It is widely known that conditional inference is usually just as effective as Bayesian inference based on the non-informative prior. However, it is less efficient than Bayesian inference based on the informative prior distribution. Therefore, the main objective is to find the conditional point estimates using the pivotal functions for the Weibull distribution parameters, based on the generalized progressive hybrid-censoring scheme, and compare it with the Bayesian estimates, via Monte Carlo simulation. The simulation results showed that the conditional inference is highly efficient and provides better estimates than the Bayesian estimates based on different loss functions. Finally, the proposed model could be important for analyzing real data to demonstrate the efficiencies of the proposed methods.