Difference between revisions of "Pre-ESIP Workshop"
Line 2: | Line 2: | ||
<big><center> '''and Representing Dataset Quality Information'''</center></big> <br> | <big><center> '''and Representing Dataset Quality Information'''</center></big> <br> | ||
<center>Virtual, 13 July 2020</center> <br> | <center>Virtual, 13 July 2020</center> <br> | ||
− | |||
− | |||
− | |||
− | |||
'''About''' <br> | '''About''' <br> | ||
Line 11: | Line 7: | ||
ESIP Information Quality Cluster (IQC) and the Evaluation and Quality Control (EQC) Team of Barcelona Supercomputing Center (BSC) have co-organized a pre-ESIP workshop to bring together national and international subject matter experts on dataset quality to kick off the development of community guidelines for consistently curating and representing dataset quality information that is findable, accessible, interoperable, and reusable, aka, FAIR. <br><br> | ESIP Information Quality Cluster (IQC) and the Evaluation and Quality Control (EQC) Team of Barcelona Supercomputing Center (BSC) have co-organized a pre-ESIP workshop to bring together national and international subject matter experts on dataset quality to kick off the development of community guidelines for consistently curating and representing dataset quality information that is findable, accessible, interoperable, and reusable, aka, FAIR. <br><br> | ||
+ | |||
+ | '''The Goals of This Workshop''' <br> | ||
+ | * Examine the needs for datasets quality information; <br> | ||
+ | * Explore approaches for evaluating dataset quality in an operational environment; <br> | ||
+ | * Discuss challenges for consistently curating and representing dataset quality information; <br> | ||
+ | * Define the needs and scope of community guidelines.<br><br> | ||
+ | |||
+ | '''Organizers of the Workshop''' <br> | ||
+ | Information Quality Cluster (IQC) of Earth Science Information Partners and the Evaluation and Quality Control (EQC) Team of Barcelona Supercomputing Center (BSC).<br><br> | ||
+ | |||
+ | '''Points-Of-Contact''' <br> | ||
+ | Ge Peng, ESIP IQC and CISESS/NCSU; gpeng@ncsu.edu <br> | ||
+ | Carlo Lacagnina, BSC; carlo.lacagnina@bsc.es <br> <br> | ||
+ | |||
+ | '''Organizing Committee''' <br> | ||
+ | Ge Peng, Carlo Lacagnina, Robert Downs, Ivana Ivánová, Gilles Larnicol, David Moroni, Hampapuram “Rama” Ramapriyan, and Yaxing Wei. |
Revision as of 09:27, June 4, 2020
About
Curating standards-based quality metadata and consistent quality descriptive information at the dataset level is fundamental for helping establish the credibility and trustworthiness of individual datasets and for providing sufficient guidance for users to address their specific needs, including machine learning. However, there are currently no community standards or guidelines on how to consistently curate and represent the dataset quality information that is machine- and human-readable.
ESIP Information Quality Cluster (IQC) and the Evaluation and Quality Control (EQC) Team of Barcelona Supercomputing Center (BSC) have co-organized a pre-ESIP workshop to bring together national and international subject matter experts on dataset quality to kick off the development of community guidelines for consistently curating and representing dataset quality information that is findable, accessible, interoperable, and reusable, aka, FAIR.
The Goals of This Workshop
- Examine the needs for datasets quality information;
- Explore approaches for evaluating dataset quality in an operational environment;
- Discuss challenges for consistently curating and representing dataset quality information;
- Define the needs and scope of community guidelines.
Organizers of the Workshop
Information Quality Cluster (IQC) of Earth Science Information Partners and the Evaluation and Quality Control (EQC) Team of Barcelona Supercomputing Center (BSC).
Points-Of-Contact
Ge Peng, ESIP IQC and CISESS/NCSU; gpeng@ncsu.edu
Carlo Lacagnina, BSC; carlo.lacagnina@bsc.es
Organizing Committee
Ge Peng, Carlo Lacagnina, Robert Downs, Ivana Ivánová, Gilles Larnicol, David Moroni, Hampapuram “Rama” Ramapriyan, and Yaxing Wei.