Quantitative AI Trading Platform AlphaNet Raises $10M Seed Round Led by Joffre Capital

TheNewsCryptoОпубликовано 2026-04-16Обновлено 2026-04-16

Введение

Quantitative AI trading platform AlphaNet has raised $10 million in a seed funding round led by Joffre Capital, with participation from Huashan Capital and an Asia-based quantitative trading consortium. The platform, which is preparing for a public launch, aims to level the playing field for retail investors by providing end-to-end automated trading access to institutional-grade quantitative strategies. Its offerings include a strategy marketplace, one-click deployment, and proprietary execution algorithms. Incubated by prop trading firm Tensor Investment, AlphaNet currently features over 30 strategies and plans to open its platform to other quant teams by the end of Q2. The funding brings operational expertise from Joffre Capital, scaling resources from Huashan, and additional strategies from the consortium.

Institutional-grade quantitative AI trading platform AlphaNet has announced a $10M Seed Round led by private equity firm Joffre Capital and joined by venture capital firm Huashan Capital and an Asia-based quantitative trading consortium. This marks the platform’s preparation for a public launch moving out of invitation-based whitelist only mode.

Evolving the Retail Trading Paradigm

With the proliferation of perp DEXs, RWAs, and prediction markets, financialization of instruments and choice of trading venues has reached an all time high. As markets are becoming increasingly efficient, and adversarial players more diverse as well as institutional, retail investors’ trading edge is being increasingly eroded. AlphaNet has built a platform that aims to level the playing field, by providing users end-to-end automated trading from a collection of institutional-grade alpha sources at their disposal.

End-to-End Platform for Systematic Alpha Generation

AlphaNet focuses on providing users “systematic” alpha – sources of superior risk-adjusted return for users that can be measured, tracked, and assessed quantitatively over time. The main offering is a SOTA end-to-end platform that includes an institutional-grade quantitative strategy marketplace, one-click strategy deployment, seamless execution via proprietary trading algorithms, and tools to manage and track and tweak the users’ own strategy-mix in real time.

Incubated by Asia prop trading firm Tensor Investment, AlphaNet is the only platform that combines deep learning-based strategies, low-latency execution algos, AI compute for training and inference, and liquidity via a DEX-based protocol in one seamless turnkey solution. The platform does the heavy lifting and the users get to access proprietary alpha that was previously only available to institutional investors.

Open Platform and Agentic Future

AlphaNet currently has over 30 high-Sharpe strategies and a user retention rate of over 98%. All of the strategies are currently provided by Tensor, but towards the end of Q2 the Open Platform is expected to launch, enabling other prop trading teams to integrate their quant strategies and alphas. All strategies on the platform require undergoing AlphaNet’s proprietary robustness testing and alpha decay mitigation framework before being allowed to be live on the platform, and will leverage AlphaNet’s shared trading execution and inference infrastructure.

By the end of Q2, 100+ strategies are expected to be on AlphaNet, and a novel agentic system for personalized strategy selection and deployment is currently being developed to help users navigate through the myriad of alphas and automate deployment and monitoring.

Experience, Resources, and Alignment via Capital

Through this funding round, AlphaNet benefits from the operational expertise of Joffre Capital, whose multibillion dollar portfolio include private and public companies with the likes of Investing.com, Grindr, and Coins.ph (Southeast Asia’s biggest crypto exchange). Huashan Capital, early investor of companies such as Airwallex, AI Rudder, and Moonshot.ai (Kimi) helps bring expertise and resources in scaling of tech platforms and fundraising.

And finally, the quantitative trading consortium brings proprietary strategies, compute resources, and algorithms to AlphaNet’s offerings to help it grow as the first institutional-grade end-to-end open alpha platform.

About AlphaNet

AlphaNet is a SOTA quantitative AI trading platform that provides users institutional-grade alpha, proprietary algo execution, and automated trading in one seamless end-to-end solution.

Website: https://alphanet.global/

Contact Details

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Связанные с этим вопросы

QWhat is the total amount of seed funding raised by AlphaNet and which firm led the round?

AAlphaNet raised $10 million in seed funding, led by private equity firm Joffre Capital.

QWhat is the primary goal of the AlphaNet platform?

AAlphaNet aims to level the playing field for retail investors by providing an institutional-grade, end-to-end automated trading platform with access to quantitative alpha sources.

QWhat unique infrastructure does AlphaNet combine in its platform according to the article?

AAlphaNet combines deep learning-based strategies, low-latency execution algorithms, AI compute for training and inference, and liquidity via a DEX-based protocol in a single turnkey solution.

QWhat major development is expected by the end of Q2 for AlphaNet's platform?

ABy the end of Q2, AlphaNet is expected to launch its Open Platform, enabling other proprietary trading teams to integrate their quant strategies, and aims to host over 100 strategies.

QWhich notable companies are in Joffre Capital's portfolio, as mentioned in the article?

AJoffre Capital's multibillion-dollar portfolio includes companies such as Investing.com, Grindr, and Coins.ph (Southeast Asia's largest crypto exchange).

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