A mid-sized retail brand specializing in seasonal goods couldn’t manage their inventory. Their manual forecasting system was slow and led to overstocking of items. This resulted in high storage costs and lost sales. We stepped in to build a predictive machine learning model with our custom AI solutions. The model evaluates previous sales and market indicators. The new solution enabled our client to manage inventory better and ensure that the products were availed when the seasons were at their peak periods.
eCommerce
Custom AI Services
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We gathered all the data from sales records and marketing campaigns.
We built a machine learning model and trained it to identify complex patterns.
The new model was added to our client’s inventory management system.
A dashboard was made to monitor the inventory forecast and KPIs in real time.
· Inaccurate inventory management
· Incorrect sales forecast
· Inability to plan for promotional events.
Data collected from different sources had to be distinguished between seasonal trends and irregular spikes.
Adding the new tool to the client’s existing system had to be done carefully. We had to ensure the workflow wasn’t disrupted and their information stayed intact.
Accurate forecasts for each product was important for inventory planning. Sales numbers alone weren’t enough.
· 40% increase in sales
· 25% decrease in inventory costs
· 15% decrease in stockout incidents