Juris Puce

CTO
Kleintech

The Challenges of Human Labour Automatization with Deep Learning in the Transport Industry

The key idea behind deep learning is to automate human labour, reduce the costs and reduce the time and increase precision in which a task can be done. In the transport industry things like cargo number recognition and counting of objects were first to be automated, and are now improved to a very high precision. However, there are many other tasks in the industry that can be automated, but computers are currently lacking the precision to guarantee the appliance with the industry security standards. This presentation will discuss how we have overcome some of the challenges and give an insight of the upcoming applications and their effects on industry.

Juris Pūce an adventurous entrepreneur, always looking for new challenges and business to build. Interested in all things technologically innovative and somewhat unknown, hence most of his companies are IT related. With over 15 years of experience in technology related business management, Juris Pūce currently divides his work between being a visionary for various start-ups as well as being the CTO of KleinTech, a company that specialises in complex machine vision and deep learning technology solutions for transport and security industries.

Buttontwitter Buttonlinkedin

As Featured In

Original
Original
Original
Original
Original
Original

Partners & Attendees

Intel.001
Nvidia.001
Graphcoreai.001
Ibm watson health 3.001
Facebook.001
Acc1.001
Rbc research.001
Twentybn.001
Forbes.001
Maluuba 2017.001
Mit tech review.001
Kd nuggets.001