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2022

ELIXIR launches new Toxicology Community

ELIXIR launches a new community to represent the field of toxicology, which is the study of the negative consequences of the interaction of chemicals and living things and the safety of those chemicals. 

ELIXIR Communities bring together experts across ELIXIR Nodes and external partners to coordinate activities within specific life science domains. The addition of toxicology brings the number of Communities in ELIXIR to thirteen, spanning domains such as human data, plant sciences and marine metagenomics and technologies such as Galaxy and proteomics. 

More information at https://elixir-europe.org/news/new-toxicology-community 

“How to make your messy data usable?” and “Metadata and README” courses REGISTRATION CLOSED

In the month of April, ELIXIR Estonia will be holding two data management online courses: "How to make your messy data usable?" on the 4th of April and "Metadata and README" on the 11th of April. Both of the courses will be held online, in Zoom, and in English. 

"How to make your messy data usable?" course will be in two parts: an 1.5 hour online lecture on how to make a spreadsheet usable for other people, held on the 4th of April at 10:00 in Zoom. The practical workshop on cleaning your messy data with OpenRefine software will be a video lecture that you can follow on your own time. Additionally, we will hold 3 Q&A sessions in Zoom, where you can talk about any problems you encountered with the OpenRefine software. In the "Metadata and README" lecture, we will be going over what exactly is metadata, what is the minimum information that should be included with each of the scientific results you are sharing and how exactly can you write a README file. 

 

In recent years, more attention is put on what researchers do with the data (and other resources) they produce. Especially in Europe, but also everywhere else. The main idea is that when researchers use taxpayers' money, the taxpayers themselves should also have access to the results, free of charge. This means that the research should be published in open access journals and data should be made publicly available. 

Good data management may help you with that, at least to make the process easier on the whole. If you think what to do with your data at the beginning and during the project and know what you plan to do with it at the end of the project, the process at the end will be easier. However, what is “good data management”, is up to debate. The FAIR Principles concentrates on making your data findable, accessible, interoperable and reusable, so this is a good start. And let’s be honest, some of these things you are probably already doing. 

 

How to make your messy data usable? course information

In this course, we will be going over how to name your files and variables, version control, compile a data dictionary, and what to do with empty cells. In the second part, OpenRefine software is introduced. With this, you can easily clean up the messy data. For the more practical aspect of using the OpenRefine software, I will share a video that will teach the basics. You can watch it anytime and do the lessons yourself. On three days (6.04, 7.04 and 8.04) there will be a 1h slot (10:00-11:00) on Zoom, when you can come and ask any question you have regarding tables and OpenRefine software. 

 

Information about the lecture:

Lecture: 4th of April, 2022 at 10:00 (lecture, 1.5h; in English)

Q&A session: 6.04, 7.04 and 8.04 at 10:00 (Q&A, feedback, 1h)

Place: ZOOM (link will be sent to your email)

Register: https://forms.gle/axZTA5rw3bPnKDww9 REGISTRATION IS CLOSED

Registration closes at 23:59 on 31.03.2022 or when the course gets full.

Learning outcomes: 

  • Compile a data table that abides by the FAIR Principles
  • Recognize what a clean table for others to use looks like
  • Explain how to use OpenRefine to clean the messy data

 

Metadata and REAME lecture information

In general, metadata is the descriptive information about your data. However, what exactly is metadata and how much of it should be included with your data? Good metadata can make up for human fallibilities. People forget and misplace things, and leave research projects taking their knowledge of the research methodology and the data with them. Metadata ensures that we will be able to find the data, use it, preserve and reuse it in the future.

  • Finding Data. Metadata makes it much easier to find relevant data. Most searches are done using text (like a Google search), so formats like audio, images, and video are limited unless text metadata is available. Metadata also makes text documents easier to find because it explains exactly what the document is about.
  • Using Data. To use a dataset, researchers need to understand how the data is structured, definitions of terms used, how it was collected, and how it should be read.
  • Reusing Data. Researchers often want to reuse data collected for another project for their own project. The data still needs to be found and used, but often at a higher level of trust and understanding. Reusing data often requires careful preservation and documentation of the metadata.

This means that the metadata provides additional information that helps data consumers to better understand the meaning of the dataset, its structure and to clarify other issues, such as rights and license terms, the organization that generated the data, data quality, data access methods and the update schedule of datasets. Additionally, metadata also gives information about the data in general. What an actual metadata file includes, varies between disciplines and types of data you are working with. However, the documentation for your data should contain the minimum information required to be able to reuse (or understand) the data described. 

In this lecture, we will be going over what metadata about your dataset should be included when you are sharing it. Additionally, we will also go over some examples on how to write a good README file. 

 

Information about the lecture:

Time: 11th of April, 2022 at 10:00 (lecture, 2h; in English)

Place: ZOOM (link will be sent to your email)

Register: https://forms.gle/YKvQyd8wrx2cvyYf9 REGISTRATION IS CLOSED

Registration closes at 23:59 on 31.03.2023 or when the course gets full.

Learning outcomes: 

  • Understands the importance of good data management
  • Knows what metadata means in data files
  • Knows how to add metadata to the data
  • Knows what should be included in the README file
  • Can write a simple README file to accompany the data

 

Data Management Courses in March

Here is a list of data management related courses/webinars taking place in March, 2022. 

Overview of Open Research Europe, the open access publishing platform launched by the European Commission, on 4th of March, 2022. 

More information: https://us06web.zoom.us/meeting/register/tZUsfuysqzssGN3Ac2HNkKXmNTHQcRmuvz-m 

Data management related webinars by Aalto University in Finland, from March to May. The topics include: data management plans, how to store data, hands on anonymisation, etc. 

More information and registration: https://www.aalto.fi/en/services/training-in-research-data-management-and-open-science

Version control for Scientific Research using Git/Github on 11th of March, 2022. 

More information: https://unitn.zoom.us/meeting/register/tZwkdOGvrT0rE9VRG7VjbOTOvbxthg3TwV-p 

A Global Galaxy course Smörgåsbord is coming again! March 2022

GTN Smörgåsbord is a global 5-day Galaxy Training event showcasing a wide variety of Galaxy Training Network tutorials. This will be an online event, spanning all time zones. All training sessions are pre-recorded, so you can work through them at your own pace, and manage your own time. A large community of GTN trainers will be available via online support to answer all your questions.

More info and registration at bit.ly/smorgasbord2

The FAIR Principles lecture - (registration closed)

On the 31st of January, 2022, ELIXIR-Estonia will be holding an online data management course: The FAIR Principles. This lecture will be a short overview about the principles and is part of a bigger data management course package.

In recent years, more attention is put on what researchers do with the data (and other resources) they produce. Especially in Europe, but also everywhere else. The main idea is that when researchers use taxpayers' money, the taxpayers themselves should also have access to the results, free of charge. This means that the research should be published in open access journals and data should be made publicly available. 

Good data management may help you with that, at least to make the process easier on the whole. If you think “how to manage your data” at the beginning and during the project and know what you plan to do with it at the end of the project, the process at the end will be easier. However, what is “good data management”, is up to debate. The FAIR Principles concentrates on making your data findable, accessible, interoperable and reusable, so this is a good start. And let’s be honest, some of these things you are probably already doing. 

 

In this course, we will be going over all the FAIR Principles and how they are applied in real life. This way, you will already know what to consider, while writing a grant, filling out your data management plan or doing your research. 

 

Information about the lecture

Date: 31.01.2022 

Language: English

Time: 10:15 - 13:45

Place: Zoom, link will be sent couple of days before the lecture

We ask you to register responsibly. If you can't attend the lecture, please let us know as soon as possible via email (elixir@ut.ee). 

Register: the registration is closed

Registration closes at 23:59 on 24.01.2022 or when the course gets full. A confirmation email wil be sent on the 25th of January, 2022. 

NB! Since this course is popular, we have added another session of the lecture, on 2nd of February, 2022. 

Register: the registration is closed

In order to not miss out a course next time, subscribe to our newsletter at https://lists.ut.ee/wws/subscribe/elixir.news?previous_action=edit_list_request

 

Learning outcomes: 

  • Understands the importance of a good data management
  • Knows what are the FAIR principles and what they mean
  • Knows how to implement FAIR principles throughout the research project
  • Knows where to get more information about the FAIR Principles