As a typical difficult-to-machine material, cemented carbide YG10 was prone to cause severe tool wear when common cutting method was used.In response to this problem,laser-assisted cutting method was proposed for machining.By comparing the tool wear conditions under the two machining methods of ordinary cutting and laser-assisted cutting,it was demonstrated that laser-assisted cutting could effectively reduce cutting force and tool wear.The support vector regression model (SVR) and cross-validation-support vector regression model(CV-SVR)were established,and the amount of flank wear under specific cutting conditions were predicted.The result shows that the prediction results of the two models have a small error with the actual values,in particular,the CV-SVR model has higher fitting accuracy,compared with the SVR model,the average relative error is reduces by about 10%.The CV-optimized SVR model can effectively simulate the nonlinear relationship in tool wear,and it can provide a basis for the judgment of tool wear in actual machining.