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Project: 2
Problem Statement- 1
Objective- Data Transformations
Use Case - Design a dashboard to analyze the trend of admissions into state universities.
Source - USA State University Admissions Analytics - Use Query Editor to perform data modeling by
apply transformations like
1. Append Data
2. Split Data
3. Column Formatting
4. Fill Columns
5. Transpose Table
6. Pivot / Un Pivot
7. Merge Join
8. Conditional Columns
9. Index Columns
10. Summary Tables
Problem Statement- 2
Objective - Advanced Visualizations.
Use Case - Design a dashboard to analyze the trend of admissions into state universities.
Source - USA State University Admissions Analytics - Use expressions and filters to build custom
visualizations Dashboard - Applications Analysis
1. Total Applications vs. Target Trend by State
2. Total Application by State Geo Dashboard
3. Tabular presentation of universities and funds
4. % of Applications by Race
Dashboard - Universities Analysis
5. Top 10 Universities by Applications
6. Top 10 Universities by Applications with and without Special Grants
7. Bottom 10 Universities by Applications
8. % of Applications Vs Universities Fund Allocations
Problem Statement- 3
Use Case - Top Down and Bottoms Up Analysis to identify Shipping Costs Leakages
Source - Superstore sales
Analytics - Build a set of visualizations to identify underlying outliers and flip same set of
visualizations to perform bottom-up analysis.
Top-Down Analysis
1. Shipping Costs by Order Priority - Bar Chart
2. Shipping Costs by Shipping Mode - Funnel Chart
3. Shipping Costs by Customers - Scatter Plot
4. Transactional view of underlying data Bottom-Up Analysis
1. Duplicate above dashboard and change interactions
2. Replace Transactional View Donut and Scatter Plot with Tree map

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project 02.pdf

  • 1. Project: 2 Problem Statement- 1 Objective- Data Transformations Use Case - Design a dashboard to analyze the trend of admissions into state universities. Source - USA State University Admissions Analytics - Use Query Editor to perform data modeling by apply transformations like 1. Append Data 2. Split Data 3. Column Formatting 4. Fill Columns 5. Transpose Table 6. Pivot / Un Pivot 7. Merge Join 8. Conditional Columns 9. Index Columns 10. Summary Tables Problem Statement- 2 Objective - Advanced Visualizations. Use Case - Design a dashboard to analyze the trend of admissions into state universities. Source - USA State University Admissions Analytics - Use expressions and filters to build custom visualizations Dashboard - Applications Analysis 1. Total Applications vs. Target Trend by State 2. Total Application by State Geo Dashboard 3. Tabular presentation of universities and funds 4. % of Applications by Race Dashboard - Universities Analysis 5. Top 10 Universities by Applications 6. Top 10 Universities by Applications with and without Special Grants 7. Bottom 10 Universities by Applications 8. % of Applications Vs Universities Fund Allocations
  • 2. Problem Statement- 3 Use Case - Top Down and Bottoms Up Analysis to identify Shipping Costs Leakages Source - Superstore sales Analytics - Build a set of visualizations to identify underlying outliers and flip same set of visualizations to perform bottom-up analysis. Top-Down Analysis 1. Shipping Costs by Order Priority - Bar Chart 2. Shipping Costs by Shipping Mode - Funnel Chart 3. Shipping Costs by Customers - Scatter Plot 4. Transactional view of underlying data Bottom-Up Analysis 1. Duplicate above dashboard and change interactions 2. Replace Transactional View Donut and Scatter Plot with Tree map