Skip to content

Implementation grünif.ai: Interactive multi-parameter optimization of molecules in a continuous vector space

License

Notifications You must be signed in to change notification settings

jrwnter/gruenifai

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

47 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

gruenif.ai

gruenif.ai is a web application for interactive multi-parameter optimization of molecules in a continous vector space.

Showcase of functionality

A web application is best explained through a live demo. Please watch our video for a detailed explanation of the functionality: Showcase

Installation and setting up

In its current form grünifai is commposed of multiple microservices. We recommend the use of Docker to compose all microservises into one running environment.

Installation using Docker

  • clone this environment.
  • cd <REPOSITORY_DIR>
  • docker compose up

The web app can now be accessed at http:https://localhost:8777/ When running without GPUs or to test, we recommend to set the checkbox for fastmode to reduce compute time.

Installation using Anaconda

The repository can also be installed from scratch. That way GPU support can be enabled as well. However, currently, we recommend using the Docker installation described above.

Dependencies

Installation

  1. terminal
  • clone and install cddd
  • clone and install mso
  • clone this repository
  • cd <REPOSITORY_DIR>
  • conda env create -f environment.yml ( + activate this environment)
  • pip install .
  • cd <REPOSITORY_DIR>/gruenifai/backend/postgres
  • python create_db.py (assumes a running postgres server running locally)
  • cd <REPOSITORY_DIR>/gruenifai/gui/client
  • yarn install
  • yarn start
  • cp marvinjs forlder into /gruenifai/gui/client/public
  1. terminal
  • cd <REPOSITORY_DIR>/gruenifai/gui/server
  • python api.py
  1. terminal
  • cd <REPOSITORY_DIR>/gruenifai/backend/
  • python start_inference_server.py --model_dir <PATH_TO_CDDD_MODEL> --device <CUDA_DEVICE (e.g. 1 3 4)> --num_servers <NUMBER_OF_SERVERS>
  1. terminal
  • cd <REPOSITORY_DIR>/gruenifai/backend/
  • python flaskserver.py --num_swarms=<NUMBER_OF_SWARMS> --num_workers=<NUMBER_OF_WORKERS>

The web app can now be accessed at port 3000

About

Implementation grünif.ai: Interactive multi-parameter optimization of molecules in a continuous vector space

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published