Data Analysts Toolbox: Excel, Python, Power Bi, Pivottables
Last updated 8/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 12.56 GB | Duration: 27h 10m
Last updated 8/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 12.56 GB | Duration: 27h 10m
Learn Advanced Pivot Tables, Power Query, Power Pivot, Power BI, and Python in this four-course bundle
What you'll learn
How to create amazing looking dashboards using Pivot Tables
Advanced data analysis techniques
How to do a PivotTable (a quick refresher)
How to format a PivotTable, including adjusting styles
Advanced Sorting and Filtering in PivotTables
How to use 3D Maps from a PivotTable
How to update your data in a PivotTable and Pivot Chart
Advanced Sorting and Filtering in PivotTables
Analyze huge buckets of data to make informed business decisions
Become confident cleaning, sorting and linking data from various sources
How to create stunning, interactive dashboards with Power BI
How to share your analysis and dashboards using Power BI Online
To import CSV and Excel files into Power BI Desktop
All about DAX including using the COUTROWS, CALCULATE, and SAMEPERIODLASTYEAR functions
All about using the card visual to create summary information
How to create amazing visuals, such as clustered column charts, maps, and trend graphs
How to use Slicers to filter your reports
How to edit the interactions between your visualizations and filter at visualization, page, and report level
Put their skills into practice with a real Python project
What is Python and why was it created
How Python fits into the diverse ecosystem of programming languages.
The basic data types in Python - Strings, Integers, Floats, and Boolean
All about Pythons built-in functions
How to debug errors in Python
How Variables and Functions work in Python
How to use IF-Else Statements in Python
All about storing complex data, including Lists and Dictionaries
How to install Python locally
How to write your first script in Python
Requirements
You'll need a copy of Microsoft Excel that is compatible with the Power Pivot tool.
A good understanding of MS Excel. This is an advanced level course.
Power BI Desktop installed on your machine is required to take the practice exercises
A good knowledge of MS Excel is advised but not necessary
Description
In business, being able to understand, harness, and use data is no longer a skill reserved for a handful of well-paid analysts. It's becoming an essential part of many roles.If that sounds daunting, don't worry. There is a growing set of tools designed to make data analysis accessible to everyone, in this huge-value, four-course Data Analysts Toolbox bundle we look in detail at three of those tools: Excel, Python, and Power BI. In isolation Excel, Python, and Power BI are useful and powerful. Learn all three and you are well on your way to gaining a much deeper understanding of how to perform complex data analysis.This Data Analysts Toolbox bundle is aimed at intermediate Excel users who are new to Python and Power BI. All courses include practice exercises so you can put into practice exactly what you learn.Here's what each course covers:Introduction to PythonThe basic data types in Python - Strings, Integers, Floats, and BooleanAll about Pythons built-in functionsHow Variables and Functions work in PythonHow to debug errors in PythonAll about Python KeywordsHow to use IF-Else Statements in PythonAll about storing complex data, including Lists and DictionariesAll about Python Modules and how to install themHow to install Python locallyHow to write your first script in PythonTo complete your first Python projectAdvanced PivotTablesHow to do a PivotTable (a quick refresher)How to combine data from multiple worksheets for a PivotTableGrouping, ungrouping and dealing with errorsHow to format a PivotTable, including adjusting stylesHow to use the Value Field SettingsAdvanced Sorting and Filtering in PivotTablesHow to use Slicers, Timelines on multiple tablesHow to create a Calculated FieldAll about GETPIVOTDATAHow to create a Pivot Chart and add sparklines and slicersHow to use 3D Maps from a PivotTableHow to update your data in a PivotTable and Pivot ChartAll about Conditional Formatting in a PivotTableHow to create amazing looking dashboardsPower Pivot, Power Query and DAXHow to get started with Power QueryHow to connect Excel to multiple workbooksHow to get data from the web and other sourcesHow to merge and append queries using Power QueryHow the Power Pivot window worksHow to set up and manage relationships in a data modelHow to create a PivotTable to display your data from the Power Pivot data modelHow to add calculated columns using DAXHow to use functions such as CALCULATE, DIVIDE, DATESYTD in DAXAll about creating Pivot Charts and PivotTables and using your data modelHow to use slicers to adjust the data you displayPower BIWhat is Power BI and why you should be using it.To import CSV and Excel files into Power BI Desktop.How to use Merge Queries to fetch data from other queries.How to create relationships between the different tables of the data model.All about DAX including using the COUTROWS, CALCULATE, and SAMEPERIODLASTYEAR functions.All about using the card visual to create summary information.How to use other visuals such as clustered column charts, maps, and trend graphs.How to use Slicers to filter your reports.How to use themes to format your reports quickly and consistently.How to edit the interactions between your visualizations and filter at visualization, page, and report level.***Exercise and demo files and project files included***This mega-value bundle includes:21+ hours of video tutorials200+ individual video lecturesExercise files to practice what you learnedCertificate of completionHere’s what our students are saying…"The instructors have explained everything amazing and the resources are super helpful."- Oscar"This course is very relevant in my line of work. The facilitators are detailed in their explanation & don't rush through the information."- Thulani"My name is Kenvis and I have a knowledge in IT but never thought of specializing in Data Analytics before. This was so exciting and I am now anxious to learn more."- Kenvis"Thank you for such a wonderful teaching. This is a great learning experience for me."- Ankush
Overview
Section 1: Advanced PivotTables: Introduction
Lecture 1 Introduction to Advanced PivotTables
Lecture 2 WATCH ME: Essential Information for a Successful Training Experience
Lecture 3 DOWNLOAD ME: Course Exercise Files
Lecture 4 DOWNLOAD ME: Course Support Files
Lecture 5 PivotTables Recap
Section 2: Advanced PivotTable: Importing Data
Lecture 6 Importing data from a text file
Lecture 7 Importing data from Access
Lecture 8 Exercise 01
Section 3: Advanced PivotTable: Preparing Data for Analysis
Lecture 9 Cleaning Data
Lecture 10 Tabular Data
Lecture 11 Exercise 02
Section 4: Advanced PivotTable: Creating and Manipulating PivotTables
Lecture 12 Creating and Manipulating a PivotTable
Lecture 13 Combining Data from Multiple Worksheets
Lecture 14 Grouping and Ungrouping
Lecture 15 Report Layouts
Lecture 16 Formatting Error Values and Empty Cells
Lecture 17 Exercise 03
Section 5: Advanced PivotTables: Formatting PivotTables
Lecture 18 PivotTable Styles
Lecture 19 Custom Number Formatting
Lecture 20 Exercise 04
Section 6: Advanced PivotTables: Value Field Settings
Lecture 21 Summarizing Values
Lecture 22 Show Values As
Lecture 23 Exercise 05
Section 7: Advanced PivotTables: Sorting and Filtering
Lecture 24 Advanced Sorting
Lecture 25 Advanced Filtering
Lecture 26 Exercise 06
Section 8: Advanced PivotTables: Interacting with PivotTables
Lecture 27 Inserting and formatting Slicers
Lecture 28 Inserting and formatting Timelines
Lecture 29 Connecting Slicers to multiple PivotTables
Lecture 30 Using Slicers in Protected Workbooks
Lecture 31 Exercise 07
Section 9: Advanced PivotTables: Calculations
Lecture 32 Creating a Calculated Field
Lecture 33 Creating a Calculated Item
Lecture 34 Solve Order and List Formulas
Lecture 35 GETPIVOTDATA
Lecture 36 Exercise 08
Section 10: Advanced PivotTables: Pivot Charts
Lecture 37 Creating a Pivot Chart
Lecture 38 Formatting a Pivot Chart - Part 1
Lecture 39 Formatting a Pivot Chart - Part 2
Lecture 40 Creating a Map Chart using Pivot Data
Lecture 41 Dynamic Chart Titles
Lecture 42 Include a Sparkline with your PivotTable
Lecture 43 Exercise 09
Section 11: Advanced PivotTables: Conditional Formatting
Lecture 44 Highlighting Cell Rules
Lecture 45 Graphical Conditional Formats
Lecture 46 Conditional Formatting and Slicers
Lecture 47 Exercise 10
Section 12: Advanced PivotTables: Dashboards
Lecture 48 Creating an Interactive Dashboard - Part 1
Lecture 49 Creating an Interactive Dashboard - Part 2
Lecture 50 Updating Pivot Charts and PivotTables
Lecture 51 Exercise 11
Section 13: Course Close
Lecture 52 Course Close
Section 14: Introduction to PowerPivot and PowerQuery
Lecture 53 Welcome and Overview
Lecture 54 WATCH ME: Essential Information for a Successful Training Experience
Lecture 55 DOWNLOAD ME: Course Exercise Files
Lecture 56 DOWNLOAD ME: Course Demo Files
Lecture 57 What is Power Query?
Lecture 58 What is Power Pivot?
Section 15: Getting Started with Power Query
Lecture 59 Exploring the Power Query Editor
Lecture 60 Common Power Query Transformations
Lecture 61 Editing an Existing Query
Lecture 62 Import Multiple Files from a Folder
Lecture 63 Connect to Data in Another Excel Workbook
Lecture 64 IMPORTANT: Checking the Location of your Query's Source
Lecture 65 Get Data From the Web
Lecture 66 Practise Exercise
Section 16: Useful Power Query Features
Lecture 67 Unpivoting Columns
Lecture 68 Combine Data from Multiple Tables with Merge Queries
Lecture 69 Use Merge Queries to Compare Two Tables
Lecture 70 Stack Data into One Table with Append Queries
Lecture 71 Duplicating and Referencing Queries
Lecture 72 Grouping and Aggregating Data
Lecture 73 Conditional Columns in Power Query
Lecture 74 Practise Exercise
Section 17: Creating the Data Model
Lecture 75 Enable the Power Pivot Add-In
Lecture 76 Understanding the Power Pivot Window
Lecture 77 Creating Relationships Between Tables
Lecture 78 Managing the Relationships of the Model
Lecture 79 Creating a PivotTable from the Data Model
Lecture 80 Hide Fields from Client Tools
Lecture 81 Grouping Queries
Lecture 82 Practise Exercise
Section 18: Introduction to DAX
Lecture 83 Why use DAX?
Lecture 84 Creating Calculated Columns with DAX
Lecture 85 Creating your First DAX Measure
Lecture 86 The COUNTROWS Function
Lecture 87 SUMX and RELATED Functions
Lecture 88 Practise Exercise
Section 19: More DAX Measures
Lecture 89 Create a Date Table in Power Pivot
Lecture 90 The CALCULATE Function
Lecture 91 The DIVIDE Function
Lecture 92 Using the DATESYTD Function
Lecture 93 Calculate the Percentage of a Total
Lecture 94 Practise Exercise
Section 20: Using PivotTables and Slicers
Lecture 95 Create PivotTables and PivotCharts
Lecture 96 Using Slicers with your PivotTables
Lecture 97 Create a Top 10 PivotTable
Lecture 98 Practise Exercise
Section 21: PowerPivot, PowerQuery and Dax: Closing
Lecture 99 Wrap Up
Section 22: Introduction to Power BI
Lecture 100 Welcome and Overview
Lecture 101 WATCH ME: Essential Information for a Successful Training Experience
Lecture 102 DOWNLOAD ME: Course Exercise File
Lecture 103 Downloadable Course Transcript
Lecture 104 What is Power BI?
Lecture 105 Install Power BI Desktop
Lecture 106 A Tour of BI Desktop
Lecture 107 Explore Commonly Used Power BI Options
Section 23: PowerBI: Getting and Transforming Data
Lecture 108 Import Files from a Folder into Power BI Desktop
Lecture 109 Get Data from Excel and Text Files
Lecture 110 Changing Query Course
Lecture 111 Reference Queries to Create Additional Lookup Tables
Lecture 112 Merge Queries in Power Query
Lecture 113 Prevent Queries from Loading into Power BI Desktop
Lecture 114 Practise Exercise
Section 24: Power BI: Data Modelling
Lecture 115 Create Relationships Between Tables
Lecture 116 Create a Dynamic List of Dates
Lecture 117 Create Additional Date Columns for Analysis
Lecture 118 Sort the Month and Weekday Names Correctly
Lecture 119 Mark the Table as a Date Table
Lecture 120 Hide Unnecessary Fields from Report View
Lecture 121 Practise Exercise
Section 25: Introduction to DAX Measures
Lecture 122 Calculate the Total Revenue
Lecture 123 Count the Total Rows of a Table
Lecture 124 Use the CALCULATE Function
Lecture 125 Calculate the Total Revenue Last Year
Lecture 126 Difference Compared to Last Year
Lecture 127 Practise Exercise
Section 26: Power BI: Adding Visualizations to your Report
Lecture 128 Show Summary Information with Cards
Lecture 129 Columns Charts to Compare Values
Lecture 130 Map Visual to Plot Geographic Data
Lecture 131 Slicers to Filter your Reports
Lecture 132 KPI Card to Measure Performance Against a Goal
Lecture 133 Line Graphs to Visualise Trend
Lecture 134 Show Detail with the Matrix
Lecture 135 Top N Lists with the Table Visualisation
Lecture 136 Practise Exercise
Section 27: Power BI: Report Design
Lecture 137 Adding Text Boxes and Shapes
Lecture 138 Use Themes
Lecture 139 Conditional Formatting
Lecture 140 Practise Exercise
Section 28: Power BI: Editing Interactions and Filters
Lecture 141 Edit the Interactions between your Visualisations
Lecture 142 The Filter Pane to Filter at Any Level
Lecture 143 Drill Through to More Detail
Lecture 144 Practise Exercise
Section 29: Power BI Service
Lecture 145 Publish Your Report to the Power BI Service
Lecture 146 Different Ways to Share your Power BI Report
Lecture 147 Practise Exercise
Section 30: Closing
Lecture 148 Wrap Up
Section 31: Python: The Workplace Tech Divide
Lecture 149 Which Side of the Divide Are You On?
Lecture 150 WATCH ME: Essential Information for a Successful Training Experience
Lecture 151 DOWNLOAD ME: Course Exercise Files
Lecture 152 DOWNLOAD ME: Course Project Files
Lecture 153 Beginners Are Welcome
Lecture 154 Course Overview
Section 32: Introduction to Python
Lecture 155 What is Python?
Lecture 156 Python's Comparison to Other Programming Languages
Lecture 157 Examples of Python in the Workplace
Lecture 158 The Easiest Place to Practice Python
Lecture 159 Create an Account Online
Section 33: Python: Basic Data Types
Lecture 160 Python Data Types
Lecture 161 Strings
Lecture 162 Integers
Lecture 163 Floats
Lecture 164 Boolean
Lecture 165 Data Types Exercise
Section 34: Python Built-In Functions
Lecture 166 What is a Built-In Function?
Lecture 167 Where to Look For Built-In Functions
Lecture 168 Most Common Built In Functions
Lecture 169 Built In Functions Exercise
Section 35: Variables and Functions
Lecture 170 Variables and Functions
Lecture 171 Storing Values as Variables
Lecture 172 Comparing Variables with Operators
Lecture 173 Basic Expressions
Lecture 174 Functions
Lecture 175 Commenting
Lecture 176 Variables and Functions Exercise
Section 36: Errors and Debugging
Lecture 177 What is an Error?
Lecture 178 Reading a Stack Trace
Lecture 179 Print Function
Lecture 180 Try and Except
Lecture 181 You Are Not Alone
Lecture 182 Errors Exercise
Section 37: Python Keywords
Lecture 183 Python Keywords
Lecture 184 Common Keywords
Lecture 185 Global
Lecture 186 Keywords Exercise
Section 38: If-Else Statements
Lecture 187 Basic Logic
Lecture 188 Syntax and Inline Evaluation
Lecture 189 Value Evaluation
Lecture 190 Complex If-Else Statements
Lecture 191 If-Else Exercises
Section 39: Storing Complex Data
Lecture 192 Advanced Data Types
Lecture 193 Lists
Lecture 194 Dictionaries
Lecture 195 Looping: Lists
Lecture 196 Looping: Dictionaries
Lecture 197 Advanced Data Exercise
Section 40: Python Modules
Lecture 198 Python Modules
Lecture 199 Python Built In Modules
Lecture 200 Importing Modules
Section 41: Installing Python and Modules
Lecture 201 Python Environments
Lecture 202 Mac
Lecture 203 Windows
Lecture 204 IDEs
Lecture 205 Python Idle
Lecture 206 Managing files and folders
Lecture 207 Executing Scripts
Lecture 208 PIP
Section 42: Project: Automate Data Updates For a Spreadsheet
Lecture 209 Project Introduction
Lecture 210 Setting Up Project
Lecture 211 Reading and Writing to Excel Files
Lecture 212 Working with CSV Files
Lecture 213 Dynamic File Paths
Lecture 214 Transform and Validate Transactions
Lecture 215 Transfer and Save Transactions
Lecture 216 Clean Up the Code
Lecture 217 Hardening the Script
Section 43: Course Close
Lecture 218 What's Next?
Section 44: Introduction to Alteryx for Beginners
Lecture 219 Introduction
Lecture 220 WATCH ME: Essential Information for a Successful Training Experience
Lecture 221 Course Instructor Files
Lecture 222 Alteryx Essentials
Lecture 223 Data Types 101
Lecture 224 Getting Started with the Alteryx Designer
Lecture 225 Building a Workflow in Designer
Lecture 226 The Favorites Tools
Section 45: Alteryx: Data Blend & Prep
Lecture 227 Data filtering for Beginners
Lecture 228 Intro to Alteryx for Excel Users
Lecture 229 Alteryx for the SQL Analyst
Lecture 230 Introduction to Basic Functions - Part 1
Lecture 231 Introduction to Basic Functions - Part 2
Lecture 232 Introduction to Basic Functions - Part 3
Section 46: Alteryx: Data Parsing
Lecture 233 Basic Parsing Methods
Lecture 234 Basic Parsing Methods w/ Dynamic Renaming
Lecture 235 Basic Vlookup and Append
Lecture 236 Working on Multiple Fields in Alteryx
Lecture 237 Build an Alteryx Workflow
Lecture 238 Basic Tips and Tricks
Section 47: Reporting
Lecture 239 Alteryx Best Practices - Visualizing Data
Lecture 240 Alteryx Best Practices - Visualizing Data with Texts and Charts
Lecture 241 Alteryx Best Practices - Layouts and Rendering
Section 48: Alteryx: Analytic Apps
Lecture 242 Introduction to Analytic Apps
Lecture 243 Introduction to Macros
Section 49: Alteryx: Spatial Data Analysis
Lecture 244 Intro to Data Analysis - Working Spatial Data
Lecture 245 Intro to Data Analysis - Measuring
Lecture 246 Intro to Data Analysis - Spatial Objects
Section 50: Alteryx: Analytics
Lecture 247 Introduction to Analytics
Lecture 248 Introduction to K-Centroid Clustering
Lecture 249 Introduction to K-Nearest Neighbor
Lecture 250 Introduction to Market Basket Analysis
Lecture 251 Introduction to Logistic Regression Analysis
Lecture 252 Introduction to Linear Regression Analysis
Lecture 253 Introduction to Tree-based Models Part 1
Lecture 254 Introduction to Tree-based Models Part 2
Section 51: Course Close
Lecture 255 Course Close
Advanced Excel Users,People looking to learn the Python Programming Language