Machine Learning Explained (Statistical ML vs Deep Learning) | Let’s Go Deeper… and Deeper

Kritovia · Beginner ·📐 ML Fundamentals ·6mo ago

Key Takeaways

This video teaches the fundamentals of machine learning, including statistical machine learning and deep learning.

Original Description

Machine Learning is not magic, it’s pattern learning. In this video, we break down Machine Learning into: • Statistical Machine Learning • Deep Learning • Why both exist • Where each one is used • And how Transformers fit into this journey Yes… I said “deeper & deeper” multiple times Because learning ML actually works like that, every layer goes deeper, and deeper, and deeper. This video is PART OF OUR TRANSFORMERS ARCHITECTURE SERIES In the upcoming videos, we’ll go step-by-step and explain EVERY SINGLE TYPE in detail: • Regression • Classification • Clustering • Dimensionality Reduction • Reinforcement Learning • CNNs • RNNs • Transformers …and finally BUILD A MINI CHATBOT FROM SCRATCH. If you’re: ✔ a beginner in AI ✔ a student confused between ML & DL ✔ a developer who wants strong fundamentals ✔ or just curious how AI really works This series is for you. 📌 Watch till the end, this is the foundation video. 📌 Subscribe to join the Kritovian community. 📌 Comment “DEEPER” if you caught it Let’s build AI the right way, fundamentals first. #machinelearning #deeplearning #statisticalmethods #aiforbeginners #transformers #artificialintelligence #mlbb #learnai #Kritova #aiexplained #DeeperAndDeeper
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