General-purpose AI can be great for data work—but it becomes far more useful when you shape it into repeatable, task-specific “skills” that deliver consistent, high-quality output. By creating Claude Skills for common analytics workflows, you can speed up exploratory analysis, standardize feature engineering, and reduce the time spent rewriting the same prompts over and over.
In this code-along, Tom Farnschläder, Data Science Editor at DataCamp, shows you how to design and build Claude Skills tailored to data tasks. You’ll create skills for exploratory data analysis and feature engineering, then apply them to a real soccer dataset to generate insights and build analysis-ready features. This session is ideal for analysts and data scientists who want practical, reusable AI workflows that improve quality—not just speed.
