Zak Maoui

Style Editor

Preston's Summary

Zak Maoui is a Style Editor at British GQ. He primarily covers fashion, grooming, and wellness, delving into topics such as fashion weeks, celebrity style, and designer collaborations. Zak's work has been featured in GQ Magazine, Teen Vogue, GQ India, and other esteemed publications, showcasing his interviews with notable personalities across the fashion and entertainment industries.

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Geo Focus

Coverage Attributes:

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Event Coverage: 28 %
Promotional Deal: 16 %
How To Guide: 11 %
Profile Feature: 8 %
Press Release: 6 %

Themes Covered:

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Most Recent Topics:

  • Fashion Industry
  • Hair
  • Makeup & Skincare
  • Luxury Goods
  • Apparel Design
  • Beauty Industry
  • Perfume & Fragrance

Pitching Insights

Zak's coverage heavily focuses on beauty & fashion, entertainment news, and house & home. He frequently features articles with expert commentary and reviews. If you aim to pitch to Zak Maoui, ensure your content aligns with these topics and consider providing insights from experts in the fields of fashion, skincare or fitness.

Given his focus on national coverage within the United Kingdom, it would be beneficial for pitches to incorporate local angles or tie-ins that are relevant to a UK audience. When pitching celebrity-related content, emphasize connections or relevance to UK audiences as well.

Consider offering insights into emerging trends in fashion or beauty products that could capture Zak’s interest based on his previous work.

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

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