Skip to content

rbtl-fs22/rbtl-fs22-data

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

24 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

DOI

README

This repository contains all raw and derived data produced as part of the ETH Zurich course "Research Beyond the Lab: Open Science and Research Methods for a Global Engineer" (151-8102-00L) offered in spring term 2022.

Students were assigned teams of four to conduct a collaborative research project broadly addressing the theme of “Trash in the Public Spaces of Zurich” in collaboration with Entsorgung & Recycling Zürich (ERZ), the waste management department at Stadt Zürich.

Research methods and design are taught in the first half of the course. Surveys and a waste characterisation study are then designed based on the research questions students have developed in their respective teams. The collected raw data is used in the course to teach principles of research data management, tidy data structures, reproducible research with R & RStudio, and collaboration and version control with Git & GitHub.

The teams work together to submit a final project report using the tools above. The following websites show research project reports that were published publicly by individual students after completion of the course:

  • to be added

raw_data

This directory contains the raw data as it was collected. The raw data was added without any modification and scripts in data/src/ were used to prepare analysis-ready data in /data/derived_data/. Sub-directories are structured by team in rbtl-fs22.

raw_data/TEAM_NAME

Survey data (UserResponses.csv) are downloaded as a CSV from SelectSurvey, a tool offered by ETH Zurich. Waste characterisation data tables were created by students.

derived_data

This directory contains analysis-ready data that has been cleaned using scripts in /data/src/. Sub-directories are structured by team in rbtl-fs22.

derived_data/TEAM_NAME/metadata/

This directory contains metadata for the tidy datasets.

README.md

General metadata is stored in a README.md file that is contained in the /metadata folder. It is a template adapted from a guide shared by Cornell University and recommended for use by ETH Library under Guidance and instructions for the ETH Zurich DMP template - Section 1: Data collection and documentation - 1.3 What documentation and metadata will you provide with the data? - Supporting resources.

attributes.csv

In addition to the human readable README with a description of the data, a codebook was generated that describes the variables and values, following general metadata standards (e.g. schema.org metadata standards):

variableName description
fileName the name of the input data file(s)
variableName the name of the measured variable
description a written description of what that measured variable is
unitText the units the variable was measured in

src

This folder contains R scripts used to clean raw data (raw_data) of each team to produce analysis-ready data (derived_data) that is used for the write-up of student project reports.

Citation

This citation is derived from the CITATION.cff file in this repo and can also be accessed as a bibliography (citation.bib) file.

Ben Aleya, A., Biek, D., Boynton, L., Jaeggi, J., Loos, S. C., Meyer-Piening, C., Ogwang, J. O., Overhoff, M., Schöbitz, L., Sigrist, S., Tilley, E., Triebold, N. Y., Oda, V., & Vijay, S. (2022). Research Beyond the Lab, Spring Term 2022, Global Health Engineering, ETH Zurich. Raw data and analysis-ready derived data on waste management in public spaces in Zurich, Switzerland. (Version 0.1.1) [Data set]. https://doi.org/https://doi.org/10.5281/zenodo.7331120