An open API service indexing awesome lists of open source software.

https://github.com/temporalio/edu-workerversioning-go-code

Exercises for Worker Versioning (Go) training
https://github.com/temporalio/edu-workerversioning-go-code

Last synced: about 2 months ago
JSON representation

Exercises for Worker Versioning (Go) training

Awesome Lists containing this project

README

          

# Code Repository for Worker Versioning (Go)
This repository provides code used for exercises and demonstrations
included in the Go version of the
[Worker Versioning](https://learn.temporal.io/courses/worker-versioning)
training course.

It's important to remember that the example code used in this course was designed to support learning a specific aspect of Temporal, not to serve as a ready-to-use template for implementing a production system.

For the exercises, make sure to run `temporal server start-dev --ui-port 8080 --db-filename clusterdata.db` in one terminal to start the Temporal server. For more details on this command, please refer to the `Setting up a Local Development Environment` chapter in the course. Note: If you're using the Codespaces environment to run this exercise, you can skip this step.

## Hands-On Exercises

Directory Name | Exercise
:--------------------------------- | :-------------------------------------------------------
`exercises/worker-versioning` | [Exercise 1](exercises/worker-versioning/README.md)

## Reference
The following links provide additional information that you may find helpful as you work through this course.
* [General Temporal Documentation](https://docs.temporal.io/)
* [Temporal Go SDK Documentation](https://pkg.go.dev/go.temporal.io/sdk)
* [Go Language Documentation](https://go.dev/doc/)

## Exercise Environment for this Course
You can launch an exercise environment for this course using GitHub Codespaces by
following [this](codespaces.md) walkthrough.

Alternatively, you can follow
[these instructions](https://learn.temporal.io/getting_started/go/dev_environment/) to
set up your own Temporal Cluster with Docker Compose, which you can use as an
exercise environment.