jaeger-kubernetes - Support for deploying Jaeger into Kubernetes

  •        56

This template uses an in-memory storage with a limited functionality for local testing and development. Do not use this template in production environments.Once everything is ready, kubectl get service jaeger-query tells you where to find Jaeger URL. If you are using minikube to setup your Kubernetes cluster, the command minikube service jaeger-query --url can be used instead.

https://github.com/jaegertracing/jaeger-kubernetes


Dependencies:

org.arquillian.cube:arquillian-cube-bom:1.9.0
io.fabric8:kubernetes-client:2.6.3

Tags
Implementation
License
Platform

   




Related Projects

Jaeger - A Distributed Tracing System

  •    Go

Jaeger is a Distributed Tracing System. It is inspired by Dapper and OpenZipkin, is a distributed tracing system released as open source by Uber Technologies. It can be used for monitoring microservice-based architectures.

Jaeger - Distributed Tracing System from Uber

  •    Go

Jaeger is Uber's distributed tracing system, used to monitor, profile, and troubleshoot microservices. It is compatible with OpenTracing and it is built in the style of Google’s Dapper.

OpenTelemetry makes robust, portable telemetry a built-in feature of cloud-native software

  •    Java

OpenTelemetry provides a single set of APIs, libraries, agents, and collector services to capture distributed traces and metrics from your application. You can analyze them using Prometheus, Jaeger, and other observability tools.

opentracing-tutorial - A collection of tutorials for the OpenTracing API

  •    Java

A collection of tutorials for the OpenTracing API (https://opentracing.io). Once the container starts, the Jaeger UI will be accessible at http://localhost:16686.

Apache Skywalking - A distributed tracing system, and APM ( Application Performance Monitoring )

  •    Java

SkyWalking is an APM(application performance monitor) system, especially designed for microservices, cloud native and container-based (Docker, Kubernetes, Mesos) architectures. It provides distributed tracing, service mesh telemetry analysis, metric aggregation and visualization all-in-one solution.


Helidon - Java libraries for writing Microservices

  •    Java

Helidon is a collection of Java libraries for writing microservices that run on a fast web core powered by Netty. It supports MicroProfile and provides familiar APIs like JAX-RS, CDI and JSON-P/B. Our MicroProfile implementation runs on fast Helidon Reactive WebServer. It can easily integrate with Prometheus, Jaeger/Zipkin and Kubernetes.

skywalking - APM, Application Performance Monitoring System

  •    Java

SkyWalking: an APM(application performance monitor) system, especially designed for microservices, cloud native and container-based (Docker, Kubernetes, Mesos) architectures. SkyWalking is an open source APM system, including monitoring, tracing, diagnosing capabilities for distributed system in Cloud Native architecture. The core features are following.

zipkin-go-opentracing - OpenTracing Tracer implementation for Zipkin in Go

  •    Go

OpenTracing Tracer implementation for Zipkin in Go.This package is a low level tracing "driver" to allow OpenTracing API consumers to use Zipkin as their tracing backend. For details on how to work with spans and traces we suggest looking at the documentation and README from the OpenTracing API.

zipkin-go-opentracing - OpenTracing Tracer implementation for Zipkin v1 in Go

  •    Go

OpenTracing Tracer implementation for Zipkin in Go. This package is a low level tracing "driver" to allow OpenTracing API consumers to use Zipkin as their tracing backend. For details on how to work with spans and traces we suggest looking at the documentation and README from the OpenTracing API.

kuma - The Universal Service Mesh

  •    Go

Kuma is a platform agnostic open-source control plane for Service Mesh and Microservices. It can run and be operated natively across both Kubernetes and VM environments, making it easy to adopt by every team in the organization. Bundling Envoy as a data-plane, Kuma can instrument any L4/L7 traffic to secure, observe, route and enhance connectivity between any service or database. It can be used natively in Kubernetes via CRDs or via a RESTful API across other environments like VMs and Bare Metal.

grpc-opentracing - OpenTracing is a set of consistent, expressive, vendor-neutral APIs for distributed tracing and context propagation

  •    Python

This package enables distributed tracing in GRPC clients and servers via The OpenTracing Project: a set of consistent, expressive, vendor-neutral APIs for distributed tracing and context propagation. Once a production system contends with real concurrency or splits into many services, crucial (and formerly easy) tasks become difficult: user-facing latency optimization, root-cause analysis of backend errors, communication about distinct pieces of a now-distributed system, etc. Distributed tracing follows a request on its journey from inception to completion from mobile/browser all the way to the microservices.

Squash - The debugger for microservices

  •    Go

Debugging microservices applications is a difficult task. The state of an application is spread across multiple processes, often on different nodes. It is hard to get the holistic view of an application's state. Certain tools exist for troubleshooting microservice issues. OpenTracing can be used to produce transaction or workflow logs for post-mortem analysis. Service meshes like Istio can be used to monitor the network to identify latency problems. Unfortunately, these tools are passive, the feedback loop is slow, and they do not allow you to monitor and alter the application during run time.

Kops - The easiest way to get a production grade Kubernetes cluster up and running

  •    Go

The easiest way to get a production grade Kubernetes cluster up and running. It helps you create, destroy, upgrade and maintain production-grade, highly available, Kubernetes clusters from the command line. AWS (Amazon Web Services) is currently officially supported, with GCE and VMware vSphere in alpha and other platforms planned.

gardener - Kubernetes API server extension and controller manager managing the full lifecycle of conformant Kubernetes clusters (Shoots) as a service on AWS, Azure, GCP, and OpenStack

  •    Go

The Gardener implements the automated management and operation of Kubernetes clusters as a service and aims to support that service on multiple Cloud providers (AWS, GCP, Azure, OpenStack). Its main principle is to use Kubernetes itself as base for its tasks. In essence, the Gardener is an extension API server along with a bundle of Kubernetes controllers which introduces new API objects in an existing Kubernetes cluster (which is called Garden cluster) in order to use them for the management of further Kubernetes clusters (which are called Shoot clusters). To do that reliably and to offer a certain quality of service, it requires to control the main components of a Kubernetes cluster (etcd, API server, controller manager, scheduler). These so-called control plane components are hosted in Kubernetes clusters themselves (which are called Seed clusters).

awesome-kubernetes - A curated list for awesome kubernetes sources :ship::tada:

  •    Makefile

Kubernetes is an open-source system for automating deployment, scaling, and management of containerized applications. It groups containers that make up an application into logical units for easy management and discovery.

sonobuoy - Heptio Sonobuoy is a diagnostic tool that makes it easier to understand the state of a Kubernetes cluster by running a set of Kubernetes conformance tests in an accessible and non-destructive manner

  •    Go

Heptio Sonobuoy is a diagnostic tool that makes it easier to understand the state of a Kubernetes cluster by running a set of Kubernetes conformance tests in an accessible and non-destructive manner. It is a customizable, extendable, and cluster-agnostic way to generate clear, informative reports about your cluster. Sonobuoy supports Kubernetes versions 1.9 and later.

kubernetes-ec2-autoscaler - A batch-optimized scaling manager for Kubernetes

  •    Python

kubernetes-ec2-autoscaler is a node-level autoscaler for Kubernetes on AWS EC2 that is designed for batch jobs. Kubernetes is a container orchestration framework that schedules Docker containers on a cluster, and kubernetes-ec2-autoscaler can scale AWS Auto Scaling Groups based on the pending job queue. The autoscaler can be run anywhere as long as it can access the AWS and Kubernetes APIs, but the recommended way is to set it up as a Kubernetes Pod.

kubeadm-ha - Kubernetes high availiability deploy based on kubeadm (for v1

  •    Smarty

kube-apiserver: exposes the Kubernetes API. It is the front-end for the Kubernetes control plane. It is designed to scale horizontally – that is, it scales by deploying more instances. etcd: is used as Kubernetes’ backing store. All cluster data is stored here. Always have a backup plan for etcd’s data for your Kubernetes cluster. kube-scheduler: watches newly created pods that have no node assigned, and selects a node for them to run on. kube-controller-manager: runs controllers, which are the background threads that handle routine tasks in the cluster. Logically, each controller is a separate process, but to reduce complexity, they are all compiled into a single binary and run in a single process. kubelet: is the primary node agent. It watches for pods that have been assigned to its node (either by apiserver or via local configuration file) kube-proxy: enables the Kubernetes service abstraction by maintaining network rules on the host and performing connection forwarding. keepalived cluster config a virtual IP address (192.168.20.10), this virtual IP address point to k8s-master01, k8s-master02, k8s-master03. nginx service as the load balancer of k8s-master01, k8s-master02, k8s-master03's apiserver. The other nodes kubernetes services connect the keepalived virtual ip address (192.168.20.10) and nginx exposed port (16443) to communicate with the master cluster's apiservers.

Kubernetes-GPU-Guide - This guide should help fellow researchers and hobbyists to easily automate and accelerate there deep leaning training with their own Kubernetes GPU cluster

  •    Shell

This guide should help fellow researchers and hobbyists to easily automate and accelerate there deep leaning training with their own Kubernetes GPU cluster. Therefore I will explain how to easily setup a GPU cluster on multiple Ubuntu 16.04 bare metal servers and provide some useful scripts and .yaml files that do the entire setup for you. By the way: If you need a Kubernetes GPU-cluster for other reasons, this guide might be helpful to you as well.

opencensus-go - A stats collection and distributed tracing framework

  •    Go

OpenCensus Go is a Go implementation of OpenCensus, a toolkit for collecting application performance and behavior monitoring data. Currently it consists of three major components: tags, stats, and tracing. The API of this project is still evolving, see: Deprecation Policy. The use of vendoring or a dependency management tool is recommended.