Nov 23, 2025

Neops - DevSecOps for the AI era

Hans A. Gunnoo, Spyridon Georgakopoulos

NEOps is a CLI-based tool that embeds AI safety into your product lifecycle from day one. While development teams routinely build cybersecurity checks, AI-safety often comes later—or not at all. NEOps fills that gap by automatically scanning your code, front-end/back-end architecture, and documentation for threats unique to AI-driven systems: unsafe model usage, deprecated or legacy models, and improper handling of outputs from large-language models. Its rules are curated from top frameworks and labs—such as OWASP’s Top 10 for LLM Applications and safety guidelines from leading AI providers—and are fully customizable and shareable. Integrated into CI/CD pipelines and configured via pyproject.toml, NEOps helps teams manage AI-safety with the same rigor as traditional DevSecOps.

Reviewer's Comments

Reviewer's Comments

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This is a great tool that will fill an important AI safety gap for engineers.

Cite this work

@misc {

title={

(HckPrj) Neops - DevSecOps for the AI era

},

author={

Hans A. Gunnoo, Spyridon Georgakopoulos

},

date={

11/23/25

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.