Case Study: Improving Operational Efficiency and Returns in Oil and Gas

May 17, 2018

To remain competitive and maximize returns, oil and gas companies must utilize the massive amounts of data generated in the fields. The rise of the Internet of Things and smart sensors have created a wealth of untapped information to be used.

AI-based solutions extract value from oil field data through data cleansing, feature extraction, and model generation. Models are the cognitive output that predict future operational behaviors and add value to a business.

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