Maintaining the Human Element in Machine Learning Gigaom – Gigaom

Thought Leadership Webinars

Credit: jamesteohart

Join us for this free 1-hour webinar from GigaOm Research. The webinar features GigaOm analyst Andrew Brust and special guest Nicolas Omont from Dataiku, a leader across the entire AI lifecycle.

In this 1-hour webinar, you will discover:

Machine learning (ML) and ML operations platforms are becoming increasingly popular and sophisticated. Thats a good thing, as it transforms AI initiatives from science projects to rigorous engineering efforts. But with such platforms comes the temptation of automation, scripting the whole ML process, not just optimizing models, but monitoring their drift in accuracy and retraining them. While some automation is good, humans play a critical role.

Elements of fairness are contextual and involve tradeoffs. Changes in data may require retraining or restructuring a models features, depending on circumstances and current events. All of this requires human judgment, carefully integrated with automated management and algorithmic learning. Humans have to be part of the workflow, included in the feedback loop, and involved in the process.

Read more:
Maintaining the Human Element in Machine Learning Gigaom - Gigaom

Related Posts
This entry was posted in $1$s. Bookmark the permalink.