To organize research articles that pushes the boundary of machine learning and (graph) neural networks for simulation with the introduction of novel approaches, algorithms, or theoretical insights.
> pip install -r requirements.txt > make run
When the code is ready to be deployed, run make freeze to get a static version of the website in the build folder.
- 
Define two command-line variables GH_TOKENandGH_REF.GH_TOKENis your Github personal access token, and will look likeusername:token.GH_REFis the location of this repo, e.g.,$> export GH_REF=github.com/brownvc/neural-fields-review.
- 
DO NOT add GH_TOKENto the Makefile—this is your personal access token and should be kept private. Hence, declare a temporary command line variable usingexport.
- 
Commit any changes. Any uncommited changes will be OVERWRITTEN! 
- 
Execute make deploy.
- 
That's it. 
 
The repo contains:
- Datastore sitedata/
Collection of CSV files representing the papers, speakers, workshops, and other important information for the conference.
- Routing main.py
One file flask-server handles simple data preprocessing and site navigation.
- Templates templates/
Contains all the pages for the site. See base.html for the master page and components.html for core components.
- Frontend static/
Contains frontend components like the default css, images, and javascript libs.
- Scripts scripts/
- Keyword Statistics: The keywords are generated by a JS script (paper_vis_statistics.js line 13-58) running on the front end every time this page is loaded. So yes they will change correspondingly when papers' data is updated.