Preston's Summary

Kirsten Lang is a meteorologist with a focus on local weather in the Tulsa, Oklahoma area. She writes for various media outlets, including Tulsa World Media Company, Elko Daily Free Press, Kearney Hub, and more. Kirsten's expertise lies in providing accurate and timely weather forecasts for her community, keeping them informed about severe weather events and their impacts.

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Coverage Attributes:

Beta
Evolving Stories: 36 %
Breaking News: 30 %
Event Coverage: 16 %
Seasonal: 11 %
Government Announcement: 4 %

Themes Covered:

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Most Recent Topics:

  • Weather
  • Severe Storms
  • Tornadoes
  • Hail
  • Wind

Pitching Insights

Kirsten Lang's coverage predominantly focuses on weather-related events, particularly snowfall, winter storms, and severe weather. Given her local geographic focus in the United States, specifically Oklahoma and Tulsa, she is likely to be interested in pitches related to upcoming severe weather alerts or unique meteorological phenomena in these areas.

As Kirsten largely covers event-based and seasonal topics within the realm of meteorology, she may be interested in receiving information about emerging developments related to extreme weather conditions or significant changes impacting local communities.

Given her predominant focus on tragedy and entertainment news themes alongside sports at a lower percentage that could indicate a diverse audience interest for such stories along with an emphasis on tragic events caused by severe weather incidents.

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

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