Aprovisionamiento de recursos para la ejecución de experimentos basados en Machine Learning a través de las guías MLops
Fecha
2023-05-25Autor
Peñafiel Mora, David Marcelo
Seaman Mora, Daniel Andrés
Institución
Resumen
Within scientific research, beyond the specific knowledge required to conduct research, some
knowledge is needed in other areas such as machine learning, statistics, programming, or
databases, to name a few. On the other hand, manual machine learning workflows can present
various technical issues due to the variety of tools and professionals involved in these processes,
especially when considering the machine learning development lifecycle. This implies
that during experimentation, there may be issues starting with the preparation of necessary resources
and services to carry out such procedures. Due to this, areas such as MLOps seek to
reduce technical debt in the development of machine learning-based applications by promoting
process automation through what is known as MLOps pipelines. In this context, this paper proposes
the creation of a software prototype that facilitates the provisioning of necessary tools
for the creation, configuration, execution, and versioning of scientific experiments based on
machine learning using MLOps techniques and methodologies.