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Exponentially Weighted Moving Average is a very important concept to understand Optimization in Deep Learning. It means that as we move forward, we simultaneously calculate the average of the points. In Exponentially Weighted Moving Average, we consider a few points, calculate their approximate weighted average, and then plot the graph. Then consider the next point as we move forward in time, calculate its approximate weighted average of the new set of points, and then again plot the graph and so on. The catch here is that we are calculating the weighted average, and it means that, we give more weight to some points and less weight to others. Optimization in Deep Learning like Momentum, RMSProp, and Adam can only be implemented with the help of Exponentially Weighted Moving Average. Thus it is very important to understand it. Digital Notes for Deep Learning: https://shorturl.at/NGtXg ============================ Do you want to learn from me? Check my affordable mentorship program at : https://learnwith.campusx.in ============================ 📱 Grow with us: CampusX' LinkedIn: / campusx-official CampusX on Instagram for daily tips: / campusx.official My LinkedIn: / nitish-singh-03412789 Discord: / discord 👍If you find this video helpful, consider giving it a thumbs up and subscribing for more educational videos on data science! 💭Share your thoughts, experiences, or questions in the comments below. I love hearing from you! ⌚Time Stamps⌚ 00:00 - Intro 00:43 - What is EWMA? 05:13 - Mathematical Formulation 13:08 - Mathematical Intuition 16:48 - Python Code Demo 18:39 - Outro