NEW
How to Choose Embedding Models for LLMs
Embedding models are the backbone of modern AI applications. They transform raw text or data into numerical vectors, enabling large language models (LLMs) to understand and process information more effectively. Choosing the right embedding model is critical for optimizing performance, accuracy, and scalability. Selecting the right model involves aligning your use case, budget, and performance goals. This guide walks you through the process, helping you evaluate options and make informed decisions. Picking the right embedding model boils down to aligning it with your specific use case, budget, and performance goals. These criteria serve as the foundation for evaluating models and directly influence the success of your LLM application. Below, we break down the key factors to consider.