Carly Richmond
Is it (F)ake?! Image Classification with TensorFlow.js
#1about 3 minutes
Using JavaScript and ML to solve a baking show challenge
The speaker introduces the goal of using machine learning to identify hyper-realistic cakes from the TV show "Is it Cake?".
#2about 2 minutes
Collecting and balancing the cake vs not-cake dataset
Images of cakes and non-cakes are collected using Playwright and the Unsplash API to create a balanced binary classification dataset.
#3about 5 minutes
Evaluating pre-trained models for image classification and object detection
Pre-existing models like MobileNet and Coco-SSD are tested on the dataset, but they produce inaccurate and strange classifications.
#4about 6 minutes
Building a custom convolutional neural network from scratch
A custom convolutional neural network is built using TensorFlow.js sequential models and convolution layers, but it fails to accurately classify images.
#5about 5 minutes
Applying transfer learning to improve model accuracy
Transfer learning is used by combining a pre-trained MobileNet feature vector model with a custom classification head, significantly improving results.
#6about 4 minutes
Playing an interactive game to compare human and model performance
An interactive web game allows the audience to test their cake-spotting skills against the various machine learning models.
#7about 1 minute
Key takeaways and resources for getting started with TensorFlow.js
The talk concludes by summarizing the journey from using pre-existing models to applying transfer learning and provides resources for further learning.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
04:14 MIN
The origin of the "Is it Cake?" machine learning project
Mastering Image Classification: A Journey with Cakes
04:41 MIN
Building an image classification game inspired by "Is It Cake?"
Mastering Image Classification: A Journey with Cakes
02:40 MIN
Building a machine learning game with JavaScript
Building Your Own Classification Model with JavaScript - Coffee with Developers - Carly Richmond
03:37 MIN
Playing the "Is it Cake?" game and comparing results
Mastering Image Classification: A Journey with Cakes
03:16 MIN
Evaluating the pre-trained MobileNet image classification model
Mastering Image Classification: A Journey with Cakes
06:29 MIN
Building a custom convolutional neural network from scratch
Mastering Image Classification: A Journey with Cakes
03:16 MIN
First attempt using the MobileNet classification model
Mastering Image Classification: A Journey with Cakes
01:54 MIN
Exploring diverse ML workloads with Transformers.js
Prompt API & WebNN: The AI Revolution Right in Your Browser
Featured Partners
Related Videos
Mastering Image Classification: A Journey with Cakes
Carly Richmond
Mastering Image Classification: A Journey with Cakes
Carly Richmonds
Building Your Own Classification Model with JavaScript - Coffee with Developers - Carly Richmond
Carly Richmnd
Machine learning in the browser with TensorFlowjs
Håkan Silfvernagel
Machine Learning for Software Developers (and Knitters)
Kris Howard
Machine learning 101: Where to begin?
Lutske De Leeuw
From Code to Motion: Building an Autonomous Hat-Hunting Robot with Kubernetes & ML
Daniel Brintzinger
From ML to LLM: On-device AI in the Browser
Nico Martin
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.




Understanding Recruitment Group
Barcelona, Spain
Remote
Node.js
Computer Vision
Machine Learning

Samsung Group
Cambridge, United Kingdom
Remote
PyTorch
Tensorflow
Computer Vision
Machine Learning

Fraunhofer-Gesellschaft zur Förderung der angewandten Forschung e.V.
Berlin, Germany
GIT
MySQL
Keras
DevOps
Docker
+4

Squarepoint Capital
London, United Kingdom
Intermediate
gRPC
Linux
Kotlin
PyTorch
PostgreSQL
+3

Bosch Thermotechnik GmbH
Leonberg, Germany
