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Mastering Python Networking

You're reading from   Mastering Python Networking Your one-stop solution to using Python for network automation, programmability, and DevOps

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Product type Paperback
Published in Jan 2020
Publisher Packt
ISBN-13 9781839214677
Length 576 pages
Edition 3rd Edition
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Author (1):
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Eric Chou Eric Chou
Author Profile Icon Eric Chou
Eric Chou
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Toc

Table of Contents (18) Chapters Close

Preface 1. Review of TCP/IP Protocol Suite and Python 2. Low-Level Network Device Interactions FREE CHAPTER 3. APIs and Intent-Driven Networking 4. The Python Automation Framework – Ansible Basics 5. The Python Automation Framework – Beyond Basics 6. Network Security with Python 7. Network Monitoring with Python – Part 1 8. Network Monitoring with Python – Part 2 9. Building Network Web Services with Python 10. AWS Cloud Networking 11. Azure Cloud Networking 12. Network Data Analysis with Elastic Stack 13. Working with Git 14. Continuous Integration with Jenkins 15. Test-Driven Development for Networks 16. Other Books You May Enjoy
17. Index

Data ingestion with Beats

As good as Logstash is, the process of data ingestion can get complicated and hard to scale. If we expand on our network log example, we can see that even with just network logs it can get complicated trying to parse different log formats from IOS routers, NXOS routers, ASA firewalls, Meraki wireless controllers, and more. What if we need to ingest log data from Apache web logs, server host health, and security information? What about data formats such as NetFlow, SNMP, and counters? The more data we need to aggregate, the more complicated it can get.

While we cannot completely get away from aggregation and the complexity of data ingestion, the current trend is to move toward a more lightweight, single-purpose agent that sits as close to the data source as possible. For example, we can have a data collection agent installed directly on our Apache server specialized in collecting web log data; or we can have a host that only collects, aggregates, and organizes...

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