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DUBAI, United Arab Emirates, May 26, 2026 (GLOBE NEWSWIRE) -- 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.
Website https://coinquant.ai
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LinkedIn https://www.linkedin.com/company/coinquant
Media contact:
Nada Ali
Marketing@coinquant.ai
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