Self-Supervised Learning: The Next Frontier in Machine Learning
Author(s): Aleti Adarsh
Originally published on Towards AI.
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Have you ever felt like the world of machine learning is moving so fast that you can barely keep up? Trust me, Iβve been there too. One day, itβs all about supervised learning and the next, people are throwing around terms like βself-supervised learningβ as if itβs the holy grail of AI. I remember the first time I stumbled across this concept. My initial thought? Oh great, another buzzword. But the more I dug into it, the more I realized this wasnβt just hype β it was a game-changer.
So, what exactly is self-supervised learning? And why are tech giants like Google and Facebook betting big on it? Letβs dive in and explore this fascinating topic together.
Before we get into the nitty-gritty, let me ask you something: Have you ever wondered how babies learn? They donβt come into the world with labeled datasets, right? No one points to an apple and says, βThis is an appleβ 10,000 times. They just observe, explore, and figure things out. Thatβs essentially what self-supervised learning (SSL) is trying to replicate in machines.
Unlike supervised learning, where models are trained on labeled data, SSL lets the… Read the full blog for free on Medium.
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Published via Towards AI