AI News 03月21日
Hugging Face calls for open-source focus in the AI Action Plan
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Hugging Face呼吁美国政府在其即将推出的AI行动计划中优先考虑开源开发。该公司强调,深思熟虑的政策能够支持创新,同时确保人工智能的发展保持竞争力并与美国价值观保持一致。Hugging Face提出了一个以三个相互关联的支柱为中心的AI行动计划,强调加强开源AI生态系统、高效可靠地采用AI以及促进安全和标准的重要性,并提出了多项政策建议,旨在支持开源AI系统的开发和应用。

💡强调加强开源AI生态系统:Hugging Face认为技术创新源于跨机构的多元化参与者,支持基础设施(如国家人工智能研究资源)以及对开放科学和数据的投资,可以促进这些贡献的累加效应,加速稳健的创新。

🚀 优先考虑高效可靠地采用AI:Hugging Face认为,通过促进沿价值链的采用来传播技术的好处,需要各行各业的参与者来塑造其发展。更高效、模块化和稳健的AI模型需要研究和基础设施投资,以实现最广泛的参与和创新,从而实现技术在美国经济中的扩散。

🛡️ 强调促进安全和标准:Hugging Face建议,在开源软件网络安全、信息安全和标准方面的数十年实践,可以为更安全的AI技术提供信息。它提倡推广可追溯性、披露和互操作性标准,以建立一个更具弹性和稳健的技术生态系统。

💰 开放模型的商业采用因素:成本效益是主要驱动因素,因为从头开始开发AI模型需要大量投资,因此利用开放基础可以降低研发费用;定制至关重要,组织可以根据其用例定制和部署模型,而不是依赖于通用解决方案;开放模型减少了供应商锁定,使公司可以更好地控制其技术堆栈和独立于单个提供商;开放模型已经赶上并在某些情况下超越了封闭的专有系统的能力。

📜 Hugging Face的政策建议:包括增强研究基础设施、分配公共计算资源用于开源、实现数据访问以开发开放系统、开发开放数据集、加强尊重权利的数据访问框架、投资于利益相关者驱动的创新、加强卓越中心以及支持高质量数据以进行性能和可靠性评估。

Hugging Face has called on the US government to prioritise open-source development in its forthcoming AI Action Plan.

In a statement to the Office of Science and Technology Policy (OSTP), Hugging Face emphasised that “thoughtful policy can support innovation while ensuring that AI development remains competitive, and aligned with American values.”

Hugging Face, which hosts over 1.5 million public models across various sectors and serves seven million users, proposes an AI Action Plan centred on three interconnected pillars:

    Hugging Face stresses the importance of strengthening open-source AI ecosystems.  The company argues that technical innovation stems from diverse actors across institutions and that support for infrastructure – such as the National AI Research Resource (NAIRR), and investment in open science and data – allows these contributions to have an additive effect and accelerate robust innovation.
    The company prioritises efficient and reliable adoption of AI. Hugging Face believes that spreading the benefits of the technology by facilitating its adoption along the value chain requires actors across sectors of activity to shape its development. It states that more efficient, modular, and robust AI models require research and infrastructural investments to enable the broadest possible participation and innovation—enabling diffusion of technology across the US economy.
    Hugging Face also highlights the need to promote security and standards. The company suggests that decades of practices in open-source software cybersecurity, information security, and standards can inform safer AI technology. It advocates for promoting traceability, disclosure, and interoperability standards to foster a more resilient and robust technology ecosystem.

Open-source is key for AI advancement in the US (and beyond)

Hugging Face underlines that modern AI is built on decades of open research, with commercial giants relying heavily on open-source contributions. Recent breakthroughs – such as OLMO-2 and Olympic-Coder – demonstrate that open research remains a promising path to developing systems that match the performance of commercial models, and can often surpass them, especially in terms of efficiency and performance in specific domains.

“Perhaps most striking is the rapid compression of development timelines,” notes the company, “what once required over 100B parameter models just two years ago can now be accomplished with 2B parameter models, suggesting an accelerating path to parity.”

This trend towards more accessible, efficient, and collaborative AI development indicates that open approaches to AI development have a critical role to play in enabling a successful AI strategy that maintains technical leadership and supports more widespread and secure adoption of the technology.

Hugging Face argues that open models, infrastructure, and scientific practices constitute the foundation of AI innovation, allowing a diverse ecosystem of researchers, companies, and developers to build upon shared knowledge.

The company’s platform hosts AI models and datasets from both small actors (e.g., startups, universities) and large organisations (e.g., Microsoft, Google, OpenAI, Meta), demonstrating how open approaches accelerate progress and democratise access to AI capabilities.

“The United States must lead in open-source AI and open science, which can enhance American competitiveness by fostering a robust ecosystem of innovation and ensuring a healthy balance of competition and shared innovation,” states Hugging Face.

Research has shown that open technical systems act as force multipliers for economic impact, with an estimated 2000x multiplier effect. This means that $4 billion invested in open systems could potentially generate $8 trillion in value for companies using them.

These economic benefits extend to national economies as well. Without any open-source software contributions, the average country would lose 2.2% of its GDP. Open-source drove between €65 billion and €95 billion of European GDP in 2018 alone, a finding so significant that the European Commission cited it when establishing new rules to streamline the process for open-sourcing government software.

This demonstrates how open-source impact translates directly into policy action and economic advantage at the national level, underlining the importance of open-source as a public good.

Practical factors driving commercial adoption of open-source AI

Hugging Face identifies several practical factors driving the commercial adoption of open models:

These factors are particularly valuable for startups and mid-sized companies, which can access cutting-edge technology without massive infrastructure investments. Banks, pharmaceutical companies, and other industries have been adapting open models to specific market needs—demonstrating how open-source foundations support a vibrant commercial ecosystem across the value chain.

Hugging Face’s policy recommendations to support open-source AI in the US

To support the development and adoption of open AI systems, Hugging Face offers several policy recommendations:

Prioritising efficient and reliable AI adoption

Hugging Face highlights that smaller companies and startups face significant barriers to AI adoption due to high costs and limited resources. According to IDC, global AI spending will reach $632 billion in 2028, but these costs remain prohibitive for many small organisations.

For organisations adopting open-source AI tools, it brings financial returns. 51% of surveyed companies currently utilising open-source AI tools report positive ROI, compared to just 41% of those not using open-source.

However, energy scarcity presents a growing concern, with the International Energy Agency projecting that data centres’ electricity consumption could double from 2022 levels to 1,000 TWh by 2026, equivalent to Japan’s entire electricity demand. While training AI models is energy-intensive, inference, due to its scale and frequency, can ultimately exceed training energy consumption.

Ensuring broad AI accessibility requires both hardware optimisations and scalable software frameworks.  A range of organisations are developing models tailored to their specific needs, and US leadership in efficiency-focused AI development presents a strategic advantage. The DOE’s AI for Energy initiative further supports research into energy-efficient AI, facilitating wider adoption without excessive computational demands.

With its letter to the OSTP, Hugging Face advocates for an AI Action Plan centred on open-source principles. By taking decisive action, the US can secure its leadership, drive innovation, enhance security, and ensure the widespread benefits of AI are realised across society and the economy.

See also: UK minister in US to pitch Britain as global AI investment hub

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Hugging Face 开源AI AI行动计划 美国政府 技术创新
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