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1
Introduction
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Introducing Daniel
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What is AutoFlow
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Pruning
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Implementation
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Quantization
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Quantization versions
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Features
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Demonstration
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How to take part
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Github page
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Additional information
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Summary
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QA
Description:
Explore an open-source framework designed to streamline the implementation of neural networks on embedded devices in this 39-minute tinyML Talk. Learn about AutoFlow, a tool that automates the entire workflow for data scientists, from building machine learning models to selecting target platforms and optimizing implementations. Discover how AutoFlow utilizes Automated Machine Learning (AutoML) to generate and train various neural networks, selecting the most accurate one. Gain insights into pruning and quantization techniques for reducing model size, and understand the process of converting models for specific target platforms. Follow along with a demonstration of AutoFlow's features, including its ability to generate necessary files for execution on embedded devices. Find out how to access and contribute to this GitHub-hosted project, and participate in a Q&A session to deepen your understanding of this innovative framework for embedded AI development.

TinyML Talks Germany - AutoFlow - An Open Source Framework to Automatically Implement Neural

tinyML
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