The document discusses a literature review on gender prediction models using CNN algorithms. It summarizes previous research that used techniques like CNNs, K-means clustering, and open-CV to develop models for gender classification from images with over 90% accuracy. The paper also proposes developing an enhanced gender prediction model using a CNN approach for pre-processing images and evaluating the accuracy of the model. It suggests CNNs can effectively extract features from faces and classify gender by training on labeled image datasets. Evaluation of the proposed model showed 98.7% accuracy on open-CV and 94% on CNN datasets.