This study unveils a groundbreaking system leveraging the capabilities of machine learning to forecast and identify seizures, thereby making a substantial positive impact on the lives of individuals grappling with seizures and alleviating concerns for their caregivers. Demonstrating an exceptional accuracy rate of 98.9%, machine learning techniques are applied to not only categorize seizures but also to predict their onset. This innovative approach facilitates prompt intervention and personalized support, addressing a critical requirement in healthcare. The system employs a comprehensive methodology, utilizing cutting-edge sensors such as electroencephalography (EEG) for monitoring brain activity, electrocardiography (ECG) for tracking heart rate, and thermography for temperature monitoring. This holistic physiological monitoring provides invaluable insights for healthcare professionals, enabling them to tailor treatment plans based on individual needs. However, the true ingenuity lies in the real-time alert system, which promptly notifies designated caregivers through SMS and email upon detecting a potential seizure. This feature not only ensures swift response times but also offers peace of mind and heightened safety for individuals with seizures and their families. Furthermore, the system is meticulously designed to be user-friendly and seamlessly integrates with assistive technologies, ensuring accessibility for users with varying levels of technical expertise. Essentially, this study offers a ground-breaking approach to seizure detection through machine learning, offering a revolutionary fix. that greatly improves the general well-being and safety of those who have seizures and their families. This is a significant development in medical technology with its comprehensive monitoring and real-time alerts serving as a vital lifeline for individuals in need.