As artificial intelligence becomes more deeply embedded in business operations, it’s also reshaping how cyber threats evolve. The same technologies helping organizations improve efficiency and automate decision-making are now being co-opted and weaponized by threat actors.

The inaugural edition of the Check Point Research AI Security Report explores how cyber criminals are not only exploiting mainstream AI platforms, but also building and distributing tools specifically designed for malicious use. The findings highlight five growing threat categories that defenders must now account for when securing systems and users in an AI-driven world.

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  1. AI Use and the Risk of Data Leakage

An analysis of data collected from Check Point’s GenAI Protect reveals that 1 in every 80 GenAI prompts poses a high risk of sensitive data leakage. Data also shows that 7.5% of prompts—about 1 in 13—contain potentially sensitive information, introducing critical security, compliance, and data integrity challenges. As organizations increasingly integrate AI into their operations, understanding these risks is more important than ever.

  1. AI-Enhanced Impersonation and Social Engineering

Social engineering remains one of the most effective attack vectors, and as AI evolves, so too do the techniques used by threat actors. Autonomous and interactive deepfakes are changing the game of social engineering, drastically improving the realism and scale of attacks. Text and audio have already evolved to generate non scripted, real time text, while video is only advancements away.

A recent FBI alert underscored the growing use of AI-generated content in fraud and deception, while real-world incidents, such as the impersonation of Italy’s defense minister using AI-generated audio, have already caused significant financial harm.

As these capabilities scale, identity verification based on visual or auditory cues is becoming less reliable, prompting an urgent need for multi-layered identity authentication.

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  1. LLM Data Poisoning and Manipulation

Concerns have been raised by researchers regarding LLM (large language model) poisoning, which is a cyber security threat where training datasets are altered to include malicious content, causing AI models to replicate the harmful content. Despite the strong data validation measures in place by major AI providers like OpenAI and Google, there have been instances of successful poisoning attacks, including the upload of 100 compromised AI models to the Hugging Face platform. While data poisoning typically affects the training phase of AI models, new vulnerabilities have arisen as modern LLMs access real-time online information, leading to a risk known as “retrieval poisoning.” A notable case involves the Russian disinformation network “Pravda,” which created around 3.6 million articles in 2024 aimed at influencing AI chatbot responses. Research indicated that these chatbots echoed Pravda’s false narratives about 33% of the time, underscoring the significant danger of using AI for disinformation purposes.

  1. AI-Created Malware Creation and Data Mining

AI is now being used across the entire cyber attack lifecycle — from code generation to campaign optimization. Tools like FunkSec’s AI-generated DDoS module and custom Chat-GPT- style chatbot demonstrate how ransomware groups are integrating AI into operations, not just for malware creation, but for automating public relations and campaign messaging.

AI is also playing a critical role in analyzing stolen data. Infostealers and data miners use AI to rapidly process and clean massive logs of credentials, session tokens, and API keys. This allows for faster monetization of stolen data and more precise targeting in future attacks. In one case, a dark web service called Gabbers Shop advertised the use of AI to improve the quality of stolen credentials, ensuring they were valid, organized, and ready for resale.

  1. The Weaponization and Hijacking of AI Models

Threat actors are no longer just using AI — they are turning it into a dedicated tool for cyber crime. One key trend is the hijacking and commercialization of LLM accounts. Through credential stuffing and infostealer malware, attackers are collecting and reselling access to platforms like ChatGPT and OpenAI’s API, using them to generate phishing lures, malicious scripts, and social engineering content without restriction.

Even more concerning is the rise of Dark LLMs — maliciously modified AI models such as HackerGPT Lite, WormGPT, GhostGPT, and FraudGPT. These models are created by jailbreaking ethical AI systems or modifying open-source models like DeepSeek. They are specifically designed to bypass safety controls and are marketed on dark web forums as hacking tools, often with subscription-based access and user support.

What This Means for Defenders

The use of AI in cyber crime is no longer theoretical. It’s evolving in parallel with mainstream AI adoption, and in many cases, it’s moving faster than traditional security controls can adapt. The findings in the AI Security Report from Check Point Research suggest that defenders must now operate under the assumption that AI will be used not just against them, but against the systems, platforms, and identities they trust.

Security teams should begin incorporating AI-aware defenses into their strategies — including AI-assisted detection, threat intelligence systems that can identify AI-generated artifacts, and updated identity verification protocols that account for voice, video, and textual deception.

As AI continues to influence every layer of cyber operations, staying informed is the first step toward staying secure.

For a deeper look into these trends — and the strategies to mitigate them — download the full Check Point Research AI Security Report 2025.

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