Kubernetes Multi-tenancy: Principles and Practices for Large Scale Internal Deve... Hiroshi Hayakawa
Dec 19, 2025•Channel
AI Analysis
Data from YouTube Data API v3•Updated Just now
Video Overview
Video Details
Published5 months ago
Duration33:18
Video IDnfDW3Ndbmbg
Languageen
CategoryScience & Technology
PrivacyPublic
Made for KidsNo
Video TypeRegular Video
Performance Metrics
Views14
Likes0
Comments0
Engagement Rate0.00%
Likes per 100 views0.00
Comments per 1K views0.00
Description
Join us at the premier vendor-neutral open source conference, where developers and technologists come together to collaborate, share knowledge, and explore the latest innovations and advancements in open source technology. Learn more at https://events.linuxfoundation.org/
Kubernetes Multi-tenancy: Principles and Practices for Large Scale Internal Developer Platforms - Hiroshi Hayakawa, LY Corporation
Platform Engineering enables developers to focus on business value-aligned tasks by providing internal developer platforms (IDPs) that streamline development workflows. Kubernetes is widely used as a foundation for IDPs thanks to its scalability and flexibility.
As organizations grow, supporting multiple development projects often requires a multi-tenant platform built on Kubernetes. To meet demands for security, resource efficiency, and scalability in a multi-tenancy scenario, it is essential to understand and effectively utilize Kubernetes’ features, which support them. Moreover, real-world use cases often require expanding the scope of consideration to other cloud native technologies, utilized for enabling IDP capabilities on Kubernetes.
In this session, he will explore key considerations for designing a multi-tenant Kubernetes-based platform, drawing on real-world experience in its development and operation. The content will span from Kubernetes fundamentals to relevant technologies across the cloud native ecosystem. Participants will gain a comprehensive view of the multi-tenant landscape and practical insights for operating their own platforms at scale.