
nard AI

nard AI
2024-05-31 - Artificial Intelligence, Web Development, Gaming
Developer
URL
https://github.com/pappitti/nardai
Write-up coming soon, in the meantime, refer to the README file in the repo...
Linked articles

WEB - 2023-04-07
Generative Agents: Interactive Simulacra of Human Behavior
Joon Sung Park, Joseph C. O'Brien, Carrie J. Cai, Meredith Ringel Morris, Percy Liang and Michael S. Bernstein instantiate gene...

WEB - 2023-04-06
Do the Rewards Justify the Means? Measuring Trade-Offs Between Rewards and Ethical Behavior
Alexander Pan, Jun Shern Chan, Andy Zou, Nathaniel Li, Steven Basart, Thomas Woodside, Jonathan Ng, Hanlin Zhang, Scott Emmons ...

WEB - 2023-05-16
Playing repeated games with Large Language Models
Elif Akata, Lion Schulz, Julian Coda-Forno, Seong Joon Oh, Matthias Bethge and Eric Schulz propose to use behavioral game theor...

WEB - 2023-06-23
LLM Powered Autonomous Agents
Lilian Weng gives a comprehensive overview of Agent Systems, their opportunities and their challenges

WEB - 2023-06-28
Curious Replay for Model-based Adaptation
Isaac Kauvar, Chris Doyle, Linqi Zhou and Nick Haber present Curious Replay - a form of prioritized experience replay tailored ...

WEB - 2023-09-25
AutoGen: Enabling next-generation large language model applications
Microsoft Research describe a framework for simplifying the orchestration, optimization, and automation of LLM workflows.

WEB - 2023-11-08
ADaPT: As-Needed Decomposition and Planning with Language Models
Archiki Prasad, Alexander Koller, Mareike Hartmann, Peter Clark, Ashish Sabharwal, Mohit Bansal and Tushar Khot introduce ADaPT...

WEB - 2024-02-01
Formal-LLM: Integrating Formal Language and Natural Language for Controllable LLM-based Agents
Zelong Li, Wenyue Hua, Hao Wang, He Zhu and Yongfeng Zhang propose a novel framework to enhance the control of Large Language M...