The U.S. Securities and Exchange Commission (SEC) has approved a proposal by NASDAQ to introduce tokenized stocks and exchange-traded funds (ETFs), marking a majorThe U.S. Securities and Exchange Commission (SEC) has approved a proposal by NASDAQ to introduce tokenized stocks and exchange-traded funds (ETFs), marking a major

US SEC Approves Tokenized Stocks on NASDAQ

2026/03/19 22:16
3 min read
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The U.S. Securities and Exchange Commission (SEC) has approved a proposal by NASDAQ to introduce tokenized stocks and exchange-traded funds (ETFs), marking a major step in integrating blockchain technology into traditional financial systems. The decision is based on a rule filed in September 2025, which outlines the framework for launching tokenized securities that are fully interchangeable with conventional shares.

This development is widely viewed as a turning point, signaling that blockchain is transitioning from a niche innovation to a foundational component of global financial infrastructure. The approval reflects growing institutional confidence in tokenization as a viable mechanism for modernizing capital markets.

Scope of Tokenized Offerings

At launch, the initiative is expected to include stocks from the Russell 1000 Index, covering major corporations such as Nvidia and Tesla. In addition, widely traded ETFs linked to benchmark indices like the S&P 500 and the Nasdaq-100 will also be made available in tokenized form.

A defining feature of this system is that tokenized securities will operate within the same order book as traditional equities. They will share identical ticker symbols and CUSIP numbers, ensuring consistency in pricing, execution priority, and market behavior. Investors will retain full ownership rights, including eligibility for dividends and participation in corporate voting processes.

Settlement and Infrastructure Development

Despite the introduction of blockchain-based assets, the clearing and settlement process will continue to be handled through the Depository Trust Company under its pilot tokenization framework. This hybrid approach is intended to maintain stability while gradually integrating new technology into existing systems.

The underlying infrastructure supporting tokenization is expected to become operational in the second half of 2026. Following this, NASDAQ is anticipated to provide at least 30 days’ notice before enabling live trading of tokenized securities.

Expanding Global Access

To broaden access to these assets, NASDAQ has partnered with Kraken, a major cryptocurrency exchange. This collaboration is aimed at distributing tokenized stocks to international investors, particularly across Europe and other global markets. The move highlights the potential of blockchain to facilitate cross-border investment opportunities with greater efficiency and accessibility.

Industry Implications and Market Impact

Market analysts specializing in real-world asset tokenization suggest that this initiative could unlock several transformative benefits. These include significantly faster settlement times, potentially reducing the traditional T+2 cycle to near-instant T+0 execution. Additionally, tokenization may enable continuous, around-the-clock trading, fractional ownership of high-value assets, and programmable corporate actions that can be automated through smart contracts.

The broader financial industry has already begun exploring similar innovations, with tokenized government securities and funds managed by firms like BlackRock paving the way. The inclusion of blue-chip equities represents a natural progression in this evolution.

Feedback from the digital asset community has been strongly supportive. Industry participants have indicated that the approval represents a pivotal milestone for tokenization, reinforcing the transition from experimental use cases to widespread adoption within a regulated traditional finance environment.

A Shift Toward Tokenized Finance

The SEC’s decision underscores a broader shift toward the convergence of blockchain technology and established financial markets. By enabling tokenized versions of widely traded securities, regulators and exchanges are laying the groundwork for a more efficient, transparent, and accessible financial ecosystem.

As the rollout progresses, the initiative is expected to serve as a model for future innovations in capital markets, potentially redefining how assets are issued, traded, and settled on a global scale.

The post US SEC Approves Tokenized Stocks on NASDAQ appeared first on CoinTrust.

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