Trump's Midterm Election Donors Exposed: From Crypto.com to OpenAI, Crypto and AI Giants Generously Contribute

marsbitPublished on 2026-02-04Last updated on 2026-02-04

Abstract

Donald Trump's midterm election fundraising has reached $429 million, with his super PAC holding $304 million—tens of millions more than Democratic opponents. Significant contributions came from the crypto and AI sectors, including $5 million from Elon Musk, $25 million from OpenAI co-founder Greg Brockman and his wife, and $16 million from SIG co-founder Jeff Yass. Crypto.com donated $30 million, while Blockchain.com and a16z founders Ben Horowitz and Marc Andreessen each contributed. Major donations also poured in from energy, healthcare, and finance industries, such as $10 million from Extremity Care, $12.5 million from energy entrepreneur Kelcy Warren, and $1 million each from figures like NFL Dallas Cowboys owner Jerry Jones and Chevron board member John Hess.

Is Trump's midterm election in jeopardy? ????

——Not sure, but he definitely has more money than his opponents! He has raised a total of $429 million, with his super PAC currently holding $304 million, tens of millions more than the Democratic camp!

In this round of donations, the AI and crypto industries also accounted for a significant proportion:

Elon Musk: $5 million
OpenAI co-founder Greg Brockman and his wife Anna: $25 million
SIG co-founder Jeff Yass: $16 million

Crypto.com: $30 million
Blockchain.com: $5 million
A16Z founder Ben Horowitz: $3 million
A16Z founder Marc Andreessen: $3 million

Funds from the energy, healthcare, and financial industries are also heavily betting:

Extremity Care (medical company) and related parties: $10 million
RAI Services (tobacco company): $3 million

Energy entrepreneur Kelcy Warren: $12.5 million
Private equity investor Konstantin Sokolov: $11 million
Banker Julio Herrera Velutini and his daughter: $3.5 million
NYSE parent company ICE CEO Jeffrey Sprecher: $2.5 million
Food business heir Lynsi Snyder-Ellingson: $2 million
Venture capitalist William E. Ford: $1.25 million
NFL Dallas Cowboys owner Jerry Jones: $1 million
Chevron board member John Hess: $1 million
John Hess's wife Susan Hess: $1 million
Investor Warren Stephens: $1 million
Entrepreneur Jared Isaacman: $1 million

Related Questions

QHow much money did Donald Trump raise for the midterm elections according to the article?

ADonald Trump raised a total of $429 million for the midterm elections.

QWhich AI and crypto industry leaders made significant donations to Trump's campaign, and how much did they contribute?

AElon Musk donated $5 million, OpenAI co-founder Greg Brockman and his wife Anna donated $25 million, and SIG co-founder Jeff Yass donated $16 million. From the crypto industry, Crypto.com donated $30 million, Blockchain.com donated $5 million, and A16Z founders Ben Horowitz and Marc Andreessen each donated $3 million.

QWhat is the amount of money currently available in Trump's super PAC, and how does it compare to the Democratic camp?

ATrump's super PAC currently has $304 million, which is tens of millions more than the Democratic camp.

QBesides AI and crypto, which other industries contributed significantly to Trump's midterm election funds?

ASignificant contributions also came from the energy, healthcare, and financial industries, including donations from Extremity Care ($10 million), RAI Services ($3 million), energy entrepreneur Kelcy Warren ($12.5 million), and others.

QWho are some of the notable individual donors from outside the AI and crypto sectors mentioned in the article?

ANotable individual donors include NYSE parent ICE CEO Jeffrey Sprecher ($2.5 million), NFL Dallas Cowboys owner Jerry Jones ($1 million), Chevron board member John Hess and his wife Susan Hess ($1 million each), and food business heiress Lynsi Snyder-Ellingson ($2 million).

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