Skip to main content

ProteusAI is a python package designed for AI driven protein engineering.

Project description

proteusAI

ProteusAI

ProteusAI is a library for machine learning-guided protein design and engineering. The library enables workflows from protein structure prediction, the prediction of mutational effects-, and zero-shot prediction of mutational effects. The goal is to provide state-of-the-art machine learning for protein engineering in a central library.

ProteusAI is primarily powered by PyTorch, scikit-learn, and ESM protein language models.

Getting started


The commands used below are tested on Ubuntu 20.04 and IOS. Some tweaks may be needed for other OS. We recommend using conda environments to install ProteusAI.

Clone the repository and cd to ProteusAI, then:

# git clone https://github.com/jonfunk21/ProteusAI.git
# cd ProteusAI 
conda env create -n proteusAI # this install the latest version of proteusAI in a new environment
conda activate proteusAI

This uses the environment.yml file to install the dependencies.

Install using pip locally for developement

Install a local version which picks up the latest changes using an editable install:

# conda env create -n proteusAI 
# conda activate proteusAI
pip install -e . --find-links https://data.pyg.org/whl/torch-2.4.1+cpu.html

Troubleshooting

You can check a working configuration for a Ubuntu machine (VM) in the proteusEnvironment.yml file. The latest versions can be checked by us via our actions.

Setting shiny server

Install Shiny Server on Ubuntu 18.04+ (the instructions for other systems are availabe at posit.co, please skip the section about R Shiny packages installation) with the following commands:

sudo apt-get install gdebi-core
wget https://download3.rstudio.org/ubuntu-18.04/x86_64/shiny-server-1.5.22.1017-amd64.deb
sudo gdebi shiny-server-1.5.22.1017-amd64.deb

Edit the default config file /etc/shiny-server/shiny-server.conf for Shiny Server (the sudo command or root privileges are required):

# Use python from the virtual environment to run Shiny apps
python /home/proteus_developer/miniforge3/envs/proteusAI_depl/bin/python;

# Instruct Shiny Server to run applications as the user "shiny"
run_as shiny;

# Never delete logs regardless of the their exit code
preserve_logs true;

# Do not replace errors with the generic error message, show them as they are
sanitize_errors false;

# Define a server that listens on port 80
server {
  listen 80;

  # Define a location at the base URL
  location / {

    # Host the directory of Shiny Apps stored in this directory
    site_dir /srv/shiny-server;

    # Log all Shiny output to files in this directory
    log_dir /var/log/shiny-server;

    # When a user visits the base URL rather than a particular application,
    # an index of the applications available in this directory will be shown.
    directory_index on;
  }
}

Restart the shiny server with the following command to apply the server configuration changes:

sudo systemctl restart shiny-server

If you deploy the app on your local machine, be sure that the port 80 is open and not blocked by a firewall. You can check it with netstat:

nc <your-ip-address> 80

If you deploy the app on your Azure Virtual Machine (VM), please add an Inbound Port rule in the Networking - Network Settings section on Azure Portal. Set the following properties:

Source: Any
Source port ranges: *
Destination: Any
Service: HTTP
Destination port ranges: 80
Protocol: TCP
Action: Allow

Other fields can beleaft as they are by default.

Finally, create symlinks to your app files in the default Shiny Server folder /srv/shiny-server/:

sudo ln -s /home/proteus_developer/ProteusAI/app/app.py /srv/shiny-server/app.py
sudo ln -s /home/proteus_developer/ProteusAI/app/logo.png /srv/shiny-server/logo.png

If everything has been done correctly, you must see the application index page available at http://127.0.0.1 (if you deploy your app locally) or at http://<insert-your-public-VM-IP-address-here> (if you deploy your app on an Azure VM). Additionally, the remote app can still be available in your local browser (the Shiny extension in Visual Studio must be enabled) if you run the following terminal command on the VM:

/home/proteus_developer/miniforge3/envs/proteusAI_depl/bin/python -m shiny run --port 33015 --reload --autoreload-port 43613 /home/proteus_developer/ProteusAI/app/app.py

If you get warnings, debug or "Disconnected from the server" messages, it is likely due to:

  • absent python modules,
  • updated versions of the current python modules,
  • using relative paths instead of absolute paths (Shiny Server sees relative paths as starting from /srv/shiny-server/ folder) or
  • logical errors in the code.

In order to debug the application, see what is written in the server logs under /var/log/shiny-server (the log_dir parameter can be reset in the Shiny Server instance config file /etc/shiny-server/shiny-server.conf).

Note on permissions:

The app may give some problems due to directories not having permissions to create directories or load files to certain directories. When this happen, a solution found was to use the following:

chmod 777 directory_name

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

proteusai-0.0.3.tar.gz (74.6 kB view details)

Uploaded Source

File details

Details for the file proteusai-0.0.3.tar.gz.

File metadata

  • Download URL: proteusai-0.0.3.tar.gz
  • Upload date:
  • Size: 74.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.12.7

File hashes

Hashes for proteusai-0.0.3.tar.gz
Algorithm Hash digest
SHA256 77183e59fd381f5db5eb7bdd5a72330e396d391825628a0be88f3e16db27b1f4
MD5 91870d3782f285382056c153411d164b
BLAKE2b-256 8ead5974919ad7651fabe6085238159b4ce480840df25631c27039bb46937d1a

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page