aSAH is a neurological emergency with well established high morbidity and mortality. Sepsis complicates 21–46% of aSAH cases and is independently associated with increased mortality, prolonged ICU stay, and worse functional outcomes. However, conventional tools such as SOFA and SIRS scores are limited in this population due to overlapping clinical features—such as neurogenic fever, sedation, and vasospasm—that mimic sepsis and reduce diagnostic specificity. Up to 85% of aSAH patients meet SIRS criteria irrespective of infection. Recent studies highlight the need for tailored prediction tools, with emerging evidence suggesting that individualized models outperform traditional criteria. The MIMIC-IV ICU database offers granular, longitudinal data on demographics, vital signs, laboratory results, and interventions, creating an opportunity to train and validate robust machine learning models.