Composing training data for Machine Learning applications can be laborious and time-consuming when done manually. The use of FAIR Digital Objects, in which the data is machine-interpretable and -actionable, makes it possible to automate and simplify this task. As an application case, we represented labeled Scanning Electron Microscopy images from different sources as FAIR Digital Objects to compose a training data set. In addition to some existing services included in our implementation (the Typed-PID Maker, the Handle Registry, and the ePIC Data Type Registry), we developed a Python client to automate the relabeling task. Our work provides a Proof-of-Concept validation for the usefulness of FAIR Digital Objects on a specific task, facilita...
Everything we do today is becoming more and more reliant on the use of computers. The field of biolo...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
In recent years the FAIR principles have become a guide for sharing scientific data. Products th...
The application case for implementing and using the FAIR Digital Object (FAIR DO) concept aims to si...
The application case for implementing and using the FAIR Digital Object (FAIR DO) concept (Schultes ...
In this poster we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplify the composit...
In this poster, we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplif...
Scientific image data sets can be continuously enriched by labels describing new features which are ...
A poster at RDA VP16: The idea of FAIR in the context of scientific data management and stewardship...
We provide the programs in Python, a CSV file with references, images used in the article and a text...
Preprocessing data for research, like finding, accessing, unifying or converting, takes up to large ...
The FAIR Guiding Principles aim to improve findability, accessibility, interoperability and reusabil...
The FAIR Digital Object Lab is an extendable and adjustable software stack for generic FAIR Digital ...
Data preparation and cleansing tasks take valueable time away from data scientists. The FAIR Digital...
Everything we do today is becoming more and more reliant on the use of computers. The field of biolo...
Everything we do today is becoming more and more reliant on the use of computers. The field of biolo...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
In recent years the FAIR principles have become a guide for sharing scientific data. Products th...
The application case for implementing and using the FAIR Digital Object (FAIR DO) concept aims to si...
The application case for implementing and using the FAIR Digital Object (FAIR DO) concept (Schultes ...
In this poster we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplify the composit...
In this poster, we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplif...
Scientific image data sets can be continuously enriched by labels describing new features which are ...
A poster at RDA VP16: The idea of FAIR in the context of scientific data management and stewardship...
We provide the programs in Python, a CSV file with references, images used in the article and a text...
Preprocessing data for research, like finding, accessing, unifying or converting, takes up to large ...
The FAIR Guiding Principles aim to improve findability, accessibility, interoperability and reusabil...
The FAIR Digital Object Lab is an extendable and adjustable software stack for generic FAIR Digital ...
Data preparation and cleansing tasks take valueable time away from data scientists. The FAIR Digital...
Everything we do today is becoming more and more reliant on the use of computers. The field of biolo...
Everything we do today is becoming more and more reliant on the use of computers. The field of biolo...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
In recent years the FAIR principles have become a guide for sharing scientific data. Products th...