MDDI 演讲稿 · 2025-05-28

Josephine Teo 部长在 ATxSummit 2025 的开幕讲话

Josephine Teo 部长在 ATxSummit 2025 的开幕讲话

Josephine Teo · 数码发展及新闻部长 · ATx峰会

要点

  • 新加坡于2023年12月发布更新版《国家人工智能战略》(NAIS 2.0),作为国家下一阶段AI发展的总体框架。
  • 新加坡科技研究局(A*STAR)于ATxSummit 2025正式发布MERaLiON v2.0,将多模态AI语言覆盖范围扩展至八种东南亚语言、服务约4.5亿使用者,并联合星展银行、Grab、新科工程、NCS、新报业媒体及卫生部医疗转型办公室共同成立MERaLiON联盟以加速产业落地。
  • 新加坡开源大语言模型SEA-LION专为东南亚逾1200种语言和方言而构建,已被印度尼西亚、泰国、越南的开发者累计下载超过20万次。
  • 约5万名公务员(占新加坡公务员总数三分之一)每月使用政府自研的安全版ChatGPT,并已通过内部平台搭建逾1.6万个定制AI聊天助手。
  • 新加坡内政部门已梳理逾300个AI应用场景,拨付超过4亿新元推动落地,并另追加1亿新元专项资金,用于开发可执行搜救等高危任务的具身AI人形机器人。
  • 新加坡以风险为导向的AI治理路径先后推出《模型AI治理框架》(2019年)和AI Verify测试工具包(2022年),并持续更新以覆盖生成式AI领域。

完整译文(中文)

MDDI 英文原文译文 · 翻译日期: 2026-06-21

阁下们,

尊敬的同僚与朋友们,

引言

大家早上好,感谢各位的出席。

我深知,在座有些人不远万里前来参会。我想借此机会表达我们对各位莅临的衷心感谢。我们希望以最热忱的款待,让各位的时间得到最有价值的利用。

当我们最初举办亚洲科技峰会·新加坡(ATxSG)时,我们将其设想为一个汇聚政府、企业、研究机构和公民社会全球科技领袖的平台,共同探讨未来科技创新、不断演变的数字格局,以及我们应对各种机遇与挑战的方式。

我们现已举办至第五届,各位的出席告诉我们,这一平台对大家而言是有价值的。我们也都本能地理解德尔曼总统昨晚所提及的"广泛的自愿联盟"。

对于未能出席开幕晚宴的来宾,我鼓励大家阅读总统的全文演讲。演讲引发了我们对AI发展内在张力的深思,并呼吁我们作为领导者,以谦逊与坚韧并重的姿态砥砺前行。

ATx 并不只关乎AI。话虽如此,在AI议题上,这对我们所有人而言都是一个检验时刻。

因此,在今天上午的主旨演讲中,如蒙各位允许,我将分享自2023年12月我们发布更新版《国家人工智能战略》(NAIS 2.0)以来,新加坡在这一领域的一些心得与思考。

推动AI在产业中的落地

各位或许还记得,彼时各方对GPU访问权的执着追求——即AI工作负载所需的算力资源。在创新周期初期,从供给侧着力推动,这并不罕见。显然,一定程度的算力获取是必要的。然而,真正需要培育的是需求侧,唯有如此,才能维持持续推动供给的进步节奏。

起初,我们转向产业界,寻找具有商业价值的应用场景。最初,很少有企业能够充分认识到AI可为其带来的益处。洞见主要来源于实践经验,而这恰恰是当时所缺乏的。

这需要大胆的雄心。例如,当一家银行宣称自己实质上是一家提供金融产品与服务的科技公司;或当一家航空公司表示要以AI重塑民航业。这种大胆雄心的宣示,能够打开人们对这一事业真正意义的认知,并激发出一种凝聚实验支持所不可或缺的新动能。

当雄心与资源投入相结合,便有了愿景,也有了潜力。但要让愿景成为现实,潜力必须与能力相匹配。在这方面,我们看到了稳步积累的成果——企业纷纷组建AI转型团队,通过培训与招募相结合的方式填补能力缺口。

充分发挥AI的效益,往往需要对企业运营进行变革。若一切运转正常,又有谁会去主动改变呢?

遗留系统和流程需要更新或替换,各层级员工需要具备相关技能。但阻力与摩擦在所难免。

我们所期望看到的一切美好成果都需要时间,但在新加坡,我们看到了良好的早期迹象——生产效率和成本节约均有显著提升。这反过来有助于为下一轮工作积聚支持。

一些领先机构更进一步,设立了具有实质性职责和可观预算的AI卓越中心,以提升基础设施建设,开展AI研发工作。每次走访这些中心,我都能感受到充沛的热情,以及正在进行中的各种实验探索。

政府不仅乐于支持这些努力,更愿意为其提供切实的财政支持,而非仅仅停留在口头鼓励。

不过,我想指出,逐家企业地构建能力是一回事,聚合的价值同样不可忽视。以制造业为例,统一的数据标准可以形成更大的数据集,从而借助AI模型实现更精准的故障检测和缺陷预测。鉴于制造业约占我国GDP的20%,为该行业建立专业化的AI卓越中心理由充分。而这正是我们今天所拥有的。

聚合也可以在国家层面发生,例如我们决定开发SEA-LION,即"东南亚语言一网通"(Southeast Asian Languages in One Network)。就大型语言模型而言,SEA-LION的规模其实相当适中。但规模从来都不是我们的首要目标。

我们的首要目标,在于应对东南亚地区拥有逾1,200种语言和方言这一现实。许多在新加坡注册的企业与区域市场有着广泛联系。有了SEA-LION,它们的AI应用将更有可能与本地语言、口语表达及文化背景良好适配。

SEA-LION的构建也是我们如何受益于跨国聚合的有力例证。数据集由区域合作伙伴贡献,而SEA-LION则保持开源。通过逾20万次下载,印度尼西亚、泰国和越南的广泛AI开发者社群已开始使用该模型。

以此为基础,开发另一款能够接受语音和文本等多模态输入的模型顺理成章。正如我们"狮城"之名所示,新加坡科技研究局(A*STAR)将其命名为MERaLiON,即"多模态共情推理与学习一网通"(Multimodal Empathetic Reasoning and Learning in One Network)。

我们今天发布的MERaLiON v2.0,将语言覆盖范围从英语、普通话以及新加坡式英语(Singlish)扩展至马来语、越南语、泰语、泰米尔语和印尼语(Bahasa Indonesia)。这使MERaLiON与约4.5亿以这些语言为主要日常用语的人群息息相关。此外,它能够理解混合多种语言的句子,这在多元文化社会中极为普遍。那么,MERaLiON的"共情"体现在哪里?据悉,它还能够处理非语言线索,例如说话者的音量、语气和情绪。

为扩大MERaLiON的影响力,我们将成立MERaLiON联盟。A*STAR将与星展银行(DBS Bank)、Grab、新科工程(ST Engineering)、NCS、新报业媒体(SPH Media)以及卫生部医疗保健转型办公室(MOHT)等合作伙伴携手,整合生态系统中的专业知识,共享学习成果,加速推动落地应用。

推动公共部门的AI转型

同僚与朋友们,雄心与聚合正助力AI应用在新加坡产业界持续积聚动能。那么我们的公共部门又如何?

公共部门在AI领域的努力同样举足轻重。这些努力有助于在需求侧形成规模效应,并吸引全球能力资源汇聚,私营部门亦可从中受益。此外,政府若对相关活动具备亲身实践经验,在推动或监管这些活动时也将更加得心应手。

我们有三条主要工作线,均已取得良好成效。

第一,我们提供广泛的使用渠道与技能培训。

目前,约5万名公务员——占总数的三分之一——每月使用我们安全的内部版ChatGPT。起草报告、开展研究、审阅文件等任务所需时间均比以往缩短。

通过定期举办黑客松,公务员们有机会展示自身技能,并了解同事如何应对类似问题。

此外,一个内部平台指导公务员如何构建定制化AI聊天机器人助手。目前已有逾1.6万个机器人以此方式建成。

这完全超出了我的预期。起初构建这一平台时,我没想到公务员们会如此迅速地接受它。

这一切都说明,我们的公务员正在逐渐适应AI的使用,并培养出一种不同的解决问题的思维方式。

我们的第二条工作线,是加强技术型政府机构的核心AI专业能力。

这些机构往往有独特的运营需求,需要定制化的AI解决方案。

出于安全考虑,它们必须具备覆盖整个技术栈的工程能力。

我们的第三条工作线,是通过AI积极推动公共服务部分领域的转型。

以国土安全为例,AI可在执法和公共安全领域发挥倍增器的作用。内政团队同事已识别出逾300个AI应用场景,并拨出逾$400M资金将优质方案付诸实践。就在两天前,他们又承诺额外投入$100 million用于具身AI(Embodied AI),以开发AI赋能的人形机器人,应对搜救等高风险场景——在这些场景中,公务员的生命往往面临风险。

在医疗领域,AI正帮助医生节省行政事务上的时间,使他们有更多时间用于患者护理。AI也开始协助医生制定更优化的治疗方案。

为提升环境可持续性,研究人员可借助AI工具在热带环境中设计更高效的冷却方案——这对新加坡这样高度密集建设的城市而言是一大关键挑战。AI还被用于识别和设计新型催化剂,例如用于碳捕获等领域。

公共服务领域的此类努力正在塑造一种文化——即便我们并非科班出身的“技术达人”或软件工程师,也能将AI视为触手可及的技术加以重视。

每个人都有主动权以有意义的方式部署AI,而每一项新成就都激励着我们以更高的志向,借助AI更好地服务市民。

以AI治理促进公共利益

技术的试验性应用始终伴随风险,因此也必须有相应的保障。对公务员而言,有获得适当培训支持的保障,以及风险管理的集体责任。对公众而言,有政府对AI安全与治理坚定承诺的保障。

自新加坡最早致力于利用AI以来,这一直是其基石所在。

我们一贯的立场是,良好的治理能够赋能并鼓励创新。我们认为以下几点至关重要:

明确界定何为“安全负责任”的AI。

为AI的开发与部署建立必要的护栏机制。

确保监管机构与时俱进、具有公信力且专业精通。

这些举措有助于向企业和个人保证,针对AI可能带来的风险与危害存在相应保护,进而建立对AI的信心与信任,促进其应用普及。

当然,挑战在于AI本质上是一种概率性技术,且正以极快的速度发展。

尽管我们在全球层面已取得进展,AI安全科学在能够有效、全面应对AI可能带来的风险与危害——无论是无意还是有意为之——之前,仍有相当长的路要走。

因此,新加坡对AI治理采取了务实且以风险为导向的方式。

我们与业界和学术界合作,开发了AI治理框架和测试工具。

我们于2019年通过《AI治理模型框架》(Model AI Governance Framework),并于2022年通过AI Verify测试框架和工具包,率先针对较为“传统”的AI开展了上述工作。事实上,AI Verify正是于2022年在ATx上发布的。

我们已逐步针对生成式AI对上述框架和工具进行更新。

我们刚刚升级了 AI Verify 测试框架,以应对新型风险,例如个人或敏感数据泄露,以及幻觉和有害内容等有害输出。

我也很高兴地告知,我们已完成上述升级框架与美国国家标准与技术研究院(NIST)所发布的同类框架之间的对应映射工作。这将使同时在新加坡和美国开展业务的企业,更便于履行两国的 AI 安全义务。

此外,在存在明显漏洞需要填补的领域,我们也已采取相应行动。

例如,我们通过了一部新法律,以保护选举诚信不受恶意 AI 生成深度伪造内容的侵害。

我们持续致力于推动 AI 安全领域的科学前沿发展,途径包括投资数字信任中心(Digital Trust Centre)和网络安全先进技术中心(Centre for Advanced Technologies in Online Safety)等研发活动。

为国际努力作出贡献

每个国家都根据自身的国情、挑战和优先事项,采取各自的 AI 治理方式。

但这些差异并不意味着我们彼此对立,也不意味着没有相互学习与合作的空间。

就新加坡而言,我们致力于成为国际社会中具有建设性的一员。我们在 Digital FOSS 和东盟(ASEAN)等多边框架中分享本国的 AI 经验,也通过 ATx 等平台积极参与,并支持各方协作制定 AI 治理全球规范。

正如您早些时候听到 Chuen Hong 所说,上个月我们举办了第二届新加坡人工智能会议,作为 AI 安全国际科学交流活动。会议以达成「新加坡全球 AI 安全研究优先议题共识」(Singapore Consensus on Global AI Safety Research Priorities)作为结语。这将成为今天下午稍后举行的数字信任部长级圆桌会议的讨论基础,并为我和同事在制定适当政策回应方面的思考提供指引。

我们的 AI 安全研究院(AI Safety Institute)也将加强与法国的合作,以深化对 AI 风险管理的理解。

结语

各位同仁与朋友,我们"为公众利益、为新加坡和世界善用 AI"的征程已全面展开。

尽管许多人慷慨地称赞了我们的努力,但我真诚地认为,我们大多数人实际上还只是站在起跑线上。我们并非在相互竞争,我们共同面对的对手是 AI 的滥用者,以及那些驱使人们过度冒险使用 AI 的强大利益诱因。

我们绝不能放弃充分发挥 AI 潜能、同时确保其安全的可能性。我们必须学会以前所未有的方式携手合作。

再次感谢各位的莅临。

英文原文

MDDI 官网原始记录 · 抓取日期: 2026-06-21

Excellencies,

Distinguished colleagues and friends,

Introduction

A very good morning and thank you all for joining us.

I am keenly aware that some of you have travelled long distances to be here. I just want to say how much we appreciate you making your presence felt. We would like to extend your warmest hospitality so that this can be a very meaningful use of your time.

When we first convened Asia Tech x Singapore (ATxSG), we envisioned it as a platform to bring together global technology leaders from governments, companies, research institutions, and civil society to discuss future tech innovations, the evolving digital landscape, and our responses to all of the opportunities and challenges.

We are now in our fifth edition, and your presence here tells us that you find this a useful platform. And that we all instinctively understand what President Tharman referred to last night as the “broad coalition of the willing”.

For the benefit of those who could not join us at our opening dinner, I encourage you to read the President’s full speech. It provoked us to think about the inherent tensions of AI’s progress; and calls on us as leaders, to move forward with a combination of humility and tenacity.

The ATx is not just about AI. Having said that, it is the moment of truth for all of us where AI is concerned.

And so, for my keynote this morning, with your permission, I will share some reflections on Singapore’s journey, since we launched our refreshed National AI Strategy (NAIS 2.0) in December 2023.

Catalysing AI in Industry

You will remember at the time, the obsession with access to GPUs – the compute capacity for AI workloads. It is not unusual, at the beginning of an innovation cycle, to seek to boost activity from the supply side. Some access to this capacity is clearly needed. It is, however, the demand side that needs nurturing, to sustain a pace of progress that will keep the supply flowing.

To start, we turned to industry to identify applications with commercial utility. Initially, few businesses were wise to the benefits that AI could bring them. Insights come chiefly through experience, and this was not readily available.

It takes bold ambition. Such as when a bank declares that it is really a tech company offering financial products and services; or when an airline says it wants to transform civil aviation with AI. This declaration of bold ambitions unlocks the mind as to what this effort is all about, and unleashes a new kind of energy that is essential to rallying support for experimentation.

When ambition meets resource commitment, there can be vision and there is potential. But for vision to become reality, potential must be matched with capabilities. This is where we have seen steady build-ups, with companies forming AI transformation teams and plugging gaps with a combination of training and hiring.

Getting the full benefits of AI often involves changes to a business’ operations. If nothing is broken, who says you should try and fix it?

Legacy systems and processes need to be updated or replaced, and employees at all levels need to be equipped with the relevant skills. But there is going to be friction and resistance.

All the good things we want to see happen will take time but what we are seeing in Singapore is that the early signs are very good, with significant reported gains in productivity and cost savings. This then helps to build the support for the next wave and phase of efforts.

Some leading organisations have gone further to set up AI Centres of Excellence with meaningful mandates and sizeable budgets, to enhance infrastructure and engage in AI research and development. At each visit to such Centres, I can see the enthusiasm in great abundance, as well as the experimentation that is taking place.

And the Government is more than willing to support these efforts. Not just to cheer them on, but to back them up financially.

Let me just say, however, it’s one thing to build capabilities enterprise by enterprise. But there’s also value in aggregation. In manufacturing, for example, common data standards would enable larger datasets, that can be used for better failure detection and defect prediction using AI models. With manufacturing contributing some 20% of our GDP, there is good reason for our specialised, sectoral AI Centre of Excellence. And that’s what we have today.

Aggregation can also take place at the national level, such as when we decided to develop SEA-LION, which stands for Southeast Asian Languages in One Network. As Large Language Models go, SEA-LION is actually quite modest in size. But scale was never our primary goal.

Rather, it was the fact that there are over 1,200 languages and dialects in Southeast Asia. Many Singapore-based companies have extensive regional links. With SEA-LION, their AI applications have a much better chance of working well with local languages, colloquial expressions, and references.

The building of SEA-LION is also a great example how we benefit from trans-national aggregation. Datasets were contributed by regional partners. In turn, SEA-LION has been kept open-source. It has been tapped on by a wide community of AI developers in Indonesia, Thailand, and Vietnam through more than 200,000 downloads.

With this as a foundation, there was good reason to build another model capable of accepting multimodal inputs, such as speech and text. As befitting our Lion City, the Agency for Science, Technology and Research, or A*STAR, called it MERaLiON , or the Multimodal Empathetic Reasoning and Learning in One Network.

MERaLiON v2.0 , which we are launching today, expands its language coverage from English, Mandarin, and of course Singlish, to include Malay, Vietnamese, Thai, Tamil, and Bahasa Indonesia. This makes MERaLiON relevant to about 450 million people who use these languages primarily on a day-to-day basis. Furthermore, it understands sentences containing a mix of languages, which is very common in multi-cultural societies. What makes MERaLiON empathetic though? I’ve been told it can also handle non-verbal cues such as the speaker’s volume, tone and emotion.

To help MERaLiON make a bigger impact, we will establish the MERaLiON Consortium . A*STAR will partner companies such as DBS Bank, Grab, ST Engineering, NCS, SPH Media, as well as the MOH Office for Healthcare Transformation (MOHT) to harness expertise in the ecosystem, share learnings, and accelerate adoption.

Transforming the Public Sector for AI

Colleagues and friends, ambition and aggregation are helping AI adoption gain momentum in Singapore’s industrial scene. What about our public sector?

The public sector’s AI efforts are equally important. They contribute to building scale in demand, and help crowd in capabilities from around the world that the private sector too can draw on. A Government is also better equipped to promote or regulate activities it has first-hand experience carrying out.

We have three main lines of effort that are producing good returns.

First, we provide broad-based access and skills training .

Today, around 50,000 or one-third of public officers use our secure, in-house version of ChatGPT monthly. Tasks such as drafting reports, research, and reviewing papers take less time than before.

Through regular hackathons, officers have the opportunities showcase their skills and see how their peers are dealing with similar issues.

And an in-house platform guides our officers on how they can build customised AI chatbot assistants. More than 16,000 bots have been built this way.

It really outstretched my expectations. I did not imagine at the outset that when were building this platform that the officers will take to it so readily.

All these is to say that our officers are getting comfortable with the use of AI and are nurturing a different kind of problem-solving mindset.

Our second line of effort involves strengthening core AI expertise in technical government agencies .

They often have unique operational needs, requiring customised AI solutions.

And for security reasons, they must have engineering capabilities across the tech stack.

Our third line of effort is to actively transform parts of the public service through AI .

Take for example, Homeland Security, where AI can be a force multiplier in law enforcement and public safety. My Home Team colleagues have identified over 300 AI use-cases, and set aside over $400M to bring good proposals to fruition. Just two days ago, they committed another $100 million for Embodied AI, to develop AI-enabled humanoids for high-risk scenarios like search and rescue, where officers’ live are often put at risk.

In healthcare, AI is helping our doctors save time on administration so that they have more time for patient care. And AI is also starting to help them design better treatment plans.

To improve environmental sustainability, our researchers can use AI tools to design more effective cooling solutions in tropical settings – a key challenge for a densely built-up city like Singapore. AI is also used to identify and design new catalysts for things like carbon capture.

These kind of efforts in the public service are shaping up a culture where AI is valued as an accessible technology even if we are not “techies” or software engineers by training.

Where there is agency to deploy AI in meaningful ways, and where each new achievement raises our ambition to serve citizens better with the help of AI.

Governing AI for the Public Good

With the experimental use of technologies, there is always risk. This is why there must also be assurance. For public officers, there is assurance of support to be properly trained, and collective responsibility for risk management. For the public, there is assurance of the Government’s strong commitment to AI Safety and Governance.

This has been a cornerstone for Singapore, from our earliest efforts to harness AI.

Our position has always been that good governance enables and encourages innovation. We believe it is important to:

Set clear expectations of what “safe and responsible” AI is.

Put in place the necessary guardrails for its development and deployment.

And ensure that our regulators are up-to-date, credible, and proficient.

These help assure businesses and individuals that there are protections against the risks and harms that AI may bring, and in turn builds confidence and trust in AI, facilitating its adoption.

The challenge, of course, is that AI is an inherently probabilistic technology, that is developing at an incredibly fast clip.

While we have made progress globally, AI Safety Science still has quite some way to go before it can effectively and comprehensively address the risks and harms that AI could bring – whether inadvertently or intentionally.

Singapore has therefore taken a practical and risk-based approach to AI Governance.

We have developed AI Governance frameworks and testing tools, in partnership with industry and academia.

We started doing so for more “traditional” AI through our Model AI Governance Framework in 2019, and the AI Verify testing framework and toolkit in 2022. In fact, AI Verify was launched at ATx in 2022.

We have progressively updated these frameworks and tools for Generative AI.

We have just enhanced our AI Verify Testing Framework to deal with new risks, like leakage of personal or sensitive data, or harmful output such as hallucinations and toxicity.

And I’m pleased to share that we have also completed a mapping of this enhanced framework with the comparable framework that is published by the US National Institute of Standards and Technology’s (NIST). This will make it easier for businesses operating in both Singapore and the US to meet their AI safety obligations in both countries.

In addition, we have also taken action where there were clear gaps that needed to be plugged.

For example, we passed a new law to safeguard the integrity of our elections from malicious AI-generated deepfakes.

We continue our efforts to advance the state-of-science in AI safety, through investing in R&D activities such as in our Digital Trust Centre and the Centre for Advanced Technologies in Online Safety.

Contributing to International Efforts

Every country takes its own approach to AI Governance, in line with their own context, challenges and priorities.

But these differences do not mean that we are at odds, nor that there is no space for mutual learning and cooperation.

On our part, Singapore strives to be a constructive member of the international community. By sharing our own AI experience in groupings such as the Digital FOSS and ASEAN, or through platforms like ATx. And supporting collaborative efforts to develop global norms in AI Governance.

As you heard Chuen Hong say earlier, last month, we hosted the second edition of the Singapore Conference on AI, as an International Scientific Exchange on AI Safety. It concluded with a “Singapore Consensus on Global AI Safety Research Priorities”. This will form the basis of the Ministerial Roundtable on Digital Trust later this afternoon, and shape my colleague and my thinking on the appropriate policy responses.

Our AI Safety Institute will also step up collaboration with France, to advance our understanding on managing AI risks.

Closing

Colleagues and friends, our journey to use “AI for the public good, for Singapore and the World” is well on its way.

Although many of you have generously complimented our efforts, I sincerely believe that most of us are really only at the starting line. We are not in a race against each other. We are in a race against abusers of AI and against powerful incentives to take excessive risks with AI.

We must not give up on the possibility of making the most of AI and making it safe. We must learn to join hands like never before.

Thank you once again for being here.