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LinuxFoundationX: Introduction to AI/ML Toolkits with Kubeflow

Learn about Kubeflow, the open source, CNCF-backed, Kubernetes-native, scalable, and portable machine learning toolkit.

Introduction to AI/ML Toolkits with Kubeflow
10 semanas
1–2 horas por semana
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Comienza el 17 may

Sobre este curso

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Machine learning and AI are rapidly transforming the world, impacting organizations of all sizes. As executives push for AI/ML strategies, DevOps teams have been upskilling and bridging the gap between operations and development for the last several years for traditional applications. The complex machine learning application arrives just as cross-team collaboration becomes familiar.

These data-dependent applications present fresh challenges for deployment and development, demanding expertise from developers and data scientists, data engineers, and machine learning engineers. How can existing engineers, with their container, Kubernetes, and cloud knowledge, navigate this terrain? Can non-engineers seeking smoother data-intensive projects find common ground with statistically-savvy data scientists? We think so! Enter Kubeflow, an open source, Kubernetes-powered toolkit that enables teams of any scale or maturity to harness the potential of machine learning. Rather than reinventing the wheel, Kubeflow simplifies the deployment of proven open-source ML systems across any cloud and even on-premise

This course begins with Kubeflow, covering its origins, deployment options, individual components, and standard integrations. By the end, you'll grasp how MLOPs can ensure the successful production of ML systems, how Kubeflow opens up ML for everyone, regardless of scale, understand how to choose the ideal Kubeflow distribution for your needs so you can see Kubeflow’s "simple, portable, scalable" promise in action, and launch your own Kubeflow project. We will even touch upon some additional open source integrations so you can make Kubeflow work for you!

This course caters to everyone wanting to leverage the power of machine learning. Whether you're an engineer, data scientist, or simply curious about Kubeflow, join us and discover how you can contribute to the future of machine learning!

De un vistazo

  • Institution LinuxFoundationX
  • Subject Informática
  • Level Introductory
  • Prerequisites

    To make the most of this course, you should have:

    • Experience with cloud computing

    • Familiarity with DevOps and cloud native principles

    • Basic programming experience

    • Experience with technical documentation

    • Experience with open source projects in general.

    • Basic understanding of Kubernetes might be helpful but not necessary

  • Language English
  • Video Transcript English

Lo que aprenderás

Omitir Lo que aprenderás
  • Discuss the value of MLOPs for production systems and how it relates to DevOps

  • Recognize common machine learning platform patterns and the problems they seek to solve

  • Explain the model development lifecycle

  • Define and identify common machine learning frameworks

  • Discuss the value proposition and goal of the universal training operator

  • Research and select a Kubeflow distribution based on your needs or, at the very least, have an informed conversation with a vendor.

  • Launch and leverage a Kubeflow Notebook.

  • Launch a primary Kubeflow pipeline.

  • Discuss additional popular Kubeflow integrations.

  • Familiarize yourself with Katib and Hyperparameter tuning

Plan de estudios

Omitir Plan de estudios
  • Course Introduction: Welcome!
  • Chapter 1: The Model Application Relationship and the Power of Reproducibility
  • Chapter 2: The Model Development Lifecycle
  • Chapter 3: MLOPs and the Rise of the Machine Learning Toolkit
  • Chapter 4: The Origin of Kubeflow
  • Chapter 5: Kubeflow Distributions
  • Chapter 6: The Kubeflow Dashboard and Notebooks
  • Chapter 7: The Unified Training Operator and Machine Learning
  • Chapter 8: Kubeflow Pipelines
  • Chapter 9: Conquering Katib
  • Chapter 10: Common Kubeflow Integrations

¿Quién puede hacer este curso?

Lamentablemente, las personas residentes en uno o más de los siguientes países o regiones no podrán registrarse para este curso: Irán, Cuba y la región de Crimea en Ucrania. Si bien edX consiguió licencias de la Oficina de Control de Activos Extranjeros de los EE. UU. (U.S. Office of Foreign Assets Control, OFAC) para ofrecer nuestros cursos a personas en estos países y regiones, las licencias que hemos recibido no son lo suficientemente amplias como para permitirnos dictar este curso en todas las ubicaciones. edX lamenta profundamente que las sanciones estadounidenses impidan que ofrezcamos todos nuestros cursos a cualquier persona, sin importar dónde viva.

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