Ecosyste.ms: Awesome
An open API service indexing awesome lists of open source software.
https://github.com/utrechtuniversity/awesome-utrecht-university
A curated list of awesome open source projects from Utrecht University.
https://github.com/utrechtuniversity/awesome-utrecht-university
List: awesome-utrecht-university
awesome-list documentation open-data open-science research university utrecht-university
Last synced: 3 days ago
JSON representation
A curated list of awesome open source projects from Utrecht University.
- Host: GitHub
- URL: https://github.com/utrechtuniversity/awesome-utrecht-university
- Owner: UtrechtUniversity
- License: cc-by-4.0
- Created: 2021-07-17T10:43:22.000Z (over 3 years ago)
- Default Branch: main
- Last Pushed: 2024-11-25T08:54:46.000Z (26 days ago)
- Last Synced: 2024-12-05T00:00:43.255Z (17 days ago)
- Topics: awesome-list, documentation, open-data, open-science, research, university, utrecht-university
- Language: Python
- Homepage: https://utrechtuniversity.github.io/awesome-utrecht-university/
- Size: 2 MB
- Stars: 53
- Watchers: 8
- Forks: 14
- Open Issues: 1
-
Metadata Files:
- Readme: README.md
- Contributing: CONTRIBUTING.md
- License: LICENSE
- Code of conduct: CODE_OF_CONDUCT.md
Awesome Lists containing this project
- ultimate-awesome - awesome-utrecht-university - A curated list of awesome open source projects from Utrecht University. . (Other Lists / Monkey C Lists)
README
![banner.jpg](docs/img/banner.jpg)
# Awesome Utrecht University
[![Awesome](https://cdn.rawgit.com/sindresorhus/awesome/d7305f38d29fed78fa85652e3a63e154dd8e8829/media/badge.svg)](https://github.com/sindresorhus/awesome)
A curated list of awesome research code, software, manuals, and more on Git, developed by [**Utrecht University**](https://uu.nl) researchers, students, and employees. The list can be your starting point to find interesting UU projects, and get inpired and learn from other projects. Is your project also "awesome"? Add it to this list (see [Contributing](CONTRIBUTING.md)).
> "The purpose of this list is to have a collection of projects using [Git](https://git-scm.com/) version control, that score high on openness, reusability, and transparency in order to showcase good examples of open practices. In the context of this, *awesome* refers to projects that showcase the [FAIR (findability, accessibility, interoperability, and reusability)](https://www.uu.nl/en/research/open-science/tracks/fair-data-and-software) and Open Science spirit. This is for example shown in repositories that have a license that permits reuse and a README file with clear documentation.
>
> In order to promote open science, Utrecht University has introduced the [Open Science Programme](https://www.uu.nl/en/research/open-science). Beside topics like *Open access*, *Public engagement*, and *Recognition and rewards*, there is a strong focus on *FAIR Data and Software*. This awesome list was created by efforts of the track of *FAIR Data and Software* to help researchers to find good examples. We believe that learning by example is very useful in the field of Open Science and FAIR Data and Software."
>
> [FAIR Data and Software team](https://www.uu.nl/en/research/open-science/tracks/fair-data-and-software)❣️ We are looking for Utrecht University researchers that are interested in helping to maintain this list. Please reach out if you would like to assist (see [Contact](#contact))!
- [Awesome Utrecht University](#awesome-utrecht-university)
- [Projects](#projects)
- [Research code](#research-code)
- [Research software](#research-software)
- [Research data](#research-data)
- [Research project management](#research-project-management)
- [Education and workshops](#education-and-workshops)
- [Collaboration groups](#collaboration-groups)
- [Add project to this list](#add-project-to-this-list)
- [Background](#background)
- [What is an Awesome list?](#what-is-an-awesome-list)
- [Initial project collection](#initial-project-collection)
- [Implementing Awesome lists for your university](#implementing-awesome-lists-for-your-university)
- [Contact](#contact)---
## Projects
### Research code
*Research projects with supplementing code stored on online Git repositories.*
- [Aragonite_clumped](https://github.com/nielsjdewinter/Aragonite_clumped) - R code for processing and plotting of clumped isotope data from aragonite samples in "Temperature dependence of clumped isotopes (∆47) in aragonite"
- [ContrastiveExplanation](https://github.com/MarcelRobeer/ContrastiveExplanation) - Contrastive Explanation (Foil Trees), developed at TNO/Utrecht University
- [DA_model](https://github.com/nielsjdewinter/DA_model) - R code for simulating diffusion-advection models for leaching of trace elements into tooth enamel during burial and diagenesis of archeological and paleontological specimens in "High-resolution trace element distributions and models of trace element diffusion in enamel of Late Neolithic/Early Chalcolithic human molars from the Rioja Alavesa region (north-central Spain) help to separate biogenic from diagenetic trends"
- [GeoNewsMiner](https://github.com/lorellav/GeoNewsMiner) The GeoNewsMiner (GNM): An interactive spatial humanities tool to visualize geographical references in historical newspapers
- [PCR-GLOBWB_model](https://github.com/UU-Hydro/PCR-GLOBWB_model) - PCR-GLOBWB (PCRaster Global Water Balance) is a large-scale hydrological model intended for global to regional studies and developed at the Department of Physical Geography.
- [PuReGoMe](https://github.com/puregome/notebooks) - Notebooks of the PuReGoMe Project of the Netherlands eScience Center and Utrecht University.
- [Saliency-Tubes-Visual-Explanations-for-Spatio-Temporal-Convolutions](https://github.com/alexandrosstergiou/Saliency-Tubes-Visual-Explanations-for-Spatio-Temporal-Convolutions) - Implementation of Saliency Tubes for 3D Convolutions in Pytoch and Keras to localise the focus spatio-temporal regions of 3D CNNs.
- [seasonalclumped](https://github.com/nielsjdewinter/seasonalclumped) - R package for generating virtual stable isotope data to model sampling strategies for seasonality reconstructions in "Optimizing sampling strategies in high-resolution paleoclimate records"
- [SoftPool](https://github.com/alexandrosstergiou/SoftPool) - Code for approximated exponential maximum pooling.
- [Squeeze-and-Recursion-Temporal-Gates](https://github.com/alexandrosstergiou/Squeeze-and-Recursion-Temporal-Gates) - Code for : [Pattern Recognit. Lett. 2020] "Learn to cycle: Time-consistent feature discovery for action recognition" and [arXiv] "Right on Time: Multi-Temporal Convolutions for Human Action Recognition in Videos".
- [stdstats](https://github.com/japhir/stdstats) - Simulation and plotting code for "Optimizing the use of carbonate standards to minimize uncertainties in clumped isotope data"### Research software
*Software developed by researchers and employees of Utrecht University. The software in this list is installable and can be used in new or existing research projects or courses.*
- [admtools](https://github.com/MindTheGap-ERC/admtools) - R package to transform data using age-depth models
- [asreview](https://github.com/asreview/asreview) - Active learning for systematic reviews
- [bain](https://github.com/cjvanlissa/bain) - Bayes Factors for Informative Hypotheses
- [iBridges](https://github.com/UtrechtUniversity/iBridges) - Python API and commandline interface to easily interact with Yoda and iRODS servers
- [iBridges-GUI](https://github.com/chStaiger/iBridges-Gui) - A graphical user interface for iBridges
- [LUE](https://github.com/computationalgeography/lue) - Modelling framework for simulating large geographical systems of agents and fields
- [mice](https://github.com/amices/mice) - Multivariate Imputation by Chained Equations
* [ggmice](https://github.com/amices/ggmice) - Visualize incomplete and imputed data with the R package `ggmice`
- [oceanexplorer](https://github.com/UtrechtUniversity/oceanexplorer) - An R interface to the [NOAA World Ocean Atlas](https://www.ncei.noaa.gov/products/world-ocean-atlas)
- [osmenrich](https://github.com/sodascience/osmenrich) - Enrich sf data with geographic features from OpenStreetMaps.
- [parcels](https://github.com/OceanParcels/parcels) - Main code for Parcels (Probably A Really Computationally Efficient Lagrangian Simulator)
- [PCRaster](https://github.com/pcraster/pcraster) - Environmental modeling software
- [pdb-tools](https://github.com/haddocking/pdb-tools) - A dependency-free cross-platform swiss army knife for PDB files.
- [recordlinkage](https://github.com/J535D165/recordlinkage) - A toolkit for record linkage and duplicate detection in Python
- [Ricgraph](https://github.com/UtrechtUniversity/ricgraph) - With Ricgraph, you can create a graph from research information that is stored in various source systems. You can explore this graph and discover relations you were not aware of. For code, extensive documentation and videos follow the link.
- [ShellChron](https://github.com/nielsjdewinter/ShellChron) - R package for constructing age models based on stable oxygen isotope records from accretionary carbonate archives
- [Stitch](https://github.com/snijderlab/stitch) - A program for de novo sequencing of antibodies/proteins based on massspectrometry data.
- [StratPal](https://github.com/MindTheGap-ERC/StratPal) - R package to build modeling pipelines for paleontology
- [text_explainability](https://git.science.uu.nl/m.j.robeer/text_explainability) - A generic explainability architecture for explaining text machine learning models.
- [text_sensitivity](https://git.science.uu.nl/m.j.robeer/text_sensitivity) - Extension of text_explainability for sensitivity testing (robustness, fairness).### Research data
*Research data stored in git repositories.*
- [childdevdata](https://github.com/D-score/childdevdata) - R package with *Child Development Data* from ten studies, containing 1,116,061 assessments made on 10,831 unique children during 28,465 visits, covering 21 different instruments.
- [CoronaWatchNL](https://github.com/J535D165/CoronaWatchNL) - Numbers concerning COVID-19 disease cases in The Netherlands by RIVM, LCPS, NICE, ECML, and Rijksoverheid.### Research project management
*Tools for research project management, data management, software management, and lab tools.*
- [labphew](https://github.com/SanliFaez/labphew) - a minimalist functioning code module and folder structure, built to teach and exercise with computer-controlled measurements using Python.
- [UU-dissertation-template](https://github.com/UtrechtUniversity/UU-dissertation-template) - a Utrecht University dissertation template for LaTeX.
- [worcs](https://github.com/cjvanlissa/worcs) - Rstudio project template and convenience functions for the Workflow for Open Reproducible Code in Science (WORCS)### Education and workshops
*Open teaching materials are guidelines, tutorials or any other educational material. Where to discover further resources relevant for UU research like books, podcasts, additional websites and newsletters.*
- [DarwinCAT](https://github.com/MindTheGap-ERC/DarwinCAT) A Shiny web application to experiment and visualize how evolution is distorted by the geological record. Useful in teaching palaeobiology and evolutionary biology. Developed and used in courses at the Department of Earth Sciences, Utrecht University.
- [Shellbed Condensator](https://github.com/MindTheGap-ERC/ShellbedCondensator) A Shiny web app to visualize the effects of changing sedimentation rates on the formation of fossil accumulations. Useful in teaching geoscience and palaeobiology. Developed and used in courses at the Department of Earth Sciences, Utrecht University.
- [ShinyEducation](https://github.com/UtrechtUniversity/ShinyEducation) The 'ShinyEducation' project at Utrecht University's Department of Methodology & Statistics uses interactive Shiny applications to explain statistical concepts. Applications cover topics like ANOVA, ANCOVA, t-tests, and correlation. This hands-on approach promotes immersive learning. Explore more [here](https://utrechtuniversity.github.io/ShinyEducation/).
- [Textbook on Quantitative Methods and Statistics](https://github.com/hugoquene/QMS-EN) Textbook on Quantitative Methods and Statistics aimed at humanities researchers and students [(English version, EN)](https://hugoquene.github.io/QMS-EN/) [(Dutch version, NL)](https://hugoquene.github.io/KMS-NL/)
- [workshop-introduction-to-R-and-data](https://github.com/UtrechtUniversity/workshop-introduction-to-R-and-data) - Material for the workshop 'Introduction to R & data' by [RDM Support](https://www.uu.nl/en/research/research-data-management)### Collaboration groups
*Collaboration Groups are organizations with many involved parties.*
- [CLARIAH](https://github.com/CLARIAH) - CLARIAH offers humanities scholars a Common Lab providing access to large collections of digital resources and innovative tools for research
- [stan](https://github.com/stan-dev) - Stan is a state-of-the-art platform for statistical modeling and high-performance statistical computation. Thousands of users rely on Stan for statistical modeling, data analysis, and prediction in the social, biological, and physical sciences, engineering, and business.## Add project to this list
Do you know about a project that should be in the Awesome Utrecht University list? This could be your own project or a project of one of your colleagues. We would love to hear about that project! The [contribution guidelines](https://github.com/UtrechtUniversity/awesome-UU/blob/main/CONTRIBUTING.md) help you to propose a new project to the list.
## Background
### What is an Awesome list?
"Awesome lists" are curated lists of awesome stuff. The lists are very popular in the field of open source development (see https://github.com/sindresorhus/awesome). Read ["The awesome manifesto"](https://github.com/sindresorhus/awesome/blob/main/awesome.md) for more information about awesome lists.
### Initial project collection
The initial collection of projects was made based on the collected repositories from the SWORDS-UU
project (more information follows soon). Repositories were considered when they have a license and 25 stars or fulfill 4/5 FAIR criteria.### Implementing Awesome lists for your university
We encourage other universities to also implement awesome lists for their research. You can fork this repository as a starting point. Having such a list is a useful resource to showcase good projects that have been conducted or are still ongoing and helps promoting the open science approach. If you need help getting started please don't hesitate to reach out to us. We will gladly assist you.
## Contact
This awesome list was created by efforts of the [FAIR Data and Software team](https://www.uu.nl/en/research/open-science/tracks/fair-data-and-software) of Utrecht University. If you have any question or remark about this list, do not hesitate to contact any of the **current maintainers** via mail:
- [Jonathan de Bruin](mailto:[email protected]?subject=[GitHub]%20Awesome-UU)
- [Keven Quach](https://github.com/kequach) (Outside maintainer)
- [Jelle Treep](mailto:[email protected]?subject=[GitHub]%20Awesome-UU)or open an issue on GitHub.
Are you a Utrecht University researcher looking for support on making your research code and data open and FAIR? Or do you want to brainstorm about these topics? Feel free to [contact RDM Support](https://www.uu.nl/en/research/research-data-management/contact-us).
![Utrecht University Open Science](https://www.uu.nl/sites/default/files/styles/original_image/public/Utrecht-University-towards-open-science.jpg)