The post ETHZilla Buys 20% of Karus to Tokenize AI-Modeled Auto-Loan Portfolios appeared on BitcoinEthereumNews.com. Crypto treasury company ETHZilla (ETHZ) has taken a strategic step into onchain credit with the acquisition of a 20% fully diluted stake in automotive-finance AI startup Karus. The $10 million deal includes $3 million in cash and $7 million in ETHZilla stock, and will allow the company to integrate Karus’s underwriting AI models into its blockchain stack to issue tokenized auto-loan portfolios. According to Wednesday’s announcement, Karus’s decisioning engine is trained on more than 20 million historical auto-loan outcomes and has evaluated over $5 billion in loans at origination, giving ETHZilla a pre-modeled data set to structure AI-segmented pools with onchain settlement. The first tokenized portfolios are slated for early 2026. Karus’s network of car dealers, banks and credit unions gives ETHZilla a large pipeline of potential loan portfolios for future onchain securitization. ETHZilla estimates that every $100 million deployed into Karus-modeled tokens could generate $9 to $12 million in adjusted EBITDA — a measure of operating profit before interest, taxes, depreciation and amortization. Under the agreement, ETHZilla will take a seat on Karus’s board and receive certain governance rights. Karus’s backers include lead investor Stage Global Partners, as well as Tacoma Venture Fund and Capital Eleven.  Automotive loans comprise a significant segment of the US asset-backed securities market, which had about $1.6 trillion outstanding as of December 2024, according to SEC data. John Kristoff, head of investor relations at ETHZilla, told Cointelegraph that the acquisition provides access to loan exposures that were previously limited to large institutional investment firms involved in complex securitization structures. “By bringing auto loans onchain, we are able to open up these high-quality, income-generating assets to a global base of investors for the first time.” ETHzilla is currently the sixth-largest Ether treasury company, with 94,030 Ether (ETH) on its balance sheet, according to CoinGecko data.… The post ETHZilla Buys 20% of Karus to Tokenize AI-Modeled Auto-Loan Portfolios appeared on BitcoinEthereumNews.com. Crypto treasury company ETHZilla (ETHZ) has taken a strategic step into onchain credit with the acquisition of a 20% fully diluted stake in automotive-finance AI startup Karus. The $10 million deal includes $3 million in cash and $7 million in ETHZilla stock, and will allow the company to integrate Karus’s underwriting AI models into its blockchain stack to issue tokenized auto-loan portfolios. According to Wednesday’s announcement, Karus’s decisioning engine is trained on more than 20 million historical auto-loan outcomes and has evaluated over $5 billion in loans at origination, giving ETHZilla a pre-modeled data set to structure AI-segmented pools with onchain settlement. The first tokenized portfolios are slated for early 2026. Karus’s network of car dealers, banks and credit unions gives ETHZilla a large pipeline of potential loan portfolios for future onchain securitization. ETHZilla estimates that every $100 million deployed into Karus-modeled tokens could generate $9 to $12 million in adjusted EBITDA — a measure of operating profit before interest, taxes, depreciation and amortization. Under the agreement, ETHZilla will take a seat on Karus’s board and receive certain governance rights. Karus’s backers include lead investor Stage Global Partners, as well as Tacoma Venture Fund and Capital Eleven.  Automotive loans comprise a significant segment of the US asset-backed securities market, which had about $1.6 trillion outstanding as of December 2024, according to SEC data. John Kristoff, head of investor relations at ETHZilla, told Cointelegraph that the acquisition provides access to loan exposures that were previously limited to large institutional investment firms involved in complex securitization structures. “By bringing auto loans onchain, we are able to open up these high-quality, income-generating assets to a global base of investors for the first time.” ETHzilla is currently the sixth-largest Ether treasury company, with 94,030 Ether (ETH) on its balance sheet, according to CoinGecko data.…

ETHZilla Buys 20% of Karus to Tokenize AI-Modeled Auto-Loan Portfolios

Crypto treasury company ETHZilla (ETHZ) has taken a strategic step into onchain credit with the acquisition of a 20% fully diluted stake in automotive-finance AI startup Karus.

The $10 million deal includes $3 million in cash and $7 million in ETHZilla stock, and will allow the company to integrate Karus’s underwriting AI models into its blockchain stack to issue tokenized auto-loan portfolios.

According to Wednesday’s announcement, Karus’s decisioning engine is trained on more than 20 million historical auto-loan outcomes and has evaluated over $5 billion in loans at origination, giving ETHZilla a pre-modeled data set to structure AI-segmented pools with onchain settlement. The first tokenized portfolios are slated for early 2026.

Karus’s network of car dealers, banks and credit unions gives ETHZilla a large pipeline of potential loan portfolios for future onchain securitization. ETHZilla estimates that every $100 million deployed into Karus-modeled tokens could generate $9 to $12 million in adjusted EBITDA — a measure of operating profit before interest, taxes, depreciation and amortization.

Under the agreement, ETHZilla will take a seat on Karus’s board and receive certain governance rights. Karus’s backers include lead investor Stage Global Partners, as well as Tacoma Venture Fund and Capital Eleven. 

Automotive loans comprise a significant segment of the US asset-backed securities market, which had about $1.6 trillion outstanding as of December 2024, according to SEC data.

John Kristoff, head of investor relations at ETHZilla, told Cointelegraph that the acquisition provides access to loan exposures that were previously limited to large institutional investment firms involved in complex securitization structures.

ETHzilla is currently the sixth-largest Ether treasury company, with 94,030 Ether (ETH) on its balance sheet, according to CoinGecko data.

Top Ethereum treasury companies. Source: CoinGecko

Related: Ethereum treasury demand collapses: Will it delay ETH’s recovery to $4K?

Tokenized fixed-income products surge in 2025

Tokenized debt markets have accelerated in 2025, with institutions increasingly using blockchain rails to issue and trade fixed-income products. 

Tokenized US Treasurys and tokenized private credit, which bring government debt and corporate loans onchain, have become two of the largest segments of the emerging tokenized-debt market.

Tokenized Treasurys. Source: RWA.xyz

According to RWA.xyz data, tokenized Treasurys have grown to $9.21 billion, more than tripling from $2.68 billion a year earlier.

The shift has been driven by major asset managers, with BlackRock’s BUIDL fund currently holding about $2.3 billion in tokenized Treasurys and Franklin Templeton’s US Government Money Fund holding roughly $827 million.

The tokenized private credit market has been dominated by Figure, which accounts for $13.98 billion of the sector’s $19.02 billion market cap. 

Tokenized Private Credit Volume. Source: RWA.xyz

The blockchain-based lender debuted on the Nasdaq on Sept. 11 after raising its list price several times as demand for its IPO soared.

Magazine: How Neal Stephenson ‘invented’ Bitcoin in the ‘90s: Author interview

Source: https://cointelegraph.com/news/ethzilla-stake-karus-tokenized-ai-modeled-auto-loan?utm_source=rss_feed&utm_medium=feed&utm_campaign=rss_partner_inbound

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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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