Udemy

Deep Learning for Beginners with Python

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  • 7,793 Students
  • Updated 11/2025
  • Certificate Available
4.5
(202 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
21 Hour(s) 1 Minute(s)
Language
English
Taught by
KGP Talkie | Laxmi Kant
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.5
(202 Ratings)
3 views

Course Overview

Deep Learning for Beginners with Python

Neural Networks, TensorFlow, ANN, CNN, RNN, LSTM, Transfer Learning and Much More

This comprehensive course covers the latest advancements in deep learning and artificial intelligence using Python. Designed for both beginner and advanced students, this course teaches you the foundational concepts and practical skills necessary to build and deploy deep learning models.

Module 1: Introduction to Python and Deep Learning

  • Overview of Python programming language

  • Introduction to deep learning and neural networks

Module 2: Neural Network Fundamentals

  • Understanding activation functions, loss functions, and optimization techniques

  • Overview of supervised and unsupervised learning

Module 3: Building a Neural Network from Scratch

  • Hands-on coding exercise to build a simple neural network from scratch using Python

Module 4: TensorFlow 2.0 for Deep Learning

  • Overview of TensorFlow 2.0 and its features for deep learning

  • Hands-on coding exercises to implement deep learning models using TensorFlow

Module 5: Advanced Neural Network Architectures

  • Study of different neural network architectures such as feedforward, recurrent, and convolutional networks

  • Hands-on coding exercises to implement advanced neural network models

Module 6: Convolutional Neural Networks (CNNs)

  • Overview of convolutional neural networks and their applications

  • Hands-on coding exercises to implement CNNs for image classification and object detection tasks

Module 7: Recurrent Neural Networks (RNNs)

  • Overview of recurrent neural networks and their applications

  • Hands-on coding exercises to implement RNNs for sequential data such as time series and natural language processing


By the end of this course, you will have a strong understanding of deep learning and its applications in AI, and the ability to build and deploy deep learning models using Python and TensorFlow 2.0. This course will be a valuable asset for anyone looking to pursue a career in AI or simply expand their knowledge in this exciting field.

Course Content

  • 14 section(s)
  • 181 lecture(s)
  • Section 1 Course Setup
  • Section 2 Python for Deep Learning
  • Section 3 Introduction to Machine Learning
  • Section 4 Introduction to Deep Learning and TensorFlow
  • Section 5 End to End Deep Learning Project
  • Section 6 Introduction to Computer Vision with Deep Learning
  • Section 7 Introduction to Convolutional Neural Networks [Theory and Intuitions]
  • Section 8 Horses vs Humans Classification with Simple CNN
  • Section 9 Building Cats and Dogs Classifier with Regularized CNN
  • Section 10 Flowers Classification with Transfer Learning and CNN
  • Section 11 Introduction to NLP
  • Section 12 IMDB Reviews Sentiment Prediction with CNN
  • Section 13 Natural Language Processing with RNN and LSTMS | News Article Classification
  • Section 14 Time Series Data Analysis with LSTM

What You’ll Learn

  • The basics of Python programming language
  • Foundational concepts of deep learning and neural networks
  • How to build a neural network from scratch using Python
  • Advanced techniques in deep learning using TensorFlow 2.0
  • Convolutional neural networks (CNNs) for image classification and object detection
  • Recurrent neural networks (RNNs) for sequential data such as time series and natural language processing
  • Generative adversarial networks (GANs) for generating new data samples
  • Transfer learning in deep learning
  • Reinforcement learning and its applications in AI
  • Deployment options for deep learning models
  • Applications of deep learning in AI, such as computer vision, natural language processing, and speech recognition
  • The current and future trends in deep learning and AI, as well as ethical and societal implications.

Reviews

  • G
    GANESH PRATAP SINGH
    5.0

    Badhiya Hai

  • A
    Anonymized User
    3.5

    its okkk

  • A
    ABHAY KUMAR PATRA
    5.0

    As a beginner, the course serves great to understand the basics, explain the complexities and apply the learning.

  • C
    Chhavi S Wadhwa
    5.0

    Was interesting

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