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Why Businesses Struggle to Adopt Generative AI in Asia

Uncover key hurdles to generative AI adoption in Asia. Explore solutions and considerations for businesses looking to harness its power.

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Generative AI Adoption in Asia

TL;DR

  • Companies are struggling to adopt generative AI in Asia due to security concerns, unclear use cases, talent shortages, low model maturity, and evolving regulations.
  • Less than 40% of organisations have successfully deployed an AI project, highlighting the challenges of implementation.
  • Staying informed about AI advancements and addressing these barriers is crucial for successful AI adoption.

Speedbumps on the Road to Success in Asia

Generative AI, a branch of artificial intelligence (AI) focused on creating new content, holds immense potential for businesses across various industries in Asia. However, despite the enthusiasm, many companies are encountering significant hurdles hindering their AI adoption journey. This article explores the key roadblocks currently impeding the widespread adoption of generative AI in Asia, along with potential solutions and future considerations.

Navigating the Maze of Cybersecurity Threats

One of the most prominent concerns surrounding generative AI adoption is the rise in cybersecurity threats. These AI-powered models, particularly those utilizing large language models (LLMs), introduce a new layer of vulnerabilities that traditional security measures might not adequately address.

According to a study by Foundry and Searce, a staggering 58% of respondents identified data security as a primary barrier to AI adoption. Jake Williams, a cybersecurity expert at IANS Research, emphasises the lack of understanding regarding the unique security risks associated with AI applications. He highlights the need for specialised security training and certifications tailored to AI, as existing tools in this domain are still under development.

Companies can mitigate these risks by prioritising threat modelling specific to their AI applications and actively seeking to educate their teams on AI security best practices.

Finding the Right Use Case: Balancing Impact and Complexity

Another significant barrier to generative AI adoption is the struggle to identify suitable use cases with a clear return on investment (ROI). Many businesses lack a strategic approach, often selecting use cases that are either too ambitious or offer minimal impact, ultimately leading to project failures and organisational skepticism.

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Vrinda Khurjekar, a senior director at Searce, emphasises the importance of establishing an AI council to streamline the selection process. This council, comprised of representatives from various departments, can comprehensively assess the organization’s needs and prioritize high-impact use cases with achievable complexity. By prioritising use cases strategically, businesses can ensure a smoother adoption process and maximise the potential benefits of generative AI.

Addressing the Talent Gap: Building a Strong Generative AI Workforce in Asia

The scarcity of skilled professionals in the AI field poses another significant challenge to widespread adoption. The rapid pace of technological advancements makes it difficult for organizations to attract and retain top talent, hindering their ability to effectively launch and manage AI initiatives.

Khurjekar suggests that companies should invest in proactive talent acquisition strategies and implement training programs to equip their existing workforce with the necessary AI skills. This comprehensive approach can help organisations build a robust AI talent pipeline and overcome the limitations imposed by the current talent shortage.

Mitigating Hallucinations When Adoption Generative AI in Asia

The limited maturity of current generative AI models can also impede adoption. These models are susceptible to “hallucinations,” where they generate factually incorrect outputs due to limitations in their training data or algorithms. This unreliability can be particularly concerning for industries like healthcare and finance, where accuracy is paramount.

Khurjekar acknowledges this challenge and anticipates that model maturity will improve over time. However, companies in sectors demanding high precision may need to exercise caution and adopt a wait-and-see approach until these models become more reliable.

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Regulatory Uncertainty and an Evolving Landscape

The evolving regulatory landscape surrounding AI also presents a hurdle to adoption. As AI technology is still nascent, regulatory bodies are still formulating guidelines and policies to govern its responsible implementation. This uncertainty can deter businesses, particularly those operating in highly regulated industries, from embracing AI due to the potential for future regulatory changes that might necessitate costly adjustments.

Khurjekar suggests that companies stay informed about regulatory developments and maintain a flexible approach to adapt to evolving policies. By closely monitoring the regulatory landscape, businesses can make informed decisions regarding AI adoption while minimising the risk of future disruptions.

Conclusion: Embracing Continuous Learning for a Successful AI Journey

In conclusion, while generative AI offers immense potential for businesses in Asia, several significant roadblocks currently hinder its widespread adoption. These challenges include cybersecurity concerns, unclear use cases, talent shortages, low model maturity, and evolving regulations.

Companies can overcome these hurdles by prioritising security measures, adopting a strategic approach to use case selection, investing in talent development, acknowledging model limitations, and staying informed about regulatory updates. Ultimately, successful generative AI adoption in Asia requires a continuous learning mindset and a commitment to adapting to the ever-evolving technological landscape.

Do you believe the potential benefits of generative AI outweigh the challenges it presents, or should businesses in Asia proceed with caution? Share your thoughts in the comments below!

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Can PwC’s new Agent OS Really Make AI Workflows 10x Faster?

PwC’s Agent OS seamlessly connects and orchestrates AI agents into scalable enterprise workflows, promising 10x faster AI deployment and real-world productivity gains.

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PwC Agent OS

TL;DR – What You Need to Know in 30 Seconds

  • PwC’s Agent OS orchestrates diverse AI agents into unified, scalable workflows, promising deployment up to 10x faster.
  • Real-world cases already show efficiency boosts: 40% faster supply chains, 70% reduction in compliance tasks, and 30% quicker marketing launches.
  • Designed for complex enterprise environments, it’s cloud-agnostic, multilingual, and actively deployed in leading global businesses, including PwC itself.

AI Agents are everywhere—but can they talk to each other?

PwC has unveiled its ambitious “Agent OS,” aiming to streamline AI orchestration at enterprise scale—promising workflows built and deployed 10 times faster. But is this platform truly the missing link enterprises need for their AI strategy?

Let’s dig in.

Enterprise AI sounds fantastic until you realise it often means managing a tangled web of different tools, platforms, and “intelligent” agents, each stubbornly refusing to play nice with each other. Companies regularly find themselves stuck between AI experiments and true enterprise-scale AI adoption because—ironically—these clever AI agents simply can’t collaborate.

Enter PwC’s new Agent OS, positioned as a kind of universal translator and orchestration conductor rolled into one. Imagine a central nervous system for enterprise AI, capable of seamlessly linking different agents and platforms into coherent workflows—no matter where the agents were developed or what tech stack they’re built on.

But is it all hype, or can PwC’s Agent OS genuinely unlock seamless, scalable enterprise AI?

What exactly is PwC’s Agent OS?

PwC’s Agent OS acts as a unified command centre, orchestrating a multitude of AI agents across popular enterprise platforms, including Anthropic, AWS, GitHub, Google Cloud, Microsoft Azure, OpenAI, Oracle, Salesforce, SAP, and Workday, to name just a few. It connects, coordinates, and scales AI agents—whether they’re custom-built, developed via third-party SDKs, or fine-tuned with proprietary data.

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Think of it as the ultimate workflow builder, letting users—from AI specialists to your average non-tech-savvy manager—design sophisticated AI processes using intuitive drag-and-drop tools, natural language interfaces, and visual data-flow management.

Better yet, it’s cloud-agnostic, deploying effortlessly across AWS, Google Cloud, Microsoft Azure, Oracle Cloud Infrastructure, Salesforce, and even on-premises solutions.

Real-World Impact (not just theory)

Sceptical about fancy AI promises? Let’s look at some concrete use-cases PwC already claims are working in practice:

  • Supply Chain: Imagine reducing your manufacturing firm’s supply chain delays by up to 40% through seamless integration of forecasting, procurement, and real-time logistics tracking agents from SAP, Oracle, and AWS, topped with PwC’s custom disruption detection agents.
  • Marketing Operations: What if your retail marketing campaigns could launch twice as fast, with 30% higher conversion rates by orchestrating agents from OpenAI, Google Cloud, Salesforce, and Workday—all talking together in harmony?
  • Compliance Automation: Picture a multinational bank automating regulatory workflows, drastically reducing manual reviews by 70%, thanks to agents seamlessly interpreting and aligning evolving regulatory policies via Anthropic and Microsoft Azure.

Who’s Already Benefiting?

PwC’s Agent OS isn’t just theoretical—real companies are already seeing transformative results:

  • A tech company revamped its customer contact centre, reducing average call times by nearly 25%, slashing call transfers by 60%, and boosting customer satisfaction.
  • A global hospitality firm automated brand standards management, achieving up to 94% reduction in manual review times.
  • A healthcare giant applied AI agents to oncology workflows, streamlining clinical document processing to unlock actionable insights 50% faster, while simultaneously reducing administrative burdens by 30%.

And PwC themselves aren’t sitting idle: They’ve deployed over 250 internal AI agents, turbocharging productivity across tax, assurance, and advisory divisions—proving they’re ready to eat their own AI cooking.

Why PwC’s Agent OS Matters to Asia

In Asia, where enterprises are rapidly adopting AI to stay competitive (especially in dynamic markets like Singapore, India, and Indonesia), PwC’s Agent OS could offer a real edge. Asian enterprises grappling with complex multilingual data streams and diverse regional platforms may find a solution in the adaptive, multilingual capabilities of this system.

But it’s not just about tech. It’s about helping Asia’s leading enterprises quickly build, adapt, and scale AI-driven workflows to compete globally—accelerating innovation at a pace that keeps them ahead.

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Could PwC’s Agent OS finally mean enterprises spend less time wrestling with AI tech—and more time reaping its benefits?

We’d love your take. Let us know in the comments below.

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Forget the panic: AI Isn’t Here to Replace Us—It’s Here to Elevate Our Roles

Learn why managing AI agents—not fearing them—is key to thriving in the workforce of tomorrow. Discover how to become an effective AI manager today.

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AI Manager

TL;DR – What You Need to Know in 30 Seconds About the Rise of the AI Manager

  • AI creates new leadership roles, not job losses.
  • Successful AI managers combine tech knowledge with clear communication.
  • AI boosts productivity, creating more jobs and opportunities.
  • Invest early in AI literacy and critical thinking to thrive.

Professionals who master the art of managing AI agents are set to define the next era of work.

AI is everywhere right now—and so are fears about job displacement. But take a deep breath; there’s good news! Rather than making human skills obsolete, artificial intelligence is actually paving the way for a new, exciting role: the AI manager.

As AI agents evolve into reliable digital teammates capable of handling complex tasks, the spotlight shifts onto the people who manage them. In fact, the most successful professionals of the future won’t just understand how AI works—they’ll know exactly how to lead, direct, and collaborate effectively with their digital colleagues.

AI as High-Performing Team Members

Today’s AI isn’t just impressive—it’s genuinely useful. In the past few years alone, we’ve witnessed remarkable leaps in capabilities, especially with generative AI. These digital teammates are now expertly handling everything from financial analysis and legal research to content creation and data-driven decision-making.

The next big thing is ‘agentic AI’—digital agents that don’t just assist humans but actively work alongside them with a level of independence. Think about it: consistent, reliable, and tireless digital employees who never need a coffee break. Of course, that might make some of us nervous—who wouldn’t worry about a colleague who can work 24/7 at lightning speed?

But here’s the key: even the best talent needs effective management. AI might be powerful, but it still needs direction, oversight, and human judgement. The professionals who thrive won’t be replaced by AI—they’ll manage teams of digital talent to deliver results greater than anything achievable alone.

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What Does It Mean to Manage AI?

Being an AI manager doesn’t mean abandoning traditional leadership skills; it means expanding them. Great managers have always needed two core competencies:

  • People management: motivating, inspiring, and guiding human teams. While AI lacks emotions, clear communication and setting precise expectations are still vital.
  • Technical management: structuring workflows, delegating tasks strategically, and ensuring alignment towards organisational goals.

Both skill sets are critical when managing AI. A manager of digital agents must understand the nuances of the technology—its strengths, weaknesses, and quirks—while also working effectively with their human counterparts. Just as a great sales manager might stumble managing engineers without understanding their workflows, managing AI requires hands-on technical knowledge combined with clear strategic vision.

Ultimately, being disconnected from practical realities won’t cut it. Leaders in an AI-driven environment must be equally comfortable engaging with technology as they are with strategy and collaboration.

Re-examining the Job Displacement Myth

Fears around AI’s impact often overlook one important economic principle: Jevons paradox. Simply put, when efficiency improves, overall demand frequently increases too. Yes, AI might automate tasks currently performed by humans—but that same efficiency boost can open doors we can’t yet imagine.

Think of the industrial revolution: automation displaced manual labour, but it simultaneously created unprecedented wealth, innovation, and new kinds of employment. Similarly, AI’s efficiency will likely spawn entirely new markets, industries, and roles—like AI agent managers—ensuring that human creativity and insight remain irreplaceable.

How Can We Prepare for This Shift?

Change can be uncomfortable, and the rise of AI is no exception. But the transition doesn’t have to be painful. Here’s how we can adapt:

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1. Prioritise Practical Skills in Education

Universities excel at theory but often overlook practical skills that the workplace demands. It’s time to elevate vocational and professional training, the kind traditionally offered by polytechnics or community colleges, to build job-ready skill sets.

2. Embrace AI Literacy in the Workplace

Companies should embed AI literacy into their core training, ensuring everyone—from new hires to senior executives—is comfortable using and collaborating with AI tools. Businesses that invest early in AI literacy will hold a powerful competitive advantage.

3. Take Personal Responsibility for Learning

Individuals, especially those in roles susceptible to automation, need to proactively upgrade their skillsets. This doesn’t mean everyone should become a developer, but learning to confidently use AI, understand digital workflows, and develop critical thinking around tech are essential.

Crucially, becoming AI-literate doesn’t mean blindly trusting technology; it means being savvy enough to challenge it. An effective AI manager must know when to push back against the recommendations of digital teammates, recognising that AI isn’t perfect—it’s only as good as the people who oversee it.

Luckily, resources to build these skills abound: free online courses, corporate training, AI boot camps, and independent learning opportunities are readily available. Your job is to start learning—and keep asking smart questions.

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Are YOU ready?

The future belongs to those who adapt, question, and lead the digital workforce. Are you ready to become an AI manager?

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Why are CMOs Still Holding Back on AI Marketing?

The New York Times embraces generative AI for headlines and summaries, sparking staff worries and a looming legal clash over AI’s role in modern journalism.

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generative AI marketing

TL;DR – What You Need to Know in 30 Seconds

  1. Reluctant 27%: A significant chunk of CMOs have minimal or zero use of AI marketing, citing costs and ethical concerns.
  2. High Performers: Businesses that exceed profit goals are widely using generative AI for both creative work and strategy.
  3. Cautious Optimism: While some see major wins in campaign analytics, others struggle to find benefits in cost reduction and customer service.
  4. Risk of Lagging: Experts warn that slow adoption could leave traditional marketers scrambling to catch up in a rapidly evolving field.

Why Are CMOs Still Holding Back on Generative AI Marketing?

In a world where even your local bakery is dabbling with AI-driven marketing campaigns, it seems a little baffling that some Chief Marketing Officers (CMOs) are still on the fence about generative artificial intelligence (AI). The hype machine is running full tilt, with countless headlines promising a revolution in how we strategise and create marketing materials. And yet, according to Gartner’s latest research, 27% of CMOs report no or limited adoption of generative AI in their teams. What’s going on, and should these marketing chiefs be worried? Let’s explore.

The Reluctant Third

Let’s start with the eye-catching number that’s got tongues wagging across the marketing landscape: 27% of CMOs either aren’t using generative AI at all or are only dabbling on the periphery. Considering we’re several years into the generative AI hype wave, you’d think that figure would be lower. After all, we hear success stories about AI-generated ad campaigns or chatbots that transform customer service on a nearly daily basis. So why the reluctance?

One big reason often cited is the cost. While there are open-source options, enterprise-level tools (complete with robust support and advanced data security features) don’t come cheap. Then, there’s also the legal and ethical minefield: some executives worry about brand risk or data security concerns. If your marketing AI is scraping questionable sources for content, or if it accidentally pinches trademarked materials, the cost could be more than just monetary—it might damage your brand’s reputation.

High Performers Blaze the Trail

If you think generative AI is all hype, you might want to pay attention to the marketing teams who are actually succeeding with it. According to Gartner’s findings, 84% of high performers—businesses that exceed their annual profit growth and marketing goals—are leveraging generative AI for creative development, and 52% are putting it towards strategy development.

These stats matter because they highlight a gap between those who’ve embraced the AI revolution and those who are dragging their feet. High-performing organisations see “creative development” as the perfect playground for generative AI: from drafting copy to brainstorming design ideas, the tech is boosting the volume and diversity of creative work. Strategy development is also getting an AI-powered makeover, with marketers crunching campaign data in record time to find winning formulas.

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As Gartner notes, CMOs who ignore the technology “are in a position of greater risk.” It’s not just about keeping up with the Joneses—it’s about leveraging a tool that can genuinely make marketing campaigns more efficient, more targeted, and possibly even more profitable.

Not Everyone Sees the Glitter of AI Marketing

Interestingly, the Gartner research also shows that generative AI’s benefits aren’t universally acknowledged. Over a quarter of CMOs surveyed reported little to no benefit in areas like cost reduction, customer service, and scalability. That’s a bit of a head-scratcher when many of us have been sold the dream that AI would turn marketing teams into lean, mean campaigning machines.

Part of the mismatch might come from inflated expectations. Some CMOs might have imagined generative AI swooping in like a marketing superhero, solving every challenge overnight. As a result, when the reality—training, experimenting, refining—sets in, disappointment can ensue.

Many believe GenAI will transform marketing, but despite the hype, many CMOs feel that their GenAI investments have yet to pay off.
Suzanne Schwartz, Senior Director Analyst at the Gartner Marketing Practice
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It’s also worth noting that 6% of CMOs have no usage of generative AI at all, whereas 21% have only waded into the shallow end. Yet on the other side of the spectrum, around 15% see extremely broad use among their teams. That discrepancy screams caution from some corners and gung-ho enthusiasm from others.

Disruptors and Doubts

Remember those corporate AI solutions that come with hefty price tags? Well, the pace of AI evolution has accelerated massively, especially in Asia. Enter disruptive companies like China’s DeepSeek, which have introduced more affordable—or at least more flexible—versions of AI. They’ve changed the conversation around pricing, data security, and the potential of open-source models.

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But not everyone is convinced. A survey by The Wall Street Journal found 21% of IT leaders aren’t currently using AI agents, with reliability being a major sticking point. While that might sound like a small number, keep in mind that these are the folks who sign off on the tech stack. If they harbour doubts, the marketing team’s AI ambitions could remain tethered to a cautionary anchor.

Where Are the Gains?

Despite the reluctance from some, 47% of those who have embraced generative AI are seeing a large benefit in tasks such as campaign evaluation and reporting. This indicates that when deployed properly, AI can absolutely streamline some parts of the marketing machine. Whether it’s quicker insight generation from data analytics or more accurate audience segmentation for targeted campaigns, the gains can’t be ignored.

So, if you find yourself in that 27% who are holding out, consider this: the competitive edge might be slipping away to those high performers who are pairing human creativity with AI efficiency.

Balancing Caution and Curiosity

Let’s be honest: any new technology comes with risks. Data security, ethical boundaries, and steep pricing are real concerns. The key might lie in adopting a balanced approach: start with smaller, safer implementations—like using AI for ad copy testing or initial design mock-ups—before rolling it out to high-stakes areas.

It’s a bit like learning to swim: you wouldn’t jump off the high dive if you’ve never been in the pool before, but you wouldn’t stand on the edge of the pool forever, either.

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The Final Word: Ready to Jump In or Watch from the Sidelines?

So, is generative AI in marketing a passing fad or the future of the industry? The data suggests it’s much more than a flash in the pan. High performers are already capitalising on AI’s creative and strategic potential.

The question is: will the sceptics catch up before they’re left behind entirely?

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