Abstract
Abstract: This research focuses on the classification of nine varieties of dates using deep learning techniques. The study aims to
develop an accurate and efficient model capable of identifying different types of dates based on images. A Convolutional Neural
Network (CNN) was employed, trained on a dataset comprising thousands of date images, processed to enhance classification
performance. The model was evaluated on multiple metrics, achieving high accuracy rates, demonstrating the feasibility of using
deep learning in date classification. This approach can significantly aid in automating the identification process, which is crucial
for the agricultural industry. The results indicate that deep learning techniques offer a robust solution for the classification of date
varieties, with potential applications in quality control and market sorting.