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    Pandas: Data Analysis With Pandas: 3-In-1

    Posted By: ELK1nG
    Pandas: Data Analysis With Pandas: 3-In-1

    Pandas: Data Analysis With Pandas: 3-In-1
    Last updated 6/2018
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.53 GB | Duration: 8h 11m

    Get insights and solutions to common data problems while working on real-world datasets using Pandas library

    What you'll learn

    Use Pandas to make predictions using Machine Learning and scikit-learn

    Prepare real-world messy datasets for machine learning

    Master analyzing and visualizing different kinds of data using Pandas to gain real-world insights

    Manipulate quantitative financial data and model time-series data, perform algorithmic trading, derive results on fixed and moving windows, and more

    Explore the most crucial and common operations that you will perform during data analysis to build customized functions to apply to your groups.

    Restructure and tidy data to make data analysis and visualization easier

    Perform algorithmic trading, derive results on fixed and moving windows, and more.

    Get the hang of taking out transformed data out of Pandas data frames and into the formats your application expects.

    Requirements

    Prior programming experience in Python will be helpful to get the most out of this course.

    Basic understanding of Pandas will be helpful.

    Fundamental knowledge of Python. It is assumed that you are familiar with all the common built-in data containers in Python, such as lists, sets, dictionaries, and tuples.

    Description

    Are you looking for a gigantic boost in your productivity? Are you searching for some interesting and fun tricks to solve your data problems? If so, then this course is indeed a perfect choice for you. This course provides you with unique, idiomatic, and amazing solutions for both fundamental and advanced data manipulation tasks with Pandas.
    Pandas is a popular Open Source Python package that provides fast, high performance data structures for performing efficient data manipulation and analysis. It has quickly emerged as a popular choice of tool for analysts to solve real-world analytical problems. The Pandas library is massive, and it's common for frequent users to be unaware of many of its more impressive features.


    This comprehensive 3-in-1 course is a step-by-step, a highly practical course showing you the whys and how's of applying Pandas for your data analysis tasks. Solve most complex scientific computing problems with ease using the power of Pandas. Manipulate, analyze and visualize your data using the popular Pandas library. Enhance your data exploration and machine learning skills by gaining surprising insights from Pandas and using expert tips and tricks.


    Contents and Overview

    This training program includes 3 complete courses, carefully chosen to give you the most comprehensive training possible.


    The first course, Learning Pandas, covers powerful Data Analysis with Python Library in an engaging and exciting way. Analyze and model your data, and organize the results of your analysis in the form of plots or other visualization means. Throughout the course, you’ll implement simple yet highly effective examples and use-cases which are relevant in the real-world scenario, as you build on your understanding of Pandas. By the end of this course, you’ll have a firm understanding of the basics of Pandas. You’ll be ready to start using Pandas for different data science tasks with confidence.


    The second course, Data Analysis and Exploration with Pandas, covers idiomatic solutions to common data problems while working on real-world datasets to get surprising insights from the Pandas library. This course guides you, as if you were looking over the shoulder of an expert, through practical situations that you are highly likely to encounter. Many advanced solutions combine several different features across the Pandas library to generate results.


    The third course, Advanced Techniques for Exploring Data Sets with Pandas, covers popular datasets in R, while mastering advanced techniques used for them. Manipulate and reshape data using Pandas methods. You’ll also learn how to deal with missing data from your datasets, how to draw charts and plots using Pandas and Matplotlib, and how to create some cool visualizations for your audience. Finally, you will wrap-up your newly gained Pandas knowledge by learning how to get data out of Pandas into some popular file formats.


    By the end of the course, you’ll get insights and solutions to common data problems while working on real-world datasets using Pandas library.About the Authors
    Harish Garg is a Data Scientist and a Lead Software Developer with 17 years' software industry experience. He worked for McAfee\Intel for 11+ years before starting his own software consultancy. He is an expert in creating data visualizations using R, Python, and web-based visualization libraries.
    Theodore Petrou is a data scientist and the founder of Dunder Data, a professional educational company focusing on exploratory data analysis. He is also the head of Houston Data Science, a meetup group with more than 2,000 members that has the primary goal of getting local data enthusiasts together in the same room to practice data science. Before founding Dunder Data, Ted was a data scientist at Schlumberger, a large oil services company, where he spent the vast majority of his time exploring data. Some of his projects included using targeted sentiment analysis to discover the root cause of part failures from engineer text, developing customized client/server dash boarding applications, and real-time web services to avoid mispricing sales items. Ted received his Master's degree in statistics from Rice University, and used his analytical skills to play poker professionally and teach math before becoming a data scientist. Ted is a strong supporter of learning through practice and can often be found answering questions about Pandas on Stack Overflow.



    Overview

    Section 1: Learning Pandas

    Lecture 1 The Course Overview

    Lecture 2 Installing and Setting Up Python

    Lecture 3 Installing Pandas and Other Dependent Python Modules

    Lecture 4 Setting Up and Using Jupyter Notebooks

    Lecture 5 Importing Data (CSV) into Pandas

    Lecture 6 Exploring the Imported Dataset

    Lecture 7 Manipulating and Reshaping the Dataset

    Lecture 8 Handling Missing Data in Pandas

    Lecture 9 Analyzing the Imported Dataset

    Lecture 10 Using Pandas and Matplotlib to Draw Plots and Charts

    Lecture 11 Drawing Bar Charts

    Lecture 12 Making Histograms

    Lecture 13 Drawing Box Plots

    Lecture 14 Drawing Some Other Kinds of Plots with Matplotlib

    Lecture 15 Exporting Transformed and Processed Data Out of Pandas

    Lecture 16 Exporting to Some Popular File Formats

    Lecture 17 Exporting to SQL-Based Databases

    Section 2: Data Analysis and Exploration with Pandas

    Lecture 18 The Course Overview

    Lecture 19 Dissecting the Anatomy of a DataFrame

    Lecture 20 Accessing the Main DataFrame Components

    Lecture 21 Understanding Data Types

    Lecture 22 Selecting a Single Column of Data as a Series

    Lecture 23 Calling Series Methods

    Lecture 24 Working with Operators on a Series

    Lecture 25 Chaining Series Methods Together

    Lecture 26 Making the Index Meaningful

    Lecture 27 Renaming Row and Column Names

    Lecture 28 Creating and Deleting Columns

    Lecture 29 Selecting Multiple DataFrame Columns

    Lecture 30 Selecting Columns with Methods

    Lecture 31 Ordering Column Names Sensibly

    Lecture 32 Operating on the Entire DataFrame

    Lecture 33 Chaining DataFrame Methods Together

    Lecture 34 Working with Operators on a DataFrame

    Lecture 35 Comparing Missing Values

    Lecture 36 Transposing the Direction of a DataFrame Operation

    Lecture 37 Determining College Campus Diversity

    Lecture 38 Developing a Data Analysis Routine

    Lecture 39 Reducing Memory by Changing Data Types

    Lecture 40 Selecting the Smallest of the Largest

    Lecture 41 Selecting the Largest of Each Group by Sorting

    Lecture 42 Replicating nlargest with sort_values

    Lecture 43 Selecting Series Data

    Lecture 44 Selecting DataFrame Rows

    Lecture 45 Selecting DataFrame Rows and Columns Simultaneously

    Lecture 46 Selecting Data with Both Integers and Labels

    Lecture 47 Speeding Up Scalar Selection

    Lecture 48 Slicing Rows Lazily

    Lecture 49 Slicing Lexicographically

    Lecture 50 Calculating Boolean Statistics

    Lecture 51 Calculating Boolean Statistics

    Lecture 52 Filtering with Boolean Indexing

    Lecture 53 Replicating Boolean Indexing with Index Selection

    Lecture 54 Selecting with Unique and Sorted Indexes

    Lecture 55 Gaining Perspective on Stock Prices

    Lecture 56 Translating SQL WHERE Clauses

    Lecture 57 Determining the Normality of Stock Market Returns

    Lecture 58 Improving Readability of Boolean Indexing with the Query Method

    Lecture 59 Preserving Series with the WHERE Method

    Lecture 60 Preserving Series with the WHERE Method

    Lecture 61 Preserving Series with the WHERE Method

    Lecture 62 Examining the Index Object

    Lecture 63 Producing Cartesian Products

    Lecture 64 Exploding Indexes

    Lecture 65 Filling Values with Unequal Indexes

    Lecture 66 Appending Columns from Different DataFrames

    Lecture 67 Highlighting the Maximum Value from Each Column

    Lecture 68 Replicating idxmax with Method Chaining

    Lecture 69 Finding the Most Common Maximum

    Lecture 70 Defining an Aggregation

    Lecture 71 Grouping and Aggregating with Multiple Columns and Functions

    Lecture 72 Removing the MultiIndex After Grouping

    Lecture 73 Customizing an Aggregation Function

    Lecture 74 Customizing Aggregating Functions with *args and **kwargs

    Lecture 75 Examining the groupby Object

    Lecture 76 Filtering for States with a Minority Majority

    Lecture 77 Transforming through a Weight Loss Bet

    Lecture 78 Calculating Weighted Mean SAT Scores Per State with Apply

    Lecture 79 Grouping By Continuous Variables

    Lecture 80 Counting the Total Number of Flights Between Cities

    Lecture 81 Finding the Longest Streak of On-Time Flights

    Lecture 82 Tidying Variable Values as Column Names with Stack

    Lecture 83 Tidying Variable Values as Column Names with Melt

    Lecture 84 Stacking Multiple Groups of Variables Simultaneously

    Lecture 85 Inverting Stacked Data

    Lecture 86 Unstacking After a groupby Aggregation

    Lecture 87 Replicating pivot_table with a groupby Aggregation

    Lecture 88 Renaming Axis Levels for Easy Reshaping

    Lecture 89 Tidying When Multiple Variables are Stored as Column Names

    Lecture 90 Tidying When Multiple Variables are Stored as Column Values

    Lecture 91 Tidying When Two or More Values are Stored in the Same Cell

    Lecture 92 Tidying When Variables are Stored in Column Names and Values

    Lecture 93 Tidying When Multiple Observational Units are Stored in the Same Table

    Lecture 94 Appending New Rows to DataFrames

    Lecture 95 Concatenating Multiple DataFrames Together

    Lecture 96 Comparing President Trump's and Obama's Approval Ratings

    Lecture 97 Understanding the Differences Between concat, join, and merge

    Lecture 98 Connecting to SQL Databases

    Section 3: Advanced Techniques for Exploring Data Sets with Pandas

    Lecture 99 The Course Overview

    Lecture 100 Using Advanced Options While Reading Data from CSV Files

    Lecture 101 Reading Data from Excel Files

    Lecture 102 Reading Data from Some Other Popular Formats

    Lecture 103 Using Pandas Series Data Structure to Select a Subset of the Data

    Lecture 104 Selecting Multiple Rows and Columns from a Pandas DataFrame

    Lecture 105 Sorting a Pandas DataFrame or a Series

    Lecture 106 Filtering Rows of a Pandas DataFrame by Column Value

    Lecture 107 Applying Multiple Filter Criteria to a Pandas DataFrame

    Lecture 108 Using the "axis" Parameter in Pandas

    Lecture 109 Using String Methods in Pandas

    Lecture 110 Changing the Data Type of a Pandas Series

    Lecture 111 Modifying a Pandas DataFrame “inplace”

    Lecture 112 Using the "groupby" Method

    Lecture 113 Handling Missing Values in Pandas

    Lecture 114 Indexing in Pandas DataFrames

    Lecture 115 Indexing in Pandas DataFrames

    Lecture 116 Removing Columns from a Pandas DataFrame

    Lecture 117 Working with Dates and Times Data

    Lecture 118 Handling SettingWithCopyWarning

    Lecture 119 Applying a Function to a Pandas Series or DataFrame

    Lecture 120 Merging and Concatenating Multiple DataFrames into One

    Lecture 121 Controlling Plot Aesthetics

    Lecture 122 Choosing the Colors for the Plots

    Lecture 123 Plotting Categorical Data

    Lecture 124 Plotting with Data Aware Grids

    Budding data scientist looking to learn the popular Pandas library, or a Python developer looking to step into the world of data analysis, this video is the ideal resource you need to get started. This course is for data scientists, analysts, and Python developers who wish to explore data analysis and scientific computing in a practical, hands-on manner.,Both novice and advanced users, and contain helpful tips, tricks, and caveats wherever necessary.