Data Collection & Preparation
Gather vehicle, route, and delivery data.
Supply chains deal with massive amounts of data. By effectively managing this data, businesses can optimize operations, reduce costs, and improve decision-making.
This involves predicting future customer demand using historical data, analytics, and market insights to optimize inventory and ensure timely delivery. The challenges of demand forecasting include managing volatile consumer behavior influenced by economic uncertainties, accurately predicting demand for new products, integrating diverse data sources for comprehensive analysis, adapting to rapidly changing market trends, and minimizing forecasting errors that can lead to overstocking or stockouts.
Through machine learning, AI can analyze the volumes of data, to enhance the precision of forecasts. This will enable companies to,
AI-driven demand forecasting also allows for real-time adjustments, making supply chains more responsive and resilient to fluctuations.
Snowflake(Collect/Store data)
NVIDIA RAPIDS(Accelerate Transformation Layer)
AWS(Store Processed data back to Snowflake)
Google Cloud(Save data sources to cloud ecosystem)
Power BI(Azure Power BI to visualize forecasted data)
Gather vehicle, route, and delivery data.
Define VRP parameters and constraints.
Use NVIDIA cuOpt or other AI solutions for GPU-accelerated route optimization.
Review and analyze the optimized routes.
Deploy the optimized routing solutions.
Continuously monitor and adjust routes in real-time.