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New version of the AI for Good chapter #32

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merged 2 commits into from
Oct 17, 2023

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marcozennaro
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Thanks for the contribution! 👍

@profvjreddi profvjreddi merged commit bd387b6 into harvard-edge:main Oct 17, 2023
@profvjreddi profvjreddi mentioned this pull request Oct 17, 2023
@happyappledog
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it's very hard to find on-device medical AI cases. I am amazed you found these examples!
I found another on-device example if you want to broaden the use cases (they are not necessary for low resource tho): Implantable cardioverter-defibrillator with on-device ML to detect ventricular arrhythmia

https://youtu.be/vx2gWzAr85A?t=2359

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happyappledog commented Nov 6, 2023

https://www.nature.com/articles/s42256-023-00659-9

Ventricular fibrillation and ventricular tachycardia are life-threatening ventricular arrhythmias (VAs) and the primary causes of sudden cardiac death, resulting in significant morbidity and mortality1. Individuals at high risk of sudden cardiac death rely on implantable cardioverter–defibrillators (ICDs) to provide timely and appropriate defibrillation treatment in case of life-threatening VAs1. However, existing industry practice is simple rule-based detection methods, which have not been updated over the past few decades2,

TDC’22 designated the NUCLEO-L432KC development kit (STMicroelectronics) as the targeting MCU platform for all participating teams. This $10 development board is equipped with an ARM Cortex-M4 core at 80 MHz, 256 kB of flash memory and 64 kB of SRAM, and its power consumption is around 30 mW in operation and 1.5 mW when idling. The IEGMs data were collected and provided by Singular Medical using ICDs... With the training dataset and unified evaluation platform, participating teams could utilize either the existing frameworks or their own tools to develop, train and deploy the AI/ML algorithm on board with cross-layer optimizations.

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profvjreddi commented Nov 6, 2023 via email

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3 participants