The security operations centers of the future will use agentic AI to enable intelligent automation of routine tasks, augment human decision-making, and streamline workflows. At Google Cloud, we want to help prepare today’s security professionals to get the most out of tomorrow’s AI agents.
As we build our agentic vision, we’re also excited to invite you to the first Agentic SOC Workshop: Practical AI for Today’s Security Teams. This complimentary, half-day event series is designed for security practitioners looking to level up their AI skills and move beyond the marketing to unlock AI’s true potential. Ultimately, we believe that agentic AI will empower security professionals to focus more on complex investigations and strategic initiatives, and drive better security outcomes and operational efficiency.
Our vision is a future where every customer has a virtual security assistant — trained by the world’s leading security experts — that anticipates threats and recommends the best path to deliver on security goals. We are building the next class of security experts empowered by AI, and these workshops are your opportunity to become one of them.
The Agentic SOC Workshop combines foundational security capabilities with AI to help security professionals develop the necessary skills for successful AI use. Attendees will:
These free, half-day workshops are specifically designed for security professionals, including security architects, SOC managers, analysts, and security engineers, as well as security IT decision-makers including CISOs and VPs of security.
We’ll be holding Agentic SOC Workshops starting in Los Angeles on Wednesday, Sept. 17, and Chicago on Friday, Sept. 19. Workshops will continue in October in New York City and Toronto, with more cities to come. To register for a workshop near you, please check out our registration page.
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