasets, building machine learning models, and presenting insights that solve real business problems. The best part? You don’t need to spend thousands on premium courses or expensive software. There are dozens of high-quality, free tools and platforms that allow you to practise data science in 2025. This guide explores the best ones to help you learn, experiment, and build portfolio-ready projects.

Top 10 Skills in Data Science According to LinkedIn & Indeed Job Postings

Data science isn’t just a buzzword — it’s the engine powering innovation in sectors across the UK, from finance and healthcare to retail and public policy. As organisations strive to turn data into insight and action, the need for well-rounded data scientists is surging. But what precise skills are employers demanding right now? Drawing on trends seen in LinkedIn and Indeed job ads, this article reveals the Top 10 data science skills sought by UK employers in 2025. You’ll get guidance on showcasing these in your CV, acing interviews, and building proof of your capabilities.

The Future of Data Science Jobs: Careers That Don’t Exist Yet

Data science has rapidly evolved into one of the most important disciplines of the 21st century. Once a niche field combining elements of statistics and computer science, it is now at the heart of decision-making across industries. Businesses, governments, and charities rely on data scientists to uncover insights, forecast trends, and build predictive models that shape strategy. In the UK, data science has become central to economic growth. From the NHS using data to improve patient outcomes to financial institutions modelling risk, the applications are endless. The UK’s thriving tech hubs in London, Cambridge, and Manchester are creating high demand for data talent, with salaries often outpacing other technology roles. Yet despite its current importance, data science is still in its infancy. Advances in artificial intelligence, quantum computing, automation, and ethics will transform what data scientists do. Many of the most vital data science jobs of the next two decades don’t exist yet. This article explores why new careers are emerging, the roles likely to appear, how current jobs will evolve, why the UK is well positioned, and how professionals can prepare now.