BACKGROUND: Advances in machine learning (ML) offer an innovative approach to accurate fetal weight estimation by integrating multiple biometric and clinical variables. OBJECTIVE: To develop and validate ML models for estimating fetal weight using biometric data obtained via ultrasonography, evaluating their accuracy and comparing them with traditional formulas, such as Hadlock and Shepard. METHODS: A retrospective observational study was conducted at the National Maternal Perinatal Institute of Peru from 2009 to 2022, including 3525 low-risk pregnancies with singleton gestations. ML models, including Gradient Boosting, Support Vector Machine (SVM), Random Forest and TabPFN (Tabular Prior-data Fitted Network), were trained and validated using ultrasonographic measurements such as biparietal diameter, abdominal circumference, head circumference, femur length, and gestational age. Accuracy was assessed using the coefficient of determination ( RESULTS: Data from the first study stage (2009-2018) indicated that the TabPFN model was the most accurate ( CONCLUSIONS: The TabPFN model outperformed traditional formulas, including Hadlock and Shepard, and other evaluated machine learning methods in estimating fetal weight. Its high predictive accuracy, robustness across temporally distinct cohorts, and independence from hyperparameter tuning support its potential as a reliable clinical decision-support tool in obstetric care.