Grafana VS jaeger

Compare Grafana vs jaeger and see what are their differences.

Grafana

The open and composable observability and data visualization platform. Visualize metrics, logs, and traces from multiple sources like Prometheus, Loki, Elasticsearch, InfluxDB, Postgres and many more. (by grafana)
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Grafana jaeger
379 94
60,196 19,370
1.3% 1.3%
10.0 9.7
6 days ago 1 day ago
TypeScript Go
GNU Affero General Public License v3.0 Apache License 2.0
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
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.

Grafana

Posts with mentions or reviews of Grafana. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-04-03.
  • Golang: out-of-box backpressure handling with gRPC, proven by a Grafana dashboard
    4 projects | dev.to | 3 Apr 2024
    To help us visualize these scenarios, we'll build a Grafana Dashboard so we can follow along.
  • Monitoring, Observability, and Telemetry Explained
    3 projects | dev.to | 2 Apr 2024
    Visualization and Analysis: Choose a tool with intuitive and customizable dashboards, charts, and visualizations. A question to ask is, "Are the visualization features of this tool user-friendly and adaptable to our team's specific needs?" Tools like Grafana and Kibana provide powerful visualization capabilities.
  • 4 facets of API monitoring you should implement
    3 projects | dev.to | 2 Mar 2024
    Prometheus: Open-source monitoring system. Often used together with Grafana.
  • Grafana: Open and composable observability and data visualization platform
    1 project | news.ycombinator.com | 24 Feb 2024
  • The Mechanics of Silicon Valley Pump and Dump Schemes
    8 projects | dev.to | 18 Feb 2024
    Grafana
  • Reverse engineering the Grafana API to get the data from a dashboard
    2 projects | dev.to | 17 Feb 2024
    Yes I'm aware that Grafana is open source but the method I used to find the API endpoints is far quicker than digging through hundreds of files in a codebase I'm not familiar with.
  • Building an Observability Stack with Docker
    5 projects | dev.to | 15 Feb 2024
    So, you will add one last container to allow us to visualize this data: Grafana, an open-source analytics and visualization platform that allows us to see traces and metrics simply. You can set Grafana to read data from both Tempo and Prometheus by setting them as datastores with the following grafana.datasource.yaml config file:
  • How to collect metrics from node.js applications in PM2 with exporting to Prometheus
    3 projects | dev.to | 13 Feb 2024
    In example above, we use 2 additional parameters: code (HTTP response code) and page (page identifier), which provide detailed statistics. For example, you can build such graphs in Grafana:
  • Root Cause Chronicles: Quivering Queue
    5 projects | dev.to | 16 Jan 2024
    Robin switched to the Grafana dashboard tab, and sure enough, the 5xx volume on web service was rising. It had not hit the critical alert thresholds yet, but customers had already started noticing.
  • Teach Yourself Programming in Ten Years (1998)
    3 projects | news.ycombinator.com | 15 Jan 2024
    I completely agree but do feel it needs qualifying. The problems beginners run into aren't usually the same as the problems experienced devs run into when adopting a language new to them, but where I see the two overlap I know something is a serious hazard in a language.

    Java as a first language: won't like the boilerplate but won't have any point of comparison anyway, will get a few NPEs, might use threads and get data races but won't experience memory unsafety.

    Go as a first language: much less boilerplate, but will still get nil panics, will be encouraged to use goroutines because every tutorial shows off how "easy" they are, will get data races with full blown memory unsafety immediately.

    Rust as a first language: `None` // no examples found

    I think Go as a beginner language would be better if people were discouraged from using goroutines instead of actively encouraged (the myth of "CSP solves everything"), otherwise I think it needs much better tooling to save people from walking off a cliff with their goroutines. And no, -race clearly isn't it, especially not for a beginner.

    And in one respect I've found Go more of a hazard for experienced devs than beginners: the function signature of append() gives you the intuition of a functional programming append that never modifies the original slice. This has literally resulted in CVEs[1] even by experienced devs, especially combined with goroutines. Beginners won't have an intuition for this and will hopefully check the documentation instead of assuming.

    [1] https://github.com/grafana/grafana/security/advisories/GHSA-...

jaeger

Posts with mentions or reviews of jaeger. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2024-02-01.
  • Observability with OpenTelemetry, Jaeger and Rails
    1 project | dev.to | 22 Feb 2024
    Jaeger maps the flow of requests and data as they traverse a distributed system. These requests may make calls to multiple services, which may introduce their own delays or errors. https://www.jaegertracing.io/
  • Show HN: An open source performance monitoring tool
    2 projects | news.ycombinator.com | 1 Feb 2024
    As engineers at past startups, we often had to debug slow queries, poor load times, inconsistent errors, etc... While tools like Jaegar [2] helped us inspect server-side performance, we had no way to tie user events to the traces we were inspecting. In other words, although we had an idea of what API route was slow, there wasn’t much visibility into the actual bottleneck.

    This is where our performance product comes in: we’re rethinking a tracing/performance tool that focuses on bridging the gap between the client and server.

    What’s unique about our approach is that we lean heavily into creating traces from the frontend. For example, if you’re using our Next.js SDK, we automatically connect browser HTTP requests with server-side code execution, all from the perspective of a user. We find this much more powerful because you can understand what part of your frontend codebase causes a given trace to occur. There’s an example here [3].

    From an instrumentation perspective, we’ve built our SDKs on-top of OTel, so you can create custom spans to expand highlight-created traces in server routes that will transparently roll up into the flame graph you see in our UI. You can also send us raw OTel traces and manually set up the client-server connection if you want. [4] Here’s an example of what a trace looks like with a database integration using our Golang GORM SDK, triggered by a frontend GraphQL query [5] [6].

    In terms of how it's built, we continue to rely heavily on ClickHouse as our time-series storage engine. Given that traces require that we also query based on an ID for specific groups of spans (more akin to an OLTP db), we’ve leveraged the power of CH materialized views to make these operations efficient (described here [7]).

    To try it out, you can spin up the project with our self hosted docs [8] or use our cloud offering at app.highlight.io. The entire stack runs in docker via a compose file, including an OpenTelemetry collector for data ingestion. You’ll need to point your SDK to export data to it by setting the relevant OTLP endpoint configuration (ie. environment variable OTEL_EXPORTER_OTLP_LOGS_ENDPOINT [9]).

    Overall, we’d really appreciate feedback on what we’re building here. We’re also all ears if anyone has opinions on what they’d like to see in a product like this!

    [1] https://github.com/highlight/highlight/blob/main/LICENSE

    [2] https://www.jaegertracing.io

    [3] https://app.highlight.io/1383/sessions/COu90Th4Qc3PVYTXbx9Xe...

    [4] https://www.highlight.io/docs/getting-started/native-opentel...

    [5] https://static.highlight.io/assets/docs/gorm.png

    [6] https://github.com/highlight/highlight/blob/1fc9487a676409f1...

    [7] https://highlight.io/blog/clickhouse-materialized-views

    [8] https://www.highlight.io/docs/getting-started/self-host/self...

    [9] https://opentelemetry.io/docs/concepts/sdk-configuration/otl...

  • Kubernetes Ingress Visibility
    2 projects | /r/kubernetes | 10 Dec 2023
    For the request following, something like jeager https://www.jaegertracing.io/, because you are talking more about tracing than necessarily logging. For just monitoring, https://github.com/prometheus-community/helm-charts/tree/main/charts/kube-prometheus-stack would be the starting point, then it depends. Nginx gives metrics out of the box, then you can pull in the dashboard like https://grafana.com/grafana/dashboards/14314-kubernetes-nginx-ingress-controller-nextgen-devops-nirvana/ , or full metal with something like service mesh monitoring which would provably fulfil most of the requirements
  • Migrating to OpenTelemetry
    8 projects | news.ycombinator.com | 16 Nov 2023
    Have you checked out Jaeger [1]? It is lightweight enough for a personal project, but featureful enough to really help "turn on the lightbulb" with other engineers to show them the difference between logging/monitoring and tracing.

    [1] https://www.jaegertracing.io/

  • The Road to GraphQL At Enterprise Scale
    6 projects | dev.to | 8 Nov 2023
    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
    5 projects | dev.to | 30 Oct 2023
    Jaeger is an open-source, distributed tracing system that monitors and troubleshoots the flow of requests through complex, microservices-based applications, providing a comprehensive view of system interactions.
  • Fault Tolerance in Distributed Systems: Strategies and Case Studies
    4 projects | dev.to | 18 Oct 2023
    However, ensuring fault tolerance in distributed systems is not at all easy. These systems are complex, with multiple nodes or components working together. A failure in one node can cascade across the system if not addressed timely. Moreover, the inherently distributed nature of these systems can make it challenging to pinpoint the exact location and cause of fault - that is why modern systems rely heavily on distributed tracing solutions pioneered by Google Dapper and widely available now in Jaeger and OpenTracing. But still, understanding and implementing fault tolerance becomes not just about addressing the failure but predicting and mitigating potential risks before they escalate.
  • Observability in Action Part 3: Enhancing Your Codebase with OpenTelemetry
    3 projects | dev.to | 17 Oct 2023
    In this article, we'll use HoneyComb.io as our tracing backend. While there are other tools in the market, some of which can be run on your local machine (e.g., Jaeger), I chose HoneyComb because of their complementary tools that offer improved monitoring of the service and insights into its behavior.
  • Building for Failure
    1 project | dev.to | 2 Oct 2023
    The best way to do this, is with the help of tracing tools such as paid tools such as Honeycomb, or your own instance of the open source Jaeger offering, or perhaps Encore's built in tracing system.
  • Distributed Tracing and OpenTelemetry Guide
    5 projects | dev.to | 28 Sep 2023
    In this example, I will create 3 Node.js services (shipping, notification, and courier) using Amplication, add traces to all services, and show how to analyze trace data using Jaeger.

What are some alternatives?

When comparing Grafana and jaeger you can also consider the following projects:

Thingsboard - Open-source IoT Platform - Device management, data collection, processing and visualization.

Sentry - Developer-first error tracking and performance monitoring

Apache Superset - Apache Superset is a Data Visualization and Data Exploration Platform [Moved to: https://github.com/apache/superset]

skywalking - APM, Application Performance Monitoring System

Heimdall - An Application dashboard and launcher

prometheus - The Prometheus monitoring system and time series database.

Wazuh - Wazuh - The Open Source Security Platform. Unified XDR and SIEM protection for endpoints and cloud workloads.

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. 🔥 🖥. 👉 Open source Application Performance Monitoring (APM) & Observability tool

Thingspeak - ThingSpeak is an open source “Internet of Things” application and API to store and retrieve data from things using HTTP over the Internet or via a Local Area Network. With ThingSpeak, you can create sensor logging applications, location tracking applications, and a social network of things with status updates.

Pinpoint - APM, (Application Performance Management) tool for large-scale distributed systems.

uptime-kuma - A fancy self-hosted monitoring tool

fluent-bit - Fast and Lightweight Logs and Metrics processor for Linux, BSD, OSX and Windows