Bees Beesley
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Preston's Summary

Bees Beesley is a journalist based in Salisbury, Maryland, writing for Draper Media. With a focus on local news, Bees covers a wide range of topics including community events, crime, infrastructure developments, and public meetings. Bees' work has also been featured in The Flyer, providing in-depth coverage of local stories and keeping the community informed.

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Coverage Attributes:

Beta
Breaking News: 33 %
Evolving Stories: 32 %
Government Announcement: 17 %
Press Release: 6 %
Event Coverage: 3 %

Themes Covered:

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Most Recent Topics:

  • Disaster & Emergency Response
  • Public Event Safety
  • Event Management Tools
  • Event Planning

Pitching Insights

Bees Beesley's coverage focuses on local news in the Maryland area, particularly Salisbury and its surrounding areas. Given the emphasis on government announcements, breaking news, crime stories, transportation & logistics updates, and entertainment news at a local level, she may be most receptive to pitches related to local community events or initiatives that contribute positively to these topics.

Pitches centered around public hearings regarding infrastructure improvements or safety measures within Salisbury and its neighboring regions could align well with Bees' focus. Additionally, due to her coverage of accidents and law enforcement activities in the area, offering insights into public safety measures or unique crime prevention efforts might also be relevant for her reporting.

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