Computer Mouse Conference Demos! (node.js + tensorflow.js) | Summary and Q&A

12.4K views
April 30, 2021
by
The Coding Train
YouTube video player
Computer Mouse Conference Demos! (node.js + tensorflow.js)

TL;DR

This content discusses the process of building a mouse movement prediction model using TensorFlow.js.

Install to Summarize YouTube Videos and Get Transcripts

Key Insights

  • 🐭 The use of TensorFlow.js allows for the creation of a neural network model for mouse movement prediction.
  • 🐭 The collected mouse data is parsed and normalized to be used as input for the model.
  • ❓ The model architecture consists of a sequential model with a hidden layer and an output layer.

Transcript

so do check one two just testing out my mic i also see there's a question from joe herbert which says i thought of a good pre-stream question does the coding train have good intro ml in good intro ml video that one would suggest well i don't know about good but i do have a series i think if you search on youtube for beginners guide to ml5.js perhap... Read More

Questions & Answers

Q: What is the purpose of the live stream?

The purpose of the live stream is to build a mouse movement prediction model using TensorFlow.js.

Q: How is the mouse data collected and visualized?

The mouse movements are tracked and recorded using a processing sketch, and the data is saved in a CSV file. The data is then visualized using Processing's console.table() function.

Q: How is the collected data transformed for use in the neural network model?

The data is parsed and normalized, converting it into an array of arrays representing chunks of mouse positions. This data is then used as input for the neural network.

Q: What kind of model architecture is used for the mouse movement prediction model?

The model architecture is a sequential model, with a hidden layer consisting of 32 units and an output layer with 2 units representing the x and y coordinates of the next mouse position.

Summary & Key Takeaways

  • The content begins with the speaker explaining the purpose of the live stream, which is to build a mouse movement prediction model using TensorFlow.js.

  • The speaker collects and visualizes mouse data, recording the positions and timestamps of mouse movements.

  • The collected data is then parsed and normalized to be used as input for the neural network model.

Share This Summary 📚

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on:

Explore More Summaries from The Coding Train 📚

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on: