This course introduces practical techniques for effectively using, evaluating, and responsibly applying generative AI in data science and statistics. Participants will gain a clear understanding of how generative AI models work and learn how to integrate AI tools into their own analytical workflows to enhance productivity, insight generation, and communication.

Generative AI for Data Science

Recommended experience
What you'll learn
Understand how generative AI models work.
Integrate generative AI tools within workflows.
Demonstrate responsible practice using Generative AI.
Skills you'll gain
Details to know

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16 assignments
February 2026
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There are 4 modules in this course
Our first module, Understanding, introduces generative AI and how large language models work. It explores their strengths and limitations, helping learners build a conceptual understanding for responsible use in learning and study.
What's included
8 videos13 readings4 assignments
Our second module, Development, focuses on using generative AI in projects and tasks. It covers building effective strategies, responsible application, and understanding when AI or human judgement is most appropriate.
What's included
6 videos8 readings4 assignments
Our third module, Reporting, examines how generative AI use should be declared and documented. It explores reporting practices, regulations, and ethical considerations across different work and research contexts.
What's included
4 videos7 readings4 assignments
Our final module, Safety, addresses organisational approaches to generative AI. It covers staff education, risk management, and establishing processes and documentation to support responsible and consistent use.
What's included
4 videos8 readings4 assignments
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