OpenEden has closed a new strategic investment round backed by some of the most influential names in blockchain and institutional finance, including Ripple, Lightspeed Faction, Gate Ventures, FalconX, Anchorage Digital Ventures, Flowdesk, P2 Ventures, Selini Capital, Kaia Foundation, and Sigma Capital. The raise marks a significant milestone for the RWA tokenization platform as institutional appetite […] The post OpenEden Closes Strategic Funding as RWA Market Surges; Ripple and Anchorage Digital Ventures Among Backers appeared first on CryptoSlate.OpenEden has closed a new strategic investment round backed by some of the most influential names in blockchain and institutional finance, including Ripple, Lightspeed Faction, Gate Ventures, FalconX, Anchorage Digital Ventures, Flowdesk, P2 Ventures, Selini Capital, Kaia Foundation, and Sigma Capital. The raise marks a significant milestone for the RWA tokenization platform as institutional appetite […] The post OpenEden Closes Strategic Funding as RWA Market Surges; Ripple and Anchorage Digital Ventures Among Backers appeared first on CryptoSlate.

OpenEden Closes Strategic Funding as RWA Market Surges; Ripple and Anchorage Digital Ventures Among Backers

2025/12/02 20:00
4 min read

OpenEden has closed a new strategic investment round backed by some of the most influential names in blockchain and institutional finance, including Ripple, Lightspeed Faction, Gate Ventures, FalconX, Anchorage Digital Ventures, Flowdesk, P2 Ventures, Selini Capital, Kaia Foundation, and Sigma Capital.

The raise marks a significant milestone for the RWA tokenization platform as institutional appetite for compliant, yield-bearing on-chain assets accelerates globally.

A Strategic Push Toward Compliant, Composable Tokenized Finance

The investment follows OpenEden’s previous fundraising with Yzi Labs in 2024 and will be used to expand its end-to-end tokenization-as-a-service platform—an infrastructure designed to help institutions, fintechs, and developers issue and manage regulated real-world asset products.

According to the company, the diverse group of participating investors—spanning blockchain networks, venture firms, trading desks, and institutional infrastructure providers—signals growing conviction in the tokenization thesis, particularly in regulated formats.

RWA and Tokenized Treasuries Surge as OpenEden Builds Institutional Momentum

The announcement comes at a pivotal moment for the RWA landscape. Tokenized U.S. Treasuries and broader RWA markets have both more than doubled year-to-date, reaching all-time highs in adoption and capital inflows.

OpenEden’s flagship TBILL Fund, one of the earliest tokenized U.S. Treasury products, has become a preferred vehicle for institutions seeking secure, fully-transparent Treasury exposure on-chain. Its peak assets under management have expanded more than tenfold in under two years.

Earlier this year, the fund achieved an institutional milestone rarely seen in the digital asset sector: an ‘AA+f/S1+’ rating from S&P Global, in addition to its existing ‘A’ credit rating from Moody’s.

OpenEden’s credibility was further reinforced when The Bank of New York, one of the world’s most established financial institutions, was appointed as both custodian and investment manager of the TBILL fund’s underlying assets.

USDO Gains Traction as a Regulated, Yield-Bearing Stablecoin

The institutional momentum behind TBILL has fed directly into the growth of USDO, OpenEden’s regulated yield-bearing stablecoin fully backed by tokenized U.S. Treasuries. USDO is now deployed across major decentralized exchanges, liquidity venues, lending markets, and crypto-fiat gateways.

Its wrapped form, cUSDO, also attracted significant attention after becoming the first yield-bearing digital asset approved as off-exchange collateral on Binance, enabling institutional users to earn yield on its custodied assets while retaining full margin trading access.

New Tokenized Funds, Structured Products, and Global Stablecoin Expansion Ahead

With new strategic capital and an expanded network of global investors, OpenEden is now poised to accelerate the next phase of its roadmap. The company is preparing to launch a tokenized Short-Duration Global High-Yield Bond Fund in collaboration with a major global asset manager, alongside a multi-strategy yield token that blends traditional income sources with DeFi-native yield generation. OpenEden is also developing tokenized structured products that bring familiar TradFi payoff profiles on-chain in a compliant, programmable format.

Beyond investment products, the company plans to deepen USDO’s integration across both consumer and institutional payment networks worldwide, while expanding its multi-currency stablecoin framework to support new regional markets. In parallel, OpenEden is building a cross-border stablecoin settlement network that connects blockchain rails with existing financial infrastructure.

Collectively, these initiatives reflect the growing demand for tokenization platforms that deliver institutional-grade safeguards without compromising the transparency and composability that define on-chain finance.

Industry Leaders Back OpenEden’s Regulatory-First Model

Several participating investors emphasized that OpenEden’s disciplined regulatory approach and institutional partnerships distinguish it in a crowded RWA market.

Markus Infanger, SVP of RippleX, said:

Nathan McCauley, Co-Founder and CEO of Anchorage Digital, added:

Tokenized RWAs Move Toward Mainstream Finance

As RWA adoption enters a new phase, OpenEden’s regulatory-first, institutional-grade platform positions the company to play a central role in shaping the next generation of tokenized financial markets.

By combining the oversight of traditional finance with the programmability of blockchain, OpenEden is building the infrastructure needed to bring trillions of real-world assets on-chain, securely and at scale.

The post OpenEden Closes Strategic Funding as RWA Market Surges; Ripple and Anchorage Digital Ventures Among Backers appeared first on CryptoSlate.

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