- The 25+ best Black Friday Nintendo Switch deals 2024
- Why there could be a new AI chatbot champ by the time you read this
- The 70+ best Black Friday TV deals 2024: Save up to $2,000
- This AI image generator that went viral for its realistic images gets a major upgrade
- One of the best cheap Android phones I've tested is not a Motorola or Samsung
What’s Missing in Most CISO’s Security Risk Management Strategies
By Dr. May Wang, CTO of IoT Security at Palo Alto Networks and the Co-founder, Chief Technology Officer (CTO), and board member of Zingbox
At the foundation of cybersecurity is the need to understand your risks and how to minimize them. Individuals and organizations often think about risk in terms of what they’re trying to protect. When talking about risk in the IT world, we mainly talk about data, with terms like data privacy, data leakage and data loss. But there is more to cybersecurity risk than just protecting data. So, what should our security risk management strategies consider? Protecting data and blocking known vulnerabilities are good tactics for cybersecurity, but those activities are not the only components of what CISOs should be considering and doing. What’s often missing is a comprehensive approach to risk management and a strategy that considers more than just data.
The modern IT enterprise certainly consumes and generates data, but it also has myriad devices, including IoT devices, which are often not under the direct supervision or control of central IT operations. While data loss is a risk, so too are service interruptions, especially as IoT and OT devices continue to play critical roles across society. For a healthcare operation for example, a failure of a medical device could lead to life or death consequences.
Challenges of Security Risk Management
Attacks are changing all the time, and device configurations can often be in flux. Just like IT itself is always in motion, it’s important to emphasize that risk management is not static.
In fact, risk management is a very dynamic thing, so thinking about risk as a point-in-time exercise is missing the mark. There is a need to consider multiple dimensions of the IT and IoT landscape when evaluating risk. There are different users, applications, deployment locations and usage patterns that organizations need to manage risk for, and those things can and will change often and regularly.
There are a number of challenges with security risk management, not the least of which is sheer size and complexity of the IT and IoT estate. CISOs today can easily be overwhelmed by information and by data, coming from an increasing volume of devices. Alongside the volume is a large variety of different types of devices, each with its own particular attack surface. Awareness of all IT and IoT assets and the particular risk each one can represent is not an easy thing for a human to accurately document. The complexity of managing a diverse array of policies, devices and access controls across a distributed enterprise, in an approach that minimizes risk, is not a trivial task.
A Better Strategy to Manage Security Risks
Security risk management is not a single task, or a single tool. It’s a strategy that involves several key components that can help CISOs to eliminate gaps and better set the groundwork for positive outcomes.
Establishing visibility. To eliminate gaps, organizations need to first know what they have. IT and IoT asset management isn’t just about knowing what managed devices are present, but also knowing unmanaged IoT devices and understanding what operating systems and application versions are present at all times.
Ensuring continuous monitoring. Risk is not static, and monitoring shouldn’t be either. Continuous monitoring of all the changes, including who is accessing the network, where devices are connecting and what applications are doing, is critical to managing risk.
Focusing on network segmentation. Reducing risk in the event of a potential security incident can often be achieved by reducing the “blast radius” of a threat. With network segmentation, where different services and devices only run on specific segments of a network, the attack surface can be minimized and we can avoid unseen and unmanaged IoT devices as springboards for attacks for other areas of the network. So, instead of an exploit in one system impacting an entire organization, the impact can be limited to just the network segment that was attacked.
Prioritizing threat prevention. Threat prevention technologies such as endpoint and network protection are also foundational components of an effective security risk management strategy. Equally important for threat prevention is having the right policy configuration and least-privileged access in place on endpoints including IoT devices and network protection technologies to prevent potential attacks from happening.
Executing the strategic components above at scale can be optimally achieved with machine learning and automation. With the growing volume of data, network traffic and devices, it’s just not possible for any one human, or even group of humans to keep up. By making use of machine learning-based automation, it’s possible to rapidly identify all IT, IoT, OT and BYOD devices to improve visibility, correlate activity in continuous monitoring, recommend the right policies for least-privileged access, suggest optimized configuration for network segmentation and add an additional layer of security with proactive threat prevention.
About Dr. May Wang:
Dr. May Wang is the CTO of IoT Security at Palo Alto Networks and the Co-founder, Chief Technology Officer (CTO), and board member of Zingbox, which was acquired by Palo Alto Networks in 2019 for its security solutions to Internet of Things (IoT).