The cost of retrieval in data points is directly proportional to the data's dimensionality. Embeddings with a fixed dimension, like 1024, force users to adapt their systems. The limitation triggers the need to adjust retrieval engines, indexers, and serving mechanisms to accommodate the higher dimensionality. To address this issue, the concept of Metjeshka representations aims to provide flexibility by allowing users to extract a subset of coordinates, such as 64, from the higher-dimensional embeddings. This approach prevents users from having to overhaul their entire serving stack and enables a more seamless incorporation of embeddings in various systems.

Get the Snipd
podcast app

Unlock the knowledge in podcasts with the podcast player of the future.
App store bannerPlay store banner

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode

Save any
moment

Hear something you like? Tap your headphones to save it with AI-generated key takeaways

Share
& Export

Send highlights to Twitter, WhatsApp or export them to Notion, Readwise & more

AI-powered
podcast player

Listen to all your favourite podcasts with AI-powered features

Discover
highlights

Listen to the best highlights from the podcasts you love and dive into the full episode