Observability with Grafana, Prometheus,Loki, Alloy and Tempo
Master Observability with Prometheus, Loki, Tempo, Alloy, Mimir and OpenTelemetry

Observability with Grafana, Prometheus,Loki, Alloy and Tempo free download
Master Observability with Prometheus, Loki, Tempo, Alloy, Mimir and OpenTelemetry
Master observability with the Grafana Stack, including Grafana Loki for logs, Grafana Tempo for distributed tracing, Grafana Alloy for telemetry pipelines, OpenTelemetry (OTel) for collecting and exporting signals from your applications, and Grafana Mimir for large-scale enterprise metrics collection.
This course provides a comprehensive, hands-on path to building modern observability systems. It starts with metrics using Prometheus and progresses to logs, traces, alerting, and custom dashboards in Grafana.
We begin with the core concepts of observability, telemetry data, and methods for metric collection. Then, you'll dive into Prometheus — learning how to install, configure, and use it like a pro.
Next, you'll deploy Grafana across Windows, macOS, Linux (including Ubuntu and Amazon Linux), and Docker. Once your stack runs, we cover Grafana dashboard design for real-world use cases: APIs, infrastructure, and microservices.
In the logging section, you'll work with Grafana Loki to ingest and visualise logs, including dynamic label extraction from unstructured logs.
Then we go deeper: you'll learn the fundamentals of OpenTelemetry and set up Grafana Alloy to receive, process, and export OTel metrics and traces. You'll instrument microservices (in Python and C#) and export signals to Grafana Tempo, where you'll trace distributed calls and analyze service graphs with TraceQL.
Now also included is Grafana Mimir, a highly scalable time-series database for storing metrics at scale. You'll learn what Mimir is, how it works, and how to deploy it locally in monolithic mode and microservices mode into Kubernetes.
To make it practical, the course is based on a fictional online retailer, ShoeHub, with mock data, dashboards, alerts, and services that simulate real-world observability use cases.
No setup headaches — you'll also get instant access to a browser-based playground powered by Killer Coda, so you can start experimenting without installing anything.
Included in the course:
Docker Compose files for Prometheus, Grafana, Loki, Alloy, Tempo, Mimir, ShoHub metrics, and Example Microservices Tracing.
Sample dashboards and panel configurations.
Log generator script in Python.
Set up guides for multiple platforms.
Binary executable files for ShoeHub and the example microservices (if you don't want to use Docker).
Optional cloud lab environment (Killer Coda) for instant hands-on practice.
I will respond promptly via the Udemy Q&A system if you encounter any issues or have questions.
Happy learning — and welcome to the world of observability!