Shopping Cart Basket Contact solsta Contact

Your basket is empty.

AI Solutions

Machine Learning Embedded Processing

Silicon Labs

Bluetooth Channel Sounding Demo 

Shipping/Box Drop/Logistics AI/ML demo 

Magic Wand AI/ML – using Bluetooth


Bluetooth Channel Sounding Demo 

Channel Sounding, previously referred to as High Accuracy Distance Measurement (HADM), uses Phase-Based Ranging (PBR), Round Trip Time (RTT), or both to accurately measure the distance between two Bluetooth Low Energy connected devices.

  •  It enables connection-oriented 2-way ranging.
  •  Supports up to four antenna paths between devices – minimizes multipath effects and enhances accuracy.
  •  Offers enhanced built-in security features to mitigate the risks of man-in-the-middle or relay attacks.

AI Parcel Tracking xG24 Demo

This tracking solution is a collaboration between Silicon Labs and NeutonAI. Designed to identify seven unique events during the package delivery process, this revolutionary solution combines #siliconlabs ‘ EFR32MG24 Wireless SoC with Neuton.AI ‘s compact neural networks. With a footprint of under 3 kilobytes and an inference time of less than 1 millisecond, this integration provides a comprehensive business solution.

The 7 states of parcel delivery: 

  • Parcel IDLE (no movements) / IDLE in wrong orientation 
  • Parcel Shaking 
  • Parcel Shocked (Damaged) 
  • Parcel Free Fall (Works if the parcel was dropped from a height of about 1 meter) 
  • Parcel Transported by Courier / Transported by Courier in wrong orientation 
  • Parcel Transported by Car / Transported by Car in wrong orientation 
  • Unknown state

Magic Wand AI/ML – using Bluetooth

This Magic Wand detects gestures drawn in the air, using AI/ML, to control a light over Bluetooth.

Wireless Factory Automation

Microchip

This demonstration shows off  Microchip’s range of different wireless MCUs and their on the edge AI and ML capabilities.

Why ML? ML is a set of algorithmic methods that discovers patterns from seemingly unrelated data, providing you with important information to facilitate decision making.

Why on Edge? ML on edge makes the system power efficient, fast and secure. User privacy is at the forefront because personal data never leaves your device. ML on edge also saves cloud resources and compute power in storing and maintaining data pipelines.

Why Microchip? We offer 8-, 16- and 32-bit microcontrollers (MCUs), microprocessors (MPUs) and Field-Programmable Gate Arrays (FPGAs). With a simple ML design process that can bring an ML engine to each of these systems quickly and efficiently, we offer solutions for a wide spectrum of users such as embedded systems engineers and data scientists. Our AutoML-powered design process automates the steps to build the ML model and will go through multiple iterations until a satisfactory model is identified.


Contact Us for More Information

« Back to EDS 2024