2019/2020 KAN-CCUSO1002U Big Data Commercial Strategies
English Title | |
Big Data Commercial Strategies |
Course information |
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Language | English |
Course ECTS | 7.5 ECTS |
Type | Mandatory |
Level | Full Degree Master |
Duration | One Quarter |
Start time of the course | First Quarter |
Timetable | Course schedule will be posted at calendar.cbs.dk |
Study board |
Study Board for MSc in Economics and Business
Administration
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Last updated on 29-08-2019 |
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Course content, structure and pedagogical approach | ||||||||||||||||||||||||
Big (and Small) Data has the potential to revolutionize the art of management and marketing. Yet, in spite of its high operational and strategic impacts, still less than a one-third of companies that invest in Big Data technology benefit financially from it. Studies show that companies that benefit have a clearly expressed customer strategy and use data centrally as a key strategic tool. These companies have a strategic approach to collecting, processing, sharing and proactively using data both internally (i.e., logistically) and externally (i.e., value creation) across contact points with stakeholders, including customers. The companies that typically fail are the ones that apply Big Data technology as a simple extension to their existing strategic orientation rather than rethinking their interaction with the marketplace and learn from new insights. Big Data makes it possible to improve logistics and create relevant and meaningful customer experiences leading to an increase in the bottom line. Yet, applying Big Data demands both technologically savviness and changes to managers’ existing mindsets. Otherwise we end up with the scenario of expensive old companies, i.e., ‘old’ businesses with new technology, which were unable to generate the necessary impact, because managers are stuck in old thought patterns and silo thinking. Thus, to fully benefit from this new technology, managers need to have flexible mindsets. To utilize data about the customers optimally and make them part of the company’s DNA requires radically new thinking. As such, disruptive innovations are as dependent on a disruptive mindset as it is on a disruptive technology. We look at how companies best deal with this challenge. Our aim is to follow the course schedule but at times we might change the flow slightly due to logistics of industry speakers, presentations, discussions, etc. We will cover the topics.
Aim of the Course Big Data (and Small) strategically both in terms of monitoring and improving internal procedures (logistic, production etc.) and understanding and satisfying consumer preferences, motivation and behavior based on actively monitoring their behavior and engaging with them via social media platforms. The course also prepares students to work conceptually with many types of data (e.g., structured/unstructured) and to assess the usefulness of such data to address a given managerial task (e.g., logistics, consumer value, unique positioning). It provides the basis for developing insights into how managerial mindsets both enable/disable managers from identifying potential disruptive opportunities from data. Finally, it sensitizes students to identify organizational and structural challenges that slow down the digital transformation/maturity and how to begin to overcome these. The course also prepares students how to use sensitive personal data gathered across multiple touchpoints with consumers. The course provides students with an understanding of the complexities of Big (Small) Data Technology and that it is strategy and not technology that primarily drives digital transformation. It prepares the student for an exciting career in digital and strategic marketing. The course does not require any technical expertise in terms of an IT or data analytics background.
Touch points? I would not explicitly state this in the course description. You could emphasize it, for instance during the first lecture. |
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Description of the teaching methods | ||||||||||||||||||||||||
The course includes online material, industry
speakers and lectures with in-class discussions and small
workshops. It is expected that students participate actively.
We do not rely on blended learning as the field evolves so rapidly that invites industry speakers from companies that develop and/or use Big Data ensure more up-to-date insights. We also try to include the latest articles in both academic and managerial (e..g. HBR, MITSloan) journal outlets. Under each Session you can see which of the learning objectives (i.e., 1, 2, 3…..12) that are covered. |
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Expected literature | ||||||||||||||||||||||||
Indicative literature (more literature will be announced upon enrollment):
Required Book Rydén, Ringberg, Østergaard-Jacobsen (2017) Disrupt your Mindset to Transform your Business with Big Data. Book includes an online mindset test. |