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MLOps - Going from Good to Great

<!--HTML-->MLOps - Going from Good to Great To build a highly-performant machine learning model is not a small feat. The process requires a well-curated dataset, a suitable algorithm as well as finely tuned hyperparameters of the very algorithm. Once an ML model reaches a certain degree of mat...

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Autor principal: Maciejewski, Michal
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2855322
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author Maciejewski, Michal
author_facet Maciejewski, Michal
author_sort Maciejewski, Michal
collection CERN
description <!--HTML-->MLOps - Going from Good to Great To build a highly-performant machine learning model is not a small feat. The process requires a well-curated dataset, a suitable algorithm as well as finely tuned hyperparameters of the very algorithm. Once an ML model reaches a certain degree of maturity and is shared with a broader user base, a new set of operational challenges come to play. The growing field of MLOps addresses these challenges to ease the friction related to model distribution. In this lecture and exercise session, we will explore and practice main MLOps aspects, including but not limited to: 1. Selection and versioning of training datasets 2. Reproducibility of models and computing environments 3. Model encapsulation with HTTP API 4. Model versioning and roll-out strategies 5. Monitoring of model performance and its drift over time
id cern-2855322
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28553222023-04-03T19:01:38Zhttp://cds.cern.ch/record/2855322engMaciejewski, MichalMLOps - Going from Good to GreatInverted CERN School of Computing 2023Inverted CSC<!--HTML-->MLOps - Going from Good to Great To build a highly-performant machine learning model is not a small feat. The process requires a well-curated dataset, a suitable algorithm as well as finely tuned hyperparameters of the very algorithm. Once an ML model reaches a certain degree of maturity and is shared with a broader user base, a new set of operational challenges come to play. The growing field of MLOps addresses these challenges to ease the friction related to model distribution. In this lecture and exercise session, we will explore and practice main MLOps aspects, including but not limited to: 1. Selection and versioning of training datasets 2. Reproducibility of models and computing environments 3. Model encapsulation with HTTP API 4. Model versioning and roll-out strategies 5. Monitoring of model performance and its drift over timeoai:cds.cern.ch:28553222023
spellingShingle Inverted CSC
Maciejewski, Michal
MLOps - Going from Good to Great
title MLOps - Going from Good to Great
title_full MLOps - Going from Good to Great
title_fullStr MLOps - Going from Good to Great
title_full_unstemmed MLOps - Going from Good to Great
title_short MLOps - Going from Good to Great
title_sort mlops - going from good to great
topic Inverted CSC
url http://cds.cern.ch/record/2855322
work_keys_str_mv AT maciejewskimichal mlopsgoingfromgoodtogreat
AT maciejewskimichal invertedcernschoolofcomputing2023