AI Engineering Podcast cover image

Convert Your Unstructured Data To Embedding Vectors For More Efficient Machine Learning With Towhee

AI Engineering Podcast

00:00

Is Vector Encoding a Requirement for Machine Learning?

In terms of vector embeddings, is that something that is a requirement for the majority of machine learning use cases? And for those instances where you are relying on a vector embedding as an input to a machine learning model, whether for training or inference, what are some of the ways that it's actually used within that machine learning project. The main sort of applications that you see are in the semantic search, in vector search, or understanding what we like to call unstructured data. Data that you can pass through machine learning models or data that you can passed through your own handcrafted algorithms will get an embedding based off of that.

Transcript
Play full episode

The AI-powered Podcast Player

Save insights by tapping your headphones, chat with episodes, discover the best highlights - and more!
App store bannerPlay store banner
Get the app