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OpenAI’s ChatGPT is giving the rest of the world AI FOMO

2023-03-14
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Silence is a therapist’s best friend. After delving deep into the patient’s anxieties, a pause can be just what’s needed to provoke in them a period of introspection and, one would hope, enlightenment. A similar phenomenon appears to be happening in the international AI community. The emergence of ChatGPT last year triggered a cacophonous debate about the implications of generative AI, ranging from the Utopian to the apocalyptic. For now, that conversation appears to have quietened – though that silence may not last with the emergence of GPT-4, OpenAI’s new large language model (LLM) which Microsoft executives have said will be released as soon as next week.

In the meantime, countries around the world have been left asking themselves why on earth they don’t have their own ecosystem of LLMs. The US has some innate advantages in this area, to be sure, whether that’s in a strong history of government-sponsored R&D or an entrenched technology sector with corporations like Google and Microsoft that bestride the world like so many brass colossi. Even so, it’s not like many other nations lack such assets: the UK, for example, possesses a formidable legacy in AI thanks, in large part, to its extraordinarily dynamic universities and research institutions.

It’s the reason, explains Dame Wendy Hall, that the country is third on the AI league tables, going toe-to-toe with the US and China in the research and development of countless products and services running on machine intelligence. It’s the same message Hall, Regius Professor of Computer Science at the University of Southampton, delivered to the House of Commons Select Committee on Science and Technology. Would the government have listened to scientists like her and more jealously guarded the UK’s sovereign technological capabilities, Hall tells Tech Monitor, and it might not have been in the position where so many private and public organisations are dependent on US technological heft.

“We could develop unicorns really well,” says Hall. “But what we don’t do, then, is take the unicorn to the next stage. And that’s all to do with investment.”

The UK is one of several nations around the world locked into a paroxysm of AI-related soul searching. (Image by Ivan Marc / Shutterstock)

Generative AI? Why not buy British

That doesn’t simply mean the British government backing promising start-ups. What’s also required, argues Hall, is raw computational muscle – a market that’s largely cornered by US hyperscale cloud providers. “There are agencies within the government that worry about whether we’ve got that compute power, whether we provide it to our universities or to our big companies.”

Last week the government published a review calling for the same kind of investment in exascale computing. Such sovereign capabilities are essential in scaling out application areas for foundation models, argues Hall, and preserving the UK’s independence in how and when they’re used. “Suppose we wanted to run a large language model over NHS data,” she says. “The Holy Grail is being able to do analysis across all NHS data to discover things about drugs and cures and treatments and in a way that retains privacy and security. Well, with things as they are, if we don’t do something about it, we’ll have to use American technology.”

What’s so bad about using a foundation model born in the USA? In principle, not much, says Hall – but if we don’t want to replicate the kinds of constraints already associated with the British government’s reliance on US hyperscalers to meet its computational needs, the UK needs to act now to develop some kind of sovereign capability in all forms of AI, generative or otherwise. “We have to be able to have the technologies and be able to develop them,” says Hall, “rather than just be given a black box by Microsoft and Google.”

That doesn’t mean, however, that Whitehall should consider constructing its very own, in-house ‘BritGPT,’ as some have implied. Rather, explains Hall, the UK government should be sizing up nascent AI start-ups and organisations and injecting them with the steroidal funding necessary to allow our private sector to buy British and compete globally. “It’s not about being inward-looking,” says Hall. “If we get this right, that company will produce algorithms and solutions that people around the world would want to buy.”

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Hall is optimistic that the UK government will make the right calls, at least as far as the British AI research community is concerned. Ministers across Whitehall, she claims, have been asking for briefings on how to jump-start AI innovation in the UK left, right and centre. “I think,” says Hall, “we’re pushing at a half-open door.”

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Baidu is investing in a range of emerging technologies including generative AI, driverless vehicles and quantum computing (Photo: hxdbzxy/Shutterstock)
Search engine Baidu is racing to build its own ChatGPT variant. Some predict the state is more likely to play a leading role, however, when it comes to the development of generative AI in China. (Photo by hxdbzxy/Shutterstock)

A Chinese, Canadian, Indian ChatGPT

The UK is hardly alone in its AI anxieties. In Canada, home to some of the most celebrated AI researchers in the world, there are calls for a new national investment strategy that might prevent the crème de la crème of its AI talent from emigrating to Silicon Valley, notwithstanding the sizeable financial commitment made by the federal government in its innovation clusters strategy. 

“My impression is that the culture of innovation – and risk-taking that goes with it – isn’t nearly as developed here as it is in the US,” said Yoshua Bengio, a foremost expert in AI at the Université de Montréal, in a conversation with Global News. “Venture capitalists here in Canada are not willing to take as much risk, to invest as much money, to look over a horizon that is this long.”

Similar concerns are being voiced in India. Despite having produced legions of talented software engineers and not a few leading lights within the Big Tech firmament, critics now point to a lack of investment in supporting the AI pioneers of tomorrow as one of the reasons why the country isn’t having its own ChatGPT moment. “When it comes to theoretical work, we are as good as anyone,” Professor Amrutur Bharadwaj, the research head and director of Artpark, told Analytics India Magazine. Despite this, “the current ecosystem [in India] is not geared to produce and support brilliant outliers”.

But perhaps the most visceral reaction to OpenAI’s success is that in China. While in some ways the Chinese government anticipated the current moment for generative AI with a set of remarkably prescient new rules on labelling AI-generated content, many venture capitalists and researchers feel that the nation has been caught off-guard. Why, asked some, hadn’t China been engaging in the kind of long-term research into large language models that could produce a Chinese ChatGPT?

China’s biggest tech companies responded quickly by harnessing their own foundation models to create indigenous versions of ChatGPT, with Tencent developing its HunyuanAide variant and Baidu poised to release its own version next week (notwithstanding some pre-launch jitters). But attaining supremacy in this area could see the Chinese government fall back on a tried and tested asset: the state-owned enterprise. By launching such a company, argues Shaoshan Liu, the founder and CEO of AI vision company PerceptIn, the Chinese government could light a fire under the development of a new, sovereign LLM capability – much as it did for the telecoms sector some 30 years ago.

“State enterprises carry two missions from a historical perspective,” says Liu. “The first is to generate revenue for the state, [and] when you have a monopoly, it’s easier to generate a profit.” The second, Liu continues, is that a state-owned enterprise (SOE) affords the government closer control of a sector compared to letting private enterprise run things – a greater priority in this case, perhaps, given that many of the existing regulations around generative AI in China are primarily concerned with auditing and curtailing the spread of information.

Could such an approach lead to China leapfrogging the US in the creation and dissemination of ChatGPT-like services? It would certainly help in rapidly scaling up the national computing resources necessary to support such AI projects off private enterprise, says Liu, who previously argued in The Diplomat that such a move could have a positive impact on China’s sanction-hit semiconductor industry. Indeed, we may end up seeing a group of such SOEs, backed to the hilt by Beijing, make their global debut with a suite of subsidised AI services, in much the same way as its telecoms giants did in the early 2010s.  

Even so, while the Chinese government has expressed an interest in harnessing ChatGPT-like systems (while shutting off access to the original), it may be years before it considers it necessary to launch a dedicated SOE to support that goal. An argument Liu has heard from fellow businesspeople and contacts in the government is that the latter are still undecided as to whether it’s wise to let state-run enterprises take the reins when it comes to long-term AI R&D.

“All the internet companies – Baidu, Tencent, Alibaba – they have invested a lot of resources into AI technology,” says Liu, with the government content to wait and see for now as to how the field develops with the addition of new foundation models. When it comes down to it, says Liu, “generative AI is not mature yet. It’s amazing, but there’s still a long way to go.”

Read more: China’s generative AI revolution is only just beginning

参考译文
OpenAI的ChatGPT让世界各地的人都对人工智能感到“FOMO”
沉默是治疗师最好的朋友。在深入研究了病人的焦虑之后,暂停一下正好可以激发他们进行一段时间的自省,并希望得到启发。在国际人工智能领域,类似的现象似乎正在发生。去年ChatGPT的出现引发了一场关于生成式人工智能影响的激烈辩论,从乌托邦到末日。目前,这种对话似乎已经平静下来——尽管这种沉默可能不会随着GPT-4的出现而持续下去,GPT-4是OpenAI的新大型语言模型(LLM),微软高管表示将于下周发布。与此同时,世界各地的国家都在问自己,究竟为什么他们没有自己的llm生态系统。可以肯定的是,美国在这一领域拥有一些先天优势,无论是在政府支持的研发的悠久历史上,还是在拥有谷歌和微软(Microsoft)等公司的根深蒂固的科技领域,这些公司像许多铜像巨人一样横跨世界。即便如此,它也不像许多其他国家缺乏这样的资产:例如,英国在人工智能领域拥有强大的遗产,这在很大程度上要归功于其异常活跃的大学和研究机构。温迪•霍尔爵士(Dame Wendy Hall)解释说,这就是为什么该国在人工智能排行榜上排名第三,在无数基于机器智能的产品和服务的研发方面与美国和中国齐头并进。这是南安普顿大学计算机科学的regus教授霍尔向下议院科学技术特别委员会传达的相同信息。霍尔告诉《科技观察报》(Tech Monitor),政府如果能听从像她这样的科学家的意见,更谨慎地保护英国的主权技术能力,可能就不会有这么多私人和公共机构依赖美国的技术实力。霍尔说:“我们可以很好地发展独角兽。”“但我们不做的是,把独角兽带到下一个阶段。这一切都与投资有关。“这并不仅仅意味着英国政府支持有前途的初创企业。霍尔认为,还需要原始的计算能力——这个市场在很大程度上被美国超大规模云提供商垄断。“政府内部有一些机构担心我们是否拥有这样的计算能力,是否将其提供给我们的大学或大公司。”上周政府发表了一篇评论,呼吁对百亿亿次计算进行同样的投资。霍尔认为,这种主权能力对于扩展基础模型的应用领域至关重要,并且在如何和何时使用它们方面保持英国的独立性。“假设我们想在NHS数据上运行一个大型语言模型,”她说。“‘圣杯’是能够对所有NHS数据进行分析,以发现药物、治疗方法和治疗方法,并以一种保留隐私和安全的方式。就目前的情况来看,如果我们不采取措施,就只能用美国的技术了。“使用一个出生在美国的基础模型有什么不好呢?霍尔说,原则上来说,这并不多,但如果我们不想复制英国政府依赖美国超大规模计算机来满足其计算需求所带来的限制,英国需要现在就采取行动,在各种形式的人工智能(无论是可生成的还是其他形式的)方面发展某种主权能力。霍尔说:“我们必须能够拥有这些技术,并能够开发它们,而不仅仅是微软和谷歌给我们一个黑匣子。” 然而,这并不意味着白厅应该像一些人暗示的那样,考虑建立自己的内部“BritGPT”。霍尔解释说,相反,英国政府应该评估新兴的人工智能初创企业和组织,并向它们注入必要的资金,以允许我们的私营部门购买英国产品,并在全球竞争。霍尔说:“这与内向无关。“如果我们做对了,这家公司将生产出全世界的人都想购买的算法和解决方案。”霍尔乐观地认为,至少就英国人工智能研究界而言,英国政府将做出正确的决定。她声称,白厅的部长们一直在要求简报如何在英国左右三派启动人工智能创新。“我认为,”霍尔说,“我们正在推开一扇半开着的门。”英国并非唯一对人工智能感到焦虑的国家。在加拿大,尽管联邦政府在其创新集群战略中做出了相当大的财政承诺,但仍有人呼吁出台一项新的国家投资战略,以防止其人工智能人才crème de la crème向硅谷移民。加拿大是全球一些最著名的人工智能研究人员的所在地。“我的印象是,这里的创新文化——以及随之而来的冒险文化——远不如美国发达,”Université de Montréal的人工智能领域最重要的专家Yoshua Bengio在接受《环球新闻》采访时表示。“加拿大的风险投资家不愿意冒这么大的风险,投这么多钱,看这么长的远景。”印度也表达了类似的担忧。尽管印度培养了大批有才华的软件工程师,也培养了不少大型科技公司的领军人物,但批评人士现在指出,印度缺乏对未来人工智能先驱的投资,这是该国没有自己的ChatGPT时刻的原因之一。“说到理论工作,我们和其他人一样出色,”Artpark的研究主管兼主管Amrutur Bharadwaj教授在接受印度分析杂志采访时表示。尽管如此,“(印度)目前的生态系统并不适合产生和支持杰出的异类”。但对OpenAI的成功最本能的反应可能是在中国。尽管在某种程度上,中国政府通过一系列非常有先见之明的新规定,对人工智能生成的内容进行标记,预测到了当前人工智能的时代,但许多风险投资家和研究人员认为,中国政府措手不及。一些人问道,为什么中国没有进行长期的大型语言模型研究,从而产生一个中文ChatGPT?中国最大的科技公司迅速做出反应,利用自己的基础模型创建了ChatGPT的本土版本,腾讯开发了其HunyuanAide变体,百度准备在下周发布自己的版本(尽管在发布前存在一些紧张情绪)。但要在这一领域取得优势地位,中国政府可能会求助于一种久经考验的资产:国有企业。人工智能视觉公司PerceptIn的创始人兼首席执行官刘韶山认为,通过成立这样一家公司,中国政府可能会在一种新的主权LLM能力的发展中点燃一支火——就像大约30年前它对电信行业所做的那样。“从历史的角度来看,国有企业肩负着两个使命,”刘说。“首先是为国家创造收入,(而且)当你处于垄断地位时,更容易产生利润。”其次,刘继续说,与让私营企业经营相比,国有企业(SOE)对一个行业有更密切的控制——在这种情况下,考虑到中国围绕生成式人工智能的许多现有法规主要涉及审计和限制信息传播,这可能是更重要的优先事项。
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