Technology Category
- Sensors - Environmental Sensors
Applicable Industries
- Buildings
- Renewable Energy
Applicable Functions
- Facility Management
Use Cases
- Building Energy Management
- Energy Management System
Services
- System Integration
The Customer
Not disclosed
About The Customer
The Fortune 100 technology company is a global enterprise with a presence in over 165 countries. It has an extensive network of 70,000 channel partners and employs 70,000 people. The company generates annual revenues of $50 billion and has a customer satisfaction score of 4.47 on a 1-5 scale. The company has a diverse portfolio of more than 500 facilities worldwide, including office buildings, labs, and data centers. The company is committed to energy efficiency and sustainability, as evidenced by its implementation of the C3 AI Energy Management application.
The Challenge
The Fortune 100 technology company faced a significant challenge in managing its diverse portfolio of over 500 facilities worldwide, which ranged from standard office buildings to energy-intensive labs and data centers. The company required a software solution that could effectively manage energy and greenhouse gas (GHG) emissions, integrate and analyze sustainability and energy metrics, and report results from energy and emissions mitigation projects for its annual sustainability report and the Carbon Disclosure Project. The company also needed to perform detailed interval analysis on thousands of opaque energy-consuming racks of equipment, identify and analyze energy efficiency opportunities, and manage a global portfolio of low-cost, capital-intensive energy efficiency and emissions mitigation projects.
The Solution
The company partnered with C3 AI in 2012 and implemented the C3 AI Energy Management application on Amazon Web Services. This application allowed the company to manage the full life cycle of energy and environmental sustainable management – from data integration to analysis and opportunity identification, through mitigation project execution, and, finally, to reporting and continuous improvement. The company used the data from the application to identify and analyze energy efficiency opportunities and manage a global portfolio of low-cost, capital-intensive energy efficiency and emissions mitigation projects. The company’s Global Energy and Sustainability teams, property managers, and Financial, Planning, and Analysis (FP&A) executives used C3 AI Energy Management to manage the full life cycle of energy and environmental sustainable management.
Operational Impact
Quantitative Benefit
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