This two‑year part-time programme, shaped across four dynamic semesters, empowers you to become a future‑ready marketing professional.
The curriculum
Throughout the curriculum, you’ll gain hands‑on experience with advanced data science tools and methodologies. You will also learn to translate complex analyses into strategic, well‑founded recommendations that meet the needs of diverse stakeholders and support informed decision‑making across the marketing landscape.
Year 1
Build a strong foundation in insights, data, AI, and marketing strategy. You’ll gain:
- A clear understanding of how consumers and companies behave
- Practical skills in machine learning and AI for marketing data
- The ability to turn insights into actions that really make an impact
A practical refresher on the foundations of marketing, data and AI.
Explore essential data science tools like R programming, visualisation, and machine learning applied to real-world marketing cases. You'll revisit core marketing concepts while learning how to turn data into actionable insights using modern, AI-driven approaches.
At the end of this course, you will be able to:
- Understand the data science process (Cross-Industry Standard Process for Data Mining)
- Analyse marketing problems from a practical perspective
- Apply basic data science methods to marketing problems
- Obtain marketing-relevant insights using data science methods
Build on your foundational knowledge of data science, introducing advanced machine learning techniques such as random forests, boosting, and neural networks to solve complex business problems. You'll also explore explainable AI, learning how to translate powerful but opaque models into clear, actionable insights.
Through hands-on cases in R, you’ll apply these methods to real-world challenges like price prediction, customer behaviour, and sales conversion, developing both technical and strategic decision-making skills.
At the end of this course, you will be able to:
- Select the most suitable techniques to solve real-world problems by evaluating learning algorithms and performing model selection
- Apply explainable AI methods to interpret the model results
- Create policy recommendations for organisations by transforming results produced by machine learning algorithms into insights
Explore how data science is transforming strategic marketing. You’ll learn how to extract actionable customer and market insights, apply advanced segmentation and targeting techniques, and make smarter decisions across the marketing mix—product, price, place, and promotion.
Using real-world cases from companies like Uber, Google, and Amazon, you'll see how modern tools and AI-driven strategies are reshaping marketing at every level from customer profiling to omnichannel delivery and dynamic pricing.
At the end of this course, you will be able to:
- Analyse customer and market data using advanced marketing analytics to derive actionable insights
- Employ segmentation, targeting, and positioning strategies using advanced marketing frameworks
- Develop innovative data-driven marketing mix strategies to address real-world business challenges
- Synthesize sustainable and ethical marketing strategies by integrating business objectives with societal and environmental considerations
Year 2
Take a deep dive into putting marketing strategy into action. You’ll learn how to make real decisions that drive results.
One course helps you think ahead by exploring how society, organisations, and future uncertainties shape strategy, so you’ll be ready to lead confidently, even in a fast-changing world.
Explore how firms reach and engage end users through modern marketing and distribution channels. You'll learn to design and manage omnichannel strategies that enhance customer experience across the journey from channel selection to personalisation.
Key topics include selecting the right channels, managing touchpoints, working with third-party distributors, and using data tools like recommendation systems and market basket analysis to improve channel performance. Real-world cases and hands-on analysis will prepare you to lead go-to-market strategies in today’s digital landscape.
At the end of this course, you will be able to:
- Understand the concepts, theory, and key issues for managing omnichannel customer experiences
- Solve business problems in omnichannel marketing and customer experience management
- Appraise the go-to-market systems of companies or organisations
- Demonstrate analytical and business communication skills, oral and written
This course focuses on causal thinking in data-driven marketing. While machine learning often identifies patterns, marketers need to understand why outcomes occur to make effective decisions.
You'll learn to distinguish correlation from causation, detect biases like endogeneity, and apply methods such as A/B testing, holdout samples, and statistical techniques to uncover true causal effects. The course emphasizes how assumptions about customer and firm behaviour impact data interpretation ensuring your marketing actions are based on sound evidence, not just predictions.
- Understand the differences between correlation, causation, and reverse causation
- Design a data collection process that ensures a causal analysis is feasible
- Appraise the assumptions needed to ensure proper causal inference
- Interpret estimates of causal effects, given a set of assumptions.
This course equips you to measure customer responses to marketing actions, your own and competitors', using historical performance and campaign data. You'll learn how to assess the effectiveness of marketing mix elements, including both hard metrics (sales, market share) and soft metrics (brand awareness, equity).
Key topics include attribution modelling for multi-channel campaigns, understanding dynamic effects like stockpiling, and using time series and machine learning methods to model customer and market responses over time. The insights gained help optimize marketing actions and budgets for maximum impact on goals like sales, profitability, and market share.
At the end of this course, you will be able to:
- Apply machine learning methods to measure responses to marketing actions
- Evaluate data-driven insights into competitor responses, market structure and market heterogeneity
- Evaluate different marketing mix decisions using data
In an era of rapid change, this course prepares you to lead with foresight, innovation, and responsibility. You'll learn how to apply strategic foresight to anticipate and shape future scenarios, develop innovative products and business models using emerging technologies like AI, AR, and VR, and navigate ethical, legal, and privacy challenges in data-driven marketing.
By combining future-oriented thinking with practical tools, you’ll be equipped to drive innovation and make informed, responsible decisions in the age of AI.
At the end of this course, you will be able to:
- Use a step-by-step methodology to achieve strategic foresight
- Understand how consumers respond to emerging technologies
- Develop innovative ideas based on the analysis of the future
- Evaluate the ethical, legal, and privacy challenges that arise from the use of data and in AI in marketing.
Methodology & Assessment
Our carefully designed blend of learning activities and resources provides a structure with ample flexibility such that you can plan for and engage with the learning materials at a time and place most convenient for you.
First and foremost, the programme is designed for active learning, so you gain experience, not just knowledge. By working on group and individual assignments, including case studies, data analyses, and essays, you will apply new concepts directly, turning theory into practical skills.
This hands-on approach deepens your understanding, strengthens your problem-solving abilities, and equips you to confidently tackle real-world challenges.
Study with more flexibility than a scheduled programme on campus. For example, working on online materials such as knowledge clips, guided readings, discussion forums, and online workbooks can be fitted around your other obligations.
Take part in weekly interactive online sessions with professors and the learning experience team, where students discuss key course topics, ask questions, and learn collaboratively, mirroring the on‑campus experience.
Assessment of individual and group learning is done through various formats: essays, online discussions, reports, quizzes, presentations, and peer assessments.
These different types of assessments provide everyone with the opportunity to successfully demonstrate their competencies in ways that fit their preferences.
During the Online MSc Marketing and Data Intelligence you do not have to write a thesis.
Instead, throughout the master programme, you work towards mastering a set out Intended Learning Outcomes (ILOs). As you progress, you build an ILO scoreboard that shows your achievements for each ILO at the programme level. To graduate, you must meet all the ILOs.
As ILOs represent the final learning goals, more weight is given to results from modules in the second year of the programme.
The digital ILO scoreboard
Provides learners with feedback during their studies, complementing the learner’s self-reflection assignments.
Enables learners to monitor their progress through both their grades for each of the modules and the reported degree of mastery of each ILO.
Helps to track whether learners are meeting all the ILOs throughout the programme, based on the course assessments.
Intended Learning Outcomes (ILOs)
ILO 1.1: Learners will master the academic and practical foundations of data and AI in marketing
ILO 1.2: Learners will understand the business relevance of evidence-based marketing solutions, based on concepts and theories from academic research
ILO 1.3: Learners will comprehend the current academic, societal and organizational debates relevant to the use of data and AI in marketing
ILO 2.1: Learners will be able to evaluate research findings from data analyses to draw reasoned conclusions and recommendations
ILO 2.2: Learners will be able to account for societal and organizational considerations in their research design
ILO 3.1: Learners will be able to use critical thinking and reflection to obtain creative yet rigorous insights for marketing in the age of data and AI
ILO 3.2: Learners will be able to contribute to the societal and organizational debates relevant to marketing in the age of data and AI
