CoinFound × OSL Research Launches Stablecoin Research Collaboration, First Phase Focuses on USDGO

marsbitОпубликовано 2026-04-09Обновлено 2026-04-09

Введение

CoinFound and OSL Research have launched a stablecoin research partnership, with the initial phase centered on USDGO. The collaboration will conduct thematic research on the USDGO stablecoin ecosystem, utilizing on-chain data analysis and market structure observations. The study aims to explore the development path of stablecoins within the digital financial system and their application potential in trading, settlement, and on-chain financial scenarios. As stablecoins increasingly serve as a bridge between traditional finance and on-chain financial infrastructure, there is growing demand for research into their issuance mechanisms, liquidity structures, and ecosystem synergies. CoinFound and OSL Research will collaborate on building research frameworks and sharing industry insights. Their joint efforts will include co-developing research content, establishing data analysis frameworks, and publishing findings through reports, market observations, and thematic analyses. OSL Research, part of the OSL Group, focuses on in-depth digital asset research and provides forward-looking market insights. CoinFound specializes in Web3 data and research, offering analysis of asset structures and capital flow trends through on-chain analytics. Together, they aim to advance stablecoin research and provide clearer industry benchmarks for the digital asset market.

As the first research direction of the collaboration, both parties will conduct a thematic study on the USDGO stablecoin ecosystem. Through on-chain data analysis and market structure observation, they will explore the development path of stablecoins in the digital financial system and their application potential in trading, settlement, and on-chain financial scenarios.

As stablecoins increasingly become a critical bridge connecting the traditional financial system with on-chain financial infrastructure, market demand for research on stablecoin issuance mechanisms, liquidity structures, and ecosystem synergy continues to grow. Against this backdrop, the collaboration between CoinFound and OSL Research will focus on building a joint research framework and delivering industry insights. Both parties will cooperate in co-creating research content and data analysis frameworks, releasing findings to the market through joint research reports, industry observations, and thematic analyses.

OSL Research, a subsidiary of the OSL Group, specializes in in-depth research on the digital asset industry, providing forward-looking market insights.

CoinFound focuses on Web3 data and research, offering insights into asset structures and capital flows through on-chain analysis and industry research.

Both parties aim to promote the continuous deepening of stablecoin-related research through this collaboration and provide clearer industry references for the digital asset market.

Связанные с этим вопросы

QWhat is the primary focus of the initial research collaboration between CoinFound and OSL Research?

AThe initial research will focus on the USDGO stablecoin ecosystem, examining its development path in the digital financial system and its application potential in trading, settlement, and on-chain financial scenarios.

QWhy is there an increasing market demand for research on stablecoins according to the article?

ABecause stablecoins are increasingly becoming a critical bridge connecting the traditional financial system with on-chain financial infrastructure, raising the need for studies on their issuance mechanisms, liquidity structures, and ecological synergy.

QWhat specific areas will the CoinFound and OSL Research collaboration cover in terms of methodology?

AThe collaboration will cover joint building of research frameworks and data analysis frameworks, utilizing on-chain data analysis and market structure observation.

QWhat are the respective research specialties of OSL Research and CoinFound as described in the article?

AOSL Research focuses on in-depth research of the digital asset industry and provides forward-looking market insights. CoinFound specializes in Web3 data and research, offering insights into asset structures and fund flows through on-chain analysis and industry research.

QWhat is the ultimate goal of the research partnership between CoinFound and OSL Research?

AThe goal is to promote the continued deepening of stablecoin-related research and provide clearer industry references for the digital asset market.

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