Tutorial-44:RMSProp optimizer explained in detail | Simplified | Deep Learning |Telugu

Connect with us on Social Media! 📸 Instagram: https://www.instagram.com/algorithm_a... 🧵 Threads: https://www.threads.net/@algorithm_av... 📘 Facebook:   / algorithmavenue7   🎮 Discord:   / discord   In this video, we dive deep into RMSProp (Root Mean Square Propagation) — one of the most popular optimization algorithms in deep learning. 🚀 You’ll learn: ✅ Why RMSProp was introduced (to fix AdaGrad’s diminishing learning rate problem) ✅ The update rule and how it works step by step ✅ Key hyperparameters like lr, alpha, eps, momentum, and centered explained in simple terms ✅ Comparison with AdaGrad and Adam ✅ Practical intuition on when to use RMSProp (especially for RNNs and non-stationary objectives) ✅ A PyTorch implementation example on sparse data Whether you’re a beginner in machine learning or looking to strengthen your deep learning fundamentals, this tutorial will give you a clear and practical understanding of RMSProp. 👉 If you found this useful, don’t forget to Like , Share , and Subscribe for more awesome content! #RMSProp #RMSPropOptimizer #DeepLearning #MachineLearning #NeuralNetworks #AI #ArtificialIntelligence #GradientDescent #AdaptiveOptimizers #OptimizationAlgorithm #PyTorch #TensorFlow #Keras #LearnAI #MLforBeginners #DeepLearningForBeginners #DataScience #AIExplained #MachineLearningTutorial #DeepLearningTutorial #Backpropagation #OptimizersInDeepLearning #SGD #AdaGrad #AdamOptimizer #ComputerVision #NLP #AIResearch #AICommunity #MLEngineer