Caitlin Connell

Weekday Morning Meteorologist/Traffic Reporter

AS SEEN ON

Preston's Summary

Caitlin Connell is a Weekday Morning Meteorologist and Traffic Reporter for KMTV 3 News Now in Omaha, Nebraska. She also contributes to WeatherNation. With a focus on local weather events and their impact on the community, Caitlin provides accurate and timely weather forecasts and updates to help viewers stay informed and prepared.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Seasonal: 34 %
Evolving Stories: 33 %
Event Coverage: 14 %
Cites Data: 6 %
Breaking News: 5 %

Themes Covered:

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Most Recent Topics:

  • Lawsuits

Pitching Insights

Caitlin's coverage is predominantly focused on local weather events, with an emphasis on storms, flooding, and extreme weather conditions. If you're considering reaching out to her, it would be most effective to offer localized insights into current or upcoming severe weather patterns in the United States, particularly in Nebraska and Omaha.

Given Caitlin’s focus on seasonal content related to house & home (40%), she may also be interested in pitches that provide practical tips for homeowners preparing for specific weather events such as storms or flooding.

It's important to note that while her geographic focus is local (United States, Nebraska, Omaha), Caitlin may still appreciate broader regional context when discussing larger-scale storm systems impacting the region.

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

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