Rayls Labs, a blockchain network that unifies banks and institutions and blends TradFI and DeFi, today announced a strategic partnership with Animoca Brands, a digital asset platform and tokenization pioneer. According to the announcement disclosed today, the two decentralized networks are collaborating to accelerate the adoption and accessibility of tokenized real-world assets (RWAs). Powered by its native RLS token, Rayls is a blockchain ecosystem that connects traditional finance and decentralized finance by facilitating secure and regulated asset tokenization and cross-border digital assets settlements for institutions. It enables institutions to tokenize assets on permissioned private chains while facilitating settlements on its public blockchain. Through this approach, Rayls helps institutions tap into decentralized liquidity securely using its privacy-preserving and compliant infrastructure. We’re excited to announce a strategic partnership with @animocabrands to accelerate the global adoption of tokenized real-world assets.By combining Rayls’ institutional-grade settlement and privacy infrastructure with Animoca Brands’ expansive network, we’re unlocking a… pic.twitter.com/6jg54fJk4d— Rayls (@RaylsLabs) December 2, 2025 Rayls and Animoca Pioneering the Next Wave of RWA Markets The collaboration marks a significant milestone in advancing institutional-level RWA tokenization in the decentralized landscape. With the alliance, Rayls and Animoca aim to disrupt centralized traditional financial markets by scaling 24/7 trading of RWAs on-chain with transparency, lower costs, and international investment access. Based on the MOU formalized today, the partnership facilitated the integration of Animoca Brands’ vast network of digital asset investments and partnerships across the Web3 space with Rayls’ blockchain infrastructure to scale tokenization of a wide range of physical assets on a global scale. As per the announcement, Animoca will help identify asset classes and suitable issuers for RWAs on Rayls’ platform. On the other hand, with its compliant and privacy-focused blockchain infrastructure that enables RWAs tokenization and cross-border payments, Rayls is set to offer safe multichain settlement rails, data protection safeguards, and digital interfaces that enable interoperable, regulated asset management. Also, NUVA, a chain-agnostic vault marketplace, will function as a platform for distributing tokenized assets created on Rayls’ platform, according to the announcement.  Rise of RWAs: Disrupting Centralized Markets with Innovative Technology  By harnessing Rayls’ cutting-edge blockchain infrastructure and Animoca’s deep knowledge in DeFi solutions, the collaboration is equipped to connect greater real-world assets with blockchain networks, providing a revolutionary approach to liquidity management and financial inclusion. The alliance tackles one of the most standing challenges in the tokenization sector: market accessibility. Accessing high-value assets such as real estate and many others is still not easy for most investors, as centralized intermediaries add barriers associated with costs and bottlenecks. The alliance between Rayls and Animoca is set to redefine that model by establishing a decentralized, transparent alternative, which ensures various physical assets run on-chain where they can be traded 24/7, with better cost-effectiveness and greater flexibility to investors worldwide.   Rayls Labs, a blockchain network that unifies banks and institutions and blends TradFI and DeFi, today announced a strategic partnership with Animoca Brands, a digital asset platform and tokenization pioneer. According to the announcement disclosed today, the two decentralized networks are collaborating to accelerate the adoption and accessibility of tokenized real-world assets (RWAs). Powered by its native RLS token, Rayls is a blockchain ecosystem that connects traditional finance and decentralized finance by facilitating secure and regulated asset tokenization and cross-border digital assets settlements for institutions. It enables institutions to tokenize assets on permissioned private chains while facilitating settlements on its public blockchain. Through this approach, Rayls helps institutions tap into decentralized liquidity securely using its privacy-preserving and compliant infrastructure. We’re excited to announce a strategic partnership with @animocabrands to accelerate the global adoption of tokenized real-world assets.By combining Rayls’ institutional-grade settlement and privacy infrastructure with Animoca Brands’ expansive network, we’re unlocking a… pic.twitter.com/6jg54fJk4d— Rayls (@RaylsLabs) December 2, 2025 Rayls and Animoca Pioneering the Next Wave of RWA Markets The collaboration marks a significant milestone in advancing institutional-level RWA tokenization in the decentralized landscape. With the alliance, Rayls and Animoca aim to disrupt centralized traditional financial markets by scaling 24/7 trading of RWAs on-chain with transparency, lower costs, and international investment access. Based on the MOU formalized today, the partnership facilitated the integration of Animoca Brands’ vast network of digital asset investments and partnerships across the Web3 space with Rayls’ blockchain infrastructure to scale tokenization of a wide range of physical assets on a global scale. As per the announcement, Animoca will help identify asset classes and suitable issuers for RWAs on Rayls’ platform. On the other hand, with its compliant and privacy-focused blockchain infrastructure that enables RWAs tokenization and cross-border payments, Rayls is set to offer safe multichain settlement rails, data protection safeguards, and digital interfaces that enable interoperable, regulated asset management. Also, NUVA, a chain-agnostic vault marketplace, will function as a platform for distributing tokenized assets created on Rayls’ platform, according to the announcement.  Rise of RWAs: Disrupting Centralized Markets with Innovative Technology  By harnessing Rayls’ cutting-edge blockchain infrastructure and Animoca’s deep knowledge in DeFi solutions, the collaboration is equipped to connect greater real-world assets with blockchain networks, providing a revolutionary approach to liquidity management and financial inclusion. The alliance tackles one of the most standing challenges in the tokenization sector: market accessibility. Accessing high-value assets such as real estate and many others is still not easy for most investors, as centralized intermediaries add barriers associated with costs and bottlenecks. The alliance between Rayls and Animoca is set to redefine that model by establishing a decentralized, transparent alternative, which ensures various physical assets run on-chain where they can be traded 24/7, with better cost-effectiveness and greater flexibility to investors worldwide.  

Rayls and Animoca Brands Partner to Accelerate Tokenized Real-World Assets Adoption Worldwide

orbs world 2

Rayls Labs, a blockchain network that unifies banks and institutions and blends TradFI and DeFi, today announced a strategic partnership with Animoca Brands, a digital asset platform and tokenization pioneer. According to the announcement disclosed today, the two decentralized networks are collaborating to accelerate the adoption and accessibility of tokenized real-world assets (RWAs).

Powered by its native RLS token, Rayls is a blockchain ecosystem that connects traditional finance and decentralized finance by facilitating secure and regulated asset tokenization and cross-border digital assets settlements for institutions. It enables institutions to tokenize assets on permissioned private chains while facilitating settlements on its public blockchain. Through this approach, Rayls helps institutions tap into decentralized liquidity securely using its privacy-preserving and compliant infrastructure.

Rayls and Animoca Pioneering the Next Wave of RWA Markets

The collaboration marks a significant milestone in advancing institutional-level RWA tokenization in the decentralized landscape. With the alliance, Rayls and Animoca aim to disrupt centralized traditional financial markets by scaling 24/7 trading of RWAs on-chain with transparency, lower costs, and international investment access.

Based on the MOU formalized today, the partnership facilitated the integration of Animoca Brands’ vast network of digital asset investments and partnerships across the Web3 space with Rayls’ blockchain infrastructure to scale tokenization of a wide range of physical assets on a global scale.

As per the announcement, Animoca will help identify asset classes and suitable issuers for RWAs on Rayls’ platform. On the other hand, with its compliant and privacy-focused blockchain infrastructure that enables RWAs tokenization and cross-border payments, Rayls is set to offer safe multichain settlement rails, data protection safeguards, and digital interfaces that enable interoperable, regulated asset management.

Also, NUVA, a chain-agnostic vault marketplace, will function as a platform for distributing tokenized assets created on Rayls’ platform, according to the announcement. 

Rise of RWAs: Disrupting Centralized Markets with Innovative Technology 

By harnessing Rayls’ cutting-edge blockchain infrastructure and Animoca’s deep knowledge in DeFi solutions, the collaboration is equipped to connect greater real-world assets with blockchain networks, providing a revolutionary approach to liquidity management and financial inclusion. The alliance tackles one of the most standing challenges in the tokenization sector: market accessibility.

Accessing high-value assets such as real estate and many others is still not easy for most investors, as centralized intermediaries add barriers associated with costs and bottlenecks. The alliance between Rayls and Animoca is set to redefine that model by establishing a decentralized, transparent alternative, which ensures various physical assets run on-chain where they can be traded 24/7, with better cost-effectiveness and greater flexibility to investors worldwide.  

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