Prediction is at the core of running an efficient supply chain. Whether it’s forecasting demand or the weather; prediction enables our vastly complex global supply chains to operate in real-time and deliver on customer needs. However, the current approach to machine learning relies on past patterns and correlations to make predictions about the future – which makes it prone to fail in a constantly changing world.
This talk introduces Causal AI and its impact on identifying the Root Cause of delays throughout the entire supply chain, providing recommendations to mitigate delays and risk, and empowering supply chain, operations, and manufacturing leaders to make decisions that will improve customer service while reducing costs.
After watching this session, you’ll be able to:
Explain how Causal AI will improve AI explainability, trust, and human interaction
Understand how Causal AI overcomes the limitations of traditional AI and why over 85% of current AI projects fail.
Leverage Causal AI to vastly improve capacity utilization, On-Time & In-Full (OTIF) service levels while reducing safety stock
Explain how causaLens decisionApps can help teams run what-if scenarios at scale and use counterfactuals to re-imagine your supply chain