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Deep Learning- Convolutional Neural Networks in Python

  • Development
  • Mar 05, 2025
SynopsisDeep Learning: Convolutional Neural Networks in Python, avail...
Deep Learning- Convolutional Neural Networks in Python  No.1

Deep Learning: Convolutional Neural Networks in Python, available at $124.99, has an average rating of 4.62, with 118 lectures, based on 5938 reviews, and has 41652 subscribers.

You will learn about Understand convolution and why its useful for Deep Learning Understand and explain the architecture of a convolutional neural network (CNN) Implement a CNN in TensorFlow 2 Apply CNNs to challenging Image Recognition tasks Apply CNNs to Natural Language Processing (NLP) for Text Classification (e.g. Spam Detection, Sentiment Analysis) Understand important foundations for OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion This course is ideal for individuals who are Students, professionals, and anyone else interested in Deep Learning, Computer Vision, or NLP or Software Engineers and Data Scientists who want to level up their career It is particularly useful for Students, professionals, and anyone else interested in Deep Learning, Computer Vision, or NLP or Software Engineers and Data Scientists who want to level up their career.

Enroll now: Deep Learning: Convolutional Neural Networks in Python

Summary

Title: Deep Learning: Convolutional Neural Networks in Python

Price: $124.99

Average Rating: 4.62

Number of Lectures: 118

Number of Published Lectures: 79

Number of Curriculum Items: 118

Number of Published Curriculum Objects: 79

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand convolution and why its useful for Deep Learning
  • Understand and explain the architecture of a convolutional neural network (CNN)
  • Implement a CNN in TensorFlow 2
  • Apply CNNs to challenging Image Recognition tasks
  • Apply CNNs to Natural Language Processing (NLP) for Text Classification (e.g. Spam Detection, Sentiment Analysis)
  • Understand important foundations for OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion
  • Who Should Attend

  • Students, professionals, and anyone else interested in Deep Learning, Computer Vision, or NLP
  • Software Engineers and Data Scientists who want to level up their career
  • Target Audiences

  • Students, professionals, and anyone else interested in Deep Learning, Computer Vision, or NLP
  • Software Engineers and Data Scientists who want to level up their career
  • Ever wondered how AI technologies like OpenAI ChatGPT, GPT-4, DALL-E, Midjourney, and Stable Diffusion really work? In this course, you will learn the foundations of these groundbreaking applications.

    Learn about one of the most powerful Deep Learning architectures yet!

    The Convolutional Neural Network (CNN) has been used to obtain state-of-the-art results in computer vision tasks such as object detection, image segmentation, and generating photo-realistic images of people and things that don’t exist in the real world!

    This course will teach you the fundamentals of convolution and why it’s useful for deep learning and even NLP (natural language processing).

    You will learn about modern techniques such as data augmentation and batch normalization, and build modern architectures such as VGG yourself.

    This course will teach you:

  • The basics of machine learning and neurons (just a review to get you warmed up!)

  • Neural networks for classification and regression (just a review to get you warmed up!)

  • How to model image data in code

  • How to model text data for NLP (including preprocessing steps for text)

  • How to build an CNN using Tensorflow 2

  • How to use batch normalization and dropout regularization in Tensorflow 2

  • How to do image classification in Tensorflow 2

  • How to do data preprocessing for your own custom image dataset

  • How to use Embeddings in Tensorflow 2 for NLP

  • How to build a Text Classification CNN for NLP (examples: spam detection, sentiment analysis, parts-of-speech tagging, named entity recognition)

  • All of the materials required for this course can be downloaded and installed for FREE. We will do most of our work in Numpy, Matplotlib, and Tensorflow. I am always available to answer your questions and help you along your data science journey.

    This course focuses on “how to build and understand“, not just “how to use”. Anyone can learn to use an API in 15 minutes after reading some documentation. It’s not about “remembering facts”, it’s about “seeing for yourself” via experimentation. It will teach you how to visualize what’s happening in the model internally. If you want more than just a superficial look at machine learning models, this course is for you.

    Suggested Prerequisites:

  • matrix addition and multiplication

  • basic probability (conditional and joint distributions)

  • Python coding: if/else, loops, lists, dicts, sets

  • Numpy coding: matrix and vector operations, loading a CSV file

  • WHAT ORDER SHOULD I TAKE YOUR COURSES IN?:

  • Check out the lecture “Machine Learning and AI Prerequisite Roadmap” (available in the FAQ of any of my courses, including the free Numpy course)

  • UNIQUE FEATURES

  • Every line of code explained in detail – email me any time if you disagree

  • No wasted time “typing” on the keyboard like other courses – let’s be honest, nobody can really write code worth learning about in just 20 minutes from scratch

  • Not afraid of university-level math – get important details about algorithms that other courses leave out

  • Course Curriculum

    Chapter 1: Welcome

    Lecture 1: Introduction and Outline

    Lecture 2: Where to get the code

    Lecture 3: How to Succeed in this Course

    Chapter 2: Google Colab

    Lecture 1: Intro to Google Colab, how to use a GPU or TPU for free

    Lecture 2: Uploading your own data to Google Colab

    Lecture 3: Where can I learn about Numpy, Scipy, Matplotlib, Pandas, and Scikit-Learn?

    Lecture 4: Temporary 403 Errors

    Chapter 3: Machine Learning and Neurons

    Lecture 1: Review Section Introduction

    Lecture 2: What is Machine Learning?

    Lecture 3: Code Preparation (Classification Theory)

    Lecture 4: Classification Notebook

    Lecture 5: Code Preparation (Regression Theory)

    Lecture 6: Regression Notebook

    Lecture 7: The Neuron

    Lecture 8: How does a model learn?

    Lecture 9: Making Predictions

    Lecture 10: Saving and Loading a Model

    Lecture 11: Suggestion Box

    Chapter 4: Feedforward Artificial Neural Networks

    Lecture 1: Artificial Neural Networks Section Introduction

    Lecture 2: Forward Propagation

    Lecture 3: The Geometrical Picture

    Lecture 4: Activation Functions

    Lecture 5: Multiclass Classification

    Lecture 6: How to Represent Images

    Lecture 7: Color Mixing Clarification

    Lecture 8: Code Preparation (ANN)

    Lecture 9: ANN for Image Classification

    Lecture 10: ANN for Regression

    Chapter 5: Convolutional Neural Networks

    Lecture 1: What is Convolution? (part 1)

    Lecture 2: What is Convolution? (part 2)

    Lecture 3: What is Convolution? (part 3)

    Lecture 4: Why use 0-indexing?

    Lecture 5: Convolution on Color Images

    Lecture 6: CNN Architecture

    Lecture 7: CNN Code Preparation

    Lecture 8: CNN for Fashion MNIST

    Lecture 9: CNN for CIFAR-10

    Lecture 10: Data Augmentation

    Lecture 11: Batch Normalization

    Lecture 12: Improving CIFAR-10 Results

    Chapter 6: Natural Language Processing (NLP)

    Lecture 1: Embeddings

    Lecture 2: Code Preparation (NLP)

    Lecture 3: Text Preprocessing

    Lecture 4: CNNs for Text

    Lecture 5: Text Classification with CNNs

    Chapter 7: Convolution In-Depth

    Lecture 1: Real-Life Examples of Convolution

    Lecture 2: Beginners Guide to Convolution

    Lecture 3: Alternative Views on Convolution

    Chapter 8: Convolutional Neural Network Description

    Lecture 1: Convolution on 3-D Images

    Lecture 2: Tracking Shapes in a CNN

    Chapter 9: Practical Tips

    Lecture 1: Advanced CNNs and how to Design your Own

    Chapter 10: In-Depth: Loss Functions

    Lecture 1: Mean Squared Error

    Lecture 2: Binary Cross Entropy

    Lecture 3: Categorical Cross Entropy

    Chapter 11: In-Depth: Gradient Descent

    Lecture 1: Gradient Descent

    Lecture 2: Stochastic Gradient Descent

    Lecture 3: Momentum

    Lecture 4: Variable and Adaptive Learning Rates

    Lecture 5: Adam (pt 1)

    Lecture 6: Adam (pt 2)

    Chapter 12: Setting Up Your Environment (FAQ by Student Request)

    Lecture 1: Pre-Installation Check

    Lecture 2: Anaconda Environment Setup

    Lecture 3: How to install Numpy, Scipy, Matplotlib, Pandas, IPython, Theano, and TensorFlow

    Chapter 13: Extra Help With Python Coding for Beginners (FAQ by Student Request)

    Lecture 1: Beginners Coding Tips

    Lecture 2: Get Your Hands Dirty, Practical Coding Experience, Data Links

    Lecture 3: Where To Get the Code Troubleshooting

    Lecture 4: How to use Github & Extra Coding Tips (Optional)

    Lecture 5: How to Code by Yourself (part 1)

    Lecture 6: How to Code by Yourself (part 2)

    Lecture 7: How to Uncompress a .tar.gz file

    Lecture 8: Proof that using Jupyter Notebook is the same as not using it

    Lecture 9: Python 2 vs Python 3

    Lecture 10: Is Theano Dead?

    Chapter 14: Effective Learning Strategies for Machine Learning (FAQ by Student Request)

    Lecture 1: How to Succeed in this Course (Long Version)

    Lecture 2: Is this for Beginners or Experts? Academic or Practical? Fast or slow-paced?

    Lecture 3: Machine Learning and AI Prerequisite Roadmap (pt 1)

    Lecture 4: Machine Learning and AI Prerequisite Roadmap (pt 2)

    Chapter 15: Appendix / FAQ Finale

    Lecture 1: What is the Appendix?

    Lecture 2: BONUS

    Instructors

  • Deep Learning- Convolutional Neural Networks in Python  No.2
    Lazy Programmer Inc.
    Artificial intelligence and machine learning engineer
  • Rating Distribution

  • 1 stars: 63 votes
  • 2 stars: 76 votes
  • 3 stars: 271 votes
  • 4 stars: 2001 votes
  • 5 stars: 3527 votes
  • Frequently Asked Questions

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