When a kernel is forked with data and the original is private, can the forked one be public and if so is not a privacy breach?
Thursday, 10 October 2024 by Klaus Bertram
When dealing with data science projects on platforms like Kaggle, the concept of "forking" a kernel involves creating a derivative work based on an existing kernel. This process can raise questions about data privacy, especially when the original kernel is private. To address the query regarding whether a forked kernel can be made public when
- Published in Artificial Intelligence, EITC/AI/GCML Google Cloud Machine Learning, Advancing in Machine Learning, Data science project with Kaggle
Tagged under: Artificial Intelligence, Data Ownership, Data Privacy, Ethical Data Use, Kaggle, Kernel Forking