Danielle Zulkosky

Reporter

AS SEEN ON

Preston's Summary

Danielle Zulkosky is a reporter based in Indianapolis, Indiana. She writes for WISH-TV, Zionsville Times Sentinel, and Cleburne Times Review, focusing on local news and events in the area. Her articles cover a range of topics, including economic development, community issues, mental health, crime, and real estate.

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

Geo Focus

Indianapolis, United States (Local)

Coverage Attributes:

Beta
Government Announcement: 28 %
Event Coverage: 25 %
Evolving Stories: 12 %
Legal Policy Regulation: 7 %
Breaking News: 6 %

Themes Covered:

Not enough data icon

Not enough data

Most Recent Topics:

  • Celebrities
  • Concerts & Festivals
  • Entertainment News
  • Pop Culture
  • Residential Real Estate

Pitching Insights

Danielle Zulkosky's coverage is locally focused on Indianapolis and Indiana, covering a variety of topics including local government announcements, events, entertainment news, family and relationships, crime, sports and politics. She also covers business-related stories such as real estate market updates.

If you wish to reach out to Danielle with a pitch or story idea, consider tailoring it to her local focus in Indianapolis and Indiana. Local business developments like the housing market or community events are likely to resonate well with her audience. Similarly, stories related to domestic violence awareness campaigns or local sports initiatives could be of interest too.

Given her focus on event coverage and government announcements along with themes like family & relationships and entertainment news among others in addition to various topics covered from economic development to animal care; tailored pitches focusing on these areas would likely yield better response rates when reaching out for potential coverage.

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
Most recent topics
Not enough data
Publications
Most recent topics
Not enough data