Q&A Session - Questions about the course

ds4owd - data science for openwashdata

Lars Schöbitz

ETH Zurich

Aug 26, 2025

Welcome! 👋

Meet the team

Lars Schöbitz

Headshot of Lars Schöbitz

Adriana Clavijo

Headshot of Adriana Clavijo

  • Data Scientist
  • Spanish language support

Learning Goals (for the course)

  1. Master data science tools - Use (R, RStudio IDE, Git, GitHub, tidyverse, Quarto) to analyze and communicate data effectively.

  2. Create reproducible documents - Produce professional reports with Quarto, including citations, figures, and tables.

  3. Practice open science - Share your data and code openly, following best practices for reproducibility and collaboration.

  4. Build a portfolio - Complete real-world projects that demonstrate your skills to future employers or collaborators.

Course Calendar

date week topic module
11 September 2025 1 Welcome & get ready for the course module 1
18 September 2025 2 Data science lifecycle & Exploratory data analysis using visualization module 2
25 September 2025 3 Data transformation with dplyr module 3
02 October 2025 4 Data import & Data organization in spreadsheets module 4
09 October 2025 5 No class NA
16 October 2025 6 No class NA
23 October 2025 7 Conditions & Dates & Tables module 5
30 October 2025 8 Data types & Vectors & For Loops module 6
06 November 2025 9 Pivoting & joining data module 7
13 November 2025 10 Creating and publishing scholarly articles with Quarto and GitHub pages module 8
20 November 2025 11 Bonus module: Use of AI for coding support module 9
27 November 2025 12 Work on Capstone project NA
04 December 2025 13 Work on Capstone project NA
11 December 2025 14 Final submission date of Capstone project NA
18 December 2025 15 Graduation of openwashdata academy module 10

Course information

Weekly Structure

Monday
Tuesday Office hours on Zoom from 2 pm to 3 pm CET
Wednesday
Thursday Module on Zoom from 2 pm to 4:30 CET
Friday

Mentorship program

  • We are planning to create mentorship study groups for participants
  • The number of potential mentors is limited
  • We will match people with more experience with those who are complete novices
  • The mentorship program will be optional and starts after the Module 2 or Module 3

Assignments

Quiz

  • Identify students’ understanding of the material covered in the previous week
  • Expected to be completed within two weeks after the lecture
  • Identifies if students participated in live lecture or watched the recording
  • Successful completion of the course will require students to complete all quizzes

Homework assignments

  • Weekly assignments
  • Submitted as rendered Quarto documents on GitHub
  • Reviewed by course instructors for errors and feedback
  • Management and support through GitHub issue tracker

Readings

  • Weekly readings to deepen understanding of the topics
  • All readings from R for Data Science, 2nd edition: https://r4ds.hadley.nz/

Capstone Project

  • Data analysis project report with a dataset of your choice
  • Ideally, a dataset that you are working with in your job or research
  • Data must be non-sensitive without personal identifiable information (PII) and suitable for open data publication
  • Report will be a public website (see examples from ds4owd-001)
  • Submission required for successful completion of the course

openwashdata R data packages

  • Publish all datasets from participants as open data, following openwashdata workflows
  • Data package will be a public website
  • We will support the data curation and publication process

Who has signed up (109 so far)?

Age group

Country of residence

Programming skills

What’s next?

Zoom Registration

  • You will receive an email with a registration link for the Zoom meetings for each module
  • Please register for the Zoom meetings
  • Hold onto the confirmation email, as it contains the link to the Zoom meeting
  • Ensure that you have a Zoom account, so that you can join the meetings

Module 1

  • Module 1 starts on Thursday, 11th September 2025

Wrap-up

Thanks! 🌻

Slides created via revealjs and Quarto: https://quarto.org/docs/presentations/revealjs/ Access slides as PDF on GitHub

All material is licensed under Creative Commons Attribution Share Alike 4.0 International.