These startups are building cutting-edge AI models without the need for a data center
Researchers have utilized GPUs distributed globally, combined with private and public data, to train a new type of large language model (LLM). This move indicates that the mainstream approach to building artificial intelligence may be disrupted.
Two unconventional AI-building startups, Flower AI and Vana, collaborated to develop this new model, named Collective-1.
Flower's developed technology allows the training process to be distributed across hundreds of connected computers over the internet. The company's tech has been used by some firms to train AI models without the need for centralized computing resources or data. Vana, on the other hand, provided data sources such as private messages on X, Reddit, and Telegram.
By modern standards, Collective-1 is relatively small-scale, with 7 billion parameters—these parameters collectively empower the model—compared to today's most advanced models (such as those powering ChatGPT, Claude, and Gemini) with hundreds of billion parameters.
Nic Lane, a computer scientist at the University of Cambridge and co-founder of Flower AI, stated that this distributed approach is expected to scale well beyond Collective-1. Lane added that Flower AI is currently training a 300 billion parameter model with conventional data and plans to train a 1 trillion parameter model later this year—approaching the scale offered by industry leaders. "This could fundamentally change people's perception of AI, so we are going all-in," Lane said. He also mentioned that the startup is incorporating images and audio into training to create multimodal models.
Distributed model building may also shake up the power dynamics shaping the AI industry.
Currently, AI companies construct models by combining massive training data with large-scale computing resources centralized in data centers. These data centers are equipped with cutting-edge GPUs and interconnected via ultra-high-speed fiber-optic cables. They also heavily rely on datasets created by scraping public (though sometimes copyrighted) materials such as websites and books.
This approach implies that only the wealthiest companies and nations with a large number of powerful chips can effectively develop the most robust, valuable models. Even open-source models like Meta's Llama and DeepSeek's R1 are constructed by companies with large data centers. A distributed approach could allow small companies and universities to build advanced AI by aggregating homogeneous resources. Alternatively, it could enable countries lacking traditional infrastructure to build stronger models by networking multiple data centers.
Lane believes that the AI industry will increasingly move towards allowing training in novel ways that break out of a single data center. The distributed approach "allows you to scale computation in a more elegant way than a data center model," he said.
Helen Toner, an AI governance expert at the Emerging Technology Security Center, stated that Flower AI's approach is "interesting and potentially quite relevant" to AI competition and governance. "It may be hard to keep up at the cutting edge, but it may be an interesting fast-follower approach," Toner said.
Divide and Conquer
Distributed AI training involves rethinking how computation is allocated to build powerful AI systems. Creating LLMs requires feeding a model large amounts of text, adjusting its parameters to generate useful responses to prompts. In a data center, the training process is segmented to run parts of tasks on different GPUs and then periodically aggregated into a single master model.
The new approach allows work typically done in large data centers to be performed on hardware potentially miles apart and connected by relatively slow or unreliable internet connections.
Some major companies are also exploring distributed learning. Last year, Google researchers demonstrated a new scheme called DIstributed PAth COmposition (DiPaCo) for segmenting and integrating computation to make distributed learning more efficient.
To build Collective-1 and other LLMs, Lane collaborated with academic partners in the UK and China to develop a new tool called Photon to make distributed training more efficient. Lane stated that Photon enhances Google's approach by adopting a more efficient data representation and shared and integrated training schemes. This process is slower than traditional training but more flexible, allowing for the addition of new hardware to accelerate training, Lane said.
Photon was developed through a collaboration between researchers at Beijing University of Posts and Telecommunications and Zhejiang University. The team released the tool under an open-source license last month, allowing anyone to use this approach.
As part of Flower AI's efforts in building Collective-1, their partner Vana is developing a new method for users to share their personal data with AI builders. Vana's software enables users to contribute private data from platforms like X and Reddit to the training of large language models, specifying potential final uses and even receiving financial benefits from their contributions.
Anna Kazlauskas, co-founder of Vana, stated that the idea is to make unused data available for AI training while giving users more control over how their information is used in AI. "This data is usually unable to be included in AI models because it's not public," Kazlauskas said. "This is the first time that data contributed directly by users is being used to train foundational models, with users owning the AI model created from their data."
University College London computer scientist Mirco Musolesi has suggested that a key benefit of distributed AI training approaches may be unlocking novel data. "Extending this to cutting-edge models will allow the AI industry to leverage vast amounts of distributed and privacy-sensitive data, such as in healthcare and finance, for training without the risks of centralization," he said.
You may also like

Morning News | CME Group launches Nasdaq Cryptocurrency Index futures; Asset management giant Janus Henderson strategically invests in Ethena

Bitcoin Layer 2 Network Botanix: Why Did We Choose to Dissolve?

Why did Oracle deliver the strongest financial report in history, yet its stock price fell?

When the P2P illicit funds from ten years ago turned into 60,000 bitcoins

Dialogue with OmenX Founder: Why does the prediction market need an evolution from "spot" to "derivatives"?

Galaxy in-depth report: Is Solana still worth paying attention to?

Young people in South Korea make a "final effort" in the epic bull market

The pricing controversy of Trade.xyz exposes the fatal weakness of Pre-IPO perpetual contracts

How much longer can Ethereum's last big buyer hold on?

World Cup 2026 Coming – WEEX Celebrates with $1M Prize Pool & Michael Owen Live

Morning Report | OpenAI has submitted an S-1 registration statement draft to the U.S. SEC; Morpho completes $175 million financing

Galaxy Deep Research Report: How Hyperliquid's HIP-4 Upgrade Changes the Landscape of Prediction Markets?

Latest research from 13 top universities including Cornell University: The current state, challenges, and misconceptions of the fusion of Crypto and AI

Deconstructing Anthropic: The Best AI Company, Possibly Also a Type of Organizational Invention

Every exchange is a "Universal Exchange."

The counterattack of traditional finance: Alliance chains are quietly reviving

Pantera Capital Partner: How Tokenization is Restructuring the Private Equity and Early Investment Ecosystem?

Mastercard Launches Agent Pay for AI, Plans to Record AI Agent Payment Authorizations on Polygon
Mastercard launched Agent Pay for AI, a new payment protocol designed to help AI agents make small payments such as pay-per-use access to data and APIs. The system plans to record human-granted AI agent permissions on Polygon, focusing on verifiable authorization, identity, and payment controls.





