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Privacy Policy

 Effective Date: March 5, 2025

Last Updated: March 8, 2025

1. Introduction

Welcome to Jageshwar Tripathi's blog ("Website," "we," "our," or "us"). This Privacy Policy explains how we use information collected through our blog [https://jageshwartripathi.blogspot.com/].

By using this Website, you agree to this Privacy Policy.


2. Information We Collect

We do not directly collect personal data from visitors. However, certain third-party services used on this blog may collect data, such as:

a. Google Services

  • Google AdSense: Displays ads and may use cookies to personalize ad experiences.
  • Google Analytics: Tracks blog traffic and visitor behavior.

b. Contact Forms & Comments (If enabled)

  • If you submit a form (e.g., Contact Us), we may receive your name and email.
  • If you comment on a post, your profile name may be visible.

3. How We Use This Information

We do not personally collect, store, or share user data. However, third-party services may use data for:
✅ Displaying personalized ads (Google AdSense)
✅ Analyzing blog traffic (Google Analytics)
✅ Responding to contact form submissions


4. Third-Party Services & Cookies

Google and other third-party vendors may use cookies to serve relevant ads.

Managing Cookies & Opt-Out

You can disable cookies in your browser settings or opt out of Google Ads personalization:
🔹 Google Ads Settings: https://adssettings.google.com/
🔹 General Cookie Settings: https://www.allaboutcookies.org/


5. External Links

Our blog may contain links to external sites. We are not responsible for their privacy practices.


6. Children’s Privacy

This blog is not intended for children under 13.


7. Changes to This Privacy Policy

We may update this policy. Any changes will be posted here.


8. Contact Us

If you have any questions, reach out at:
📧 Email: contactme[dot]jageshwar[at]gmail[dot]com
🌐 Website: https://jageshwartripathi.blogspot.com

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