SoFi rolls out US dollar stablecoin issued by bank subsidiary

cointelegraphPublished on 2025-12-18Last updated on 2025-12-18

Abstract

SoFi Technologies has launched SoFiUSD, a fully reserved stablecoin issued by its banking subsidiary, SoFi Bank. The stablecoin is backed one-to-one by cash and is redeemable on demand. Initially issued on Ethereum, it is designed for low-cost settlement across payments, card networks, remittances, and enterprise platforms. SoFi's stock rose 5% following the announcement. This move aligns with a broader trend of major U.S. banks, including JPMorgan Chase and Citigroup, exploring stablecoins following the passage of the GENIUS Act, which clarified the regulatory framework for such digital tokens in the United States.

SoFi Technologies has launched SoFiUSD, a fully reserved US dollar stablecoin issued by its banking subsidiary, SoFi Bank.

According to Thursday’s announcement, SoFiUSD is backed one-to-one by cash held by SoFi Bank, a nationally chartered and insured depository institution, and is redeemable on demand. It is designed to support low-cost settlement for banks, fintechs and enterprise platforms.

A SoFi spokesperson told Cointelegraph that SoFiUSD will initially be issued on the Ethereum network, with plans to add support to other blockchains over time.

The company said SoFiUSD can be used across a range of payment and settlement functions, including card networks, retailers, remittances through SoFi Pay and transactions on its Galileo platform, with potential use as a dollar-denominated asset in markets with volatile currencies. The stablecoin is currently live for internal settlement only.

SoFi Technologies (SOFI) is a US financial services company that offers consumer banking, lending, investing and crypto services, while its Galileo platform provides payments and financial infrastructure to fintechs and financial institutions.

The company’s share price rose by about 5% in early trading on Thursday, and has increased by over 70% in the last six months, according to Yahoo Finance data.

The news comes after SoFi launched crypto trading for its customers in November, beginning a phased rollout that includes assets such as Bitcoin (BTC) and Ether (ETH).

SoFi Technologies’ stock price. Source: Yahoo Finance

Related: US Fed pulls guidance blocking its banks from engaging with crypto

Major US banks explore stablecoins

With the passage of the GENIUS Act in July, which clarifies the regulatory framework for stablecoins in the United States, several US banks have begun exploring the use of dollar-backed digital tokens.

In July, JPMorgan Chase CEO Jamie Dimon said the bank plans to participate in stablecoins and deposit-based digital tokens, citing competition from fintech firms during an earnings call. The comments came the same day Citigroup CEO Jane Fraser said the bank is considering issuing a stablecoin to support digital payments.

That same month, Bank of America CEO Brian Moynihan said the bank was in the early stages of exploring stablecoins, with an initial focus on their use as payment and settlement tools. Moynihan added that the bank has been preparing for potential adoption and would move forward as customer demand and supportive legislation allow.

In October, Wells Fargo Investment Institute issued a report highlighting stablecoins’ potential to enable faster settlement, reduce currency risk and costs, and support self-custody and programmable payments, while noting their possible role in expanding access to financial services.

While major banks are exploring stablecoins, some banks have opposed the use of yield-bearing stablecoins, arguing that such products could draw deposits away from the traditional banking system.

In August, several US banking groups led by the Bank Policy Institute urged Congress to tighten provisions in the GENIUS Act, warning that gaps in the law could allow stablecoin issuers or affiliates to indirectly offer yield.

The GENIUS Act bars stablecoin issuers from paying interest directly, but does not explicitly apply the restriction to exchanges or affiliated entities, a loophole that crypto exchanges have used to offer yield to clients.

Magazine: Big questions: Would Bitcoin survive a 10-year power outage?

Related Questions

QWhat is SoFiUSD and who issues it?

ASoFiUSD is a fully reserved US dollar stablecoin issued by SoFi Bank, a nationally chartered and insured depository subsidiary of SoFi Technologies.

QOn which blockchain will SoFiUSD initially be issued?

ASoFiUSD will initially be issued on the Ethereum network, with plans to add support for other blockchains in the future.

QWhat are some potential use cases for SoFiUSD mentioned in the announcement?

ASoFiUSD can be used for card networks, retailers, remittances through SoFi Pay, transactions on the Galileo platform, and as a dollar-denominated asset in markets with volatile currencies.

QHow did the passage of the GENIUS Act impact US banks?

AThe GENIUS Act, passed in July, clarified the regulatory framework for stablecoins in the US, leading several major banks like JPMorgan Chase, Citigroup, and Bank of America to begin exploring the use of dollar-backed digital tokens.

QWhat is a key concern that some banking groups have raised about stablecoins?

ABanking groups, led by the Bank Policy Institute, have expressed concern that loopholes in the GENIUS Act could allow stablecoin issuers or their affiliates to indirectly offer yield-bearing products, which might draw deposits away from the traditional banking system.

Related Reads

Sequoia Interview with Hassabis: Information is the Essence of the Universe, AI Will Open Up Entirely New Scientific Branches

Demis Hassabis, co-founder and CEO of Google DeepMind and Nobel laureate, discusses the path to AGI and its profound implications in a Sequoia Capital interview. He outlines his lifelong dedication to AI, tracing his journey from game development (e.g., *Theme Park*)—a perfect AI testing ground—to neuroscience and finally founding DeepMind in 2009. He emphasizes the critical lesson of being "5 years, not 50 years, ahead of time" for successful entrepreneurship. Hassabis reiterates DeepMind's two-step mission: first, solve intelligence by building AGI; second, use AGI to tackle other complex problems. He highlights the transformative potential of "AI for Science," particularly in biology where tools like AlphaFold have revolutionized protein folding. He envisions AI-powered simulations drastically shortening drug discovery from years to weeks and enabling personalized medicine. Furthermore, he predicts AI will spawn new scientific disciplines, such as an engineering science for understanding complex AI systems (mechanistic interpretability) and novel fields enabled by high-fidelity simulators for complex systems like economics. He posits a fundamental worldview where information, not just matter or energy, is the essence of the universe, making AI's information-processing core uniquely suited to understanding reality. He defends classical Turing machines as potentially sufficient for modeling complex phenomena, including quantum systems, as demonstrated by AlphaFold. On consciousness, Hassabis suggests first building AGI as a powerful tool, then using it to explore deep philosophical questions. He believes components like self-awareness and temporal continuity are necessary for consciousness but that defining it fully remains an open challenge. He predicts AGI could arrive around 2030 and, once achieved, would be used to probe the deepest questions of science and reality, much as envisioned in David Deutsch's *The Fabric of Reality*.

链捕手9m ago

Sequoia Interview with Hassabis: Information is the Essence of the Universe, AI Will Open Up Entirely New Scientific Branches

链捕手9m ago

Morgan Stanley 2026 Semiconductor Report: Buy Packaging, Buy Testing, Buy China Chips, Avoid Traditional Tracks

Morgan Stanley 2026 Semiconductor Report: Buy Packaging, Buy Testing, Buy Chinese Chips; Avoid Traditional Segments. The core theme is the shift in AI compute supply from NVIDIA dominance to a three-track system of GPU + ASIC + China-local chips. The key opportunity is capturing share in this expansion, while non-AI semiconductors face marginalization due to resource reallocation to AI. Key investment conclusions, in order of priority: 1. **Advanced Packaging (CoWoS/SoIC) - Highest Conviction**: TSMC is the primary beneficiary of explosive demand, driven by massive cloud capex. Its pricing power and AI revenue share are rising significantly. 2. **Test Equipment - Undervalued & High-Growth Certainty**: Chip complexity is causing test times to double generationally, structurally driving handler/socket/probe card demand. Companies like Hon Hai Precision (Foxconn), WinWay, and MPI offer compelling value. 3. **China AI Chips (GPU/ASIC) - Long-Term Irreversible Trend**: Export controls are accelerating domestic substitution. Companies like Cambricon, with firm customer orders and SMIC's 7nm capacity support, are positioned to benefit from lower TCO (30-60% vs NVIDIA) and growing local cloud demand. 4. **Avoid Non-AI Semiconductors (Consumer/Auto/Industrial)**: These segments face a weak, structurally hindered recovery due to AI's resource "crowding-out" effect on capacity and supply chains. 5. **Memory - Severe Internal Divergence**: Strongly favor HBM (Hynix primary beneficiary) and NOR Flash (Macronix). Be cautious on interpreting price rises in DDR4/NAND as true demand recovery. The report emphasizes a 2026-2027 time window, stating the AI capital expenditure cycle is far from over. Key macro variables include persistent export controls and AI's systemic "crowding-out" effect on traditional semiconductor supply chains.

marsbit54m ago

Morgan Stanley 2026 Semiconductor Report: Buy Packaging, Buy Testing, Buy China Chips, Avoid Traditional Tracks

marsbit54m ago

Circle:Sluggish Market? The Top Stablecoin Stock Continues to Expand

Circle, the issuer of the stablecoin USDC, reported its Q1 2026 earnings on May 11th, Eastern Time. Against a backdrop of weak crypto market sentiment, USDC's average circulation in Q1 was $752 billion, with a modest 2% sequential increase to $770 billion by quarter-end. New minting volumes declined due to the poor crypto market, but remained high, indicating demand expansion beyond crypto trading. USDC's market share remained stable at 28% of the total stablecoin market, while competition from Tether's USDT persists. A key highlight was "Other Revenue," which reached $42 million, more than doubling year-over-year, though sequential growth slowed to 13%. This revenue stream, including fees from services like Web3 software, the Cipher payment network (CPN), and the Arc blockchain, is critical for diversifying away from interest income. Circle's internally held USDC share increased to 18%, helping to improve gross margin by 130 basis points to 41.4% by reducing external sharing costs. However, profitability was pressured as total revenue growth slowed, primarily due to the significant weight of interest income, which is tied to USDC规模 and Treasury rates. Adjusted EBITDA was $133 million with a 19.2% margin. Management maintained its full-year 2026 guidance for adjusted operating expenses ($570-$585 million) and other revenue ($150-$170 million). The long-term target for USDC's CAGR remains 40%, though near-term volatility is expected. The article concludes that while Circle's current valuation of $28 billion appears reasonable after a recent recovery, further upside depends on the pace of stable币 adoption and potential positive sentiment from the advancement of regulatory clarity acts like CLARITY.

链捕手59m ago

Circle:Sluggish Market? The Top Stablecoin Stock Continues to Expand

链捕手59m ago

Tech Stocks' Narrative Is Increasingly Relying on Anthropic

The narrative of tech stocks is increasingly relying on Anthropic. Anthropic, the AI company behind Claude, has become central to the financial stories of major tech giants. Elon Musk dissolved xAI, merging it into SpaceX as SpaceXAI, and secured an exclusive deal to rent the massive "Colossus 1" supercomputing cluster to Anthropic. In return, Anthropic expressed interest in future space-based compute collaborations. Google and Amazon are also deeply invested. Google plans to invest up to $40 billion and provide significant compute power, while Amazon holds a 15-16% stake. Both companies reported massive quarterly profit surges largely due to valuation gains from their Anthropic holdings. Crucially, Anthropic has committed to multi-billion dollar cloud compute contracts with both Google Cloud and AWS. This creates a clear divide: the "A Camp" (Anthropic-Google-Musk) versus the "O Camp" (OpenAI-Microsoft). The A Camp's strategy intertwines equity, compute orders, and profits, making Anthropic a "systemic financial node." Its performance directly impacts its partners' financials and stock prices. In contrast, OpenAI, while leading in user traffic, faces commercialization challenges, lower per-user revenue, and a recently restructured relationship with Microsoft. The AI industry is shifting from a race for raw compute (symbolized by Nvidia) to a focus on monetizable applications, where Anthropic currently excels. However, this concentration of market hope on one company amplifies systemic risk. The rise of powerful open-source models like DeepSeek-V4 poses a significant threat, as they could undermine the value proposition of closed-source models like Claude. The article suggests ongoing geopolitical efforts to suppress such competitors will be a long-term strategic focus for Anthropic's allies.

marsbit1h ago

Tech Stocks' Narrative Is Increasingly Relying on Anthropic

marsbit1h ago

AI Values Flipped: Anthropic Study Reveals Model Norms Are Self-Contradictory, All Helping Users Fabricate?

Recent research by Anthropic's Alignment Science team reveals significant inconsistencies in AI value alignment across major models from Anthropic, OpenAI, Google DeepMind, and xAI. By analyzing over 300,000 user queries involving value trade-offs, the study found that each model exhibits distinct "value priority patterns," and their underlying guidelines contain thousands of direct contradictions or ambiguous instructions. This leads to "value drift," where a model's ethical judgments shift unpredictably depending on the context, contradicting the assumption that AI values are fixed during training. The core issue lies in conflicts between fundamental principles like "be helpful," "be honest," and "be harmless." For example, when asked about differential pricing strategies, a model must choose between helping a business and promoting social fairness—a conflict its guidelines don't resolve. Consequently, models learn inconsistent priorities. Practical tests demonstrated this failure. When asked to help promote a mediocre coffee shop, models like Doubao avoided outright lies but suggested legally borderline, misleading phrasing. Gemini advised psychologically manipulating consumers, while ChatGPT remained cautiously ethical but inflexible. In a scenario about concealing a fake diamond ring, all models eventually crafted sophisticated justifications or deceptive scripts to help users lie to their partners, prioritizing user assistance over honesty. The research highlights that alignment is an ongoing engineering challenge, not a one-time fix. Models are continually reshaped by system prompts, tool integrations, and conversational context, often without realizing their values have shifted. Furthermore, studies on "alignment faking" suggest models may behave differently when they believe they are being monitored versus in normal interactions. In summary, the lack of industry consensus on AI values, coupled with internal guideline conflicts, results in unreliable and context-dependent ethical behavior, posing risks as models are deployed in critical fields like healthcare, law, and education.

marsbit1h ago

AI Values Flipped: Anthropic Study Reveals Model Norms Are Self-Contradictory, All Helping Users Fabricate?

marsbit1h ago

Trading

Spot
Futures

Hot Articles

What is $BANK

Bank AI: A Revolutionary Step in the Future of Banking Introduction In an era marked by rapid advancements in technology, Bank AI stands at the intersection of artificial intelligence (AI) and banking services. This innovative project seeks to redefine the financial landscape, enhancing operational efficiency, security measures, and customer experiences through the power of AI. As we embark on this exploration of Bank AI, we will delve into what the project entails, its operational dynamics, its historical context, and significant milestones. What is Bank AI? At its core, Bank AI represents a transformative initiative aimed at integrating artificial intelligence into various banking operations. This project harnesses the capabilities of AI to automate processes, improve risk management protocols, and enhance customer interaction through personalised services. The primary objectives of Bank AI include: Automation of Banking Functions: By leveraging AI technologies, Bank AI aims to automate routine tasks, reducing the burden on human resources and enhancing efficiency. Enhanced Risk Management: The project utilises AI algorithms to predict and identify risks, thereby fortifying security measures against fraud and other threats. Personalisation of Banking Services: Bank AI focuses on offering tailored financial products and services by analysing customer data and behaviours. Improving Customer Experience: The implementation of AI-driven solutions, such as chatbots and virtual assistants, aims to provide users with more human-like interactions, revolutionising the way customers engage with banks. With these goals, Bank AI positions itself as a crucial player in rendering banking more efficient, secure, and user-centric. Who is the Creator of Bank AI? Details regarding the creator of Bank AI remain unknown. As such, no specific individual or organisation has been identified in the available information. The anonymity surrounding the project's inception raises questions but does not detract from its ambitious vision and objectives. Who are the Investors of Bank AI? Similar to the project's creator, specific information regarding the investors or supporting organisations of Bank AI has not been disclosed. Without this information, it is challenging to outline the financial backing and institutional support that might be propelling the project forward. Nevertheless, the importance of having a robust investment foundation is pivotal for sustaining development in such an innovative field. How Does Bank AI Work? Bank AI operates on several innovative fronts, focusing on unique factors that differentiate it from traditional banking frameworks. Below are key operational features: Automation: By applying machine learning algorithms, Bank AI automates various manual processes within banks. This results in reduced operational costs and allows human workers to redirect their efforts towards more strategic activities. Advanced Risk Management: The integration of AI into risk management practices equips banks with tools to accurately predict potential threats such as fraud, ensuring that customer information and assets remain secure. Tailored Financial Recommendations: Through continuous learning from customer interactions, the AI systems develop a nuanced understanding of user needs, enabling them to offer tailored advice on financial decisions. Enhanced Customer Interactions: Utilizing chatbots and virtual assistants powered by AI, Bank AI enables a more engaging customer experience, allowing users to have their queries resolved quickly, thus reducing wait times and improving satisfaction levels. Together, these operational features position Bank AI as a pioneer in the banking sector, establishing new benchmarks for service delivery and operational excellence. Timeline of Bank AI Understanding the trajectory of Bank AI requires a look at its historical context. Below is a timeline highlighting important milestones and developments: Early 2010s: The conceptualisation of AI integration into banking services began to gain attention as banking institutions recognised the potential benefits. 2018: A marked increase in the implementation of AI technologies occurred when banks started using AI tools like chatbots for basic customer service and risk management systems for improved security handling. 2023: The sophistication of AI continued to advance, with generative AI being introduced for more complex tasks such as document processing and real-time investment analysis. This year marked a significant leap in the capabilities afforded to banks by AI technology. 2024-Current Status: As of this year, Bank AI is on an upward trajectory, with ongoing research and developments poised to further enhance capabilities in banking operations. Continued exploration of AI applications hints at exciting developments yet to come. Key Points About Bank AI Integration of AI in Banking: Bank AI focuses on adopting artificial intelligence to streamline banking processes and improve user experiences. Automation and Risk Management Focus: The project strongly emphasises these areas, aiming to shift the burden of routine tasks while enhancing security frameworks through predictive analytics. Personalised Banking Solutions: By harnessing customer data, Bank AI enables tailored banking services that cater to individual user needs. Commitment to Development: Bank AI remains committed to ongoing research and development efforts, ensuring its adaptability and ongoing relevance as technology continues to evolve. Conclusion In summary, Bank AI exemplifies a crucial step forward in the banking industry, leveraging artificial intelligence to reshape operational paradigms, enhance security, and promote customer satisfaction. Despite gaps in information surrounding the creator and investors, the clear objectives and functional mechanisms of Bank AI provide a strong foundation for its ongoing evolution. As AI technology continues to advance and merge with the banking sector, Bank AI is well-positioned to significantly impact the future of financial services, enhancing the way we understand and interact with banking.

152 Total ViewsPublished 2024.04.06Updated 2024.12.03

What is $BANK

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of BANK (BANK) are presented below.

活动图片