1. Analyze upstream energy assets and processes to boost E&P success and efficiency
2. Forecast production and demand to handle spikes while also avoiding idle capacity
3. Shift refinery optimization to real-time to quickly adapt to production, market and supply conditions
1. Optimize asset utilization to get maximum output from capital investments
2. Apply predictive maintenance to midstream infrastructure to minimize loss during transportation
3. Analyze and streamline every process in the value chain to minimize costs
1. Profile EH&S risks and prescribe environmental protection measures
2. Improve energy trading & risk management with smarter analysis
3. Ensure pipeline integrity by integrating predictions of asset vulnerabilities with exposures
4. Detect theft proactively with smart meter data analysis
An oil & gas company used predictive analysis on soil samples to determine the best drilling locations.
An oil driller used predictive analytics to reduce unplanned downtime of its wells by combining real time well performance with historical incidents.
A petroleum refinery business shifted to real-time, continuous optimization and quality control and increased its throughput and yield at much lower cost.
An extraction company applied predictive maintenance to its complex oil rig equipment, decreasing downtime without incurring higher costs.
An energy production facility analyzed accident rates, identified the root causes of safety issues and took steps to create a safer workplace.
An oil pipeline operator applied predictive maintenance by using non-destructive model simulation to determine where leaks are likely to occur, and reduced loss during transmission.
A diversified energy company used text analysis of news articles to predict regulatory sentiment in real-time and created a more proactive and effective government relations strategy.
Learn how data science can help you do less with more - driving revenue, reducing costs, and shrinking your environmental impact.