CoinQuant Introduces Trading Infrastructure for the Agent Economy

TheNewsCryptoОпубликовано 2026-05-26Обновлено 2026-05-26

Введение

CoinQuant, an AI-powered no-code trading platform with over 15,000 users, is expanding its infrastructure to serve the emerging "agent economy." The company is introducing a unified trading intelligence architecture designed for both human traders and autonomous AI agents. This system acts as a trust layer, ensuring all trading strategies—whether human-created or AI-generated—undergo rigorous validation, backtesting, and risk analysis before live deployment. The core of the platform is an intelligence engine that combines institutional-grade backtesting, structured market data, AI optimization, and a proprietary Domain Expert system. Human traders interact via a natural language interface, while AI agents connect through APIs. Every validated strategy contributes to an anonymized aggregate intelligence layer. CoinQuant plans to launch an automated execution layer on HyperLiquid and is currently raising a $3 million Seed round to scale its product and infrastructure, including the development of HYDRA, a hierarchical multi-agent architecture. The company aims to become the foundational intelligence backbone for algorithmic trading in the agent-driven financial era.

The agent economy is reshaping financial markets. Open-source agent frameworks are accelerating autonomous financial activity, with AI agents increasingly executing trades, managing portfolios, and interacting directly with exchanges. Yet the financial infrastructure supporting this shift has not evolved at the same pace.

CoinQuant, the AI-powered no-code trading platform that has attracted over 15,000 users since launch, today announces its expansion into a unified trading intelligence architecture built for both human traders and autonomous AI agents.

“Autonomous trading is no longer theoretical. It is already happening. The next phase requires structured validation, disciplined risk management, and intelligence infrastructure. That is what CoinQuant delivers,” said Maan Ftouni, Founder and CEO of CoinQuant.

The trust layer for autonomous AI agents

As AI agents increasingly connect directly to exchanges and wallets, many rely on raw APIs without structured backtesting, risk analysis, or validated data pipelines. CoinQuant introduces a structured intelligence layer between trading intent and live capital deployment.

No strategy goes live unvalidated, whether built by a human or generated autonomously. Backtesting, risk metrics, and parameter optimization are embedded directly into the workflow, ensuring capital is deployed only after systematic evaluation.

From no-code platform to trading intelligence architecture

CoinQuant’s expansion reflects the evolution of its core engine. At the center of the platform is a unified intelligence system combining institutional-grade backtesting, structured market data from providers including Kaiko and Financial Modeling Prep, AI-powered optimization, and CoinQuant’s proprietary Domain Expert system.

Human traders interact through a natural language interface that allows them to describe, test, optimize, and deploy strategies without writing code. AI agents connect programmatically through API and MCP integrations to validate strategies and access structured data at scale.

The interface is only the surface. The intelligence engine beneath it is the product.

One engine, two growth vectors

This expansion represents a natural extension of CoinQuant’s business model. The platform’s growing base of over 15,000 traders validates product-market fit and generates structured strategy intelligence. The agent interface multiplies that value through high-volume programmatic validation and automation workflows.

Every strategy built, tested, and deployed contributes to an anonymized aggregated intelligence layer, creating a proprietary dataset mapping trading intent to logic, validation metrics, and performance outcomes across market conditions.

“The same engine that powers a trader’s first backtest can validate hundreds of strategies for autonomous systems in parallel. We are building one intelligence foundation for both humans and AI agents,” Ftouni added.

Automation layer launching next

CoinQuant is preparing to launch its automated strategy execution layer on HyperLiquid as its second major revenue stream.

The automation layer will enable validated strategies to transition seamlessly from backtest to live deployment within the same intelligence framework.

Raising $3 million to scale

CoinQuant is currently raising a $3 million Seed round to support product development, infrastructure scaling, and global expansion. The company is also developing HYDRA, a hierarchical multi-agent architecture designed for advanced research, risk modeling, and strategy optimization.

With over 15,000 users validating demand for structured trading intelligence, CoinQuant aims to become the intelligence backbone of algorithmic trading in the agent-driven financial era.

About CoinQuant

CoinQuant is an AI trading platform that enables traders and AI agents to build, validate, optimize, and automate trading strategies using natural language. Headquartered in Dubai, CoinQuant integrates with major exchanges and institutional data providers to deliver professional-grade trading infrastructure to a global community.

  • Websitehttps://coinquant.ai
  • Xhttps://x.com/CoinQuantX
  • Discordhttps://discord.gg/StNxg33z
  • Instagramhttps://www.instagram.com/coinquant.ai/
  • TikTokhttps://www.tiktok.com/@coinquant.ai
  • LinkedInhttps://www.linkedin.com/company/coinquant

Media contact:

Disclaimer: TheNewsCrypto does not endorse any content on this page. The content depicted in this Press Release does not represent any investment advice. TheNewsCrypto recommends our readers to make decisions based on their own research. TheNewsCrypto is not accountable for any damage or loss related to content, products, or services stated in this Press Release.

TagsCoinQuantPress Release

Связанные с этим вопросы

QWhat is the core challenge that CoinQuant's new trading infrastructure aims to address for the agent economy?

AIt addresses the lag in financial infrastructure evolution, which has not kept pace with the rapid growth of autonomous AI agents in trading. It aims to provide structured validation, disciplined risk management, and intelligence infrastructure that are currently missing when AI agents connect directly to exchanges.

QWhat are the two primary user groups or growth vectors for CoinQuant's unified trading intelligence architecture?

AThe two primary user groups are human traders and autonomous AI agents. Human traders use the natural language interface, while AI agents connect programmatically via API and MCP integrations. Both groups utilize the same underlying intelligence engine.

QAccording to the article, what is the specific function of the intelligence layer CoinQuant introduces for autonomous AI agents?

AThe intelligence layer acts as a structured 'trust layer' between trading intent and live capital deployment. It enforces mandatory backtesting, risk analysis, and parameter optimization for all strategies—human or AI-generated—before they can go live, ensuring systematic evaluation.

QWhat are the two main components CoinQuant is developing or launching with the $3 million Seed funding, as mentioned in the article?

AThe two main components are: 1) The automated strategy execution layer launching next on HyperLiquid as a new revenue stream. 2) HYDRA, a hierarchical multi-agent architecture designed for advanced research, risk modeling, and strategy optimization.

QHow does CoinQuant's platform benefit from the strategies created by its user base?

AEvery strategy built, tested, and deployed contributes to an anonymized, aggregated intelligence layer. This creates a proprietary dataset that maps trading intent to logic, validation metrics, and performance outcomes across market conditions, enhancing the platform's core intelligence foundation.

Похожее

Metrics Ventures Market Watch: The Brewing Storm

In the past month, the market has been actively trading contrasting expectations, balancing global supply chain disruptions fueling re-inflation against both actual and anticipated (Walsh) interest rate hikes. This volatility has impacted commodities and most equities, though tech has temporarily benefited from concentrated short-term liquidity. Fundamentally, as previously analyzed regarding the Strait of Hormuz situation, the US faces deep-seated balance sheet issues beyond what any single Fed chair can resolve. Hypotheses around a figure like Walsh could only materialize if AI fundamentally reshapes production relations. Until then, most non-AI-leading nations (effectively all except the US and China) risk fiscal and monetary policy collapse, rendering the identity of the Fed chair ultimately irrelevant. For crypto assets, there is currently no clear role in these dominant narratives. The market remains strongly capped by the 200-day moving average. While trends may shift from "anything but AI" to "anything but mines," this phase is dominated by the silicon vs. carbon (AI vs. traditional) dichotomy, leaving little room for crypto—though its time will come. **Market Overview & Commentary** The crypto market lacks significant catalysts beyond hype, plagued by low volume and scarce innovation, with clear technical resistance. Currently, crypto struggles for attention as global focus lies elsewhere. Assets like gold, oil, and grains are more direct hedges against supply-chain-driven inflation/stagflation. Bitcoin needs more time for capitulation and consolidation; this reset is expected to last until at least Q4 2026. Looking ahead, three factors will likely drive future market volatility: 1. Whether Walsh repeats the patterns of predecessors like Bassant or Musk, shifting stance into a new policy cycle. 2. The market underestimates the severity of global supply chain damage and the prolonged time needed for repair, which will eventually lead to recognition of acute resource shortages and price swings. 3. AI non-beneficiary, high-inflation nations (e.g., UK, Japan) will face severe fiscal and monetary crises. Rapid AI-driven displacement could trigger a collapse of existing credit and welfare systems. Ultimately, the market may realize that an AI bubble burst could spark contagious sovereign credit crises. The monetary and fiscal responses to such a scenario could serve as the ultimate catalyst for Bitcoin's next major bull run.

marsbit2 мин. назад

Metrics Ventures Market Watch: The Brewing Storm

marsbit2 мин. назад

Insiders Betting on Musk Are Reaping 'Historic Returns'

The largest IPO in history is imminent as SpaceX, led by Elon Musk, is set to price its offering on June 12. At a targeted valuation near $2 trillion, this event will mint new billionaires from Musk's inner circle of long-time allies, rewarding their loyalty with unprecedented returns. Key beneficiaries include Antonio Gracias, Musk's close friend and confidant, who holds a 7.3% stake potentially worth over $140 billion, making him the second-largest individual shareholder. Gwynne Shotwell, President and COO since 2002, holds shares valued at roughly $2 billion. Bret Johnsen, the CFO, holds stock worth approximately $1.4 billion. Luke Nosek, a PayPal co-founder and early investor, stands to gain about $5.3 billion. The IPO filing also reveals complex and controversial financial arrangements. SpaceX has guaranteed nearly $20 billion in payments from xAI's subsidiary to Gracias's Valor Equity Partners for AI hardware leases—deals auditors flagged as "failed sale-leaseback" transactions, forcing SpaceX to record them as debt. Despite rapid revenue growth, SpaceX is not profitable, posting a $49 billion loss in 2025 and a $4.3 billion loss in Q1 2026. Capital expenditures are soaring, with over 60% directed toward AI. Public investors will inherit these losses, significant debts, and a governance structure heavily controlled by insiders, including a provision granting Musk up to a billion additional shares if one million people live on Mars.

链捕手4 мин. назад

Insiders Betting on Musk Are Reaping 'Historic Returns'

链捕手4 мин. назад

Ethereum Reduced to a Chinese Concept Stock

The article titled "Ethereum Becomes a Chinese Concept Stock" presents a critical analysis of Ethereum's perceived decline in market confidence and its structural parallels to Chinese companies listed on US stock exchanges. It begins by noting significant sell-offs by early investors like Wanxiang and key figures like Bankless's Hoffman in 2026, despite Ethereum's strong fundamental activity. The piece questions the erosion of trust in Vitalik Buterin and the Ethereum Foundation (EF), arguing that while other ecosystems have faced founder controversies, Ethereum's issues stem from its internal governance model. The author draws a direct comparison to "China concept stocks," which are Chinese businesses operating globally but reliant on foreign capital and listings. Similarly, Ethereum, funded early by Chinese capital like Wanxiang, developed a strong institutional framework from its IXO to its PoS transition. The core problem, according to the article, is a leadership vacuum regarding price and direction. Vitalik's move to make the EF smaller and less active is framed as a mistake. While he advocates for ETH as a "commodity," the ecosystem lacks a clear entity to steward its price stability, creating tension within the PoS system, as seen with Lido's challenges. The narrative suggests that excessive abstraction and a hands-off approach from the EF have left the community adrift, contrasting with more proactive foundations like Solana's. The article then examines emerging technical narratives for Ethereum: privacy (ZK-proofs), AI integration, and a refocus on Layer-1. However, it observes a shift from Ethereum leading as a "world computer" to merely adapting to trends like AI, where crypto-native projects are finding success independently of Ethereum. The piece posits that Ethereum's unique value in an increasingly fragmented world may be as a permissionless, global financial testing ground—a neutral platform amid geopolitical tensions. In conclusion, it asserts that Ethereum's fate mirrors that of China concept stocks: an asset born from one region (conceptually "A"), funded by another ("B"), and dependent on "B" for exit liquidity. While Ethereum's "golden age" may be over, and selling pressure from early backers will continue, it remains positioned as a critical linkage point in a divided global landscape, standing at a new, albeit uncertain, starting point.

marsbit29 мин. назад

Ethereum Reduced to a Chinese Concept Stock

marsbit29 мин. назад

AI Agents Fundamentally Transform Web3 Gaming: From the Rugpull Bakery Bot Controversy to the New Agent Paradigm in 2026

AI Agents Are Redefining Web3 Gaming: From the Rugpull Bakery Bot Controversy to the 2026 Agentic Paradigm The recent controversy in Rugpull Bakery, a competitive baking game on Abstract chain, highlighted a pivotal shift. Player complaints about unfair bot automation in Season 2 led developers to not ban them, but instead formally integrate AI agents as core gameplay in Season 3, providing official guides (skill.md, agent.json). This move signals Web3 gaming's transition into the "Agentic Gaming" era, where AI agents are sovereign entities with independent strategy and economic rights, moving beyond simple automation. By 2026, AI agent integration has evolved into three core models reshaping the ecosystem: 1. **Autonomous Competitors & Economic Entities:** Agents act as independent players. Examples include TEN Protocol's poker-playing agents, AI Arena's trainable NFT fighters, Satoshi Strike Force's "Digital Athletes" trained on player data, and Somnia's "Agentic L1" blockchain providing native infrastructure for millions of autonomous agents. 2. **Modular Infrastructure & Programmable Environments:** Games like EVE Frontier enable "server-side modding," allowing AI agents to program game world logic directly into structures like smart storage, turrets, and stargates via Smart Assemblies. Coupled with standards like ERC-8183, which enables autonomous job creation and payment between agents, in-game infrastructure gains a "commercial soul." 3. **Hybrid Companions & Dynamic Adaptive Worlds:** This model focuses on human-AI collaboration. In Parallel Colony, players guide highly autonomous AI Avatars with unique personalities and goals. Illuvium plans to use AI to transform NPCs into dynamic, context-aware entities that create personalized, emergent narratives. The conclusion is clear: blocking automation is futile. The future lies in leveraging blockchain's transparency and programmability to empower AI agents as first-class citizens. Web3 gaming is shifting from inefficient human labor to efficient algorithmic interplay and emergent intelligence, creating a "post-human" digital frontier where players become commanders and symbiotic partners in a new socioeconomic experiment.

marsbit29 мин. назад

AI Agents Fundamentally Transform Web3 Gaming: From the Rugpull Bakery Bot Controversy to the New Agent Paradigm in 2026

marsbit29 мин. назад

Торговля

Спот
Фьючерсы
活动图片