Uncertainty has long been a critical area of study in robotics, particularly
when robots are equipped with analytical models. As we move towards the
widespread use of deep neural networks in robots, which have demonstrated
remarkable performance in research settings, understanding the nuances of
uncertainty becomes crucial for their real-world deployment. This guide offers
an overview of the importance of uncertainty and provides methods to quantify
and evaluate it from an applications perspective