Kanika Khurana

Associate Editor

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Preston's Summary

Kanika Khurana is an Associate Editor at Times Network. She covers a diverse range of themes including travel and tourism, government and politics, as well as culture and society, while also exploring the intersections of AI and machine learning in these areas. Kanika's insightful work has been featured in prominent platforms, showcasing her expertise in both current affairs and educational topics.

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Geo Focus

Coverage Attributes:

Beta
Government Announcement: 30 %
Press Release: 20 %
Cites Data: 10 %
Exclusive: 10 %
How To Guide: 9 %

Themes Covered:

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Most Recent Topics:

  • AI Platforms
  • Educational Policy
  • Elections
  • Government
  • Politics
  • Public Policy

Pitching Insights

With a focus on national coverage in India, Kanika Khurana's articles predominantly revolve around education and government announcements. She often covers topics related to exams, study abroad opportunities, technology, and health within the Indian context.

Given her emphasis on Government Announcements and Press Releases, she is likely interested in news or commentary from official sources regarding educational policies or exam schedules. If you are involved with education policy development or have insights into the impact of government decisions on student welfare, your input could be valuable for her audience.

As Kanika focuses largely on issues relevant to students and educational institutions in India, pitches should align with this specific demographic. Additionally, if you can offer practical advice for students planning to study abroad or insights into the evolving trends in Indian education system such as changes in exam patterns or visa rules for studying overseas might also interest her.

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