When Humans Need to Answer Tough Questions About?Data
Photo by Bozhin Karaivanov on Unsplash

When Humans Need to Answer Tough Questions About?Data

Data science and machine learning professionals now how to seek answers in data: that’s probably the central pillar of their work. Things get murkier when we look at some of the thornier issues surrounding our data, from its built-in biases to the ways it can be leveraged for questionable ends.

As we enter the final stretch of the year, we invite our readers to explore some of these big-picture issues that have sparked crucial discussions in recent years, and are all but guaranteed to continue to shape the field in 2024 and beyond.

Our highlights this week dig into a broad range of topics, from the nature of data-backed knowledge itself to its application in specific fields like healthcare; we hope they inspire further reflection and draw new participants into these essential conversations.

  • What Role Should AI Play in Healthcare? The biases we’ve covered thus far can wreak havoc on models, businesses, and bottom lines. As Stephanie Kirmer stresses, though, they become even more acute in fields like healthcare, where life-and-death situations are common and “the risks of failure are so catastrophic.”
  • A Requiem for the Transformer? In a rapidly changing field, it’s tempting to think of a 6-year-old concept as essential and timeless. Transformers have been around since 2017 and have played an important role in the mainstream adoption of AI tools; as Salvatore Raieli points out, though, they too likely have a shelf life, and it’s perhaps a good time to ask what comes next.


Big questions are great, but mid-sized and compact ones are useful, too! Don’t miss some of our recent standouts on career changes, data engineering, and other timely topics:


Thank you for supporting the work of our authors! If you enjoy the articles you read on TDS, consider becoming a Friend of Medium Member: it’s a brand-new membership level that offers your favorite authors bigger rewards for their top-notch writing.

Until the next Variable,

TDS Editors

要查看或添加评论,请登录

Towards Data Science的更多文章

社区洞察

其他会员也浏览了