CRV logo

CRV
Curve Finance Dao

3,433
Mkt Cap
$344.2M
24H Volume
$77.64M
FDV
$548.58M
Circ Supply
1.48B
Total Supply
2.35B
CRV Fundamentals
Max Supply
3.03B
7D High
$0.2854
7D Low
$0.2285
24H High
$0.2522
24H Low
$0.2293
All-Time High
$15.37
All-Time Low
$0.1804
CRV Prices
CRV / USD
$0.2333
CRV / EUR
€0.1958
CRV / GBP
£0.1707
CRV / CAD
CA$0.3154
CRV / AUD
A$0.3279
CRV / INR
₹21.11
CRV / NGN
NGN 316.16
CRV / NZD
NZ$0.3849
CRV / PHP
₱13.60
CRV / SGD
SGD 0.2946
CRV / ZAR
ZAR 3.71
Loading...
Loading...
News
all
press releases
Vega Security’s Revolutionary $120M Funding Fuels AI-Powered Cybersecurity Transformation
BitcoinWorld Vega Security’s Revolutionary $120M Funding Fuels AI-Powered Cybersecurity Transformation In a significant development for enterprise cybersecurity, Vega Security has secured $120 million in Series B funding to challenge the decades-old security information and event management (SIEM) model dominated by Splunk. The funding round, led by Accel with participation from Cyberstarts, Redpoint, and CRV, values the two-year-old startup at $700 million and signals a major shift in how organizations approach threat detection in cloud environments. This investment comes as enterprises struggle with exploding data volumes and the limitations of centralized security architectures. Vega Security’s Distributed Approach to Cybersecurity Modern enterprises face unprecedented cybersecurity challenges as data volumes explode across distributed cloud environments. Traditional SIEM solutions require organizations to centralize all security data before analysis, creating significant cost, complexity, and latency issues. Vega Security fundamentally rethinks this approach by implementing security where data already lives—within cloud services, data lakes, and existing storage systems. The company’s AI-native security operations suite enables real-time threat detection without massive data migration. This distributed architecture represents a paradigm shift from the centralized models that have dominated cybersecurity for twenty years. Consequently, organizations can achieve faster threat response while reducing infrastructure costs and operational complexity. The Legacy SIEM Challenge Legacy SIEM systems like Splunk, which Cisco acquired for $28 billion in 2024, face mounting criticism for scalability limitations in cloud environments. These systems struggle to process the exponential data growth driven by artificial intelligence adoption and cloud migration. Shay Sandler, Vega’s co-founder and CEO, explains that the traditional model not only proves “crazy expensive” but also increases exposure to threat actors in complex cloud architectures. Andrei Brasoveanu, Accel partner, emphasizes the fundamental problem: “Splunk and every contender since has always centralized the data, but by doing that you essentially hold the customer hostage.” This centralized approach creates vendor lock-in, limits flexibility, and forces enterprises into costly data management practices that don’t align with modern cloud architectures. Market Validation and Enterprise Adoption Despite being only two years old, Vega Security has demonstrated remarkable market traction. The 100-person startup has secured multi-million-dollar contracts with major banks, healthcare companies, and Fortune 500 firms, including cloud-heavy organizations like Instacart. This rapid adoption signals strong market demand for alternatives to traditional SIEM solutions. Sandler attributes this success to addressing a critical pain point: “The only reason they would do that with a two-year-old startup is because the problem is so painful and other solutions on the market require an unrealistic expectation that the enterprise change the way they operate or do two years of data migrations.” Vega’s “plug and play” approach enables immediate detection response value without requiring organizations to overhaul their existing infrastructure. Vega Security Funding and Market Position Metric Value Series B Funding $120 million Total Funding $185 million Valuation $700 million Company Age 2 years Team Size 100 employees Key Investors Accel, Cyberstarts, Redpoint, CRV Founder Expertise and Industry Background Vega’s leadership brings substantial cybersecurity credibility to the venture. Shay Sandler served in the Israeli military’s cybersecurity unit before becoming a founding employee at Granulate, which Intel acquired for $650 million in 2022. After a year at Intel, Sandler decided to pursue a larger opportunity in cybersecurity. This pedigree attracted investor attention and provides Vega with deep industry understanding. The company’s approach combines technical innovation with practical enterprise experience. Sandler emphasizes that Vega’s “North Star” was building a solution that is not only more cost-effective and better at threat detection but also “no drama, as simple as possible for the biggest, most complex enterprises in the world to adopt it within minutes.” This focus on enterprise usability differentiates Vega from many cybersecurity startups that prioritize technology over implementation practicality. Industry Context and Competitive Landscape The cybersecurity market continues evolving rapidly as organizations accelerate cloud adoption and digital transformation. Several key trends are shaping the competitive landscape: Cloud Migration Acceleration: Enterprises are moving critical workloads to cloud environments at unprecedented rates, creating new security challenges that legacy tools weren’t designed to address. AI and Machine Learning Integration: Security platforms increasingly incorporate artificial intelligence for threat detection, pattern recognition, and automated response capabilities. Data Volume Explosion: Organizations generate security data at rates that overwhelm traditional centralized processing architectures. Regulatory Pressure: Compliance requirements across industries demand more sophisticated security monitoring and reporting capabilities. Vega Security enters this market with timing that aligns with enterprise needs for cloud-native security solutions. The company’s distributed approach addresses fundamental architectural limitations of traditional SIEM systems while leveraging modern cloud capabilities. This positions Vega to capture market share as organizations reevaluate their security infrastructure investments. Investment Rationale and Growth Plans Accel’s leadership in the funding round reflects confidence in Vega’s approach and market potential. The $120 million investment will support several strategic initiatives: Product Development: Further enhancement of Vega’s AI-native security operations suite with additional detection capabilities and integration options. Team Expansion: Building out go-to-market teams to support enterprise sales and customer success initiatives. Global Growth: Expanding operations internationally to address growing demand across geographic markets. Technology Partnerships: Developing integrations with major cloud platforms, data management systems, and security ecosystems. This substantial funding enables Vega to scale operations while maintaining technological innovation. The company’s valuation increase from previous rounds demonstrates investor confidence in both the team and the market opportunity. Technical Architecture and Innovation Vega Security’s platform represents a fundamental rethinking of security operations architecture. Rather than forcing data centralization, the system processes security information where it resides. This distributed approach offers several advantages: Reduced Latency: Threat detection occurs closer to data sources, enabling faster response times. Lower Costs: Organizations avoid expensive data transfer and storage requirements associated with centralized SIEM systems. Improved Scalability: The distributed architecture scales naturally with cloud environments and data growth. Enhanced Privacy: Sensitive data can remain within controlled environments rather than being transferred to external systems. The platform’s AI-native design enables sophisticated threat detection without requiring massive data aggregation. Machine learning algorithms analyze patterns across distributed data sources while maintaining data locality. This approach aligns with modern data governance requirements and cloud security best practices. Enterprise Implementation and Migration Vega emphasizes simplicity in enterprise adoption, recognizing that complex migration processes often hinder security modernization. The platform integrates with existing infrastructure through several mechanisms: Cloud Service Integration: Direct connections with major cloud platforms including AWS, Azure, and Google Cloud. Data Lake Compatibility: Support for popular data lake architectures and storage systems. Legacy System Connectivity: Integration capabilities with existing security tools and monitoring systems. API-First Design: Comprehensive APIs for custom integration and automation scenarios. This integration approach enables organizations to implement Vega’s platform incrementally while maintaining existing security investments. The company’s focus on “no drama” implementation reflects practical understanding of enterprise technology adoption challenges. Market Impact and Future Outlook Vega Security’s funding and growth trajectory signal broader industry shifts in cybersecurity architecture and investment. Several factors suggest continued momentum for distributed security approaches: Cloud-Native Adoption: As organizations build new applications using cloud-native architectures, they require security solutions designed for distributed environments. Edge Computing Growth: The expansion of edge computing creates additional distributed security challenges that centralized tools cannot effectively address. AI-Driven Security: Advanced threat detection increasingly relies on machine learning algorithms that benefit from distributed data processing. Cost Optimization Pressure: Enterprises seek security solutions that reduce total cost of ownership while improving protection capabilities. The cybersecurity market continues evolving toward more distributed, intelligent, and automated solutions. Vega’s approach aligns with these trends while addressing specific pain points in enterprise security operations. The company’s rapid customer acquisition demonstrates market readiness for alternatives to traditional SIEM systems. Conclusion Vega Security’s $120 million Series B funding represents a significant milestone in the evolution of enterprise cybersecurity. The investment validates the company’s distributed approach to threat detection and positions it for accelerated growth in the competitive security market. By challenging the centralized SIEM model that has dominated for decades, Vega addresses critical limitations in traditional security architectures while leveraging modern cloud capabilities and AI technologies. The company’s focus on practical enterprise implementation, combined with strong technical innovation, creates a compelling value proposition for organizations struggling with cloud security challenges. As data volumes continue exploding and cloud adoption accelerates, Vega’s distributed security approach offers a path forward for enterprises seeking effective threat detection without the cost and complexity of traditional solutions. The substantial funding enables Vega to scale its vision while maintaining the technological edge that has driven early market success. FAQs Q1: What problem does Vega Security solve for enterprises? Vega addresses the limitations of traditional SIEM systems in cloud environments by providing distributed threat detection that processes security data where it resides, eliminating the need for costly data centralization while improving detection speed and reducing infrastructure expenses. Q2: How does Vega’s approach differ from traditional SIEM solutions? Unlike traditional SIEM systems that require data centralization before analysis, Vega’s platform performs threat detection within existing cloud services, data lakes, and storage systems. This distributed architecture reduces latency, lowers costs, and improves scalability for cloud-native environments. Q3: What is Vega Security’s funding status and valuation? The company has raised $185 million in total funding, including a recent $120 million Series B round led by Accel. This investment values Vega at $700 million and will support product development, team expansion, and global growth initiatives. Q4: Which types of organizations are adopting Vega’s platform? Vega has secured multi-million-dollar contracts with major banks, healthcare companies, Fortune 500 firms, and cloud-heavy organizations like Instacart. These enterprises are attracted to Vega’s ability to provide immediate detection capabilities without requiring extensive data migration or infrastructure changes. Q5: What makes Vega’s founders qualified to address enterprise cybersecurity challenges? CEO Shay Sandler served in the Israeli military’s cybersecurity unit and was a founding employee at Granulate, which Intel acquired for $650 million. This combination of cybersecurity expertise and enterprise technology experience provides Vega with deep understanding of both security challenges and practical implementation requirements. This post Vega Security’s Revolutionary $120M Funding Fuels AI-Powered Cybersecurity Transformation first appeared on BitcoinWorld .
bitcoinworld·13h ago
News Placeholder
More News
News Placeholder
Curve DAO Token Price Prediction 2026-2030: The Critical Test for CRV’s Long-Term Range
BitcoinWorld Curve DAO Token Price Prediction 2026-2030: The Critical Test for CRV’s Long-Term Range As of early 2025, the Curve DAO Token (CRV) continues to navigate a well-defined long-term price channel, presenting a pivotal question for investors and the broader DeFi ecosystem: can this foundational liquidity protocol token finally achieve a sustained breakout by the decade’s end? This analysis examines the technical, fundamental, and macroeconomic factors that will shape the CRV price trajectory from 2026 through 2030. Curve DAO Token Price Prediction: The Foundation of Analysis Curve Finance, launched in 2020, established itself as a cornerstone of decentralized finance by specializing in stablecoin and pegged asset swaps. Consequently, the CRV token governs this critical protocol. Market analysts consistently reference its historical performance between 2021 and 2025 as a key benchmark. During this period, CRV established a persistent trading range, bounded by strong support and resistance levels that have been tested multiple times. This pattern reflects both the protocol’s entrenched utility and the significant selling pressure from emissions and vesting schedules. Understanding this context is essential for any forward-looking assessment. Technical and On-Chain Factors for 2026-2027 The immediate forecast period hinges on several verifiable metrics. First, protocol revenue and fee generation provide direct value accrual signals. Data from blockchain analytics firms like Token Terminal shows Curve’s consistent fee generation, though token emissions have historically offset this value. Second, the token’s emission schedule is a publicly verifiable factor. A decelerating inflation rate post-2025 could reduce sell-side pressure. Furthermore, on-chain metrics such as the concentration of token holdings in decentralized autonomous organization (DAO) treasuries and voting lock-ups indicate governance health. Active participation in gauge weight votes, for instance, signals engaged, long-term oriented stakeholders. Expert Perspectives on Protocol Evolution Industry researchers from firms like Delphi Digital and The Block have published analyses on Curve’s competitive positioning. They note that while Curve retains a dominant market share in stablecoin swaps, the rise of concentrated liquidity models and cross-chain expansion presents both challenges and opportunities. The protocol’s successful deployment on multiple Layer-2 networks and non-EVM chains like Solana could be a significant growth vector. These strategic expansions, aimed at capturing broader liquidity, are tangible developments that directly influence adoption and, by extension, token economics. Macroeconomic and Regulatory Landscape for 2028-2030 Long-term predictions inevitably intersect with external forces. The regulatory clarity for DeFi, particularly in major markets like the United States and the European Union following MiCA implementation, will impact institutional participation. A favorable regulatory environment could catalyze deeper liquidity pools. Conversely, broader macroeconomic cycles influence capital flow into risk assets like cryptocurrencies. Historical data correlates crypto market cycles with liquidity conditions, suggesting that CRV’s performance will be partially tied to aggregate market capitalisation trends. The token’s role as a governance instrument for a systemically important DeFi protocol adds a layer of inherent utility that may provide resilience during downturns. Key CRV Value Drivers (2025-2030) Driver Potential Impact Timeframe Emission Schedule Slowdown Reduces inflationary sell pressure 2026-2027 Cross-Chain Expansion Increases Total Value Locked (TVL) & fee capture Ongoing Regulatory Clarity Enables institutional liquidity provisioning 2027-2030 DeFi Market Share Defends core utility against competitors Ongoing Assessing the Breakout Potential The central thesis of a sustained breakout from the long-term range requires a confluence of factors. Technically, a weekly or monthly close above the established resistance zone with high volume would signal a structural shift. Fundamentally, this must be supported by a material change in the token’s value accrual mechanism. Proposals within the Curve DAO to enhance token utility—such as direct fee sharing or improved buyback-and-burn mechanics—represent concrete possibilities. The execution and adoption of such governance proposals are critical watchpoints. Moreover, the overall growth of the stablecoin market, a core substrate for Curve, provides a rising tide. If the aggregate supply of major stablecoins continues to expand, the addressable market for Curve’s core service grows proportionally. Protocol-Controlled Value: Growth in non-incentivized, organic TVL is a stronger value indicator than subsidized liquidity. Governance Activity: High voter turnout and sophisticated proposal execution demonstrate a healthy DAO. Competitive Moats: Maintaining low-slippage supremacy for stable assets is the protocol’s primary defense. Conclusion The Curve DAO Token price prediction for 2026-2030 is not a simple extrapolation but an analysis of interdependent variables. CRV’s ability to break its long-term range will depend on the protocol’s success in transitioning from high emissions to sustainable value capture, navigating an evolving competitive and regulatory landscape, and leveraging its governance strength. While historical patterns provide a framework, the coming years will test the protocol’s adaptability. The most plausible scenario involves gradual pressure on the upper bound of its range, with a definitive breakout contingent on the successful implementation of substantive tokenomic upgrades and broader DeFi maturation. Therefore, monitoring on-chain governance decisions and real-time protocol metrics will offer more reliable signals than price speculation alone. FAQs Q1: What is the most critical factor for CRV’s price appreciation by 2030? The most critical factor is a successful evolution of its tokenomics to ensure a stronger link between protocol fee revenue and token holder value, moving beyond purely inflationary emissions. Q2: How does Curve’s competition affect the CRV price prediction? Competition drives innovation but also fragments liquidity. Curve’s long-term price potential is tied to its ability to maintain dominant market share in its niche of low-slippage stablecoin swaps while expanding into new asset classes. Q3: Can regulatory changes significantly impact the CRV forecast? Yes. Clear, non-hostile regulation for decentralized exchanges and liquidity pools could unlock institutional capital and lending activity using Curve pools as collateral, directly increasing utility and demand for the CRV token. Q4: What does “breaking the long-term range” mean technically? Technically, it means the price of CRV sustaining a move above the highest resistance level it has consistently failed to breach over a multi-year period, confirmed on higher timeframes (e.g., weekly or monthly charts) with strong trading volume. Q5: Is the CRV token primarily a governance token or a value-accruing asset? Historically, CRV has functioned primarily as a governance token with inflationary rewards. The central debate for its future price is whether it will develop robust value-accruing properties, such as direct fee sharing or token buybacks, through DAO governance decisions. This post Curve DAO Token Price Prediction 2026-2030: The Critical Test for CRV’s Long-Term Range first appeared on BitcoinWorld .
bitcoinworld·3d ago
News Placeholder
AI Doctor Revolution: Lotus Health Secures $35M to Provide Free, 24/7 Primary Care
BitcoinWorld AI Doctor Revolution: Lotus Health Secures $35M to Provide Free, 24/7 Primary Care In a landmark move for digital health, Lotus Health has secured $35 million in Series A funding to scale its ambitious vision: a licensed, free AI doctor available to patients nationwide. Announced on Tuesday, this investment, co-led by venture giants CRV and Kleiner Perkins, fuels a platform that directly addresses critical gaps in the U.S. healthcare system by merging advanced large language models (LLMs) with rigorous human medical oversight. The funding round brings Lotus Health’s total capital to $41 million, signaling strong investor confidence in AI’s potential to redefine primary care delivery at a time of widespread physician shortages and rising costs. Lotus Health AI Doctor: Bridging Chatbots and Clinical Care While millions already turn to general AI chatbots for preliminary health advice, Lotus Health moves decisively beyond conversation. The platform establishes a fully-functional virtual medical practice. Crucially, it operates with a license to practice in all 50 states, carries malpractice insurance, and maintains strict HIPAA-compliant data systems. This foundational legal and clinical infrastructure allows the AI doctor to facilitate comprehensive care, including differential diagnosis, lab test orders, prescription management, and specialist referrals. The core innovation lies in its hybrid model. A proprietary AI, trained on evidence-based research and calibrated to ask physician-level questions, conducts the initial patient interaction and generates a clinical assessment. However, recognizing the well-documented risk of AI hallucinations in medicine, Lotus Health mandates that all final diagnoses, prescriptions, and care plans undergo review by board-certified physicians from elite institutions like Stanford, Harvard, and UCSF. “AI is giving the advice, but the real doctors are actually signing off on it,” explains founder and CEO KJ Dhaliwal. The Founder’s Vision: From Personal Experience to Systemic Change The drive behind Lotus Health is deeply personal for Dhaliwal. As a child, he frequently acted as a medical translator for his parents, an experience that exposed him firsthand to the inefficiencies and access barriers within American healthcare. After successfully exiting his previous venture, the dating app Dil Mil, he identified the advent of sophisticated LLMs as the technological catalyst needed to tackle those systemic problems. Launched in May 2024, Lotus Health is the manifestation of that vision—a free, 24/7 primary care provider accessible in 50 languages. “There are many challenges, but it’s not SpaceX sending astronauts to the moon,” remarked Saar Gur, General Partner at CRV, who led the investment and joined Lotus Health’s board. A seasoned investor in DoorDash and Ring, Gur believes the regulatory and engineering pathways are now navigable. He cites the telemedicine frameworks solidified during the COVID-19 pandemic, combined with recent breakthroughs in artificial intelligence, as creating a viable runway for Lotus Health’s model. Navigating the Regulatory Landscape and Market Differentiation Outsourcing significant medical decision-making to algorithms presents formidable regulatory hurdles. State-by-state medical licensing, liability concerns, and data privacy are paramount. Lotus Health’s strategy involves building its licensed practice from the ground up, rather than partnering with existing networks, giving it centralized control over quality and compliance. The platform also clearly recognizes its limits; it directs urgent cases to local emergency services and refers patients needing physical exams to in-person providers. The startup enters a competitive field that includes ventures like Lightspeed-backed Doctoronic. Lotus Health’s current key differentiator is its commitment to providing care completely free of charge. While future business models may explore sponsored content or subscriptions, Dhaliwal states the present focus is purely on product development and patient acquisition. This approach could rapidly build a large user base, potentially giving Lotus significant leverage in future negotiations with insurers or employers. The Operational and Economic Impact on Primary Care The U.S. faces a severe shortage of primary care physicians, a crisis that strains access and increases wait times. Lotus Health claims its AI-augmented model can increase capacity dramatically. By handling initial intake, history-taking, and data synthesis, the platform allows its human doctors to focus on high-value review and decision-making. The company asserts this enables its practice to see potentially ten times more patients than a traditional clinic, even while capping virtual visits at 15 minutes to ensure efficiency. Lotus Health AI Doctor: Core Features & Safeguards Feature Description Purpose/Safeguard AI Clinical Engine Generates assessments & plans using latest research Scalability, Consistency Human Physician Review Board-certified doctors sign off on all outputs Safety, Accuracy, Liability Management 50-State License & Insurance Fully licensed practice with malpractice coverage Regulatory Compliance, Patient Trust Free Access Model No cost to patients for primary care services Democratizing Access, User Growth 24/7 Multilingual Service Available anytime in 50 languages Accessibility, Health Equity This model presents a compelling economic proposition. By leveraging AI for the scalable components of care, Lotus Health could drastically reduce the overhead associated with traditional practices. Furthermore, its free point-of-care model eliminates a major barrier for the uninsured and underinsured, potentially reducing costly emergency room visits for non-urgent conditions. The $35 million in new capital will primarily fuel expansion of its clinical operations, technology development, and patient outreach initiatives. Conclusion The $35 million investment in Lotus Health represents a significant bet on AI’s role in the future of medicine. It moves the conversation from speculative chatbot advice to a structured, licensed, and hybrid clinical service. By combining the scalability of artificial intelligence with the irreplaceable judgment of human physicians, Lotus Health aims to tackle the dual crises of accessibility and affordability in primary care. While regulatory and adoption challenges remain, its substantial funding and clear operational model position it as a pioneering force in the rapidly evolving landscape of AI-driven healthcare. The success or failure of this “big swing,” as investor Saar Gur describes it, will provide critical insights into how deeply technology can integrate into the sacred patient-provider relationship. FAQs Q1: How is the Lotus Health AI doctor different from using ChatGPT for health questions? The Lotus Health platform is a licensed medical practice. While it uses AI similar to LLMs, its AI is specifically trained for clinical reasoning and is integrated into a full care workflow that includes diagnosis, prescriptions, and referrals, all reviewed and signed off by licensed, board-certified human doctors. It also operates under HIPAA, carries malpractice insurance, and has a 50-state license. Q2: Is the Lotus Health AI doctor really free, and how does the company plan to make money? Currently, Lotus Health offers its primary care services completely free to patients. Founder KJ Dhaliwal has indicated that future business models could include sponsored health content, subscriptions for premium features, or partnerships with insurers and employers, but revenue generation is not the current focus. Q3: What happens if the AI makes a mistake or “hallucinates” medical information? This is a core safety feature of the model. The AI does not act autonomously. Every diagnosis, lab order, and prescription generated by the AI must be reviewed and approved by a board-certified human physician affiliated with top institutions before it is finalized for the patient. Q4: Can the AI doctor handle emergencies or conditions that need a physical exam? No. Lotus Health explicitly directs patients with urgent symptoms (like chest pain or severe injury) to go to the nearest emergency room or urgent care center. If a case requires an in-person physical examination, the platform will refer the patient to a local physician for that portion of care. Q5: Who are the investors behind Lotus Health’s $35 million Series A round? The $35 million Series A round was co-led by two prominent venture capital firms: CRV and Kleiner Perkins. CRV General Partner Saar Gur, an early investor in DoorDash and Ring, led the deal and has joined the company’s board of directors. This brings Lotus Health’s total funding to $41 million. This post AI Doctor Revolution: Lotus Health Secures $35M to Provide Free, 24/7 Primary Care first appeared on BitcoinWorld .
bitcoinworld·7d ago
News Placeholder
CRV Faces Deeper Drop Before $0.50 Reversal, Says CryptoTony
The crypto trader CryptoTony has reiterated his cautious stance on Curve DAO Token (CRV), advising followers to hold off on buying until a more substantial decline materializes. The analysis accompanies a detailed 1-hour chart of CRVUSDT perpetual futures on Bybit, highlighting a...
CoinCryptoNews·1mo ago
News Placeholder
Curve DAO rejects proposal for $6.2M allocation to Swiss Stake
The Curve DAO community has rejected a proposal that sought to provide significant financial backing to its main development entity, Swiss Stake. The vote marks the latest governance decision within the Curve Finance ecosystem and comes as the protocol’s native token continues to show resilience around the $0.37 level. According to details from the vote,
invezz·2mo ago
News Placeholder
Curve Finance Gains 44% Fee Share in Ethereum DEX
Curve Finance captures 44% fee share boost in Ethereum DEX amid market shifts, reports indicate. Read original article on kanalcoin.com
Kanal Coin·2mo ago
News Placeholder
Curve DAO to vote on 17.45M CRV grant to fund Swiss Stake AG through 2026
Curve founder Michael Egorov placed a 17.45 million CRV funding request for Swiss Stake AG before the DAO, setting up a vote that will decide how the project will operate going into 2026. The company has been tied to Curve since 2020, when it built the first software repositories and helped launch the DAO, but the new request covers one full year and keeps all unused tokens rolling into the next cycle. Swiss Stake AG said its role since 2020 has been simple: make the software, maintain it, expand it, and keep Curve stable. The group explained that it used the August 2020 CRV allocation as the main source of cash, while smaller revenue came from Curve Lite deployments and veCRV staking through Convex, StakeDAO, and Yearn . But the team said the revenue still does not cover its long-term costs, so it plans to explore future monetization for certain front-end features. The company clarified that no grant funds will be used for those commercial features. Swiss Stake AG outlines previous work Swiss Stake AG said it now has more than 25 contributors working on Curve-related systems and wants to keep that team intact. According to the DAO proposal, the first grant came with regular quarterly reports, and those will continue. Curve said, “We hope the community saw the progress,” pointing to 2024–2025 upgrades that included crvUSD improvements, better collateral options, updated lending mechanics, cross-chain boost tools, and a full update to Curve’s governance and user interfaces. It also said Llamalend V2 is built and is waiting for security audits before release. Source: Curve Finance/X The company confirmed that the new request follows the end of the 2024–2025 grant, which stopped in August 2025. With remaining funds, Swiss Stake AG kept operations going through the end of 2025, and Curve said the 2026 proposal keeps development running without any gaps in staffing or knowledge. Proposal sets 2026 plans and grant rules The plan for 2026 centers on expanding Curve’s infrastructure . Swiss Stake AG wants to launch Llamalend V2 with LP and PT collateral, build FXSwap to move Curve into onchain foreign exchange, extend crvUSD systems with more collateral and new risk models, deploy Curve across more chains with stronger DAO tooling, and continue the full rebuild of Curve’s front-end architecture. Other plans include new developer tools, AMM research on dynamic fees, modular work on existing AMMs, external management tools for lending markets, more simulation and analysis systems, and continued work on the Curve Block Oracle. The company asked for 17,450,000 CRV, or about CHF 5.3 million, matching the amount from the previous period. Funds run from January 2026 to January 2027. Tokens will vest through a smart contract under DAO rules. The group said all spending will follow the project description, with any unused funds rolled into the next year. Swiss Stake AG may stake CRV in wrapper protocols to earn yield, but only for project work. The grant terms require open-source release of all software created with these funds. Taxes related to the grant may be paid from the allocation. Swiss Stake AG will file bi-annual spending reports and alert the DAO of any issues that could disrupt work. Disputes will follow Swiss law and go through courts in Zug. Funds will cover security audits, front-end software, Curve repository development, infrastructure, community support, and research and analytics. Quarterly reports will continue, according to the proposal . Get seen where it counts. Advertise in Cryptopolitan Research and reach crypto’s sharpest investors and builders.
cryptopolitan·2mo ago
News Placeholder
Curve Founder Proposes 17.45M CRV Grant for Lending Protocol Upgrades
Curve Finance founder Michael Egorov has proposed a 17.45 million CRV token grant, valued at $6.6 million, to fund Swiss Stake AG's development of key upgrades like Llamalend v2 and an onchain FX swap for 2026. The grant supports a 25-person team focused on software research, infrastructure, security, and ecosystem growth for Curve Finance. It [...]
coinotag·2mo ago
News Placeholder
Curve DAO Token Enters Decision Zone as Buyers Defend Key Price Range
Curve DAO shows renewed strength as price, volume, and structure improve. CRV holds above support while buyers defend momentum near a key resistance zone. <p>The post Curve DAO Token Enters Decision Zone as Buyers Defend Key Price Range first appeared on Coin Crypto Newz.</p>
CoinCryptoNews·3mo ago
News Placeholder
Curve DAO Token (CRV) To Make Rebound? Key Emerging Pattern Formation Suggest So!
Date: Thu, Nov 20, 2025 | 09:30 AM GMT The broader altcoin market continues to face strong headwinds as Ethereum (ETH) extends its 30-day decline past 22%. This ongoing weakness has put pressure on several major assets, including Curve DAO Token (CRV), which has fallen nearly 16%...
CoinsProbe·3mo ago
<
1
2
...
>

Sentiment

Indicates whether most users posting on a symbol’s stream over the last 24 hours are fearful or greedy.
0
25
50
75
100
Extreme
Fear
Neutral
Greed
Extreme
Fear
Greed
N/A
Last score

N/A

1 day ago

Sign Up / Log In

1 week ago

Sign Up / Log In

1 month ago

Sign Up / Log In

3 months ago

Sign Up / Log In

6 months ago

Sign Up / Log In

1 year ago

Sign Up / Log In

Message Volume

Measures the total amount of chatter on a stream over the last 24 hours.
0
25
50
75
100
Extremely
Low
Normal
High
Extremely
Low
High
N/A
Last score

N/A

1 day ago

Sign Up / Log In

1 week ago

Sign Up / Log In

1 month ago

Sign Up / Log In

3 months ago

Sign Up / Log In

6 months ago

Sign Up / Log In

1 year ago

Sign Up / Log In

Participation Ratio

Measures the number of unique accounts posting on a stream relative to the number of total messages on that stream.
0
25
50
75
100
Extremely
Low
Normal
High
Extremely
Low
High
N/A
Last score

N/A

1 day ago

Sign Up / Log In

1 week ago

Sign Up / Log In

1 month ago

Sign Up / Log In

3 months ago

Sign Up / Log In

6 months ago

Sign Up / Log In

1 year ago

Sign Up / Log In

AboutSimilar to Uniswap, Curve Finance is an Automated Market Maker (AMM) based Decentralised Exchange (DEX). Unlike Uniswap, its main focus is only to swap between assets that are supposed to have the same value. This is useful in the DeFi ecosystem as there are plenty of wrapped tokens and synthetic tokens that aim to mimic the price of the real underlying asset.  For example, one of the biggest pools is 3CRV, which is a stablecoin pool consisting of DAI, USDT, and USDC. Their ratio in the pool will be based on the supply and demand of the market. Depositing a coin with a lesser ratio will yield the user a higher percentage of the pool. As such when the ratio is heavily tilted to one of the coins, it may serve as a good chance to arbitrage. Curve Finance also supports yield-bearing tokens. For example, it collaborated with Yearn Finance to release yUSD pools that consisted of yDAI, yUSDT, yUSDC and yTUSD. Users that participated in this pool will not only have yield from the underlying yield-bearing tokens, but also the swap fees generated by the Curve pool. Including the yield farming rewards in terms of CRV tokens, liquidity providers of the pool actually have three sources of yield.
Details
Links
Source
Categories
Arbitrum EcosystemAutomated Market Maker (AMM)Base EcosystemBase NativeCoinbase 50 IndexCurve EcosystemDWF Labs PortfolioDecentralized Exchange (DEX)Decentralized Finance (DeFi)Energi EcosystemEthereum EcosystemEtherlink EcosystemExchange-based TokensFantom EcosystemGMCI DeFi IndexGMCI IndexGovernanceOptimism EcosystemPolygon EcosystemSora EcosystemStablecoin IssuerYZi Labs (Prev. Binance Labs) PortfolioYield Farming
Date
Market Cap
Volume
Close
February 11, 2026
$344.2M
$77.64M
---
February 11, 2026
$343.39M
$75.38M
---
February 10, 2026
$373.19M
$61.94M
$0.253
February 09, 2026
$372.73M
$41.91M
$0.2528
February 08, 2026
$379.77M
$68.55M
$0.2575
February 07, 2026
$381.1M
$133.38M
$0.2583
February 06, 2026
$340.71M
$136.69M
$0.2309
February 05, 2026
$405.78M
$67.58M
$0.2756
February 04, 2026
$406.18M
$79.91M
$0.2756
February 03, 2026
$424.09M
$98.65M
$0.2879

Poll

Where do you think symbol logo$BTC tops out this year?
$75k–$100k
$100k–$150k
$150k–$200k
$200k+

Latest CRV News

Top Discussions

Advertisement|Remove ads.