Addison Lathers

Real Estate and Economic Development Reporter

Preston's Summary

Addison Lathers is a Real Estate and Economic Development Reporter. She covers a range of topics including commercial and residential real estate, housing markets, and the construction industry, with a focus on real estate development and investment. Addison's work has been featured in notable publications such as Baraboo News Republic, Ames Tribune, The Des Moines Register, and Yahoo News.

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Geo Focus

Milwaukee, United States (Local)

Coverage Attributes:

Beta
Informative: 66 %
Opinion: 12 %
Events: 6 %
Data Driven: 3 %
Listicles: 3 %

Themes Covered:

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Most Recent Topics:

  • Urban Design
  • Urban Development
  • Commercial Real Estate
  • Housing Market
  • Real Estate Development
  • Real Estate Investment
  • Residential Real Estate
  • Property Management

Pitching Insights

Addison's local focus on Des Moines, Iowa, suggests she is interested in news related to the city's businesses, government, and community events. She may be particularly receptive to pitches that offer insights or access to key figures within the local business and political landscape of Des Moines.

Given Addison’s coverage attributes which include government announcements along with press releases, she would likely appreciate exclusive information regarding upcoming developments in local businesses and changes within the city’s governance.

Pitching stories about new business openings in Des Moines' Highland Park or development projects in East Village could align well with her areas of coverage. Additionally, providing detailed analysis around changes within Des Moines City Council participation rules might also interest her due to her focus on government & politics.

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

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