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From R&D to Production – Optimising a Deep Learning Model for Deployment in an Embedded System Exemplified

Event: InCabin USA
| Session date: Wednesday 22nd May
Session date: Wednesday 22nd May
, 2024

Hear from:

Peter Kristiansen
Peter Kristiansen
Peter Kristiansen
Head of Business Development,

Embedl

Peter Kristiansen
Peter Kristiansen
Peter Kristiansen
Head of Business Development,

Embedl

The presentation aims to show that modern deep learning models, developed by academic purposes can, in a simple way, be adapted to run efficiently on embedded accelerators. This will be exemplified with performance measurements for a DL model designed for a Nvidia desktop GPU (RTX 3090) running on a Texas Instruments C7x DSP (TDA4) for a real time application with a minimal loss of accuracy.

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