6.1: Using models from Python in the web browser with TensorFlow.js

Subscribers:
2,510,000
Published on ● Video Link: https://www.youtube.com/watch?v=7s4EbUtl-PM



Duration: 4:33
2,906 views
82


In this video learn about the benefits of converting models that may be currently in Python to output them to a web browser friendly format with TensorFlow.js to get more reach and usage than ever before. This is great for researchers who want more eyes on their cutting edge models so they can find bugs and biases faster than ever before, which itself can drive better models down the line.

Catch more episodes from Machine Learning for Web Developers (Web ML) → https://goo.gle/learn-WebML
Check out TensorFlow on YouTube → https://goo.gle/TensorFlow-YouTube
Subscribe to Google Developers → https://goo.gle/developers

Connect with Jason Mayes to ask questions:
LinkedIn → https://goo.gle/3GwgeLw
Twitter →https://goo.gle/3Xh6MT7
Discord →https://goo.gle/3WWVO5t

Use #WebML to share your learnings and creations from this course to meet your peers on social media!

See what others have already made with Web ML → http://goo.gle/made-with-tfjs




Other Videos By Google for Developers


2023-02-13Meet your musical match: The Beatmatch.app dating and social platform
2023-02-117.1: Machine Learning as a Web Engineer - putting knowledge into practice
2023-02-117.2: To the future and beyond - autoencoders, GANs, RNNs and more
2023-02-106.5: Dealing with edge cases in spam detection
2023-02-106.4.1: Using a natural language model: Comment spam detection - setting up the web scaffolding
2023-02-106.4.4: Using a natural language model: Comment spam detection - web sockets
2023-02-106.3: Natural language processing (NLP) - understanding written text
2023-02-106.4.2: Using a natural language model: Comment spam detection - loading a pretrained NLP model
2023-02-106.4.3: Using a natural language model: Comment spam detection - word tokenization
2023-02-106.6: Using a retrained spam detection model in the web browser with TensorFlow.js
2023-02-096.1: Using models from Python in the web browser with TensorFlow.js
2023-02-096.2: Converting Python saved models with the TensorFlow.js command line converter
2023-02-09Connect, learn, and grow with Google Developer Student Clubs
2023-02-085.2: Make your own Teachable Machine for image classification - transfer learning on the web in JS
2023-02-085.3: Using layers models for transfer learning
2023-02-075.1: Transfer learning: Retraining existing models in the web browser with TensorFlow.js
2023-02-06Google Summer of Code 2023 #Shorts
2023-02-06Google Summer of Code 2023, Cloud Workstations, and more dev news
2023-02-06What does it mean to be a Google Developer Expert (GDE)?
2023-02-064.7.2: Beyond perceptrons: Convolutional Neural Network (CNNs) - Implementation with TensorFlow.js
2023-02-064.7.1: Beyond perceptrons: Convolutional Neural Network (CNNs) in the web browser



Tags:
Google
developers
machine learning for web developers
ml for web developers ml web dev
web machine learning
web ml
tensorflow
tensorflow.js
machine learning course
tensorflow.js course
machine learning courses for web developers
introduction to machine learning with javascript