Kaanita Iyer

Associate Producer, Politics

Preston's Summary

Kaanita Iyer is an Associate Producer with a focus on politics. She has written for various news outlets including CNN, KIFI News Group, Lilly Broadcasting Erie, PA, KMIZ-TV - ABC17 News, and KOMU 8 & Mid-Missouri CW. Kaanita's work has covered a wide range of political topics, including election coverage, legal proceedings, and policy changes.

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Geo Focus

Coverage Attributes:

Beta
Evolving Stories: 34 %
Government Announcement: 21 %
Legal Policy Regulation: 17 %
Event Coverage: 17 %
Breaking News: 8 %

Themes Covered:

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Most Recent Topics:

  • Elections
  • Government
  • Politics
  • Public Policy
  • Security Policy
  • Tech Policy

Pitching Insights

Kaanita Iyer's articles predominantly focus on government and politics, with a significant emphasis on evolving stories, breaking news, and government announcements. She covers a wide array of topics within the realm of political affairs, including new laws, election-related events, legal proceedings involving public figures like Rudy Giuliani, and international conflicts such as the Gaza conflict.

Given her extensive coverage of evolving political stories and breaking news related to national and international governance matters, she is likely to be responsive to pitches that offer unique insights into ongoing political developments or exclusive access to individuals involved in high-profile cases or events.

Pitches should aim at providing expert commentary from credible sources who can offer valuable perspectives on current political issues or those directly involved in the matters being covered. The geographic focus for Kaanita Iyer's reporting seems broad but leans towards US-centric news with an eye on global affairs.

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