I really like the MLSecOps document shared by Ericson: https://www.ericsson.com/en/reports-and-papers/white-papers/mlsecops-protecting-the-ai-ml-lifecycle-in-telecom 1. I would like to show where in the MLSecOps lifecycle security artifacts/artifact checking helps improve security. 2. I would like to map how OWASP ML top 10 are mitigated using MLSecOps in the same diagram https://owasp.org/www-project-machine-learning-security-top-10/#:~:text=Top%2010%20Machine%20Learning%20Security%20Risks%201%20ML01%3A2023,Learning%20Attack%208%20ML08%3A2023%20Model%20Skewing%20More%20items. 3. I would like to identify where open source or closed source data, models and code impact the AI supply chain/ ML Lifecycle. I would like to discuss in a future call if the team feels this is an interesting visual/written output on which to collaborate, if is already duplicating an existing industry effort, or if it's a good idea but doesn't fall into the scope of the AIML WG.