Category: Machine Learning | Sales Analytics | Predictive Modeling
Status: Completed
Tech Stack: Python, Pandas, NumPy, Scikit-learn, XGBoost, LightGBM, Matplotlib, Jupyter Notebook
Dataset: deal_details.xlsx (CRM sales activity and deal attributes)
Target: Deal Outcome (Won or Lost)
GitHub: https://github.com/Nishigandha-Wankhade/Deal_Closure_Prediction_Using_ML/tree/main
Built and compared multiple machine learning classification models to predict whether a sales deal will be Won or Lost, using CRM activity signals and deal characteristics. The goal was to help sales teams prioritize high-probability deals, improve conversion rates, and strengthen revenue forecasting.
Sales teams manage many open deals at once, but not all deals deserve equal attention. Without a data-driven approach, effort can be wasted on deals unlikely to close.
This project addresses that problem by predicting deal outcomes based on historical patterns in:
Key fields used in modeling: