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Aviva Investors to tokenize funds on XRP Ledger in Ripple partnership

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Aviva Investors to tokenize funds on XRP Ledger in Ripple partnership

Aviva Investors, the asset management arm of U.K. insurer Aviva (AV), plans to tokenize traditional fund structures on the XRP Ledger (XRPL) in a deal with blockchain firm Ripple, the companies said in a press release Wednesday.

The collaboration will see Ripple support Aviva Investors in issuing and managing tokenized funds on XRPL, a public blockchain designed for payments and financial transactions. The move marks Aviva Investors’ first foray into tokenization as it looks to integrate blockchain-based products into its lineup.

For Ripple, the agreement is a first partnership with a Europe-based investment manager, expanding its push to bring regulated financial assets onchain.

Asset managers have increasingly turned to tokenization to modernize fund infrastructure, using digital tokens to represent shares in money market funds, private credit, real estate and other strategies on a blockchain.

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The approach promises faster settlement, lower operational costs and broader distribution, while enabling features such as fractional ownership and automated compliance.

Major firms including BlackRock, Franklin Templeton and Hamilton Lane have already introduced tokenized products, signaling a shift from pilot projects to live, regulated offerings aimed at institutional investors.

Aviva Investors and Ripple said they will work together through 2026 and beyond to develop tokenized fund structures on XRPL.

The ledger, which started up in 2012, has processed more than 4 billion transactions and supports over 7 million wallets, according to Ripple. It is maintained by 120 independent validators and does not rely on energy-intensive mining.

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“We believe there are many benefits that tokenisation can bring to investors, including improvements in terms of both time and cost efficiency,” said Jill Barber, chief distribution officer at Aviva Investors, in the release.

“We are committed to adopting technological advancements that we believe can bring about positive change for our business, and we think tokenized funds can be hugely beneficial to our clients,” she added.

Read more: Tokenization still at start of hype cycle, but needs more use cases, specialists say

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Kaspersky Unveils Hunt Hub to Boost Transparency in Threat Detection

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Crypto Breaking News

Editor’s note: Kaspersky has rolled out a significant update to its Threat Intelligence Portal, adding a new Hunt Hub alongside expanded MITRE ATT&CK coverage and a much larger vulnerabilities database. The update is aimed at giving security teams clearer visibility into how threats are detected, why alerts are triggered, and which risks matter most in real-world environments. As cyberattacks grow in volume and complexity, the focus shifts from raw alerts to context and prioritization. This release positions threat intelligence as a practical decision-making tool for analysts, CISOs, and organizations managing increasingly complex digital infrastructures.

Key points

  • Hunt Hub centralizes Kaspersky’s threat hunting rules and detection logic, mapped to MITRE ATT&CK techniques.
  • Detection logic is presented in a structured, SIGMA-like format for deeper analyst understanding.
  • The MITRE ATT&CK coverage map now unifies SIEM, EDR, NDR, and Sandbox visibility in one view.
  • The vulnerabilities database has expanded to nearly 300,000 CVEs, with emphasis on exploited threats.

Why this matters

For organizations facing a rising volume of sophisticated cyber threats, transparency and prioritization are critical. By exposing detection logic and linking it directly to attacker behavior and real-world vulnerabilities, the updated portal helps security teams move beyond reactive alert handling. This approach supports more efficient threat hunting, better risk assessment, and smarter allocation of defensive resources, which is especially relevant as digital infrastructure, cloud services, and enterprise networks continue to expand.

What to watch next

  • Adoption of Hunt Hub by security operations teams and threat hunters.
  • How organizations use the unified MITRE ATT&CK view to assess security gaps.
  • Updates to hunt libraries and vulnerability intelligence over time.

Disclosure: The content below is a press release provided by the company/PR representative. It is published for informational purposes.

Kaspersky has announced a major update to its Threat Intelligence Portal (TIP), introducing a new Hunt Hub section alongside an enhanced MITRE ATT&CK coverage map and a significantly expanded vulnerabilities database. The update strengthens organizations’ ability to investigate threats, understand adversary behavior, and proactively monitor the most relevant risks across their environments.

According to the Kaspersky Security Bulletin 2025 report, Kaspersky’s detection systems discovered an average of 500,000 malicious files per day in 2025, marking a 7% increase compared to the previous year. As cyberattacks become more sophisticated and frequent, security teams need more than alerts – they need clarity.

The newly launched Hunt Hub is designed to address growing market demand for greater transparency and deeper insight into how modern detection technologies work. Integrated into the Threat Landscape section of the Threat Intelligence Portal, Hunt Hub provides centralized access to Kaspersky’s threat hunting expertise and detection knowledge.

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Hunt Hub includes Kaspersky Next EDR Expert hunts, also known as indicators of attack (IoA) or detection rules. All portal users can explore the catalogue of hunts and their descriptions, while Kaspersky Next EDR Expert customers gain extended access to detailed recommendations and detection logic presented in a convenient, SIGMA-like format. Each hunt is mapped to relevant MITRE ATT&CK tactics and techniques and linked to known threat actors, giving analysts clear context behind every detection.

By making detection logic visible and structured, Hunt Hub effectively removes the “black box” from threat detection. It allows security teams not only to respond to alerts, but also to understand why a detection was triggered and which threat it is designed to uncover – improving trust in security technologies and increasing the efficiency of threat investigation processes.

As part of the update, the MITRE ATT&CK coverage map within the Threat Landscape has been significantly enhanced. The portal now brings together product coverage across SIEM, EDR, NDR and Sandbox solutions, MITRE ATT&CK techniques with scoring, coverage percentages, and related Kaspersky Next EDR Expert hunts in a single, unified view. This enables organizations to assess how well their security stack covers relevant attack techniques and identify potential gaps in protection.

The Vulnerabilities section has also been expanded, with the CVE database now covering nearly 300,000 vulnerabilities. In addition, the portal provides more detailed information on vulnerabilities that have been exploited in real-world attacks, helping organizations prioritize remediation efforts based on actual threat activity.

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“With the launch of Hunt Hub in the Kaspersky Threat Intelligence Portal, we are opening up our detection expertise and giving analysts clear visibility into how and why threats are detected. This transparency helps organizations move from reactive alert handling to informed threat hunting and proactive risk management,” comments Nikita Nazarov, Head of Threat Exploration at Kaspersky.

To learn more about Kaspersky Threat Intelligent Services, please follow the link.

About Kaspersky

Kaspersky is a global cybersecurity and digital privacy company founded in 1997. With over a billion devices protected to date from emerging cyberthreats and targeted attacks, Kaspersky’s deep threat intelligence and security expertise is constantly transforming into innovative solutions and services to protect individuals, businesses, critical infrastructure, and governments around the globe. The company’s comprehensive security portfolio includes leading digital life protection for personal devices, specialized security products and services for companies, as well as Cyber Immune solutions to fight sophisticated and evolving digital threats. We help millions of individuals and nearly 200,000 corporate clients protect what matters most to them. Learn more at www.kaspersky.com

Risk & affiliate notice: Crypto assets are volatile and capital is at risk. This article may contain affiliate links. Read full disclosure

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How AI Predictive Analytics is Redefining Risk Management in Tokenized Asset Portfolios?

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Designing Prediction Market Modules For White Label BaaS

Tokenized asset portfolios are rapidly becoming a core component of modern digital finance. By converting real-world and financial assets into blockchain-based tokens, enterprises unlock greater liquidity, fractional ownership, and global market access. While these advantages are significant, they also introduce a level of complexity that traditional risk management frameworks were never designed to handle. This growing complexity has accelerated the adoption of AI-powered financial analytics to improve visibility and decision-making across digital investment ecosystems.

Unlike conventional portfolios that operate within defined market hours and centralized systems, tokenized assets function in a continuous, decentralized environment. Risk factors evolve in real time, driven by on-chain activity, secondary market behavior, protocol dependencies, and regulatory developments. In such an ecosystem, identifying risk after it has already materialized is both inefficient and costly, making advanced AI in risk management a critical requirement rather than an optional enhancement.

This reality is pushing enterprises and institutional investors toward predictive risk management. AI predictive analytics enables organizations to anticipate potential risk scenarios before they escalate, allowing for timely intervention and informed decision-making. Rather than reacting to volatility, liquidity shocks, or compliance issues, enterprises can proactively manage exposure across tokenized asset portfolios using data-driven forecasting models.

Key drivers behind the need for predictive risk management include:

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  • Continuous market operations: Tokenized assets trade 24/7, increasing exposure to sudden market shifts and reinforcing the need for real-time Tokenized assets risk analysis.
  • Data-rich environments: Massive volumes of on-chain and off-chain data require intelligent interpretation through AI-powered financial analytics to extract meaningful risk insights.
  • Dynamic portfolio exposure: Asset correlations and liquidity profiles change rapidly in tokenized ecosystems, increasing demand for AI-enhanced portfolio risk optimization.

The New Risk Landscape of Tokenized Asset Portfolios

Tokenization is changing investments and transforming how investors view risks in their portfolios. While traditional asset portfolios have mostly well-defined risks (e.g., market volatility, credit risk, macroeconomic conditions), tokenized portfolios span multiple markets and three distinct areas – financial markets, blockchain infrastructure, and digital asset performance. This convergence has elevated the role of Artificial intelligence in investment risk analysis, as manual risk models struggle to process these interconnected variables.

This convergence introduces a new and unique set of uncertainties that necessitate holistic risk assessments; therefore, risk is no longer just about asset performance, but how the technology layers, market infrastructure, and regulatory interpretations affect portfolio risk.

1. Market Risk

Risk in the tokenized marketplace is exacerbated by numerous buys and sells, speculative trading, and a speculative trading environment. Because of the short-term nature of many Tokenized Assets (TAs), their prices could be significantly misaligned with their underlying asset’s industrial value due to issues such as lack of liquidity, speculative trading behavior, and larger movements in the broader cryptocurrency market. If not monitored regularly, the volatility associated with TAs may produce large impacts to portfolio value, highlighting the importance of AI predictive analytics for forward-looking risk assessment.

2. Liquidity Risk

Liquidity for TAs is typically highly fragmented (e.g., decentralized exchanges, centralized exchanges, OTC brokerage accounts) and may appear adequate prior to periods of stress; however, when stress occurs, liquidity may be very limited. As such, it becomes essential to apply AI-enhanced portfolio risk optimization techniques to anticipate liquidity constraints when planning and executing exit strategies and allocating capital.

3. Risk with Smart Contracts

Smart contracts determine how to create, distribute and move tokenized assets from one person to another. Systemic risk can arise from improper contract logic, security holes in the contract or poor upgrade management. The risk is of a technical nature; however, financial ramifications will be direct, making automated Tokenized assets risk analysis increasingly necessary.

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4. Risk due to Regulation

Tokenized assets are often used across multiple jurisdictions and have changing compliance laws and regulations. Changes to the laws surrounding compliance, reporting and asset classification will change the structure of portfolios and compiler will have participation. Predictive compliance monitoring using AI in risk management helps enterprises stay ahead of regulatory shifts.

5. Operational Risk

Reliance on oracles, custodians, blockchains and other third-party services is a potential point of failure in operations. Failure at one of these points will impact either the availability of the asset, the accuracy of its price or the completion of a transaction, reinforcing the need for AI-powered financial analytics across operational layers.

Build AI-Powered Risk Intelligence Into Your Tokenization Stack

Why Traditional Risk Models Fall Short in Tokenized Markets

Traditional risk management frameworks were developed for centralized financial systems with predictable reporting cycles and limited data sources. While effective for legacy portfolios, these models struggle to address the dynamic nature of tokenized assets, particularly when compared to modern Artificial intelligence in investment risk frameworks.

Conventional models rely heavily on historical data and assume relatively stable market behavior. Tokenized markets, however, evolve in real time and generate risk signals that require immediate analysis supported by AI predictive analytics.

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Key limitations of traditional risk models include:

  • Backward-looking analysis: Historical performance fails to capture emerging on-chain trends identified through Tokenized assets risk analysis.
  • Static assumptions: Fixed correlations and volatility assumptions do not reflect real-time dynamics captured through AI-enhanced portfolio risk optimization.
  • Delayed response cycles: Manual reviews and periodic reporting slow down decision-making in environments requiring real-time AI in risk management.
  • Limited data integration: Inability to process blockchain data, smart contract activity, and decentralized liquidity metrics without AI-powered financial analytics.

As a result, risk is often identified only after losses occur, making mitigation reactive rather than preventive.

How AI Predictive Analytics Changes Risk Assessment

AI analytics is transforming the way risk is assessed and managed in a tokenized portfolio. AI predictive analytics employs machine learning, statistical modeling and real-time data to provide continuous risk assessments as conditions change, redefining AI in risk management practices.

AI models provide more than just static thresholds or historical averages for making risk assessments; they continuously evolve to reflect historical data while also incorporating live market and blockchain data. This allows for risk assessments based on future probabilities and scenarios, strengthening Artificial intelligence in investment risk strategies.

Here is how AI is changing risk assessments:

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  • Continuous intelligence: Real-time updates to risk metrics as new information comes in through AI-powered financial analytics.
  • Pattern recognition: Machine learning recognizes correlations and patterns in data sets that a human may not be able to recognize, enabling deeper Tokenized assets risk analysis.
  • Predictions based on probability: Risk is assessed based on probabilities of occurrence and impact, not historical averages, supporting AI-enhanced portfolio risk optimization.

The result is a shift for enterprises to move from traditional methods of risk reporting to anticipating future risks, thereby improving their overall resilience in managing their tokenized asset portfolios.

Key Predictive Risk Capabilities Powered by AI

AI-powered risk management platforms provide specialized capabilities that are particularly suited to tokenized asset ecosystems and enterprise-grade AI in risk management.

1. Forecasting Volatility

To determine future volatility, AI analyzes an assortment of factors including historical prices, volume of trades, depth of the order book and sentiment indicators. These insights support AI predictive analytics by allowing portfolio managers to anticipate price swings and manage exposure proactively.

2. Liquidity Stress Testing

Using simulated market stress events, predictive analytics evaluates liquidity behavior across venues. This form of Tokenized assets risk analysis is critical for large institutional exits and capital preservation.

3. Scenario Simulation & Stress Analysis

AI allows for advanced scenario modeling under regulatory changes, downturns, or macroeconomic shocks, strengthening AI-enhanced portfolio risk optimization strategies.

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4. Anomaly Detection and Risk Signals

By continuously scanning transaction flows, smart contract data, and market behavior, AI systems enhance Artificial intelligence in investment risk monitoring by detecting early warning signals.

Where AI-Driven Risk Intelligence Delivers the Most Value

AI predictive analytics delivers the greatest value in tokenized portfolios that involve complex assets, long investment horizons, or regulatory oversight. Proactive AI-powered financial analytics helps preserve capital and maintain investor confidence.

High-impact application areas include:

  • Tokenized real estate and infrastructure: Predictive valuation and liquidity modeling using AI in risk management
  • Private credit and debt instruments: Default risk forecasting through Tokenized assets risk analysis
  • Commodity-backed assets: Volatility and supply-demand forecasting enabled by AI predictive analytics
  • Institutional multi-asset portfolios: Cross-asset correlation and AI-enhanced portfolio risk optimization

From Reactive Controls to Predictive Risk Management: How Antier Enables the Shift

As organizations build Tokenized asset portfolios that are larger and more complex than ever before, they require more sophisticated risk controls. Antier addresses this need by delivering enterprise-ready frameworks built on AI-powered financial analytics, AI predictive analytics, and advanced blockchain intelligence.

Antier’s AI-driven blockchain solutions enable organizations to move beyond reactive controls and embrace predictive, data-driven AI in risk management. By combining real-time on-chain data with off-chain market intelligence, Antier strengthens Artificial intelligence in investment risk capabilities across tokenized ecosystems.

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By embedding predictive intelligence into tokenized asset operations, Antier enables enterprises to implement scalable AI-enhanced portfolio risk optimization, preparing portfolios for market volatility, regulatory change, and operational complexity.

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In unfamiliar market conditions, historical data-driven AI trading bots will falter

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In unfamiliar market conditions, historical data-driven AI trading bots will falter

Today’s AI trading bots are based on a limited amount of historical data which means totally unfamiliar market events like the 10/10 liquidations or even last week’s severe selloffs will leave agentic trading models short of the mark.

These historical data-driven AI models have never seen huge liquidations on a single day and would find this “very unfamiliar” said Bitget CEO Gracy Chen on a panel about agentic trading bots at Consensus Hong Kong 2026. As such human intervention is needed.

“As an exchange, we don’t plan to build our own LLM [large language model]. But trading bots are a big thing,” Chen said. “Current AI bots are a bit like an intern: faster, cheaper but needs a little supervision.”

However, further down the line this will be more like a “full employee,” and in 3-5 years AI can replace a lot of us, Chen said.

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These are sentiments heard regularly in the algorithmic trading world when it comes to AI.

While complex LLM and machine learning trading technology is improving at a rapid clip, there are still plenty of people who think a human overlay is an essential part of the process – particularly in situations like the severe volatility that recently gripped crypto markets.

Joining Chen on the panel, Saad Naj, founder and CEO of agentic trading startup PiP World agreed the tech is in its infancy and that comes with risk. But he pointed out that 90% of day traders and retail players lose money.

“As humans we are too emotional. We can’t compete with AI solutions,” Naj said.

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Decentralized AI is in a trough but real opportunities are emerging, crypto VCs say

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Decentralized AI is in a trough but real opportunities are emerging, crypto VCs say

The intersection of crypto and artificial intelligence (AI) has entered a quieter, more selective phase, according to two prominent venture capitalists.

Anand Iyer of Canonical Crypto and Kelvin Koh of Spartan Group described the current climate as a post-hype moment for decentralized AI protocols, with capital and talent shifting toward more focused, utility-driven applications during Consensus Hong Kong 2026.

“I think we’re in the trough right now,” said Iyer, whose San Francisco-based firm backs early-stage infrastructure and applications built on decentralized networks. “We went through a frothy period. Now it’s about figuring out where the real strength lies.”

Both Iyer and Koh criticized what they see as overinvestment in GPU marketplaces and attempts to build decentralized alternatives to large AI models like those from OpenAI or Anthropic. The capital required, Koh noted, is “night and day” compared to what’s available in crypto.

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Instead, they see potential in purpose-built, full-stack solutions, tools that start with a specific problem and build down to the model, compute, and data layers.

Iyer pointed to startups skipping expensive SaaS tools and using AI to build custom internal systems in days. “Speculation won’t drive product anymore,” he said. “We have to think about users first.”

Both investors emphasized the importance of proprietary data, regulatory advantages, or go-to-market edges as new forms of competitive moats.

For founders looking to raise capital, Koh offered blunt advice: “Twelve months ago, it was enough to have a wrapper on ChatGPT. That’s no longer true.”

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Apptronik Secures $520 Million Funding to Advance Humanoid Robot Production

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21Shares Introduces JitoSOL ETP to Offer Staking Rewards via Solana

TLDR

  • Apptronik raised $520M, bringing its Series A round to $935M for Apollo robot production.
  • Apollo robots are deployed in factories and warehouses with partners like Mercedes-Benz and GXO Logistics.
  • Apptronik’s robots will collaborate safely with humans for tasks like lifting, sorting, and transporting.
  • The company faces competition from Tesla’s Optimus and Chinese humanoid developers like Unitree and Agility.
  • Apptronik plans to expand its presence and begin fulfilling robot orders in 2027, with $1B in projected demand.

Apptronik, a robotics startup based in Austin, Texas, has raised $520 million in funding, bringing its Series A round to $935 million. The new capital will help the company refine and mass-produce its Apollo humanoid robots, aiming to lead the market ahead of competitors such as Tesla and Chinese developers.

Apollo Robots in Early Deployment

Apptronik’s Apollo robots are already deployed in several factories and warehouses under strategic partnerships with companies like Mercedes-Benz, GXO Logistics, and Jabil. These robots operate within predefined areas using sensors and light curtains to ensure safe interaction with human workers.

The robots pause when a human crosses into their operational space, with plans for more advanced collaborative capabilities. CEO Jeff Cardenas stated that the Apollo robots will eventually be able to work alongside humans safely, performing tasks such as lifting, sorting, and transporting components.

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This technology aims to make the robots more adaptable to dynamic factory environments. Apptronik believes that the versatility of humanoid robots will provide immense value by enabling a single robot to perform multiple tasks.

Apptronik AI Competition and Industry Growth

Apptronik faces stiff competition from other humanoid robot developers, including Tesla’s Optimus project and Chinese companies like Unitree and Agility Robotics. While Tesla has invested heavily in its robot development, its humanoid project remains in early-stage research.

Apptronik, however, has made strides in refining its Apollo robots, with its partnerships already demonstrating the robots’ practical applications in industrial settings. The recent funding and partnership with Google DeepMind mark major milestones for Apptronik.

Google’s Gemini Robotics AI models are now enhancing the Apollo robots’ capabilities, enabling faster, more efficient operations. Apptronik’s CEO refrained from making specific predictions about the robot’s future production timelines but indicated that they will continue refining their technology in the coming months.

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The company also plans to expand its presence in Austin and open a new office in California later this year. Apptronik is focused on preparing its robots and facilities for mass production, with expectations to fulfill orders starting in 2027. B Capital’s Howard Morgan is optimistic about the future, predicting that demand for the Apollo robots will reach $1 billion in orders within a few years.

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XRP price forecast: bulls falter amid fresh bearish sentiment

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  • XRP price dropped to $1.35 as selling pressure resumed.
  • Bears have pushed Bitcoin back under $68k and altcoins are mirroring the decline.
  • Short-term, bearish sentiment could trigger a sell-off to $1 or lower.

XRP continues to face bearish pressure as the latest attempts to establish an upside momentum stall, with prices down 14% in the past week.

In early trading on Wednesday, the Ripple cryptocurrency fell to lows of $1.35, extending its pullback from recent highs following a retest of $1.53.

The waning upside momentum suggests a potential further downside for the altcoin, whose performance mirrors the renewed selling pressure currently throttling Bitcoin and Ethereum bulls.

As of writing, market metrics showed derivatives data largely bearish, with retail traders signalling their downbeat perspective through dwindling XRP futures Open Interest.

Massive liquidations, most of which have been lopsided against longs, add to the retail indecision.

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XRP price technical outlook

XRP’s struggles align with a cautious crypto environment. Bitcoin’s failure to hold above $70k means widespread selling that hasn’t spared top altcoins like XRP.

Technical indicators for XRP price, such as fading RSI, highlight potential weakness. If buyers fail to reclaim $1.50 and target $2.00, XRP risks testing key support levels near $1.22 and $1.13.

Conversely, breaking $2 might flip sentiment and allow bulls to target the $2.75 resistance level. The falling wedge pattern on the 4-hour chart signals such a breakout.

XRP Price Chart
XRP price 4-hour chart by TradingView

XRP price: likely bullish catalysts?

US XRP ETF demand has faded in recent weeks, while technical indicators highlight bears’ control.

Despite the gloom, several catalysts could spark a reversal for XRP holders.

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Regulatory developments, particularly ongoing efforts to pass the Clarity Act, could be a key driver of crypto market sentiment.

A spike in adoption amid further regulatory clarity will cascade to XRP.

Whale accumulation also continues to ramp up as large holders add to positions.

This shows conviction and has the short-term effect of stabilizing prices ahead of what analysts see as an inevitable broader market recovery.

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Stablecoin growth on the XRP Ledger adds another layer of utility, drawing institutional interest and increasing network activity.

DeFiLlama data shows that while DeFi TVL has declined, stablecoin market cap has jumped from around $331 million in early February to over $418 million as of writing.

Amid usage for XRPL, Ripple USD is also gaining traction.

Ripple has entered various partnerships aimed at tokenising traditional fund structures on the XRP Ledger, one of the moves set to accelerate growth.

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Meanwhile, spot exchange-traded fund inflows have cooled in recent weeks. However, cumulative net inflows have topped $1.2 billion, and could explode when sentiment flips.

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Sam Bankman-Fried Seeks FTX Retrial Citing Fresh Testimony

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FTX founder Sam Bankman-Fried is legally challenging his 25-year sentence, filing a motion for a new trial on February 10.

The thirty-three-year-old cites “fresh testimony” that allegedly proves the defunct exchange was solvent.

The filing potentially throws a spanner in the liquidation process, with the claim that the Department of Justice suppressed critical evidence during the original proceedings.

Why Is Bankman-Fried Seeking a New FTX Trial Now?

It has been years since FTX’s November 2022 collapse wiped out $8 billion in customer funds.

Since then, self-custody has become a buzzword for retail investors, who have had to live through multiple bear markets while US regulators prepare comprehensive legislation to ensure it doesn’t happen again.

However, SBF isn’t done fighting. Serving a 25-year sentence, the disgraced mogul filed a pro se motion citing Rule 33 of the Federal Rules of Criminal Procedure.

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Bankman-Fried argues that his original conviction was a miscarriage of justice because key witnesses never took the stand.

While global enforcement efforts often successfully target financial malfeasance through standard audits, SBF contends the DOJ’s rapid prosecution missed the actual financial reality of FTX.US.

He maintains that the money was “always there,” a claim he intends to support with evidence that was allegedly unavailable during his initial defense.

What the New Motion Claims

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The new filing specifically hinges on declarations from Daniel Chapsky, the former head of data science at FTX.US.

According to the motion, Chapsky’s data analysis contradicts the government’s narrative regarding the $8 billion shortfall.

Bankman-Fried also points to potentially favorable testimony from former co-CEO Ryan Salame, who is currently serving a seven-and-a-half-year sentence.

In the legal documents filed Feb. 10, Bankman-Fried alleges that prosecutors intimidated witnesses and that Judge Lewis Kaplan showed “manifest prejudice” by rushing the verdict. He is demanding a new judge for any retrial, framing the original proceedings as politically motivated “lawfare”.

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While the industry has largely shifted toward a compliance-focused market structure to prevent another FTX-style meltdown, SBF argues the DoJ prevented him from showing the jury data that proved solvency.

Legal experts note that Rule 33 motions face an incredibly high bar, often viewed as a “Hail Mary” in federal appeals.

What This Means for Crypto Regulation

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While a retrial is statistically unlikely, the motion keeps the FTX wounds fresh for active traders and victims awaiting restitution.

The persistence of the case highlights the long-term risks of offshore exchange failures.

Regulators are likely to use this continued legal drama to justify stricter oversight. We are already seeing similar crackdowns globally, such as when Venezuela’s anti-corruption investigation shut down exchanges in a massive sweep.

For the market, this serves as a stark reminder that the legal fallout from the 2022 crash is far from over, even as prices recover.

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White House Stablecoin Talks Stall as Banks Push for Yield Restrictions

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High-stakes negotiations between U.S. banking giants and crypto executives at the White House hit a wall yesterday, ending in an impasse over stablecoin yields.

Banks demanded restrictive “prohibition principles” on holder rewards, while crypto leaders argued such bans would suffocate innovation in the digital dollar economy.

Key Takeaways

  • Banks are pushing for a broad ban on all financial and non-financial benefits tied to holding payment stablecoins.
  • Crypto firms, including Coinbase and Ripple, rejected the proposals, warning they would stifle competition.
  • Treasury Secretary Scott Bessent faces a hard deadline of July 2026 to finalize GENIUS Act implementation rules.

Will Banking Interests Kill the Yield?

The core friction stems from the implementation of the GENIUS Act, signed in July 2025, which aims to regulate stablecoin issuance while insulating traditional banking deposits.

Banks argue that interest-bearing stablecoins threaten their liquidity models, essentially fearing a massive deposit drain if users can earn higher yields on-chain.

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This regulatory tug-of-war highlights the industry’s shift toward a compliance-focused market where regulatory pressures now dictate project viability.

The White House Crypto Policy Council is scrambling to find common ground. Yesterday’s meeting was the second this month. With lawmakers and the industry hoping to finalize rules by the midterm elections this November, the clock is ticking.

Banks are effectively trying to firewall their deposit base from digital competitors, a move that could neuter the competitive advantage of non-bank stablecoin issuers.

Discover: The next crypto to explode in 2026

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Inside the Closed-Door Battle at the White House

According to a document presented by the banking side during the session, which included Goldman Sachs and JPMorgan Chase, the banks laid out strict “prohibition principles.”

These principles call for a total ban on any benefits, financial or otherwise, tied to holding or using payment stablecoins. Attendees noted that banks took a hard line, demanding enforcement measures that go well beyond the current draft of the market structure bill.

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While current legislative drafts generally bar passive yield, banks want to crush even limited activity-based rewards.

Crypto stakeholders, including the Blockchain Association and Ripple, reportedly “dug in” against these demands.

The banking sector insists that exemptions for stablecoin rewards must be extremely narrow in scope, leaving little room for the types of incentive programs that drive DeFi adoption.

Discover: New cryptocurrencies to invest in today

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Implications for the Market

If these restrictions hold, the U.S. risks stifling the very innovation the GENIUS Act was meant to legitimize.

Investors should watch the July deadline closely; failure to compromise could force a capital to flee to jurisdictions with clearer, pro-yield frameworks.

Just as Venezuela’s anti-corruption investigation rocked its local crypto industry with aggressive shutdowns, a heavy-handed U.S. ban on stablecoin yields could severely impact domestic liquidity.

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While banks aim to protect their deposit base from disruption, the crypto market views yield as a fundamental feature, not a bug.

If the banks win this round, the utility of U.S.-regulated stablecoins could be capped at simple transaction rails, stripping them of their investment potential.

Discover: February’s best crypto presales

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JPMorgan among those cutting price targets following Q4 miss

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JPMorgan among those cutting price targets following Q4 miss

Robinhood (HOOD) shares slumped 10% in early trading on Wednesday after fourth-quarter revenue missed estimates, with a decline in crypto trading impacting results.

The popular trading app reported fourth-quarter earnings per share of $0.66, beating expectations of $0.63. However, revenue came in at $1.28 billion, below the $1.33 billion analysts had forecast.

A downturn in crypto trading weighed heavily on results, with crypto revenue dropping 38% year over year to $221 million.

Wall Street bank JPMorgan cut its price target on Robinhood to $113 from $130 following the softer-than-expected fourth quarter, while maintaining a neutral rating and warning that tougher 2025 comps raise the bar for 2026.

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That new price target still represents potential upside of more than 50% from the current price of $76.50.

Transaction revenue of $776 million fell short, driven by a drop in crypto revenue to $221 million amid a late-year slide in digital asset markets. Net interest revenue of $411 million also missed the bank’s estimates, pressured by weaker securities lending and lower yields.

While January volumes have improved year over year, the bank’s analysts, led by Kenneth Worthington, said growth is moderating across key metrics, prompting the bank to trim top-line forecasts and lower its price target.

Compass Point’s Ed Engel took a more constructive view, though also cutting his price target to $127 from $170 while reiterating a Buy rating. He noted that Robinhood’s January KPIs showed solid momentum across all segments — including better-than-feared crypto volumes — despite the weak fourth quarter. However, a 9% EBITDA miss, driven by lower securities lending and declining take rates in crypto and options trading, weighed on results.

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The most surprising detail, Engel said, was Robinhood’s 2026 operating expense guidance of 18% growth. He expects spending to fund product expansion in areas such as crypto, DeFi, and prediction markets, which could pay off in the second half of 2026. Until then, however, investors may lower EBITDA expectations.

He pointed to internalization of prediction markets, a potential Trump-related user bump, and possible mega-IPOs from SpaceX, Anthropic or OpenAI as longer-term tailwinds.

He also flagged that Robinhood’s crypto take rate declined by 3 bps quarter-over-quarter in the fourth quarter and has fallen an additional 5 bps in so far in 2026 as higher-volume traders make up a larger share of the mix.

Engel: “In the near-term, we could see investors penalize HOOD for the higher spending, but sentiment could rebound by mid-2026 as investment ROIs begin to materialize.”

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Read more: Robinhood misses Q4 revenue estimates as fourth-quarter results dinged by crypto slump

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Fragile Optimism in Crypto as ETF Flows Return

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Fragile Optimism in Crypto as ETF Flows Return


Spot Bitcoin ETFs added $145 million, Ethereum saw $57 million inflows, signaling fragile optimism after a sharp crypto sell-off.

Even though they were trading at around $68,000 and $1,980, respectively, at the time of writing, Bitcoin and Ethereum bounced yesterday after sharp sell-offs, with BTC reaching $71,000 and ETH climbing to $2,150 following the resumption of spot ETF inflows.

The rebound renewed speculation that BTC may have established a local floor, but traders are also bracing for today’s Non-Farm Payroll (NFP) report and Friday’s Consumer Price Index (CPI) release, two data points that could reset Federal Reserve rate expectations and determine whether the rally holds.

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ETF Flows Turn Positive, But On-Chain Data Signals Volatility Ahead

In its latest market update, digital asset trading firm QCP noted that spot Bitcoin ETFs recorded $145 million in net inflows yesterday, building on Friday’s $371 million. Spot ETH ETFs also reversed course with $57 million in net inflows after three days of red.

The shift follows a period of intense selling pressure that recently drove BTC to around $60,000, its lowest level since before the November 2024 U.S. elections.

Despite the inflows, on-chain data suggests market participants are preparing for continued turbulence. For example, CryptoQuant contributor CryptoOnchain reported that on February 6, over 7,000 BTC moved from Binance to other spot exchanges, making it the second-highest daily volume in the past year.

At the same time, the seven-day moving average of flows from Binance to derivative exchanges spiked to 3,200 BTC, the highest level since January 2024. The analyst interpreted the migration of funds to derivative platforms as a sign that large holders are either hedging downside risk or positioning for sharp price swings.

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Meanwhile, QCP market watchers revealed that the Coinbase BTC discount has narrowed from approximately 20 basis points to 9 basis points, signaling a moderation in U.S.-led selling. But the Crypto Fear & Greed Index remains at 9, deep in “extreme fear” territory, with the trading firm describing conditions as “thin ice that happens to be holding.”

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Historical Context and On-Chain Trends

Bitcoin’s correction has drawn the broader market lower, with the OG cryptocurrency dipping below $67,000 and altcoins such as ETH, XRP, and BNB losing significant ground. The total crypto market capitalization has fallen to $2.36 trillion, shedding over $50 billion in daily value. Still, not all assets have mirrored this decline, as the likes of XMR gained 3%, while ZRO entered the top 100 following a 20% surge.

Unlike previous cycles, this downturn has avoided major systemic failures. Chainlink co-founder Sergey Nazarov pointed out on February 10 that real-world assets (RWAs) on the blockchain are expanding despite price volatility, with institutional interest sustained by technological advantages and 24/7 markets.

While the market looks for big economic changes, the increase in ETF investments provides some hope, but QCP warns that past price changes and how derivatives are set up mean traders should be careful and manage risks wisely.

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