Alexis Morillo

Lifestyle Editor

AS SEEN ON

Preston's Summary

Alexis Morillo is a Lifestyle Editor at Bustle. She specializes in arts and entertainment, consumer interest, and beauty and fashion, with a keen interest in the latest trends on TikTok and Instagram. Alexis has been featured in Redbook Magazine, Laredo Morning Times, Delish, Cigalah Group, Yahoo News, AOL, Inc., and Bustle.

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Coverage Attributes:

Beta
Promotional Deal: 25 %
How To Guide: 23 %
Seasonal: 19 %
Gift Guides: 16 %
Press Release: 2 %

Themes Covered:

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Most Recent Topics:

  • Beauty Industry
  • Makeup & Skincare
  • Nightlife

Pitching Insights

Alexis Morillo's coverage primarily revolves around lifestyle and tech-related topics, with a focus on seasonal content, how-to guides, promotional deals, and gift guides. She seems to be interested in articles related to food and drink, holidays, social media platforms like TikTok, as well as celebrities.

To effectively reach out to her for potential collaboration or pitching ideas:
- Consider offering holiday-themed how-to guides or promotional deals related to food and drink.
- Propose content about TikTok trends or references that align with popular culture.
- Highlight tech products or gadgets relevant to lifestyle themes.

When reaching out to Alexis Morillo for collaborations or pitches consider tailoring your suggestions based on her interest in seasonal content focused mainly on lifestyle themes such as food & drink along with technology.

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

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