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    Introduction to Data Analytics with Microsoft Excel

    Posted By: lucky_aut
    Introduction to Data Analytics with Microsoft Excel

    Introduction to Data Analytics with Microsoft Excel
    Duration: 3h 33m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 3.33 GB
    Genre: eLearning | Language: English

    Master data analysis through Excel with advanced hands on practical training

    What you'll learn:
    What is Data Analytics & Why is it so Important
    Why Do We Need Analytics? What's Changed?
    How to Find Appropriate Datasets to work with
    How to Analyse you Data
    The importance of Mean, Mode, Median and Range of Data
    What is the difference between Normal and Non Normal Data
    How to create a histogram
    How to find and remove outliers
    Understand what is a standard deviation and relative standard deviation
    Understand the Difference Between a Run and a Control Chart?
    The basics of working with pivot tables
    Starting to Tell Our Analytical Story
    How to Visualize our data
    How to Present You data and bring the story together

    Requirements:
    This course is designed for complete beginners, there is no requirements or prerequisites

    Description:
    Requirements
    Microsoft Office 365 or Excel 2010 - 2019
    Mac users Pivot Visuals may look slightly different to the examples shown
    Basic experience with Excel functionality is a bonus but not required
    Description
    Welcome to the world of Data Analytics, voted the sexiest job of the 21st Century.
    In this expertly crafted course, we will cover a complete introduction to data analytics using Microsoft Excel, you will cover the concepts, the value and practically apply core analytical skills to turn data into insight and present as a story.
    Look at this as the first step in becoming a fully-fledged Data Scientist

    Course Outline
    The course covers each of the following topics in detail, with datasets, templates and 17 practical activities to walk through step by step:What is Data Analytics
    Why Do We Need It in this new world
    Thinking about Data, how it works in the lad v how it works in the wild
    Qualitative v Quantitative data and their importance
    Finding Your Data
    How to find Sources of Data and what they contain
    Reviewing the Dataset and getting hands on
    Analysing Your Data
    Mean, Modes, Median and Range
    Normal and Non normal Data and its impacts to predictability
    What is an Outlier in our data and how do we remove
    Distribution and Histograms and why they are important
    Standard Deviation and Relative Standard Deviation, why variance is the enemy
    What are Run and Control charts and what do they tell us?

    Working With Pivot Tables
    How the Pivot Builder Works
    Setting Our Headers
    Working with calculated fields
    Sorting and Filtering
    Transforming Data with Pivot Tables

    Data Engineering
    How to create new, insightful datasets
    The importance of balanced data
    Looking at Quality, Cost and Delivery together

    Start Telling Our Analytical Story
    What is your data telling?
    Ask Yourself Questions
    Transforming Data into Information

    Visualizing Your Data
    Levels of Reporting
    What Chart to Use
    Does Color Matter
    Let's Visualize Some Data

    Presenting Your Data
    Bringing The Story Together with a Narrative

    Practical Activities
    We will cover the following practical activities in detail through this course:
    Practical Example 1 - Mean, Mode, Median, Range & Normality
    Practical Example 2 - Distribution and Histograms
    Practical Example 3 - Standard Deviation and Relative Standard Deviation
    Practical Example 4 - A Little Data Engineering
    Practical Example 5 - Creating a Run Chart
    Practical Example 6 - Create a Control Chart
    Practical Example 7 - Create a Summary Pivot of Our Claims Data
    Practical Example 8 - Transforming Data
    Practical Example 9 - Calculated Fields, Sorting and Filtering
    Practical Example 10 - Lets Engineer Some QCD Data
    Practical Example 11 - Lets Answer Our Analytical Questions with Pivots
    Practical Example 12 - Visualizing Our Data
    Practical Example 13 - Lets Pull our Strategic Level Analysis Together
    Practical Example 14 - Lets Pull our Tactical Level Analysis Together
    Practical Example 15 - Lets Pull our Operational Level Analysis Together
    Practical Example 16 - Lets Add Our Key Findings
    Practical Example 17 - Lets Add Our Recommendations
    Who this course is for:
    Anyone who works with Excel on a regular basis and wants to supercharge their skills
    Excel users who have basic skills but would like to become more proficient in data exploration and analysis
    Students looking for a comprehensive, engaging, and highly interactive approach to training
    Anyone looking to pursue a career in data analysis or business intelligence

    Who this course is for:
    Complete Beginners

    More Info

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