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d-29243House OversightOther

Email from Richard Kahn to Jeffrey Epstein predicting Trump win via AI system

The passage contains a speculative prediction about the 2016 election with no concrete evidence, transactions, or actionable leads. It mentions high‑profile individuals only in a generic context and p Email dated 28 Oct 2016 from Richard Kahn to Jeffrey Epstein. Subject claims an AI system predicts Trump will win and be more popular than Obama in 2008. Includes a link to a CNBC article (likely a p

Date
November 11, 2025
Source
House Oversight
Reference
House Oversight #026630
Pages
1
Persons
2
Integrity
No Hash Available

Summary

The passage contains a speculative prediction about the 2016 election with no concrete evidence, transactions, or actionable leads. It mentions high‑profile individuals only in a generic context and p Email dated 28 Oct 2016 from Richard Kahn to Jeffrey Epstein. Subject claims an AI system predicts Trump will win and be more popular than Obama in 2008. Includes a link to a CNBC article (likely a p

Tags

ai-analysiselectoral-outlookpolitical-predictionpolitical-forecastinghouse-oversight

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Extracted Text (OCR)

EFTA Disclosure
Text extracted via OCR from the original document. May contain errors from the scanning process.
From: Richard Kahn Sent: 10/28/2016 12:34:36 PM To: Jeffrey Epstein [[email protected]] Subject: Trump will win the election and is more popular than Obama in 2008, Al system finds Importance: High http://www.cnbc.com/2016/10/28/donald-trump-will-win-the-election-and-is-more-popular-than-obama-in- 2008-ai-system-finds.html Richard Kahn HBRK Associates Inc. 575 Lexington Avenue, 4th Floor New York, NY 10022

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Email addresses, URLs, phone numbers, and other technical indicators extracted from this document.

URLhttp://www.cnbc.com/2016/10/28/donald-trump-will-win-the-election-and-is-more-popular-than-obama-in

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