123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566 |
- ---
- title: "Gin onboarding"
- format: html
- editor: visual
- ---
- tech: 2nd screen/split screen
- # 1. Ice breaking
- Please tell your name, group and something you achieved this week.
- > Julien Colomb, INF project, I recently passed my Aikido 3.Kyu exam.
- # 2. Why GIN-Tonic
- - Data science approach: work using code, work in a team, work online
- - Research project:
- - Git version control + project management tool
- - Research repository template
- - Special toolbox for many and large files
- - DMP: one text file to manage and share
- # 3. Getting a GIN account
- - <https://gindata.biologie.hu-berlin.de/user/sign_up>
- - write username and group to the data manager (zoom chat/ email)
- - The data manager will add you to the organisation prepared for your team
- - <https://gindata.biologie.hu-berlin.de> \>\> sign in
- # 4. Create a new project
- - https://gindata.biologie.hu-berlin.de
- - `Access tonic functions` button at bottom
- - project creation
- - Click on figure "Project creation" - sign in - erase organisation if there is one - choose organisation (dropdown menu) - Write title (no space) - push `submit` button
- # 5. Upload and modify DMP file
- - click explore button, search for "INF"
- - choose the "[**PRitter_lab / SFB1315_INF.06_dissemination**](https://gindata.biologie.hu-berlin.de/PRitter_lab/SFB1315_INF.06_dissemination)**"** repository (public repository)
- -
- > > `other` folder \>\> DMP_template.md
- - click `download`button
- - One person project:
- - go to your research repository
- - 01_project_management \>\> 05_data_management_plan \>\> click `upload file` button
- - choose DMP file and upload it.
- - Click the file, modify it,. save it pushing the `Commit Changes`button
- # 6. Some comments
- - research project = multiple repositories.
- - many files is therefore possible
- - different sharing of content (organisation, access right, publication)
- # 7. Next steps
- - Desktop version to work with (large) datasets
- - basics of datalad and git
|