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Counting shots, making strides: Zero, one and few-shot learning unleashed 

Data Science Dojo

Zero-shot, one-shot, and few-shot learning are redefining how machines adapt and learn, promising a future where adaptability and generalization reach unprecedented levels. Source: Photo by Hal Gatewood on Unsplash In this exploration, we navigate from the basics of supervised learning to the forefront of adaptive models.

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Data Science Dojo - Untitled Article

Data Science Dojo

Zero-shot, one-shot, and few-shot learning are redefining how machines adapt and learn, promising a future where adaptability and generalization reach unprecedented levels. Source: Photo by Hal Gatewood on Unsplash In this exploration, we navigate from the basics of supervised learning to the forefront of adaptive models.

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How Faulty Data Breaks Your Machine Learning Process

Dataconomy

To learn more about this topic, please consider attending our fourth annual PyData Berlin conference on June 30-July 2, 2017. The post How Faulty Data Breaks Your Machine Learning Process appeared first on Dataconomy. Miroslav Batchkarov and other experts will be giving talks.

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What Is a Transformer Model?

Hacker News

First described in a 2017 paper from Google, transformers are among the newest and one of the most powerful classes of models invented to date. They’re driving a wave of advances in machine learning some have dubbed transformer AI. Now we see self-attention is a powerful, flexible tool for learning,” he added. “Now

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The Full Story of Large Language Models and RLHF

Hacker News

The core process is a general technique known as self-supervised learning , a learning paradigm that leverages the inherent structure of the data itself to generate labels for training. Fine-tuning may involve further training the pre-trained model on a smaller, task-specific labeled dataset, using supervised learning.

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Foundation models: a guide

Snorkel AI

Foundation models are large AI models trained on enormous quantities of unlabeled data—usually through self-supervised learning. This process results in generalized models capable of a wide variety of tasks, such as image classification, natural language processing, and question-answering, with remarkable accuracy.

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Gamification in AI?—?How Learning is Just a Game

Applied Data Science

In contrast to classification, a supervised learning paradigm, generation is most often done in an unsupervised manner: for example an autoencoder , in the form of a neural network, can capture the statistical properties of a dataset. Language as a game: the field of Emergent Communication Firstly, what is language?

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