About this job
Work alongside like-minded Data Scientists and Analysts to apply best practice statistical and analytical techniques to business issues
Key accountabilities and measures
• Use expert knowledge of data science techniques and statistics to regularly deliver complex projects with a robust commercial approach
• Build and maintain the algorithms required to drive value from Loyalty in M&S
• Regular drumbeat of delivery of data science projects – both large and small – that drives business benefit and gives M&S a competitive advantage
• Deliver high quality actionable data science by performing ad hoc analysis to predict, measure and interpret business trends. • Demonstrate a culture of analytical ‘curiosity’ through innovative, data driven insights on business questions
• Work alongside Lead Data Scientist to develop the data science agenda within the CIU
• Implement a highly visual and commercial approach when delivering data science projects that engages and challenges the thinking of non / less technical audiences. Clearly and concisely communicate data science insight that then gets buy in
• Similarly work alongside the rest of the CIU Analytics team to champion/implement self-service and data-driven decisioning for the CIU client base with a strong emphasis on automation to lift the team out of BAU
• Act as consultant to CIU analysts and other M&S functions, such as Marketing, Merchandising or Logistics to identify opportunities and appropriate solutions to problems
• Work as part of a team to scan and maintain a presence within the market for opportunities in optimisation, analytical techniques, visualisation, tools and big data working with M&S Big data / IT Teams to prioritise and scope improvements
• Engage the CIU analytical community by pushing best practice, helping coach data scientists and upskilling business analysts
• PhD or MSc. in a numerate subject is preferred e.g. Machine Learning, Computer Science, Statistics
• Experience in developing and deploying machine learning algorithms using Python or R.
• Proficient with SQL and NoSQL data bases
• Prior experience of using Apache Spark to develop and deploy data science projects.
• Comprehensive proficiency in key programming languages (e.g. Python, Java, R, SPARK, SQL, etc) and software development skills.
• Expert in mining large & complex data sets - both structured and unstructured data and including (but not limited to) efficient extraction of data, transformation and application
• Considerable experience working as a data scientist.
Key relationships and stakeholders
• CIU and Loyalty wider team
• Internal clients from the business, especially various Leadership teams
Life at Marks & Spencer
About Marks & Spencer
Mobile Pay Go
Built on our iOS and Android platforms, allows customers to self-serve checkout using the cameras on their mobile device. This product is just one of many that align with the huge ‘digital first’ transformation M&S are currently embarking on. It was initially created as an MVP, to solve a specific customer pain-point of waiting in queues, then rolled out to a selection of stores. Due to its success, it’s now being rolled out to many more stores and technically scaled up. It not only aligns with our transformation but also with our aim provide customer-centric solutions and to utilise technology as a way of creating ever more frictionless shopping experiences for our customers.
The FESK team
FESK builds the starter kit and supporting frameworks for front-end teams to start from and build on top of. This includes a pattern library, inspired by the atomic design principles, which enables us to get wide reuse of UI components as well as visual consistency across our site. One of the values that is most important to FESK is performance and this is clearly demonstrated in M&S’ page load times being lowest in the industry. Another goal of the project is to be easy to get started and because of this the adoption is increasing rapidly across our front-end teams.
The Find Team is responsible for getting the customer to the product they are interested in buying. This involves 3 major parts of the marks and spencer.com website:
- Search indexing and Search APIs – working closely with Bloomreach, the team are responsible for indexing the catalogue of products sold by M&S, including many items of meta-data. This data is then surfaced as high-performing micro-service based APIs which power search, product listings and auto-suggest.
- Product Listing Page (PLP) – the PLP provides customers with a high level view of products available to buy based on a particular category (e.g. Mens Trousers). The team work on the next generation of this page which will utilise React to provide both Server Side and Client Side Rendering of the page. This allows us to provide best in class customer experience, together with SEO.
- Search Results Page (SRP) – the SRP allows customers to see products based on a search query they made. Using the Search APIs as a starting point, this page is being rebuilt to provide the great user experience and to allow future tailoring and personalisation of search results, getting customers to the products they want to buy quicker
The Find Team operate as a hybrid team covering both back-end and front-end technologies. This allows the team to be as efficient as possible, as it reduces the reliance on other teams – if a front-end engineers needs an API change, a back-end engineer is on-hand to make it. We also encourage front-end engineers to volunteer for back-end work and vice versa, allowing engineers to upskill if they so desire.
In line with M&S’s digital transformation, the Find Team operate as a DevOps team. This gives them the power to deploy into production, and the responsibility of ensuring their technology is performing optimally 24x7.
The Browse Tribe own possibly the most important part of a customer’s journey – where they decide to buy! This part of the journey is made on the Product Details Page (PDP), where a customer can see full details on a product. The tribe is made up of two squads
- C&H PDP Squad – this squad are rebuilding the main PDP on the site where customer shop products including clothing, home and beauty. The newly rebuilt page provides faster load times and an improved user experience. The page also introduces additional functionality including “Find in Store”, “Contact Me When Available” and Pre-ordering.
The Browse Tribe work closely with embedded Product Owners to ensure alignment with the product requirements. They also operate as a DevOps team, responsible for the deployment of their changes to production, as well as supporting it in production.
- up to 12% Contribution Pension
- 20% Discount card
- Sharvesave & Sharebuy Scheme
- Season Ticket Loan
- Company Bonus Scheme
- Smarter/Flexible Working - Talk to us!
- Learning & Development Courses
- Great Transport Links