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Deep Learning with Python for Image Classification

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Computer Science & AI School,Mazhar Hussain

1:31:13

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  • 1. Introduction to the Course.mp4
    02:22
  • 1. Image Classification with single label and multi-label.mp4
    02:59
  • 1. PreTrained Models and their Applications.mp4
    05:11
  • 1. Deep Learning ResNet and AlexNet Architectures for Image Classification.mp4
    04:58
  • 1. Set-up Google Colab for Writing Python Code.mp4
    05:11
  • 1. Connect Google Colab with Google Drive to Read and Write Data.mp4
    02:43
  • 1. Read Data from Google Drive to Colab Notebook.mp4
    02:44
  • 1. Perform Data Preprocessing for Image Classification.mp4
    05:00
  • 1. Single-Label Image Classification using ResNet and AlexNet PreTrained Models.mp4
    08:03
  • 2.1 imagenet1000classes.zip
  • 2.2 pizza.zip
  • 2.3 single-label classification.zip
  • 2. Python Code for Single-label Classification.html
  • 1. Multi-Label Image Classification using ResNet and AlexNet PreTrained Models.mp4
    06:21
  • 2.1 dog and cat.zip
  • 2.2 imagenet1000classes.zip
  • 2.3 multi-label classification.zip
  • 2. Python Code for Multi-Label Classification.html
  • 1. Introduction to Transfer Learning.mp4
    06:09
  • 1. Link Google Drive with Google Colab.mp4
    02:43
  • 1. Dataset, Data Augmentation, Dataloaders, and Training Function.mp4
    07:20
  • 1. Deep ResNet Model FineTuning.mp4
    07:19
  • 1. ResNet Model HyperParameteres Optimization.mp4
    06:22
  • 1. Deep ResNet Model Training.mp4
    03:34
  • 1. Deep ResNet as Fixed Feature Extractor.mp4
    04:42
  • 1. Model Optimization, Training and Results Visualization.mp4
    05:51
  • 1.1 Classification Dataset.zip
  • 1.2 classification_transferlearning_resnet.zip
  • 1.3 classification_transferlearning_resnet.zip
  • 1. Resources Code for Transfer Learning by FineTuning and Model Feature Extractor.mp4
    01:41
  • Description


    Learn Deep Learning & Computer Vision for Image Classification using Transfer Learning and Pre-trained Models in Python

    What You'll Learn?


    • Learn Image Classification using Deep Learning PreTrained Models
    • Learn Single-Label Image Classification and Multi-Label Image Classification
    • Learn Deep Learning Architectures Such as ResNet and AlexNet
    • Write Python Code in Google Colab
    • Connect Colab with Google Drive and Access Data
    • Perform Data Preprocessing using Transformations
    • Perform Single-Label Image Classification with ResNet and AlexNet
    • Perform Multi-Label Image Classification with ResNet and AlexNet
    • Learn Transfer Learning
    • Dataset, Data Augmentation, Dataloaders, and Training Function
    • Deep ResNet Model FineTuning
    • ResNet Model HyperParameteres Optimization
    • Deep ResNet as Fixed Feature Extractor
    • Models Optimization, Training and Results Visualization

    Who is this for?


  • Deep Learning enthusiasts interested to learn with Python and Pytorch
  • Students and researchers interested in Deep Learning for Image Classification
  • More details


    Description

    In this course, you will learn Deep Learning with Python and PyTorch for Image Classification using Pre-trained Models. Image Classification is a computer vision task to recognize an input image and predict a single-label or multi-label for the image as output using Machine Learning techniques.

    • You will use Google Colab notebooks for writing the python code for image classification using Deep Learning models.

    • You will learn how to connect Google Colab with Google Drive and how to access data.

    • You will perform data preprocessing using different transformations such as image resize and center crop etc.

    • You will perform two types of Image Classification, single-label Classification, and multi-label Classification using deep learning models with Python.

    • You will be able to learn Transfer Learning techniques:

      1. Transfer Learning by FineTuning the model.

      2. Transfer Learning by using the Model as Fixed Feature Extractor.

    • You will learn how to perform Data Augmentation.

    • You will learn how to load Dataset, Dataloaders.

    • You will Learn to FineTune the Deep Resnet Model.

    • You will learn how to use the Deep Resnet Model as Fixed Feature Extractor.

    • You will Learn HyperParameters Optimization and results visualization.

    In single-label Classification, when you feed input image to the network it predicts single label. In multi-label Classification, when you feed input image to the network it predicts multiple labels.  You will Learn Deep Learning architectures such as ResNet and AlexNet. The ResNet is a deep convolution neural network proposed for image classification and recognition. ResNet network architecture designed for classification task, trained on the imageNet dataset of natural scenes that consists of 1000 classes. Deep residual nets won the 1st place on the ILSVRC 2015 Classification challenge. Alexnet is a deep convolution neural network trained on ImageNet dataset to classify the images into 1000 classes. It has five convolution layers followed by max-pooling layers, and 3 fully connected layers. AlexNet won the ILSVRC 2012 Classification challenge. You will perform image classification using ResNet and AlexNet deep learning models. The Deep Learning community has greatly benefitted from these open-source models where pre-trained models are a major reason for rapid advancements in the Computer Vision and deep learning research.


    Who this course is for:

    • Deep Learning enthusiasts interested to learn with Python and Pytorch
    • Students and researchers interested in Deep Learning for Image Classification

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    Computer Science & AI School
    Computer Science & AI School
    Instructor's Courses
    Computer Science & AI School aims to open the door to sought-after technology careers for you by learning cutting edge Computer Science courses in Artificial Intelligence (AI), Machine Learning (ML), Deep Learning (DL), Computer Vision (CV), Data Science (DS), Programming and Databases with course material ranges from entry-level  to specialized topics. You will be able to update your marketable and competitive skills through commercial applications of computing practices. You’ll master in-demand computing skills, solve complex problems, and hone your innovation and creativity. The hands-on exercises and project-based approach will help develop the technical and transferable skills needed for a fulfilling career in your field.
    Mazhar Hussain
    Mazhar Hussain
    Instructor's Courses
    Mazhar Hussain is teaching Computer Science courses since 2015 at the National University of Computer and Emerging Sciences.  He holds a Master's Degree in Computer Science and is passionate to deliver practical knowledge and skills to his students.  He has been teaching courses in Artificial Intelligence (AI), Machine Learning (ML), Deep Learning (DL), Computer Vision (CV), Data Science (DS), Programming, and Databases especially SQL SERVER, MYSQL, ORACLE, and MS ACCESS for more than 5 years span. He has been working as a developer in the Microsoft Innovation Center and is now taking all that he has learned to help you discover amazing career opportunities. Please do not hesitate if you have any questions, I am always available for your help at any time to transform a passionate, enthusiastic learner into a skilled person.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 19
    • duration 1:31:13
    • English subtitles has
    • Release Date 2023/01/22