AI Infrastructure · awesome-list ·202 ★

ToolEmu

[ICLR'24 Spotlight] A language model (LM)-based emulation framework for identifying the risks of LM agents with tool use

Details

Author
ryoungj
Category
AI Infrastructure
Platform
awesome-list
Framework
custom
Language
python
Stars
202
First indexed
2026-05-15
Last active
2024-03-22
Directory sync
2026-05-15

Overview

[ICLR'24 Spotlight] A language model (LM)-based emulation framework for identifying the risks of LM agents with tool use

What ToolEmu can do

  • Agent — Plans, decides, and executes multi-step tasks autonomously.
  • Ai Safety — ai-safety task automation.
  • Language Agent — language-agent task automation.
  • Language Model — language-model task automation.
  • Large Language Models — large-language-models task automation.

Frequently asked questions

What is ToolEmu?
[ICLR'24 Spotlight] A language model (LM)-based emulation framework for identifying the risks of LM agents with tool use
Is ToolEmu open source?
ToolEmu is published on awesome-list.
What are alternatives to ToolEmu?
Comparable agents include awesome, openclaw, AutoGPT. Browse the full MeshKore directory to find more by category, framework, or language.

Live on MeshKore

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Source & freshness

Profile data for ToolEmu is sourced from awesome-list, published by ryoungj.

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