LLM Adoption Accelerates, but Who is Liable for Vulnerabilities? The Shared Responsibility Model for Secure Innovation. Insights from Sergio Ajani, Service & Solutions Design Director at Innovaway
Every day, thousands of companies entrust decisions, critical data, and operational processes to Large Language Models (LLMs). The urgency to innovate and maintain a competitive edge drives organizations to adopt this extraordinary technology, often underestimating a crucial factor: LLMs represent an unprecedented and rapidly evolving attack surface.
ISTAT data from 2025 confirms this trend: 16.4% of Italian companies with at least 10 employees have already integrated Generative AI solutions—a figure that has tripled compared to 2023. This acceleration, however, is outpacing governance-related:, leading to adoption without a mature risk assessment.
The Risk Perimeter: A Review of Vulnerabilities
For C-level executives and IT Managers, tackling the security bottleneck means first understanding that LLM vulnerabilities are not simple implementation flaws, but critical issues distributed across the entire system lifecycle.
These vulnerabilities stem from structural gaps along the value chain (design, integration, and updates), paving the way for the most insidious problem: the fragmentation of responsibility.
The Dispersion of Responsibility
In the event of an LLM-related security incident, the real challenge is not technical, but legal and governance-related:: who is liable?
Currently, the answer is opaque. Decisions are made by different actors (Vendors, System Integrators, Customers) with misaligned levels of awareness. The inherently probabilistic output of LLMs and the extreme speed of adoption have led companies to integrate these systems into critical processes even before defining a shared risk framework. When the perimeter is breached, the tendency is to pass the buck to other links in the chain.
The Three Non-Delegable Levels of Security
To ensure corporate reliability, it is imperative to eliminate ambiguity through a precise mapping of responsibilities. There are three fundamental levels whose obligations cannot be transferred:
The Necessary Paradigm: Shared Responsibility
The transition to the Cloud faced similar challenges, which were resolved by adopting the Shared Responsibilitymodel, clarifying duties for every layer of the technology stack.
For Generative Artificial Intelligence, this framework is still missing, but building it is the top priority for the ICT sector. This is not merely a technical issue, but a strategic governance-related: challenge. Management must understand the implications of LLM adoption and the dangers of Shadow AI, aligning with Vendors and System Integrators to actively monitor every phase.
The true competitive advantage lies not in the simple adoption of LLMs, but in their implementation through a clear and structured responsibility model. Innovation allows no compromises on security: ignoring this urgency means exposing oneself to devastating costs—not only technical, but economic and reputational—at the very first, inevitable incident.
Click here to read the full interview with Sergio Ajani