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AI in Cybersecurity: How SecPod’s SanerNow is Shaping the Future

In today’s fast-evolving digital landscape, the challenges of securing information, networks, and applications from sophisticated cyber threats have grown exponentially. At SecPod, we’re leveraging Artificial Intelligence (AI) to stay ahead of attackers, ensuring proactive and intelligent responses to potential risks. Here’s how AI is empowering our cybersecurity solutions now and in the future.

The Current AI-Driven Cybersecurity Landscape at SecPod

At SecPod, our SanerNow platform leverages advanced AI techniques to drive powerful vulnerability management (VM) capabilities. One of the core innovations we’ve integrated is SecPod’s Unique Risk Categorization Algorithm, which utilizes data analytics and machine learning to prioritize and manage risks efficiently. We calculate the Risk Exploitability Score by correlating multiple factors such as:

  • Malware Vulnerability Enumeration (MVE) Mapping
  • Exploit references
  • CISA Known Exploited Vulnerabilities (KEVs)
  • Google Project Zero findings

These multiple data points allow us to prioritize vulnerabilities by their potential exploitability, categorized into High, Medium, or Low risk, thus ensuring organizations focus on the most pressing threats. This AI-powered risk prioritization allows organizations to allocate resources effectively while maintaining robust defense mechanisms.

A Practical Use Case of AI in SanerNow

Let’s delve into a real-world use case of how AI empowers our cybersecurity solutions. Imagine an organization using a specific application, such as a MySQL server, across a range of devices. Our AI-based system collects various attributes—application version, installation directory, vulnerabilities, and more—along with processes and ports running. With AI algorithms like the k-distance and Levenshtein distance, we can correlate applications with port activity and identify anomalies that may signify vulnerabilities. Levenshtein distance is utilized as a fundamental algorithm for determining the similarity between text data. Its application extends to various AI-driven tasks, including text mining, document clustering, and automated question-answering systems. The k-distance algorithm can calculate the distance between data points in order to extrapolate their relationship, and calculate the distance on a graph. In supervised learning, it can be used for either classification or regression applications.

The applications with open ports, but pertaining to unknown publishers are flagged as anomalies, which could signify a potential security risk. By detecting outliers, our system ensures that anomalous behavior such as installing multiple VPN software in an organization and installing a VPN software with vulnerabilities that lead to ransomware attack on VPN servers, is caught and mitigated before it causes damage.

Transforming Cybersecurity: The Present and Future of AI with SecPod’s SanerNow

As we look to the future, SecPod is set to further revolutionize vulnerability management through AI advancements. Our AI components will empower security teams with:

  • Risk Prediction Models: At present, we are leveraging historical vulnerability data to predict future risks, our AI models forecast potential attack vectors before they become critical.
  • Anomaly Scanning: By using machine learning, we are able to detect outliers and identify unusual system behaviors in real-time.
  • Cyber Hygiene Score: AI algorithms dynamically evaluate and rate an organization’s security posture, helping teams track improvements and vulnerabilities that need attention.
  • AI-Powered Patching: Going forward, our advanced AI will analyze vulnerabilities and suggest intelligent patching techniques, optimizing remediation efforts.
  • Generative AI (GenAI) for Analysis and Response: We will be introducing GenAI capabilities for tasks such as automated report generation, summarization, and Q&A to simplify complex security data. This feature will accelerate incident response, helping security teams act swiftly in the face of emerging threats.

Stepping Ahead, GenAI Capabilities Across SanerNow’s Core Fields

Our vision for AI’s role in cybersecurity isn’t limited to predictive models and vulnerability analysis. By leveraging GenAI, SanerNow will improve security measures across multiple domains:

  • Software Security: AI will help identify vulnerable software versions, unauthorized publishers, and unsigned applications. With GenAI, we can provide tailored security insights, helping developers prioritize patches based on real-time threat landscapes.
  • Process Security: AI will analyze and monitor running processes to detect unauthorized access and identify any deviations from normal behavior. GenAI will further aid in generating process-specific risk reports and summaries, ensuring that decision-makers can act on critical issues instantly.
  • System Security: AI-powered analysis of systems security will strengthen defense protocols by detecting anomalies in network activities and configurations. Additionally, AI will help predict potential attack vectors and vulnerabilities in real-time, enabling faster patch management.
  • Network Security: AI algorithms will provide deeper visibility into network ports, IP addresses, and configurations, helping detect unauthorized access or malware presence. Using GenAI for summarizing network event data will allow teams to quickly act on network anomalies.
  • Attack Prevention: AI will enhance our ability to identify and mitigate vulnerabilities before they can be exploited. Time-series analysis and anomaly detection will identify outliers in patch performance or configuration errors, reducing the likelihood of cyberattacks.
  • Device Information Security: AI will assist in securing devices through continuous monitoring and dynamic risk assessment. GenAI will enable quick reporting on device status, flagging any outdated or vulnerable components requiring immediate attention.
  • Windows Events and Unix Processes: By analyzing logs from Windows events and Unix background processes, AI will detect and report anomalies or security breaches. GenAI will help administrators sift through the noise of log data to focus on critical insights and alerts.
  • User Security: AI-driven user behavior analytics will help identify suspicious user activity and unauthorized access attempts, enabling organizations to mitigate insider threats. The GenAI-powered response system will ensure quicker resolution of flagged incidents.

The Future of AI in Cybersecurity

With the continued evolution of cyber threats, the integration of AI and machine learning in cybersecurity will be essential to staying ahead. SecPod’s SanerNow suite is at the forefront of this shift, employing cutting-edge AI technologies to enhance the security landscape.

As we incorporate GenAI, our solutions will evolve beyond simple detection and response, toward a more intuitive and dynamic cybersecurity framework—one that can predict, analyze, and respond to threats autonomously, offering unparalleled protection for organizations worldwide.

Are you ready to future-proof your cybersecurity? Discover how SanerNow’s AI-driven solutions can help you stay ahead of cyber threats and safeguard your organization.

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