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Sensor Machine Learning

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Manage episode 480824643 series 3620285
Content provided by David Such. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by David Such or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

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This podcast explores the rise of Sensor Machine Learning (Sensor ML) as a powerful evolution in embedded system design. Traditional sensor fusion methods like Kalman filters often fall short when faced with non-linear, noisy, or dynamic data. Sensor ML offers a modern alternative by applying machine learning algorithms directly to sensor streams, enabling more accurate pattern recognition, decision-making, and context awareness.

Through real-world examples in autonomous vehicles, wearable tech, predictive maintenance, environmental sensing, and gesture control, the post demonstrates how Sensor ML enhances performance across a wide range of applications. It also addresses the key challenge of deploying these models on constrained devices—an area known as TinyML—emphasizing the importance of model optimization, efficient hardware, and software co-design to deliver intelligent capabilities at the edge.

If you are interested in learning more then please subscribe to the podcast or head over to https://medium.com/@reefwing, where there is lots more content on AI, IoT, robotics, drones, and development. To support us in bringing you this material, you can buy me a coffee or just provide feedback. We love feedback!

  continue reading

27 episodes

Artwork
iconShare
 
Manage episode 480824643 series 3620285
Content provided by David Such. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by David Such or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

Send us a text

This podcast explores the rise of Sensor Machine Learning (Sensor ML) as a powerful evolution in embedded system design. Traditional sensor fusion methods like Kalman filters often fall short when faced with non-linear, noisy, or dynamic data. Sensor ML offers a modern alternative by applying machine learning algorithms directly to sensor streams, enabling more accurate pattern recognition, decision-making, and context awareness.

Through real-world examples in autonomous vehicles, wearable tech, predictive maintenance, environmental sensing, and gesture control, the post demonstrates how Sensor ML enhances performance across a wide range of applications. It also addresses the key challenge of deploying these models on constrained devices—an area known as TinyML—emphasizing the importance of model optimization, efficient hardware, and software co-design to deliver intelligent capabilities at the edge.

If you are interested in learning more then please subscribe to the podcast or head over to https://medium.com/@reefwing, where there is lots more content on AI, IoT, robotics, drones, and development. To support us in bringing you this material, you can buy me a coffee or just provide feedback. We love feedback!

  continue reading

27 episodes

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