Google's Deep Think Dominates Eight-Language Olympiads, Autonomously Solves Four Unsolved Problems, Research Barriers Collapse

marsbitPubblicato 2026-04-08Pubblicato ultima volta 2026-04-08

Introduzione

Google DeepMind's "Deep Think" AI system has demonstrated exceptional performance across eight languages in regional academic competitions, including mathematics and informatics Olympiads. It achieved perfect scores in Japanese and French contests, and high results in Chinese, Korean, Hindi, Vietnamese, Russian, and Portuguese exams. This multi-language capability aims to reduce linguistic barriers in scientific research, enabling non-English-speaking researchers to access advanced AI tools equally. Beyond competitions, Deep Think has solved four previously unsolved mathematical problems and contributed to breakthroughs in computer science, physics, and economics. It powers the Aletheia agent, which autonomously generates and verifies research-level mathematical solutions. Despite these achievements, the results are based on internal evaluations without third-party verification or detailed methodology disclosure. Google positions Deep Think as a "human intelligence multiplier," expanding AI's role in global scientific collaboration beyond English-dominated benchmarks.

"Deep Think has defeated/matched competitors in all competitions"!

Just now, Google DeepMind senior researcher Conglong Li posted 12 messages on the X platform, revealing an unprecedented scorecard.

One AI, the same brain, eight exam papers in different languages, all submitted with high scores.

Such results are rare for any model.

From IMO Gold Medals to Full Coverage of Regional Competitions

Deep Think's high scores across multiple leaderboards are not a sudden breakthrough but part of a nearly year-long evolution of capabilities.

First, it topped the most rigorous reasoning competitions.

In July 2025, Gemini Deep Think achieved the gold medal standard at the International Mathematical Olympiad (IMO) for the first time, scoring 35 out of 42 points. It also achieved similarly high-level performance at the ICPC World Finals around the same time.

These two achievements have been officially announced in the DeepMind blog.

Google DeepMind subsequently included these two results in its official blog, marking Deep Think's crossing of the "world-class competition threshold" in mathematics and programming.

Next, Deep Think began moving from "world-champion-level individual breakthroughs" to "systematic validation across languages, disciplines, and scenarios."

In February 2026, Google published three blog posts.

One introduced the Gemini 3.1 Pro model itself, one detailed a major upgrade to the Deep Think specialized reasoning mode, and one from the DeepMind scientific discovery team directly positioned Deep Think as a "human intelligence multiplier."

The upgraded Deep Think delivered a series of hard metrics:

48.4% on Humanity's Last Exam (without tool assistance), 84.6% on ARC-AGI-2 (officially verified by the ARC Prize Foundation), a Codeforces competitive programming Elo rating of 3455, and gold medal-level performance on the written portions of the 2025 International Physics and Chemistry Olympiads.

The strategy is very clear: first use world-class competitions like the IMO and ICPC to prove its powerful reasoning abilities, then use multi-language, regional competition, and cross-disciplinary Olympiad results to prove its general, deep reasoning ability that stably transfers across languages and domains.

Gemini Deep Think's capability evolution from IMO gold medals to PhD-level research acceleration

A Detailed Look at the 8-Language Scorecard

Now, let's take a closer look at this scorecard.

Japanese results are the most impressive.

2025 35th Japanese Mathematical Olympiad Finals (JMO Finals), perfect score.

ICPC Asia Japan Preliminary Contest, perfect score.

Among these, the JMO Finals score even exceeded the level corresponding to the top 80% of scores that year, meeting the official "gold medal equivalent" standard.

French results were also a perfect 100%.

The Chinese results are interesting.

At the 41st Chinese Mathematical Olympiad (CMO), Deep Think scored 86.3%, which is quite outstanding. But at the Chinese National Olympiad in Informatics (NOI), it only scored 63.3%.

The gap between 86.3% and 63.3% outlines the real boundaries of AI reasoning ability.

In math competitions, the model faces abstract deduction, proof construction, and multi-step reasoning, which happens to be Deep Think's strongest suit.

But in informatics competitions, the problem is not just "figuring it out," but also translating logic into executable code, controlling boundary conditions, considering complexity constraints, and avoiding implementation errors.

The former is closer to pure reasoning, while the latter requires "reasoning + algorithm design + engineering implementation" to be successful simultaneously.

In the other languages—Korean, Hindi, Vietnamese, Russian, Portuguese—Deep Think also achieved results that either defeated competitors or at least matched them.

Looking at Japanese, French, and Chinese together, the most unusual aspect this time is not necessarily scoring a perfect mark in any single subject, but rather that the same model, the same Deep Think reasoning system, delivered first-tier results on exam papers in multiple languages.

Is This Scorecard Reliable?

But there is a key omission:

Conglong Li did not list specific comparative data from competitors: all results come from Google evaluations. There is no independent third-party replication, no official certification from the competitions, and the evaluation methodology is completely undisclosed.

Was each problem attempted once or many times with the best score taken? How much computational power was used during reasoning? Was there any manual prompt engineering involved?

These details, which directly affect the credibility of the results, were also not mentioned.

Another easily overlooked point: these exams are all regional selection competitions, not international finals.

There is an order of magnitude difference in difficulty between regional competition problems and international finals.

The researcher explicitly stated that these results "will be included in the model card." As of publication, the model card has not been officially updated.

So, for now, this still seems like a scorecard graded by the examinee themselves, announced by themselves, and not yet stamped by the academic affairs office.

Multilingual Research Equity: The Overlooked Real Battlefield

Why did Google specifically invest effort in evaluating 8 different regional languages?

Current evaluations of AI reasoning ability are almost entirely based on English.

MATH, GSM8K, HumanEval, ARC-AGI... these are all in English.

Mathematicians, physicists, and engineers worldwide whose native language is not English must first overcome a language barrier when using AI research tools.

Google's selection of these 8 languages is not random.

Japanese, Korean, and Chinese cover East Asian research powerhouses; Hindi and Vietnamese cover emerging markets; French, Russian, and Portuguese cover Europe and South America.

Together, this represents the majority of global research output.

In its official blog, DeepMind positioned Deep Think as a "human intelligence multiplier," saying it can "handle knowledge retrieval and rigorous verification, allowing scientists to focus on conceptual depth and creative direction."

Combined with these multi-language results, the subtext of this statement is not hard to understand: this multiplier is not just for scientists who use English.

More notably is how far Deep Think has already gone in research落地 (landing/application).

DeepMind announced a mathematical research agent called Aletheia, powered by Deep Think, capable of autonomously generating, verifying, and revising solutions to research-level mathematical problems.

Aletheia, driven by Deep Think, capable of iterative generation, verification, and correction for research-level mathematical problems

Aletheia has already contributed to multiple research papers, one of which was completed entirely autonomously by the AI, calculating specific structural constants in arithmetic geometry.

Furthermore, in a semi-autonomous evaluation of 700 open mathematical problems, it independently solved 4 previously unsolved problems.

The Gemini Deep Think mode also shows great potential in computer science, physics, economics, and other fields.

In computer science, Deep Think helped refute a conjecture that had remained open for a decade; in physics, it found a new analytical solution for gravitational radiation from cosmic strings; in economics, it extended an auction theory theorem.

Schematic diagram of the AI reasoning process, showing how large-scale exploration of the solution space at the network layer is aggregated into structured reasoning and confirmed through automated and manual verification.

By collaborating with experts to solve 18 research challenges, the advanced version of Gemini Deep Think helped break through long-standing bottlenecks in algorithms, machine learning and combinatorial optimization, information theory, and economics.

This goes far beyond "solving competition problems."

While competitors are still competing on English benchmark leaderboards, Google has already found a new battlefield in the "AI research accelerator" field.

The most important thing about this is not the scores; the real signal behind it is: the language barrier for AI research tools is being treated as an engineering problem to be solved.

If this path succeeds, scientists conducting research in Japanese, Korean, Chinese, Hindi, and other languages will, for the first time, stand on the same starting line as native English speakers.

This time, Google has laid its cards on the table.

As for which competitors will follow suit, we believe we will see soon.

References:

https://blog.google/intl/ja-jp/company-news/technology/gemini-31-pro-gemini-31-pro-deep-think/%20

https://deepmind.google/blog/accelerating-mathematical-and-scientific-discovery-with-gemini-deep-think/%20

https://blog.google/innovation-and-ai/models-and-research/gemini-models/gemini-3-1-pro/%20

https://blog.google/innovation-and-ai/models-and-research/gemini-models/gemini-3-deep-think/

This article is from the WeChat public account "新智元" (New Zhiyuan), author: 新智元

Domande pertinenti

QWhat is the key achievement of Google's Deep Think AI model as reported in the article?

ADeep Think achieved top-tier results in eight different language versions of academic competitions, including perfect scores in Japanese and French math and programming contests, and high performance in Chinese, Korean, Hindi, Vietnamese, Russian, and Portuguese exams.

QWhich specific world-class competitions did Deep Think first demonstrate its reasoning capabilities in?

ADeep Think first demonstrated its reasoning capabilities by reaching gold medal standards in the International Mathematical Olympiad (IMO) with a score of 35 out of 42 in July 2025, and achieving similarly high performance in the ICPC World Finals.

QWhat is the significance of Deep Think's performance across multiple languages according to the article?

AIts performance across multiple languages signifies a breakthrough in breaking down language barriers in AI research tools, potentially allowing non-English speaking scientists worldwide to access advanced AI research assistance on equal footing.

QWhat are some research breakthroughs mentioned that were achieved using Deep Think?

ADeep Think autonomously solved 4 previously unsolved mathematical problems, refuted a decade-old conjecture in computer science, found new analytical solutions for cosmic string gravitational radiation in physics, and extended an auction theory theorem in economics.

QWhat concerns does the article raise about the reliability of Deep Think's reported results?

AThe article notes that all results are from internal Google evaluations without third-party verification, official contest authentication, or disclosure of testing methods such as attempt counts, computational resources used, or potential human prompt engineering involvement.

Letture associate

UBS: The Crowdedness of A-Share Tech Stocks Is Far From Reaching Historical Peaks

UBS: A-share tech stocks still far from peak crowding levels A-shares' technology sector has seen a strong rebound, with trading activity hitting record highs, raising concerns about market crowding. However, UBS Securities argues that a key indicator of institutional positioning suggests the current crowding level remains well below historical peaks. While the large-cap tech sector's share of total A-share trading volume and market capitalization have reached historical highs, the overweight ratio of domestic mutual funds in this sector stood at 9.9% in Q1 2026. This is down from 11.6% in Q3 2025 and significantly lower than the historical peak of 14.1% in Q4 2015. It also pales in comparison to the historical peak overweight of 18.7% for the consumer sector. UBS notes that typical cycles from a low to a peak in fund overweighting last about three years, and the current outperformance of the tech/growth style has lasted less than two years since the policy pivot in September 2024. UBS expects A-share earnings recovery to accelerate, providing fundamental support. It forecasts 2026 A-share profit growth to rise to 11% from 3.9% in 2025. Non-financial A-share profits grew 11.8% YoY in Q1 2026, with gross and net profit margins at their highest since 2023. Persistent fund inflows, the expansion of thematic ETFs, and a recovery in private fund issuance are supporting market liquidity. In tactical allocation, UBS favors growth and cyclical styles under its "slow bull" base case, with overweight ratings on six sectors: Electronics (benefiting from semiconductor inventory recovery and AI innovation), Communications (driven by AI computing demand), Machinery (aided by domestic capex recovery), Non-ferrous Metals (due to rising copper/aluminum prices), Chemicals (supported by anti-involution policies), and Electrical Equipment (driven by policy support and AI data center power demand).

marsbit7 min fa

UBS: The Crowdedness of A-Share Tech Stocks Is Far From Reaching Historical Peaks

marsbit7 min fa

Should You Buy SpaceX Stock at $1.7 Trillion? Here's What the Market Is Worried About

SpaceX is preparing for a massive IPO aiming to raise around $75 billion at a valuation of approximately $1.75 trillion. While its achievements in reusable rockets and the profitable Starlink satellite internet service are clear, the market is concerned about the aggressive valuation. Key issues include: the current $1.75 trillion valuation, which is about 94 times 2025 revenue, seems to price in not just existing businesses but also unproven future ventures like AI infrastructure and orbital data centers. Financially, while Starlink is profitable, the AI division, bolstered by the acquisition of xAI, is incurring massive losses and consuming the majority of capital expenditures. This acquisition also introduced complex related-party financing arrangements and debt onto SpaceX's balance sheet. Furthermore, corporate governance poses a challenge. SpaceX's dual-class share structure ensures founder Elon Musk retains absolute control, limiting ordinary shareholders' influence over high-risk, long-term strategic decisions. The future success of ambitious projects like the Starship rocket—critical for lowering costs and enabling new services—remains a significant variable for the valuation. In summary, the market's apprehension (FUD) centers not on doubting SpaceX's past technological triumphs but on questioning how much premium public investors should pay for a future that combines proven profits with highly speculative and capital-intensive new ventures, all under a governance structure that offers limited shareholder oversight.

marsbit1 h fa

Should You Buy SpaceX Stock at $1.7 Trillion? Here's What the Market Is Worried About

marsbit1 h fa

Breaking the DeFi Cascading Liquidation Curse: Vitalik Proposes a New Solution

Vitalik Buterin has proposed a new DeFi design to eliminate the automatic liquidation mechanism that causes market instability during sharp downturns. The current system, used by protocols like Aave, triggers forced sales when collateral value falls below a threshold, often exacerbating price drops and creating systemic selling pressure. Buterin's alternative model is based on splitting an asset like ETH into two synthetic option-like tokens, P and N, pegged to a price index. Their combined value always equals one ETH. Instead of sudden liquidation, a position's value gradually drifts from its target peg if the market moves. Users must proactively rebalance their holdings to maintain their desired exposure, transferring the management burden from the protocol to the user or automated tools. A key advantage is the reduced reliance on real-time oracles. Pricing decisions are deferred until contract expiry, allowing for more robust, fault-tolerant oracle designs. This removes a clear liquidation threshold that speculators can target for manipulation or MEV extraction. However, significant challenges remain. Frequent rebalancing could incur high slippage and transaction costs, necessitating new liquidity provider models. The design is better suited for hedging instruments than for stablecoins requiring a rigid 1:1 peg. While not an immediate replacement for existing systems, the proposal challenges the foundational assumption that instantaneous forced liquidation is an unavoidable necessity in DeFi, opening the door for fundamentally different risk management architectures.

marsbit1 h fa

Breaking the DeFi Cascading Liquidation Curse: Vitalik Proposes a New Solution

marsbit1 h fa

Trading

Spot
Futures
活动图片