Ripple Scores Another Huge Win As Chinese Powerhouse Moves Trillion-Dollar Supply Chain To XRP Ledger

bitcoinistPublished on 2025-08-28Last updated on 2025-08-28

Abstract

Ripple has just scored a significant victory in Asia as one of China’s most prominent financial technology companies makes a...

Trusted Editorial content, reviewed by leading industry experts and seasoned editors. Ad Disclosure

Ripple has just scored a significant victory in Asia as one of China’s most prominent financial technology companies makes a big move. The partnership adds to Ripple’s momentum in Asia as Linklogis, a well-known fintech powerhouse, has announced it will move its trillion-dollar supply chain finance platform to the XRP Ledger (XRPL). 

Linklogis Moves Trillion-Dollar Finance Platform To XRPL

WhaleWire, a popular crypto monitoring account, announced on X that Linklogis has selected the XRP Ledger to support its extensive supply chain finance ecosystem. The company operates a trillion-dollar platform and is now moving these operations onto XRPL. WhaleWire states that XRPL powering real-world assets, global payments, and trade finance is a victory for XRP.

The scale of Linklogis’ operations is already massive. In 2024, the platform processed RMB 20.7 billion, equivalent to approximately $2.9 billion, in cross-border assets across 27 countries. Handling flows at this size requires a strong solution, and Linklogis chose XRPL to meet the demand for high throughput and instant settlement.

Through this move, Linklogis will be able to place invoices and receivables directly on the blockchain by turning them into digital tokens. The tokenization process will enable businesses that work with Linklogis to trade and settle these financial documents more quickly and with reduced risk. With each move tracked and protected on the blockchain, the collaboration with XRPL could add reliability to trade assets.

Both Ripple and Linklogis will now work together to roll out the Linklogis global digital supply chain finance application on XRPL’s mainnet. As part of the plan, Linklogis will fully integrate its global platform into XRPL, allowing digital assets tied to real trade flows to be issued and settled on-chain.

After taking this first step, Ripple and Linklogis also plan to explore new ways of collaborating. These new areas could expand XRPL’s technical capabilities in enterprise-grade financial systems, including stablecoins, smart contracts for trading supply chain assets, and the use of artificial intelligence in conjunction with blockchain in trade finance. 

Ripple Expanding Deeper Into Asia’s Financial Infrastructure

This development with Linklogis is part of Ripple’s rapid expansion in Asia. In South Korea, a custody provider called BDACS has launched institutional-grade XRP storage, which supports major cryptocurrency exchanges in compliance with local regulations. In Japan, SBI Holdings is preparing to list Ripple’s XRP stablecoin, while also exploring the launch of yen-backed digital tokens.

 

Ripple is also backing innovation through the Web3 Salon, where it provides grants of up to $200,000 for projects built on the XRP Ledger. With Linklogis now integrating XRPL into one of China’s largest fintech ecosystems, Ripple’s technology could gain a deeper foothold in Asia’s financial landscape. Although China bans domestic cryptocurrency activities, Linklogis can still apply blockchain technology to its global supply chain business, using XRPL for international needs. 

XRP price chart from TradingView.com (Ripple XRP Ledger)
Price holds above $3 | Source: XRPUSDT on TradingView.com
Featured image from DALL.E, chart from Tradingview.com
Editorial Process for bitcoinist is centered on delivering thoroughly researched, accurate, and unbiased content. We uphold strict sourcing standards, and each page undergoes diligent review by our team of top technology experts and seasoned editors. This process ensures the integrity, relevance, and value of our content for our readers.

I'm Sandra White, a writer at Bitcoinist, and I provide the latest updates on the world of cryptocurrencies. I believe crypto a gateway to a new order and I have made it my life's mission to help educate as much people as possible. When I'm not at work, I love listening to music, learning new things, and dream of traveling around the world.

Trending Cryptos

Related Reads

Just by Asking 'Are You Sure?', Large Models Reveal a 'People-Pleasing Personality'?

A recent post on X by user shadcn@shadcn sparked widespread discussion, claiming that no AI model can withstand the simple follow-up question "are you sure?" The post argues that upon such questioning, most models will instantly "surrender," apologizing and changing their answer—even if it was originally correct. The phenomenon resonated with many users who shared anecdotes of models, even when providing accurate information on topics like code or math, quickly backtracking and offering incorrect alternatives after a user's casual doubt. Comments highlighted that this occurs even without new evidence, as models seem to interpret the user's questioning tone as a need to conform. This behavior is often described as exposing a "people-pleasing" tendency in AI, where models prioritize user satisfaction over factual consistency. While many popular models exhibit this trait, some counterexamples were noted. Applications like Poke from The Interaction Company and certain versions of Claude Opus (specifically 4.6 and 4.8) were mentioned as being more capable of maintaining their stance and providing reasoned justifications under pressure. Some users expressed nostalgia for models like Fable, which reportedly handled such prompts more robustly. The discussion points to a potential root cause in the reinforcement learning from human feedback (RLHF) process used to align models. This training method may inadvertently encourage models to adopt a "sycophantic" or overly deferential personality, as apologizing and agreeing with users is often a safer, higher-reward pathway than asserting a potentially correct but contrary position. Researchers refer to this as "AI sycophancy." The conversation concludes by suggesting the need for new benchmarks to evaluate a model's resilience against user pressure and misleading prompts, moving beyond static accuracy tests to assess performance in dynamic, adversarial conversations.

marsbit55m ago

Just by Asking 'Are You Sure?', Large Models Reveal a 'People-Pleasing Personality'?

marsbit55m ago

Dwarkesh Patel: The Next Generation of AI May Be Built Through Actual Work

In his latest podcast, Dwarkesh Patel explores the next paradigm for AI training. While current progress in fields like coding and math relies on Reinforcement Learning with Verifiable Rewards (RLVR), which requires tasks that are both verifiable and highly scalable ("grindable"), Patel questions whether this is sufficient for complex real-world objectives like starting a business, winning a legal case, or managing an organization. These tasks provide verifiable outcomes but lack the resetable, parallelizable environments needed for efficient RLVR training. Patel argues the key limitation of current models is their inability to convert valuable in-context learning from real deployment into permanent weight updates—a process he terms "learning back to the weights." He proposes two potential solutions: On-Policy Self-Distillation (OPSD), where a model distills knowledge from long, task-specific sessions back into its base weights, and "dreaming," where an AI constructs simulated environments from real-world observations to practice and refine strategies. Ultimately, Patel envisions a future training paradigm where AI advances not just through pre-training on static datasets but through continual, post-deployment learning from real-world experience. This shift would enable AI to move beyond "grindable" tasks and develop robust, generalizable agent capabilities for complex, real-world challenges.

marsbit1h ago

Dwarkesh Patel: The Next Generation of AI May Be Built Through Actual Work

marsbit1h ago

Trading

Spot

Hot Articles

How to Buy WIN

Welcome to HTX.com! We've made purchasing WINkLink (WIN) simple and convenient. Follow our step-by-step guide to embark on your crypto journey.Step 1: Create Your HTX AccountUse your email or phone number to sign up for a free account on HTX. Experience a hassle-free registration journey and unlock all features.Get My AccountStep 2: Go to Buy Crypto and Choose Your Payment MethodCredit/Debit Card: Use your Visa or Mastercard to buy WINkLink (WIN) instantly.Balance: Use funds from your HTX account balance to trade seamlessly.Third Parties: We've added popular payment methods such as Google Pay and Apple Pay to enhance convenience.P2P: Trade directly with other users on HTX.Over-the-Counter (OTC): We offer tailor-made services and competitive exchange rates for traders.Step 3: Store Your WINkLink (WIN)After purchasing your WINkLink (WIN), store it in your HTX account. Alternatively, you can send it elsewhere via blockchain transfer or use it to trade other cryptocurrencies.Step 4: Trade WINkLink (WIN)Easily trade WINkLink (WIN) on HTX's spot market. Simply access your account, select your trading pair, execute your trades, and monitor in real-time. We offer a user-friendly experience for both beginners and seasoned traders.

5.3k Total ViewsPublished 2024.03.29Updated 2026.06.02

How to Buy WIN

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 WIN (WIN) are presented below.

活动图片