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 ml model management


Model Lake: a New Alternative for Machine Learning Models Management and Governance

Garouani, Moncef, Ravat, Franck, Valles-Parlangeau, Nathalie

arXiv.org Artificial Intelligence

The rise of artificial intelligence and data science across industries underscores the pressing need for effective management and governance of machine learning (ML) models. Traditional approaches to ML models management often involve disparate storage systems and lack standardized methodologies for versioning, audit, and re-use. Inspired by data lake concepts, this paper develops the concept of ML Model Lake as a centralized management framework for datasets, codes, and models within organizations environments. We provide an in-depth exploration of the Model Lake concept, delineating its architectural foundations, key components, operational benefits, and practical challenges. We discuss the transformative potential of adopting a Model Lake approach, such as enhanced model lifecycle management, discovery, audit, and reusabil-ity. Furthermore, we illustrate a real-world application of Model Lake and its transformative impact on data, code and model management practices.


Machine Learning Model Management - KDnuggets

#artificialintelligence

When you think of Machine Learning, you think about models. These models need effective management to ensure that they are producing the outputs required to solve a specific problem or task. Machine Learning Model Management is used to help Data Scientists, Machine Learning engineers, and more to keep track and on top of all their experiments and the results produced by the model. Machine Learning Model Management sole responsibility is ensuring that the development, training, versioning and deployment of ML models is managed at an effective level. The tools used in the development cycle for Machine Learning and the managing of the models require MLOps - Machine Learning Operations. To recap and for those of you who may be unsure, MLOps is a core function to the engineering of Machine Learning.


An Executive's Guide To Understanding Cloud-based Machine Learning Services

#artificialintelligence

Amazon SageMaker, Microsoft Azure ML Services, Google Cloud ML Engine, IBM Watson Studio are examples of ML PaaS in the cloud. If your business wants to bring agility into machine learning model development and deployment, consider ML PaaS. It combines the proven technique of CI/CD with ML model management.


An Executive's Guide To Understanding Cloud-based Machine Learning Services

#artificialintelligence

Amazon SageMaker, Microsoft Azure ML Services, Google Cloud ML Engine, IBM Watson Knowledge Studio are examples of ML PaaS in the cloud. If your business wants to bring agility into machine learning model development and deployment, consider ML PaaS. It combines the proven technique of CI/CD with ML model management.


An Executive's Guide To Understanding Cloud-based Machine Learning Services

#artificialintelligence

Amazon SageMaker, Microsoft Azure ML Services, Google Cloud ML Engine, IBM Watson Knowledge Studio are examples of ML PaaS in the cloud. If your business wants to bring agility into machine learning model development and deployment, consider ML PaaS. It combines the proven technique of CI/CD with ML model management.