Errol Lewis

Publisher and Editor in Chief

Preston's Summary

Errol Lewis is the Publisher and Editor in Chief of Soap Opera Network. With a focus on soap operas and daytime television, Errol provides comprehensive coverage of the latest news, updates, and ratings in the industry. His articles offer insights into the world of soap operas, including casting changes, ratings analysis, and special events.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Event Coverage: 35 %
Press Release: 21 %
Private Sector Announcements: 13 %
Profile Feature: 6 %
Evolving Stories: 5 %

Themes Covered:

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Most Recent Topics:

  • Broadcast Media
  • Celebrities
  • Entertainment News
  • Consumer Events & Conferences
  • Health News
  • Apparel Design

Pitching Insights

Errol Lewis primarily covers topics related to entertainment news, particularly focusing on daytime television and soap operas. His coverage includes event details, press releases, and private sector announcements.

Based on this focus, it is likely that Errol would be interested in receiving pitches about exclusive interviews with actors or behind-the-scenes personnel from popular daytime TV shows or soap operas. Additionally, he may also be receptive to pitches regarding upcoming television premieres within the daytime TV genre.

Given his extensive coverage of ratings and broadcast events specific to daytime television programming, providing insights into industry trends or analysis of audience preferences could make for compelling pitch angles when reaching out to him.

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

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