惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Google DeepMind News
Google DeepMind News
S
Security Affairs
阮一峰的网络日志
阮一峰的网络日志
L
LangChain Blog
Microsoft Azure Blog
Microsoft Azure Blog
雷峰网
雷峰网
Recent Announcements
Recent Announcements
WordPress大学
WordPress大学
The GitHub Blog
The GitHub Blog
博客园_首页
The Cloudflare Blog
M
MIT News - Artificial intelligence
博客园 - 【当耐特】
MyScale Blog
MyScale Blog
S
SegmentFault 最新的问题
P
Proofpoint News Feed
Y
Y Combinator Blog
Jina AI
Jina AI
博客园 - 聂微东
A
About on SuperTechFans
Blog — PlanetScale
Blog — PlanetScale
博客园 - 司徒正美
G
Google Developers Blog
云风的 BLOG
云风的 BLOG
F
Full Disclosure
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Microsoft Security Blog
Microsoft Security Blog
爱范儿
爱范儿
T
Tailwind CSS Blog
J
Java Code Geeks
Vercel News
Vercel News
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
Stack Overflow Blog
Stack Overflow Blog
罗磊的独立博客
小众软件
小众软件
酷 壳 – CoolShell
酷 壳 – CoolShell
T
The Blog of Author Tim Ferriss
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
博客园 - 三生石上(FineUI控件)
W
WeLiveSecurity
PCI Perspectives
PCI Perspectives
Attack and Defense Labs
Attack and Defense Labs
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
宝玉的分享
宝玉的分享
IT之家
IT之家
Hacker News: Ask HN
Hacker News: Ask HN
The Register - Security
The Register - Security
T
The Exploit Database - CXSecurity.com
T
Threat Research - Cisco Blogs

Fortinet All Blogs

The TTF Trap: A Global Campaign of a Low-Detection Lua Loader | FortiGuard Labs Helping Law Enforcement Keep Pace with the Future of Cybercrime | Fortinet Blog FortiEndpoint Expands Security for the AI Era | Fortinet Blog Cyber Attacks Leveraging AI Require Behavior-First Security Training, Not Simply Better Awareness | Fortinet Blog The AI Era Needs a New SASE. Here’s What That Actually Looks Like. | Fortinet Blog Analysis of Ongoing Ousaban Attacks Targeting the Iberian Peninsula | FortiGuard Labs Update on Fortinet Use of Frontier AI | CISO Collective Fortinet Supports INTERPOL Operation CyberProtect III Targeting Online Exploitation From CI/CD to Cloud Data: How Shai Hulud Persistence Leads to Redshift Breach | FortiGuard Labs Fortinet Launches Its Product Carbon Footprint Calculator FortiSASE Training Builds Skills for Secure Access Success | Fortinet Blog Analysis of Reported Credential Compromise of FortiGate Devices | Fortinet Blog Teaching Cybersecurity the Way It’s Actually Used | Fortinet Blog Introducing FortiSOC: One Platform, Total Control | Fortinet Blog Public-Private Cooperation Is Critical to AI-Driven Cyber Defense | Fortinet Advancing Threat-Informed Defense through Fortinet’s Collaboration with MITRE CTID | Fortinet Threat Actors Weaponize AI Hype to Deliver AsyncRAT | FortiGuard Labs Fortinet Achieves 1 Million People Trained in Cybersecurity Goal Ahead of Schedule | Fortinet Blog While OT Security Is Maturing, Risk Is Not Slowing Down | Fortinet Blog AI Policy Meets Operational Reality: White House AI Cybersecurity Order Calls for Public-Private Coordination | Fortinet Blog Executive Q&A: Strong Q1 Momentum Driven by Differentiated Innovation and Customer Demand | Fortinet Fortinet Earns AV-Comparatives Certification for EDR Detection Visibility | Fortinet Blog Cybercriminals Are Targeting the FIFA World Cup 2026 | FortiGuard Labs Fortinet Achieves AV-Comparatives Certification for Process Injection Protection | Fortinet Blog Inside the Cross-Platform Propagation of a New Gafgyt Variant C0XMO | FortiGuard Labs Battling AI-Based Threats with FortiNDR | Fortinet Blog Phishing Campaign Deploys JavaScript-Driven PureLogs Variant to Steal Sensitive Data Defending Critical Infrastructure: Why OT Security Demands a Threat-Informed Approach | CISO Collective Misconfigured, Enrolled and Dormant: Anatomy of a P2Pinfect Kubernetes Compromise | FortiGuard Labs Fortinet Expands Cybersecurity Investment in the United Arab Emirates | Fortinet Blog PureLogs: Delivery via PawsRunner Steganography | FortiGuard Labs The Future of Connectivity | Fortinet Blog Fortinet at the World Economic Forum: Frontier AI models, AI-Driven Threats, Deepfakes, and the Future of Cyber Defense | Fortinet Blog The Fortinet 2025 Sustainability Report | Fortinet Blog Supercharged Security: Security in the Time of Mythos | CISO Collective Tracking Mirai Variant Nexcorium: A Vulnerability-Driven IoT Botnet Campaign | FortiGuard Labs AI Security Is an Architectural Decision | Fortinet Blog Fortinet Training Institute Wins Industry Accolades | Fortinet Blog Shadow AI: The Invisible Risk Growing Inside Your Organization | Fortinet Blog Leading by Example in Sustainability: Fortinet Expands Global EPD Certification | Fortinet Blog When Cybercrime Becomes an Industry | Fortinet Blog FortiOS 8.0: Redefining Secure Networking in the AI and Quantum Era | Fortinet Blog Securing the Physical World as It Comes Online | Fortinet Blog DPRK-Related Campaigns with LNK and GitHub C2 | FortiGuard Labs AI Is Changing Application Threats Faster Than Teams Can Adapt | Fortinet Blog Announcing the Fortinet Training Institute’s 2026 ATC Award Winners | Fortinet Blog Disrupting Cybercrime Networks at Scale Requires Sustained Global Collaboration | Fortinet Blog
Why the 2026 AI Cybersecurity Summit Matters | Fortinet Blog
2026-04-03 · via Fortinet All Blogs

Over the past year, one thing has become impossible to ignore: the gap between AI adoption and AI security has never been wider. Organizations are embedding AI faster than their security posture can adapt — deploying GenAI tools, building AI-powered applications, and experimenting with autonomous systems, often without the governance, visibility, or controls to match. It is precisely this growing divide that makes the 2026 AI Cybersecurity Summit so critical.

Findings from the forthcoming 2026 Global Threat Landscape Report reinforce why this gap is so consequential. AI enables attackers to act faster by automating reconnaissance and exploiting the same blind spots that appear when adoption outpaces security. As organizations rush to deploy AI, they inadvertently widen the attack surface — creating new entry points through unmanaged tools, unprotected APIs, and ungoverned data flows that adversaries are already learning to exploit.

At the same time, enterprises are rapidly embedding AI across their environments, from employee-facing GenAI tools to production workloads and emerging autonomous systems. The pace of that adoption, however, is creating a compounding challenge: security strategy is being left behind. New layers of risk—model exposure, uncontrolled data movement, API abuse, and prompt-based manipulation—are accumulating inside the infrastructure faster than traditional controls can address them.

And because AI is usually implemented piecemeal across teams, tools, and environments — often without centralized governance or consistent security controls — it introduces fragmentation that widens the gap further. Visibility becomes limited, policy enforcement becomes inconsistent, and defenders lose the ability to fully understand where AI is being used, how it behaves, and where it is introducing risk.

That combination frames the core issue behind the 2026 AI Cybersecurity Summit. The gap between AI adoption and AI security is not a temporary imbalance — it is an accelerating one. Organizations need to rethink how security can keep pace as AI moves through each stage of deployment at scale

AI Adoption Is Reshaping the Attack Surface

When businesses first begin their AI adoption journey, familiar challenges take on new shapes. Employees start using GenAI tools without formal approval, data exposure becomes more difficult to monitor, and governance begins to fragment across teams before any formal policies are established.

When organizations move beyond experimentation and begin building their own AI agents, custom AI applications, and large language models, the complexity deepens significantly. Proprietary models, APIs, and data pipelines introduce new exposure, infrastructure is pushed in unfamiliar directions, and security controls designed for static environments struggle to keep pace with dynamic, AI-driven workloads.

Over time, the attack surface not only grows but also becomes more dynamic, more distributed, and harder to understand.

This progression is a key organizing principle for the summit:

  • Using GenAI stage: unmanaged GenAI usage and limited visibility
  • Building AI stage: model risk, API exposure, and data movement
  • Scaled stage: agentic AI increasing speed, volume, and risk complexity

Rather than treating AI security as a single problem, the AI Cybersecurity Summit focuses on how security priorities shift across these stages and what organizations are doing to adapt in real environments.

What the AI Summit Is Designed to Address

This year’s AI Cybersecurity Summit will focus on how AI is actually being deployed, not on how it is expected to behave in controlled scenarios. Attendees will gain a clearer understanding of how to secure AI as adoption progresses:

Creating a framework for securing AI across stages of adoption. Security decisions made early tend to persist. The summit will explore how priorities shift from GenAI usage to production AI so organizations can avoid locking in long-term risk.

Ensuring greater visibility and governance across AI usage. Critical sessions will examine how teams are gaining insight into AI activity, controlling access, and reducing unintended data exposure without slowing the business.

Developing a layered approach to protecting AI systems. The summit will highlight how security must extend across users, applications, models, APIs, and infrastructure, since fragmented controls do not hold up as environments scale.

Gaining a practical view of AI-powered operations. It will also examine how AI is being applied within security and network operations to help teams manage increasing complexity while maintaining oversight.

A Closer Look at the Agenda

The 2026 AI Cybersecurity Summit brings together Fortinet leaders, customers, and industry perspectives to examine AI security from multiple angles.

It opens with Russ Schafer, EVP at Fortinet, framing how accelerated AI adoption is changing enterprise risk and forcing a reassessment of security strategy. That perspective is extended by Neil MacDonald, Distinguished VP Analyst at Gartner, who will examine how AI is expanding the attack surface and why traditional models are struggling to keep pace.

From there, the summit will move into operational reality, with critical sessions focused on:

  • How organizations can gain immediate visibility into GenAI applications and usage
  • How companies can control internal use of GenAI tools and apply guardrails when needed
  • How AI workloads and LLMs can be secured
  • Where agentic AI is beginning to reshape security and network operations

Why This Conversation Is Different

One of the critical issues many organizations face is that AI security is often treated as a future concern or a specialized domain. That framing no longer holds. AI is now part of your core enterprise operations. It touches the infrastructure, applications, and workflows your organization depends on every day, making it harder to delay or reverse security decisions.

What organizations need to confront, and what the summit addresses directly, is a shift in how risk functions:

  • It appears earlier, often before governance is in place
  • It compounds as AI systems move into production
  • It accelerates as automation and agentic AI increase speed

This requires security, infrastructure, and operations to function as a single, coordinated system rather than as separate layers.

Who Should Attend

The AI Cybersecurity Summit is designed for leaders and practitioners responsible for securing environments where AI is already in use or rapidly becoming part of core operations. This includes:

  • Security and IT leaders shaping strategy and risk posture
  • Architects and engineers responsible for implementation and control
  • Teams managing infrastructure, applications, and operational workflows

If AI is influencing how your environment runs today, the discussions at the summit are directly relevant to the decisions you are already making.

AI is not waiting for security models to catch up. It has already begun changing how network and security environments operate. And the gap between adoption and security is where risk is accumulating. The AI Cybersecurity Summit will help you close that gap by focusing on how security must evolve as AI becomes part of your operational infrastructure.

Register now to secure your spot.