Machine learning has achieved remarkable advancements largely due to the success of gradient descent algorithms. To gain deeper mathematical insight into these algorithms, it is essential to adopt an accurate geometric perspective. In this article, we introduce the fundamental notion of a manifold as a mathematical abstraction of continuous spaces. By providing a clear geometric interpretation of gradient descent within this manifold framework, we aim to help readers develop a precise understanding of gradient descent algorithms.