M&A & IPOs

Enhanced Games and the SPAC Route to the Public Markets

Why More Growth Companies Are Looking Beyond the Traditional IPO

Updated

June 5, 2026 12:22 AM

Enhanced Games at Resorts World Las Vegas. PHOTO: FACEBOOK@ENHANCEDGAMES

Enhanced Games reached the public markets in less than six months.

In an era where traditional IPOs can take more than a year to complete, the speed of the company’s merger with A Paradise Acquisition Corp. (NASDAQ: APAD) stands out, particularly given the significantly tighter regulatory scrutiny surrounding SPAC transactions since 2021.

The transaction highlights why some growth-stage companies are evaluating special-purpose acquisition companies (SPACs) as a viable alternative to the traditional IPO process.

Led by Dr. Aron D’Souza and backed by investors including Peter Thiel and Christian Angermayer, Enhanced Games announced its Business Combination Agreement with APAD in November 2025. The transaction closed in May 2026, bringing the company to the public markets materially faster than the timeline typically associated with a conventional IPO.

For decades, the traditional IPO has been considered the default route for private companies entering the public markets. But for many high-growth businesses today, the process has become increasingly slow, expensive, and difficult to execute efficiently.

A conventional IPO can take well over a year to prepare, involving extensive audits, regulatory reviews, underwriter coordination, investor roadshows, and careful timing against market conditions. During that period, companies remain exposed to volatility, shifting investor sentiment, and delayed access to capital. According to EY, many companies postponed planned IPOs amid market volatility and uncertainty surrounding U.S. tariff announcements, highlighting how sensitive IPO execution can be to broader market conditions.

For businesses operating in fast-moving industries, timing matters. Delayed access to liquidity can slow expansion, hiring, acquisitions, partnerships, and product development at critical stages of growth.

That is one reason why the merger between Enhanced Games and APAD is notable. The SPAC structure allowed Enhanced Games to negotiate valuation, governance terms, and financing arrangements early in the process, compressing many of the steps normally associated with a conventional IPO into a single transaction.

Enhanced Games operates across sports, media, performance science, and wellness, sectors that require significant upfront investment and rapid execution. Earlier access to public capital provided the company with liquidity, visibility, and strategic flexibility at an important stage of growth.

The public listing also gives the company tradable equity that can potentially support acquisitions, partnerships, athlete compensation structures, sponsorship arrangements, and future fundraising initiatives. These capabilities are particularly relevant in industries evolving as rapidly as sports entertainment, wellness, and human-performance science, where speed itself can become a competitive advantage.

The deal also highlights one of the SPAC market’s core advantages: the ability to combine capital raising and public-market entry within a single process.

The Transaction Also Provided Greater Valuation Visibility

Beyond speed, the SPAC structure offered Enhanced Games another major advantage: earlier visibility into valuation.

In a traditional IPO, pricing is largely determined near the end of the process through institutional book-building and investor demand during the roadshow phase. Even late-stage IPO candidates can face valuation cuts, downsized offerings, or postponed listings if market conditions weaken.

Recent IPO markets have repeatedly demonstrated this risk. Instacart went public in 2023 at an approximate US$9.9 billion valuation, which is dramatically below the US$39 billion private valuation it achieved during the 2021 market peak. Similarly, WeWork’s failed IPO attempt became one of the clearest examples of how rapidly investor sentiment can shift during the IPO process.

SPAC mergers operate differently.

Enhanced Games secured an implied enterprise valuation of approximately US$1.2 billion months before closing the transaction. While the merger still required SEC review and shareholder approval, the company gained significantly greater visibility into deal economics much earlier in the process.

That certainty is particularly valuable for growth companies whose valuations are tied more closely to long-term platform potential than near-term profitability.

Rather than relying entirely on shifting IPO market sentiment, the SPAC structure allowed Enhanced Games to negotiate around its broader growth strategy and future expansion plans from the outset.

Why the Deal Matters for Growth-Stage Companies

The Enhanced Games transaction also reinforces why some growth-stage companies evaluate SPACs as an alternative to the traditional IPO process.

Traditional IPO investors often prefer businesses with long operating histories, stable earnings, and predictable growth profiles. Many expansion-stage companies simply do not fit that model yet, even if their long-term opportunities are substantial.

SPACs offer a different pathway.

Instead of waiting years to achieve the operational maturity typically expected in a conventional IPO, companies can access public-market capital earlier while still in growth mode.

For Enhanced Games, early access to the public markets provides more than capital. Public equity can support acquisitions, partnerships, athlete compensation structures, sponsorship arrangements, and future fundraising efforts. These capabilities are particularly important in sectors evolving as rapidly as sports entertainment, wellness, and human-performance science, where speed itself can become a competitive advantage.

A More Disciplined SPAC Market

The transaction also highlights how the SPAC market has evolved since the speculative boom of 2020 and 2021.

Today’s de-SPAC environment operates under significantly tighter regulatory scrutiny, including enhanced disclosure requirements, greater SEC oversight, and stricter treatment of projections and liability standards.

The Harvard Law School Forum on Corporate Governance noted that redemption rates spiked in 2022, in some cases approaching 100%, contributing to a significant slowdown of the SPAC activity.

In response to rising investor concerns and regulatory pressure, the U.S. Securities and Exchange Commission adopted enhanced SPAC disclosure and liability rules in 2024 designed to align de-SPAC transactions more closely with traditional IPO standards. Sponsors also faced greater pressure to demonstrate financing certainty, stronger disclosures, and more credible post-merger execution.

Enhanced Games completed its transaction within this more disciplined environment.

Its Form S-4 included audited financial statements, governance disclosures, transaction details, and extensive risk-factor analysis subject to SEC review. The company also supplemented SPAC trust proceeds with a separately arranged US$40 million PIPE financing commitment designed to strengthen liquidity and improve deal certainty.

That structure reflects a more institutional and disciplined SPAC market than the speculative wave seen several years ago.

The Bigger Takeaway

The Enhanced Games transaction demonstrates that, despite tighter regulation and a far more selective market environment, SPACs can offer certain growth companies a practical alternative to the traditional IPO.

For businesses prioritising speed, capital access, and execution certainty, a well-structured de-SPAC transaction may provide a more efficient route to the public markets, particularly when supported by credible financing, disciplined structuring, and strong investor backing.

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Artificial Intelligence

Is LLMs the Future? The Great AI Schism Among Scientists

Brains, bots and the future: Who’s really in control?

Updated

January 8, 2026 6:32 PM

Adoration and disdain, the polarised reactions for generative AI. ILLUSTRATION: YORKE YU

When British-Canadian cognitive psychologist and computer scientist Geoffrey Hinton joked that his ex-girlfriend once used ChatGPT to help her break up with him, he wasn’t exaggerating.  The father of deep learning was pointing to something stranger: how machines built to mimic language have begun to mimic thought — and how even their creators no longer agree on what that means.

In that one quip — part humor, part unease — Hinton captured the paradox at the center of the world’s most important scientific divide. Artificial intelligence has moved beyond code and circuits into the realm of psychology, economics and even philosophy. Yet among those who know it best, the question has turned unexpectedly existential: what, if anything, do large language models truly understand?  

Across the world’s AI labs, that question has split the community into two camps — believers and skeptics, prophets and heretics. One side sees systems like ChatGPT, Claude, and Gemini as the dawn of a new cognitive age. The other insists they’re clever parrots with no grasp of meaning, destined to plateau as soon as the data runs out. Between them stands a trillion-dollar industry built on both conviction and uncertainty.

Hinton, who spent a decade at Google refining the very neural networks that now power generative AI, has lately sounded like a man haunted by his own invention. Speaking to Scott Pelley on the CBS 60 Minutes interview aired October 8, 2023, Hinton said, “I think we're moving into a period when for the first time ever we may have things more intelligent than us.” . He said it not with triumph, but with visible worry.

Yoshua Bengio, his longtime collaborator, sees it differently. Speaking at the All In conference in Montreal, he told TIME that future AI systems "will have stronger and stronger reasoning abilities, more and more knowledge," while cautioning about ensuring they "act according to our norms". And then there’s Gary Marcus, the cognitive scientist and enduring critic, who dismisses the hype outright: “These systems don’t understand the world. They just predict the next word.”    

It’s a rare moment in science when three pioneers of the same field disagree so completely — not about ethics or funding, but about the very nature of progress. And yet that disagreement now shapes how the future of AI will unfold.

In the span of just two years, large language models have gone from research curiosities to corporate cornerstones. Banks use them to summarize reports. Lawyers draft contracts with them. Pharmaceutical firms explore protein structures through them. Silicon Valley is betting that scaling these models — training them on ever-larger datasets with ever-denser computers — will eventually yield something approaching reasoning, maybe even intelligence.

It’s the “bigger is smarter” philosophy, and it has worked — so far. OpenAI’s GPT-4, Anthropic’s Claude, and Google’s Gemini have grown exponentially in capability  . They can write code, explain math, outline business plans, even simulate empathy. For most users, the line between prediction and understanding has already blurred beyond meaning. Kelvin So, who is now conducting AI research in PolyU SPEED, commented  , “AI scientists today are inclined to believe we have learnt a bitter lesson in the advancement from the traditional AI to the current LLM paradigm. That said, scaling law, instead of human-crafted complicated rules, is the ultimate law governing AI.”  

But inside the labs, cracks are showing. Scaling models have become staggeringly expensive, and the returns are diminishing. A growing number of researchers suspect that raw scale alone cannot unlock true comprehension — that these systems are learning syntax, not semantics; imitation, not insight.  

That belief fuels a quiet counter-revolution. Instead of simply piling on data and GPUs, some researchers are pursuing hybrid intelligence   — systems that combine statistical learning with symbolic reasoning, causal inference, or embodied interaction with the physical world. The idea is that intelligence requires grounding — an understanding of cause, consequence, and context that no amount of text prediction can supply.

Yet the results speak for themselves.  In practice, language models are already transforming industries faster than regulation can keep up. Marketing departments run on them. Customer support, logistics and finance teams depend on them. Even scientists now use them to generate hypotheses, debug code and summarize literature. For every cautionary voice, there are a dozen entrepreneurs who see this technology as a force reshaping every industry. That gap — between what these models actually are and what we hope they might become — defines this moment. It’s a time of awe and unease, where progress races ahead even as understanding lags behind.  

Part of the confusion stems from how these systems work. A large language model doesn’t store facts like a database. It predicts what word is most likely to come next in a sequence, based on patterns in vast amounts of text. Behind this seemingly simple prediction mechanism lies a sophisticated architecture. The tokenizer is one of the key innovations behind modern language models. It takes text and chops it into smaller, manageable pieces the AI can understand. These pieces are then turned into numbers, giving the model a way to “read” human language. By doing this, the system can spot context and relationships between words — the building blocks of comprehension.  

Inside the model, mechanisms such as multi-head attention enable the system to examine many aspects of information simultaneously, much as a human reader might track several storylines at once.

Reinforcement learning, pioneered by Richard Sutton, a professor of computing science at the University of Alberta, and Andrew Barto, Professor Emeritus at the University of Massachusetts, mimics human trial-and-error learning. The AI develops “value functions” that predict the long-term rewards of its actions.  Together, these technologies enable machines to recognize patterns, make predictions and generate text that feels strikingly human — yet beneath this technical progress lies the very divide that cuts to the heart of how intelligence itself is defined.

This placement works well because it elaborates on the technical foundations after the article introduces the basic concept of how language models work, and before it transitions to discussing the emergent behaviors and the “black box problem.”

Yet at scale, that simple process begins to yield emergent behavior — reasoning, problem-solving, even flashes of creativity that surprise their creators. The result is something that looks, sounds and increasingly acts intelligent — even if no one can explain exactly why.

That opacity worries not just philosophers, but engineers. The “black box problem” — our inability to interpret how neural networks make decisions — has turned into a scientific and safety concern. If we can’t explain a model’s reasoning, can we trust it in critical systems like healthcare or defense?

Companies like Anthropic are trying to address that with “constitutional AI,” embedding human-written principles into model training to guide behavior. Others, like OpenAI, are experimenting with internal oversight teams and adversarial testing to catch dangerous or misleading outputs. But no approach yet offers real transparency. We’re effectively steering a ship whose navigation system we don’t fully understand.  “We need governance frameworks that evolve as quickly as AI itself,” says Felix Cheung, Founding Chairman of RegTech Association of Hong Kong (RTAHK). “Technical safeguards alone aren't enough — transparent monitoring and clear accountability must become industry standards.”

Meanwhile, the commercial race is accelerating. Venture capital is flowing into AI startups at record speed. OpenAI’s valuation reportedly exceeds US$150 billion; Anthropic, backed by Amazon and Google, isn’t far behind.   The bet is simple: that generative AI will become as indispensable to modern life as the internet itself.

And yet, not everyone is buying into that vision. The open-source movement — championed by players like Meta’s Llama, Mistral in France, and a fast-growing constellation of independent labs — argues that democratizing access is the only way to ensure both innovation and accountability.   If powerful AI remains locked behind corporate walls, they warn, progress will narrow to the priorities of a few firms.

But openness cuts both ways. Publicly available models are harder to police, and their misuse — from disinformation to deepfakes — grows as easily as innovation does. Regulators are scrambling to balance risk and reward. The European Union’s AI Act is the world’s most comprehensive attempt at governance, but even it struggles to define where to draw the line between creativity and control.

This isn’t just a scientific argument anymore. It’s a geopolitical one. The United States, China, and Europe are each pursuing distinct AI strategies: Washington betting on private-sector dominance, Beijing on state-led scaling, Brussels on regulation and ethics. Behind the headlines, compute power is becoming a form of soft power. Whoever controls access to the chips, data, and infrastructure that fuel AI will control much of the digital economy.  

That reality is forcing some uncomfortable math. Training frontier models already consumes energy on the scale of small nations. Data centers now rise next to hydroelectric dams and nuclear plants. Efficiency — once a technical concern — has become an economic and environmental one. As demand grows, so does the incentive to build smaller, smarter, more efficient systems. The industry’s next leap may not come from scale at all, but from constraint.

For all the noise, one truth keeps resurfacing: large language models are tools, not oracles. Their intelligence — if we can call it that — is borrowed from ours. They are trained on human text, human logic, human error. Every time a model surprises us with insight, it is, in a sense, holding up a mirror to collective intelligence.

That’s what makes this schism so fascinating. It’s not really about machines. It’s about what we believe intelligence is — pattern or principle, simulation or soul. For believers like Bengio, intelligence may simply be prediction done right. For critics like Marcus, that’s a category mistake: true understanding requires grounding in the real world, something no model trained on text can ever achieve.

The public, meanwhile, is less interested in metaphysics. To most users, these systems work — and that’s enough. They write emails, plan trips, debug spreadsheets, summarize meetings. Whether they “understand” or not feels academic. But for the scientists, that distinction remains critical, because it determines where AI might ultimately lead.

Even inside the companies building them, that tension shows OpenAI’s Sam Altman has hinted that scaling can’t continue forever. At some point, new architectures — possibly combining logic, memory, or embodied data — will be needed. DeepMind’s Demis Hassabis says something similar: intelligence, he argues, will come not just from prediction, but from interaction with the world.  

It’s possible both are right. The future of AI may belong to hybrid systems — part statistical, part symbolic — that can reason across multiple modes of information: text, image, sound, action. The line between model and agent is already blurring, as LLMs gain the ability to browse the web, run code, and call external tools. The next generation won’t just answer questions; it will perform tasks.

For startups, the opportunity — and the risk — lies in that transition. The most valuable companies in this new era may not be those that build the biggest models, but those that build useful ones: specialized systems tuned for medicine, law, logistics, or finance, where reliability matters more than raw capability. The winners will understand that scale is a means, not an end.

And for society, the challenge is to decide what kind of intelligence we want to live with. If we treat these models as collaborators — imperfect, explainable, constrained — they could amplify human potential on a scale unseen since the printing press. If we chase the illusion of autonomy, they could just as easily entrench bias, confusion, and dependency.

The debate over large language models will not end in a lab. It will play out in courts, classrooms, boardrooms, and living rooms — anywhere humans and machines learn to share the same cognitive space. Whether we call that cooperation or competition will depend on how we design, deploy, and, ultimately, define these tools.

Perhaps Hinton’s offhand remark about being psychoanalyzed by his own creation wasn’t just a joke. It was an omen. AI is no longer something we use; it’s something we’re reflected in. Every model trained on our words becomes a record of who we are — our reasoning, our prejudices, our brilliance, our contradictions. The schism among scientists mirrors the one within ourselves: fascination colliding with fear, ambition tempered by doubt.

In the end, the question isn’t whether LLMs are the future. It’s whether we are ready for a future built in their image.