This document discusses a hybrid genetic algorithm (HGA) designed for multiprocessor task scheduling that minimizes the weighted sum of makespan and total completion time. The proposed method combines various heuristic approaches to genetic algorithms to improve solution quality, particularly for large and complex scheduling problems. Performance analysis demonstrates that the ETF-GA variant is especially efficient compared to other heuristic-based HGAs.