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Python For Deep Learning: Build Neural NetWorks In Python - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Python For Deep Learning: Build Neural NetWorks In Python (/Thread-Python-For-Deep-Learning-Build-Neural-NetWorks-In-Python--1152559) |
Python For Deep Learning: Build Neural NetWorks In Python - AD-TEAM - 11-08-2025 ![]() Python For Deep Learning: Build Neural Networks In Python Last updated 1/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 785.38 MB | Duration: 2h 4m Complete Deep Learning Course to Master Data science, Tensorflow, Artificial Intelligence, and Neural Networks What you'll learn Learn the fundamentals of the Deep Learning theory Learn how to use Deep Learning in Python Learn how to use different frameworks in Python to solve real-world problems using deep learning and artificial intelligence Make predictions using linear regression, polynomial regression, and multivariate regression Build artificial neural networks with Tensorflow and Keras Requirements Experience with the basics of coding in Python Basic mathematical skills Readiness, flexibility, and passion for learning Description Python is famed as one of the best programming languages for its flexibility. It works in almost all fields, from web development to developing financial applications. However, it's no secret that Python's best application is in deep learning and artificial intelligence tasks.While Python makes deep learning easy, it will still be quite frustrating for someone with no knowledge of how machine learning works in the first place.If you know the basics of Python and you have a drive for deep learning, this course is designed for you. This course will help you learn how to create programs that take data input and automate feature extraction, simplifying real-world tasks for humans.There are hundreds of machine learning resources available on the internet. However, you're at risk of learning unnecessary lessons if you don't filter what you learn. While creating this course, we've helped with filtering to isolate the essential basics you'll need in your deep learning journey.It is a fundamentals course that's great for both beginners and experts alike. If you're on the lookout for a course that starts from the basics and works up to the advanced topics, this is the best course for you.It only teaches what you need to get started in deep learning with no fluff. While this helps to keep the course pretty concise, it's about everything you need to get started with the topic. Overview Section 1: Introduction to Deep Learning Lecture 1 What is a Deep Learning ? Lecture 2 Course Materials Lecture 3 Why is Deep Learning Important? Lecture 4 Software and Frameworks Section 2: Artificial Neural Networks (ANN) Lecture 5 Introduction Lecture 6 Anatomy and function of neurons Lecture 7 An introduction to the neural network Lecture 8 Architecture of a neural network Section 3: Propagation of information in ANNs Lecture 9 Feed-forward and Back Propagation Networks Lecture 10 Backpropagation In Neural Networks Lecture 11 Minimizing the cost function using backpropagation Section 4: Neural Network Architectures Lecture 12 Single layer perceptron (SLP) model Lecture 13 Radial Basis Network (RBN) Lecture 14 Multi-layer perceptron (MLP) Neural Network Lecture 15 Recurrent neural network (RNN) Lecture 16 Long Short-Term Memory (LSTM) networks Lecture 17 Hopfield neural network Lecture 18 Boltzmann Machine Neural Network Section 5: Activation Functions Lecture 19 What is the Activation Function? Lecture 20 Important Terminologies Lecture 21 The sigmoid function Lecture 22 Hyperbolic tangent function Lecture 23 Softmax function Lecture 24 Rectified Linear Unit (ReLU) function Lecture 25 Leaky Rectified Linear Unit function Section 6: Gradient Descent Algorithm Lecture 26 What is Gradient Decent? Lecture 27 What is Stochastic Gradient Decent? Lecture 28 Gradient Decent vs Stochastic Gradient Decent Section 7: Summary Overview of Neural Networks Lecture 29 How artificial neural networks work? Lecture 30 Advantages of Neural Networks Lecture 31 Disadvantages of Neural Networks Lecture 32 Applications of Neural Networks Section 8: Implementation of ANN in Python Lecture 33 Introduction Lecture 34 Exploring the dataset Lecture 35 Problem Statement Lecture 36 Data Pre-processing Lecture 37 Loading the dataset Lecture 38 Splitting the dataset into independent and dependent variables Lecture 39 Label encoding using scikit-learn Lecture 40 One-hot encoding using scikit-learn Lecture 41 Training and Test Sets: Splitting Data Lecture 42 Feature scaling Lecture 43 Building the Artificial Neural Network Lecture 44 Adding the input layer and the first hidden layer Lecture 45 Adding the next hidden layer Lecture 46 Adding the output layer Lecture 47 Compiling the artificial neural network Lecture 48 Fitting the ANN model to the training set Lecture 49 Predicting the test set results Section 9: Convolutional Neural Networks (CNN) Lecture 50 Introduction Lecture 51 Components of convolutional neural networks Lecture 52 Convolution Layer Lecture 53 Pooling Layer Lecture 54 Fully connected Layer Section 10: Implementation of CNN in Python Lecture 55 Dataset Lecture 56 Importing libraries Lecture 57 Building the CNN model Lecture 58 Accuracy of the model Programmers who are looking to add deep learning to their skillset,Professional mathematicians willing to learn how to analyze data programmatically,Any Python programming enthusiast willing to add deep learning proficiency to their portfolio ![]() RapidGator NitroFlare DDownload |