-

Secure Code Warrior Introduces its AI Adoption Model to accelerate secure AI adoption as the SDLC evolves toward the Agentic Development Lifecycle

SCW’s framework gives organizations a clear entry point and practical roadmap for every team — at every stage of the AI adoption curve

SYDNEY & BOSTON & LONDON--(BUSINESS WIRE)--Secure Code Warrior, a leader in AI software governance and developer security upskilling, today introduced its new SCW AI Adoption Model, a practical framework that maps the full progression of AI use in software development, from minimal AI assistance or fully autonomous agentic orchestration. The framework gives CISOs a roadmap to identify where their organization sits today from an AI adoption perspective, the training developers need at each stage, and which governance controls are required as autonomy increases — answering the question every security leader is asking: where do we start?

AI adoption is no longer confined to engineering: non-developer employees building applications with no-code and vibe coding tools still contribute to an organization's risk profile.

Share

Gartner's 2026 Hype Cycle for Secure Software Engineering warns that AI-augmented development is 'expanding the attack surface faster than traditional controls can scale,’ and that AI coding tools are making secure coding skills more important than ever. AI adoption is no longer confined to engineering: non-developer employees building applications with no-code and vibe coding tools still contribute to an organization's risk profile.

The SCW AI Adoption Model organizes AI development into three phases: AI-Assisted, AI Native, and Agentic. Each phase carries distinct risk levels, developer skills requirements, and governance controls, giving CISOs a clear way to connect AI usage, developer capability, and software risk signals. This allows security leadership to measure, reduce, and govern risk while demonstrating progress in securing the Software Development Lifecycle (SDLC) as it transitions to the more relevant Agentic Development Lifecycle (ADLC).

“In our current AI-powered development, writing lines of code is almost free, but developers are still on the hook for secure outcomes. Their security skills need to evolve from code writer to creator & orchestrator,” said Pieter Danhieux, Secure Code Warrior Co-founder & CEO. “CISOs need an approach to ADLC governance that is as modern as the methodology itself, one that follows an adoption model designed for agentic AI’s evolving, adaptive approach to software development. We’ve built this framework to help organizations turn secure AI adoption and AI governance from a reactive exercise into a measurable, scalable discipline.”

As security leaders need data-driven insights to inform their AI cost decision-making, this new framework provides organizations the insight needed to safely address risk correlation. With the SCW AI Adoption Model, organizations can:

  • Identify their current AI adoption stage: Not all AI use carries the same risk. The model gives organizations a clear map to help them identify where they are, what training is required, and what governance controls need to be in place at that stage.
  • Deliver training that meets developers where they are: Not every developer has the same skill level or uses AI the same way. SCW maps capability, risk, and training to each adoption phase — giving developers the specific AI security skills that apply to how they actually work.
  • Demonstrate governance ROI: Gartner predicts that by 2027, more than 40% of agentic AI projects will be abandoned because of uncontrolled costs and poor risk controls. The answer isn't more AI catching AI mistakes — it's training developers to use AI correctly from the start, producing secure code, avoiding repeated vulnerabilities, and using AI efficiently enough to keep costs under control. SCW provides the tools and training to prove that behavior change is making an impact.

The SCW AI Adoption Model is now available. To explore the framework, visit: https://www.securecodewarrior.com/solution/scw-ai-adoption-model.

About Secure Code Warrior

Secure Code Warrior is a leader in AI software governance and developer security upskilling, enabling enterprises to control AI-driven software development across the SDLC. Built on a decade of developer security expertise, it delivers AI visibility, policy enforcement, and targeted learning to prevent vulnerabilities and strengthen software quality before production.

Contacts

Secure Code Warrior


Release Versions

Contacts

More News From Secure Code Warrior

Secure Code Warrior Advances AI Software Governance with New Adaptive Learning Capability at the 2026 Gartner® Security & Risk Management Summit

Gartner Security & Risk Management Summit, NATIONAL HARBOR, Md.--(BUSINESS WIRE)--Secure Code Warrior, a leader in AI software governance and developer security upskilling, today unveiled its new Adaptive Learning capability from the Gartner Security & Risk Management Summit 2026. Adaptive Learning helps enterprises move AI software governance from visibility to measurable action — delivering targeted, risk-aligned microlearning at the moment of risk, and proving the result at the commit le...

Secure Code Warrior Signs Strategic Collaboration Agreement with AWS to Support Security-Conscious Developers with Amazon Bedrock AI Learning Modules

SYDNEY & BOSTON & LONDON--(BUSINESS WIRE)--Secure Code Warrior, a leader in AI software governance and developer security upskilling, announced it has signed a strategic collaboration agreement (SCA) with Amazon Web Services (AWS), and has launched new interactive, hands-on training modules now available within the Secure Code Warrior platform. The new modules enable developers and engineers to build Secure by Design habits, maintain continuous risk awareness, and adopt secure operational pract...

Secure Code Warrior Launches Trust Agent: AI to Enable Safe, Scalable AI-Driven Development

SYDNEY & BOSTON & LONDON--(BUSINESS WIRE)--Secure Code Warrior today announced SCW Trust Agent: AI, the industry’s first governance solution designed to make AI influence in software development visible, attributable, and enforceable at the point of commit — enabling enterprises to scale AI coding tools with measurable control over software risk. For the first time, organizations can trace which AI models influenced specific commits, correlate that influence to vulnerability exposure, and take...
Back to Newsroom