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Tag: next-token prediction

Pretraining Objectives in Generative AI: Masked Modeling, Next-Token Prediction, and Denoising
Pretraining Objectives in Generative AI: Masked Modeling, Next-Token Prediction, and Denoising

Tamara Weed, Apr, 15 2026

Explore the core pretraining objectives of Generative AI: Masked Modeling, Next-Token Prediction, and Denoising. Learn how they power BERT, GPT, and Stable Diffusion.

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Science & Research

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pretraining objectives masked modeling next-token prediction denoising diffusion generative AI

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