Shannon Garlin

Associate Editor at Shop TODAY

AS SEEN ON

Preston's Summary

Shannon Garlin is an Associate Editor at Shop TODAY, where she covers a wide range of topics including fashion, beauty, home, and lifestyle. With a keen eye for deals and trends, Shannon provides readers with valuable insights and recommendations to help them make informed purchasing decisions. Her work has also been featured in the Cigalah Group.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Promotional Deal: 55 %
Review: 14 %
Gift Guides: 11 %
Seasonal: 9 %
How To Guide: 3 %

Themes Covered:

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Most Recent Topics:

  • Beauty Industry
  • Fashion Industry
  • Online Marketplaces
  • Apparel Design
  • Makeup & Skincare
  • Store Management

Pitching Insights

Shannon's articles predominantly focus on deals and promotions, beauty & fashion, and lifestyle. If you are a business or expert in these areas with insights into trends, consumer behavior, or product recommendations that align with Shannon's coverage, your input may be well-received.

Given the promotional nature of much of Shannon’s work, she may be interested in hearing from businesses offering unique discounts or products that fit her themes. Additionally, experts who can provide valuable advice on saving money while shopping could also capture her interest.

Since there is no specific geographic focus mentioned for Shannon's coverage area, relevant information provided should appeal to an international audience.

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

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