pessini / SFI-Grants-and-Awards

Grant and Awards analyses in datasets provided by Science Foundation Ireland (SFI). Awards distribution and Gender Equality.

Home Page:https://sfi-grants-and-awards.streamlit.app

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

🇮🇪 Science Foundation Ireland (SFI) - Grants and Awards

Ireland's Open Data Portal

The two datasets analized on this project were provided by Ireland's Open Data Portal. The portal helds public data from Irish Public Sectors such as Agriculture, Economy, Housing, Transportation etc.

Web App

Datasets

Science Foundation Ireland

The first dataset is Science Foundation Ireland Grant Commitments and it details all STEM (science, technology, engineering and maths) research and ancillary projects funded by Science Foundation Ireland (SFI) since its foundation in 2000. For more information, check out the Data Dictionary available.

The second one, SFI Gender Dashboard, includes SFI research programmes from 2011 that were managed end-to-end in SFI’s Grants and Awards Management System and reflects a binary categorisation of gender, e.g. male or female between 2011 and 2018. For more information, check out the Data Dictionary available.

Data exploration

Awards Distribution

The focus of this analysis is on research funding and geographical distribution of grant awardees. The Notebook with the analysis can be found here.

Gender Equality

The analysis is based on gender differences in research grants offered by SFI. The Notebook with the analysis can be found here.

Data Visualisation

Tableau

Awards Distribution | Dashboard

alt text

Tableau Dashboard along with the Data Exploration can be found here.

Gender Equality | Dashboard

alt text

Tableau Dashboard along with the Data Exploration can be found here.


R version 4.0.2 License

About

Grant and Awards analyses in datasets provided by Science Foundation Ireland (SFI). Awards distribution and Gender Equality.

https://sfi-grants-and-awards.streamlit.app

License:MIT License


Languages

Language:Jupyter Notebook 97.5%Language:R 1.3%Language:Python 1.2%