Machine learning projects rely heavily on data. While algorithms and computing power garner much attention, the foundational reality is that artificial intelligence requires vast amounts of meticulously labeled data to function effectively. This truth was particularly evident in the early 2010s when Manu Sharma, a young aerospace engineer at Embry Riddle Aeronautical University, was experimenting with neural networks.
"At that time, working with neural networks was still archaic," Sharma recalls. "This wasn't even too long ago, around 2009 and 2010, but one of the best ways to work with neural networks was to use MATLAB or Simulink software packages that are widely available at educational institutions."
What intrigued Sharma was the way these early AI systems learned. "I was very in
From Aerospace Dreams to AI Domination Behind the Rise of Labelbox
- By Anshika Mathews
- Published on
Our biases have always been toward building tools.
