Connect with us

Life

The Future of AI: Expert Insights and Emerging Trends

Discover the future of AI in Asia with expert insights from Terence Tao, highlighting the opportunities and risks of this transformative technology.

Published

on

AI in Asia

TL;DR:

  • AI Monopoly Concerns: Terence Tao, a renowned mathematician, warns against AI being controlled by a few companies.
  • AI in Elections: Tao’s analysis suggests the Venezuelan election results were likely manipulated.
  • AI Potential and Risks: While AI has transformative potential, it also poses significant risks, including deepfakes and weaponization.

Artificial Intelligence (AI) and Artificial General Intelligence (AGI) are rapidly evolving fields, particularly in Asia. As these technologies advance, they bring both opportunities and challenges. In this article, we delve into the insights of Terence Tao, a Fields Medal-winning mathematician, and explore the implications of AI and AGI for the region.

The Rise of AI in Asia

AI is transforming industries across Asia, from healthcare and finance to education and entertainment. Companies and governments are investing heavily in AI research and development, aiming to harness its potential to drive economic growth and innovation. However, as AI becomes more integrated into our daily lives, concerns about its ethical implications and potential misuse are growing.

Terence Tao on AI and AGI

Terence Tao, a renowned mathematician, has been vocal about the risks and opportunities of AI. In a recent interview, Tao expressed concern about the potential for AI to be controlled by a few powerful companies.

“It’s not good for something as important as AI to be a monopoly held by one or two companies,” Tao said.

Tao believes that open-source AI models and regulation are essential to prevent such a scenario.

AI in Elections: A Case Study

Tao has also applied his mathematical expertise to analyzing election results. In the case of the Venezuelan presidential election, Tao noted that the reported results were highly unusual, with exact percentages that are statistically improbable. “If the reported results were not erroneous or manipulated, then there is only a one in 100 million chance that the observed result of having extremely round percentages would have occurred,” he explained. Tao’s analysis suggests that the results were likely manipulated, highlighting the potential for AI to be used to detect and prevent election fraud.

Advertisement

The Potential and Risks of AI

AI has the potential to revolutionize industries and improve our daily lives. However, it also poses significant risks. Tao noted that AI could be used to create deepfakes, which could influence elections or spread misinformation. Additionally, AI could be used to develop new weapons, raising concerns about its potential for misuse.

Deepfakes and Election Integrity

One of the most pressing concerns about AI is its potential to create deepfakes. Deepfakes are synthetic media in which a person in an existing image or video is replaced with someone else’s likeness. Tao noted that deepfakes could be used to influence elections or spread misinformation, undermining public trust in democratic institutions.

AI and Weaponization

AI could also be used to develop new weapons, raising concerns about its potential for misuse. Tao noted that while AI has the potential to transform industries and improve our daily lives, it also poses significant risks. “It’s theoretically possible [for AI to pose a threat to humanity],” he said. “It’s a very powerful technology.”

The Future of AI in Asia

As AI continues to evolve, it is essential to consider its ethical implications and potential misuse. Governments and companies must work together to develop regulations and standards that ensure AI is used responsibly. Additionally, investment in AI research and development must be balanced with efforts to address its potential risks.

Regulation and Open-Source AI

Tao believes that open-source AI models and regulation are essential to prevent AI from being controlled by a few powerful companies. “There are some open source AI models out there, although they are two or three years behind the big commercial models,” he said. “It’s not good for something as important as AI to be a monopoly controlled by one or two companies.”

Advertisement

Investment in AI Research and Development

Asia is at the forefront of AI research and development, with companies and governments investing heavily in the technology. However, it is essential to balance this investment with efforts to address the potential risks of AI. Tao noted that while AI has the potential to transform industries and improve our daily lives, it also poses significant risks.

Embracing the Future of AI

AI and AGI are rapidly evolving fields with the potential to transform industries and improve our daily lives. However, as these technologies advance, it is essential to consider their ethical implications and potential misuse. Governments and companies must work together to develop regulations and standards that ensure AI is used responsibly. Additionally, investment in AI research and development must be balanced with efforts to address its potential risks. By embracing the future of AI, we can harness its potential to drive economic growth and innovation while mitigating its risks.

Comment and Share:

What do you think about the future of AI in Asia? Share your thoughts and experiences with AI and AGI technologies in the comments below. Don’t forget to subscribe for updates on AI and AGI developments.

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Life

Whose English Is Your AI Speaking?

AI tools default to mainstream American English, excluding global voices. Why it matters and what inclusive language design could look like.

Published

on

English bias in AI

TL;DR — What You Need To Know

  • Most AI tools are trained on mainstream American English, ignoring global Englishes like Singlish or Indian English
  • This leads to bias, miscommunication, and exclusion in real-world applications
  • To fix it, we need AI that recognises linguistic diversity—not corrects it.

English Bias In AI

Here’s a fun fact that’s not so fun when you think about it: 90% of generative AI training data is in English. But not just any English. Not Nigerian English. Not Indian English. Not the English you’d hear in Singapore’s hawker centres or on the streets of Liverpool. Nope. It’s mostly good ol’ mainstream American English.

That’s the voice most AI systems have learned to mimic, model, and prioritise. Not because it’s better. But because that’s what’s been fed into the system.

So what happens when you build global technology on a single, dominant dialect?

A Monolingual Machine in a Multilingual World

Let’s be clear: English isn’t one language. It’s many. About 1.5 billion people speak it, and almost all of them do so with their own twist. Grammar, vocabulary, intonation, slang—it all varies.

But when your AI tools—from autocorrect to resume scanners—are only trained on one flavour of English (mostly US-centric, polished, white-collar English), a lot of other voices start to disappear. And not quietly.

Speakers of regional or “non-standard” English often find their words flagged as incorrect, their accents ignored, or their syntax marked as a mistake. And that’s not just inconvenient—it’s exclusionary.

Why Mainstream American English Took Over

This dominance didn’t happen by chance. It’s historical, economic, and deeply structural.

Advertisement

The internet was largely developed in the US. Big Tech? Still mostly based there. The datasets used to train AI? Scraped from web content dominated by American media, forums, and publishing.

So, whether you’re chatting with a voice assistant or asking ChatGPT to write your email, what you’re hearing back is often a polished, neutral-sounding, corporate-friendly version of American English. The kind that gets labelled “standard” by systems that were never trained to value anything else.

When AI Gets It Wrong—And Who Pays the Price

Let’s play this out in real life.

  • An AI tutor can’t parse a Nigerian English question? The student loses confidence.
  • A resume written in Indian English gets rejected by an automated scanner? The applicant misses out.
  • Voice transcription software mangles an Australian First Nations story? Cultural heritage gets distorted.

These aren’t small glitches. They’re big failures with real-world consequences. And they’re happening as AI tools are rolled out everywhere—into schools, offices, government services, and creative workspaces.

It’s “Englishes”, Plural

If you’ve grown up being told your English was “wrong,” here’s your reminder: It’s not.

Singlish? Not broken. Just brilliant. Indian English? Full of expressive, efficient, and clever turns of phrase. Aboriginal English? Entirely valid, with its own rules and rich oral traditions.

Language is fluid, social, and fiercely local. And every community that’s been handed English has reshaped it, stretched it, owned it.

But many AI systems still treat these variations as noise. Not worth training on. Not important enough to include in benchmarks. Not profitable to prioritise. So they get left out—and with them, so do their speakers.

Advertisement

Towards Linguistic Justice in AI

Fixing this doesn’t mean rewriting everyone’s grammar. It means rewriting the technology.

We need to stop asking AI to uphold one “correct” form of English, and start asking it to understand the many. That takes:

  • More inclusive training data – built on diverse voices, not just dominant ones
  • Cross-disciplinary collaboration – between linguists, engineers, educators, and community leaders
  • Respect for language rights – including the choice not to digitise certain cultural knowledge
  • A mindset shift – from standardising language to supporting expression

Because the goal isn’t to “correct” the speaker. It’s to make the system smarter, fairer, and more reflective of the world it serves.

Ask Yourself: Whose English Is It Anyway?

Next time your AI assistant “fixes” your sentence or flags your phrasing, take a second to pause. Ask: whose English is this system trying to emulate? And more importantly, whose English is it leaving behind?

Language has always been a site of power—but also of play, resistance, and identity. The way forward for AI isn’t more uniformity. It’s more Englishes, embraced on their own terms.

You may also like:

Advertisement

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Business

Build Your Own Agentic AI — No Coding Required

Want to build a smart AI agent without coding? Here’s how to use ChatGPT and no-code tools to create your own agentic AI — step by step.

Published

on

agentic AI

TL;DR — What You Need to Know About Agentic AI

  • Anyone can now build a powerful AI agent using ChatGPT — no technical skills needed.
  • Tools like Custom GPTs and Make.com make it easy to create agents that do more than chat — they take action.
  • The key is to start with a clear purpose, test it in real-world conditions, and expand as your needs grow.

Anyone Can Build One — And That Includes You

Not too long ago, building a truly capable AI agent felt like something only Silicon Valley engineers could pull off. But the landscape has changed. You don’t need a background in programming or data science anymore — you just need a clear idea of what you want your AI to do, and access to a few easy-to-use tools.

Whether you’re a startup founder looking to automate support, a marketer wanting to build a digital assistant, or simply someone curious about AI, creating your own agent is now well within reach.


What Does ‘Agentic’ Mean, Exactly?

Think of an agentic AI as something far more capable than a standard chatbot. It’s an AI that doesn’t just reply to questions — it can actually do things. That might mean sending emails, pulling information from the web, updating spreadsheets, or interacting with third-party tools and systems.

The difference lies in autonomy. A typical chatbot might respond with a script or FAQ-style answer. An agentic AI, on the other hand, understands the user’s intent, takes appropriate action, and adapts based on ongoing feedback and instructions. It behaves more like a digital team member than a digital toy.


Step 1: Define What You Want It to Do

Before you dive into building anything, it’s important to get crystal clear on what role your agent will play.

Advertisement

Ask yourself:

  • Who is going to use this agent?
  • What specific tasks should it be responsible for?
  • Are there repetitive processes it can take off your plate?

For instance, if you run an online business, you might want an agent that handles frequently asked questions, helps users track their orders, and flags complex queries for human follow-up. If you’re in consulting, your agent could be designed to book meetings, answer basic service questions, or even pre-qualify leads.

Be practical. Focus on solving one or two real problems. You can always expand its capabilities later.


Step 2: Pick a No-Code Platform to Build On

Now comes the fun part: choosing the right platform. If you’re new to this, I recommend starting with OpenAI’s Custom GPTs — it’s the most accessible option and designed for non-coders.

Custom GPTs allow you to build your own version of ChatGPT by simply describing what you want it to do. No technical setup required. You’ll need a ChatGPT Plus or Team subscription to access this feature, but once inside, the process is remarkably straightforward.

If you’re aiming for more complex automation — such as integrating your agent with email systems, customer databases, or CRMs — you may want to explore other no-code platforms like Make.com (formerly Integromat), Dialogflow, or Bubble.io. These offer visual builders where you can map out flows, connect apps, and define logic — all without needing to write a single line of code.

Advertisement

Step 3: Use ChatGPT’s Custom GPT Builder

Let’s say you’ve opted for the Custom GPT route — here’s how to get started.

First, log in to your ChatGPT account and select “Explore GPTs” from the sidebar. Click on “Create,” and you’ll be prompted to describe your agent in natural language. That’s it — just describe what the agent should do, how it should behave, and what tone it should take. For example:

“You are a friendly and professional assistant for my online skincare shop. You help customers with questions about product ingredients, delivery options, and how to track their order status.”

Once you’ve set the description, you can go further by uploading reference materials such as product catalogues, FAQs, or policies. These will give your agent deeper knowledge to draw from. You can also choose to enable additional tools like web browsing or code interpretation, depending on your needs.

Then, test it. Interact with your agent just like a customer would. If it stumbles, refine your instructions. Think of it like coaching — the more clearly you guide it, the better the output becomes.


Step 4: Go Further with Visual Builders

If you’re looking to connect your agent to the outside world — such as pulling data from a spreadsheet, triggering a workflow in your CRM, or sending a Slack message — that’s where tools like Make.com come in.

Advertisement

These platforms allow you to visually design workflows by dragging and dropping different actions and services into a flowchart-style builder. You can set up scenarios like:

  • A user asks the agent, “Where’s my order?”
  • The agent extracts key info (e.g. email or order number)
  • It looks up the order via an API or database
  • It responds with the latest shipping status, all in real time

The experience feels a bit like setting up rules in Zapier, but with more control over logic and branching paths. These platforms open up serious possibilities without requiring a developer on your team.


Step 5: Train It, Test It, Then Launch

Once your agent is built, don’t stop there. Test it with real people — ideally your target users. Watch how they interact with it. Are there questions it can’t answer? Instructions it misinterprets? Fix those, and iterate as you go.

Training doesn’t mean coding — it just means improving the agent’s understanding and behaviour by updating your descriptions, feeding it more examples, or adjusting its structure in the visual builder.

Over time, your agent will become more capable, confident, and useful. Think of it as a digital intern that never sleeps — but needs a bit of initial training to perform well.


Why Build One?

The most obvious reason is time. An AI agent can handle repetitive questions, assist users around the clock, and reduce the strain on your support or operations team.

Advertisement

But there’s also the strategic edge. As more companies move towards automation and AI-led support, offering a smart, responsive agent isn’t just a nice-to-have — it’s quickly becoming an expectation.

And here’s the kicker: you don’t need a big team or budget to get started. You just need clarity, curiosity, and a bit of time to explore.


Where to Begin

If you’ve got a ChatGPT Plus account, start by building a Custom GPT. You’ll get an immediate sense of what’s possible. Then, if you need more, look at integrating Make.com or another builder that fits your workflow.

The world of agentic AI is no longer reserved for the technically gifted. It’s now open to creators, business owners, educators, and anyone else with a problem to solve and a bit of imagination.


What kind of AI agent would you build — and what would you have it do for you first? Let us know in the comments below!

Advertisement

You may also like:

Author


Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Life

Which ChatGPT Model Should You Choose?

Confused about the ChatGPT model options? This guide clarifies how to choose the right model for your tasks.

Published

on

ChatGPT model

TL;DR — What You Need to Know:

  • GPT-4o is ideal for summarising, brainstorming, and real-time data analysis, with multimodal capabilities.
  • GPT-4.5 is the go-to for creativity, emotional intelligence, and communication-based tasks.
  • o4-mini is designed for speed and technical queries, while o4-mini-high excels at detailed tasks like advanced coding and scientific explanations.

Navigating the Maze of ChatGPT Models

OpenAI’s ChatGPT has come a long way, but its multitude of models has left many users scratching their heads. If you’re still confused about which version of ChatGPT to use for what task, you’re not alone! Luckily, OpenAI has stepped in with a handy guide that outlines when to choose one model over another. Whether you’re an enterprise user or just getting started, this breakdown will help you make sense of the options at your fingertips.

So, Which ChatGPT Model Makes Sense For You?

Currently, ChatGPT offers five models, each suited to different tasks. They are:

  1. GPT-4o – the “omni model”
  2. GPT-4.5 – the creative powerhouse
  3. o4-mini – the speedster for technical tasks
  4. o4-mini-high – the heavy lifter for detailed work
  5. o3 – the analytical thinker for complex, multi-step problems

Which model should you use?

Here’s what OpenAI has to say:

  • GPT-4o: If you’re looking for a reliable all-rounder, this is your best bet. It’s perfect for tasks like summarising long texts, brainstorming emails, or generating content on the fly. With its multimodal features, it supports text, images, audio, and even advanced data analysis.
  • GPT-4.5: If creativity is your priority, then GPT-4.5 is your go-to. This version shines with emotional intelligence and excels in communication-based tasks. Whether you’re crafting engaging narratives or brainstorming innovative ideas, GPT-4.5 brings a more human-like touch.
  • o4-mini: For those in need of speed and precision, o4-mini is the way to go. It handles technical queries like STEM problems and programming tasks swiftly, making it a strong contender for quick problem-solving.
  • o4-mini-high: If you’re dealing with intricate, detailed tasks like advanced coding or complex mathematical equations, o4-mini-high delivers the extra horsepower you need. It’s designed for accuracy and higher-level technical work.
  • o3: When the task requires multi-step reasoning or strategic planning, o3 is the model you want. It’s designed for deep analysis, complex coding, and problem-solving across multiple stages.

Which one should you pick?

For $20/month with ChatGPT Plus, you’ll have access to all these models and can easily switch between them depending on your task.

But here’s the big question: Which model are you most likely to use? Could OpenAI’s new model options finally streamline your workflow, or will you still be bouncing between versions? Let me know your thoughts!

You may also like:

Author

Advertisement

Discover more from AIinASIA

Subscribe to get the latest posts sent to your email.

Continue Reading

Trending

Discover more from AIinASIA

Subscribe now to keep reading and get access to the full archive.

Continue reading