Cisco Integrated AI Security and Safety Framework Report
Amy Chang, Tiffany Saade, Sanket Mendapara, Adam Swanda, Ankit Garg

TL;DR
This paper introduces Cisco's comprehensive AI Security Framework, a lifecycle-aware taxonomy designed to classify, understand, and mitigate the broad spectrum of AI risks across modalities and ecosystems.
Contribution
It presents a unified, extensible framework that integrates AI security and safety, addressing gaps in existing models and supporting practical threat management across AI deployments.
Findings
Provides a comprehensive taxonomy for AI risks
Demonstrates how to operationalize AI security measures
Addresses gaps in existing security frameworks
Abstract
Artificial intelligence (AI) systems are being readily and rapidly adopted, increasingly permeating critical domains: from consumer platforms and enterprise software to networked systems with embedded agents. While this has unlocked potential for human productivity gains, the attack surface has expanded accordingly: threats now span content safety failures (e.g., harmful or deceptive outputs), model and data integrity compromise (e.g., poisoning, supply-chain tampering), runtime manipulations (e.g., prompt injection, tool and agent misuse), and ecosystem risks (e.g., orchestration abuse, multi-agent collusion). Existing frameworks such as MITRE ATLAS, National Institute of Standards and Technology (NIST) AI 100-2 Adversarial Machine Learning (AML) taxonomy, and OWASP Top 10s for Large Language Models (LLMs) and Agentic AI Applications provide valuable viewpoints, but each covers only…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Ethics and Social Impacts of AI · Information and Cyber Security
