The post Ripple Joins Fed Task Force as XRP Targets $4 Breakout appeared on BitcoinEthereumNews.com. Ripple Strengthens Its Footprint on the Fed’s Faster Payments Task Force Ripple, the blockchain payments giant behind the XRP token, has secured a seat on the Federal Reserve’s Faster Payments Task Force Steering Committee, signaling a growing influence in shaping the future of U.S. payment infrastructure.  According to top crypto researcher SMQKE, this move positions Ripple at the heart of discussions surrounding faster, more efficient financial transactions, a space historically dominated by traditional banking institutions. The Federal Reserve’s Faster Payments Task Force, established to explore ways to accelerate U.S. payments, brings together banks, fintech firms, and payment innovators. Ripple’s inclusion underscores its rising credibility as a solution capable of bridging traditional finance with blockchain technology.  With its real-time gross settlement system, RippleNet, and the digital asset XRP, the company has long promised faster cross-border payments at lower costs, and now it has a direct line to influence policy and implementation. Therefore, Ripple’s role on the task force goes beyond symbolism. By providing expertise on blockchain integration, payment efficiencies, and regulatory compliance, it helps shape standards that could favor blockchain solutions, marking a pivotal moment for digital assets gaining legitimacy alongside traditional finance. XRP Eyes $4 Breakout XRP is back in the spotlight as top on-chain and technical analyst Steph Is Crypto signals a potential repeat of its 2024 price trajectory, pointing to a possible $4 breakout.  Steph’s analysis on X, formerly Twitter, highlights a bull flag, compressed volatility, and key on-chain indicators that have historically preceded major XRP moves. Source: Steph Is Crypto Notably, Steph’s analysis overlays the current weekly structure on the 2024 setup, highlighting a sustained support trendline, tightening price action, and flag-like consolidation.  If momentum pushes the breakout higher, XRP could target $4–$5, aligning with independent crypto coverage that spots $3–$4 as a key liquidity zone for… The post Ripple Joins Fed Task Force as XRP Targets $4 Breakout appeared on BitcoinEthereumNews.com. Ripple Strengthens Its Footprint on the Fed’s Faster Payments Task Force Ripple, the blockchain payments giant behind the XRP token, has secured a seat on the Federal Reserve’s Faster Payments Task Force Steering Committee, signaling a growing influence in shaping the future of U.S. payment infrastructure.  According to top crypto researcher SMQKE, this move positions Ripple at the heart of discussions surrounding faster, more efficient financial transactions, a space historically dominated by traditional banking institutions. The Federal Reserve’s Faster Payments Task Force, established to explore ways to accelerate U.S. payments, brings together banks, fintech firms, and payment innovators. Ripple’s inclusion underscores its rising credibility as a solution capable of bridging traditional finance with blockchain technology.  With its real-time gross settlement system, RippleNet, and the digital asset XRP, the company has long promised faster cross-border payments at lower costs, and now it has a direct line to influence policy and implementation. Therefore, Ripple’s role on the task force goes beyond symbolism. By providing expertise on blockchain integration, payment efficiencies, and regulatory compliance, it helps shape standards that could favor blockchain solutions, marking a pivotal moment for digital assets gaining legitimacy alongside traditional finance. XRP Eyes $4 Breakout XRP is back in the spotlight as top on-chain and technical analyst Steph Is Crypto signals a potential repeat of its 2024 price trajectory, pointing to a possible $4 breakout.  Steph’s analysis on X, formerly Twitter, highlights a bull flag, compressed volatility, and key on-chain indicators that have historically preceded major XRP moves. Source: Steph Is Crypto Notably, Steph’s analysis overlays the current weekly structure on the 2024 setup, highlighting a sustained support trendline, tightening price action, and flag-like consolidation.  If momentum pushes the breakout higher, XRP could target $4–$5, aligning with independent crypto coverage that spots $3–$4 as a key liquidity zone for…

Ripple Joins Fed Task Force as XRP Targets $4 Breakout

Ripple Strengthens Its Footprint on the Fed’s Faster Payments Task Force

Ripple, the blockchain payments giant behind the XRP token, has secured a seat on the Federal Reserve’s Faster Payments Task Force Steering Committee, signaling a growing influence in shaping the future of U.S. payment infrastructure. 

According to top crypto researcher SMQKE, this move positions Ripple at the heart of discussions surrounding faster, more efficient financial transactions, a space historically dominated by traditional banking institutions.

The Federal Reserve’s Faster Payments Task Force, established to explore ways to accelerate U.S. payments, brings together banks, fintech firms, and payment innovators. Ripple’s inclusion underscores its rising credibility as a solution capable of bridging traditional finance with blockchain technology. 

With its real-time gross settlement system, RippleNet, and the digital asset XRP, the company has long promised faster cross-border payments at lower costs, and now it has a direct line to influence policy and implementation.

Therefore, Ripple’s role on the task force goes beyond symbolism. By providing expertise on blockchain integration, payment efficiencies, and regulatory compliance, it helps shape standards that could favor blockchain solutions, marking a pivotal moment for digital assets gaining legitimacy alongside traditional finance.

XRP Eyes $4 Breakout

XRP is back in the spotlight as top on-chain and technical analyst Steph Is Crypto signals a potential repeat of its 2024 price trajectory, pointing to a possible $4 breakout. 

Steph’s analysis on X, formerly Twitter, highlights a bull flag, compressed volatility, and key on-chain indicators that have historically preceded major XRP moves.

Source: Steph Is Crypto

Notably, Steph’s analysis overlays the current weekly structure on the 2024 setup, highlighting a sustained support trendline, tightening price action, and flag-like consolidation. 

If momentum pushes the breakout higher, XRP could target $4–$5, aligning with independent crypto coverage that spots $3–$4 as a key liquidity zone for further gains.

A key insight in Steph’s thesis is liquidity mechanics, whereby clusters of sell and stop orders above recent highs can fuel rapid price moves. Traders anticipate that sweeping these offers, followed by strong buying, can drive momentum toward round targets like $4, explaining how the bull-flag may trigger a real breakout.

Conclusion

Ripple’s position on the Federal Reserve’s Faster Payments Task Force Steering Committee is more than symbolic, it signals leadership in the evolution of digital finance.

As blockchain shifts from innovation’s edge to the heart of global payments, Ripple stands poised to shape the future of money movement.

Meanwhile, XRP’s current setup echoes the same technical rhythm that powered its 2024 rally, only now, the stakes are higher and market attention is sharper. According to Steph Is Crypto, the fusion of on-chain strength and classic chart structure points to one conclusion: a $4 breakout may be closer than many expect.

Source: https://coinpaper.com/11804/ripple-joins-fed-s-faster-payments-steering-xrp-poised-for-a-4-breakout

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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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