Clinical and radiological predictors of prognosis of acute ischemic stroke survivors have been extensively studied. Machine Learning (ML) has facilitated the quantification of the area of damage after stroke and improved prediction of Morbidity and Mortality. Using Machine Learning (ML) in Clinical and radiological practices led to the more sensitive diagnosis of cerebrovascular diseases and improved prediction of mortality in stroke patients. Prognostication immediately after thrombectomy shall help planning the treatment follow-up, clinical management and keep the patients well-informed. We devised a novel machine learning model(MLM) to predict dichotomized 90-day mRS (0-1, >=2) immediately after thrombectomy.