28 Oct 2024

feedKubernetes Blog

Spotlight on Kubernetes Upstream Training in Japan

About our team

We are organizers of Kubernetes Upstream Training in Japan. Our team is composed of members who actively contribute to Kubernetes, including individuals who hold roles such as member, reviewer, approver, and chair.

Our goal is to increase the number of Kubernetes contributors and foster the growth of the community. While Kubernetes community is friendly and collaborative, newcomers may find the first step of contributing to be a bit challenging. Our training program aims to lower that barrier and create an environment where even beginners can participate smoothly.

What is Kubernetes upstream training in Japan?

Upstream Training in 2022

Our training started in 2019 and is held 1 to 2 times a year. Initially, Kubernetes Upstream Training was conducted as a co-located event of KubeCon (Kubernetes Contributor Summit), but we launched Kubernetes Upstream Training in Japan with the aim of increasing Japanese contributors by hosting a similar event in Japan.

Before the pandemic, the training was held in person, but since 2020, it has been conducted online. The training offers the following content for those who have not yet contributed to Kubernetes:

At the beginning of the program, we explain why contributing to Kubernetes is important and who can contribute. We emphasize that contributing to Kubernetes allows you to make a global impact and that Kubernetes community is looking forward to your contributions!

We also explain Kubernetes community, SIGs, and Working Groups. Next, we explain the roles and responsibilities of Member, Reviewer, Approver, Tech Lead, and Chair. Additionally, we introduce the communication tools we primarily use, such as Slack, GitHub, and mailing lists. Some Japanese speakers may feel that communicating in English is a barrier. Additionally, those who are new to the community need to understand where and how communication takes place. We emphasize the importance of taking that first step, which is the most important aspect we focus on in our training!

We then go over the structure of Kubernetes codebase, the main repositories, how to create a PR, and the CI/CD process using Prow. We explain in detail the process from creating a PR to getting it merged.

After several lectures, participants get to experience hands-on work using kubernetes-sigs/contributor-playground, where they can create a simple PR. The goal is for participants to get a feel for the process of contributing to Kubernetes.

At the end of the program, we also provide a detailed explanation of setting up the development environment for contributing to the kubernetes/kubernetes repository, including building code locally, running tests efficiently, and setting up clusters.

Interview with participants

We conducted interviews with those who participated in our training program. We asked them about their reasons for joining, their impressions, and their future goals.

Keita Mochizuki (NTT DATA Group Corporation)

Keita Mochizuki is a contributor who consistently contributes to Kubernetes and related projects. Keita is also a professional in container security and has recently published a book. Additionally, he has made available a Roadmap for New Contributors, which is highly beneficial for those new to contributing.

Junya: Why did you decide to participate in Kubernetes Upstream Training?

Keita: Actually, I participated twice, in 2020 and 2022. In 2020, I had just started learning about Kubernetes and wanted to try getting involved in activities outside of work, so I signed up after seeing the event on Twitter by chance. However, I didn't have much knowledge at the time, and contributing to OSS felt like something beyond my reach. As a result, my understanding after the training was shallow, and I left with more of a "hmm, okay" feeling.

In 2022, I participated again when I was at a stage where I was seriously considering starting contributions. This time, I did prior research and was able to resolve my questions during the lectures, making it a very productive experience.

Junya: How did you feel after participating?

Keita: I felt that the significance of this training greatly depends on the participant's mindset. The training itself consists of general explanations and simple hands-on exercises, but it doesn't mean that attending the training will immediately lead to contributions.

Junya: What is your purpose for contributing?

Keita: My initial motivation was to "gain a deep understanding of Kubernetes and build a track record," meaning "contributing itself was the goal." Nowadays, I also contribute to address bugs or constraints I discover during my work. Additionally, through contributing, I've become less hesitant to analyze undocumented features directly from the source code.

Junya: What has been challenging about contributing?

Keita: The most difficult part was taking the first step. Contributing to OSS requires a certain level of knowledge, and leveraging resources like this training and support from others was essential. One phrase that stuck with me was, "Once you take the first step, it becomes easier to move forward." Also, in terms of continuing contributions as part of my job, the most challenging aspect is presenting the outcomes as achievements. To keep contributing over time, it's important to align it with business goals and strategies, but upstream contributions don't always lead to immediate results that can be directly tied to performance. Therefore, it's crucial to ensure mutual understanding with managers and gain their support.

Junya: What are your future goals?

Keita: My goal is to contribute to areas with a larger impact. So far, I've mainly contributed by fixing smaller bugs as my primary focus was building a track record, but moving forward, I'd like to challenge myself with contributions that have a greater impact on Kubernetes users or that address issues related to my work. Recently, I've also been working on reflecting the changes I've made to the codebase into the official documentation, and I see this as a step toward achieving my goals.

Junya: Thank you very much!

Yoshiki Fujikane (CyberAgent, Inc.)

Yoshiki Fujikane is one of the maintainers of PipeCD, a CNCF Sandbox project. In addition to developing new features for Kubernetes support in PipeCD, Yoshiki actively participates in community management and speaks at various technical conferences.

Junya: Why did you decide to participate in the Kubernetes Upstream Training?

Yoshiki: At the time I participated, I was still a student. I had only briefly worked with EKS, but I thought Kubernetes seemed complex yet cool, and I was casually interested in it. Back then, OSS felt like something out of reach, and upstream development for Kubernetes seemed incredibly daunting. While I had always been interested in OSS, I didn't know where to start. It was during this time that I learned about the Kubernetes Upstream Training and decided to take the challenge of contributing to Kubernetes.

Junya: What were your impressions after participating?

Yoshiki: I found it extremely valuable as a way to understand what it's like to be part of an OSS community. At the time, my English skills weren't very strong, so accessing primary sources of information felt like a big hurdle for me. Kubernetes is a very large project, and I didn't have a clear understanding of the overall structure, let alone what was necessary for contributing. The upstream training provided a Japanese explanation of the community structure and allowed me to gain hands-on experience with actual contributions. Thanks to the guidance I received, I was able to learn how to approach primary sources and use them as entry points for further investigation, which was incredibly helpful. This experience made me realize the importance of organizing and reviewing primary sources, and now I often dive into GitHub issues and documentation when something piques my interest. As a result, while I am no longer contributing to Kubernetes itself, the experience has been a great foundation for contributing to other projects.

Junya: What areas are you currently contributing to, and what are the other projects you're involved in?

Yoshiki: Right now, I'm no longer working with Kubernetes, but instead, I'm a maintainer of PipeCD, a CNCF Sandbox project. PipeCD is a CD tool that supports GitOps-style deployments for various application platforms. The tool originally started as an internal project at CyberAgent. With different teams adopting different platforms, PipeCD was developed to provide a unified CD platform with a consistent user experience. Currently, it supports Kubernetes, AWS ECS, Lambda, Cloud Run, and Terraform.

Junya: What role do you play within the PipeCD team?

Yoshiki: I work full-time on improving and developing Kubernetes-related features within the team. Since we provide PipeCD as a SaaS internally, my main focus is on adding new features and improving existing ones as part of that support. In addition to code contributions, I also contribute by giving talks at various events and managing community meetings to help grow the PipeCD community.

Junya: Could you explain what kind of improvements or developments you are working on with regards to Kubernetes?

Yoshiki: PipeCD supports GitOps and Progressive Delivery for Kubernetes, so I'm involved in the development of those features. Recently, I've been working on features that streamline deployments across multiple clusters.

Junya: Have you encountered any challenges while contributing to OSS?

Yoshiki: One challenge is developing features that maintain generality while meeting user use cases. When we receive feature requests while operating the internal SaaS, we first consider adding features to solve those issues. At the same time, we want PipeCD to be used by a broader audience as an OSS tool. So, I always think about whether a feature designed for one use case could be applied to another, ensuring the software remains flexible and widely usable.

Junya: What are your goals moving forward?

Yoshiki: I want to focus on expanding PipeCD's functionality. Currently, we are developing PipeCD under the slogan "One CD for All." As I mentioned earlier, it supports Kubernetes, AWS ECS, Lambda, Cloud Run, and Terraform, but there are many other platforms out there, and new platforms may emerge in the future. For this reason, we are currently developing a plugin system that will allow users to extend PipeCD on their own, and I want to push this effort forward. I'm also working on features for multi-cluster deployments in Kubernetes, and I aim to continue making impactful contributions.

Junya: Thank you very much!

Future of Kubernetes upstream training

We plan to continue hosting Kubernetes Upstream Training in Japan and look forward to welcoming many new contributors. Our next session is scheduled to take place at the end of November during CloudNative Days Winter 2024.

Moreover, our goal is to expand these training programs not only in Japan but also around the world. Kubernetes celebrated its 10th anniversary this year, and for the community to become even more active, it's crucial for people across the globe to continue contributing. While Upstream Training is already held in several regions, we aim to bring it to even more places.

We hope that as more people join Kubernetes community and contribute, our community will become even more vibrant!

28 Oct 2024 12:00am GMT

02 Oct 2024

feedKubernetes Blog

Announcing the 2024 Steering Committee Election Results

The 2024 Steering Committee Election is now complete. The Kubernetes Steering Committee consists of 7 seats, 3 of which were up for election in 2024. Incoming committee members serve a term of 2 years, and all members are elected by the Kubernetes Community.

This community body is significant since it oversees the governance of the entire Kubernetes project. With that great power comes great responsibility. You can learn more about the steering committee's role in their charter.

Thank you to everyone who voted in the election; your participation helps support the community's continued health and success.

Results

Congratulations to the elected committee members whose two year terms begin immediately (listed in alphabetical order by GitHub handle):

They join continuing members:

Benjamin Elder is a returning Steering Committee Member.

Big thanks!

Thank you and congratulations on a successful election to this round's election officers:

Thanks to the Emeritus Steering Committee Members. Your service is appreciated by the community:

And thank you to all the candidates who came forward to run for election.

Get involved with the Steering Committee

This governing body, like all of Kubernetes, is open to all. You can follow along with Steering Committee meeting notes and weigh in by filing an issue or creating a PR against their repo. They have an open meeting on the first Monday at 8am PT of every month. They can also be contacted at their public mailing list steering@kubernetes.io.

You can see what the Steering Committee meetings are all about by watching past meetings on the YouTube Playlist.

If you want to meet some of the newly elected Steering Committee members, join us for the Steering AMA at the Kubernetes Contributor Summit North America 2024 in Salt Lake City.


This post was adapted from one written by the Contributor Comms Subproject. If you want to write stories about the Kubernetes community, learn more about us.

02 Oct 2024 8:10pm GMT

30 Sep 2024

feedKubernetes Blog

Spotlight on CNCF Deaf and Hard-of-hearing Working Group (DHHWG)

In recognition of Deaf Awareness Month and the importance of inclusivity in the tech community, we are spotlighting Catherine Paganini, facilitator and one of the founding members of CNCF Deaf and Hard-of-Hearing Working Group (DHHWG). In this interview, Sandeep Kanabar, a deaf member of the DHHWG and part of the Kubernetes SIG ContribEx Communications team, sits down with Catherine to explore the impact of the DHHWG on cloud native projects like Kubernetes.

Sandeep's journey is a testament to the power of inclusion. Through his involvement in the DHHWG, he connected with members of the Kubernetes community who encouraged him to join SIG ContribEx - the group responsible for sustaining the Kubernetes contributor experience. In an ecosystem where open-source projects are actively seeking contributors and maintainers, this story highlights how important it is to create pathways for underrepresented groups, including those with disabilities, to contribute their unique perspectives and skills.

In this interview, we delve into Catherine's journey, the challenges and triumphs of establishing the DHHWG, and the vision for a more inclusive future in cloud native. We invite Kubernetes contributors, maintainers, and community members to reflect on the significance of empathy, advocacy, and community in fostering a truly inclusive environment for all, and to think about how they can support efforts to increase diversity and accessibility within their own projects.

Introduction

Sandeep Kanabar (SK): Hello Catherine, could you please introduce yourself, share your professional background, and explain your connection to the Kubernetes ecosystem?

Catherine Paganini (CP): I'm the Head of Marketing at Buoyant, the creator of Linkerd, the CNCF-graduated service mesh, and 5th CNCF project. Four years ago, I started contributing to open source. The initial motivation was to make cloud native concepts more accessible to newbies and non-technical people. Without a technical background, it was hard for me to understand what Kubernetes, containers, service meshes, etc. mean. All content was targeted at engineers already familiar with foundational concepts. Clearly, I couldn't be the only one struggling with wrapping my head around cloud native.

My first contribution was the CNCF Landscape Guide, which I co-authored with my former colleague Jason Morgan. Next, we started the CNCF Glossary, which explains cloud native concepts in simple terms. Today, the glossary has been (partially) localised into 14 languages!

Currently, I'm the co-chair of the TAG Contributor Strategy and the Facilitator of the Deaf and Hard of Hearing Working Group (DHHWG) and Blind and Visually Impaired WG (BVIWG), which is still in formation. I'm also working on a new Linux Foundation (LF) initiative called ABIDE (Accessibility and Belonging through Inclusion, Diversity, and Equity), so stay tuned to learn more about it!

Motivation and early milestones

SK: That's inspiring! Building on your passion for accessibility, what motivated you to facilitate the creation of the DHHWG? Was there a speecifc moment or experience that sparked this initiative?

CP: Last year at KubeCon Amsterdam, I learned about a great initiative by Jay Tihema that creates pathways for Maori youth into cloud native and open source. While telling my CODA (children of deaf adults) high school friend about it, I thought it'd be great to create something similar for deaf folks. A few months later, I posted about it in a LinkedIn post that the CNCF shared. Deaf people started to reach out, wanting to participate. And the rest is history.

SK: Speaking of history, since its launch, how has the DHHWG evolved? Could you highlight some of the key milestones or achievements the group has reached recently?

CP: Our WG is about a year old. It started with a few deaf engineers and me brainstorming how to make KubeCon more accessible. We published an initial draft of Best practices for an inclusive conference and shared it with the LF events team. KubeCon Chicago was two months later, and we had a couple of deaf attendees. It was the first KubeCon accessible to deaf signers. Destiny, one of our co-chairs, even participated in a keynote panel. It was incredible how quickly everything happened!

DHHWG members at KubeCon Chicago DHHWG members at KubeCon Chicago

The team has grown since then, and we've been able to do much more. With a kiosk in the project pavilion, an open space discussion, a sign language crash course, and a few media interviews, KubeCon Paris had a stronger advocacy and outreach focus. Check out this video of our team in Paris to get a glimpse of all the different KubeCon activities - it was such a great event! The team also launched the first CNCF Community Group in sign language, Deaf in Cloud Native, a glossary team that creates sign language videos for each technical term to help standardize technical signs across the globe. It's crazy to think that it all happened within one year!

Overcoming challenges and addressing misconceptions

SK: That's remarkable progress in just a year! Building such momentum must have come with its challenges. What barriers have you encountered in facilitating the DHHWG, and how did you and the group work to overcome them?

CP: The support from the community, LF, and CNCF has been incredible. The fact that we achieved so much is proof of it. The challenges are more in helping some team members overcome their fear of contributing. Most are new to open source, and it can be intimidating to put your work out there for everyone to see. The fear of being criticized in public is real; however, as they will hopefully realize over time, our community is incredibly supportive. Instead of criticizing, people tend to help improve the work, leading to better outcomes.

SK: Are there any misconceptions about the deaf and hard-of-hearing community in tech that you'd like to address?

CP: Deaf and hard of hearing individuals are very diverse - there is no one-size-fits-all. Some deaf people are oral (speak), others sign, while some lip read or prefer captions. It generally depends on how people grew up. While some people come from deaf families and sign language is their native language, others were born into hearing families who may or may not have learned how to sign. Some deaf people grew up surrounded by hearing people, while others grew up deeply embedded in Deaf culture. Hard-of-hearing individuals, on the other hand, typically can communicate well with hearing peers one-on-one in quiet settings, but loud environments or conversations with multiple people can make it hard to follow the conversation. Most rely heavily on captions. Each background and experience will shape their communication style and preferences. In short, what works for one person, doesn't necessarily work for others. So never assume and always ask about accessibility needs and preferences.

Impact and the role of allies

SK: Can you share some key impacts/outcomes of the conference best practices document?

CP: Here are the two most important ones: Captions should be on the monitor, not in an app. That's especially important during technical talks with live demos. Deaf and hard of hearing attendees will miss important information switching between captions on their phone and code on the screen.

Interpreters are most valuable during networking, not in talks (with captions). Most people come to conferences for the hallway track. That is no different for deaf attendees. If they can't network, they are missing out on key professional connections, affecting their career prospects.

SK: In your view, how crucial is the role of allies within the DHHWG, and what contributions have they made to the group's success?

CP: Deaf and hard of hearing individuals are a minority and can only do so much. Allies are the key to any diversity and inclusion initiative. As a majority, allies can help spread the word and educate their peers, playing a key role in scaling advocacy efforts. They also have the power to demand change. It's easy for companies to ignore minorities, but if the majority demands that their employers be accessible, environmentally conscious, and good citizens, they will ultimately be pushed to adapt to new societal values.

Expanding DEI efforts and future vision

SK: The importance of allies in driving change is clear. Beyond the DHHWG, are you involved in any other DEI groups or initiatives within the tech community?

CP: As mentioned above, I'm working on an initiative called ABIDE, which is still work in progress. I don't want to share too much about it yet, but what I can say is that the DHHWG will be part of it and that we just started a Blind and Visually Impaired WG (BVIWG). ABIDE will start by focusing on accessibility, so if anyone reading this has an idea for another WG, please reach out to me via the CNCF Slack @Catherine Paganini.

SK: What does the future hold for the DHHWG? Can you share details about any ongoing or upcoming initiatives?

CP: I think we've been very successful in terms of visibility and awareness so far. We can't stop, though. Awareness work is ongoing, and most people in our community haven't heard about us or met anyone on our team yet, so a lot of work still lies ahead.

DHHWG members at KubeCon Paris DHHWG members at KubeCon Paris

The next step is to refocus on advocacy. The same thing we did with the conference best practices but for other areas. The goal is to help educate the community about what real accessibility looks like, how projects can be more accessible, and why employers should seriously consider deaf candidates while providing them with the tools they need to conduct successful interviews and employee onboarding. We need to capture all that in documents, publish it, and then get the word out. That last part is certainly the most challenging, but it's also where everyone can get involved.

Call to action

SK: Thank you for sharing your insights, Catherine. As we wrap up, do you have any final thoughts or a call to action for our readers?

CP: As we build our accessibility page, check in regularly to see what's new. Share the docs with your team, employer, and network - anyone, really. The more people understand what accessibility really means and why it matters, the more people will recognize when something isn't accessible, and be able to call out marketing-BS, which, unfortunately, is more often the case than not. We need allies to help push for change. No minority can do this on their own. So please learn about accessibility, keep an eye out for it, and call it out when something isn't accessible. We need your help!

Wrapping up

Catherine and the DHHWG's work exemplify the power of community and advocacy. As we celebrate Deaf Awareness Month, let's reflect on her role as an ally and consider how we can all contribute to building a more inclusive tech community, particularly within open-source projects like Kubernetes.

Together, we can break down barriers, challenge misconceptions, and ensure that everyone feels welcome and valued. By advocating for accessibility, supporting initiatives like the DHHWG, and fostering a culture of empathy, we can create a truly inclusive and welcoming space for all.

30 Sep 2024 12:00am GMT

24 Sep 2024

feedKubernetes Blog

Spotlight on SIG Scheduling

In this SIG Scheduling spotlight we talked with Kensei Nakada, an approver in SIG Scheduling.

Introductions

Arvind: Hello, thank you for the opportunity to learn more about SIG Scheduling! Would you like to introduce yourself and tell us a bit about your role, and how you got involved with Kubernetes?

Kensei: Hi, thanks for the opportunity! I'm Kensei Nakada (@sanposhiho), a software engineer at Tetrate.io. I have been contributing to Kubernetes in my free time for more than 3 years, and now I'm an approver of SIG Scheduling in Kubernetes. Also, I'm a founder/owner of two SIG subprojects, kube-scheduler-simulator and kube-scheduler-wasm-extension.

About SIG Scheduling

AP: That's awesome! You've been involved with the project since a long time. Can you provide a brief overview of SIG Scheduling and explain its role within the Kubernetes ecosystem?

KN: As the name implies, our responsibility is to enhance scheduling within Kubernetes. Specifically, we develop the components that determine which Node is the best place for each Pod. In Kubernetes, our main focus is on maintaining the kube-scheduler, along with other scheduling-related components as part of our SIG subprojects.

AP: I see, got it! That makes me curious--what recent innovations or developments has SIG Scheduling introduced to Kubernetes scheduling?

KN: From a feature perspective, there have been several enhancements to PodTopologySpread recently. PodTopologySpread is a relatively new feature in the scheduler, and we are still in the process of gathering feedback and making improvements.

Most recently, we have been focusing on a new internal enhancement called QueueingHint which aims to enhance scheduling throughput. Throughput is one of our crucial metrics in scheduling. Traditionally, we have primarily focused on optimizing the latency of each scheduling cycle. QueueingHint takes a different approach, optimizing when to retry scheduling, thereby reducing the likelihood of wasting scheduling cycles.

A: That sounds interesting! Are there any other interesting topics or projects you are currently working on within SIG Scheduling?

KN: I'm leading the development of QueueingHint which I just shared. Given that it's a big new challenge for us, we've been facing many unexpected challenges, especially around the scalability, and we're trying to solve each of them to eventually enable it by default.

And also, I believe kube-scheduler-wasm-extension (a SIG subproject) that I started last year would be interesting to many people. Kubernetes has various extensions from many components. Traditionally, extensions are provided via webhooks (extender in the scheduler) or Go SDK (Scheduling Framework in the scheduler). However, these come with drawbacks - performance issues with webhooks and the need to rebuild and replace schedulers with Go SDK, posing difficulties for those seeking to extend the scheduler but lacking familiarity with it. The project is trying to introduce a new solution to this general challenge - a WebAssembly based extension. Wasm allows users to build plugins easily, without worrying about recompiling or replacing their scheduler, and sidestepping performance concerns.

Through this project, SIG Scheduling has been learning valuable insights about WebAssembly's interaction with large Kubernetes objects. And I believe the experience that we're gaining should be useful broadly within the community, beyond SIG Scheduling.

A: Definitely! Now, there are 8 subprojects inside SIG Scheduling. Would you like to talk about them? Are there some interesting contributions by those teams you want to highlight?

KN: Let me pick up three subprojects: Kueue, KWOK and descheduler.

Kueue
Recently, many people have been trying to manage batch workloads with Kubernetes, and in 2022, Kubernetes community founded WG-Batch for better support for such batch workloads in Kubernetes. Kueue is a project that takes a crucial role for it. It's a job queueing controller, deciding when a job should wait, when a job should be admitted to start, and when a job should be preempted. Kueue aims to be installed on a vanilla Kubernetes cluster while cooperating with existing matured controllers (scheduler, cluster-autoscaler, kube-controller-manager, etc).
KWOK
KWOK is a component in which you can create a cluster of thousands of Nodes in seconds. It's mostly useful for simulation/testing as a lightweight cluster, and actually another SIG sub project kube-scheduler-simulator uses KWOK background.
descheduler
Descheduler is a component recreating pods that are running on undesired Nodes. In Kubernetes, scheduling constraints (PodAffinity, NodeAffinity, PodTopologySpread, etc) are honored only at Pod schedule, but it's not guaranteed that the contrtaints are kept being satisfied afterwards. Descheduler evicts Pods violating their scheduling constraints (or other undesired conditions) so that they're recreated and rescheduled.
Descheduling Framework
One very interesting on-going project, similar to Scheduling Framework in the scheduler, aiming to make descheduling logic extensible and allow maintainers to focus on building a core engine of descheduler.

AP: Thank you for letting us know! And I have to ask, what are some of your favorite things about this SIG?

KN: What I really like about this SIG is how actively engaged everyone is. We come from various companies and industries, bringing diverse perspectives to the table. Instead of these differences causing division, they actually generate a wealth of opinions. Each view is respected, and this makes our discussions both rich and productive.

I really appreciate this collaborative atmosphere, and I believe it has been key to continuously improving our components over the years.

Contributing to SIG Scheduling

AP: Kubernetes is a community-driven project. Any recommendations for new contributors or beginners looking to get involved and contribute to SIG scheduling? Where should they start?

KN: Let me start with a general recommendation for contributing to any SIG: a common approach is to look for good-first-issue. However, you'll soon realize that many people worldwide are trying to contribute to the Kubernetes repository.

I suggest starting by examining the implementation of a component that interests you. If you have any questions about it, ask in the corresponding Slack channel (e.g., #sig-scheduling for the scheduler, #sig-node for kubelet, etc). Once you have a rough understanding of the implementation, look at issues within the SIG (e.g., sig-scheduling), where you'll find more unassigned issues compared to good-first-issue ones. You may also want to filter issues with the kind/cleanup label, which often indicates lower-priority tasks and can be starting points.

Specifically for SIG Scheduling, you should first understand the Scheduling Framework, which is the fundamental architecture of kube-scheduler. Most of the implementation is found in pkg/scheduler. I suggest starting with ScheduleOne function and then exploring deeper from there.

Additionally, apart from the main kubernetes/kubernetes repository, consider looking into sub-projects. These typically have fewer maintainers and offer more opportunities to make a significant impact. Despite being called "sub" projects, many have a large number of users and a considerable impact on the community.

And last but not least, remember contributing to the community isn't just about code. While I talked a lot about the implementation contribution, there are many ways to contribute, and each one is valuable. One comment to an issue, one feedback to an existing feature, one review comment in PR, one clarification on the documentation; every small contribution helps drive the Kubernetes ecosystem forward.

AP: Those are some pretty useful tips! And if I may ask, how do you assist new contributors in getting started, and what skills are contributors likely to learn by participating in SIG Scheduling?

KN: Our maintainers are available to answer your questions in the #sig-scheduling Slack channel. By participating, you'll gain a deeper understanding of Kubernetes scheduling and have the opportunity to collaborate and network with maintainers from diverse backgrounds. You'll learn not just how to write code, but also how to maintain a large project, design and discuss new features, address bugs, and much more.

Future Directions

AP: What are some Kubernetes-specific challenges in terms of scheduling? Are there any particular pain points?

KN: Scheduling in Kubernetes can be quite challenging because of the diverse needs of different organizations with different business requirements. Supporting all possible use cases in kube-scheduler is impossible. Therefore, extensibility is a key focus for us. A few years ago, we rearchitected kube-scheduler with Scheduling Framework, which offers flexible extensibility for users to implement various scheduling needs through plugins. This allows maintainers to focus on the core scheduling features and the framework runtime.

Another major issue is maintaining sufficient scheduling throughput. Typically, a Kubernetes cluster has only one kube-scheduler, so its throughput directly affects the overall scheduling scalability and, consequently, the cluster's scalability. Although we have an internal performance test (scheduler_perf), unfortunately, we sometimes overlook performance degradation in less common scenarios. It's difficult as even small changes, which look irrelevant to performance, can lead to degradation.

AP: What are some upcoming goals or initiatives for SIG Scheduling? How do you envision the SIG evolving in the future?

KN: Our primary goal is always to build and maintain extensible and stable scheduling runtime, and I bet this goal will remain unchanged forever.

As already mentioned, extensibility is key to solving the challenge of the diverse needs of scheduling. Rather than trying to support every different use case directly in kube-scheduler, we will continue to focus on enhancing extensibility so that it can accommodate various use cases. kube-scheduler-wasm-extension that I mentioned is also part of this initiative.

Regarding stability, introducing new optimizations like QueueHint is one of our strategies. Additionally, maintaining throughput is also a crucial goal towards the future. We're planning to enhance our throughput monitoring (ref), so that we can notice degradation as much as possible on our own before releasing. But, realistically, we can't cover every possible scenario. We highly appreciate any attention the community can give to scheduling throughput and encourage feedback and alerts regarding performance issues!

Closing Remarks

AP: Finally, what message would you like to convey to those who are interested in learning more about SIG Scheduling?

KN: Scheduling is one of the most complicated areas in Kubernetes, and you may find it difficult at first. But, as I shared earlier, you can find many opportunities for contributions, and many maintainers are willing to help you understand things. We know your unique perspective and skills are what makes our open source so powerful 😊

Feel free to reach out to us in Slack (#sig-scheduling) or meetings. I hope this article interests everyone and we can see new contributors!

AP: Thank you so much for taking the time to do this! I'm confident that many will find this information invaluable for understanding more about SIG Scheduling and for contributing to the SIG.

24 Sep 2024 12:00am GMT

23 Aug 2024

feedKubernetes Blog

Kubernetes v1.31: kubeadm v1beta4

As part of the Kubernetes v1.31 release, kubeadm is adopting a new (v1beta4) version of its configuration file format. Configuration in the previous v1beta3 format is now formally deprecated, which means it's supported but you should migrate to v1beta4 and stop using the deprecated format. Support for v1beta3 configuration will be removed after a minimum of 3 Kubernetes minor releases.

In this article, I'll walk you through key changes; I'll explain about the kubeadm v1beta4 configuration format, and how to migrate from v1beta3 to v1beta4.

You can read the reference for the v1beta4 configuration format: kubeadm Configuration (v1beta4).

A list of changes since v1beta3

This version improves on the v1beta3 format by fixing some minor issues and adding a few new fields.

To put it simply,

For details, you can see the official document below:

These changes simplify the configuration of tools that use kubeadm and improve the extensibility of kubeadm itself.

How to migrate v1beta3 configuration to v1beta4?

If your configuration is not using the latest version, it is recommended that you migrate using the kubeadm config migrate command.

This command reads an existing configuration file that uses the old format, and writes a new file that uses the current format.

Example

Using kubeadm v1.31, run kubeadm config migrate --old-config old-v1beta3.yaml --new-config new-v1beta4.yaml

How do I get involved?

Huge thanks to all the contributors who helped with the design, implementation, and review of this feature:

For those interested in getting involved in future discussions on kubeadm configuration, you can reach out kubeadm or SIG-cluster-lifecycle by several means:

23 Aug 2024 12:00am GMT

22 Aug 2024

feedKubernetes Blog

Kubernetes v1.31: New Kubernetes CPUManager Static Policy: Distribute CPUs Across Cores

In Kubernetes v1.31, we are excited to introduce a significant enhancement to CPU management capabilities: the distribute-cpus-across-cores option for the CPUManager static policy. This feature is currently in alpha and hidden by default, marking a strategic shift aimed at optimizing CPU utilization and improving system performance across multi-core processors.

Understanding the feature

Traditionally, Kubernetes' CPUManager tends to allocate CPUs as compactly as possible, typically packing them onto the fewest number of physical cores. However, allocation strategy matters, CPUs on the same physical host still share some resources of the physical core, such as the cache and execution units, etc.

cpu-cache-architecture

While default approach minimizes inter-core communication and can be beneficial under certain scenarios, it also poses a challenge. CPUs sharing a physical core can lead to resource contention, which in turn may cause performance bottlenecks, particularly noticeable in CPU-intensive applications.

The new distribute-cpus-across-cores feature addresses this issue by modifying the allocation strategy. When enabled, this policy option instructs the CPUManager to spread out the CPUs (hardware threads) across as many physical cores as possible. This distribution is designed to minimize contention among CPUs sharing the same physical core, potentially enhancing the performance of applications by providing them dedicated core resources.

Technically, within this static policy, the free CPU list is reordered in the manner depicted in the diagram, aiming to allocate CPUs from separate physical cores.

cpu-ordering

Enabling the feature

To enable this feature, users firstly need to add --cpu-manager-policy=static kubelet flag or the cpuManagerPolicy: static field in KubeletConfiuration. Then user can add --cpu-manager-policy-options distribute-cpus-across-cores=true or distribute-cpus-across-cores=true to their CPUManager policy options in the Kubernetes configuration or. This setting directs the CPUManager to adopt the new distribution strategy. It is important to note that this policy option cannot currently be used in conjunction with full-pcpus-only or distribute-cpus-across-numa options.

Current limitations and future directions

As with any new feature, especially one in alpha, there are limitations and areas for future improvement. One significant current limitation is that distribute-cpus-across-cores cannot be combined with other policy options that might conflict in terms of CPU allocation strategies. This restriction can affect compatibility with certain workloads and deployment scenarios that rely on more specialized resource management.

Looking forward, we are committed to enhancing the compatibility and functionality of the distribute-cpus-across-cores option. Future updates will focus on resolving these compatibility issues, allowing this policy to be combined with other CPUManager policies seamlessly. Our goal is to provide a more flexible and robust CPU allocation framework that can adapt to a variety of workloads and performance demands.

Conclusion

The introduction of the distribute-cpus-across-cores policy in Kubernetes CPUManager is a step forward in our ongoing efforts to refine resource management and improve application performance. By reducing the contention on physical cores, this feature offers a more balanced approach to CPU resource allocation, particularly beneficial for environments running heterogeneous workloads. We encourage Kubernetes users to test this new feature and provide feedback, which will be invaluable in shaping its future development.

This draft aims to clearly explain the new feature while setting expectations for its current stage and future improvements.

Further reading

Please check out the Control CPU Management Policies on the Node task page to learn more about the CPU Manager, and how it fits in relation to the other node-level resource managers.

Getting involved

This feature is driven by the SIG Node. If you are interested in helping develop this feature, sharing feedback, or participating in any other ongoing SIG Node projects, please attend the SIG Node meeting for more details.

22 Aug 2024 12:00am GMT

Kubernetes 1.31: Fine-grained SupplementalGroups control

This blog discusses a new feature in Kubernetes 1.31 to improve the handling of supplementary groups in containers within Pods.

Motivation: Implicit group memberships defined in /etc/group in the container image

Although this behavior may not be popular with many Kubernetes cluster users/admins, kubernetes, by default, merges group information from the Pod with information defined in /etc/group in the container image.

Let's see an example, below Pod specifies runAsUser=1000, runAsGroup=3000 and supplementalGroups=4000 in the Pod's security context.

apiVersion: v1
kind: Pod
metadata:
 name: implicit-groups
spec:
 securityContext:
 runAsUser: 1000
 runAsGroup: 3000
 supplementalGroups: [4000]
 containers:
 - name: ctr
 image: registry.k8s.io/e2e-test-images/agnhost:2.45
 command: [ "sh", "-c", "sleep 1h" ]
 securityContext:
 allowPrivilegeEscalation: false

What is the result of id command in the ctr container?

# Create the Pod:
$ kubectl apply -f https://k8s.io/blog/2024-08-22-Fine-grained-SupplementalGroups-control/implicit-groups.yaml

# Verify that the Pod's Container is running:
$ kubectl get pod implicit-groups

# Check the id command
$ kubectl exec implicit-groups -- id

Then, output should be similar to this:

uid=1000 gid=3000 groups=3000,4000,50000

Where does group ID 50000 in supplementary groups (groups field) come from, even though 50000 is not defined in the Pod's manifest at all? The answer is /etc/group file in the container image.

Checking the contents of /etc/group in the container image should show below:

$ kubectl exec implicit-groups -- cat /etc/group
...
user-defined-in-image:x:1000:
group-defined-in-image:x:50000:user-defined-in-image

Aha! The container's primary user 1000 belongs to the group 50000 in the last entry.

Thus, the group membership defined in /etc/group in the container image for the container's primary user is implicitly merged to the information from the Pod. Please note that this was a design decision the current CRI implementations inherited from Docker, and the community never really reconsidered it until now.

What's wrong with it?

The implicitly merged group information from /etc/group in the container image may cause some concerns particularly in accessing volumes (see kubernetes/kubernetes#112879 for details) because file permission is controlled by uid/gid in Linux. Even worse, the implicit gids from /etc/group can not be detected/validated by any policy engines because there is no clue for the implicit group information in the manifest. This can also be a concern for Kubernetes security.

Fine-grained SupplementalGroups control in a Pod: SupplementaryGroupsPolicy

To tackle the above problem, Kubernetes 1.31 introduces new field supplementalGroupsPolicy in Pod's .spec.securityContext.

This field provies a way to control how to calculate supplementary groups for the container processes in a Pod. The available policy is below:

Let's see how Strict policy works.

apiVersion: v1
kind: Pod
metadata:
 name: strict-supplementalgroups-policy
spec:
 securityContext:
 runAsUser: 1000
 runAsGroup: 3000
 supplementalGroups: [4000]
 supplementalGroupsPolicy: Strict
 containers:
 - name: ctr
 image: registry.k8s.io/e2e-test-images/agnhost:2.45
 command: [ "sh", "-c", "sleep 1h" ]
 securityContext:
 allowPrivilegeEscalation: false
# Create the Pod:
$ kubectl apply -f https://k8s.io/blog/2024-08-22-Fine-grained-SupplementalGroups-control/strict-supplementalgroups-policy.yaml

# Verify that the Pod's Container is running:
$ kubectl get pod strict-supplementalgroups-policy

# Check the process identity:
kubectl exec -it strict-supplementalgroups-policy -- id

The output should be similar to this:

uid=1000 gid=3000 groups=3000,4000

You can see Strict policy can exclude group 50000 from groups!

Thus, ensuring supplementalGroupsPolicy: Strict (enforced by some policy mechanism) helps prevent the implicit supplementary groups in a Pod.

Attached process identity in Pod status

This feature also exposes the process identity attached to the first container process of the container via .status.containerStatuses[].user.linux field. It would be helpful to see if implicit group IDs are attached.

...
status:
 containerStatuses:
 - name: ctr
 user:
 linux:
 gid: 3000
 supplementalGroups:
 - 3000
 - 4000
 uid: 1000
...

Feature availability

To enable supplementalGroupsPolicy field, the following components have to be used:

You can see if the feature is supported in the Node's .status.features.supplementalGroupsPolicy field.

apiVersion: v1
kind: Node
...
status:
 features:
 supplementalGroupsPolicy: true

What's next?

Kubernetes SIG Node hope - and expect - that the feature will be promoted to beta and eventually general availability (GA) in future releases of Kubernetes, so that users no longer need to enable the feature gate manually.

Merge policy is applied when supplementalGroupsPolicy is not specified, for backwards compatibility.

How can I learn more?

How to get involved?

This feature is driven by the SIG Node community. Please join us to connect with the community and share your ideas and feedback around the above feature and beyond. We look forward to hearing from you!

22 Aug 2024 12:00am GMT

Kubernetes 1.31: Custom Profiling in Kubectl Debug Graduates to Beta

There are many ways of troubleshooting the pods and nodes in the cluster. However, kubectl debug is one of the easiest, highly used and most prominent ones. It provides a set of static profiles and each profile serves for a different kind of role. For instance, from the network administrator's point of view, debugging the node should be as easy as this:

$ kubectl debug node/mynode -it --image=busybox --profile=netadmin

On the other hand, static profiles also bring about inherent rigidity, which has some implications for some pods contrary to their ease of use. Because there are various kinds of pods (or nodes) that all have their specific necessities, and unfortunately, some can't be debugged by only using the static profiles.

Take an instance of a simple pod consisting of a container whose healthiness relies on an environment variable:

apiVersion: v1
kind: Pod
metadata:
 name: example-pod
spec:
 containers:
 - name: example-container
 image: customapp:latest
 env:
 - name: REQUIRED_ENV_VAR
 value: "value1"

Currently, copying the pod is the sole mechanism that supports debugging this pod in kubectl debug. Furthermore, what if user needs to modify the REQUIRED_ENV_VAR to something different for advanced troubleshooting?. There is no mechanism to achieve this.

Custom Profiling

Custom profiling is a new functionality available under --custom flag, introduced in kubectl debug to provide extensibility. It expects partial Container spec in either YAML or JSON format. In order to debug the example-container above by creating an ephemeral container, we simply have to define this YAML:

# partial_container.yaml
env:
 - name: REQUIRED_ENV_VAR
 value: value2

and execute:

kubectl debug example-pod -it --image=customapp --custom=partial_container.yaml

Here is another example that modifies multiple fields at once (change port number, add resource limits, modify environment variable) in JSON:

{
 "ports": [
 {
 "containerPort": 80
 }
 ],
 "resources": {
 "limits": {
 "cpu": "0.5",
 "memory": "512Mi"
 },
 "requests": {
 "cpu": "0.2",
 "memory": "256Mi"
 }
 },
 "env": [
 {
 "name": "REQUIRED_ENV_VAR",
 "value": "value2"
 }
 ]
}

Constraints

Uncontrolled extensibility hurts the usability. So that, custom profiling is not allowed for certain fields such as command, image, lifecycle, volume devices and container name. In the future, more fields can be added to the disallowed list if required.

Limitations

The kubectl debug command has 3 aspects: Debugging with ephemeral containers, pod copying, and node debugging. The largest intersection set of these aspects is the container spec within a Pod That's why, custom profiling only supports the modification of the fields that are defined with containers. This leads to a limitation that if user needs to modify the other fields in the Pod spec, it is not supported.

Acknowledgments

Special thanks to all the contributors who reviewed and commented on this feature, from the initial conception to its actual implementation (alphabetical order):

22 Aug 2024 12:00am GMT

21 Aug 2024

feedKubernetes Blog

Kubernetes 1.31: Autoconfiguration For Node Cgroup Driver (beta)

Historically, configuring the correct cgroup driver has been a pain point for users running new Kubernetes clusters. On Linux systems, there are two different cgroup drivers: cgroupfs and systemd. In the past, both the kubelet and CRI implementation (like CRI-O or containerd) needed to be configured to use the same cgroup driver, or else the kubelet would exit with an error. This was a source of headaches for many cluster admins. However, there is light at the end of the tunnel!

Automated cgroup driver detection

In v1.28.0, the SIG Node community introduced the feature gate KubeletCgroupDriverFromCRI, which instructs the kubelet to ask the CRI implementation which cgroup driver to use. A few minor releases of Kubernetes happened whilst we waited for support to land in the major two CRI implementations (containerd and CRI-O), but as of v1.31.0, this feature is now beta!

In addition to setting the feature gate, a cluster admin needs to ensure their CRI implementation is new enough:

Then, they should ensure their CRI implementation is configured to the cgroup_driver they would like to use.

Future work

Eventually, support for the kubelet's cgroupDriver configuration field will be dropped, and the kubelet will fail to start if the CRI implementation isn't new enough to have support for this feature.

21 Aug 2024 12:00am GMT

20 Aug 2024

feedKubernetes Blog

Kubernetes 1.31: Streaming Transitions from SPDY to WebSockets

In Kubernetes 1.31, by default kubectl now uses the WebSocket protocol instead of SPDY for streaming.

This post describes what these changes mean for you and why these streaming APIs matter.

Streaming APIs in Kubernetes

In Kubernetes, specific endpoints that are exposed as an HTTP or RESTful interface are upgraded to streaming connections, which require a streaming protocol. Unlike HTTP, which is a request-response protocol, a streaming protocol provides a persistent connection that's bi-directional, low-latency, and lets you interact in real-time. Streaming protocols support reading and writing data between your client and the server, in both directions, over the same connection. This type of connection is useful, for example, when you create a shell in a running container from your local workstation and run commands in the container.

Why change the streaming protocol?

Before the v1.31 release, Kubernetes used the SPDY/3.1 protocol by default when upgrading streaming connections. SPDY/3.1 has been deprecated for eight years, and it was never standardized. Many modern proxies, gateways, and load balancers no longer support the protocol. As a result, you might notice that commands like kubectl cp, kubectl attach, kubectl exec, and kubectl port-forward stop working when you try to access your cluster through a proxy or gateway.

As of Kubernetes v1.31, SIG API Machinery has modified the streaming protocol that a Kubernetes client (such as kubectl) uses for these commands to the more modern WebSocket streaming protocol. The WebSocket protocol is a currently supported standardized streaming protocol that guarantees compatibility and interoperability with different components and programming languages. The WebSocket protocol is more widely supported by modern proxies and gateways than SPDY.

How streaming APIs work

Kubernetes upgrades HTTP connections to streaming connections by adding specific upgrade headers to the originating HTTP request. For example, an HTTP upgrade request for running the date command on an nginx container within a cluster is similar to the following:

$ kubectl exec -v=8 nginx -- date
GET https://127.0.0.1:43251/api/v1/namespaces/default/pods/nginx/exec?command=date…
Request Headers:
 Connection: Upgrade
 Upgrade: websocket
 Sec-Websocket-Protocol: v5.channel.k8s.io
 User-Agent: kubectl/v1.31.0 (linux/amd64) kubernetes/6911225

If the container runtime supports the WebSocket streaming protocol and at least one of the subprotocol versions (e.g. v5.channel.k8s.io), the server responds with a successful 101 Switching Protocols status, along with the negotiated subprotocol version:

Response Status: 101 Switching Protocols in 3 milliseconds
Response Headers:
 Upgrade: websocket
 Connection: Upgrade
 Sec-Websocket-Accept: j0/jHW9RpaUoGsUAv97EcKw8jFM=
 Sec-Websocket-Protocol: v5.channel.k8s.io

At this point the TCP connection used for the HTTP protocol has changed to a streaming connection. Subsequent STDIN, STDOUT, and STDERR data (as well as terminal resizing data and process exit code data) for this shell interaction is then streamed over this upgraded connection.

How to use the new WebSocket streaming protocol

If your cluster and kubectl are on version 1.29 or later, there are two control plane feature gates and two kubectl environment variables that govern the use of the WebSockets rather than SPDY. In Kubernetes 1.31, all of the following feature gates are in beta and are enabled by default:

If you're connecting to an older cluster but can manage the feature gate settings, turn on both TranslateStreamCloseWebsocketRequests (added in Kubernetes v1.29) and PortForwardWebsockets (added in Kubernetes v1.30) to try this new behavior. Version 1.31 of kubectl can automatically use the new behavior, but you do need to connect to a cluster where the server-side features are explicitly enabled.

Learn more about streaming APIs

20 Aug 2024 12:00am GMT

19 Aug 2024

feedKubernetes Blog

Kubernetes 1.31: Pod Failure Policy for Jobs Goes GA

This post describes Pod failure policy, which graduates to stable in Kubernetes 1.31, and how to use it in your Jobs.

About Pod failure policy

When you run workloads on Kubernetes, Pods might fail for a variety of reasons. Ideally, workloads like Jobs should be able to ignore transient, retriable failures and continue running to completion.

To allow for these transient failures, Kubernetes Jobs include the backoffLimit field, which lets you specify a number of Pod failures that you're willing to tolerate during Job execution. However, if you set a large value for the backoffLimit field and rely solely on this field, you might notice unnecessary increases in operating costs as Pods restart excessively until the backoffLimit is met.

This becomes particularly problematic when running large-scale Jobs with thousands of long-running Pods across thousands of nodes.

The Pod failure policy extends the backoff limit mechanism to help you reduce costs in the following ways:

For example, you can use a Pod failure policy to run your workload on more affordable spot machines by ignoring Pod failures caused by graceful node shutdown.

The policy allows you to distinguish between retriable and non-retriable Pod failures based on container exit codes or Pod conditions in a failed Pod.

How it works

You specify a Pod failure policy in the Job specification, represented as a list of rules.

For each rule you define match requirements based on one of the following properties:

Additionally, for each rule, you specify one of the following actions to take when a Pod matches the rule:

When Pod failures occur in a running Job, Kubernetes matches the failed Pod status against the list of Pod failure policy rules, in the specified order, and takes the corresponding actions for the first matched rule.

Note that when specifying the Pod failure policy, you must also set the Job's Pod template with restartPolicy: Never. This prevents race conditions between the kubelet and the Job controller when counting Pod failures.

Kubernetes-initiated Pod disruptions

To allow matching Pod failure policy rules against failures caused by disruptions initiated by Kubernetes, this feature introduces the DisruptionTarget Pod condition.

Kubernetes adds this condition to any Pod, regardless of whether it's managed by a Job controller, that fails because of a retriable disruption scenario. The DisruptionTarget condition contains one of the following reasons that corresponds to these disruption scenarios:

In all other disruption scenarios, like eviction due to exceeding Pod container limits, Pods don't receive the DisruptionTarget condition because the disruptions were likely caused by the Pod and would reoccur on retry.

Example

The Pod failure policy snippet below demonstrates an example use:

podFailurePolicy:
 rules:
 - action: Ignore
 onPodConditions:
 - type: DisruptionTarget
 - action: FailJob
 onPodConditions:
 - type: ConfigIssue
 - action: FailJob
 onExitCodes:
 operator: In
 values: [ 42 ]

In this example, the Pod failure policy does the following:

Learn more

Related work

Based on the concepts introduced by Pod failure policy, the following additional work is in progress:

Get involved

This work was sponsored by batch working group in close collaboration with the SIG Apps, and SIG Node, and SIG Scheduling communities.

If you are interested in working on new features in the space we recommend subscribing to our Slack channel and attending the regular community meetings.

Acknowledgments

I would love to thank everyone who was involved in this project over the years - it's been a journey and a joint community effort! The list below is my best-effort attempt to remember and recognize people who made an impact. Thank you!

19 Aug 2024 12:00am GMT

16 Aug 2024

feedKubernetes Blog

Kubernetes 1.31: Read Only Volumes Based On OCI Artifacts (alpha)

The Kubernetes community is moving towards fulfilling more Artificial Intelligence (AI) and Machine Learning (ML) use cases in the future. While the project has been designed to fulfill microservice architectures in the past, it's now time to listen to the end users and introduce features which have a stronger focus on AI/ML.

One of these requirements is to support Open Container Initiative (OCI) compatible images and artifacts (referred as OCI objects) directly as a native volume source. This allows users to focus on OCI standards as well as enables them to store and distribute any content using OCI registries. A feature like this gives the Kubernetes project a chance to grow into use cases which go beyond running particular images.

Given that, the Kubernetes community is proud to present a new alpha feature introduced in v1.31: The Image Volume Source (KEP-4639). This feature allows users to specify an image reference as volume in a pod while reusing it as volume mount within containers:


kind: Pod
spec:
 containers:
 - …
 volumeMounts:
 - name: my-volume
 mountPath: /path/to/directory
 volumes:
 - name: my-volume
 image:
 reference: my-image:tag

The above example would result in mounting my-image:tag to /path/to/directory in the pod's container.

Use cases

The goal of this enhancement is to stick as close as possible to the existing container image implementation within the kubelet, while introducing a new API surface to allow more extended use cases.

For example, users could share a configuration file among multiple containers in a pod without including the file in the main image, so that they can minimize security risks and the overall image size. They can also package and distribute binary artifacts using OCI images and mount them directly into Kubernetes pods, so that they can streamline their CI/CD pipeline as an example.

Data scientists, MLOps engineers, or AI developers, can mount large language model weights or machine learning model weights in a pod alongside a model-server, so that they can efficiently serve them without including them in the model-server container image. They can package these in an OCI object to take advantage of OCI distribution and ensure efficient model deployment. This allows them to separate the model specifications/content from the executables that process them.

Another use case is that security engineers can use a public image for a malware scanner and mount in a volume of private (commercial) malware signatures, so that they can load those signatures without baking their own combined image (which might not be allowed by the copyright on the public image). Those files work regardless of the OS or version of the scanner software.

But in the long term it will be up to you as an end user of this project to outline further important use cases for the new feature. SIG Node is happy to retrieve any feedback or suggestions for further enhancements to allow more advanced usage scenarios. Feel free to provide feedback by either using the Kubernetes Slack (#sig-node) channel or the SIG Node mailinglist.

Detailed example

The Kubernetes alpha feature gate ImageVolume needs to be enabled on the API Server as well as the kubelet to make it functional. If that's the case and the container runtime has support for the feature (like CRI-O ≥ v1.31), then an example pod.yaml like this can be created:

apiVersion: v1
kind: Pod
metadata:
 name: pod
spec:
 containers:
 - name: test
 image: registry.k8s.io/e2e-test-images/echoserver:2.3
 volumeMounts:
 - name: volume
 mountPath: /volume
 volumes:
 - name: volume
 image:
 reference: quay.io/crio/artifact:v1
 pullPolicy: IfNotPresent

The pod declares a new volume using the image.reference of quay.io/crio/artifact:v1, which refers to an OCI object containing two files. The pullPolicy behaves in the same way as for container images and allows the following values:

The volumeMounts field is indicating that the container with the name test should mount the volume under the path /volume.

If you now create the pod:

kubectl apply -f pod.yaml

And exec into it:

kubectl exec -it pod -- sh

Then you're able to investigate what has been mounted:

/ # ls /volume
dir file
/ # cat /volume/file
2
/ # ls /volume/dir
file
/ # cat /volume/dir/file
1

You managed to consume an OCI artifact using Kubernetes!

The container runtime pulls the image (or artifact), mounts it to the container and makes it finally available for direct usage. There are a bunch of details in the implementation, which closely align to the existing image pull behavior of the kubelet. For example:

Thank you for reading through the end of this blog post! SIG Node is proud and happy to deliver this feature as part of Kubernetes v1.31.

As writer of this blog post, I would like to emphasize my special thanks to all involved individuals out there! You all rock, let's keep on hacking!

Further reading

16 Aug 2024 12:00am GMT

Kubernetes 1.31: Prevent PersistentVolume Leaks When Deleting out of Order

PersistentVolume (or PVs for short) are associated with Reclaim Policy. The reclaim policy is used to determine the actions that need to be taken by the storage backend on deletion of the PVC Bound to a PV. When the reclaim policy is Delete, the expectation is that the storage backend releases the storage resource allocated for the PV. In essence, the reclaim policy needs to be honored on PV deletion.

With the recent Kubernetes v1.31 release, a beta feature lets you configure your cluster to behave that way and honor the configured reclaim policy.

How did reclaim work in previous Kubernetes releases?

PersistentVolumeClaim (or PVC for short) is a user's request for storage. A PV and PVC are considered Bound if a newly created PV or a matching PV is found. The PVs themselves are backed by volumes allocated by the storage backend.

Normally, if the volume is to be deleted, then the expectation is to delete the PVC for a bound PV-PVC pair. However, there are no restrictions on deleting a PV before deleting a PVC.

First, I'll demonstrate the behavior for clusters running an older version of Kubernetes.

Retrieve a PVC that is bound to a PV

Retrieve an existing PVC example-vanilla-block-pvc

kubectl get pvc example-vanilla-block-pvc

The following output shows the PVC and its bound PV; the PV is shown under the VOLUME column:

NAME STATUS VOLUME CAPACITY ACCESS MODES STORAGECLASS AGE
example-vanilla-block-pvc Bound pvc-6791fdd4-5fad-438e-a7fb-16410363e3da 5Gi RWO example-vanilla-block-sc 19s

Delete PV

When I try to delete a bound PV, the kubectl session blocks and the kubectl tool does not return back control to the shell; for example:

kubectl delete pv pvc-6791fdd4-5fad-438e-a7fb-16410363e3da
persistentvolume "pvc-6791fdd4-5fad-438e-a7fb-16410363e3da" deleted
^C

Retrieving the PV

kubectl get pv pvc-6791fdd4-5fad-438e-a7fb-16410363e3da

It can be observed that the PV is in a Terminating state

NAME CAPACITY ACCESS MODES RECLAIM POLICY STATUS CLAIM STORAGECLASS REASON AGE
pvc-6791fdd4-5fad-438e-a7fb-16410363e3da 5Gi RWO Delete Terminating default/example-vanilla-block-pvc example-vanilla-block-sc 2m23s

Delete PVC

kubectl delete pvc example-vanilla-block-pvc

The following output is seen if the PVC gets successfully deleted:

persistentvolumeclaim "example-vanilla-block-pvc" deleted

The PV object from the cluster also gets deleted. When attempting to retrieve the PV it will be observed that the PV is no longer found:

kubectl get pv pvc-6791fdd4-5fad-438e-a7fb-16410363e3da
Error from server (NotFound): persistentvolumes "pvc-6791fdd4-5fad-438e-a7fb-16410363e3da" not found

Although the PV is deleted, the underlying storage resource is not deleted and needs to be removed manually.

To sum up, the reclaim policy associated with the PersistentVolume is currently ignored under certain circumstances. For a Bound PV-PVC pair, the ordering of PV-PVC deletion determines whether the PV reclaim policy is honored. The reclaim policy is honored if the PVC is deleted first; however, if the PV is deleted prior to deleting the PVC, then the reclaim policy is not exercised. As a result of this behavior, the associated storage asset in the external infrastructure is not removed.

PV reclaim policy with Kubernetes v1.31

The new behavior ensures that the underlying storage object is deleted from the backend when users attempt to delete a PV manually.

How to enable new behavior?

To take advantage of the new behavior, you must have upgraded your cluster to the v1.31 release of Kubernetes and run the CSI external-provisioner version 5.0.1 or later.

How does it work?

For CSI volumes, the new behavior is achieved by adding a finalizer external-provisioner.volume.kubernetes.io/finalizer on new and existing PVs. The finalizer is only removed after the storage from the backend is deleted. `

An example of a PV with the finalizer, notice the new finalizer in the finalizers list

kubectl get pv pvc-a7b7e3ba-f837-45ba-b243-dec7d8aaed53 -o yaml
apiVersion: v1
kind: PersistentVolume
metadata:
 annotations:
 pv.kubernetes.io/provisioned-by: csi.vsphere.vmware.com
 creationTimestamp: "2021-11-17T19:28:56Z"
 finalizers:
 - kubernetes.io/pv-protection
 - external-provisioner.volume.kubernetes.io/finalizer
 name: pvc-a7b7e3ba-f837-45ba-b243-dec7d8aaed53
 resourceVersion: "194711"
 uid: 087f14f2-4157-4e95-8a70-8294b039d30e
spec:
 accessModes:
 - ReadWriteOnce
 capacity:
 storage: 1Gi
 claimRef:
 apiVersion: v1
 kind: PersistentVolumeClaim
 name: example-vanilla-block-pvc
 namespace: default
 resourceVersion: "194677"
 uid: a7b7e3ba-f837-45ba-b243-dec7d8aaed53
 csi:
 driver: csi.vsphere.vmware.com
 fsType: ext4
 volumeAttributes:
 storage.kubernetes.io/csiProvisionerIdentity: 1637110610497-8081-csi.vsphere.vmware.com
 type: vSphere CNS Block Volume
 volumeHandle: 2dacf297-803f-4ccc-afc7-3d3c3f02051e
 persistentVolumeReclaimPolicy: Delete
 storageClassName: example-vanilla-block-sc
 volumeMode: Filesystem
status:
 phase: Bound

The finalizer prevents this PersistentVolume from being removed from the cluster. As stated previously, the finalizer is only removed from the PV object after it is successfully deleted from the storage backend. To learn more about finalizers, please refer to Using Finalizers to Control Deletion.

Similarly, the finalizer kubernetes.io/pv-controller is added to dynamically provisioned in-tree plugin volumes.

What about CSI migrated volumes?

The fix applies to CSI migrated volumes as well.

Some caveats

The fix does not apply to statically provisioned in-tree plugin volumes.

References

How do I get involved?

The Kubernetes Slack channel SIG Storage communication channels are great mediums to reach out to the SIG Storage and migration working group teams.

Special thanks to the following people for the insightful reviews, thorough consideration and valuable contribution:

Join the Kubernetes Storage Special Interest Group (SIG) if you're interested in getting involved with the design and development of CSI or any part of the Kubernetes Storage system. We're rapidly growing and always welcome new contributors.

16 Aug 2024 12:00am GMT

Kubernetes 1.31: MatchLabelKeys in PodAffinity graduates to beta

Kubernetes 1.29 introduced new fields matchLabelKeys and mismatchLabelKeys in podAffinity and podAntiAffinity.

In Kubernetes 1.31, this feature moves to beta and the corresponding feature gate (MatchLabelKeysInPodAffinity) gets enabled by default.

matchLabelKeys - Enhanced scheduling for versatile rolling updates

During a workload's (e.g., Deployment) rolling update, a cluster may have Pods from multiple versions at the same time. However, the scheduler cannot distinguish between old and new versions based on the labelSelector specified in podAffinity or podAntiAffinity. As a result, it will co-locate or disperse Pods regardless of their versions.

This can lead to sub-optimal scheduling outcome, for example:

matchLabelKeys is a set of Pod label keys and addresses this problem. The scheduler looks up the values of these keys from the new Pod's labels and combines them with labelSelector so that podAffinity matches Pods that have the same key-value in labels.

By using label pod-template-hash in matchLabelKeys, you can ensure that only Pods of the same version are evaluated for podAffinity or podAntiAffinity.

apiVersion: apps/v1
kind: Deployment
metadata:
 name: application-server
...
 affinity:
 podAffinity:
 requiredDuringSchedulingIgnoredDuringExecution:
 - labelSelector:
 matchExpressions:
 - key: app
 operator: In
 values:
 - database
 topologyKey: topology.kubernetes.io/zone
 matchLabelKeys:
 - pod-template-hash

The above matchLabelKeys will be translated in Pods like:

kind: Pod
metadata:
 name: application-server
 labels:
 pod-template-hash: xyz
...
 affinity:
 podAffinity:
 requiredDuringSchedulingIgnoredDuringExecution:
 - labelSelector:
 matchExpressions:
 - key: app
 operator: In
 values:
 - database
 - key: pod-template-hash # Added from matchLabelKeys; Only Pods from the same replicaset will match this affinity.
 operator: In
 values:
 - xyz
 topologyKey: topology.kubernetes.io/zone
 matchLabelKeys:
 - pod-template-hash

mismatchLabelKeys - Service isolation

mismatchLabelKeys is a set of Pod label keys, like matchLabelKeys, which looks up the values of these keys from the new Pod's labels, and merge them with labelSelector as key notin (value) so that podAffinity does not match Pods that have the same key-value in labels.

Suppose all Pods for each tenant get tenant label via a controller or a manifest management tool like Helm.

Although the value of tenant label is unknown when composing each workload's manifest, the cluster admin wants to achieve exclusive 1:1 tenant to domain placement for a tenant isolation.

mismatchLabelKeys works for this usecase; By applying the following affinity globally using a mutating webhook, the cluster admin can ensure that the Pods from the same tenant will land on the same domain exclusively, meaning Pods from other tenants won't land on the same domain.

affinity:
 podAffinity: # ensures the pods of this tenant land on the same node pool
 requiredDuringSchedulingIgnoredDuringExecution:
 - matchLabelKeys:
 - tenant
 topologyKey: node-pool
 podAntiAffinity: # ensures only Pods from this tenant lands on the same node pool
 requiredDuringSchedulingIgnoredDuringExecution:
 - mismatchLabelKeys:
 - tenant
 labelSelector:
 matchExpressions:
 - key: tenant
 operator: Exists
 topologyKey: node-pool

The above matchLabelKeys and mismatchLabelKeys will be translated to like:

kind: Pod
metadata:
 name: application-server
 labels:
 tenant: service-a
spec:
 affinity:
 podAffinity: # ensures the pods of this tenant land on the same node pool
 requiredDuringSchedulingIgnoredDuringExecution:
 - matchLabelKeys:
 - tenant
 topologyKey: node-pool
 labelSelector:
 matchExpressions:
 - key: tenant
 operator: In
 values:
 - service-a 
 podAntiAffinity: # ensures only Pods from this tenant lands on the same node pool
 requiredDuringSchedulingIgnoredDuringExecution:
 - mismatchLabelKeys:
 - tenant
 labelSelector:
 matchExpressions:
 - key: tenant
 operator: Exists
 - key: tenant
 operator: NotIn
 values:
 - service-a
 topologyKey: node-pool

Getting involved

These features are managed by Kubernetes SIG Scheduling.

Please join us and share your feedback. We look forward to hearing from you!

How can I learn more?

16 Aug 2024 12:00am GMT

15 Aug 2024

feedKubernetes Blog

Kubernetes v1.31: Accelerating Cluster Performance with Consistent Reads from Cache

Kubernetes is renowned for its robust orchestration of containerized applications, but as clusters grow, the demands on the control plane can become a bottleneck. A key challenge has been ensuring strongly consistent reads from the etcd datastore, requiring resource-intensive quorum reads.

Today, the Kubernetes community is excited to announce a major improvement: consistent reads from cache, graduating to Beta in Kubernetes v1.31.

Why consistent reads matter

Consistent reads are essential for ensuring that Kubernetes components have an accurate view of the latest cluster state. Guaranteeing consistent reads is crucial for maintaining the accuracy and reliability of Kubernetes operations, enabling components to make informed decisions based on up-to-date information. In large-scale clusters, fetching and processing this data can be a performance bottleneck, especially for requests that involve filtering results. While Kubernetes can filter data by namespace directly within etcd, any other filtering by labels or field selectors requires the entire dataset to be fetched from etcd and then filtered in-memory by the Kubernetes API server. This is particularly impactful for components like the kubelet, which only needs to list pods scheduled to its node - but previously required the API Server and etcd to process all pods in the cluster.

The breakthrough: Caching with confidence

Kubernetes has long used a watch cache to optimize read operations. The watch cache stores a snapshot of the cluster state and receives updates through etcd watches. However, until now, it couldn't serve consistent reads directly, as there was no guarantee the cache was sufficiently up-to-date.

The consistent reads from cache feature addresses this by leveraging etcd's progress notifications mechanism. These notifications inform the watch cache about how current its data is compared to etcd. When a consistent read is requested, the system first checks if the watch cache is up-to-date. If the cache is not up-to-date, the system queries etcd for progress notifications until it's confirmed that the cache is sufficiently fresh. Once ready, the read is efficiently served directly from the cache, which can significantly improve performance, particularly in cases where it would require fetching a lot of data from etcd. This enables requests that filter data to be served from the cache, with only minimal metadata needing to be read from etcd.

Important Note: To benefit from this feature, your Kubernetes cluster must be running etcd version 3.4.31+ or 3.5.13+. For older etcd versions, Kubernetes will automatically fall back to serving consistent reads directly from etcd.

Performance gains you'll notice

This seemingly simple change has a profound impact on Kubernetes performance and scalability:

5k Node Scalability Test Results: In recent scalability tests on 5,000 node clusters, enabling consistent reads from cache delivered impressive improvements:

What's next?

With the graduation to beta, consistent reads from cache are enabled by default, offering a seamless performance boost to all Kubernetes users running a supported etcd version.

Our journey doesn't end here. Kubernetes community is actively exploring pagination support in the watch cache, which will unlock even more performance optimizations in the future.

Getting started

Upgrading to Kubernetes v1.31 and ensuring you are using etcd version 3.4.31+ or 3.5.13+ is the easiest way to experience the benefits of consistent reads from cache. If you have any questions or feedback, don't hesitate to reach out to the Kubernetes community.

Let us know how consistent reads from cache transforms your Kubernetes experience!

Special thanks to @ah8ad3 and @p0lyn0mial for their contributions to this feature!

15 Aug 2024 12:00am GMT

Kubernetes 1.31: VolumeAttributesClass for Volume Modification Beta

Volumes in Kubernetes have been described by two attributes: their storage class, and their capacity. The storage class is an immutable property of the volume, while the capacity can be changed dynamically with volume resize.

This complicates vertical scaling of workloads with volumes. While cloud providers and storage vendors often offer volumes which allow specifying IO quality of service (Performance) parameters like IOPS or throughput and tuning them as workloads operate, Kubernetes has no API which allows changing them.

We are pleased to announce that the VolumeAttributesClass KEP, alpha since Kubernetes 1.29, will be beta in 1.31. This provides a generic, Kubernetes-native API for modifying volume parameters like provisioned IO.

Like all new volume features in Kubernetes, this API is implemented via the container storage interface (CSI). In addition to the VolumeAttributesClass feature gate, your provisioner-specific CSI driver must support the new ModifyVolume API which is the CSI side of this feature.

See the full documentation for all details. Here we show the common workflow.

Dynamically modifying volume attributes.

A VolumeAttributesClass is a cluster-scoped resource that specifies provisioner-specific attributes. These are created by the cluster administrator in the same way as storage classes. For example, a series of gold, silver and bronze volume attribute classes can be created for volumes with greater or lessor amounts of provisioned IO.

apiVersion: storage.k8s.io/v1alpha1
kind: VolumeAttributesClass
metadata:
 name: silver
driverName: your-csi-driver
parameters:
 provisioned-iops: "500"
 provisioned-throughput: "50MiB/s"
---
apiVersion: storage.k8s.io/v1alpha1
kind: VolumeAttributesClass
metadata:
 name: gold
driverName: your-csi-driver
parameters:
 provisioned-iops: "10000"
 provisioned-throughput: "500MiB/s"

An attribute class is added to a PVC in much the same way as a storage class.

apiVersion: v1
kind: PersistentVolumeClaim
metadata:
 name: test-pv-claim
spec:
 storageClassName: any-storage-class
 volumeAttributesClassName: silver
 accessModes:
 - ReadWriteOnce
 resources:
 requests:
 storage: 64Gi

Unlike a storage class, the volume attributes class can be changed:

kubectl patch pvc test-pv-claim -p '{"spec": "volumeAttributesClassName": "gold"}'

Kubernetes will work with the CSI driver to update the attributes of the volume. The status of the PVC will track the current and desired attributes class. The PV resource will also be updated with the new volume attributes class which will be set to the currently active attributes of the PV.

Limitations with the beta

As a beta feature, there are still some features which are planned for GA but not yet present. The largest is quota support, see the KEP and discussion in sig-storage for details.

See the Kubernetes CSI driver list for up-to-date information of support for this feature in CSI drivers.

15 Aug 2024 12:00am GMT