Nicola Dall'asen

Editor at Allure Magazine

AS SEEN ON

Preston's Summary

Nicola Dall'asen is an editor whose work has appeared in Allure Magazine, SELF Magazine, and Glamour US. With a focus on beauty, fashion, and pop culture, Nicola's articles cover a wide range of topics, from hair and skincare tips to celebrity beauty secrets and astrology.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Promotional Deal: 25 %
Review: 16 %
Seasonal: 13 %
Event Coverage: 11 %
Gift Guides: 10 %

Themes Covered:

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Most Recent Topics:

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

Pitching Insights

Nicola Dall'asen's coverage predominantly features entertainment, beauty, and fashion content. Her articles often include product reviews, promotional deals, and seasonal topics.

Given her focus on beauty & fashion and celebrity-related subjects such as haircare, makeup, and astrology, she may be interested in pitches that offer expert insights into current or upcoming trends in these areas. For instance, providing detailed analysis of emerging beauty or fashion trends could resonate with her audience.

As Nicola does not have a specified geographic focus but covers international celebrities and global beauty trends extensively. Therefore, pitches should cater to an international audience or feature widely recognized personalities from various regions.

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

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