📈 Data Analysis & Visualisation Portfolio
Microsoft Excel
This README provides an overview of the Excel-based data analysis projects contained within this repository.
Objective: Analysed retail sales data to uncover patterns and demonstrate core Excel data handling, formula application, and summarisation skills.
Key Activities & Skills Demonstrated:
- Data Structuring & Initial Cleaning: Organised raw data into
Excel Tables
; AppliedFilters
andSorting
(e.g., sorting customers by Age). - Core Calculations & Logic: Calculated metrics using
SUM
andAVERAGE
(e.g., commissions); UsedSWITCH
withAND
logic for categorisation (e.g., sales volume tiers). - Data Retrieval & Joining (Deeper Dive): (User mentioned - include if applicable) Leveraged
VLOOKUP
/XLOOKUP
to integrate data; UsedCONCATENATE
(or&
) for combining text fields. - Summarisation with Pivot Tables: Created
Pivot Tables
to aggregate sales data across dimensions (Product Category, Customer Generation, Gender).
Objective: Analysed student scores to identify top performers and demonstrate targeted formula application and conditional formatting.
Key Activities & Skills Demonstrated:
- Performance Calculation: Used
AVERAGE
to calculate overall student scores. - Identifying Top Scores: Applied the
MAX
function to find the highest scores overall. - Advanced Filtering/Formula: Used
Filters
&Sorting
and advanced formulas (likeFILTER
,TEXTJOIN
as shown in workbook examples) to identify top students per subject. - Visual Highlighting: Employed
Conditional Formatting
to visually distinguish highest and lowest average scores.
Objective: Analysed tech shop sales data for various English counties, summarising performance and categorising sales volume using logical functions.
Key Activities & Skills Demonstrated:
- Created
Pivot Tables
to summarise sales volume by County and Product. - Applied the
SWITCH
function, incorporatingAND
logic, to accurately categorise sales volume into "High", "Medium", and "Low" tiers based on specified thresholds.
Objective: Analysed detailed bike sales data to understand profitability drivers and market performance, then visualised key findings effectively.
Key Activities & Skills Demonstrated:
- Advanced Pivot Table Analysis: Built
Pivot Tables
for multi-dimensional analysis (Profit/Sales by Age Group, Gender, Country); Cleaned data within analysis (TRIM
,PROPER
); Used functions (COUNTA
,IF
,MAX
) withPivot Table
results for deeper insights; AppliedConditional Formatting
to highlight keyPivot Table
results. - Data Visualisation for Impact: Created and formatted
Line Charts
(Revenue vs. Profit trends),Stacked Column Charts
(Product Revenue by Country), andPie Charts
(Revenue by Age Group); Applied best-practiceChart Formatting
(titles, labels, legends, number formats).
- Data Prep & Handling:
Tables
,Filtering
,Sorting
, Cleaning Functions (TRIM
,PROPER
). - Formulas & Logic:
SUM
,AVERAGE
,MAX
,IF
,SWITCH
,AND
,COUNTA
,VLOOKUP
/XLOOKUP
,CONCATENATE
,FILTER
,TEXTJOIN
). - Analysis Engine:
Pivot Tables
for multi-dimensional summaries and insights. - Visualisation: Creating and refining
Line Charts
,Column Charts
, andPie Charts
for clear communication. - Presentation:
Conditional Formatting
, logical workbook structure.
🧑💻 Created by tunjis
- 🌍 Based in London
- 🖥️ See my portfolio at Data’s the new oil. I’m the refinery.
- 📫 Contact me via my LinkedIn profile
- 🧠 Learning Data Science
- 🤝 Open to collaborating on interesting projects
- ⚡ AI enthusiast
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