Preston's Summary

Ariel Edwards-Levy is the Polling Editor at CNN, responsible for tracking public opinion and analyzing election data. With a background in journalism, Ariel has written for various news outlets and has been featured in multiple media platforms. Her work focuses on providing insights into political polling, election analytics, and public sentiment.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Cites Data: 92 %
Evolving Stories: 1 %
Breaking News: 1 %

Themes Covered:

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Most Recent Topics:

  • Elections
  • Government
  • Politics
  • Public Policy
  • Accessibility
  • Civil Rights
  • Diversity & Inclusion
  • Gender Issues
  • Racial Issues

Pitching Insights

Ariel Edwards-Levy's articles primarily focus on politics and government, with an emphasis on polling data as the main source of information. She mostly covers national US political topics, particularly related to elections, polling results, and public opinion.

Given her heavy reliance on data-driven insights from polls, she is likely to be interested in pitches that provide unique analysis or commentary based on recent or upcoming poll results. Pitches offering access to exclusive polling data or expert analysis of trends in public opinion could be especially appealing.

As Ariel's coverage attributes show a strong preference for citing data (96%), it would be beneficial to tailor pitches with a clear emphasis on statistical evidence and empirical trends when reaching out to her.

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

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