
DXC AI Workbench Helps Enterprises Scale Responsible AI
Home » Tech Value Chain » System Integrators » DXC AI Workbench Helps Enterprises Scale Responsible AI
DXC Technology (NYSE: DXC), a Fortune 500 global technology services provider, has launched DXC AI Workbench, a new generative AI solution. The platform combines consulting, engineering, and secure enterprise services. It helps organizations implement and scale responsible AI.
Ferrovial (NASDAQ: FER), a global infrastructure company, is using the DXC AI Workbench across its business. With more than 30 AI agents deployed, Ferrovial supports 24,000 employees through real-time decision-making. As a result, the company is improving operational efficiency and safety.
DXC developed AI Workbench to provide a scalable, secure, and ready-to-deploy solution. It includes governance frameworks and safeguards that support compliance. Clients can adopt AI faster while reducing risk.
According to Howard Boville, President of DXC Consulting & Engineering Services – Powered by AI, 'AI isn't a plug-and-play solution. Leveraging GenAI securely and in compliance with regulations requires human due diligence, customization, and the right skill sets. We're helping clients, such as Ferrovial, build and implement AI solutions throughout their operations to drive outcomes at scale and unlock opportunities to innovate.'
Ferrovial is now integrating the platform into key operations. The company uses over 30 specialized AI agents on a Microsoft Azure-based platform. These agents support various business functions: Optimizing field operations
Enhancing safety protocols
Managing and applying internal knowledge
Analyzing competition and regulatory impact
The platform integrates with existing back-office systems, including Workday, ServiceNow, Microsoft Teams, and custom applications. This has accelerated automation and improved data-driven decision-making.
Dimitris Bountolos, Chief Information and Innovation Officer (CIIO) at Ferrovial, noted, 'By working with DXC, we've unlocked new levels of operational efficiency and reduced risks. The ability to integrate AI into our core business processes has revolutionized how we reduce operational costs, manage knowledge, and make decisions, providing us with a competitive edge in the industry.'
With deep industry knowledge, DXC supports enterprises in securely deploying AI at scale. DXC AI Workbench enables faster innovation while ensuring compliance, helping organizations achieve measurable outcomes.
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