Mattie Davis

Multimedia Journalist

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Preston's Summary

Mattie Davis is a multimedia journalist for WVTM-TV, focusing on local news in the Birmingham, Alabama area. With a passion for storytelling, Mattie covers a wide range of topics including local politics, community events, human interest stories, and breaking news. She strives to provide accurate and engaging news coverage that keeps the community informed and connected.

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Geo Focus

Birmingham, United States (Local)

Coverage Attributes:

Beta
Government Announcement: 30 %
Evolving Stories: 18 %
Event Coverage: 15 %
Breaking News: 14 %
Legal Policy Regulation: 9 %

Themes Covered:

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Most Recent Topics:

  • Hoover
  • UAB
  • Thanksgiving
  • Birmingham
  • Alabama

Pitching Insights

Mattie Davis focuses primarily on local government and politics, with a significant portion of her coverage dedicated to crime-related stories. She also covers events and evolving stories related to local news in Birmingham, Alabama. Therefore, she would likely be interested in receiving pitches regarding local government announcements or policies, community events, crime trends or incidents within the specified geographic area.

When reaching out to Mattie Davis, consider providing insights from local political figures or community leaders relevant to Birmingham and Alabama. Additionally, offering access to unique perspectives from individuals involved in the topics covered such as law enforcement officials for crime-related stories or community advocates for social issues may enhance the relevance of your pitch.

Given her focus on specific locations like Hoover and UAB (University of Alabama at Birmingham), tailored pitches related to these areas could also be well received by Mattie Davis.

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

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