Workshop Materials Delivered on 28/02/2022

Overview

intro-to-cnn-p1

Repo for hosting workshop materials delivered on 28/02/2022

Questions you will answer in this workshop

Learning Objectives

  • What are convolutional layers and how do Convolutional Neural Networks Work (CNNs)
  • Introduction to CNN classifiers, object detectors, and Semantic Segmentation
  • Learn to convert a fully dense network to a CNN in TensorFlow to improve the performance of image classifiers
  • A quick look into Object detection CNNs
  • Learn how to design CNNs for your AI application

What will I learn during this workshop

Prerequisites

In this training, we will approach the problem from the ground up. Reviewing how CNNs work without getting bogged down into the detail and getting some models training as fast as possible. The workshop materials will be delivered in a combination of coding exercises and lectures.

Steps

This workshop consists of the following activities:

Slides

You can access the slides here

Setup

  1. Clone this git repository using git clone https://github.com/beginners-machine-learning-london/intro-to-cnn-p1
  2. Open the project in your IDE such as Pycharm
  3. Run the following command to install the required packages (Learn more about python virtual environments here):
    1. Create the environment using python -m venv venv
    2. Activate the environment using source venv/bin/activate
    3. Install the required packages using pip install -r requirements.txt

Featured technologies

  • Python: Python is a programming language that lets you work more quickly and integrate your systems more effectively.
  • Tensorflow: A deep learning framework by Google (used in most production environments).
  • Keras: A high-level API for Tensorflow.
  • OpenCV: Open source computer vision library for computer vision and image processing.
  • Matplotlib: A library for plotting graphs and images in Python.
  • Numpy: A library for scientific computing with Python.

Dataset Source

  • The Fashion MNIST datasets are provided as part of the deep learning framework Tensorflow under the MIT license.
  • The dataset consists of 60,000 28x28 grayscale images of 10 classes: T-shirt/top, Trouser, Pullover, Dress, Coat, Sandal, Shirt, Sneaker, Bag, Ankle boot.
  • The images are divided into train and test sets. The training set contains 60,000 images. The test set contains 10,000 images.
  • This dataset is used in this workshop to train a CNN.
  • The images are 28x28 grayscale images.
  • The labels are one-hot encoded.
  • The training set is used to train the model and The test set is used to evaluate the model.

Learn More

Collaboration, Questions and Discussions

  • BML Slack Channel - Join our slack workspace to collaborate with others, discuss ideas and post any questions you have about our group or the workshops
  • Have questions about workshop exercises or setting up your AWS account and configurations? Post them here

Workshop Feedback

  • How was this workshop? Please provide us with some feedback here so that we can improve the content and delivery of future workshops.
Owner
Beginners Machine Learning
Content hub for hands-on machine learning workshops.
Beginners Machine Learning
[2021][ICCV][FSNet] Full-Duplex Strategy for Video Object Segmentation

Full-Duplex Strategy for Video Object Segmentation (ICCV, 2021) Authors: Ge-Peng Ji, Keren Fu, Zhe Wu, Deng-Ping Fan*, Jianbing Shen, & Ling Shao This

Daniel-Ji 55 Dec 22, 2022
This project aims to explore the deployment of Swin-Transformer based on TensorRT, including the test results of FP16 and INT8.

Swin Transformer This project aims to explore the deployment of SwinTransformer based on TensorRT, including the test results of FP16 and INT8. Introd

maggiez 87 Dec 21, 2022
An end-to-end regression problem of predicting the price of properties in Bangalore.

Bangalore-House-Price-Prediction An end-to-end regression problem of predicting the price of properties in Bangalore. Deployed in Heroku using Flask.

Shruti Balan 1 Nov 25, 2022
Merlion: A Machine Learning Framework for Time Series Intelligence

Merlion: A Machine Learning Library for Time Series Table of Contents Introduction Installation Documentation Getting Started Anomaly Detection Foreca

Salesforce 2.8k Dec 30, 2022
Target Propagation via Regularized Inversion

Target Propagation via Regularized Inversion The present code implements an ideal formulation of target propagation using regularized inverses compute

Vincent Roulet 0 Dec 02, 2021
(to be released) [NeurIPS'21] Transformers Generalize DeepSets and Can be Extended to Graphs and Hypergraphs

Higher-Order Transformers Kim J, Oh S, Hong S, Transformers Generalize DeepSets and Can be Extended to Graphs and Hypergraphs, NeurIPS 2021. [arxiv] W

Jinwoo Kim 44 Dec 28, 2022
Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Moustafa Meshry 16 Oct 05, 2022
Official PyTorch code of DeepPanoContext: Panoramic 3D Scene Understanding with Holistic Scene Context Graph and Relation-based Optimization (ICCV 2021 Oral).

DeepPanoContext (DPC) [Project Page (with interactive results)][Paper] DeepPanoContext: Panoramic 3D Scene Understanding with Holistic Scene Context G

Cheng Zhang 66 Nov 16, 2022
GeDML is an easy-to-use generalized deep metric learning library

GeDML is an easy-to-use generalized deep metric learning library

Borui Zhang 32 Dec 05, 2022
Simulation-based inference for the Galactic Center Excess

Simulation-based inference for the Galactic Center Excess Siddharth Mishra-Sharma and Kyle Cranmer Abstract The nature of the Fermi gamma-ray Galactic

Siddharth Mishra-Sharma 3 Jan 21, 2022
Pytorch cuda extension of grid_sample1d

Grid Sample 1d pytorch cuda extension of grid sample 1d. Since pytorch only supports grid sample 2d/3d, I extend the 1d version for efficiency. The fo

lyricpoem 24 Dec 03, 2022
Code for Neurips2021 Paper "Topology-Imbalance Learning for Semi-Supervised Node Classification".

Topology-Imbalance Learning for Semi-Supervised Node Classification Introduction Code for NeurIPS 2021 paper "Topology-Imbalance Learning for Semi-Sup

Victor Chen 40 Nov 23, 2022
Train robotic agents to learn pick and place with deep learning for vision-based manipulation in PyBullet.

Ravens is a collection of simulated tasks in PyBullet for learning vision-based robotic manipulation, with emphasis on pick and place. It features a Gym-like API with 10 tabletop rearrangement tasks,

Google Research 367 Jan 09, 2023
Learning multiple gaits of quadruped robot using hierarchical reinforcement learning

Learning multiple gaits of quadruped robot using hierarchical reinforcement learning We propose a method to learn multiple gaits of quadruped robot us

Yunho Kim 17 Dec 11, 2022
Deep deconfounded recommender (Deep-Deconf) for paper "Deep causal reasoning for recommendations"

Deep Causal Reasoning for Recommender Systems The codes are associated with the following paper: Deep Causal Reasoning for Recommendations, Yaochen Zh

Yaochen Zhu 22 Oct 15, 2022
The Few-Shot Bot: Prompt-Based Learning for Dialogue Systems

Few-Shot Bot: Prompt-Based Learning for Dialogue Systems This repository includes the dataset, experiments results, and code for the paper: Few-Shot B

Andrea Madotto 103 Dec 28, 2022
Robocop is your personal mini voice assistant made using Python.

Robocop-VoiceAssistant To use this project, you should have python installed in your system. If you don't have python installed, install it beforehand

Sohil Khanduja 3 Feb 26, 2022
This repository contains code from the paper "TTS-GAN: A Transformer-based Time-Series Generative Adversarial Network"

TTS-GAN: A Transformer-based Time-Series Generative Adversarial Network This repository contains code from the paper "TTS-GAN: A Transformer-based Tim

Intelligent Multimodal Computing and Sensing Laboratory (IMICS Lab) - Texas State University 108 Dec 29, 2022
Code for DeepCurrents: Learning Implicit Representations of Shapes with Boundaries

DeepCurrents | Webpage | Paper DeepCurrents: Learning Implicit Representations of Shapes with Boundaries David Palmer*, Dmitriy Smirnov*, Stephanie Wa

Dima Smirnov 36 Dec 08, 2022