This repository showcases my journey through the Meta Data Analyst Professional Certificate program. It contains comprehensive projects, assignments, and labs across 8 courses, demonstrating proficiency in data analysis, statistical modeling, data visualization, and business intelligence using Meta's industry-relevant curriculum.
- Skills: Data Analytics Foundations, OSEMN Framework, Business Intelligence
- Tools: Spreadsheets, Data Analysis Frameworks
- Key Projects:
- π OSEMN Framework Application: Complete data analysis workflow
- π Data Analytics vs Data Science: Comparative analysis
- π€ Generative AI Overview: AI applications in analytics
- Notable Files:
OSEMN_Framework.py- Structured data analysis methodologyData_Analysis_vs_Data_Science.py- Career path analysisGenerative_AI_Response.py- AI-powered analytics techniques
- Skills: Advanced Spreadsheets, SQL Queries, Dashboard Creation
- Tools: Google Sheets, SQL, Tableau
- Key Projects:
- πͺ Most Profitable Stores Analysis - Retail performance optimization
- π Advanced Chart Types Implementation - Professional visualizations
- π Data Exploration Techniques - Pattern discovery methods
- Tableau Dashboards:
Most_Profitable_Stores.twb- Business performance trackingGlobal_Orders.twb- International sales analysis- Interactive dashboards with drill-down capabilities
- Skills: Python Programming, Data Wrangling, Statistical Analysis
- Tools: Pandas, NumPy, Matplotlib, Jupyter Notebooks
- Key Projects:
- π Full OSEMN Implementation - End-to-end Python analysis pipeline
- π Explanatory Visualizations - Professional chart creation
- π€ Modeling with Python - Predictive analytics
- Jupyter Notebooks:
Full_OSEMN.ipynb- Complete analysis workflowCreating_Explanatory_Visualizations.ipynb- Advanced plottingModeling_with_Python.ipynb- Machine learning basicsExploration_-_Filtering_Data.ipynb- Data manipulation techniques
- Skills: Statistical Analysis, Hypothesis Testing, Data Modeling
- Tools: Python, Excel, Statistical Libraries
- Key Projects:
- π― Getting to Know the Data - Descriptive statistics and EDA
- π Understanding Data Samples - Sampling techniques and distributions
- π¬ Testing Your Hypothesis - A/B testing and statistical significance
- ποΈ Data Modeling - Regression and predictive modeling
- Capstone Modules:
- Complete statistical analysis workflow
- Real-world dataset applications
- Professional reporting and visualization
- Skills: Data Governance, Security, Storage Solutions
- Tools: Database Systems, Data Security Frameworks
- Key Topics:
- π Data Security Fundamentals - Protection and compliance
- π¦ Data Storage Formats - Optimization and selection
- ποΈ Big Data Management Systems - Scalable solutions
- π Data Collection Tools - Best practices and implementation
- Comprehensive Guides:
Compliance_Best_Practices.py- Regulatory complianceData_Storage_Formats.py- File format comparisonsMachine_Learning_Tools_Roundup.py- ML infrastructure
- Skills: Dashboard Design, Interactive Visualizations, Business Intelligence
- Tools: Tableau, Advanced Charting Techniques
- Key Projects:
- π Time Series Analysis - Trend identification and forecasting
- π₯ Cluster Analysis - Customer segmentation techniques
- π Advanced Dashboard Creation - Professional reporting
- Tableau Workbooks:
Time_Series.twb- Temporal data analysisAge_and_Income_-_Cluster_Analysis.twb- Demographic segmentation- Interactive filters and calculated fields
- Skills: Advanced Excel, PivotTables, Business Analytics
- Tools: Microsoft Excel, Statistical Functions
- Key Projects:
- π¬ A/B Testing Analysis - Experimental design and evaluation
- π Data Modeling Capstone - Comprehensive analytics project
- π Business Performance Analysis - KPI tracking and optimization
- Advanced Features:
- Advanced formulas and functions
- PivotTables with dynamic ranges
- Data validation and conditional formatting
- Skills: End-to-End Analysis, Business Insights, Presentation
- Tools: Full Analytics Toolkit Integration
- Project Components:
- π₯ Data Acquisition - Multiple source integration
- π§Ή Data Preparation - Cleaning and transformation
- π Exploratory Analysis - Pattern discovery and insight generation
- π Visualization Development - Dashboard and report creation
- π€ Business Presentation - Stakeholder communication
π Meta-Data-Analyst-Portfolio/
β
βββ π Data_Analysis_with_Spreadsheets_and_SQL/
β βββ π Tableau_Dashboards/ # Interactive business dashboards
β βββ π Sales_Analysis/ # Profitability and performance
β βββ π Data_Exploration/ # Pattern discovery
β βββ π SQL_Queries/ # Database analysis scripts
β
βββ π Python_Data_Analytics/
β βββ π Jupyter_Notebooks/ # Complete analysis workflows
β β βββ π Exploratory_Data_Analysis/
β β βββ π Data_Visualization/
β β βοΈ π€ Machine_Learning/
β β βοΈ π Statistical_Analysis/
β βοΈ π Python_Scripts/ # Modular analysis scripts
β
βββ π Statistics_Foundations/
β βοΈ π Capstone_Modules/
β β βοΈ π― 1_Getting_to_Know_the_Data/
β β βοΈ π 2_Understanding_Data_Samples/
β β βοΈ π¬ 3_Testing_Your_Hypothesis/
β β βοΈ ποΈ 4_Data_Modeling/
β βοΈ π Statistical_Analysis/ # Hypothesis testing and modeling
β
βββ π Data_Management/
β βοΈ π Security_Compliance/ # Data governance frameworks
β βοΈ π¦ Storage_Solutions/ # Database and file management
β βοΈ ποΈ Infrastructure/ # System architecture
β
βββ π Tableau_Visualizations/
β βοΈ π Business_Dashboards/ # Interactive reports
β βοΈ π Time_Series_Analysis/ # Trend visualization
β βοΈ π₯ Cluster_Analysis/ # Segmentation dashboards
β
βοΈ π Excel_Analytics/
β βοΈ π Advanced_Models/ # Complex data analysis
β βοΈ π¬ A_B_Testing/ # Experimental analysis
β βοΈ π Business_Intelligence/ # KPI tracking
β
βββ π Sample_Data/
β βοΈ π Cleaned_Datasets/ # Analysis-ready data
β βοΈ π Raw_Data/ # Original data sources
β
βββ π LICENSE
βοΈ π requirements.txt
βοΈ π README.md
- Review Capstone Projects: Start with Statistics Foundations modules for complete workflow examples
- Examine Technical Implementation: Check Python notebooks and SQL scripts for coding proficiency
- View Dashboard Outputs: Explore Tableau workbooks and Excel models for visualization skills
- Assess Analytical Thinking: Review hypothesis testing and statistical analysis projects
- Follow Learning Path: Study modules in sequence from foundations to advanced topics
- Replicate Analyses: Use provided datasets and scripts for hands-on practice
- Reference Implementations: Use code as templates for similar analysis projects
# Clone the repository
git clone https://github.com/Willie-Conway/Meta-Data-Analyst.git
# Navigate to specific analysis projects
cd "Meta-Data-Analyst/Statistics Foundations/Capstones/Modules/4 - Data Modeling"
# Open Jupyter notebooks
jupyter notebook "Data Modeling Analysis.ipynb"
# Explore Tableau dashboards
# Open .twb files in Tableau Desktop or Tableau Readerβ
Complete 8-Course Certificate from Meta
β
50+ Hands-on Projects covering real business scenarios
β
Advanced Statistical Analysis including hypothesis testing and modeling
β
Interactive Tableau Dashboards with professional design
β
End-to-End Python Analytics from data ingestion to visualization
β
Comprehensive Data Management including security and governance
This portfolio demonstrates mastery in:
- Meta Data Analyst Professional Certificate
- Advanced Statistical Analysis and Modeling
- Business Intelligence with Tableau
- Python for Data Analytics
- Data Management and Governance
Email: hire.willie.conway@gmail.com
LinkedIn: Willie Conway
GitHub: Willie-Conway
This project is licensed under the MIT License - see the LICENSE file for details.
- Meta for the comprehensive data analytics curriculum
- Coursera for providing the learning platform
- All instructors and mentors throughout the program
β If you find this portfolio valuable, please consider giving it a star! β
Last updated: December 2024 | Portfolio Version: 2.0 | Certificate Completion: November 2024



















