Andrew Phillips

Staff Columnist

Preston's Summary

Andrew Phillips is a staff columnist for the Opinion page at the Toronto Star. With a rich background in journalism, he covers a variety of themes including government and politics, public policy, and elections, often intertwining these topics with insights from sports and healthcare. His work has been featured in numerous publications, including The Peterborough Examiner, Waterloo Region Record, and The Hamilton Spectator.

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Geo Focus

Coverage Attributes:

Beta
Informative: 40 %
Opinion: 30 %
Events: 9 %
Interviews Q&as: 5 %
Reviews: 5 %

Themes Covered:

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Most Recent Topics:

  • Elections
  • Government
  • Politics
  • Public Policy
  • Security Policy
  • Tech Policy
  • Conflict & War
  • Current Affairs
  • Geopolitics
  • Global & Security
  • International Affairs
  • AI Platforms
  • Generative AI

Pitching Insights

Andrew Phillips predominantly covers government and politics, with a focus on legal policy regulation and opinion editorials. His articles often delve into topics such as LGBTQ rights, Muslim voters, Donald Trump, free speech, Canada-India relations among others.

Considering his coverage attributes and themes covered, Andrew could be interested in pitches providing expert commentary on recent government policies or announcements in Canada. He may also seek opinions from experts knowledgeable about the impact of political decisions on society or specific communities such as LGBTQ groups or minority voters.

Given his national focus on Canada and interest in world affairs including Canadian international relations like those with India and Beijing's behavior, relevant experts should tailor their insights to align with these areas of interest when reaching out to him.

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

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