DNN based AI application "Everywhere and Anywhere"
Founder and CEO
AigenEdge Private Limited
DNN based AI-ML application future growth will be considerable even though the projected growth in this area has not yet taken place.
It is critical that we break through the three primary bottlenecks to promote wider DNN use in industries that are
• The DNN-based application requires a high level of skill
• The deployment cost is high.
• Unreliable/Untrustworthy DNN application giving too high a false alarm rate.
During my talk, I will go through some of the main problems and alternative ways of getting around them. DNN-based AI/ML applications will become more widespread as a result.
By putting forth a high-level perspective on it, I'll discuss TinyML, which is geared toward being a good value in price and power consumption.
Using the hardware with little processing power and limited memory, TinyML is designed to operate on a low-powered chipset that does not require much processing power and memory.Because the computing environment was created primarily for tiny inference workloads, this is conceivable.
It has the potential to fundamentally change the Internet of Things in the future.