Imeobong Monday's Work | ContraWork by Imeobong Monday
Imeobong Monday

Imeobong Monday

Data Analyst | Excel, Power BI, SQL, Python | Dashboards.

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Built a credit scoring model to predict customer default risk and support lending decisions. This project focuses on turning raw financial data into a reliable risk assessment system. What I built: • Data cleaning and preprocessing for financial datasets • Feature engineering to capture customer risk behavior • Classification model to predict likelihood of default • Model evaluation to ensure accuracy and reliability How it works: Customer data → Cleaning → Feature engineering → Model training → Risk prediction Key value: • Identifies high-risk customers before issuing credit • Supports smarter lending decisions • Reduces potential financial losses • Improves risk management strategy Use cases: • Loan approval systems • Credit risk assessment • Financial decision support Tools: Python | Pandas | scikit-learn | NumPy | Jupyter Notebook Outcome: • Predictive model for default risk • Structured workflow for financial data analysis • Business-ready insights for credit evaluation If you need a data-driven solution for risk analysis or predictive modeling, let’s work.
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Built a retail analytics system focused on customer churn and business insights. This project is not just a dashboard. It combines data processing, analysis, and business interpretation into one system. What this project does: • Analyzes retail transaction data • Identifies patterns behind customer churn • Highlights key drivers affecting retention • Transforms raw data into decision-ready insights System flow: Raw data → Cleaning & transformation → Analysis → Insight generation → Dashboard Key focus: • Understanding why customers stop buying • Turning data into actionable business insights • Structuring data for reliable analysis • Supporting retention strategy decisions What this solves: Customer churn directly impacts revenue. This system helps: • Identify at-risk customers • Understand behavior patterns • Support targeted retention strategies Tools used: Python | Pandas | SQL | Excel / Power BI Outcome: • Clear visibility into customer behavior • Insight-driven approach to retention • Structured analytics system for retail data This is part of a larger goal to build full data systems that connect engineering, analytics, and business impact. If you need data turned into real business insight, let’s work.
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