JaCoCo
zipkin
JaCoCo | zipkin | |
---|---|---|
7 | 36 | |
4,016 | 16,740 | |
0.5% | 0.4% | |
8.3 | 9.4 | |
12 days ago | 2 days ago | |
Java | Java | |
GNU General Public License v3.0 or later | 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.
JaCoCo
-
Apache Maven JaCoCo Configuration
I will use here JaCoCo, where also the JaCoCo-Maven-lugin exists for the usage in your Maven builds. This article will show how to configure the code coverage to finally get the results for unit- and integration-tests.
-
HRV-Mart
In protection rules, I added build workflow in Require status checks to pass before merging. This is to ensure that before merging code in master branch, build should run successfully. I also added Jacoco Code Coverage to make sure that enough unit tests are available in project and Detekt to make sure that code in project is readable. I added them in build configuration. Even if one of them gives error, build will fail. Whenever, someone push code in pull request, build action will run and check if build is running successfully or not.
-
CI/CD with Spring Boot and Jenkins Pipelines
Code coverage analysis tools quantify the amount of tested code, serving as a valuable tool to inform on code structure and testing related decisions. We will make use of JaCoCo, JaCoCo produces reports on multiple kinds of code coverage metrics including instructions, line and branch coverage.
-
How to Use Maven Profiles to Selectively Activate Plugins and Other Configuration from the Command Line
One specific example where I regularly use a profile in this way is for configuring code coverage. In all of my Java projects, I use JaCoCo for generating code coverage reports. I use JaCoCo during the Maven test phase. However, while developing I find it useful at times to exclude coverage reporting to reduce the build time. But in my CI/CD workflows in GitHub Actions, I activate the code coverage profile during pull-requests and pushes to the default branch. For pull-requests, my GitHub Actions workflow comments the code coverage on the PR and uploads the coverage report as a workflow artifact, where I can inspect it as necessary. And during a push to the default branch, my workflow updates coverage badges to keep them up to date with the current state of the default branch. I can also activate the code coverage profile locally while developing, such as prior to submitting a pull-request, to ensure that I didn't miss testing something.
-
Implement DevSecOps to Secure your CI/CD pipeline
In Unit tests, individual software code components are checked if it is working as expected or not. Unit tests isolate a function or module of code and verify its correctness. We can use tools like JaCoCo for Java and Mocha, and Jasmine for NodeJS to generate unit test reports. We can also send these reports to SonarQube which shows us code coverage and the percentage of your code covered by your test cases.
-
Which Jacoco Android plugin you're using for test coverage?
And there is the original jacoco/jacoco: (0.8.7: released this on May 5, 2021), but it's for Java. I'm not sure if we can use it with multiple flavors on Android.
-
Kotlin 1.5.0 โ the First Big Release of 2021
Make sure to also update to Jacoco 0.8.7 to avoid test issues: https://github.com/jacoco/jacoco/releases/tag/v0.8.7
zipkin
-
Enhancing API Observability Series (Part 3): Tracing
When choosing distributed tracing tools, considerations include your technology stack, business requirements, and monitoring complexity. Zipkin, SkyWalking, and OpenTelemetry are popular distributed tracing solutions, each with its unique features.
-
The Road to GraphQL At Enterprise Scale
From the perspective of the realization of GraphQL infrastructure, the interesting direction is "Finding". How to find the problem? How to find the bottleneck of the system? Distributed Tracing System (DTS) will help answer this question. Distributed tracing is a method of observing requests as they propagate through distributed environments. In our scenario, we have dozens of subgraphs, gateway, and transport layer through which the request goes. We have several tools that can be used to detect the whole lifecycle of the request through the system, e.g. Jaeger, Zipkin or solutions that provided DTS as a part of the solution NewRelic.
-
OpenTelemetry Exporters - Types and Configuration Steps
Zipkin is a distributed tracing system used for tracking and analyzing how requests move through complex systems, especially in setups with many interconnected services, known as microservices.
-
The Complete Microservices Guide
Distributed Tracing: Middleware for distributed tracing like Jaeger and Zipkin helps monitor and trace requests as they flow through multiple microservices, aiding in debugging, performance optimization, and understanding the system's behavior.
-
zipkin VS openobserve - a user suggested alternative
2 projects | 8 Sep 2023
-
The Unreasonable Effectiveness of Sequence Diagrams in MermaidJS
For microservice tracing, you might want to look at Zipkin [0], or OpenTelemetry [1]
[0] https://zipkin.io/
-
Analytics for aspnet core apis?
Iโve not used a self-hosted solution before, but hereโs one I found. https://zipkin.io/
-
Show HN: Uptrace โ open-source APM (alternative to Datadog, NewRelic)
> IMO the reason these vendors can and do charge so much is not because telemetry software is hard.
I always saw it as "they are charging for their polished UI/experience"
The UI of https://zipkin.io/ versus DataDog is kind of... not really in the same ballpark?
-
Is there a beginners guide to adding observability to your applications?
There are the zipkin https://zipkin.io/ and jaeger https://www.jaegertracing.io/ packages/components you can use both have quickstarts if you consider that to be a beginner's guide.
-
How to monitor Python application performance
Zipkin, which was developed by Twitter, is an open source tool for distributed tracing that can also be used to troubleshoot latency issues in your application. While Zipkin is Java-based, py_zipkin is an implementation for Python.
What are some alternatives?
Cobertura - Cobertura
skywalking - APM, Application Performance Monitoring System
sonar-flutter - SonarQube plugin for Flutter / Dart
sentry-java - A Sentry SDK for Java, Android and other JVM languages.
Micronaut - Micronaut Application Framework
Fluentd - Fluentd: Unified Logging Layer (project under CNCF)
gradle-android-junit-jacoco-plugin - Gradle plugin that generates JaCoCo reports from an Android Gradle Project
opentelemetry-specification - Specifications for OpenTelemetry
proguard-core - Library to read, write, analyze, and process java bytecode
brave - Java distributed tracing implementation compatible with Zipkin backend services.
Cobalt - Standalone unofficial fully-featured Whatsapp Web and Mobile API for Java and Kotlin
signoz - SigNoz is an open-source observability platform native to OpenTelemetry with logs, traces and metrics in a single application. An open-source alternative to DataDog, NewRelic, etc. ๐ฅ ๐ฅ. ๐ Open source Application Performance Monitoring (APM) & Observability tool