Daji Aswad

Weekend Evening Meteorologist/ Science Reporter

AS SEEN ON

Preston's Summary

Daji Aswad is a Weekend Evening Meteorologist and Science Reporter at WISN-TV. He focuses on regional interest and world news, with a particular emphasis on climate change and the environment, as well as topics related to travel, construction, and natural sciences. Daji's work has also been featured in KPRC, showcasing his dedication to informing the public on critical issues affecting Wisconsin and beyond.

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Geo Focus

Houston, United States (Local)

Coverage Attributes:

Beta
Seasonal: 32 %
Event Coverage: 12 %
Government Announcement: 11 %
Evolving Stories: 10 %
Cites Data: 8 %

Themes Covered:

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Most Recent Topics:

  • Climate Policy
  • Environmental Services
  • Sustainable Agriculture
  • Natural Resources

Pitching Insights

Daji Aswad's coverage heavily focuses on weather, climate, and meteorology with a specific local focus on Houston, Texas. The articles primarily revolve around seasonal topics related to weather changes and their impact on the local community.

Given Daji's emphasis on weather-related content and its effects on the local area, pitches should be tailored to provide insights or expertise related to preparing for extreme weather conditions in Houston. Topics such as winterizing homes or cars, dealing with severe storms like tornadoes, or understanding the impact of global climate conferences at a local level are likely to align well with his coverage.

Additionally, considering the significant portion of content focused on house & home themes suggests that Daji may be interested in pitches centered around practical tips for homeowners during different seasons or how families can prepare for various types of inclement weather.

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