Daniel Sheridan

Preston's Summary

Daniel Sheridan is a journalist based in Scarborough, United Kingdom. He writes for the Yorkshire Post and his work has also been featured in various publications such as Yahoo Sports UK, Yahoo News UK, JPIMedia, Yorkshire Evening Post, Derbyshire Live, Halifax Courier, and Whitby Gazette. Daniel covers a wide range of topics including local news, crime, education, and transportation.

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Geo Focus

Leeds, United Kingdom (Local)

Coverage Attributes:

Beta
Evolving Stories: 37 %
Breaking News: 37 %
Government Announcement: 8 %
Event Coverage: 7 %
Press Release: 2 %

Themes Covered:

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Most Recent Topics:

  • Film Industry
  • Animal Rescue & Rehabilitation
  • Consumer Health
  • Urban Art & Street Art

Pitching Insights

Daniel Sheridan's coverage is primarily focused on local news, with a strong emphasis on evolving and breaking crime stories as well as entertainment news. To effectively reach out to him, consider providing insights or commentary related to ongoing or recently developed events within the Scarborough area or Yorkshire region in general.

Given his focus on breaking and evolving stories, sources who can offer timely updates, exclusive details about ongoing investigations, or expert analysis of crime-related incidents would likely capture Daniel's attention. Additionally, individuals with knowledge of developments in the local entertainment scene may find an audience through this journalist.

When reaching out to Daniel Sheridan, it’s essential to understand that he primarily covers local news within the United Kingdom and particularly focuses on Scarborough and Yorkshire. Tailoring pitches to reflect this geographic scope will increase their relevance for potential inclusion in his reporting.

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

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