Numbers, categories, locations, images, text. How to embed the world? | S2 E9
Description
Today’s guest is Mór Kapronczay. Mór is the Head of ML at superlinked. Superlinked is a compute framework for your information retrieval and feature engineering systems, where they turn anything into embeddings.
When most people think about embeddings, they think about ada, openai.
You just take your text and throw it in there.
But that’s too crude.
OpenAI embeddings are trained on the internet.
But your data set (most likely) is not the internet.
You have different nuances.
And you have more than just text.
So why not use it.
Some highlights:
Text Embeddings are Not a Magic Bullet➡️ Pouring everything into a text embedding model won't yield magical results ➡️ Language is lossy - it's a poor compression method for complex information
Embedding Numerical Data➡️ Direct number embeddings don't work well for vector search ➡️ Consider projecting number ranges onto a quarter circle ➡️ Apply logarithmic transforms for skewed distributions
Multi-Modal Embeddings➡️ Create separate vector parts for different data aspects ➡️ Normalize individual parts ➡️ Weight vector parts based on importance
A Multi-Vector approach can help you understand the contributions of each modality or embedding and give you an easier time to fine-tune your retrieval system without fine-tuning your embedding models by tuning your vector database like you would a search database (like Elastic).
Mór Kapronczay
LinkedInSuperlinkedX (Twitter)Nicolay Gerold:
LinkedInX (Twitter)00:00 Introduction to Embeddings 00:30 Beyond Text: Expanding Embedding Capabilities 02:09 Challenges and Innovations in Embedding Techniques 03:49 Unified Representations and Vector Computers 05:54 Embedding Complex Data Types 07:21 Recommender Systems and Interaction Data 08:59 Combining and Weighing Embeddings 14:58 Handling Numerical and Categorical Data 20:35 Optimizing Embedding Efficiency 22:46 Dynamic Weighting and Evaluation 24:35 Exploring AB Testing with Embeddings 25:08 Joint vs Separate Embedding Spaces 27:30 Understanding Embedding Dimensions 29:59 Libraries and Frameworks for Embeddings 32:08 Challenges in Embedding Models 33:03 Vector Database Connectors 34:09 Balancing Production and Updates 36:50 Future of Vector Search and Modalities 39:36 Building with Embeddings: Tips and Tricks 42:26 Concluding Thoughts and Next Steps
Documentation quality is the silent killer of RAG systems. A single ambiguous sentence might corrupt an entire set of responses. But the hardest part isn't fixing errors - it's finding them.
Today we are talking to Max Buckley on how to find and fix these errors.
Max works at Google and has built...
Published 11/21/24
Ever wondered why vector search isn't always the best path for information retrieval?
Join us as we dive deep into BM25 and its unmatched efficiency in our latest podcast episode with David Tippett from GitHub.
Discover how BM25 transforms search efficiency, even at GitHub's immense scale.
BM25,...
Published 11/15/24