π― Workshop Goals
πΉ Conda Workshop Goals:
π§° Learn to manage packages and environments with Conda.
π Build reproducible workflows for data science projects.
π Use Conda across multiple programming languages.
π¦ Share project-specific environments for collaboration.
π Strengthen core data science skills at KAUST and in KSA.
πΉ Learn - on an example: NOMAD - what FAIR data is, and tools that enable to create FAIR data, or convert data to FAIR data:
π Findable β Metadata, indexing, and persistent identifiers
ποΈ Accessible β Open formats, licensing, and repositories
π Interoperable β Standards, vocabularies, and APIs
π Reusable β Documentation, provenance, and quality
π¨βπ¬ Who Should Attend?
Researchers, data managers, and graduate students
Anyone working with scientific data
No prior experience required!
π What You'll Learn
π§ From Conda
π§° Create and manage environments
π¦ Install and update packages
π Ensure reproducibility
π Work across languages
π€ Share setups with others
π§ From FAIR/NOMAD
π Create a dataset with persistent identifiersΒ
ποΈ Share a dataset with the community while giving proper credit to contributors (including you)
π Conversion of data into a standard community-used format
π Retrieve data and information from a discipline repository.Β Use and design of Electronic Laboratory Notebooks (ELNs) for proper documentation
Agenda
Time | Topic |
09:00 | Introduction to Conda |
09:30 | Working with Environments |
10:00 | Using Packages and Channels |
10:30 | Sharing Environments |
11:00 | Introduction to FAIR data and NOMAD |
11:20 | Exploring NOMAD entries, use NOMAD data |
11:40 | Upload data and create datasets |
12:00 | FAIR Data automation and examples |