The collaboration between Calastone and Polygon marks a turning point in the global financial and trading industry.The collaboration between Calastone and Polygon marks a turning point in the global financial and trading industry.

Calastone and Polygon: The Revolution of Fund Distribution Through Blockchain

polygon calastone tokenised distribution

The collaboration between Calastone and Polygon marks a turning point in the global financial industry. Calastone, the world’s largest network for fund distribution, has announced the integration of its Tokenised Distribution solution with the Polygon network, a leader in scalable blockchain infrastructure on Ethereum. 

This partnership brings institutional-scale fund distribution directly on-chain, paving the way for a new era of efficiency, transparency, and accessibility in financial markets.

Calastone: A Global Network Serving Innovation

With over 4,500 financial institutions connected across 58 markets and more than 250 billion pounds processed each month, Calastone stands as the cornerstone of international fund distribution. The company’s mission is clear: to reduce complexity, risk, and costs in the investment industry, thereby offering greater value to investors. The new Tokenised Distribution solution allows fund share classes to operate directly on the blockchain, drastically reducing settlement times and operational costs for asset managers, without compromising established administrative processes.

Polygon: the ideal blockchain for institutional finance

Polygon has established itself as the leading scalability network for Ethereum for payments and real world assets (RWA). With transaction fees below a cent and settlement times under five seconds, Polygon provides the necessary infrastructure to support high-volume operations typical of major financial players. The network has already been chosen for tokenization pilot projects by giants like BlackRock and significant partners in the real estate sector, confirming its reliability and scalability.

How Tokenised Distribution Works on Polygon

The integration allows Calastone to connect its blockchain-based distribution platform with Polygon’s scalable infrastructure. This enables the management of fund distribution entirely on-chain, while maintaining compatibility with traditional administrative processes. The result is a significant reduction in settlement times and operational costs, which are crucial elements for asset managers operating on a global scale.

Efficiency, Transparency, and Security

The Tokenised Distribution solution ensures greater efficiency through process automation and the reduction of intermediaries. The inherent transparency of the blockchain facilitates regulatory compliance and enhances the security of operations, essential elements to meet the standards required by institutional operators.

A New Paradigm for Fund Distribution

According to Simon Keefe, Head of Digital Solutions at Calastone, “markets demand more efficient and transparent infrastructures, and blockchain is ready to deliver on a large scale.” Thanks to Polygon, Calastone’s Tokenised Distribution platform can now seamlessly connect with the on-chain ecosystem, merging Calastone’s global network with the benefits of blockchain to streamline fund distribution.

Global Access and Breaking Down Barriers

The integration opens new opportunities for cross-border access to funds and the creation of digital-first investor pools. Asset managers can reach global investors without the friction caused by the presence of multiple intermediaries. On-chain transparency also supports the compliance and security requirements necessary for institutional operations.

A Historic Moment for Onchain Finance

Marc Boiron, CEO of Polygon Labs, emphasizes how “the reach and presence of Calastone make this moment a milestone for onchain finance.” Polygon provides the scalability, EVM compatibility, and cost efficiency that the world’s leading institutions need to operate on-chain without compromising on trust or performance.

From Experimentation to Large-Scale Production

According to Calastone, a rapid expansion from the current pilot phase to large-scale production is expected as more managers and investors move towards on-chain distribution. The connectivity between traditional funds and on-chain liquidity opens access to both existing investor bases and new segments globally.

Polygon: the reference network for institutional adoption of blockchain

The announcement of the integration with Calastone comes as Polygon continues to strengthen its presence in the institutional sector. The network is establishing itself as the go-to infrastructure for payments thanks to fast, cost-effective, and reliable value transfers. Recent integrations with major financial institutions and payment service providers solidify Polygon as the preferred choice for blockchain adoption in the institutional realm.

Future Prospects and Continuous Innovation

The Tokenised Distribution solution is already operational, with additional features and network integrations planned through 2025. The goal is to catalyze broader adoption of tokenization in the financial services industry, demonstrating how this technology can enhance efficiency and trust in global markets.

Calastone and Polygon Labs: Leaders in Innovation

Calastone confirms itself as the leading global network for fund distribution, with a network connecting over 4,500 clients in 58 countries and territories, processing more than 40,000 trading connections each month. Polygon Labs, on its part, continues to develop cutting-edge blockchain solutions, such as the Proof-of-Stake network and the Agglayer protocol, contributing to the development of zero-knowledge technologies and incubating innovative projects in the Web3 landscape.

Conclusion: Global Finance Enters the Onchain Era

The integration between Calastone and Polygon represents one of the first large-scale examples of blockchain use in fund distribution, marking the beginning of a new era for global finance. The efficiency, transparency, and security offered by on-chain technology promise to redefine industry standards, opening new opportunities for asset managers, investors, and financial institutions worldwide.

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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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