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Understanding Embeddings: The Semantic Backbone of LLMs
Embeddings are the semantic backbone of LLMs, transforming raw text into vectors that machines can understand. This article explores how embeddings evolved from simple statistical methods to the sophisticated contextual representations that power modern AI.
21 Jan 2025
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