Pema Bakshi

Fashion Features Editor

Preston's Summary

Pema Bakshi is a Fashion Features Editor at [Employer]. She specializes in beauty and fashion, with a keen interest in style, the Royal Family, and Australian holidays, while also exploring themes in arts and entertainment, film, and music. Pema's work has been featured in notable publications including Marie Claire Australia, Elle Australia, Refinery29, Inc., GQ Australia, and Grazia.

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Geo Focus

New York, United States (Local)

Coverage Attributes:

Beta
Event Coverage: 35 %
Press Release: 14 %
Promotional Deal: 13 %
Private Sector Announcements: 7 %
Seasonal: 6 %

Themes Covered:

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Most Recent Topics:

  • Apparel Design
  • Fashion Industry
  • Jewellery
  • Luxury Goods
  • Beauty Industry
  • Makeup & Skincare
  • Pop Culture

Pitching Insights

Pema Bakshi predominantly covers beauty and fashion, with a focus on event coverage and seasonal trends. Given this, she may be most responsive to pitches offering information about upcoming events in the fashion world or exclusive insights into evolving fashion trends.

Coverage attributes show that Pema also engages in promotional deal coverage, suggesting an openness to news related to collaborations within the beauty and fashion industry. If you have information regarding new product launches, partnerships among brands or celebrities, or seasonal promotions within the industry, it could align well with her interests.

Given Pema’s focus on celebrity style at high-profile events like awards shows, she might be interested in receiving pitches relating to forecasts for red carpet looks at upcoming ceremonies or insider perspectives on emerging styles endorsed by influential figures in the entertainment industry.

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