I developed a Web App Leveraging Machine Learning to Forecast Multi-SKU Product Demand

I developed a Web App Leveraging Machine Learning to Forecast Multi-SKU Product Demand

Managing stock across thousands of SKUs is no joke โ€” especially when dead stock eats into your margins and stockouts kill your customer experience. Predicting product demand isnโ€™t just hard, itโ€™s mission-critical.

๐Ÿ” Inspired by a brilliant project by @Abhiram AS (CFO, Seeken Electronics) โ€” thank you for the initial code and the spark of an idea โ€” I built a solution to tackle this challenge head-on.

๐ŸŽฏ The Solution? A demand forecasting tool powered by ARIMA (AutoRegressive Integrated Moving Average) โ€” a statistical model known for its precision in time series forecasting.

๐Ÿง  It analyzes 500,000+ rows of historical sales data and generates monthly demand forecasts for each product. This helps avoid overstock, reduce waste, and keep inventory aligned with real-world demand.

๐ŸŒ Try it here: https://arima.fuhadabdulla.com/

โš™๏ธ Built and deployed using Dash by Plotly, the app offers a sleek and intuitive interface. (Note: The live version uses truncated data due to server limitations, but it processes full datasets locally.)

๐Ÿ“Š Dataset: Based on a Kaggle e-commerce dataset โ€” scalable, flexible, and industry-relevant.

Letโ€™s turn data into action. Letโ€™s solve dead stock before it happens.

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