Build Intelligence at the Edge - Machine Learning with React Native

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Have you ever wondered if we can really build machine learning models in React, rather than in the mainstream languages like Python or R? Afterall, React is the most used language by the developers, according to a 2019 survey by Stack Overflow. Well, this sounds like a crazy idea, because React is not designed for high performance computing and neural networks are compute-intensive! But, wait a minute - we have libraries such as Onnx.js, Tensorflow.js to our rescue! In this talk, I’ll be delving deeper into the process of building and deploying machine learning applications using React.

Rashmi Nagpal
Rashmi Nagpal
13 min
12 Dec, 2023

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Video Summary and Transcription

The Talk is about building intelligence at the edge with machine learning and React Native. It covers machine learning concepts, building ML models with React, challenges, best practices, and resources.

Available in Español

1. Introduction to Building Intelligence at the Edge

Short description:

Hi everyone, I'm Rashmi Nagpal. Today my talk is about building intelligence at the edge with machine learning and react native. We'll discuss machine learning concepts, building ML models with React, challenges, best practices, and resources.

Hi everyone, I'm Rashmi Nagpal. I'm a software engineer by profession and a researcher by passion. So today my talk title is build intelligence at the edge with machine learning and using react native.

So let's begin. So the agenda of this talk is firstly we'll discuss what is machine learning and its related concepts and how we can build our machine learning model using the react as one such technical framework.

Then there will be like some of the applications which are possible. Then we'll see what are the challenges which exist while using machine learning on the edge and then what are the best practices so that we can overcome those challenges and bunch of resources that I'll leave for you for the so without any further ado let's begin.

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