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"content": "R and Security!\n\nFrom the Risk 2026 talk “A Bayesian R Framework for Quantifying Cyber Risk Using the FAIR Model and MITRE ATT\u0026CK”:\n\nA fully open, R-based quantitative cyber-risk model combining FAIR + MITRE ATT\u0026CK. Uses {cmdstanr}, Bayesian inference, and Monte Carlo to estimate ALE, incident frequency, and loss exceedance curves—transparent + reproducible.\n\nAbstract: https://rconsortium.github.io/Risk_website/Abstracts.html#joshua-connors\n\nRegister for Risk 2026!\n\n#RStats #CyberSecurity #BayesianStatistics #RiskManagement\n\nhttps://cdn.fosstodon.org/media_attachments/files/116/024/812/872/996/817/original/e1807b941bcefd55.jpg",
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