Gradient Descent is one of the most popular and widely used optimization algorithms. Given a machine learning model with parameters (weights and biases) and a cost function to evaluate how good a particular model is, our learning problem reduces to that of finding a good set of weights for our model which minimizes the cost function.
Gradient descent is an iterative method. We start with some set of values for our model parameters (weights and biases), and improve them slowly. To improve a given set of weights, we try to get a sense of the value of the cost function for weights similar to the current weights (by calculating the gradient) and move in the direction in which the cost function reduces. By repeating this step thousands of times we'll continually minimize our cost function.