Usman Waris's Work | ContraWork by Usman Waris
Usman Waris

Usman Waris

Data science and Machine Learning expert

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◆ "Do you want to stop losing customers before they leave? I built an end-to-end analytics tool that predicts customer churn with high precision.  ➤ What this project delivers: ✔ Automated Risk Assessment: Upload your dataset and get instant predictions using Artificial Neural Networks (ANN). ✔ Strategic Segmentation: Automatically categorizes your user base into High, Moderate, and Low-risk groups. ✔ One-Click Reporting: Export high-risk customer lists directly to CSV for your marketing and sales teams. ✔ Interactive UI: A clean, user-friendly Streamlit dashboard designed for non-technical stakeholders to make data-backed decisions. I specialize in bridging the gap between complex Deep Learning models and real-world business growth."
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➤ Overview I developed a high-performance Computer Vision application designed to transform raw video footage into structured, actionable traffic data. This solution eliminates the need for manual counting and provides businesses with real-time insights into vehicle and pedestrian flow. ➤ The Problem & Solution Manual traffic monitoring is slow, prone to error, and expensive. My application automates this entire process using State-of-the-Art Deep Learning (YOLO). It doesn’t just "see" the traffic; it measures it, graphs it, and exports it for professional reporting. ➤ Key Deliverables & Capabilities ⬥ Precision Multi-Object Tracking: High-accuracy detection of Cars, Bikes, Trucks, and Pedestrians. ⬥ Live Analytics Dashboard: Real-time visual graphs showing traffic intensity and peak congestion periods. ⬥ Automated Reporting: A one-click feature to convert visual detections into CSV or Excel data tables for business analysis. ⬥ Scalable Deployment: Built with Streamlit, making it accessible via a web browser without complex local installations. ➤ Tech Stack ⬥ AI/ML: Python, YOLOv11, OpenCV ⬥ Data Engineering: Pandas, NumPy ⬥ Web Framework: Streamlit (Custom UI Design) ⬥ Data Visualization: Plotly / Matplotlib ➤ Why This Matters for Your Business Whether you are in Urban Planning, Logistics, or Retail Real Estate, knowing exactly how many vehicles or people pass a specific point is critical. This tool provides 24/7 monitoring capabilities at a fraction of the cost of traditional sensor hardware. ➤ 🔗 View the Source Code on GitHub: [https://github.com/Usman-Waris/YOLO-object-detection-traffic-detection-system- ]
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➤ Overview I engineered a high-impact Machine Learning solution that enables businesses to move beyond "one-size-fits-all" marketing. By leveraging advanced clustering and predictive modeling, this application identifies distinct customer personas and predicts future behavior to optimize retention and sales strategies. ➤ The Problem & Solution Many businesses struggle to identify who their most valuable customers are and why they leave. I built this Streamlit powered dashboard to automate the entire data science pipeline from cleaning raw data to generating interactive segments allowing stakeholders to make data-driven decisions in seconds. ➤ Key Deliverables & Capabilities ◆ Behavioral Segmentation: Uses unsupervised learning to group customers by purchasing patterns, demographics, and engagement levels. ◆ Churn Prediction Engine: Integrated XGBoost model to predict which customers are likely to stop using a service, allowing for proactive retention. ◆ Interactive BI Dashboard: A user-friendly Streamlit interface that turns complex data into clear, visual charts and heatmaps. ◆ Actionable Data Export: Direct integration for downloading segmented lists into CSV/Excel for immediate use in email marketing or CRM tools. ➤ Tech Stack ◆ Machine Learning: Clustring K-Means, Scikit-learn (T-SNE/ SGD) ◆ Data Science: Python, Pandas, NumPy ◆ Visualization: Plotly, Seaborn ◆ Deployment: Streamlit Cloud / GitHub ➤ Business Value ◆ This tool is designed for E-commerce, SaaS, and Retail brands looking to: ◆ Increase Customer Lifetime Value (CLV) by targeting the right segments. ◆ Reduce Churn Rates through early-warning predictive signals. ◆ Personalize marketing campaigns for higher conversion rates. ➤ 🔗 View the Source Code on GitHub: [https://github.com/Usman-Waris/customer-intelligence-app ]
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