Lakera, the world’s leading security platform for generative AI applications, announced the release of the AI Model Risk Index, the most comprehensive, realistic, and contextually relevant measure of model security for AI systems.
Designed to assess the real-world risk exposure of large language models (LLMs) to attacks, the Lakera AI Model Risk Index measures how effectively models can maintain their intended behavior under adversarial conditions. From AI-powered customer support bots to assistants, the report tests LLMs in realistic scenarios across industries, including technology, finance, healthcare, law, education and more.
Cyber Technology Insights : Cynamics Secures FedRAMP Authorization as a Managed Service on the CGC Platform
“Traditional cybersecurity frameworks fall short in the era of generative AI,” said Mateo Rojas-Carulla, co-founder and Chief Scientist at Lakera. “We built the AI Model Risk Index to educate and inform. Enterprises deploying AI systems must completely rethink their approach to securing them. Today, attackers don’t need source code, they just need to know how to communicate with AI systems in plain English.”
Most risk assessment approaches focus on surface-level issues: testing prompt responses in isolation and with context independent static prompt attacks that focus on quantity and not on context or quality. By contrast, the Index asks a more practical question for enterprises: how easily can this model be manipulated to break mission-specific rules and objectives and in which type of deployments?
The difference is critical.
Cyber Technology Insights : BackBox Unveils BackBox 8.0: Revolutionizing Network Cyber Resilience with a Unified View
Within the report, you will find:
- Real-world attack simulation models how adversaries target AI systems through multiple attack vectors, including direct manipulation attempts through user interactions and indirect attacks that embed malicious instructions in RAG documents or other content the AI processes.
- Applied risk assessment focuses on measuring whether AI systems can maintain their intended purpose under adversarial conditions. The evaluation tests the model’s consistency in performing its designated role, which is essential for enterprise deployments where predictable behavior drives business operations and regulatory compliance.
- Quantitative risk measurement provides clear scoring that enables relative analysis between different AI models, tracks security improvements or degradations across model versions and releases, and delivers standardized metrics for enterprise security evaluation.
Cyber Technology Insights : Saviynt Appoints Palo Alto Networks, Citrix Exec Steve Blacklock as Channel Chief
To participate in our interviews, please write to our CyberTech Media Room at sudipto@intentamplify.com
Source: businesswire