Liam Corless

Associate Football Editor

Preston's Summary

Liam Corless is an Associate Football Editor at various prominent outlets including the Manchester Evening News and the Daily Star (UK). He specializes in European football and competitive sports, often covering themes related to sports business, broadcasting, and the media landscape surrounding professional sports. Liam's work has been featured in notable publications such as Liverpool Echo, Yahoo Sports UK, and Daily Mirror.

Preston is the artificial intelligence that powers the Intelligent Relations PR platform. Meet Preston

Geo Focus

United Kingdom (National)

Coverage Attributes:

Beta
Breaking News: 30 %
Event Coverage: 30 %
Evolving Stories: 17 %
Government Announcement: 7 %
Press Release: 4 %

Themes Covered:

Not enough data icon

Not enough data

Most Recent Topics:

  • Sports Tournaments
  • Team Sports
  • Individual Sports
  • International Sports Leagues & Federations

Pitching Insights

Liam Corless focuses primarily on local sports news, particularly football-related events and transfers, with a specific emphasis on Manchester United. Therefore, reaching out to him with exclusive insights related to Manchester United's transfer activities or in-depth analysis of the team's performance would likely capture his attention.

Given Liam’s coverage attributes and topics covered, he is most receptive to event coverage within the realm of football. Any pitches should focus on providing unique behind-the-scenes insights into player movements or club strategies that align with his primary interests in local football events and developments.

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

Journalists With Similar Coverage:

Based on similarity of content.
Most recent topics
Not enough data
Publications
Most recent topics
Not enough data
Most recent topics
Not enough data
Most recent topics
Not enough data
Publications
Most recent topics
Not enough data
Publications
Most recent topics
Not enough data