Ron Trenda

Weekend Meteorologist

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Preston's Summary

Ron Trenda is a seasoned meteorologist with over 30 years of experience forecasting weather for the Twin Cities and Minnesota. As the weekend meteorologist for MPR News, Ron provides accurate and timely weather updates, keeping listeners informed about local weather patterns and conditions. He is recognized for his expertise, holding the AMS seal of approval and being an Emmy award winner.

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Geo Focus

Twin Cities, United States (Local)

Coverage Attributes:

Beta
Event Coverage: 40 %
Seasonal: 25 %
Evolving Stories: 14 %
Cites Data: 10 %
Government Announcement: 8 %

Themes Covered:

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Most Recent Topics:

  • Weather
  • Rain
  • Temperature
  • Forecast
  • Weekend Weather
  • Solar Eclipse

Pitching Insights

Ron Trenda's articles primarily focus on winter weather and snow in Minnesota, with an emphasis on providing detailed forecasts and updates. Given his coverage attributes and topics covered, he would be most receptive to pitches that provide expert insights into interpreting weather data or understanding the impact of specific weather patterns.

As Ron focuses on local events in Minnesota, consider pitching stories related to unique or unusual weather phenomena in the state, especially during the winter months. Pitches emphasizing how certain weather conditions may affect residents' daily lives or offering tips for preparing for specific extreme weather events could also resonate well with his coverage areas.

Given Ron's thematic focus on tragedy and seasonal content such as Christmas weather, he might also be interested in human-interest stories related to individuals impacted by severe winter conditions or heartwarming accounts of holiday festivities amidst challenging weather situations.

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

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