Siemens trained machine learning models on over 10 years of project data to forecast timelines and optimize resource allocation, identifying bottlenecks 4-6 weeks in advance. AI also supports predictive maintenance to minimize downtime and increase productivity.
- 30% improvement in timeline accuracy
- 20% faster bottleneck resolution
- Reduced downtime and increased productivity
Project delays and equipment failures due to poor forecasting and maintenance practices impacted efficiency.
Deployed ML models for timeline forecasting and resource optimization; implemented predictive maintenance AI analyzing machine data for early failure detection.
- Improved forecast accuracy by 30%
- Resolved bottlenecks 20% faster
- Reduced unplanned downtime
- Increased operational productivity