Published Aug 23, 2023

The new AI app stack

Explore the transformative impact of vector databases, embedding techniques, and large language models on AI applications as Chris Benson and Daniel Whitenack uncover the new AI app stack, highlighting innovations like advanced middleware tools that enhance performance, security, and integration.
Episode Highlights
Practical AI logo

Popular Clips

Episode Highlights

  • Database Evolution

    The evolution of vector databases is reshaping AI applications by enabling more efficient data retrieval and storage. highlights the challenges vendors face in optimizing for either data input speed or query speed, which can significantly impact performance 1. He suggests that the complexity of retrieval problems often dictates the size of embeddings needed, with larger embeddings required for semantically difficult tasks 1. adds that vector databases are integral to the new AI app stack, facilitating semantic searches by embedding data in a way that traditional databases cannot 2.

       

    Embedding Techniques

    Embedding techniques are crucial for optimizing AI systems, with performance metrics playing a key role in their selection. points out that platforms like Hugging Face offer leaderboards to evaluate embeddings based on various benchmarks, aiding in the selection process 3. He emphasizes the importance of considering embedding size and speed, as larger embeddings can significantly increase storage requirements and processing time 3. Additionally, notes that the AI app stack involves more than just models, highlighting the orchestration needed to integrate data, resources, and applications effectively 4.

Related Episodes