The World Cup has only been played for a few days, but some AI prediction models have already been crowned as oracles, while others have stumbled badly.

marsbitPublished on 2026-06-16Last updated on 2026-06-16

Abstract

The 2026 FIFA World Cup has sparked significant interest not only on the pitch but also in AI-driven match prediction. Major models like Qwen, Copilot, and ChatGPT are being used to forecast outcomes, scores, upsets, red cards, and key player performances. Qwen gained early attention by accurately predicting Mexico's 2-0 win over South Africa (including a red card risk) and South Korea's 2-1 victory over the Czech Republic in the opening matches. Copilot's pre-tournament predictions had notable successes, such as correctly calling the Mexico 2-0 scoreline, South Korea's 2-1 win, and Brazil's 1-1 draw with Morocco. However, it also had clear misses, failing to predict upsets like Australia's 2-0 win over Turkey or Switzerland's draw with Qatar. ChatGPT provided detailed analytical reasoning, correctly predicting Mexico's 2-0 win, but its full-tournament predictions tended to favor favorites, missing several underdog results and draws. Tests pitting multiple models (ChatGPT, Gemini, Grok, Claude) against the same match, like Mexico vs. South Africa, showed varying predictions, with only some hitting the exact score. In summary, while AI models like Qwen have shown promising early results in specific match details, and others have had isolated successes, they collectively struggle to consistently identify upsets and underdog performances. AI is becoming an additional reference tool for prediction markets but is far from a definitive source.

The most exciting place at this World Cup isn't just on the pitch.

As interest in World Cup prediction events heats up, more and more users are participating in trading with real money. Who will win, what will the score be, will there be an upset, will there be a red card, which player will score—these topics, originally just casual pre-match chatter among fans, are now broken down into individual tradable prediction events.

When predictions become trades, users need more than just emotions and intuition: odds fluctuations, team form, injury news, head-to-head history, and market sentiment all become reference points before making a trade. In this process, AI models are being frequently brought into World Cup prediction scenarios.

Large models like Qwen, ChatGPT, Gemini, Claude, DeepSeek, Qwen, and Copilot can not only answer 'which team is more likely to win' but also provide score predictions, likelihood of upsets, red card risks, key player performances, and match flow analysis. For prediction market participants, AI's pre-match analysis is becoming another layer of reference beyond odds, news, team data, and market sentiment.

However, predictions ultimately have to be judged against the actual matches.

With the official start of the World Cup, the results of the first few matches have come in. Those AI analyses that users consulted to aid their judgments before the matches now have answers to compare against: Were the scores predicted correctly? Were upsets foreseen? How many details like red cards, last-minute winners, and match flow were actually captured by the models?

The first to go viral was, surprisingly, Qwen

The most entertaining performance on the opening day of the World Cup undoubtedly belonged to Qwen.

For the opening match between Mexico and South Africa, Qwen's pre-match prediction was Mexico 2:0 South Africa. After the match ended, the score was indeed 2:0. What's more interesting is that the match saw a total of three red cards, which also largely aligned with Qwen's pre-match risk assessment of 'South Africa's overly aggressive defending, potentially leading to playing with ten men early on.'

If it were just predicting a Mexico win, that wouldn't be too surprising. As one of the hosts, Mexico was favored anyway. But what Qwen nailed this time were the more specific match details: the 2:0 scoreline, South Africa's red card risk, and the pace of the game gradually opening up in the later stages.

Next, for the match between South Korea and the Czech Republic, Qwen gave a prediction of South Korea 2:1.

This match wasn't easy to call before kick-off. The Czech Republic had physicality, set-piece threats, and the usual big-tournament experience of European teams. The match process was indeed not one-sided; the Czechs took the lead first, South Korea equalized later, and the game was deadlocked at 1:1 for a long time. It wasn't until the final stages that South Korea scored the winning goal, with the final score becoming 2:1.

This gave Qwen's prediction an even stronger sense of 'scriptwriting.' Predicting the winner can rely on paper strength, score predictions can involve luck, but process details like red cards, comebacks, and last-minute winners are what truly make people think 'there's something to this.' After two matches on the opening day, Qwen first raised the profile of AI World Cup predictions.

Copilot: Moments of brilliance, but also obvious stumbles

Before the tournament, USA Today had Copilot predict all 104 matches of this World Cup. Judging from the completed matches so far, these predictions have both highlights and obvious misses.

Among them, three match predictions stood out.

For the opening match Mexico vs. South Africa, Copilot predicted Mexico 2:0, which matched the final score exactly. For South Korea vs. the Czech Republic, it predicted South Korea 2:1, again consistent with the result. For Brazil vs. Morocco, Copilot gave a 1:1 prediction, and Brazil was indeed held to a draw by Morocco.

Especially the Brazil 1:1 Morocco match, the prediction had significant merit. Brazil is, after all, a traditional powerhouse, with a squad and level of attention in the top tier.

Although Morocco reached the semi-finals in the last World Cup, predicting a draw against Brazil before the match was not a particularly safe choice. After the match, Brazil failed to get a winning start, and Morocco continued its resilience in major tournaments—Copilot's prediction for this match was indeed a 'stroke of genius.'

But Copilot's issues also became apparent quickly.

It predicted Canada would beat Bosnia and Herzegovina 2:1, but the match ended 1:1; it predicted Switzerland would edge Qatar 1:0, but Switzerland was also held to a draw; it predicted the USA would beat Paraguay 2:0—the direction was correct, but the actual score was 4:1, significantly underestimating the attacking intensity.

More obvious stumbles occurred in several matches involving upsets and strong teams being held back.

For Turkey vs. Australia, Copilot predicted Turkey would win 2:1, but Australia pulled off a 2:0 upset win. For Ecuador vs. Ivory Coast, it predicted Ecuador 2:1, but Ivory Coast won 1:0. For the Netherlands vs. Japan, it predicted the Netherlands 2:1, but Japan came back twice to level, ending in a 2:2 draw. For Sweden vs. Tunisia, it predicted 1:1, but Sweden thrashed them 5:1.

The fact that Copilot could nail the exact scores for Mexico, South Korea, and Brazil shows it doesn't just follow the favorites. But matches like Australia beating Turkey, Qatar drawing with Switzerland, and Japan drawing with the Netherlands also expose its judgments on upsets and draws as still being relatively conservative.

ChatGPT: Analysis is thorough, but not sharp enough on upsets

Compared to Copilot's full tournament predictions, ChatGPT is more like a 'pre-match analytical player.'

In its opening match prediction, ChatGPT predicted Mexico 2:0 South Africa, hitting the final score. The reasoning it provided was also quite thorough, including Mexico's home advantage, recent form, South Africa's lack of attacking threat, and factors like the high altitude of Mexico City and the home crowd atmosphere. In this prediction, ChatGPT didn't just give a result; the underlying logic also aligned with the match outcome.

However, when it comes to full tournament predictions, ChatGPT's stability isn't as strong. While it correctly predicted Mexico 2:0 South Africa and Brazil 1:1 Morocco, and got the win/loss direction right for several matches like Scotland, Germany, and Sweden, for matches like South Korea 2:1 Czech Republic, Qatar 1:1 Switzerland, Australia 2:0 Turkey, and Japan 2:2 the Netherlands, ChatGPT's predictions favored the team with stronger paper strength. For example, it predicted Switzerland should beat Qatar, Turkey should beat Australia, and the Netherlands should edge Japan.

ChatGPT is not without predictive ability; it can break down team strength, home conditions, and recent form clearly, and can hit the score in some matches. But based on current results, it seems better at explaining 'why the favorite is more logical' rather than identifying in advance which matches might deviate from the favorite's script.

Gemini, Grok, Claude: Different models write different scripts for the same match

Besides Qwen, Copilot, and ChatGPT, some social media users have fed the same match to multiple models for pre-match predictions.

Taking the opening match Mexico vs. South Africa as an example, one blogger simultaneously tested four AI models—ChatGPT, Gemini, Grok, and Claude—for pre-match predictions. The results showed that both ChatGPT and Gemini predicted Mexico 2:0 South Africa, hitting the final score; Grok predicted Mexico 2:1, and Claude predicted Mexico 3:1. While both correctly predicted a Mexico win, they didn't nail the exact score.

For this opening match prediction, different models offered three different 'scripts.' ChatGPT Go and Gemini Pro were closer to the actual match: Mexico dominant, South Africa lacking in attack, ending with a clean sheet. Grok gave a more open scoreline, suggesting South Africa would get a goal back on the counter. Claude Sonnet set higher expectations for Mexico's attack, predicting a more open 3:1 result.

Summary

Since the number of AI prediction samples available for review is still limited at this stage, it's not yet possible to directly judge which model is the most 'football-savvy.'

But just looking at the few matches completed so far, differences are already starting to show. Qwen currently has the most memorable moments, hitting Mexico 2:0 South Africa and South Korea 2:1 Czech Republic on the opening day, and also catching red card risks and match flow, representing a standout performance in a small sample. However, whether it can sustain this accuracy requires verification from more matches.

Copilot and ChatGPT both have highlights of hitting exact scores, but they also share a common issue—their judgment remains insufficiently sensitive to matches that deviate from paper strength, like Australia beating Turkey, Qatar drawing with Switzerland, and Japan drawing with the Netherlands.

As for models like Gemini, Grok, and Claude, the publicly available samples are more focused on single matches or social media comparisons; they have reference value but are not yet suitable for direct rankings.

AI can already serve as one layer of reference for World Cup prediction market users, but it is far from being the standard answer.

Related Questions

QAccording to the article, which AI model had the most impressive start in predicting the World Cup matches?

AAccording to the article, the AI model Qwen (千问) had the most impressive start. It correctly predicted the exact scores (2:0 for Mexico vs. South Africa and 2:1 for South Korea vs. Czech Republic) for the first two matches it covered, and also accurately flagged the risk of a red card for South Africa.

QWhat are the major strengths and weaknesses identified for Copilot's predictions in the article?

AThe article states that Copilot's major strengths included accurately predicting exact scores for several matches, notably a 1:1 draw for Brazil vs. Morocco. Its major weakness was a tendency to be conservative in predicting upsets and draws, as it missed calls for matches like Australia beating Turkey, Qatar drawing with Switzerland, and Japan drawing with the Netherlands.

QHow does ChatGPT's approach to World Cup prediction differ from Copilot's, as described in the article?

AThe article describes ChatGPT as more of a 'pre-match analysis' tool that provides detailed reasoning for its predictions, such as considering home advantage and team form. In contrast, Copilot provided a complete forecast for all 104 tournament matches. However, both models shared a similar weakness in underestimating the likelihood of upsets.

QWhat was the key difference in the predictions for the Mexico vs. South Africa opener between models like ChatGPT/Gemini and Grok/Claude?

AFor the Mexico vs. South Africa opener, ChatGPT and Gemini correctly predicted the exact 2:0 scoreline. Grok predicted a 2:1 win for Mexico, and Claude predicted a 3:1 win. While all four models correctly predicted a Mexico victory, only ChatGPT and Gemini got the specific score and the fact that South Africa would be shut out.

QWhat is the article's overall conclusion about the current state of AI models in predicting World Cup outcomes?

AThe article concludes that while AI models can provide a useful additional reference for prediction market participants, they are far from being a definitive 'standard answer.' Their performance varies, and with a limited sample size of matches, it's too early to definitively judge which model is best. Models have shown they can predict specific scores and trends, but they still struggle with consistently identifying potential upsets or unexpected results.

Related Reads

After Tokenization of Assets, How to Exit?

Title: How to Exit After Asset Tokenization? Author: Symbiotic Compiled by: Hu Tao, ChainCatcher Summary: Tokenization addresses how assets go on-chain but largely leaves the redemption question unresolved. While tokenized assets can settle instantly, the underlying redemption for assets like treasuries, private credit, or real estate can take from T+1 to 180 days. This gap hinders DeFi adoption of Real World Assets (RWAs). Three emerging models aim to provide instant exit liquidity, differing primarily in their capital structure and efficiency: 1. **Balance Sheet Model (e.g., Grove Basin):** A single entity (like Sky) provides immediate liquidity from its balance sheet, acting as a bridge during the settlement period. It offers simplicity and deep initial liquidity but is constrained by a single entity's capacity and risk appetite. 2. **Asset-Specific Vault Model (e.g., Upshift Clear):** Independent liquidity providers fund dedicated vaults for each supported asset, earning fees. It decentralizes capital sources but isolates liquidity and capital per asset, leading to potential fragmentation. 3. **Shared Liquidity Layer Model (e.g., Symbiotic Liquid Lane):** A shared capital pool supports multiple RWA types simultaneously. Funds remain productive between redemptions (e.g., earning yield in lending markets). Exits are settled via a competitive RFQ market. This model aims for higher capital efficiency, scalability across assets, and serves longer-duration assets like private credit. Key differentiators are: 1) Source of capital and risk bearer, 2) Redemption pricing mechanism, 3) Capital efficiency, 4) Scalability to new asset types, and 5) Composability. The shared liquidity layer model represents a move from piecemeal solutions toward scalable infrastructure, enabling T+0 exits by pooling capital, maintaining yield, and using competitive pricing, thus enhancing RWA utility in DeFi.

marsbit10m ago

After Tokenization of Assets, How to Exit?

marsbit10m ago

After Tokenizing Assets, How to Exit?

After tokenization, a key unresolved issue is providing holders with a reliable exit mechanism, as underlying asset settlement (taking days to months) lags far behind on-chain token settlement. Three primary models for instant liquidity have emerged, differing in their capital structure and efficiency: 1. **Balance Sheet Model (e.g., Grove Basin):** A single, well-capitalized entity (like Sky) provides immediate liquidity from its own reserves. This offers simplicity and deep initial liquidity but is constrained by that single balance sheet's capacity and risk appetite, limiting scalability. 2. **Dedicated Vault Model (e.g., Upshift Clear):** Independent liquidity providers (LPs) fund separate vaults for each supported asset. This decentralizes capital sources but isolates liquidity and capital, which becomes inefficient as the number of tokenized assets grows. 3. **Shared Liquidity Layer Model (Symbiotic Liquid Lane):** Independent capital providers fund shared vaults that can support multiple tokenized assets simultaneously. Capital remains productive between redemptions (e.g., earning yield in DeFi markets). Exits are settled via a competitive RFQ market where market makers bid. The article argues that the shared layer model offers superior capital efficiency and scalability. It transforms exit liquidity from an asset-specific patch into shared market infrastructure, allowing liquidity capacity to grow with overall market participation rather than being fragmented per asset. This is particularly valuable for longer-duration assets like private credit, where reliable T+0 exits can significantly enhance their utility in DeFi.

链捕手24m ago

After Tokenizing Assets, How to Exit?

链捕手24m ago

Anthropic's Triple Moment: Code Leak, Government Confrontation, and Weaponization

This article analyzes Anthropic's recent conflicts and strategic moves following the U.S. government's emergency halt of its new Fable model, citing national security concerns over potential "jailbreaks." The author argues this incident reveals deeper tensions between AI labs, governments, and the software industry. While critics view Anthropic's safety-focused rhetoric as marketing fear, the author suggests it serves as a commercial moat masking the company's core economic imperative: moving closer to end-users and their valuable data to avoid being commoditized. The piece outlines a coming clash between frontier AI labs like Anthropic and established software companies. Labs need real-world usage data for model improvement via reinforcement learning, creating a cycle where better products attract more users and more data. This threatens software firms who, as Microsoft's Satya Nadella warns, risk having their value captured by a few dominant models. Anthropic's controversial policy changes—initially secretly degrading Fable's performance for LLM development and expanding data retention—are framed as assertions of control, justified by its safety narrative. The company's foundational belief that it alone is sufficiently concerned about superintelligent AI dangers legitimizes its actions, from resisting government demands to shaping usage policies. The author concludes that this alignment of mission, talent, and business strategy is powerful but concerning, as it concentrates immense potential power in the hands of those convinced of their own righteous understanding.

marsbit34m ago

Anthropic's Triple Moment: Code Leak, Government Confrontation, and Weaponization

marsbit34m ago

Trading

Spot
Futures
活动图片