krane
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Our great sponsors
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krane
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Automating deployment to kubernetes
If you are deploying simple manifests (not helm-stuff), try shopify's [krane](https://github.com/Shopify/krane). I build a [deploy-container](https://github.com/strowi/deploy/) for use with gitlabs ci-stages a while back.
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Using Ansible to deploy k8s manifests
If you have the flexibility to use a different tool https://github.com/Shopify/krane is a great one which among other things does compare what's on the cluster vs what's applied and can prune resources accordingly
salus
What are some alternatives?
lens-resource-map-extension - Lens - The Kubernetes IDE extension that displays Kubernetes resources and their relations as a force graph.
golang-tls - Simple Golang HTTPS/TLS Examples
gluster-kubernetes - GlusterFS Native Storage Service for Kubernetes
krane - Kubernetes RBAC static analysis & visualisation tool
documentation - Kata Containers version 1.x documentation (for version 2.x see https://github.com/kata-containers/kata-containers).
audit-ci - Audit NPM, Yarn, and PNPM dependencies in continuous integration environments, preventing integration if vulnerabilities are found at or above a configurable threshold while ignoring allowlisted advisories
deploy - deploy to kubernetes / docker-compose
tangram - Tangram is an all-in-one automated machine learning framework. [Moved to: https://github.com/tangramdotdev/tangram]
rbac-tool - Rapid7 | insightCloudSec | Kubernetes RBAC Power Toys - Visualize, Analyze, Generate & Query
BPM_Counter - 🎵 A web app/OSX dashboard app for counting BPM
lazydocker - The lazier way to manage everything docker
tangram - Tangram makes it easy for programmers to train, deploy, and monitor machine learning models.