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tizkovatereza
2023-06-18 19:01:56 -07:00
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## [AutoGPT](https://autogpt.net/)
<details>
- A lot like BabyAGI combined with LangChain tools.
- Can execute many commands such as Google Search, browse websites, write to files, and execute Python files
- [GitHub](https://github.com/Significant-Gravitas/Auto-GPT)
</details>
@@ -95,11 +98,12 @@ CAMEL: Communicative Agents for “Mind” Exploration of Large Scale Language M
</details>
## [Cognosys](https://cognosys.ai) - Friendly UI for building AI agents
Description: web based version of AutoGPT/babyAGI
## [Cognosys](https://cognosys.ai)
Web based version of AutoGPT/babyAGI
<details>
- Friendly UI for building AI agents
- Author: Sully Omarr
- Twitter: https://twitter.com/SullyOmarr
@@ -253,11 +257,44 @@ Your personal AI writing assistant
<details>
</details>
## [“Westworld” simulation](https://theolvs.github.io/westworld/)
Westworld is a multi-agent simulation library, its goal to simulate and optimize systems and environments with multiple agents interacting.
<details>
- Researchers from Stanford and Google created an interactive sandbox env with 25 Gen AI agents can simulate human behavior
- They walk in the park, join for coffee at a cafe, and share news with colleagues. They demonstrated surprisingly good social
- Westworld's inspiration is drawn from Unity software and Unity ML Agents, adapted in Python
### Links
- [GitHub](https://github.com/TheoLvs/westworld)
- [Documentation](https://theolvs.github.io/westworld/ )
### Languages
- The library is available on PyPi via
pip install westworld
- A javascript version is being developed at https://github.com/TheoLvs/westworldjs
### Current features
- Easy creation of Grid and non-grid environments
- Objects (Agents, Obstacles, Collectibles, Triggers)
- Subclassing of different objects to create custom objects
- Spawner to generate objects randomly in the environment
- Basic rigid body system for all objects
- Simple agent behaviors (pathfinding, wandering, random walk, fleeing, vision range)
- Automatic maze generation
- Layer integration to convert image to obstacle and snap it to a grid
- Sample simulations and sample agents for classic simulations
- Simulation visualization, replay and export (gif or video)
</details>
## [Yourgoal]()
Description: Swift implementation of BabyAGI.
Swift implementation of BabyAGI.
<details>
Author: PJ Gray