Terrell Forney

Tv News Reporter

AS SEEN ON

Preston's Summary

Terrell Forney is a TV news reporter for WPLG, focusing on local news in the Miami area of Florida. With a passion for storytelling and a commitment to seeking justice, Terrell covers a wide range of topics including crime, weather, and community issues. His reporting aims to inform and engage viewers while giving a voice to those affected by local events.

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Geo Focus

Fort Lauderdale, United States (Local)

Coverage Attributes:

Beta
Evolving Stories: 41 %
Breaking News: 28 %
Government Announcement: 13 %
Event Coverage: 8 %
Press Release: 4 %

Themes Covered:

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Most Recent Topics:

  • Elections
  • Government
  • Politics
  • Public Policy
  • Consumer Products
  • Product Recalls
  • Individual Sports
  • Sports Disciplines

Pitching Insights

Terrell Forney’s reporting predominantly focuses on local crime and safety-related events in South Florida, with a substantial portion being evolving or breaking news stories. Pitches should provide insights related to ongoing criminal investigations, updates on law enforcement activities, community safety initiatives, and similar topics relevant to the South Florida area.

Given Terrell's coverage of local events such as parades and school performances, there may also be opportunities for human interest stories that showcase positive community engagements or celebratory occasions within the region.

Pitches should focus on providing valuable information about crime trends specific to South Florida and Miami while considering how they impact residents in these areas. If pitching sports-related content, it would need to have a strong tie-in with local communities or impactful implications specifically for residents in South Florida.

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

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