MDDI 演讲稿 · 2026-03-13
SMS陈杰豪在SAP d-com发表的主旨演讲
SMS陈杰豪在SAP d-com发表的主旨演讲
要点
- • 新加坡国家人工智能影响计划(NAIIP)设定目标,让1万家企业有意义地整合AI,并提升10万名员工的AI应用能力。
- • 总理黄循财将亲自担任新成立的国家AI理事会主席,该跨部委工作组在2026年财政预算案中标志着AI被列为国家战略优先项目。
- • 逾60家企业已在新加坡设立AI卓越中心;SAP的DIAL 3.0与超过70家本地企业开展概念验证合作,其中12个项目已进入全面落地实施阶段。
- • 新加坡的AI战略聚焦金融、物流和先进制造等既有优势领域,而非竞争开发前沿大模型,核心在于从根本上重新设计适应AI时代的工作流程与系统。
- • IMDA的科技技能加速器(TeSA)将升级,着力培育同时掌握AI能力与特定业务领域知识的「AI双语」专才,覆盖技术与非技术从业者。
- • SAP将与IMDA合作,在三年内通过TeSA企业主导培训计划招募并培训50名AI科学家和机器学习工程师,这也是SAP首个参与该计划的项目。
完整译文(中文)
MDDI 英文原文译文 · 翻译日期: 2026-06-21
Philipp Herzig 博士,首席技术官
Simon Davies 先生,SAP 亚太区域总裁
Manik Saha 先生,SAP 实验室东亚区董事总经理
Eileen Chua 女士,SAP 新加坡董事总经理
女士们,先生们。
早上好。今天能出席 SAP d-com,我深感荣幸。
我非常高兴能够前来,亲眼见证这些才华横溢的人士所开展的极具前景的工作,也很享受早些时候的智能体解决方案展示。
令我印象深刻的,不仅仅是技术本身,更在于将技术付诸应用,从而为企业和社会创造实质性改变。今天,我看到了我们如何将人工智能从"有趣"推进至"有用",从"可能"推进至"可部署"。
同样令我印象深刻的,是各团队致力于构建能在真实运营环境、真实约束条件下运行的解决方案所付出的努力。
从很多方面来看,这代表着世界正面临的拐点。
要真正驾驭人工智能,我们必须从实验走向运营,从构想走向落地。
我们必须能够以人工智能为核心,对支撑组织顺畅运转的核心系统与业务流程——涵盖财务、合规、供应链管理、人力资源等领域——加以转型,并思考如何设计系统与流程,以充分发挥人工智能的能力,同时保留人类的判断力。
我们认为,这对新加坡未来的经济增长至关重要。新加坡或许没有足够的资源、土地、电力、人口或市场规模来拥有最前沿的人工智能模型,但我们相信,在人工智能的世界中,我们可以在优势行业领域发挥有益作用。
我们在金融、银行、保险、发电、物流、互联互通、先进制造等领域拥有良好的能力生态系统,但你仍需透过人工智能的视角审视世界。这不仅仅是将人工智能或技术表面化地叠加于现有流程或系统之上——那永远行不通。你必须从根本上对其进行变革。
因此,无论是回拨系统、电信,还是采购、财务或供应链中的工作流程,你们如何与业务负责人和行业携手,从根本上重新设计人工智能时代的工作流程与系统?我认为,这正是新加坡相信自身可以发挥作用的领域,我们期待与志同道合的伙伴共同探路,思考不同行业未来的面貌。我们或许没有所有答案,但我相信,我们可以在新加坡描绘出未来的轮廓。
这也正是近期《2026年财政预算案》的重要背景——总理黄循财强调了新加坡将人工智能作为战略竞争要素的重要性。事实上,他已成立国家人工智能理事会这一跨部门工作组,并将亲自担任主席。
我们是在良好的基础上推进这一工作的。
过去几年间,逾60家企业已在此设立人工智能卓越中心,将人工智能的潜力转化为实际应用。
SAP 是这一努力中的重要合作伙伴。
SAP 的数字创新加速实验室(即"DIAL 3.0")已与逾70家新加坡企业合作,共同开发概念验证解决方案。
其中12个已进入全面实施阶段,在实地推动了效率提升、成本节约及客户体验改善。
我们当前的任务,是将这一影响力在整个经济体中更广泛地扩展。
我们在 MDDI 供应委员会辩论中宣布的国家人工智能影响计划(NAIIP),阐明了我们的目标。
让10,000家企业在其工作流程中切实整合人工智能;以及
提升100,000名工人的能力,使其具备人工智能应用能力。
但要让企业和工人切实采用人工智能,他们需要能够支撑真实业务流程与工作流程的可信平台和解决方案。
这正是 SAP 等被广泛采用的企业平台发挥重要作用之处。
通过将包括智能体人工智能在内的人工智能能力嵌入其财务、供应链管理和人力资源等领域的核心产品,SAP 可以帮助:
将人工智能渗透至工人和企业的日常工作流程,助力其更系统地部署人工智能;以及
以此推动整个企业生态系统的转型。
若没有合适的人才,这一切都无从实现。
因此,请允许我简要谈谈我们观察到的两个趋势,以及我们如何与高等学府和业界携手应对。
第一个趋势,是 AI 工具正在如何重塑技术工作的本质。
如果像 Claude 或 Cursor 这样的 AI 工具现已能够生成完整的代码块,那么工程师还有存在的必要吗?
事实上,编写代码只是工程师所创造价值的一部分。我常说:当一名工程师懂得如何写代码,你是一名称职的工程师;如果一名工程师懂得如何解决问题,你是一名优秀的工程师;如果一名工程师懂得是否值得解决这个问题,你才是一名卓越的工程师。
更重要的是,这些代码是否有助于解决真实的商业问题,是否具备可扩展性、成本效益和安全性。归根结底,在于你是否在帮助客户解决其业务中最关键的问题——这不仅仅需要 AI 知识,更需要智慧、经验,以及对行业领域、客户和问题的深刻理解。
我相信,工程师在宏观层面依然大有作为:推动规格制定、系统设计、数据完整性、治理,以及在风险发生前提前预判。
这引出了第二个趋势,即我们所称的"双语"AI 人才的需求日益增长——指同时精通 AI 与某一业务领域的专业人士。
为使我们的工程师能够在这一宏观层面开展工作,我们需要具备以下能力的人才:
理解其工作所支撑的业务职能背后的技术细节——包括工作流程、成果目标与优先事项;
了解现实世界中"足够好"的标准——因为我们不可能一味追求理想化,最优秀的工程方案必须具备权衡成本效益、随机应变的智慧;以及
能够准确判断 AI 何时真正创造价值,同样重要的是,何时 AI 可能并非适合的工具,而不盲目使用 AI——因为归根结底,关键在于它所带来的价值,以及在恰当时机加以运用以解决问题。
以团队成员 Jasmine Quek 为例。
Jasmine 受过机器学习工程师的专业训练。
但在过去一年半里,Jasmine 需要深入了解财务工作流程、资金管理政策以及账户平衡要求。
这是因为 Jasmine 和她的团队一直在设计和构建一个"现金管理智能体"(Cash Management Agent)——一个负责执行日常现金头寸管理工作的 AI 智能体。
我很高兴得知他们取得了显著成效,打造了一套解决方案,将每个银行集团监控银行对账单和现金头寸的平均时间从七分钟缩短至两分钟。
正是这些趋势,促使 IMDA 的 TechSkills Accelerator(即 TeSA)将工作重心放在为劳动力提供能力支撑,以便在各领域和工作流程中更深入地整合 AI。
除支持技术工作者从编写代码迈向统筹编排由 AI 智能体驱动的端到端系统外,TeSA 计划还将得到强化,以培养更多 AI 双语人才。
非技术类工作者同样可以培养实用的 AI 能力,从而借助 AI 推动特定领域工作流程的转型,提升生产力。
但这并非政府能够单独完成的事情。毕竟,最好的培训终究是在实际工作中获得的。
因此,我深感欣慰的是,SAP 一直是新加坡生态系统中坚定的人才培育合作伙伴。
过去两年来,SAP 从我们的各所大学中招募了许多优秀的 AI 毕业生,担任科学家、工程师和数据专家。我刚才也见到了其中几位。在此过程中,SAP 也给予了他们参与真实、有意义项目的机会,并为他们配备了悉心、耐心指导的导师。
SAP 还积极通过内部学习计划帮助工程师提升承担更高层次工作的能力——这些计划将 AI 基础的深度技术培训与和领域专家并肩的实际在职经验有机结合。
因此,我很高兴宣布,SAP 将与 IMDA 合作,在三年内招募和培训 50 名 AI 科学家和机器学习工程师。这是 SAP 在 TeSA 企业主导培训计划(Company-Led Training programme)下获支持的首个项目。参与者将通过结构化培训以及在 SAP Labs 参与 AI 项目,掌握关键的 AI 与数据技能。
正是这样的合作伙伴关系,让我对新加坡充满信心——相信新加坡将培育出一个由 AI 构建者、工程师和企业组成的社群,他们能够融合 AI 与领域知识,为经济创造实实在在的成果,并支持其持续转型。
最后,再次感谢 SAP 以及今日在场的各位。
期待我们在未来数月携手共建的成果。
祝大家在 d-com 度过充实而富有成效的一天。
英文原文
MDDI 官网原始记录 · 抓取日期: 2026-06-21
Dr Philipp Herzig, Chief Technology Officer
Mr Simon Davies, Regional President of SAP APAC
Mr Manik Saha, Managing Director for SAP Labs East Asia
Ms Eileen Chua, Managing Director for SAP Singapore
Ladies and gentlemen.
Good morning. It is a great pleasure for me to be here today at SAP d-com.
I am very happy to be able to come by and see the very promising work by very talented individuals and I enjoyed the showcase of agentic solutions earlier.
What stood out to me was not just the technology, but taking the technology and applying it to make a meaningful difference to business and the society. Today, I saw how we are taking AI from “interesting” to “useful”, and from “possible” to “deployable”.
What also stood out to me was the teams’ efforts to build solutions designed to work in real operations, under real constraints.
In many ways, this represents the inflexion point the world is facing.
To really harness AI, we must move beyond experiments to operations, beyond ideas to implementation.
We must be able to transform the core systems and business processes that help organisations run smoothly – in Finance, Compliance, Supply Chain Management, Human Resources, and more – with AI in mind, and think about how to design systems and processes to make full use of AI’s capabilities while still maintaining the human’s ability to judge.
We believe that this is important to Singapore's future economic growth. Singapore may not have the resources, land, power, people, or market size to have the most frontier AI models, but we believe that we can play a useful role in this world of AI, specifically in areas where our sectors are strong.
We have a good ecosystem of capabilities in finance, banking, insurance, power plant, logistics, connectivity, advanced manufacturing, but you still want to look at the world through AI’s lenses. It is not just about applying AI or technology superficially to existing processes or systems – that will never work. You have to fundamentally transform them.
So whether it's call back systems, telecommunications, workflows in procurement, f inance, or supply chain, how are you working with the business owners and industry to fundamentally redesign the workflows and systems in the age of AI? And that, I think, is something that Singapore believes that we can play a part in, and we look forward to working with like-minded partners to pathfind and think about what the future of different sectors looks like. We may not have all the answers, but I think that we can chart out the contours of future here in Singapore.
This is also why much of the recent Budget 2026, Prime Minister Lawrence Wong highlighted the importance that Singapore will place on AI as a strategic competitor. In fact, he set up and will personally chair the National AI Council, an inter-ministry workgroup.
We are doing this off good foundations.
Over the past few years, more than 60 companies have set up their AI Centres of Excellence here, to translate AI’s potential into practical applications.
SAP has been an important partner in this effort.
SAP’s Digital Innovation Accelerator Lab, or “DIAL 3.0” has collaborated with over 70 Singapore enterprises to develop proof‑of‑concept solutions.
12 of which have moved into full-scale implementation, driving greater efficiency, cost savings, and improved customer experiences on the ground.
The task before us is now to scale this impact more widely across the economy.
Our National AI Impact Programme (NAIIP), announced at MDDI’s Committee of Supply debate, sets out our ambition.
To have 10,000 enterprises integrate AI meaningfully in their workflows; and
To uplift 100,000 workers to be AI-ready.
But for enterprises and workers to adopt AI meaningfully, they need trusted platforms and solutions that support real business processes and workflows.
This is where widely used enterprise platforms like SAP play an important role.
By embedding AI capabilities, including agentic AI, into its core product offerings for areas like Finance, Supply Chain Management and HR, SAP can help:
Diffuse AI into the daily workflows of workers and enterprises, helping them deploy AI more systematically; and
Through this, catalyse transformation across our enterprise ecosystem.
All of this is impossible to achieve if we don’t have the right talent.
So allow me to briefly touch on two trends we’ve been seeing, and how we are working with our Institutes of Higher Learning and industry to respond.
The first, is how AI tools are reshaping the nature of technical work.
If AI tools like Claude or Cursor can now generate entire code blocks, is there a need for engineers?
In truth, writing code is only part of the value that engineers bring. I always say, when an engineer knows how to write code, you are a decent engineer. If an engineer knows how to solve the problem, you are a good engineer. If an engineer knows whether it is the right problem to solve, you are an excellent engineer.
What matters more is whether that code helps to solve a real business problem, and whether it is scalable, cost-efficient, and secure. Fundamentally, it is about whether you are helping your clients solve the most important problem for their business, and that requires more than just AI knowledge. It is wisdom, experience, and understanding the domain, client, and issues.
I believe that engineers continue to have a strong role to play at the macro level, by driving specifications, system design, data integrity, governance, and anticipating risks before they happen.
This brings me to the second trend, which is the increasing need for what we call “bilingual” AI talent – professionals who are fluent in both AI and a business domain.
In order for our engineers to work at this macro level, we need talent who can:
Understand the technicalities behind business functions that their work support – workflows, outcomes, and priorities;
Know what “good enough” looks like in the real world because we cannot always aim for ideal and the best engineering solution must have the wisdom to judge cost benefits and adapt as we go along; and
Can accurately judge to tell when AI truly adds value, and equally important, when it might not be the right tool for the job, and not blindly use AI because at the end of the day, it is about the value it brings and applying it at an appropriate juncture to solve the problem.
Take Jasmine Quek from the team, for example.
Jasmine is a Machine Learning engineer by training.
But over the past one and a half years, Jasmine has had to build up a deep understanding of finance workflows, treasury policies, and account-balancing requirements.
This is because Jasmine and her team have been designing and building a “Cash Management Agent” – an AI agent that performs daily cash‑positioning work.
I’m glad to hear they were very successful, building a solution that helped reduce the average time to monitor bank statements and cash positions per bank group from seven mins to two mins.
These trends are why IMDA’s TechSkills Accelerator, or TeSA, is focusing its efforts on equipping the workforce with the capabilities to integrate AI more deeply across domains and workflows.
Beyond supporting tech workers to move beyond writing code and towards orchestrating end-to-end systems powered by AI agents, the TeSA initiative will be enhanced to develop more AI bilingual workers.
Non-tech workers can also develop practical AI capabilities so that they can leverage AI to transform domain-specific workflows and boost productivity.
But this is not something that the Government can do alone. After all, the best training is really one which is received on the job.
I am therefore very heartened that SAP has been a steadfast talent development partner to the Singapore ecosystem.
Over the past two years, SAP has hired many promising AI graduates from our universities, as Scientists, Engineers, and Data Specialists. I have met a few of them just now. In doing so, SAP has also given them the chance to work on real, meaningful projects, with mentors who guide them closely and patiently.
SAP is also actively helping its engineers build their capabilities to take on higher order work, through internal learning programmes that pair deep technical training on AI fundamentals with real on-the-job experience alongside domain experts.
So, I am happy to announce that SAP will partner IMDA to hire and train 50 AI Scientists and Machine Learning Engineers over three years. This is SAP's first project supported under TeSA’s Company-Led Training programme. Participants will pick up critical AI and data skills through structured training and working on AI projects in SAP Labs.
It is partnerships that give me the confidence that Singapore will develop the community of AI builders, engineers and companies who can harness both AI and domain knowledge to deliver real outcomes to our economy, and support its ongoing transformation.
On that note, thank you once again to SAP and all of you here today.
I look forward to what we will build together in the months ahead.
And wish you all a fruitful day at d-com.