Many people assume that once you establish a manufacturing line, the hard work is done and things remain relatively static. The reality, especially in electronics manufacturing, is entirely different.


Constantly changing data streams and endlessly dynamic variables present some unique challenges for data scientists in the field. But there are lessons on data sharing, model adoption, and real-time impact that ML professionals in any field can learn from.


In this episode, Alon Malki, Senior Director of Data Science at NI (National Instruments), opens a window into the world of data science in electronics manufacturing. Plus, he shares why human-in-the-loop processes are essential to gaining buy-in for AI in the enterprise.


We discuss:


Data science in electronics manufacturing
Strategies for sharing data to improve manufacturing processes
Human-in-the-loop applications
Looking for challenge-motivated data science talent  

Tune in on Apple Podcasts, Spotify, our website, or wherever you listen to podcasts.


Can’t see the links above? Just visit domino.buzz/podcast for helpful links from each episode.