Liv Finne

Director, Center for Education

Preston's Summary

Liv Finne is the Director of the Center for Education at the Washington Policy Center. She is a prominent writer and advocate for school choice and education reform, focusing on issues related to funding, teacher ratios, and the impact of traditional public schools. Her articles often provide a conservative perspective on education policy and are published in various outlets, including the Washington Policy Center, Watchdog.org, and Case Publishing, Inc.

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

Geo Focus

Seattle, United States (Local)

Coverage Attributes:

Beta
Government Announcement: 42 %
Legal Policy Regulation: 28 %
Cites Data: 18 %
Opinion Editorial: 3 %
Expert Commentary: 2 %

Themes Covered:

Not enough data icon

Not enough data

Most Recent Topics:

  • Public Education
  • School Administration
  • School Districts

Pitching Insights

Liv Finne's coverage is focused on local education policies, particularly school funding and school choice in the Washington state area. Given her interest in legal policy regulation and government announcements related to education, she would likely be interested in commentary or insights from experts familiar with educational policy and its impact at a local level.

Her focus on citing data suggests that she values evidence-based arguments, making well-researched pitches particularly appealing. Sources who can provide real-world examples of how particular policies have affected schools or students in the Seattle area are likely to capture her attention.

Given Liv's specific geographic focus on Washington and Seattle, outreach should emphasize relevance to this region when pitching topics related to education policy, school funding, COVID-19 impacts on education, and other relevant issues affecting public schools.

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

Journalists With Similar Coverage:

Based on similarity of content.
Publications
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