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    SpicyMags.xyz

    The Complete Python And Tensorflow Data Science Course

    Posted By: ELK1nG
    The Complete Python And Tensorflow Data Science Course

    The Complete Python And Tensorflow Data Science Course
    Last updated 4/2020
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 6.31 GB | Duration: 16h 52m

    The complete guide to TensorFlow, data science, data analysis, image recognition and everything else you NEED to know

    What you'll learn
    Code in Python from scratch
    Machine learning theory applied in practical examples
    Pandas data manipulation and analysis projects
    PyPlot, a MATLAB-like plotting framework
    Build machine learning models in TensorFlow
    Build projects with NumPy for Python
    Build a convolutional neural network
    Use Keras with machine learning models
    Requirements
    No experience necessary
    Description
    Learn everything you need to become a data scientist. Machine learning is quickly becoming a required skill for every software developer. Enroll now to learn everything you need to know to get up to speed, whether you're a developer or aspiring data scientist. This is the course for you.Your complete Python course for image recognition, data analysis, data visualization and more.Reviews On Our Python Courses:"I know enough Python to be dangerous. Most of the ML classes are so abstract and theoretical that no learning happens. This is the first class where we use concrete examples that I can relate to and allow me to learn. Absolutely love this course!" - Mary T."Yes, this is an amazing start. For someone new in python this is a very simple boot course. I am able to relate to my earlier programming experience with ease!" - Gajendran C."Clear and concise information" - Paul B."Easy to understand and very clear explanations. So far so good!!!" - Alejandro M.Don't miss the biggest Python course of the year. This is a once in a lifetime chance to enroll in a massive course.Absolutely no experience necessary. Start with a complete introduction to Python that is perfect for absolute beginners and can also be used a review.Jump into using the most popular libraries and frameworks for working with Python. You'll learn everything you need to become a data scientist. This includes:1. Data Science with NumPyBuild projects with NumPy, the #1 Python library for data science providing arrays and matrices.2. Data Analysis with PandasBuild projects with pandas, a software library written for the Python programming language for data manipulation and analysis.2. Data Visualization with PyPlotBuild projects with pyplot, a MATLAB-like plotting framework enabling you to create a figure, create a plotting area in a figure, plot lines in a plotting area, decorate the plot with labels and much more. Learn it all in this massive course.3. Machine Learning TheoryMachine learning is in high demand and is quickly becoming a requirement on every software engineer's resume. Learn how to solve problems with machine learning before diving into practical examples.4. Introduction to TensorFlowBuild projects with TensorFlow, the most popular plaform enabling ML developers to build and deploy machine learning applications such as neural networks. Build your first linear regression model with TensorFlow. Learn how to build a dataset, model, train and test!5. Build a Convolutional Neural NetworkBuild a convolutional neural network (CNN.) Learn how to use Keras with machine learning models.Keras is a neural-network library written in Python capable of running on top of TensorFlow, Microsoft Cognitive Toolkit, R, Theano, and PlaidML. You'll be able to enable fast experimentation with deep neural networks with Keras.All source code is included for each project.If you buy one course this year, this is it. Sign up while spots are open.

    Overview

    Section 1: Python Language Basics

    Lecture 1 Python Language Basics Introduction

    Lecture 2 Intro to Python

    Lecture 3 Variables

    Lecture 4 Type Conversion Examples

    Lecture 5 Operators

    Lecture 6 Operators Examples

    Lecture 7 Collections

    Lecture 8 Lists

    Lecture 9 Multidimensional List Examples

    Lecture 10 Tuples Examples

    Lecture 11 Dictionaries Examples

    Lecture 12 Ranges Examples

    Lecture 13 Conditionials

    Lecture 14 If Statements Examples

    Lecture 15 If Statements Variants Examples

    Lecture 16 Loops

    Lecture 17 While Loops Examples

    Lecture 18 For Loops Examples

    Lecture 19 Functions

    Lecture 20 Functions Examples

    Lecture 21 Parameters and Return Values Examples

    Lecture 22 Classes and Objects

    Lecture 23 Classes Examples

    Lecture 24 Objects Examples

    Lecture 25 Inheritance Examples

    Lecture 26 Static Members Examples

    Lecture 27 Summary and Outro

    Lecture 28 Section Slides

    Lecture 29 Section Code

    Section 2: Build NumPy Projects

    Lecture 30 Build NumPy Projects Introduction

    Lecture 31 Intro to NumPy

    Lecture 32 Installing NumPy

    Lecture 33 Creating NumPy Arrays

    Lecture 34 Creating NumPy Matrices

    Lecture 35 Getting and Setting NumPy Elements

    Lecture 36 Arithmetic Operations on NumPy Arrays

    Lecture 37 NumPy Functions Part 1

    Lecture 38 NumPy Functions Part 2

    Lecture 39 Summary and Outro

    Lecture 40 Section Slides

    Lecture 41 Section Code

    Section 3: Build Pandas Projects

    Lecture 42 Build Pandas Projects Introduction

    Lecture 43 Intro to Pandas

    Lecture 44 Installing Pandas

    Lecture 45 Creating Pandas Series

    Lecture 46 Date Ranges

    Lecture 47 Getting Elements from Series

    Lecture 48 Getting Properties of Series

    Lecture 49 Modifying Series

    Lecture 50 Operations on Series

    Lecture 51 Creating Pandas DataFrames

    Lecture 52 Getting Elements from DataFrames

    Lecture 53 Getting Properties from DataFrames

    Lecture 54 DataFrame Modification

    Lecture 55 DataFrame Operations

    Lecture 56 DataFrame Comparisons and Iteration

    Lecture 57 Reading CSV

    Lecture 58 Summary and Outro

    Lecture 59 Section Slides

    Lecture 60 Section Code

    Section 4: Build PyPlot Projects

    Lecture 61 Build PyPlot Projects Introduction

    Lecture 62 Intro to PyPlot

    Lecture 63 Installing Matplotlib

    Lecture 64 Basic Line Plot

    Lecture 65 Customizing Graphs

    Lecture 66 Plotting Multiple Datasets

    Lecture 67 Bar Chart

    Lecture 68 Pie Chart

    Lecture 69 Histogram

    Lecture 70 3D Plotting

    Lecture 71 Course Outro

    Lecture 72 Section Code

    Section 5: Machine Learning Introduction

    Lecture 73 Machine Learning Introduction

    Lecture 74 Quick Intro to Machine Learning

    Lecture 75 Deep Dive into Machine Learning

    Lecture 76 Problems Solved with Machine Learning Part 1

    Lecture 77 Problems Solved with Machine Learning Part 2

    Lecture 78 Types of Machine Learning

    Lecture 79 How Machine Learning Works

    Lecture 80 Common Machine Learning Structures

    Lecture 81 Steps to Build a Machine Learning Program

    Lecture 82 Summary and Outro

    Lecture 83 Section Slides

    Section 6: Build a Model with TensorFlow

    Lecture 84 Build a Model with TensorFlow Introduction

    Lecture 85 Intro to Tensorflow

    Lecture 86 Installing Tensorflow

    Lecture 87 Intro to Linear Regression

    Lecture 88 Linear Regression Model - Creating Dataset

    Lecture 89 Linear Regression Model - Building the Model

    Lecture 90 Linear Regression Model - Creating a Loss Function

    Lecture 91 Linear Regression Model - Training the Model

    Lecture 92 Linear Regression Model - Testing the Model

    Lecture 93 Summary and Outro

    Lecture 94 Section Slides

    Lecture 95 Section Code

    Section 7: Build a Convolutional Neural Network

    Lecture 96 Build a Convolutional Neural Network Introduction

    Lecture 97 Intro to Image Recognition

    Lecture 98 Intro to MNIST

    Lecture 99 Building a CNN Part 1 - Obtaining Data

    Lecture 100 Building a CNN Part 2 - Building the Model

    Lecture 101 Building a CNN Part 3 - Adding Loss and Optimizer Functions

    Lecture 102 Building a CNN Part 4 - Train and Test Functions

    Lecture 103 Building a CNN Part 5 - Train and Test the Model

    Lecture 104 MNIST Image Recognition with Keras Sequential Model

    Lecture 105 Summary and Outro

    Lecture 106 Section Slides

    Lecture 107 Section Code

    Absolute beginners to programming,Developers transferring from other languages,Developers who need to learn machine learning