At a Glance
- Tasks: Lead data science projects that drive real change and insights for millions of customers.
- Company: Join Sainsbury’s, a leader in retail innovation and data-driven solutions.
- Benefits: Enjoy discounts, flexible working, and a supportive environment for personal growth.
- Other info: Collaborate with a talented team and access extensive resources for learning and development.
- Why this job: Make an impact with cutting-edge data science while developing your skills in a dynamic team.
- Qualifications: Degree in a STEM field and experience in data science with Python and SQL.
The predicted salary is between 60000 - 80000 £ per year.
Data Science Manager - Hybrid Working - London/Home
What you'll do
- As a Data Science Manager and a lead of one of our central Data Science teams, you will play a pivotal role in developing in-house data science solutions that automate decision-making and provide valuable insights across our business.
- You will lead complex data science development projects, as well as help set the direction for large scale ML transformation programmes.
- You will line manage and support several data scientists to elevate a high performing team.
Why join us
- Wide impact: Deploying models here means improving the experience of millions of customers each day.
- Range of projects: Our projects vary from supply chain optimisation for one of the largest logistics networks in the country, predicting which substitution products online shoppers prefer, to helping our instore colleagues keep shelves full.
- Focus on data science work: Access to extensive, clean, and well-documented data in our industry-leading platform: spend your time building data science solutions, not cleaning datasets.
- Time for growth: 10% of time set aside for learning & personal development.
- Learning and mentoring: With a team of 50 data scientists, engineers and product managers, there are lots of opportunities to learn from colleagues through knowledge shares, pair programming, and communities of practice.
- Flexible working: Our team prioritizes hybrid working, both at home and in our central London Farringdon office.
- Save on groceries: 10% discount on products across Sainsburys (Up to 15% for two days each week!).
Key responsibilities of the role
- Technical leadership: Lead DS development projects as part of cross-functional deliveries with colleagues from our allied teams: Product, Analytics, Science, and Engineering. Own the design and delivery of large scale data science solutions. Drive wider ML transformation programmes to support large business areas to become more data-driven, through coordinating requirements gathering, resource allocation and managing dependencies. Prioritise work across complex delivery programmes and help team members prioritise the right things at the right time. Articulate value statements for Data Science work and produce meaningful measurement methodologies to measure business impact of your solutions.
- Line management, Coaching and Team Building: Line manage and develop our data science talent. Conduct code reviews and model our team’s technical standards. Identify opportunities for team upskilling. Take ownership of or lead one of our strategic initiatives: i.e. ML Ops, coding standards, training etc. Pair program with other data scientists.
Essential Criteria
- Educated to degree level, preferably within a mathematical, statistical or STEM discipline.
- A solid track record of individually contributing to value-driving data science projects in a commercial setting.
- Strong proficiency with Python, SQL, and the data science stack (pandas, NumPy, scikit-learn, etc.).
- Experience with writing production grade code using Python and SQL, as some of our systems involve real-time inference that affect millions of customer transactions.
- Experience deploying models in cloud environments (Azure, AWS, GCP).
- Solid presentation skills and business acumen, you can translate an unstructured business problem into a meaningful data science project.
- Strong statistical foundation in concepts such as regression, hypothesis testing and experimental design.
- Highly proficient in Git best practices.
Desirable experience
- Experience performing as technical lead for ML/AI projects.
- Experience building or maintaining machine learning pipelines and endpoints in Azure ML.
- Experience delivering value on ML projects in retail (in areas such as price elasticity or differential pricing) or supply chain (demand forecasting, optimisation etc.).
- Experience managing data science teams, especially as part of cross-functional programmes.
- A background in academic research in a highly numerate field.
- Deep technical knowledge in one or more data science areas: casual ML, GNNs, forecasting, optimisation, operations research, etc.
- Experience developing agentic based workflows or managing LLMs in production.
Qualifications
We are committed to being a truly inclusive retailer so you’ll be welcomed whoever you are and wherever you work. Around here, there’s always the chance to try something new — whether that’s as part of an evolving team or somewhere else across the business - and we take development seriously and promise to support you. We also recognise and celebrate colleagues when they go the extra mile and, where possible, offer flexible working.
When you join our team, we’ll also offer you an amazing range of benefits. Here are some of them:
- Starting off with colleague discount, you'll be able to save 10% on your shopping online and instore at Sainsbury's, Argos, TU and Habitat, and we regularly increase the discount to 15% at points during the year.
- We've also got you covered for your future with our pensions scheme and life cover.
- You'll also be able to share in our success as you may be eligible for a performance-related bonus of up to 20% of salary, depending on how we perform.
- Your wellbeing is important to us too. You'll receive an annual holiday allowance, and you can buy up to an additional week's holiday, and we provide private healthcare.
- We also offer other benefits that will help your money go further such as season ticket loans, interest free car loan of up to £10k, cycle to work scheme, health cash plans, salary advance (where you can access some of your pay before pay day) as well access to a great range of discounts from hundreds of other retailers.
- And if you ever need it there is also an Employee Assistance Programme.
- Moments that matter are as important to us as they are to you which is why we give up to 26 weeks’ pay for maternity or adoption leave and up to 4 weeks’ pay for paternity leave.
Please see www.sainsburys.jobs for a range of our benefits (note, length of service and eligibility criteria may apply).
Data Science Manager in London employer: Sainsbury's
At Sainsbury's, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration. As a Data Science Manager, you'll have the opportunity to lead impactful projects that enhance customer experiences while benefiting from a supportive environment that prioritises personal development and flexible working arrangements. With access to extensive resources and a commitment to employee wellbeing, including generous discounts and comprehensive benefits, Sainsbury's is the ideal place for those looking to grow their careers in data science.
StudySmarter Expert Advice🤫
We think this is how you could land Data Science Manager in London
✨Tip Number 1
Network like a pro! Reach out to current employees on LinkedIn or attend industry meetups. A friendly chat can open doors that a CV just can't.
✨Tip Number 2
Prepare for the interview by researching the company and its projects. Knowing their data science initiatives will help you stand out and show you're genuinely interested.
✨Tip Number 3
Showcase your skills in real-time! Be ready to discuss your past projects and how they relate to the role. Use examples that highlight your problem-solving abilities and technical expertise.
✨Tip Number 4
Don’t forget to follow up after your interview! A quick thank-you email can leave a lasting impression and keep you top of mind as they make their decision.
We think you need these skills to ace Data Science Manager in London
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter for the Data Science Manager role. Highlight your experience with Python, SQL, and any relevant projects that showcase your leadership in data science. We want to see how you can bring value to our team!
Showcase Your Impact:When detailing your past experiences, focus on the impact of your work. Use metrics and examples to illustrate how your data science solutions have driven business results. We love seeing how you've made a difference in previous roles!
Be Clear and Concise:Keep your application clear and to the point. Avoid jargon unless it's necessary, and make sure your key skills and experiences stand out. We appreciate straightforward communication, especially in a data-driven environment like ours.
Apply Through Our Website:Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows us you're keen on joining our awesome team at StudySmarter!
How to prepare for a job interview at Sainsbury's
✨Know Your Data Science Stuff
Make sure you brush up on your technical skills, especially in Python, SQL, and the data science stack. Be ready to discuss your experience with deploying models in cloud environments like Azure or AWS, as well as any specific projects you've led that demonstrate your ability to drive value through data science.
✨Showcase Your Leadership Skills
As a Data Science Manager, you'll be leading a team, so it's crucial to highlight your line management experience. Prepare examples of how you've coached and developed talent in previous roles, and be ready to discuss how you prioritise work and manage complex delivery programmes.
✨Articulate Business Impact
Be prepared to explain how your data science solutions have made a measurable impact on business outcomes. Think about specific metrics or success stories you can share that illustrate your ability to translate unstructured business problems into actionable data science projects.
✨Emphasise Collaboration
This role involves working closely with cross-functional teams, so be ready to discuss your experience collaborating with product managers, engineers, and analysts. Highlight any successful projects where teamwork was key to achieving results, and show that you understand the importance of communication in driving data-driven initiatives.