Table of Contents
Security and Cloud
The Importance of Application Security
Enhanced Visibility and Predictive Security Measures
The Rise of Managed Services
The Dilemma of Artificial Intelligence
Home Technology peripherals AI Top 5 Cybersecurity Trends in 2024

Top 5 Cybersecurity Trends in 2024

Mar 28, 2024 am 11:06 AM
AI machine learning cyber security

Top 5 Cybersecurity Trends in 2024

Cybersecurity is a complex and never-ending battlefield. Technologies like generative artificial intelligence and machine learning are strengthening organizations’ security strategies, but cyberattackers are using the same tools to engineer new threats. And, while artificial intelligence is a hot topic, another issue is integrating the various parts of your security strategy during the move to the cloud to ensure all-round protection.


Security and Cloud

For the upcoming “refresh cycle” expected in 2024 and 2025, many large organizations are preparing for organizational and architectural scope Overhauling the security posture within, from data centers to IT infrastructure. The update will focus primarily on security, with the surge in cloud adoption in recent years creating a particular need to incorporate cloud security into the overall security framework. Organizations now want to consolidate their cloud security measures and seamlessly integrate them with on-premises security measures.

The Importance of Application Security

While natural networking is worth paying attention to, identity issues, ransomware attacks and endpoint compromises are also concerns - application vulnerabilities are also a serious threat . The shift from monolithic applications to microapps and microservices has reshaped the application landscape, and the upcoming update cycle will prompt organizations to rethink their application security. The challenge is understanding and managing the growing number of application programming interface (API) integrations that proliferate as applications become more distributed, but that many organizations have yet to track, creating security risks.

A key aspect is integrating application security into the DevSecOps environment. The focus is on real-time application protection, dynamic approaches to securing applications, and embedding security logic within the applications themselves. Organizations also take proactive measures such as attack surface management and internal breach and attack simulations, which are also provided by managed service providers (MSPs). They are also increasingly relying on zero-trust security to continuously authenticate individual access to applications and services.

Enhanced Visibility and Predictive Security Measures

Real-time monitoring with the ability to proactively take action against threats is a critical component of cybersecurity. Organizations are investing in projects to improve viability, reduce diagnostic time and automate security responses.

The evolution from SOC2.0 to SOC3.0 and even SOC4.0 due to machine learning, artificial intelligence and external threat detection also indicates a move to more sophisticated security operations centers with a focus on automated reporting and security once issued Alerts, automated security responses reduce an organization's reliance on specific technologies and transform management skills. This is a common challenge affecting SOC projects.

The Rise of Managed Services

The skills challenge has brought about the next trend: a major shift toward managed services, where organizations choose to outsource their cybersecurity functions to specialized providers. Not only do they have access to the latest security expertise and 24/7 monitoring and support, but MSPs can also deliver ever-improving security based on global intelligence: for example, if a threat emerges in one region, customers in another region are quickly protected.

While executing an MSP, organizations also need to fine-tune the importance of tooling at competitive prices, gaining cost efficiencies over the duration of the engagement, and the MSP's compliance with industry-specific outsourcing regulatory requirements. MSPs should also deploy metrics to track how customer security operations are being optimized anytime and anywhere. Additionally, the Digital Personal Data Protection Act and notification requirements from state agencies dealing with cybersecurity incidents are prompting organizations to focus more closely on protecting the security of personally identifiable information (PII). This is another area where an MSP’s expertise can be valuable.

The Dilemma of Artificial Intelligence

Due to the rapid pace of technological innovation, the full impact of artificial intelligence on cybersecurity is difficult to quantify. Organizations often prefer to evaluate and compare products before purchasing them, but in the rapidly growing artificial intelligence market, this is not always possible.

Artificial intelligence is both a blessing and a challenge. For example, while it helps meet skill requirements, it also presents unique challenges in skill development. Simpler human roles are increasingly being handled by automation and artificial intelligence, creating a skills gap that raises questions about how employees gain experience when entry-level roles shrink.

So the new year may see the role of AI become clearer and more solidified, and organizations must adapt accordingly.

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