FAIR data management for artificial intelligence / Upravljanje podatkov za umetno inteligenco po načelih FAIR

Europe/Ljubljana
predavalnica Elektronike na Teslovi 30 (Teslova ulica 30)

predavalnica Elektronike na Teslovi 30

Teslova ulica 30

Panče Panov (Jožef Stefan Institute)
Description

Course provider: Jožef Stefan Institute (JSI) 
Instructors: Panče Panov (JSI)

Learning objectives: 

  1. Understand AI data assets across the lifecycle: how datasets, labels, dataset splits, features, and evaluation artifacts evolve from collection to reuse;
  2. Apply the FAIR principles to AI work: make data and outputs easier to find, access, combine, and reuse (for teams and future projects);
  3. Create an actionable DMP for AI projects: a lightweight plan that supports reproducibility, handover, and compliance; and
  4. Handle constraints responsibly: recognize sensitive data, ethical considerations, access limitations, and industry vs research expectations.


Course content:

  • AI data assets and data life cycle (raw/processed data, labels, splits, evaluation artefacts);
  • Review of the FAIR principles in the context of AI projects;
  • Finding, accessing and reusing data for AI (including access conditions and licensing);
  • Data interoperability for AI (formats, metadata, label definitions and basic standards);
  • Data repositories and sharing strategies for AI datasets and related artefacts;
  • Dealing with confidential, personal, sensitive and private data, and ethical aspects in AI;
  • Data management plan (AI-focused): structure of an AI-oriented DMP, use of FAIR principles, and examples of best practices and tools;
  • Data management in research and industry: open data/open science vs. industrial constraints (governance, IP, security) in AI projects.


Learning outcomes: By the end of the training, participants can:

  1. Explain the AI data lifecycle and basic good practices (structure, documentation, versioning, provenance);
  2. Perform a basic FAIR check on an AI dataset/project and list concrete “quick wins” (metadata, access statement, license, formats);
  3. Draft a short AI-focused DMP (1–2 pages) that a team can actually follow; and
  4. Identify when extra safeguards are required (personal/confidential data, restricted access, IP) and propose sensible mitigations. 
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Form for FAIR data management for AI