Making data interoperable 

Data management

Students, PhD students Video capsule French, English

Go to training

by Christian Lovis

A critical and sometimes challenging task in data science is to process heterogeneous data. This heterogeneity can be due to different formats, for example in image formats; different acquisition devices, a frequent situation in radiology; different units; etc.  Making data interoperable means identifying all the elements that can improve the ability to analyze data from different sources, concerning very different measurements, in different contexts, in particular.

To the video

Pre-required skills

  • Not Specified

Skills worked on

  • Exploitation (level C)
Go back to trainings