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    Machine Learning: Learn By Building Web Apps In Python

    Posted By: ELK1nG
    Machine Learning: Learn By Building Web Apps In Python

    Machine Learning: Learn By Building Web Apps In Python
    Published 9/2022
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 7.08 GB | Duration: 18h 2m

    Learn basic to advanced Machine Learning algorithms by creating web applications using Flask!!

    What you'll learn
    Master Machine Learning on Python
    Learn about Regression, Classification tasks
    Learn about neural networks
    Learn about Deep neural networks with projects
    Create web applications using flask
    Simple Model building with Scikit-Learn , TensorFlow and Keras
    Creating REST API for Machine Learning models
    Learn about Exploratory Data Analysis
    Implement linear, logistic regression
    Implement convolution neural network
    Learn about Postman to test API endpoints
    Requirements
    Any laptop and an internet connection
    Basic knowledge of Python programming is must
    Description
    Machine learning is a branch of artificial intelligence (AI) focused on building applications that learn from data and improve their accuracy over time without being programmed to do so.In data science, an algorithm is a sequence of statistical processing steps. In machine learning, algorithms are 'trained' to find patterns and features in massive amounts of data in order to make decisions and predictions based on new data. The better the algorithm, the more accurate the decisions and predictions will become as it processes more data.Machine learning has led to some amazing results, like being able to analyze medical images and predict diseases on-par with human experts.Google's AlphaGo program was able to beat a world champion in the strategy game go using deep reinforcement learning.Machine learning is even being used to program self driving cars, which is going to change the automotive industry forever. Imagine a world with drastically reduced car accidents, simply by removing the element of human error.Topics covered in this course:1. Warm-up with Machine learning Libraries: numpy, pandas2. Implement Machine Learning algorithms: Linear, Logistic Regression3. Implement Neural Network from scratch4. Introduction to Tensorflow and Keras5. Start with simple "Hello World" flask application6. Create flask application to implement linear regression and test the API's endpoints7. Implement transfer learning and built an app to implement image classification

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Setup and Creating Environment

    Lecture 2 Install anaconda on your machine

    Lecture 3 Set up environment and Download Machine Learning Libraries

    Section 3: Introduction to Machine Learning for Absolute Beginners

    Lecture 4 Types of Data in Machine Learning

    Lecture 5 Introduction to numpy

    Lecture 6 Introduction to pandas

    Lecture 7 Train and Test split of data

    Lecture 8 Miscellaneous Concept of Machine Learning

    Section 4: Linear Regression in detail

    Lecture 9 Lecture: Intro to Linear Regression

    Lecture 10 Lecture: Learn about OLS [Ordinary Least Squares] algorithm

    Lecture 11 Lecture: Introduction to working of Linear Regression

    Lecture 12 Lecture: Introduction to MSE, MAE, RMSE

    Lecture 13 Lecture: Introduction to R squared

    Lecture 14 Tutorial: Implement Simple linear regression numerical [calculate best fit line]

    Lecture 15 Workshop: Implement Simple Linear Regression

    Lecture 16 Lecture: Difference between Simple and Multiple Regression

    Lecture 17 Workshop: Implement Multiple Linear Regression

    Lecture 18 Workshop: Implement Multiple Linear Regression

    Section 5: Logistic Regression [optional]

    Lecture 19 Lecture: Learn about Logistic Regression

    Lecture 20 Lecture: Learn about hypothetical function [sigmoid/logit function]

    Lecture 21 Lecture: Logistic Math Overview

    Lecture 22 Lecture: Learn about decision boundary

    Lecture 23 Lecture: Learn about Cost function of Logistic Regression

    Lecture 24 Lecture: Learn about Gradient Descent

    Lecture 25 Workshop: Implement Logistic Regression

    Lecture 26 Workshop final: Implement Logistic Regression

    Section 6: Neural Network in detail

    Lecture 27 Introduction to Neural Networks

    Lecture 28 Example of neural network

    Lecture 29 Updating the weights [partial differentiation]

    Lecture 30 Introduction to partial differentiation

    Lecture 31 Introduction to the Activation Function

    Lecture 32 Why do we need bias in the program

    Lecture 33 Why we use regularization in the Neural Network

    Lecture 34 Introduction to the gradient descent [review]

    Lecture 35 Introduction to Stochastic Gradient Descent and Adam Optimizer

    Lecture 36 Introduction to mini-batch SGD

    Section 7: Coding Neural Network from Scratch [optional]

    Lecture 37 Setting up environment and coding single neuron

    Lecture 38 Coding neuron layer

    Lecture 39 Using dot product to code neuron layer

    Lecture 40 Coding dense layer [must know Object Oriented Programming]

    Lecture 41 Introduction to Activation Function

    Section 8: Activation Functions

    Lecture 42 Implementation of activation function [step and sigmoid]

    Lecture 43 Implementation of activation function [tanh and ReLu]

    Section 9: Introduction to Tensorflow and Keras

    Lecture 44 Introduction to Deep Learning

    Lecture 45 Tensor Ranks in Tensorflow

    Lecture 46 Program Elements in Tensorflow

    Lecture 47 Coding in Tensorflow

    Lecture 48 Introduction to Keras

    Lecture 49 Keras Model [Most Important Video]

    Lecture 50 Implementing neural network with Keras

    Section 10: Creating Simple Flask Application ("Hello World")

    Lecture 51 Flask: Display Hello World

    Section 11: Web App: Implementing Regression using Keras

    Lecture 52 Introduction to the dataset

    Lecture 53 Project structure

    Lecture 54 Load the data

    Lecture 55 Handle Missing values

    Lecture 56 Dependent and Independent variable

    Lecture 57 Train Test split of data

    Lecture 58 Building the model

    Lecture 59 Make predictions

    Lecture 60 Save the model

    Lecture 61 Load model and make predictions

    Lecture 62 Finding range: min and max value of each attributes

    Lecture 63 Making range as dictionary

    Lecture 64 Creating an Flask App to test API endpoint

    Lecture 65 Testing the model

    Lecture 66 Restrictions for Input to the model

    Lecture 67 Using POSTMAN to test API endpoint

    Section 12: Basics of Convolution Neural Network

    Lecture 68 Introduction to Convolution Neural Network

    Lecture 69 Kernel or filter

    Lecture 70 Example of Kernel

    Lecture 71 Stride

    Lecture 72 Padding

    Lecture 73 Pooling

    Lecture 74 Flatten

    Lecture 75 Layers of CNN

    Section 13: Introduction to Transfer Learning

    Lecture 76 What is Transfer Learning

    Lecture 77 Traditional ML vs Transfer Learning

    Lecture 78 How to use Transfer Learning

    Lecture 79 MobileNet

    Lecture 80 Architecture of MobileNet

    Section 14: Web App: Implementing CNN (Mobile Net)

    Lecture 81 Introducing Project

    Lecture 82 Creating function to check allowed files

    Lecture 83 Creating basic route

    Lecture 84 Loading all libraries for the model

    Lecture 85 Instantiating the model

    Lecture 86 The "upload_image" function

    Lecture 87 Checking if image is uploaded

    Lecture 88 Checking whether or not image is selected

    Lecture 89 Load the image

    Lecture 90 Transform the image and store in numpy array

    Lecture 91 Make Predictions

    Programmer who wants to learn machine learning by creating web applications,Data Scientists who want to know how to test & monitor their models beyond,Beginner Python programmer,Machine Learning engineer who wants to create fun projects using their basic skills