Suffering from the inefficient traditional trial-and-error methods and the huge searching space filled by millions of candidates,discovering new perovskite visible photocatalysts with higher hydrogen produc-tion rate(RH2)still remains a challenge in the field of photocatalytic water splitting(PWS).Herein,we established structural-property models targeted to RH2 and the proper bandgap(Eg)via machine learning(ML)technology to accelerate the discovery of efficient perovskite photocatalysts for PWS.The Pearson correlation coefficients(R)of leave-one-out cross validation(LOOCV)were adopted to compare the per-formances of different algorithms including gradient boosting regression(GBR),support vector regression(SVR),backpropagation artificial neural network(BPANN),and random forest(RF).It was found that the BPANN model showed the highest R values from LOOCV and testing data of 0.9897 and 0.9740 for RH2,while the GBR model had the best values of 0.9290 and 0.9207 for Eg.Furtherly,14 potential PWS per-ovskite candidates were screened out from 30,000 ABO3-type perovskite structures under the criteria of structural stability,Eg,conduction band energy,valence band energy and RH2.The average RH2 of these 14 perovskites is 6.4%higher than the highest value in the training data set.Moreover,the online web servers were developed to share our prediction models,which could be accessible in http://materials-data-mining.com/ocpmdm/material_api/ahfga3d9puqlknig(Eg prediction)and http://materials-data-mining.com/ocpmdm/material-api/i0ucuyn3wsd14940(RH2 prediction).