kubeorbit
argo
kubeorbit | argo | |
---|---|---|
10 | 43 | |
460 | 14,342 | |
0.0% | 1.1% | |
0.0 | 9.8 | |
about 1 year ago | 6 days ago | |
Go | Go | |
Apache License 2.0 | Apache License 2.0 |
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
kubeorbit
-
Efficient ways for microservices integration tests
KubeOrbit would be the perfect tool for you! know more about it on GitHub https://github.com/teamcode-inc/kubeorbit
- Open Source Microservices Testing Tool KubeOrbit becomes part of CNCF Landscape
-
Ask HN: How can I debug the microservices from my local workstation?
know more about it on GitHub https://github.com/teamcode-inc/kubeorbit
-
KubeOrbit is now part of CNCF Landscape!
https://github.com/teamcode-inc/kubeorbit.
-
Test your cloud-native applications swiftly and efficiently
Looking for more contributors to open source project KubeOrbit, which is an integration test tool based on Kubernetes easily. https://github.com/teamcode-inc/kubeorbit
-
Looking for suggestions for my GitHub project!
Our team recently built an open-source project of microservices integration test for cloud-native applications, https://github.com/teamcode-inc/kubeorbit, we are still working and optimizing it now.
-
My open source project of an integration test tool based on Kubernetes
Just open sourced my project on GitHub of a tool to test and debug on Kubernetes easily, so that the can tests of cloud-native applications in a hands-free style. You can have a try and let me know what do you think of :)
- A brand new way to Test on Kubernetes
-
How do my company implement integration tests efficiently?
The team does not need to adjust the existing technology stack and architecture, KubeOrbit will adapt your microservices and can also isolate the communication between different test channels. But during the product, I found that many manual operations are required. And I just got the notification from its official facebook page that the product is open source on GitHub (https://github.com/teamcode-inc/kubeorbit). I will follow up this product and if these manual operation processes can be automated, the user experience will be greatly improved.
argo
-
StackStorm – IFTTT for Ops
Like Argo Workflows?
https://github.com/argoproj/argo-workflows
-
Creators of Argo CD Release New OSS Project Kargo for Next Gen Gitops
Dagger looks more comparable to Argo Workflows: https://argoproj.github.io/argo-workflows/ That's the first of the Argo projects, which can run multi-step workflows within containers on Kubernetes.
For what it's worth, my colleagues and I have had great luck with Argo Workflows and wrote up a blog post about some of its advantages a few years ago: https://www.interline.io/blog/scaling-openstreetmap-data-wor...
-
Practical Tips for Refactoring Release CI using GitHub Actions
Despite other alternatives like Circle CI, Travis CI, GitLab CI or even self-hosted options using open-source projects like Tekton or Argo Workflow, the reason for choosing GitHub Actions was straightforward: GitHub Actions, in conjunction with the GitHub ecosystem, offers a user-friendly experience and access to a rich software marketplace.
-
(Not) to Write a Pipeline
author seems to be describing the kind of patterns you might make with https://argoproj.github.io/argo-workflows/ . or see for example https://github.com/couler-proj/couler , which is an sdk for describing tasks that may be submitted to different workflow engines on the backend.
it's a little confusing to me that the author seems to object to "pipelines" and then equate them with messaging-queues. for me at least, "pipeline" vs "workflow-engine" vs "scheduler" are all basically synonyms in this context. those things may or may not be implemented with a message-queue for persistence, but the persistence layer itself is usually below the level of abstraction that $current_problem is really concerned with. like the author says, eventually you have to track state/timestamps/logs, but you get that from the beginning if you start with a workflow engine.
i agree with author that message-queues should not be a knee-jerk response to most problems because the LoE for edge-cases/observability/monitoring is huge. (maybe reach for a queue only if you may actually overwhelm whatever the "scheduler" can handle.) but don't build the scheduler from scratch either.. use argowf, kubeflow, or a more opinionated framework like airflow, mlflow, databricks, aws lamda or step-functions. all/any of these should have config or api that's robust enough to express rate-limit/retry stuff. almost any of these choices has better observability out-of-the-box than you can easily get from a queue. but most importantly.. they provide idioms for handling failure that data-science folks and junior devs can work with. the right way to structure code is just much more clear and things like structuring messages/events, subclassing workers, repeating/retrying tasks, is just harder to mess up.
-
what technologies are people using for job scheduling in/with k8s?
Argo Workflows + Argo Events
-
What are some good self-hosted CI/CD tools where pipeline steps run in docker containers?
Drone, or Tekton, Argo Workflows if you’re on k8s
-
job scheduling for scientific computing on k8s?
Check out Argo Workflows.
- Orchestration poll
- What's the best way to inject a yaml file into an Argo workflow step?
-
Which build system do you use?
go-git has a lot of bugs and is not actively maintained. The bug even affects Argo Workflow, which caused our data pipeline to fail unexpectedly (reference: https://github.com/argoproj/argo-workflows/issues/10091)
What are some alternatives?
rainbond - No need to know Kubernetes' cloud native application management platform | 不用懂 Kubernetes 的云原生应用管理平台
temporal - Temporal service
ApplicationInsights-Kubernetes - Enrich the telemetry data for .NET applications running inside containers that are managed by Kubernetes.
keda - KEDA is a Kubernetes-based Event Driven Autoscaling component. It provides event driven scale for any container running in Kubernetes
etcd-cloud-operator - Deploying and managing production-grade etcd clusters on cloud providers: failure recovery, disaster recovery, backups and resizing.
Airflow - Apache Airflow - A platform to programmatically author, schedule, and monitor workflows
k3sup - bootstrap K3s over SSH in < 60s 🚀
flyte - Scalable and flexible workflow orchestration platform that seamlessly unifies data, ML and analytics stacks.
StackStorm - StackStorm (aka "IFTTT for Ops") is event-driven automation for auto-remediation, incident responses, troubleshooting, deployments, and more for DevOps and SREs. Includes rules engine, workflow, 160 integration packs with 6000+ actions (see https://exchange.stackstorm.org) and ChatOps. Installer at https://docs.stackstorm.com/install/index.html
n8n - Free and source-available fair-code licensed workflow automation tool. Easily automate tasks across different services.
lens - Lens - The way the world runs Kubernetes
volcano - A Cloud Native Batch System (Project under CNCF)