This research focuses on predicting anemia in children under 5 years old using machine learning algorithms based on complete blood count reports from 700 data records. The study identifies random forest as the most accurate algorithm with a performance of 98.4%, and explores various methods including feature selection and ensemble techniques to enhance accuracy. Ultimately, the research demonstrates the importance of early anemia prediction for preventing future health issues in children.