Jordan Gloor

Technical Content Editor

AS SEEN ON

Preston's Summary

Jordan Gloor is a Technical Content Editor at How-To Geek. He specializes in areas such as enterprise tech, software, and general technology, with a keen focus on topics including Apple, electronics, gaming, the iPhone, and Microsoft. Jordan's work has been featured in notable publications like How-To Geek and Knowledia.

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Coverage Attributes:

Beta
How To Guide: 81 %
Review: 8 %
Promotional Deal: 5 %
Event Coverage: 1 %
Cites Data: 1 %

Themes Covered:

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Most Recent Topics:

  • Open Source Software
  • Software Development
  • Software Licensing & Compliance

Pitching Insights

Jordan Gloor's coverage is heavily focused on "How To" guides, with a significant portion of the content dedicated to technology-related topics. If you have expertise in providing step-by-step instructions for using specific software or hardware, especially within the realm of gaming or productivity tools for Windows and Linux platforms, your insights could be valuable to Jordan.

Given Jordan's focus on technology and instructional content, consider offering expert guidance related to popular software applications, troubleshooting techniques for digital tools, as well as product reviews and comparisons.

Since there is no specified geographic focus for Jordan’s articles, pitches can cover international products and services without restriction.

This information evolves through artificial intelligence and human feedback. Improve this profile .

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