Lauren Daniels

Preston's Summary

Lauren Daniels is a Food Editor for KFOR, with a focus on local food and dining in Oklahoma City. With her articles featured in various publications and news outlets, Lauren brings her passion for showcasing the vibrant food scene in Oklahoma City and highlighting local businesses and events.

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Geo Focus

Oklahoma City, United States (Local)

Coverage Attributes:

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Government Announcement: 23 %
Event Coverage: 20 %
Breaking News: 16 %
Evolving Stories: 12 %
Cites Data: 7 %

Themes Covered:

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Most Recent Topics:

  • Oklahoma
  • Events/Activities
  • Local News
  • Community
  • Personal Stories

Pitching Insights

Lauren Daniels' coverage is centered around local news, with a focus on events and activities within the Oklahoma area, including human-interest stories. She predominantly covers Health-related topics, followed closely by Family & Relationships and Crime.

Given her coverage attributes and topics covered, Lauren would likely be interested in pitches featuring unique community events or initiatives related to Health and Family & Relationships. Personal stories of resilience or overcoming adversity may also appeal to her based on the themes she frequently covers.

If you have a story involving an individual or organization making a positive impact in the local community through health-related programs, family support services, or engaging events/activities in Oklahoma City, it could resonate well with Lauren's coverage focus.

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

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