Projects

Forecasting.

Problem Statement:

Businesses require accurate predictions of future product usage across different segments to optimize inventory, resource allocation, and strategic planning

Objective:

Build a production-grade machine learning pipeline that forecasts future product usage across various segments, enabling actionable business decisions and ROI improvements

Process Pipeline:

  • Data Ingestion from Azure Blob Storage/SQL
  • Multi-segment Data Preparation using Azure Databricks
  • MultiOutput Random Forest Training
  • Model Registration and Deployment via Azure ML
  • Automated Drift Monitoring and Retraining
Product Usage Forecast architecture

Technologies & Models:

MultiOutput Random Forest Classifier, Azure ML, Azure Databricks, Spark ML

Key Outcomes:

Accurate Segment Forecasting, Strategic Planning Optimization, ROI Improvement

Intelligence • Architecture • Global Scale

Industries

Global Presence