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Unified AI-Powered Security

16 January 2026 at 18:00

Strengthening Cyber Resilience Across Northern Europe

Across Northern Europe, organizations are redefining how they work, innovate and compete. From the Netherlands’ smart logistics hubs to Finland’s AI-driven public services and the UK’s digital-first financial sector, this region is setting the global pace for responsible, data-driven transformation.

Yet behind this progress lies a growing challenge: security complexity.

According to the IBM Institute for Business Value (IBV), the average enterprise now manages 83 security tools from 29 vendors, leading to fragmented visibility, slower responses and rising risk exposure. In contrast, 96% of organizations that have unified their security platforms say they now view cybersecurity as a driver of business value, not a barrier to it.

That’s where the IBM and Palo Alto Networks partnership is making an impact. Together they are helping Northern European enterprises simplify, secure and accelerate their digital transformation with unified, AI-powered cybersecurity.

From Fragmented Tools to an Integrated Security Foundation

Northern Europe’s strength lies in its strong culture of trust and transparency, advanced digital infrastructure, as well as progressive regulatory frameworks. But as the EU NIS2 Directive, DORA and the AI Act come into force, achieving both compliance and cyber resilience require board-level oversight.

IBM and Palo Alto Networks are helping organizations lead this change. They combine IBM’s deep consulting and industry expertise with Palo Alto Networks market-leading security platforms and solutions, including Cortex XSIAM®, Cortex® Cloud™ and Prisma® Access. This integrated approach protects innovation, enables compliance efforts, and enhances operational efficiency.

The partnership not only secures organizational estates, but empowers faster decision-making, measurable ROI and sustainable transformation.

Five Capabilities Powering Secure Transformation

Organizations want to strengthen cyber resilience without slowing innovation. IBM and Palo Alto Networks help them do just that, through five connected capabilities that turn complex challenges into measurable outcomes.

1. Unified Security Platform: Simplify and See More

The Challenge: Too many tools, too little visibility.
The Reality: Most enterprises run more than 80 security tools from nearly 30 vendors.

By consolidating with IBM’s unified security approach and the Palo Alto Networks platforms, organizations are cutting total product costs by up to 19.4% and gaining a single, trusted view of their security posture.

The Outcome: Streamlined operations, faster decision-making and improved compliance enablement for frameworks like NIS2, all while reducing the energy footprint of sprawling infrastructure.

2. Cloud Security: Innovate Without the Risk

The Challenge: Cloud transformation introduces new risks and blind spots.
The Reality: 82% of breaches now involve cloud data, and nearly 40% span multiple environments.

IBM and Palo Alto Networks secure the journey from code to cloud to SOC, embedding security early in design and automating protection across environments. IBM’s AI deployment accelerators slash rollout time, while Cortex Cloud™ provides continuous visibility and compliance enablement.

The Outcome: Faster innovation with cloud operations that are secure by design, from day one.

3. Security for AI: Build Trust in Every Algorithm

The Challenge: Rapid AI adoption without consistent oversight.
The Reality: 82% of executives say trustworthy AI is critical to success, yet few have the controls in place.

IBM and Palo Alto Networks help organizations govern and protect their use of AI, securing data pipelines, scanning models and preventing adversarial attacks.

The Outcome: Confident AI adoption aligned to the EU AI Act requirements, where innovation can move forward without compromising data integrity or customer trust.

4. Security Service Edge (SSE): Connect People Securely, Anywhere

The Challenge: Hybrid work models demand reliable secure access everywhere.
The Reality: Human risk, not technology alone, is now the dominant factor in breaches, with 95% of data breaches involving human error, such as insider missteps, credential misuse and careless actions, underscoring how remote and hybrid workers’ behaviors significantly expand exposure.

With Palo Alto Networks Prisma Access and IBM’s consulting expertise, enterprises across Europe are simplifying secure connectivity through a unified zero trust framework.

The Outcome: Simpler, more efficient policy management and stronger protection across hybrid environments, where risk exposure is reduced, visibility is enhanced, and a seamless user experience is delivered.

5. SOC Transformation: Detect Earlier, Respond Faster

The Challenge: SOC teams are overwhelmed, missing as many as two thirds of daily alerts due to alert fatigue and limited resources.
The Reality: Over half of organizations report they can’t hire or retain enough skilled analysts, leaving gaps in coverage and consistency.

By combining IBM’s Autonomous Threat Operations Machine (ATOM) with Palo Alto Networks Cortex XSIAM, organizations can streamline and automate core SOC workflows, reducing response times by more than half and enabling analysts to focus on the most critical incidents.

The Outcome: Faster detection, shorter resolution times and a more proactive, resilient security posture. AI-driven automation not only boosts accuracy but can also shorten breach lifecycles by more than 100 days, helping teams defend smarter.

Built for Northern Europe’s Next Decade of Growth

As Northern Europe is a leader in digital innovation, the stakes for cybersecurity have never been higher. Trust, transparency and compliance are not simply checkboxes, but are competitive advantages.

IBM and Palo Alto Networks are helping organizations across the region turn that reality into action. By uniting AI-powered automation, cloud-native security and deep industry expertise, they’re enabling enterprises to move faster, reduce complexity and strengthen resilience. This is achieved while enabling alignment with the region’s evolving frameworks, such as NIS2, DORA and the EU AI Act.

To stay ahead, security can no longer be a fragmented layer sitting outside transformation; it must be the foundation that powers it. With IBM and Palo Alto Networks, organizations gain a unified security platform built for the next decade of digital progress – one that protects every connection, every line of code and every moment of innovation.

Resilient. Compliant. Unified.

That’s the future of cybersecurity in Northern Europe.

Learn how IBM and Palo Alto Networks can help your organization simplify complexity and strengthen resilience.

The post Unified AI-Powered Security appeared first on Palo Alto Networks Blog.

How to Run a Security Test and Set Up Continuous Monitoring

16 December 2025 at 00:07
How to Run a Security Test and Set Up Continuous Monitoring

Many website owners follow a similar “security plan,” even if they don’t call it that. They launch the site, add a couple of plugins, and just hope nothing goes wrong.

The issue is that modern website hacks don’t make themselves obvious. Instead, they show up as small signs, like a redirect that only affects mobile users, a hidden credit card skimmer in a template file, silent SEO spam that hurts your rankings, or a DNS change that quietly reroutes your email.

Continue reading How to Run a Security Test and Set Up Continuous Monitoring at Sucuri Blog.

Bridging Cybersecurity and AI

Modernizing Vulnerability Sharing for a New Class of Threats

In cybersecurity, vulnerability information sharing frameworks have long assumed that conventional threats exploit flaws in software or systems, and they can be resolved with patches or configuration updates. AI and machine learning (ML) models upend that premise as adversarial attacks, like poisoning and evasion, target the unique way AI models process information. Consequently, the risks for AI systems include tactics like model poisoning (from evasion attacks) in datasets and training, which are not conventional software vulnerabilities. These new vulnerabilities fall outside the scope of traditional cybersecurity taxonomies like the Common Vulnerabilities and Exposures (CVE) Program.

There is a need to bridge the gap between the existing cybersecurity vulnerability sharing structure and burgeoning efforts to catalog security risks to AI systems. Provisions in the White House AI Action Plan, which Palo Alto Networks supports, call for the creation of an AI Information Sharing and Analysis Center (AI-ISAC), reinforcing the importance of addressing that disconnect. This integration is essential, as leveraging the existing, widely adopted cybersecurity infrastructure will be the fastest path to ensuring these new standards are accepted and operationalized.

Established Construct for Vulnerability Management and Disclosure

The global cybersecurity community relies on a mature infrastructure for sharing standardized vulnerability intelligence. Central to this ecosystem is the CVE List, established in 1999 as the authoritative catalog of cybersecurity vulnerabilities. Through CVE IDs and a network of CVE Numbering Authorities (CNAs), this framework enables consistent vulnerability documentation and disclosure.

Similarly, the Common Vulnerability Scoring System (CVSS) provides standardized severity assessments, allowing security teams to prioritize responses. Together with resources like the National Vulnerability Database (NVD) and CISA’s KEV Catalog catalog, these tools form the backbone of global vulnerability management, information sharing and coordinated disclosure.

Why AI Breaks the Traditional Model

While this infrastructure has served the cybersecurity community effectively for over two decades, it was designed around traditional threat models that AI systems substantially upend. Attacks on AI systems represent a critical departure from traditional cybersecurity threats as they operate insidiously, subtly corrupting core reasoning processes, causing persistent, systemic failures, some of which only become evident over time. Most traditional cybersecurity tools are not equipped to recognize those breakdowns because they assume deterministic behavior and rules-based logic. AI systems defy those assumptions because AI is probabilistic, not deterministic. Consequently, attacks on AI models may remain hidden for extended periods.

Unlike traditional cybersecurity threats that target code, adversarial AI attacks target the underlying data and algorithms that govern how AI systems learn, reason and make decisions. Consider the following predominant adversarial attack methodologies on machine learning:

  • Poisoning attacks inject malicious data into training datasets, corrupting the model's learning process and creating deliberate vulnerabilities or degraded performance.
  • Inference-related attacks exploit model outputs to extract sensitive information or learn about its training data. This includes model inversion, which reconstructs sensitive data from the model's outputs, as well as membership inference, which identifies whether specific data points were used in training.

The expansion of existing security frameworks and programs is necessary to cover the enumeration, disclosure and downstream management of security risks to AI systems.

Advancing AI Security Through the AI Action Plan

In July, the Administration unveiled the AI Action Plan, an innovation-first framework balancing AI advancement with security imperatives. The Plan prioritizes Secure-by-Design AI technologies and applications, strengthened critical infrastructure cybersecurity and protection of commercial and government AI innovations.

Notably, it recommends establishing an AI Information Sharing and Analysis Center (AI-ISAC) to facilitate threat intelligence sharing across U.S. critical infrastructure sectors and encourages sharing known AI vulnerabilities, “tak[ing] advantage of existing cyber vulnerability sharing mechanisms.” These provisions affirm that AI security underpins American leadership in the field and, where possible, should be built upon existing frameworks.

Redefining Boundaries for AI Threats

To position the CVE Program for the AI-driven future, Palo Alto Networks is engaging directly with industry and program stakeholders to chart the path forward. Traditionally, the CVE Program serves as an ecosystem-wide central warning system. It provides a unified source of truths for security risks. A security risk catalog and identification system are needed for AI systems, as they currently fall outside the traditional scope of the CVE Program that has focused exclusively on vulnerabilities rather than on malicious components. The historical aperture of the current CVE Program excludes harmful artifacts, such as backdoored AI models or poisoned datasets, which represent fundamentally different attack vectors, in turn creating security blind spots.

Securing AI’s Promise

The United States leads in AI innovation and must equally lead in securing it. As momentum builds behind the AI Action Plan and the establishment of the AI-ISAC, we have a critical window to shape information sharing frameworks of the future. The goal is to ensure that cybersecurity and AI security infrastructure advance in unison with the technology itself. Integrating new AI vulnerability standards into trusted frameworks like the CVE Program aligns with industry focus and needs. Through proactive, coordinated action, we can unlock AI’s full promise while safeguarding the models that are embedded in the critical systems on which our nation depends.

The post Bridging Cybersecurity and AI appeared first on Palo Alto Networks Blog.

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