•1 min read•from Towards Data Science
What Happens Now That AI is the First Analyst On Your Team?
Our take
In a rapidly evolving landscape where AI serves as the first analyst on your team, adapting your career becomes essential. This transformation presents both challenges and opportunities. As automation accelerates and data-driven decision-making becomes paramount, understanding how to leverage AI's capabilities can significantly enhance your role. Embracing this change means exploring innovative strategies to integrate AI seamlessly into your workflow, ultimately empowering you to drive productivity and uncover insights that were previously out of reach.

How I am adapting in my career in the age of AI, automation, and when everything moving faster than expected.
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