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1
Intro
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Welcome
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TinyML History
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How to position TinyML for the future
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Where are you on your TinyML journey
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What does embedding a model mean
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The ideal weight for a tinyML model
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Size is not enough
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What is Newton
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Benefits of Newton
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Opportunities
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Leveraging existing frameworks
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Results
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How do we do this
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No coding required
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Use case
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Summary
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Sponsors
Description:
Explore the cutting-edge world of tinyML in this 35-minute conference talk from the tinyML Summit 2022. Delve into the concept of creating ultra-compact machine learning models, specifically those not exceeding 1 kB in size. Learn how Neuton, a no-code platform, revolutionizes the development of tiny smart devices by automating the creation of optimal ML models. Discover the process of embedding these compact models into memory-constrained hardware, even with 8 and 16-bit precision, without the need for compression, quantization, or pruning. Through a practical demonstration focused on food quality determination, gain insights into the end-to-end process of developing and implementing super tiny ML models in 8-bit sensor microcontrollers. Understand the historical context of tinyML, its future positioning, and how to leverage existing frameworks for enhanced results. This talk, presented by Blair Newman, CTO of Neuton, offers valuable knowledge for embedded engineers and those interested in the expanding capabilities of tiny smart devices across various domains. Read more

1 kB and Not a Bit More - The Ideal Weight for a TinyML Model

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