Crunchfish Neural Networks & Deep Learning

Crunchfish Neural Networks and Deep Learning were the topics of the 18[th ]Survival of the fittest webinar. The webinar covered Crunchfish’s Skeleton platform that emulates the behavior of the human brain to be used for Gesture Interaction by exploiting training data for Deep Learning using Neural Networks

Crunchfish continues to push the boundaries of technology, emulating the behaviour of the human brain through the company’s Skeleton platform. Crunchfish’s early adoption of Deep Learning and the usage of the special processing units for neural networks (NPU) position the company at the forefront of hand tracking technologies, opening up multiple market opportunities in the automotive and AR/VR space. This webinar on Crunchfish Neural Networks & Deep Learning was the 18th of the Survival of the fittest webinar series.

In this webinar, Niklas Silfverström, Co-Founder of North Link, explored the core concepts behind Neural Networks and Deep Learning used by Crunchfish Skeleton platform. A panel discussion followed with Niklas Silfverström, Crunchfish Gesture Interaction CEO Joakim Nydemark and Crunchfish group CEO Joachim Samuelsson. Johan Wester moderated the webinar.

Register for the webinars and see all previous webinars at crunchfish.com/webinars/.

For more information, please contact:

Joachim Samuelsson, CEO of Crunchfish AB

+46 708 46 47 88

joachim.samuelsson@crunchfish.com 

This information was provided by the contact person above for publication on 13 May 2022 at 12:00 CET.

Västra Hamnen Corporate Finance AB is the Certified Adviser. Email: ca@vhcorp.se. Telephone +46 40 200 250.

About Crunchfish – crunchfish.com

Crunchfish is a deep tech company developing a Digital Cash platform for Banks, Payment Services and CBDC implementations and Gesture Interaction technology for AR/VR, automotive and digital interfaces. Crunchfish is listed on Nasdaq First North Growth Market since 2016, with headquarters in Malmö, Sweden and with representation in India.

Download as PDF