Kubeflow vs SageMaker in Machine Learning
Key Takeaways
The video discusses the comparison between Kubeflow and SageMaker for machine learning workflows, highlighting the benefits of using Kubeflow for portability and declarative operations. Josh Bottum, VP of Arrikto and Kubeflow community product manager, shares insights on versioning machine learning steps with Kubeflow and Arrikto.
Full Transcript
Alessandra was asking about organizations which have not yet standardized on kubernetes what are if any the competitive advantages of using cube flow over fully managed solutions such as sage maker for their ML workflows yeah I mean I think that's a great question I think that first of all I think kubernetes popularity is really brought around because people want portability of their environment and efficient declarative operations and I think that you know when you work with a proprietary solution it can it can be very good but you if you want to move your data or your code or your operations to another environment you may have challenges right so cube flow is really designed as that one of those key tenants to be very portable so you know to port from your laptop to any public cloud to on Prem and have similar operations no matter where you're running it so I think that's potentially a difference of what why people are in investing in in in cube flow
Original Description
How do Kubeflow and SageMaker go up against each other what are the benefits of using one or the other? How does versioning your Machine Learning steps work with Kubeflow and Arrikto? For our 8th MLOps community meetup Josh Bottum VP of Arrikto and Kubeflow community product manager answers this question for us. This is taken from a longer conversation you can find here: https://youtu.be/jXRbj5xnBy4
Linkedin, Spotify, Volvo, JP Morgan, and many other market leaders are leveraging Kubeflow to simplify the creation and the efficient deployment of Machine Learning models on Kubernetes. This presentation will provide an update on the Kubeflow 1.0 release, and review the Community’s best practices to support Critical User Journeys, which optimize ML workflows.
As a data scientist will often need to build (and save) hundreds of variants of their model, this session will provide a deeper dive into how an integrated storage solution simplifies model-building and increases ML productivity. The presentation will examine how to optimize the daily workflows of data scientists, and eliminate complex and time-consuming manual tasks. The talk will also highlight how efficient Kubeflow operations rely on Kubernetes storage primitives, such as Dynamic Volume Provisioning, Persistent Volumes and StatefulSets. This integrated solution simplifies the configuration, operations and data protection for Kubeflow and generic K8s stateful apps in production-grade, multi-user environments.
In this chat we sit down with Josh Bottum, a Kubeflow Community Product Manager. His Community responsibilities include assisting users to quantify Kubeflow business value, develop critical user journeys (CUJs), triage incoming user issues, prioritize feature delivery, write release announcements and deliver Kubeflow presentations and demonstrations.
Mr. Bottum is also a VP of Arrikto. Arrikto simplifies storage operations for stateful Kubernetes applications by enabling efficient local stora
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