[PRESS RELEASE – San Francisco, USA/CA, November 20th, 2025] Numerai, a San Francisco–based hedge fund and data science tournament uniting machine learning, decentralized finance, and cryptocurrency incentives, today announced a $30 million Series C financing round led by top university endowments. The round values Numerai at $500 million, five times its 2023 valuation. J.P. Morgan […][PRESS RELEASE – San Francisco, USA/CA, November 20th, 2025] Numerai, a San Francisco–based hedge fund and data science tournament uniting machine learning, decentralized finance, and cryptocurrency incentives, today announced a $30 million Series C financing round led by top university endowments. The round values Numerai at $500 million, five times its 2023 valuation. J.P. Morgan […]

Numerai Raises $30 Million Series C Led by Top University Endowments, at $500 Million Valuation

[PRESS RELEASE – San Francisco, USA/CA, November 20th, 2025]

Numerai, a San Francisco–based hedge fund and data science tournament uniting machine learning, decentralized finance, and cryptocurrency incentives, today announced a $30 million Series C financing round led by top university endowments. The round values Numerai at $500 million, five times its 2023 valuation.

J.P. Morgan Asset Management’s August 2025 commitment of up to $500 million in Numerai’s hedge fund capacity, together with the new equity financing, provides Numerai with additional resources to scale its AI-driven strategies toward nearly $1 billion in assets under management (AUM).

Existing investors — including Union Square Ventures, Shine Capital, and macro investor Paul Tudor Jones — also participated in the round. Alongside J.P. Morgan Asset Management, they represent leading endowments, venture capital firms, and global macro investors that have supported Numerai’s development over multiple funding rounds.

The new capital will be used to expand Numerai’s AI engineering and research teams, increase hiring across key functions, grow participation in its global data science tournament, and support the scaling of its institutional hedge fund products.

Over the past three years, Numerai has grown assets under management from approximately $60 million to $550 million. In 2024, its flagship global equity hedge fund delivered a net return of 25.45% with a single down month, the strongest year in the firm’s history.

Numerai’s investment process is supported by a coordinated data science community that operates as a global tournament. Thousands of machine learning models contribute stock market signals that are combined into a single Meta Model trading global equity markets.

Numerai’s ecosystem is built around Numeraire (NMR), an Ethereum-based cryptocurrency used within Numerai’s data science tournament. Participants stake NMR on their stock market signals, who can earn or burn based on scores. This structure is intended to align incentives between Numerai and participating data scientists and connect the firm’s research process to the broader blockchain ecosystem.

About Numerai

Numerai is a San Francisco–based hedge fund and data science platform founded in 2015. Through a global competition and open API, thousands of data scientists submit stock market signals that Numerai aggregates into a single Meta Model trading global equities. Numeraire (NMR) is used to stake and reward signals that improve the fund. Numerai’s bet is that the future of asset management belongs to open, competitive machine intelligence rather than the walled garden of the multi-manager complex.

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The post Numerai Raises $30 Million Series C Led by Top University Endowments, at $500 Million Valuation appeared first on CryptoPotato.

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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