Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
Sports
History
Music
About Us
Contact Us
Copyright
© 2024 PodJoint
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts116/v4/02/48/c7/0248c77f-89f6-dd8d-5fa6-cd84f09f2013/mza_16356865612797649208.jpg/600x600bb.jpg
Austrian Artificial Intelligence Podcast
Manuel Pasieka
72 episodes
2 days ago
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me
Show more...
Technology
RSS
All content for Austrian Artificial Intelligence Podcast is the property of Manuel Pasieka and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me
Show more...
Technology
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_episode/12587253/12587253-1729867482556-5024004565fe2.jpg
62. Marius-Constantin Dinu - extensity.ai - Building reliable and explainable AI Agent Systems
Austrian Artificial Intelligence Podcast
1 hour 15 minutes 14 seconds
1 year ago
62. Marius-Constantin Dinu - extensity.ai - Building reliable and explainable AI Agent Systems

As you surely know, OpenAI is not very open about how their systems works or how they build them. More importantly for most uses and business, OpenAI is agnostic about how users apply their services and how to make most out of the models multi-step "reasoning" capabilities .


As a stark contrast to OpenAI, today I am talking to Marius Dinu, the CEO and co-founder of the austrian startup extensity.ai. Extensity.ai as a company follows an open core model, building an open source framework which is the foundation for AI Agent systems that perform multi-step reasoning and problem solving, while generating revenue by providing enterprise support and custom implementation's.


Marius will explain how their Neuro-Symbolic AI Framework is combining the strengths of symbolic reasoning, like problem decomposition, explainability, correctness and efficiency with an LLM's understanding of natural language and their capability to operate on unstructured text following instructions.


We will discuss how their framework can be used to build complex multi-step reasoning workflows and how the framework works like an orchestrator and reasoning engine that applies LLM's as semantic parsers that at different decision points decide what tools or sub-systems to apply and use next. As well how in their research, they focus on ways to measure the quality and correctness of individual workflow steps in order to optimize workflow end-to-end and build a reliable, explainable and efficient problem solving system.


I hope you find this episode useful and interesting.



## AAIP Community

Join our discord server and ask guest directly or discuss related topics with the community.

https://discord.gg/5Pj446VKNU


## TOC

00:00:00 Beginning

00:03:31 Guest Introduction

00:08:32 Extensity.ai

00:17:38 Building a multi-step reasoning framework

00:26:05 Generic Problem Solver

00:48:41 How to ensure the quality of results?

01:04:47 Compare with OpenAI Strawberry


### References

Marius Dinu - https://www.linkedin.com/in/mariusconstantindinu/

https://www.extensity.ai/

Extensity.ai - https://www.extensity.ai/

Extensity.ai YT - https://www.youtube.com/@extensityAI

SymbolicAI Paper: https://arxiv.org/abs/2402.00854

Austrian Artificial Intelligence Podcast
Guest Interviews, discussing the possibilities and potential of AI in Austria. Question or Suggestions, write to austrianaipodcast@pm.me