Last updated 12/2020MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 7.47 GB | Duration: 17h 37m
Learn the data life cycle-from acquisition to processing to analysis-in Python What you'll learn Effectively pre-process data (structured or unstructured) before doing any analysis on the dataset Perform statistical analysis using in-built Python libraries Learn tricks and techniques that will be invaluable throughout your data science career Learn how to deal with missing data and outliers to resolve data inconsistencies Enhance your programming skills and master data exploration and visualization in Python Explore and work with different plotting libraries Work with industry-standard tools like Matplotlib, Seaborn, and Bokeh Gain knowledge on how to prepare data and feed it to machine learning algorithms Requirements Basic Python programming experience is required before undertaking the course. Description If you're a Python developer and looking to start your journey in data science, then this course is for you. This 5-course bundle takes you from zero experience to a complete understanding of key concepts, edge cases, and using Python for real-world application development. You'll move progressively from the basics to working with larger complex applications. After completing this course, you'll have the skills you need to dive into an existing application or start your own project.Course 1:In this course, you will gather data, prepare data for analysis, perform simple statistical analyses, create meaningful data visualizations, and more! This course will equip us with the tools and technologies, also we need to analyze the datasets using Python so that we can confidently jump into the field and enhance our skill set. The best part of this course is the takeaway code templates generated using the real-life dataset.Course 2:Next, you will learn how to prepare data for analysis, perform simple statistical analyses, create meaningful data visualizations, predict future trends from data, and more.Course 3:You'll study different types of visualizations, compare them, and find out how to select a particular type of visualization using this comparison. You'll explore different plots, including custom creations. After you get a hang of the various visualization libraries, you'll learn to work with Matplotlib and Seaborn to simplify the process of creating visualizations. You'll also be introduced to advanced visualization techniques, such as geoplots and interactive plots. You'll learn how to make sense of geospatial data, create interactive visualizations that can be integrated into any webpage, and take any dataset to build beautiful and insightful visualizations.Course 4:This course will start you on your journey to mastering topics within machine learning. These skills will help you deliver the kind of state-of-the-art predictive models that are being used to deliver value to businesses across industries. Overview Section 1: Data Wrangling with Python 3.x Lecture 1 The Course Overview Lecture 2 Installing Anaconda Navigator on Windows/Linux Lecture 3 Importing and Parsing CSV in Python Lecture 4 Importing and Parsing JSON in Python Lecture 5 Scraping Data from Public Web – Part 1 Lecture 6 Scraping Data from Public Web – Part 2 Lecture 7 Importing and Parsing Excel Files – Part 1 Lecture 8 Importing and Parsing Excel Files – Part 2 Lecture 9 Manipulating PDF Files in Python – Part 1 Lecture 10 Manipulating PDF Files in Python – Part 2 Lecture 11 Difference between Relational and Non-Relational Databases Lecture 12 Storing Data in SQLite Databases Lecture 13 Storing Data in MongoDB Lecture 14 Storing Data in Elasticsearch Lecture 15 Comparative Study of Databases for Storage Lecture 16 The Most Important Step in Data Analysis Lecture 17 Viewing/Inspecting DataFrames Lecture 18 Renaming/Addiemoving the DataFrame Columns Lecture 19 Dropping Duplicate Rows Lecture 20 Indexing DataFrame to Retrieve Specific Columns and Rows Lecture 21 Moncatenating/Joining DataFrames Lecture 22 Dealing with Missing Values Lecture 23 Filtering and Sorting of DataFrame Lecture 24 Encoding/Mapping Existing Values – Part 1 Lecture 25 Encoding/Mapping Existing Values – Part 2 Lecture 26 Rescale/Standardize Column Values Lecture 27 Common Cleaning Operations Lecture 28 Exporting Datasets for Future Use Lecture 29 Different Uses of Packages (Pandas, NumPy, SciPy, and Matplotlib) Lecture 30 Types of Column Names/Features/Attributes in Structured Data Lecture 31 Split-Apply-Combine (Perfog Group By Operation) Lecture 32 Descriptive Statistics Using Python – Part 1 Lecture 33 Descriptive Statistics Using Python – Part 2 Lecture 34 Using Visualizations Lecture 35 Cool Visualization of Real-World Datasets of World Population Evolution Lecture 36 Visualizations in Python – Part 1 Lecture 37 Visualizations in Python – Part 2 Lecture 38 Exploring an Online Visualization Tool (RAWGraphs) Section 2: Exploratory Data Analysis with Pandas and Python 3.x Lecture 39 The Course Overview Lecture 40 Basic Statistical Measures Lecture 41 Variance and Standard Deviation Lecture 42 Visualizing Statistical Measures Lecture 43 Calculating Percentiles Lecture 44 Quartiles and Box Plots Lecture 45 Finding Missing Values Lecture 46 Dealing with Missing Values Lecture 47 Hands-on with Dealing with Missing Values Lecture 48 Case Study: Missing Data in Titanic Dataset Lecture 49 What are Outliers? Lecture 50 Using Z-scores to Find Outliers Lecture 51 Modified Z-scores Lecture 52 Using IQR to Detect Outliers Lecture 53 Types of Variables Lecture 54 Introduction to Univariate Analysis Lecture 55 Skewness and Kurtosis Lecture 56 Univariate Analysis over Olympics Dataset Lecture 57 Introduction to Bivariate Analysis Lecture 58 Correlation Coefficient Lecture 59 Scatter Plots and Heatmaps Lecture 60 Bivariate Analysis: Titanic Dataset Lecture 61 Bivariate Analysis: Video Game Sales Lecture 62 Introduction to Multivariate Analysis Lecture 63 Multivariate Analysis over Titanic Dataset Lecture 64 Multivariate Analysis over Pokemon Dataset Lecture 65 Simpson’s Paradox Lecture 66 Correlation Is Not Causation Lecture 67 Wine Data Analysis: Initial Setup Lecture 68 Red Wine Analysis Lecture 69 White Wine Analysis Lecture 70 White Wine versus Red Wine: Analysis Section 3: Data Visualization with Python Lecture 71 Course Overview Lecture 72 Installation and Setup Lecture 73 Introduction Lecture 74 Overview of Statistics Lecture 75 NumPy Lecture 76 pandas Lecture 77 Lesson Summary Lecture 78 Lesson Overview Lecture 79 Comparison Plots Lecture 80 Relation Plots Lecture 81 Composition Plots Lecture 82 Distribution Plots Lecture 83 Geo Plots Lecture 84 What Makes a Good Visualization? Lecture 85 Lesson Summary Lecture 86 Lesson Overview Lecture 87 Overview of Plots in Matplotlib Lecture 88 Basic Text and Legend Functions Lecture 89 Basic Plots Lecture 90 Layouts Lecture 91 Images Lecture 92 Writing Mathematical Expressions Lecture 93 Lesson Summary Lecture 94 Lesson Overview Lecture 95 Controlling Figure Aesthetics Lecture 96 Color Palettes Lecture 97 Interesting Plots in seaborn Lecture 98 Multi-plots in seaborn Lecture 99 Regression Plots Lecture 100 Squarify Lecture 101 Lesson Summary Lecture 102 Lesson Overview Lecture 103 Geoplotlib Basics Lecture 104 Tile Providers Lecture 105 Custom Layers Lecture 106 Lesson Summary Lecture 107 Lesson Overview Lecture 108 Bokeh Basics Lecture 109 Adding Widgets Lecture 110 Lesson Summary Section 4: Data Science Projects with Python Lecture 111 Course Overview Lecture 112 Installation and Setup Lecture 113 Lesson Overview Lecture 114 Python and the Anaconda Package Management System Lecture 115 Different Types of Data Science Problems Lecture 116 Loading the Case Study Data with Jupyter and pandas Lecture 117 Getting Familiar with Data and Perfog Data Cleaning Lecture 118 Boolean Masks Lecture 119 Data Quality Assurance and Exploration Lecture 120 Deep Dive: Categorical Features Lecture 121 Exploring the Financial History Features in the Dataset Lecture 122 Lesson Summary Lecture 123 Lesson Overview Lecture 124 Exploring the Response Variable and Concluding the Initial Exploration Lecture 125 Introduction to Scikit-Learn Lecture 126 Model Performance Metrics for Binary Classification Lecture 127 True Positive Rate, False Positive Rate, and Confusion Matrix Lecture 128 Obtaining Predicted Probabilities from a Trained Logistic Regression Model Lecture 129 Lesson Summary Lecture 130 Lesson Overview Lecture 131 Examining the Relationships between Features and the Response Lecture 132 Finer Points of the F-test: Equivalence to t-test for Two Classes and Cautions Lecture 133 Univariate Feature Selection: What It Does and Doesn't Do Lecture 134 Generalized Linear Models (GLMs) Lecture 135 Lesson Summary Lecture 136 Lesson Overview Lecture 137 Estimating the Coefficients and Intercepts of Logistic Regression Lecture 138 Assumptions of Logistic Regression Lecture 139 How Many Features Should You Include? Lecture 140 Lasso (L1) and Ridge (L2) Regularization Lecture 141 Cross Validation: Choosing the Regularization Parameter and Other Hyperparameter Lecture 142 Reducing Overfitting on the Synthetic Data Classification Problem Lecture 143 Options for Logistic Regression in Scikit-Learn Lecture 144 Lesson Summary Lecture 145 Lesson Overview Lecture 146 Decision Trees Lecture 147 Training Decision Trees: Node Impurity Lecture 148 Using Decision Trees: Advantages and Predicted Probabilities Lecture 149 Random Forests: Ensembles of Decision Trees Lecture 150 Fitting a Random Forest Lecture 151 Lesson Summary Lecture 152 Lesson Overview Lecture 153 Review of Modeling Results Lecture 154 Dealing with Missing data: Imputation Strats Lecture 155 Cleaning the Dataset Lecture 156 Mode and Random Imputation of PAY_1 Lecture 157 A Predictive Model for PAY_1 Lecture 158 Using the Imputation Model and Comparing it to Other Methods Lecture 159 Financial Analysis Lecture 160 Final Thoughts on Delivering the Predictive Model to the Client Lecture 161 Lesson Summary This course is for Python developers, data analysts, and IT professionals who want to progress in their careers as fully-fledged data scientists/analytics experts.,Also, anyone who wants to use data analytics/machine learning to enrich their current personal or professional projects will also benefit from the course. 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