MDDI 演讲稿 · 2025-09-04

Josephine Teo 部长在 ST Engineering InnoTech 大会 2025 的讲话

Josephine Teo 部长在 ST Engineering InnoTech 大会 2025 的讲话

Josephine Teo · 数码发展及新闻部长 · ST Engineering InnoTech 大会

要点

  • 新加坡于2023年发布NAIS 2.0,在2019年首版国家AI战略基础上全面升级。
  • 2025年财政预算案拨款1.5亿新元设立企业算力计划(ECI),带动云服务商为企业提供更多云积分、算力、AI工具及咨询服务。
  • IMDA联合微软、AWS共同设计「面向数字领导者的GenAI」课程,帮助企业高管建立AI信念,推动逾40家新加坡企业设立AI卓越中心。
  • MERaLiON联盟于2025年5月ATxSummit上宣布成立,由A*STAR与包括星科工程在内的合作企业共同开发医疗、航空等垂直领域的AI应用。
  • IMDA即将发布的2025年新加坡数字经济报告显示,四分之三受访员工已在工作中定期使用AI工具,85%表示AI提升了工作效率和质量。
  • IMDA的TechSkills Accelerator(TeSA)计划将与会计、人力资源等专业机构合作为非技术从业者培养AI能力,同时与高等院校合作为技术人才设计AI提升路径。
  • 星科工程计划为4000名工程师和项目经理提供AI技能培训,并同步培育一支1000人的AI专业人才队伍。

完整译文(中文)

MDDI 英文原文译文 · 翻译日期: 2026-06-21

新科工程董事长郑明健先生

新科工程数字系统总裁刘仁邦先生(JP)

各位同事与朋友

早上好,感谢各位的邀请。

与JP一样,我今天的讲话将聚焦于人工智能,这想必不会令各位感到意外。

过去几年,人工智能的发展持续以令人窒息的速度推进。我们越来越清晰地看到,它正在重塑我们的生活、工作与互动方式。

我们的首个国家人工智能战略于2019年诞生。不到四年后,我们便看到了更新的必要。NAIS 2.0于2023年发布,我们的许多计划正在顺利推进。

业界的采用速度令我们深受鼓舞,其中包括新科工程等领军企业。

在五月举行的ATxSummit上,我宣布成立MERaLiON联盟;贵公司是A*STAR在该联盟中的合作伙伴之一,致力于在医疗保健和航空等特定领域开发人工智能应用。

贵公司还与Mistral AI和Enigma Health等人工智能前沿企业建立了合作关系。

政府还通过其他方式支持企业采用人工智能。

在2025年财政预算案中,我们推出了1.5亿新元的企业算力计划(ECI)。这一举措促使云服务提供商为客户提供更多云积分、算力、人工智能工具及咨询服务,以支持其开发和规模化部署人工智能解决方案。

我们深知,真正的人工智能转型不仅仅在于提供算力。更多时候,它始于高层的坚定信念与承诺。正因如此,IMDA与Microsoft、AWS等科技巨头共同设计了"面向数字领导者的GenAI"计划,旨在帮助企业领导者了解GenAI如何助力更大成功,并在这一历程中为其提供支持。

凭借日益坚定的信念与承诺,新加坡已有逾40家领军企业设立了人工智能卓越中心。新科工程便是其中之一。

在我走访的几乎所有人工智能卓越中心,人工智能从业者——尤其是数据专家——都告诉我,他们绝对需要并重视来自其他部门和职能同事的意见与贡献。

以制造业为例,工艺工程师了解详细的工作流程,技术员清楚何时及如何开展维护工作。没有他们的参与,数据科学家将很难实现真正有意义的业务改进。

Razer的情况也是如此。Razer是一家专注于游戏产品和服务的新加坡公司。游戏开发中的一个关键环节是质量保证(QA),这通常是一个耗时的过程,QA测试人员需要多次运行游戏以识别和修复漏洞。Razer开发了一款人工智能工具,协助QA测试人员进行漏洞检测并自动生成漏洞报告。我交谈过的一位软件工程师表示,这款工具能将通常花在QA上的时间缩减一半,让他得以专注于提升游戏设计。

上述例子表明,我们日益需要"双语"人工智能人才。他们的"母语"是各自的领域或职能专长,这是他们早已掌握的语言。在适当的帮助下,他们可以学习一门新语言——与新人工智能队友沟通的语言——并达到流利的程度。这意味着他们需要习得与人工智能相关的技能,从而能够与人工智能从业者或专家协作,实现工作转型并改善成果。

我很高兴看到新科工程也在培育一批"双语"人工智能人才。贵公司拥有众多领域专家,例如那些建造卫星并将其送入太空用于烟霾和气象监测的工程师。贵公司的航天工程师深知卫星应如何设计和测试,以优化功耗效率、重量和可靠性等各项指标。这种深厚的领域专业知识如同他们的"母语",是他们长期以来熟悉的语言。虽然航天工程师是各自领域的专家,但他们也在学习掌握与人工智能队友沟通的语言。这门新语言正为他们开辟另一个知识与机遇的世界。例如,他们正在利用人工智能优化卫星的结构布局,并高效测试数以千计的设计排列方案。

我们相信,这些"双语"人工智能人才与其人工智能队友将组成一支强大的团队。他们将成为有意义的人工智能应用的探路者和引领者,不仅在新科工程内部,更将遍及各处。

自我分享这一观点以来,许多人告诉我,这让他们看到了希望——即便不是人工智能专家,他们同样可以在人工智能时代学有所成、受到重视。

与此同时,他们也告诉我,学习一门新语言并非易事。我们从哪里开始?

事实上,许多新加坡人已经开始了。根据OpenAI的数据,新加坡的ChatGPT使用率位居全球前列。可以说,这代表了在人工智能语言上迈向流利程度的早期尝试。我们通过聆听来学习说一门语言。使用ChatGPT等人工智能工具,就好比在"聆听人工智能",感受它的语音特点。

聆听固然好,但对于达到流利程度还不够。我们需要机会开口说,并从错误中学习。

部分新加坡人似乎正在这样做。IMDA即将发布2025年版《新加坡数字经济(SGDE)报告》。报告显示,受访工作者中有四分之三已在工作中定期使用人工智能工具,其中包括供软件工程师使用的Cursor,以及Razer和新科工程为各自需求定制开发的人工智能工具。85%的受访者表示,人工智能提高了他们的效率并改善了工作质量。但我相信,这仍只是个开始。

政府将帮助我们的企业和民众超越"聆听"阶段,学会流利地"说"人工智能的语言。这些是扩大和深化人工智能应用的基石,将在长远带来良好成效。

第一,针对广大企业,包括中小企业(SME),我们将着力确保员工具备充分利用人工智能赋能解决方案的知识与技能。这包括IMDA与科技供应商合作,将培训纳入其提供的人工智能解决方案套餐之中。

第二,通过IMDA主导的旗舰计划——TechSkills Accelerator(即TeSA),我们还将着力提升非技术类和技术类专业人员的人工智能流利度。我们将与会计、人力资源等领域的专业团体合作,识别并培育非技术专业人员所需的技能与知识,以便他们通过人工智能优化本职核心工作,并提供以往无法提供的服务。与此同时,IMDA正与各高等学府及其他培训合作伙伴合作,为技术专业人员设计习得或深化人工智能相关技能的学习路径。

企业同样扮演着重要角色。以王智豪为例,他于2020年以应届毕业生身份加入新科工程。通过贵公司的研发项目,智豪与剑桥大学、NTU和SMU展开合作,深化了在人工智能、网络安全及两者交叉领域的专业知识。在EDB工业研究生计划的支持下,新科工程现正资助智豪攻读人工智能安全方向的博士学位。

我今天的发言着重阐述了为何培养"双语"人工智能人才、提升劳动力人工智能流利度是明智之举。这与JP在演讲中的建议不谋而合——将人工智能视为我们制胜团队的一员。要与这位新队友协作,我们需要学习它的语言,以便彼此有效地理解和沟通。

事实上,学习新"语言"对新加坡人来说并不陌生。

从1970年代起,我们学习了计算机的语言、互联网的语言、移动端的语言。如今,我们正在学习AI的语言。

要流利地使用一门语言,我们需要有人一起练习。如果身处许多人都在使用这门语言的环境中,练习起来会更加容易。正因如此,我对新科工程(ST Engineering)计划为4,000名工程师和项目经理提供AI相关技能培训深表赞赏。贵公司正在系统性地培养兼具双语能力的AI人才,使他们能够将AI融入各自的工作流程和面向客户的解决方案之中。与此同时,贵公司也在培育一整个学习者社群,让他们共同练习、熟练掌握AI这门语言。他们与1,000名AI专家携手合作,将组成一支不可小觑的强大团队!

我希望新科工程能够继续壮大AI人才队伍,并在这一进程中与政府携手同行,例如通过IMDA旗下TeSA计划开展新合作,以及提供真实的业务问题陈述,确保我们的培训项目切实贴合实际需求。

我鼓励各位同样积极参与,并祝大家会议圆满、收获丰硕。

英文原文

MDDI 官网原始记录 · 抓取日期: 2026-06-21

Chairman, ST Engineering, Mr. Teo Ming Kian

President, Digital Systems, ST Engineering, Mr. Low Jin Phang (JP)

Colleagues and friends

Good morning and thank you for inviting me.

It will be no surprise to you that, like JP, my remarks today focus on AI.

In the last few years, AI developments have continued at a breathless pace. Increasingly, we see how it is reshaping the way we live, work, and interact.

Our first National AI Strategy was born in 2019. Barely four years later, we saw the need to refresh it. NAIS 2.0 was launched in 2023, and many of our plans are progressing well.

We are very encouraged by the pace of industry adoption, including by leading companies like ST Engineering.

At the ATxSummit in May, I announced the MERaLiON Consortium; you are one of A*STAR’s partners in the Consortium seeking to develop AI applications in specific domains, such as healthcare and aviation.

You have also entered into partnerships with companies at the frontiers of AI development such as Mistral AI and Enigma Health.

The Government is supporting enterprise adoption of AI in other ways.

At Budget 2025, we launched a $150 million Enterprise Compute Initiative (ECI). This has catalysed the cloud service providers to make available much more in terms of cloud credits, compute, AI tools, and consultancy services to support their clients in developing and scaling AI solutions.

We know that real transformation with AI is not just about making compute available. Most often, it starts with conviction and commitment at the top. This is why IMDA designed the “GenAI for Digital Leaders” programme together with tech giants like Microsoft and AWS. It is to help enterprise leaders understand how GenAI can lead to greater success. The programme will also support them in this journey.

With increased conviction and commitment, more than 40 leading companies in Singapore have set up AI Centres of Excellence. ST Engineering is one of them.

In almost all of the AI Centres of Excellence I’ve visited, the AI Practitioners – the data specialists in particular – tell me they absolutely need and value the inputs of their colleagues in other departments and functions.

In manufacturing, for example, the process engineers know the detailed workflows. The technicians know when and how maintenance must be carried out. Without them, the data scientist will be hard pressed to produce meaningful business improvements.

It is the same at Razer, a Singapore company that specialises in gaming products and services. A key process in game development is Quality Assurance, usually a time-consuming process where QA testers run the game multiple times to identify and fix bugs. Razer developed an AI tool to support QA testers in bug detection and automating bug reporting. One of the software engineers I spoke to shared that this tool can halve the usual time spent on QA, allowing him to focus on enhancing game design.

These examples show that increasingly, we need bilingual AI talents. They are people whose “mother tongues” are their domain or functional expertise. It is a language they have already mastered. With help, they can learn a new language – the language of their new AI teammate – and become fluent in it. This means acquiring AI-related skills that will allow them to work with AI practitioners or specialists to transform their work and improve outcomes.

I am glad that ST Engineering is also growing a pool of bilingual AI talents. You have many domain experts, for example those who build satellites and launch them into space for haze and weather monitoring. Your space engineers know how a satellite should be designed and tested to optimise its power efficiency, weight, and reliability, among other factors. This deep domain expertise is like their “mother tongue”, a language they have known a long time. While your space engineers are experts in their own field, they are also learning to be fluent in the language of their AI teammate. This new language is opening up another world of knowledge and opportunities for them. For example, they are using AI to optimise the structural layouts of satellites and efficiently test thousands of design permutations.

We believe these bilingual AI talents and their AI teammate are a formidable team. They will be pathfinders and pacesetters for meaningful AI adoption not just in ST Engineering but everywhere.

Since I shared this point of view, many people have told me it gives them a sense of hope, that they too can learn and be valued in the AI age, despite not being AI specialists.

At the same time, they tell me learning a new language is not easy. Where do we start?

In fact, many Singaporeans have started. According to OpenAI, usage of ChatGPT in Singapore is among the highest globally. One could say this represents early attempts at gaining fluency in the language of AI. We learn to speak a language by listening. Using AI tools like ChatGPT is like “listening to AI”, to get a sense of how it sounds.

Listening is good but not enough for fluency. We need opportunities to speak the language and learn from our mistakes.

Some Singaporeans appear to be doing just that. IMDA will soon be releasing the 2025 edition of the Singapore Digital Economy (SGDE) Report. It shows that three out of four workers surveyed are already using AI tools in their work regularly. These include tools like Cursor for software engineers, and customised AI tools built by Razer and ST Engineering for your needs. 85% of them say AI makes them more efficient and improves their work quality. But I’m sure this is still just the beginning.

The Government will help our businesses and people go beyond the “listening” and learn to “speak” the language of AI fluently. These are the building blocks for broadening and deepening AI adoption that will yield good results over the longer term.

First, for the broad base of enterprises, including SMEs, we will focus on ensuring that employees are equipped with the know-how to make full use of AI-enabled solutions. This includes IMDA working with tech vendors to bundle training as part of the AI solutions they offer.

Second, through our flagship TechSkills Accelerator (or TeSA) programmes driven by IMDA, we will also focus on developing AI-fluency amongst both our non-tech and tech professionals. We will partner professional bodies, such as in accounting and HR, to identify and build the skills and knowledge required by non-tech professionals to optimise core activities in their functions through AI and provide services that they previously were unable to do. At the same time, IMDA is working with Institutes of Higher Learning and other training partners to design pathways for tech professionals to acquire or deepen AI-related skills.

Businesses also have a part to play. Take Wang Zhihao, who joined ST Engineering as a fresh gradate in 2020. Through your R&D initiatives, Zhihao collaborated with the University of Cambridge, NTU, and SMU, and deepened his expertise in AI, cybersecurity, and the intersection between the two. With support from EDB’s Industrial Postgraduate Programme, ST Engineering is now sponsoring Zhihao’s PhD studies in AI Security.

I have focused my remarks today on why it makes sense to nurture bilingual AI talents and AI fluency in our workforce. It aligns with how JP suggested in his speech, for us to think of AI as part of our winning team. To work with this new teammate, we need to learn its language, to understand and communicate effectively with each other.

In fact, learning new “languages” is not new to Singaporeans.

From the 1970s, we’ve learnt the language of computers, the language of the internet, the language of mobile. Today, we are learning the language of AI.

To speak a language fluently, we need people to practise with. It is easier to do so if we are immersed in environments where many others speak the language. This is why I commend ST Engineering’s plans to equip 4,000 of your engineers and project managers with AI-related skills. You are systematically developing bilingual AI talent capable of embedding AI into their processes and solutions for customers. At the same time, you are nurturing a whole community of learners to practise and become fluent in the language of AI. Together with the 1,000 AI specialists, they will make a formidable team!

I hope ST Engineering will continue strengthening your AI talent pool and partner the government on this journey, such as through new collaborations under IMDA’s TeSA initiative and by contributing real-world problem statements so that our training programmes are relevant.

I encourage everyone to do the same and wish you all a fruitful conference ahead.