Otto, an ecommerce company, uses deep learning algorithms to predict consumer purchases with 90% accuracy, enabling automated purchasing and reducing annual returns by $2 million.
- 90% accuracy in purchase predictions
- $2 million reduction in annual returns
Traditional forecasting methods were less accurate, leading to overstock and returns.
Implemented deep learning models analyzing customer behavior and purchase patterns to forecast demand and automate purchasing.
- Highly accurate purchase predictions
- Reduced inventory waste and returns
- Improved supply chain efficiency