Ripple Partners with Bahrain Fintech Bay to Boost Blockchain Growth

TheCryptoTimesОпубліковано о 2025-10-09Востаннє оновлено о 2025-10-09

Ripple has partnered with Bahrain Fintech Bay (BFB), a leading fintech incubator in the Kingdom of Bahrain. The collaboration focuses on exploring blockchain applications, testing pilot projects, and supporting education in digital finance within Bahrain’s fintech sector.

In a press release, Ripple said the collaboration will help drive the Kingdom’s digital asset ecosystem through initiatives such as proof-of-concept development, cross-border payments, and tokenization solutions. The two entities will also co-host educational programs and industry events to foster innovation and connect global players with Bahrain’s local fintech environment.

Reece Merrick, Managing Director for the Middle East and Africa at Ripple, said, “The Kingdom of Bahrain has emerged as an early adopter of blockchain technology and was one of the first jurisdictions globally to regulate crypto assets.” He added that Ripple aims to strengthen Bahrain’s local blockchain industry while introducing its digital asset custody solution and its upcoming stablecoin, Ripple USD (RLUSD), to financial institutions in the region.

Bahrain strengthens its fintech leadership

Suzy Al Zeerah, Chief Operating Officer at Bahrain Fintech Bay, noted that the partnership underscores the Kingdom’s growing influence in digital finance. “Bahrain has long been recognized as a financial services hub, and today this legacy is being further enhanced in the digital assets and blockchain space,” she said. She added that the collaboration will create new opportunities for pilots, training, and advanced fintech solutions, shaping the future of finance.

Besides this partnership, Ripple is also participating in Fintech Forward 2025, a global event in Sakhir that gathers leaders from fintech, banking, and government to discuss the future of digital finance. Ripple’s expanding influence follows its DFSA license approval earlier this year, making it the first blockchain payments provider regulated by the Dubai Financial Services Authority.

Global recognition and expansion

Ripple is gaining momentum worldwide. Its Managing Director for the UK and Europe, Cassie Craddock, recently celebrated Ripple’s win at the PAY360 Awards for “Best Initiative with Digital Currencies or Assets.” Moreover, Securitize noted that Ripple’s technology will enable tokenization of major funds, including BlackRock’s and VanEck’s, allowing on-chain redemptions via RLUSD.

According to CoinMarketCap, as of writing, Ripple’s native token XRP was trading at $2.80 with a 24-hour trading volume of about $4.9 billion; the token is down 2.06% in the last 24 hours.

Ripple’s partnership in Bahrain highlights its focus on linking traditional finance with blockchain, helping the region explore digital asset use more deeply.

Also Read: Etherealize CEO Vivek Raman Explains L2’s Edge Over L1


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