Liz Snyder

entertainment writer/editor

AS SEEN ON

Preston's Summary

Liz Snyder is an entertainment writer and editor for Kenosha News, focusing on local events and happenings in the Kenosha, Wisconsin area. With a passion for community engagement and a love for all things entertainment, Liz brings a unique perspective to her articles, keeping readers informed and entertained.

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

Geo Focus

Kenosha, United States (Local)

Coverage Attributes:

Beta
Event Coverage: 61 %
Seasonal: 26 %
Private Sector Announcements: 5 %
Press Release: 3 %
Profile Feature: 1 %

Themes Covered:

Not enough data icon

Not enough data

Most Recent Topics:

  • Plays & Musicals
  • Concerts & Festivals
  • Arts & Crafts
  • Music Genres
  • Entertainment News
  • Celebrities

Pitching Insights

Liz Snyder's focus is mainly on local events, entertainment news, and house & home topics in Kenosha, Wisconsin. She frequently covers event-related articles such as concerts, art shows, and holiday-themed activities. Therefore, she would be interested in pitches related to upcoming local events or unique stories about the people involved in organizing or participating in these events.

Given her coverage attributes of event coverage at 56% and seasonal content at 30%, consider pitching human-interest stories related to local happenings. For example, you could offer insights into the trends shaping the local event scene or provide profiles of individuals contributing to community-based artistic endeavors.

When reaching out to Liz Snyder with potential story ideas or sources for coverage consideration, it is essential to tailor your pitch specifically toward Kenosha-area events and topics that align with her demonstrated areas of interest such as concerts, art shows/events, holidays celebrations within the community.

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
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