EVAL(Elastic Versatile Agent with Langchain) will execute all your requests. Like the eval method!
You don't have to think about how. If you tell them the results you want, they'll search, code, run, and test the Internet themselves, and they'll return the final results.
simple_todo.mp4
EVAL Making a full-fledged web application with multiple files
wow.mov
EVAL Making a UI for itself
EVAL's self-managed github account. EVAL does everything except for signup and bio setting.
Here is an example.
- Multimodal Conversation
- It understands and generates data formats for text, image, dataframe, audio (TODO), video (TODO).
- Services
- It can serve services (blocking processes) such as web apps.
- Evolving
- It can create it's own tools by writing, modifying, executing and testing code.
- Terminal
- SyscallTracer
- Code Editor
- READ: Read and understand file.
- WRITE: Write code to create a new tool.
- PATCH: Correct the error throught the code patch if an error occurs.
- DELETE: Delete code in file for a new start.
- Search
- Google, Bing, Wikipedia
- Custom DB Search (Currently using Corca's Wine Data in https://www.workershop.kr/en)
- Use GPT index to quickly find the information you need in a document and use that information to answer
- Requests.get (Get information from anywhere you want)
- Image Understanding, Generation, Editing
- Image Understanding
- Image Understanding: blip-image-captioning
- Visual Question&Answering: blip-vqa
- Image Generation: Stable Diffusion 1.5
- Image Editing
- Replace or remove an object: Stable Diffusion Inpainting
- Change Image's style: InstructPix2Pix
- Image Understanding
Thanks to LangChain, Visual ChatGPT, llama index.
We also don't know what tools EVAL will create. Every day, It will create the right tools to execute your request.
- Environment variables
- Run with docker-compose
- Send request to EVAL
You need to write some environment variables in the .env
file. Refer .env.example if you don't know how to format it.
Mandatory
Manatory envs are required in order to serve EVAL.
OPENAI_API_KEY
- OpenAI api key
Optional
Each optional env has default value, so you don't need to set unless you want to change it.
EVAL_PORT
- port (default: 8000)SERVER
- server address (default: http://localhost:8000)LOG_LEVEL
- INFO | DEBUG (default: INFO)BOT_NAME
- give it a name! (default: Orca)MODEL_NAME
- model name for GPT (default: gpt-4)
For More Tools
Some tools requires environment variables. Set envs depend on which tools you want to use.
- Google search tool
SERPAPI_API_KEY
- Bing search tool
BING_SEARCH_URL
BING_SUBSCRIPTION_KEY
- There are 2 services in docker-compose.yml
eval
- without GPU, much lighterdocker-compose up --build eval
eval.gpu
- with GPU, for multi-modal conversationdocker-compose up --build eval.gpu
- The one with GPU is much heavier and unstable for now because of the massive dependencies. We recommend you to use the one without GPU if you don't need multi-modal conversation.
-
Use the Web GUI to use EVAL in ease
-
Or you can manually send request to EVAL with APIs.
-
POST /api/execute
-
session
- session id -
files
- urls of file inputs -
prompt
- prompt -
examples
curl -X POST -H "Content-Type: application/json" -d '{"session": "sessionid", "files": [], "prompt": "Hi there!"}' http://localhost:8000/api/execute
http POST http://localhost:8000/api/execute session=sessionid files:='[]' prompt="Hi there!"
-
-
-
It also supports asynchronous execution. You can use
POST /api/execute/async
instead ofPOST /api/execute
, with same body.- It returns
id
of the execution. UseGET /api/execute/async/{id}
to get the result.
- It returns
- GUI
- memory saving
- session manage
- convert to alpaca
- prompt upgrade
- give a tool to create tools
- etc.
Thanks to the following repositories.