Configure SRX interfaces with Scrapli

Overview

Configure SRX interfaces with Scrapli

N|Solid

Overview

This example will show how to configure interfaces on Juniper's SRX firewalls.

In addition to the Python script, this project also ships with additional tools to help you along your way. You will find a Dockerfile for running the project in an isolated environment, and an Invoke tasks.py file for those of us that hate typing out everything all the time.

⚙️ How it works

The configuration is pushed to the device using the NETCONF API on board.

Let's take a second to review the documentation in the files/docs/ directory.

Name Description
app_async.py Configure interface ge-0/0/1 on our firewalls with asyncio

📝 Dependencies

Refer to the Poetry Lock file located at poetry.lock for detailed descriptions on each package installed.

🚀 Executing the script

This project provides two unique methods of executing the playbook:

Executing with Docker | Execute with Docker

Executing with Python | Execute with Python

Owner
Calvin Remsburg
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Calvin Remsburg
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