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    Data Science With Python 3.X

    Posted By: ELK1nG
    Data Science With Python 3.X

    Data Science With Python 3.X
    Last updated 6/2019
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 6.04 GB | Duration: 13h 37m

    Gain useful insights from data by performing popular data science techniques using Python libraries

    What you'll learn

    Enhance your programming skills and master data exploration and visualization in Python

    Learn multidimensional analysis and reduction techniques

    Master advanced visualization techniques (such as heatmaps) for better analysis and rapidly broaden your understanding

    Retrieve data from different data sources (CSV, JSON, Excel, PDF) and parse them in Python to give them a meaningful shape

    Perform statistical analysis using in-built Python libraries

    Understand the concept of Block algorithms and how Dask leverages it to load large data.

    Implement various example using Dask Arrays, Bags, and Dask Data frames for efficient parallel computing

    Combine Dask with existing Python packages such as NumPy and Pandas

    Implement an end-to-end Machine Learning pipeline in a distributed setting using Dask and scikit-learn

    Visualize and gain insights into real-world datasets via different chart types using Matplotlib

    Requirements

    Basic knowledge of probability/statistics and Python coding experience will assist you in understanding the concepts covered in this course.

    Description

    Python is an open-source community-supported, general-purpose programming language that, over the years, has also become one of the bastions of data science. Thanks to its flexibility and vast popularity that data analysis, visualization, and machine learning can be easily carried out with Python.This practical course is designed to teach you how to perform data science tasks such as data analysis, data manipulation, and data visualization. You will begin with performing data analysis on real-world datasets. You will then work on large datasets and perform exploratory data analysis to investigate the dataset and to come up with the findings from it.You will also learn to scale your data analysis and execute distributed data science projects right from data ingestion to data manipulation and visualization using Dask. Next, you will explore Dask frameworks and see how Dask can be used with other common Python tools such as NumPy, Pandas, matplotlib, Scikit-learn, and more. Finally, you will perform data visualization using Python and Matplotlib 3.By the end of this course, you will be able to use the power of Python to analyze data, create beautiful visualizations, and use powerful machine learning algorithms.Meet Your Expert(s):We have the best work of the following esteemed author(s) to ensure that your learning journey is smooth:Mohammed Kashif works as a Data Scientist at Nineleaps, India, dealing mostly with graph data analysis. Prior to this, he worked as a Python developer at Qualcomm. He completed his Master's degree in Computer Science from IIT Delhi, with a specialization in data engineering. His areas of interest include recommender systems, NLP, and graph analytics. In his spare time, he likes to solve questions on StackOverflow and help debug other people out of their misery. He is also an experienced teaching assistant with a demonstrated history of working in the Higher-Education industry.Jamshaid Sohail is a Data Scientist who is highly passionate about Data Science, Machine learning, Deep Learning, big data, and other related fields. He spends his free time learning more about the field and learning to use its emerging tools and technologies. He is always looking for new ways to share his knowledge with other people and add value to other people's lives. He has also attended Cambridge University for a summer course in Computer Science where he studied under great professors and would like to impart this knowledge to others. He has extensive experience as a Data Scientist in a US-based company. In short, he would be extremely delighted to educate and share knowledge with other people.Harish Garg is a co-founder and software professional with more than 18 years of software industry experience. He currently runs a software consultancy that specializes in the data analytics and data science domain. He has been programming in Python for more than 12 years and has been using Python for data analytics and data science for 6 years. He has developed numerous courses in the data science domain and has also published a book involving data science with Python, including Matplotlib.

    Overview

    Section 1: Exploratory Data Analysis with Pandas and Python 3.x

    Lecture 1 The Course Overview

    Lecture 2 Basic Statistical Measures

    Lecture 3 Variance and Standard Deviation

    Lecture 4 Visualizing Statistical Measures

    Lecture 5 Calculating Percentiles

    Lecture 6 Quartiles and Box Plots

    Lecture 7 Finding Missing Values

    Lecture 8 Dealing with Missing Values

    Lecture 9 Hands-on with Dealing with Missing Values

    Lecture 10 Case Study: Missing Data in Titanic Dataset

    Lecture 11 What are Outliers?

    Lecture 12 Using Z-scores to Find Outliers

    Lecture 13 Modified Z-scores

    Lecture 14 Using IQR to Detect Outliers

    Lecture 15 Types of Variables

    Lecture 16 Introduction to Univariate Analysis

    Lecture 17 Skewness and Kurtosis

    Lecture 18 Univariate Analysis over Olympics Dataset

    Lecture 19 Introduction to Bivariate Analysis

    Lecture 20 Correlation Coefficient

    Lecture 21 Scatter Plots and Heatmaps

    Lecture 22 Bivariate Analysis: Titanic Dataset

    Lecture 23 Bivariate Analysis: Video Game Sales

    Lecture 24 Introduction to Multivariate Analysis

    Lecture 25 Multivariate Analysis over Titanic Dataset

    Lecture 26 Multivariate Analysis over Pokemon Dataset

    Lecture 27 Simpson’s Paradox

    Lecture 28 Correlation Is Not Causation

    Lecture 29 Wine Data Analysis: Initial Setup

    Lecture 30 Red Wine Analysis

    Lecture 31 White Wine Analysis

    Lecture 32 White Wine versus Red Wine: Analysis

    Section 2: Data Wrangling with Python 3.x

    Lecture 33 The Course Overview

    Lecture 34 Installing Anaconda Navigator on Windows/Linux

    Lecture 35 Importing and Parsing CSV in Python

    Lecture 36 Importing and Parsing JSON in Python

    Lecture 37 Scraping Data from Public Web – Part 1

    Lecture 38 Scraping Data from Public Web – Part 2

    Lecture 39 Importing and Parsing Excel Files – Part 1

    Lecture 40 Importing and Parsing Excel Files – Part 2

    Lecture 41 Manipulating PDF Files in Python – Part 1

    Lecture 42 Manipulating PDF Files in Python – Part 2

    Lecture 43 Difference between Relational and Non-Relational Databases

    Lecture 44 Storing Data in SQLite Databases

    Lecture 45 Storing Data in MongoDB

    Lecture 46 Storing Data in Elasticsearch

    Lecture 47 Comparative Study of Databases for Storage

    Lecture 48 The Most Important Step in Data Analysis

    Lecture 49 Viewing/Inspecting DataFrames

    Lecture 50 Renaming/Adding/Removing the DataFrame Columns

    Lecture 51 Dropping Duplicate Rows

    Lecture 52 Indexing DataFrame to Retrieve Specific Columns and Rows

    Lecture 53 Merging/Concatenating/Joining DataFrames

    Lecture 54 Dealing with Missing Values

    Lecture 55 Filtering and Sorting of DataFrame

    Lecture 56 Encoding/Mapping Existing Values – Part 1

    Lecture 57 Encoding/Mapping Existing Values – Part 2

    Lecture 58 Rescale/Standardize Column Values

    Lecture 59 Common Cleaning Operations

    Lecture 60 Exporting Datasets for Future Use

    Lecture 61 Different Uses of Packages (Pandas, NumPy, SciPy, and Matplotlib)

    Lecture 62 Types of Column Names/Features/Attributes in Structured Data

    Lecture 63 Split-Apply-Combine (Performing Group By Operation)

    Lecture 64 Descriptive Statistics Using Python – Part 1

    Lecture 65 Descriptive Statistics Using Python – Part 2

    Lecture 66 Using Visualizations

    Lecture 67 Cool Visualization of Real-World Datasets of World Population Evolution

    Lecture 68 Visualizations in Python – Part 1

    Lecture 69 Visualizations in Python – Part 2

    Lecture 70 Exploring an Online Visualization Tool (RAWGraphs)

    Section 3: Scalable Data Analysis in Python with Dask

    Lecture 71 The Course Overview

    Lecture 72 Introduction to Dask

    Lecture 73 Features of Dask

    Lecture 74 Limitations of Dask

    Lecture 75 Setting Up Dask

    Lecture 76 Introduction to Blocked Algorithms

    Lecture 77 Hands-On with Dask Arrays

    Lecture 78 Digging Deeper into Dask Arrays

    Lecture 79 Performance Comparison with NumPy Arrays

    Lecture 80 Creating Universal NumPy Functions with Dask

    Lecture 81 Limitations of Dask Arrays

    Lecture 82 Lazy Evaluation

    Lecture 83 Using dask.delayed

    Lecture 84 Understanding Task Graphs

    Lecture 85 Performance Analysis with dask.delayed

    Lecture 86 Introduction to Dask Dataframes

    Lecture 87 Exploring Dask Dataframes

    Lecture 88 Creating Dask Dataframes

    Lecture 89 Loading Large Datasets with Dask Dataframes

    Lecture 90 Analyzing Data with Dask Dataframes

    Lecture 91 Limitations of Dask Dataframes

    Lecture 92 Introduction to Dask Bags

    Lecture 93 Creating and Storing Dask Bags

    Lecture 94 Manipulating Dask Bags

    Lecture 95 Word Count Example Using Dask Bags

    Lecture 96 Manipulating JSON Data Using Dask Bags

    Lecture 97 Limitations of Dask Bags

    Lecture 98 Overview of Distributed Computing with Dask

    Lecture 99 Setting Up Your Dask Cluster

    Lecture 100 Understanding Dask Schedulers

    Lecture 101 Exploring Dask Dashboard UI

    Lecture 102 Limitations of dask.distributed

    Lecture 103 Persisting Data

    Lecture 104 Combining Dask with Futures

    Lecture 105 Best Practices for Dask

    Lecture 106 Introduction to Dask-ML

    Lecture 107 Using Dask-ML for Regression

    Lecture 108 Using Dask-ML for Classification

    Lecture 109 Hyper-Parameter Tuning Using Dask

    Section 4: Data Visualization Recipes with Python and Matplotlib 3

    Lecture 110 Course Overview

    Lecture 111 Getting Data into Matplotlib

    Lecture 112 Drawing Scatter Plots

    Lecture 113 Creating Line Plots

    Lecture 114 Visualizing Data with Bar Charts

    Lecture 115 Drawing Subplots

    Lecture 116 Creating Histograms

    Lecture 117 Building Heatmaps

    Lecture 118 Plotting Data on Box Plots

    Lecture 119 Drawing Pie Charts

    Lecture 120 Customizing Labels, Titles, and Legends

    Lecture 121 Adding Grids and Customizing Ticks

    Lecture 122 Using Matplotlib Styles

    Lecture 123 Creating Custom Styles

    Lecture 124 Plot Annotation

    Lecture 125 Build Plots from the Ground-Up Using Plot Scaffolding

    Lecture 126 Building Custom Plots Using Figures

    Lecture 127 Customizing Plot Axes

    Lecture 128 Building 3D Graphs Using Wireframe

    Lecture 129 Creating 3D Scatter Plots

    Lecture 130 Drawing 3D Bar Charts

    Lecture 131 Customizing Wireframes

    Lecture 132 Drawing Animated Graphs

    Lecture 133 Building an Animated Histogram

    Lecture 134 Creating Animated subplots

    Lecture 135 Adding Interactivity to Plots

    Lecture 136 Creating Visualizations that Update Interactively with Data

    Lecture 137 Change the Plot Sizes

    Lecture 138 Save Plot Image to a File

    Lecture 139 Create Legend Outside the Plot

    Lecture 140 Display Plots Inline in a Notebook

    Lecture 141 Clear a Plot

    Lecture 142 Change Font Sizes of Plot Elements

    Lecture 143 Troubleshoot Value Errors

    This course is for Python developers, data analysts, and IT professionals who wish to explore the world of data science by performing data analysis, data wrangling, data manipulation, and data visualization on their own datasets.