Despite recent efforts to achieve a high level of interoperability of Machine Learning (ML) experiments, positively collaborating with the Reproducible Research context, we still run into the problems created due to the existence of different ML platforms: each of those have a specific conceptualization or schema for representing data and metadata. This scenario leads to an extra coding-effort to achieve both the desired interoperability and a better provenance level as well as a more automatized environment for obtaining the generated results. Hence, when using ML libraries, it is a common task to re-design specific data models (schemata) and develop wrappers to manage the produced outputs. In this article, we discuss this gap focusing on ...
The content of a Learning Object is frequently characterized by metadata from several standards, suc...
In this poster, we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplif...
Metadata creations tools are in general surprisingly hard to use, often lacking basic features such ...
Despite recent efforts to achieve a high level of interoperability of Machine Learning (ML) experime...
The ML-Schema, proposed by the W3C Machine Learning Schema Community Group, is a top-level ontology ...
The ML-Schema, proposed by the W3C Machine Learning Schema Community Group, is a top-level ontology ...
Machine learning (ML) practitioners and organizations are building model zoos of pre-trained models,...
Recent improvements in natural language processing (NLP) enable metadata to be created programmatica...
Scientific image data sets can be continuously enriched by labels describing new features which are ...
Machine learning (ML) practitioners and organizations are building model repositories of pre-trained...
: As the field of machine learning (ML) matures, two types of data archives are developing: collecti...
Machine learning (ML) presents new challenges for reproducible software engineering, as the artifact...
Machine learning (ML) has emerged as a vital asset for researchers to analyze and extract valuable i...
Abstract: In order for metadata to be interoperable, its schema must be able to precisely describe i...
Recent improvements in natural language processing (NLP) enable metadata to be created programmatica...
The content of a Learning Object is frequently characterized by metadata from several standards, suc...
In this poster, we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplif...
Metadata creations tools are in general surprisingly hard to use, often lacking basic features such ...
Despite recent efforts to achieve a high level of interoperability of Machine Learning (ML) experime...
The ML-Schema, proposed by the W3C Machine Learning Schema Community Group, is a top-level ontology ...
The ML-Schema, proposed by the W3C Machine Learning Schema Community Group, is a top-level ontology ...
Machine learning (ML) practitioners and organizations are building model zoos of pre-trained models,...
Recent improvements in natural language processing (NLP) enable metadata to be created programmatica...
Scientific image data sets can be continuously enriched by labels describing new features which are ...
Machine learning (ML) practitioners and organizations are building model repositories of pre-trained...
: As the field of machine learning (ML) matures, two types of data archives are developing: collecti...
Machine learning (ML) presents new challenges for reproducible software engineering, as the artifact...
Machine learning (ML) has emerged as a vital asset for researchers to analyze and extract valuable i...
Abstract: In order for metadata to be interoperable, its schema must be able to precisely describe i...
Recent improvements in natural language processing (NLP) enable metadata to be created programmatica...
The content of a Learning Object is frequently characterized by metadata from several standards, suc...
In this poster, we introduce how the FAIR¹ Digital Object (FAIR DO) concept can simplif...
Metadata creations tools are in general surprisingly hard to use, often lacking basic features such ...