Home » Worried About AI? Use It to Your Advantage

Worried About AI? Use It to Your Advantage

Never miss a new edition of The Variable, our weekly newsletter featuring a top-notch selection of editors’ picks, deep dives, community news, and more.

The debate around AI’s impact on tech careers has been polarizing—to put it very, very mildly.

The utopians are pointing towards a future where data scientists and programmers can focus on management, strategy, and deep thinking, instead of on boring, repetitive tasks. The pessimists, meanwhile, are dreading a future in which there are no more data scientists and programmers.

This week, we invite you to explore the space between these positions and the opportunities that arise amid uncertainty. The articles we’ve selected suggest that we can harness AI’s power to become better and more effective at our jobs—while foregrounding the qualities that make humans irreplaceable. 


Become a Better Data Scientist with These Prompt Engineering Tips and Tricks

“I see prompt engineering as a superpower,” says Sara Nobrega—one that enables smarter work and substantial time savings for junior and seasoned data professionals alike. In the first part of her new series, Sara unpacks the benefits of prompt engineering during the EDA (exploratory data analysis) process.

Rethinking Data Science Interviews in the Age of AI

Yu Dong makes a compelling case for an AI-informed hiring process, and explains how candidates can use new tools to showcase their skills.

Your Personal Analytics Toolbox

With the aid of the open-source MCP (model context protocol), Mariya Mansurova believes data scientists stand to make their work more streamlined—and more interesting.


This Week’s Must-Read Stories

Catch up on the articles our community has been buzzing about in recent days:


Other Recommended Reads

Explore a few more standout articles we published recently — they cover timely topics like bias in LLMs, scalable AI, and freelancing as a data scientist: 


Meet Our New Authors

Discover top-notch work from some of our recently added contributors:

  • Dave Flynn‘s first TDS article focuses on change-aware data validation.
  • Jens Winkelmann joins our author community with a multidisciplinary background in physics, data science, and AI.
  • Ashton Gribble dedicates his debut story to the algorithm powering song-identification app Shazam. 

We love publishing articles from new authors, so if you’ve recently written an interesting project walkthrough, tutorial, or theoretical reflection on any of our core topics, why not share it with us?

Subscribe to Our Newsletter

Related Posts

Leave a Reply

Your email address will not be published. Required fields are marked *