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Kubeflow

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22 reviews
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  • 3 categories
Average star rating
4.5
Serving customers since
2017
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Kubeflow

22 reviews

Kubeflow is an open-source platform designed to facilitate the deployment, orchestration, and management of machine learning (ML) workflows on Kubernetes. It provides a comprehensive suite of tools that cover the entire ML lifecycle, enabling data scientists and engineers to develop, train, and deploy models efficiently in scalable and portable environments. Key Features and Functionality: - Kubeflow Notebooks: Offers web-based development environments, such as Jupyter Notebooks, running inside Kubernetes pods, allowing for interactive model development. - Kubeflow Pipelines: Enables the creation and deployment of portable, scalable ML workflows using Kubernetes, promoting consistency and reproducibility. - Kubeflow Trainer: Supports distributed training across various AI frameworks, including PyTorch, Hugging Face, DeepSpeed, MLX, JAX, and XGBoost, facilitating large-scale model training. - Kubeflow Katib: Provides automated machine learning capabilities, including hyperparameter tuning, early stopping, and neural architecture search, to optimize model performance. - Kubeflow KServe: Delivers a standardized platform for serving ML models across multiple frameworks, ensuring scalable and efficient model inference. - Kubeflow Model Registry: Acts as a centralized repository for managing ML models, versions, and associated metadata, bridging the gap between model experimentation and production deployment. Primary Value and Problem Solved: Kubeflow addresses the complexities associated with deploying and managing ML workflows by leveraging Kubernetes' scalability and portability. It abstracts the intricacies of containerization, allowing users to focus on building, training, and deploying models without worrying about the underlying infrastructure. By automating various stages of the ML lifecycle, Kubeflow enhances reproducibility, efficiency, and collaboration among data scientists and engineers, ultimately accelerating the development and deployment of machine learning solutions.

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Kubeflow Reviews

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Prashanth B.
PB
Prashanth B.
Research Associate with 2+ Years Experience | Python Developer| Computer Vision | Machine Learning | Deep Learning | Gen AI |NLP| LLMs| Freelancer
08/15/2025
Validated Reviewer
Review source: G2 invite
Incentivized Review

Research Associate

It's ability to leverage kubernets for managing machine learning work close offering scalability reproductive building and flexibility.
Aditya K.
AK
Aditya K.
DevOps Engineer at Cactus Communications
08/02/2025
Validated Reviewer
Review source: G2 invite
Incentivized Review
Barkath U.
BU
Barkath U.
Process Expert at Siemens Technology India
07/31/2024
Validated Reviewer
Review source: G2 invite
Incentivized Review

Kuberflow Review

I like the portability of it, which makes easier to work with any kubernete clusters whether it's on single computer or in cloud.

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Sunnyvale, US

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What is Kubeflow?

Kubeflow is an open-source platform designed to facilitate the deployment, orchestration, and scaling of machine learning workflows on Kubernetes. It aims to make it easier for data scientists and ML engineers to build, deploy, and manage complex machine learning models at scale by providing a suite of tools that encompass various stages of the ML lifecycle, including data preparation, model training, tuning, and serving. Kubeflow leverages the capabilities of Kubernetes to offer reliable and reproducible workflows and can integrate with diverse cloud providers and on-premise infrastructure.

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Year Founded
2017