The Ins and Outs of Working with Embeddings and Embedding Models

TDS Editors

Ready to zoom all the way in on a timely technical topic? We hope so, because this week’s Variable is all about the fascinating world of embeddings.

Embeddings and embedding models are essential building blocks in the powerful AI tools we’ve seen emerge in recent years, which makes it all the more important for data science and machine learning practitioners to gain fluency in this area. Even if you’ve explored embeddings in the past, it’s never a bad idea to expand your knowledge and learn about emerging approaches and use cases.

Our highlights this week range from the relatively high-level to the very granular, and from theoretical to extremely hands-on. Regardless of how much experience you have with embeddings, we’re certain you’ll find something here to pique your curiosity.

Photo by Alex Hu on Unsplash

For readers who’d like to explore other topics this week, we’re thrilled to recommend some of our recent standouts:

Thank you for supporting the work of our authors! If you’re feeling inspired to join their ranks, why not write your first post? We’d love to read it.

Until the next Variable,

TDS Team


The Ins and Outs of Working with Embeddings and Embedding Models was originally published in Towards Data Science on Medium, where people are continuing the conversation by highlighting and responding to this story.

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