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1
Introduction
2
Motivations
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TinyM2Net
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Contributions
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Depth Separable Layer
6
Mixed Precision Quantization
7
Dynamics Content
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Case Study
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Covid Detection
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Object Detection
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Battlefield Object Detection
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Raspberry Pi 4
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Summary
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Questions
Description:
Explore a cutting-edge framework for multimodal learning on tiny devices in this 23-minute conference talk from the tinyML Research Symposium 2022. Delve into TinyM^2Net, a flexible system algorithm co-designed for resource-constrained environments, presented by PhD student Hasib-Al-RASHID from the University of Maryland Baltimore. Learn about the motivations behind this innovative approach, its key contributions, and the implementation of depth separable layers and mixed precision quantization. Discover real-world applications through case studies in COVID detection, object detection, and battlefield object detection. Gain insights into the framework's performance on Raspberry Pi 4 and understand its potential impact on edge computing and IoT devices.

TinyM2Net: A Flexible System Algorithm Co-designed Multimodal Learning Framework for Tiny Devices

tinyML
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