This document discusses a comparative study between conventional Genetic Algorithms (GA) and Quantum Genetic Algorithms (QGA), highlighting the principles, structures, and effectiveness of both methods in solving the 0/1 knapsack problem. It details how QGA, leveraging quantum computing concepts, shows promise in exploring search spaces more efficiently than traditional GA. Experimental results are analyzed to illustrate the performance differences and capabilities of each algorithm.