Displacement prediction is crucial to landslide engineering monitoring and early warning. An Optuna-NeuralProphet model is proposed based on the Optuna framework and the NeuralProphet model to address the challenge of predicting step-like landslide displacement. The NeuralProphet model, with its capabilities for time series decomposition and combination prediction, is introduced to predict step-like landslide displacement. The various modules of the NeuralProphet model, such as the trend, periodicity, and auto-regression modules, effectively capture the complex characteristics of landslide monitoring data. The Optuna framework is utilized to optimize the model’s hyperparameters, enhancing its applicability and prediction accuracy. The Baijiabao landslide displacement prediction model is constructed by selecting appropriate modules of the NeuralProphet model based on the monitoring data characteristics. Subsequently, the model’s hyperparameters are optimized to facilitate the training and prediction of landslide displacement data. Finally, the efficacy of the Optuna-NeuralProphet model is validated through comparative analysis with multiple models. The results indicate that the Optuna-NeuralProphet model achieves higher accuracy and accurately predicts landslide deformation, better fulfilling the practical requirements of step-like landslide monitoring and early warning.