Rethinking data science skills in the AI era: Practice still matters
AI is undoubtedly accelerating data scientists' work, but it is also quietly eroding how data science skills are built in the first place. As copilots, automated pipelines, and increasingly capable models take on more of the hands-on work, the role of the data scientist is shifting toward solution design and strategic problem-solving.
Although this may be a welcome evolution for those who have long earned their stripes in the field, it introduces a risk many organizations, as a whole, are underestimating—the loss of repetition and practice that makes this expertise stick.
By reducing first-hand experiences and the challenge of problem-solving, AI-driven automation risks weakening the foundational expertise required for true data science mastery and system-level thinking. According to research from Anthropic, developers who delegated tasks entirely to AI showed weaker learning outcomes even when productivity gains were modest.
For years, developing data science skills meant spending time close to the...
Copyright of this story solely belongs to techradar.com. To see the full text click HERE