In this episode, I had the pleasure of speaking with Jason Liu, an applied AI consultant and the creator of Instructor – an open-source tool for extracting structured data from LLM outputs. We chat about LLM applications, their challenges, and how to overcome them. We also dive into Instructor, making LLMs interact with existing systems and a bunch of other cool things.

Join our Discord community: https://discord.gg/tEYvqxwhah

➡️ Jason Liu on Twitter – https://twitter.com/jxnlco

🤖 Instructor Blog – https://jxnl.github.io/instructor/

🌐 Check Out Our Website! https://dagshub.com

Social Links:

➡️ LinkedIn: https://www.linkedin.com/company/dagshub

➡️ Twitter: https://twitter.com/TheRealDAGsHub

➡️ Dean Pleban: https://twitter.com/DeanPlbn

Timestamps:

00:00 Introduction

02:18 Excitement about Machine Learning and AI

03:28 Using LLMs as Backend Developers

04:22 Building Applications with LLMs

07:07 Building Instructor

09:30 Thinking in Logic and Design

10:33 Validating Data and Building Systems with Instructor

11:49 Thoughts About Product and UX in LLMs

17:51 Future of Instructor

20:25 Misconceptions and Unsolved Problems in LLMs

24:57 Improving LLM Applications

26:14 RAG as Recommendation Systems

29:32 Fine-tuning Embedding Models

32:32 Beyond Vector Similarity in RAG

39:32 Predictions for the Next Year in AI and ML

45:26 Measuring Impact on Business Outcomes

47:06 The Continuous Cycle of Machine Learning

48:38 Unlocking Economic Value through Structured Data Extraction

50:52 Questioning the Status Quo and Making an Impact

Podden och tillhörande omslagsbild på den här sidan tillhör Dean Pleban @ DagsHub. Innehållet i podden är skapat av Dean Pleban @ DagsHub och inte av, eller tillsammans med, Poddtoppen.