The Times Australia
The Times World News

.

AI will continue to grow in 2025. But it will face major challenges along the way

  • Written by Daswin de Silva, Professor of AI and Analytics, Deputy Director of the Centre for Data Analytics and Cognition, La Trobe University

In 2024, artificial intelligence (AI) continued taking large and surprising steps forward.

People started conversing with AI “resurrections”[1] of the dead, using AI toothbrushes[2] and confessing to an AI-powered Jesus[3]. Meanwhile, OpenAI, the company behind ChatGPT, was valued at US$150 billion[4] and claimed it was on the way to developing an advanced AI system more capable than humans[5]. Google’s AI company DeepMind[6] made a similar claim.

These are just a handful of AI milestones over the past year. They reinforce not only how huge the technology has become, but also how it is transforming a wide range of human activities.

So what can we expect to happen in the world of AI in 2025?

Neural scaling

Neural scaling laws suggest the abilities of AI systems will increase predictably as the systems grow in size and are trained on more data. These laws have so far theorised the leap from first to second generation generative AI models such as ChatGPT[7].

Everyday users like us experienced this as the transition from having amusing chats with chatbots to doing useful work with AI “copilots”, such as drafting project proposals or summarising emails.

Recently, these scaling laws appear to have plateaued[8]. Making AI models bigger is no longer making them more capable.

The latest model[9] from OpenAI, o1, attempts to overcome the size plateau by using more computer power to “think” about trickier problems. But this is likely to increase costs for users and does not solve fundamental problems[10] such as hallucination.

The scaling plateau is a welcome pause to the move towards building an AI system that is more capable than humans. It may allow robust regulation and global consensus to catch up.

Mean wearing a suit speaking into a microphone on stage.
Sam Altman’s AI company, OpenAI, has released a new generative AI model. But it still does not solve fundamental problems such as hallucination. jamesonwu1972/Shutterstock[11]

Training data

Most current AI systems rely on huge amounts of data for training. However, training data has hit a wall as most high-quality sources have been exhausted.

Companies are conducting trials in which they train AI systems on AI-generated datasets[12]. This is despite a severe lack of understanding of new “synthetic biases” that can compound already biased AI.

For example, in a study[13] published earlier this year, researchers demonstrated how training with synthetic data produces models that are less accurate and disproportionately sideline underrepresented groups, despite starting with unbiased data sets.

Tech companies’ need for high-quality, authentic data strengthens the case for personal data ownership[14]. This would give people much more control over their personal data, allowing them, for example, to sell it to tech companies to train AI models within appropriate policy frameworks.

Robotics

This year Tesla announced[15] an AI-powered humanoid robot. Known as Optimus, this robot is able to perform a number of household chores[16].

In 2025, Tesla intends to deploy these robots in its internal manufacturing operations with mass production for external customers in 2026.

Black, shiny robot in a glass cabinet. Tesla’s Optimus robot will be available for customers in 2026. HU Art and Photography/Shutterstock[17]

Amazon, the world’s second-largest private employer, has also deployed more than 750,000 robots in its warehouse operations[18], including its first autonomous mobile robot that can work independently around people[19].

Generalisation – that is, the ability to learn from datasets representing specific tasks and generalise this to other tasks – has been the fundamental performance gap in robotics.

This is now addressed by AI.

For example, a company called Physical Intelligence has developed a model robot that can unload a dryer and fold clothes into a stack[20], despite not being explicitly trained to do so. The business case for affordable domestic robots continues to be strong, although they’re still expensive to make[21].

Automation

The planned Department of Government Efficiency in the United States is also likely to drive a significant AI automation agenda[22] in its push to reduce the number of federal agencies.

This agenda is also expected to include developing a practical framework for realising “agentic AI”[23] in the private sector. Agentic AI refers to systems capable of performing fully independent tasks.

For example, an AI agent will be able to automate your inbox, by reading, prioritising and responding to emails, organising meetings and following up with action items and reminders.

Man wearing a suit carrying a child on his head while walking through a stone building. The planned Department of Government Efficiency in the US, which will be co-led by Elon Musk, is likely to drive a significant AI automation agenda. Aaron Schwartz/EPA

Regulation

The incoming administration of newly elected US president Donald Trump plans to wind back efforts to regulate AI, starting with the repeal of outgoing president Joe Biden’s executive order on AI[24]. This order was passed in an attempt to limit harms while promoting innovation.

Trump’s administration will also develop an open market policy where AI monopolies and other US industries are encouraged to drive an aggressive innovation agenda[25].

Elsewhere, however, we will see the European Union’s AI Act being enforced in 2025, starting with the ban of AI systems that pose unacceptable risks[26]. This will be followed by the rollout of transparency obligations for generative AI models, such as OpenAI’s ChatGPT, that pose systemic risks[27].

Australia is following a risk-based approach to AI regulation, much like the EU. The proposal for ten mandatory guardrails for high-risk AI[28], released in September, could come into force in 2025.

Workplace productivity

We can expect to see workplaces continue to invest in licenses for various AI “copilot” systems, as many early trials show they may increase productivity[29].

But this must be accompanied with regular AI literacy and fluency training to ensure the technology is used appropriately.

In 2025, AI developers, consumers and regulators should be mindful of what Macquarie Dictionary dubbed the word of the year in 2024: enshittification[30].

This is the process by which online platforms and services steadily deteriorate over time. Let’s hope it doesn’t happen to AI.

References

  1. ^ conversing with AI “resurrections” (theconversation.com)
  2. ^ AI toothbrushes (www.washingtonpost.com)
  3. ^ confessing to an AI-powered Jesus (www.theguardian.com)
  4. ^ was valued at US$150 billion (www.nytimes.com)
  5. ^ developing an advanced AI system more capable than humans (www.perplexity.ai)
  6. ^ DeepMind (deepmind.google)
  7. ^ leap from first to second generation generative AI models such as ChatGPT (www.technologyreview.com)
  8. ^ scaling laws appear to have plateaued (www.reuters.com)
  9. ^ latest model (openai.com)
  10. ^ does not solve fundamental problems (community.openai.com)
  11. ^ jamesonwu1972/Shutterstock (www.shutterstock.com)
  12. ^ conducting trials in which they train AI systems on AI-generated datasets (theconversation.com)
  13. ^ study (arxiv.org)
  14. ^ the case for personal data ownership (www.forbes.com)
  15. ^ Tesla announced (theconversation.com)
  16. ^ household chores (www.usatoday.com)
  17. ^ HU Art and Photography/Shutterstock (www.shutterstock.com)
  18. ^ more than 750,000 robots in its warehouse operations (www.aboutamazon.com)
  19. ^ work independently around people (www.aboutamazon.com)
  20. ^ developed a model robot that can unload a dryer and fold clothes into a stack (www.physicalintelligence.company)
  21. ^ they’re still expensive to make (www.technologyreview.com)
  22. ^ drive a significant AI automation agenda (www.techtarget.com)
  23. ^ realising “agentic AI” (www.technologyreview.com)
  24. ^ executive order on AI (time.com)
  25. ^ aggressive innovation agenda (www.science.org)
  26. ^ unacceptable risks (artificialintelligenceact.eu)
  27. ^ systemic risks (artificialintelligenceact.eu)
  28. ^ ten mandatory guardrails for high-risk AI (consult.industry.gov.au)
  29. ^ they may increase productivity (www.itnews.com.au)
  30. ^ enshittification (www.abc.net.au)

Read more https://theconversation.com/ai-will-continue-to-grow-in-2025-but-it-will-face-major-challenges-along-the-way-244515

Times Magazine

DIY Is In: How Aussie Parents Are Redefining Birthday Parties

When planning his daughter’s birthday, Rich opted for a DIY approach, inspired by her love for drawing maps and giving clues. Their weekend tradition of hiding treats at home sparked the idea, and with a pirate ship playground already chosen as t...

When Touchscreens Turn Temperamental: What to Do Before You Panic

When your touchscreen starts acting up, ignoring taps, registering phantom touches, or freezing entirely, it can feel like your entire setup is falling apart. Before you rush to replace the device, it’s worth taking a deep breath and exploring what c...

Why Social Media Marketing Matters for Businesses in Australia

Today social media is a big part of daily life. All over Australia people use Facebook, Instagram, TikTok , LinkedIn and Twitter to stay connected, share updates and find new ideas. For businesses this means a great chance to reach new customers and...

Building an AI-First Culture in Your Company

AI isn't just something to think about anymore - it's becoming part of how we live and work, whether we like it or not. At the office, it definitely helps us move faster. But here's the thing: just using tools like ChatGPT or plugging AI into your wo...

Data Management Isn't Just About Tech—Here’s Why It’s a Human Problem Too

Photo by Kevin Kuby Manuel O. Diaz Jr.We live in a world drowning in data. Every click, swipe, medical scan, and financial transaction generates information, so much that managing it all has become one of the biggest challenges of our digital age. Bu...

Headless CMS in Digital Twins and 3D Product Experiences

Image by freepik As the metaverse becomes more advanced and accessible, it's clear that multiple sectors will use digital twins and 3D product experiences to visualize, connect, and streamline efforts better. A digital twin is a virtual replica of ...

The Times Features

How to Choose a Cosmetic Clinic That Aligns With Your Aesthetic Goals

Clinics that align with your goals prioritise subtlety, safety, and client input Strong results come from experience, not trends or treatment bundles A proper consultation fe...

7 Non-Invasive Options That Can Subtly Enhance Your Features

Non-invasive treatments can refresh your appearance with minimal downtime Options range from anti-wrinkle treatments to advanced skin therapies Many results appear gradually ...

What is creatine? What does the science say about its claims to build muscle and boost brain health?

If you’ve walked down the wellness aisle at your local supermarket recently, or scrolled the latest wellness trends on social media, you’ve likely heard about creatine. Creati...

Whole House Water Filters: Essential or Optional for Australian Homes?

Access to clean, safe water is something most Australians take for granted—but the reality can be more complex. Our country’s unique climate, frequent droughts, and occasional ...

How Businesses Turn Data into Actionable Insights

In today's digital landscape, businesses are drowning in data yet thirsting for meaningful direction. The challenge isn't collecting information—it's knowing how to turn data i...

Why Mobile Allied Therapy Services Are Essential in Post-Hospital Recovery

Mobile allied health services matter more than ever under recent NDIA travel funding cuts. A quiet but critical shift is unfolding in Australia’s healthcare landscape. Mobile all...