Summer Lin

Fast Break Desk Reporter

Preston's Summary

Summer Lin is a Fast Break Desk Reporter, covering local news in the Los Angeles area for various publications including the Los Angeles Times, Rockdale Newton Citizen, and Yahoo News. With a focus on investigative reporting and human interest stories, Summer has covered a range of topics including crime, climate change, social issues, and legal cases. Her work has been featured in several reputable publications across the United States.

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Geo Focus

Los Angeles, United States (Local)

Coverage Attributes:

Beta
Evolving Stories: 44 %
Breaking News: 36 %
Government Announcement: 7 %
Legal Policy Regulation: 3 %
Cites Data: 2 %

Themes Covered:

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Most Recent Topics:

  • Climate Policy
  • Consumer Health
  • Animal Rescue & Rehabilitation
  • Environmental Services
  • Disaster & Emergency Response
  • Public Event Safety

Pitching Insights

Summer Lin's focus is primarily on local news, particularly crime and evolving stories in the Los Angeles area. She also covers government & politics, family & relationships, and entertainment news to a lesser extent.

Given her focus on evolving stories and breaking news related to crime in the Los Angeles area, she would likely be interested in pitches related to ongoing criminal investigations or significant developments in high-profile cases. Additionally, she may be open to human-interest stories that involve families or communities affected by tragic events.

For those looking to pitch Summer Lin, offering access to exclusive sources involved in unfolding local crimes or providing unique insights into impactful community events could capture her interest. Keep the geographic focus on local (Los Angeles) when pitching story ideas.

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