Carahsoft, in conjunction with its vendor partners, sponsors hundreds of events each year, ranging from webcasts and tradeshows to executive roundtables and technology forums.
State and local governments are increasingly adopting Artificial Intelligence (AI) to modernize operations, improve citizen services, and strengthen public safety. During this post-launch AI Security webinar, Zscaler explored how agencies can embrace AI innovation while managing the growing risks related to Shadow AI, data exposure, and regulatory compliance through a Zero Trust approach.
The session highlighted how Zscaler supports secure and responsible AI adoption across the full lifecycle—from development to deployment—helping agencies protect data, maintain trust, and meet compliance requirements as AI usage scales.
Attendees received an overview of Zscaler’s latest AI security innovations designed to improve visibility, resilience, and governance. The discussion focused on how agencies can discover and manage AI systems, proactively test defenses, and implement safeguards that protect AI workflows in real time.
Key takeaways from the webinar included:
The webinar also featured a discussion of the top AI use cases across state and local government, alongside a practical playbook for securing AI deployments—including public, private, agentic, and citizen-facing services.
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Fraud refers to the deliberate misrepresentation of information in order to deceive or mislead. Abuse refers to the improper use of resources or authority. Fraud and abuse can have serious consequences, including financial losses, reputational damage, and legal ramifications. These criminals use multiple avenues, such as cell phones, insurance claims, tax returns, credit card transactions, government procurements, identity theft, and more. Ultimately, fraud represents a significant risk to business and government operations, yet most organizations still use outdated, rule-based systems to detect it. Rule[1]based systems are useful for uncovering known patterns, but as fraud has evolved in unpredictable ways, so must the tools needed to detect it.