Goldman Sachs Report Deconstructs the Competitive Landscape of China's AI Large Models: Who Will Be the Long-Term Winner?

marsbitPublished on 2026-07-11Last updated on 2026-07-11

Abstract

Goldman Sachs analyzes China's AI large language model (LLM) landscape, identifying key players and a strategic shift towards efficiency and global expansion. The report highlights that Chinese open-source/open-weight models are closing the performance gap with top global proprietary models at significantly lower cost, driven by architectural innovations like MoE. This enables a "two-tier" market: a high-end segment (e.g., GLM5.2, Qwen3.7 Max) with pricing at ~$1 per million tokens, and a low-end, price-sensitive global segment. Open-source strategies aid adoption but limit monetization, as deployments via third-party platforms (e.g., AWS Bedrock, Alibaba Cloud) may not generate direct revenue for model creators. The industry is thus moving towards "open-weight + community license" models with revenue-sharing to improve unit economics. Internationally, the focus is shifting from "token maximization" to ROI-driven enterprise adoption, particularly in non-U.S. markets. Major cloud platforms are integrating Chinese models (e.g., DeepSeek, MiniMax). Using a competitive framework based on pricing power, cost advantage, and financial strength, Goldman Sachs identifies **Zhipu AI** and **DeepSeek** as leaders in foundational text models, and **ByteDance** (with Seedance) leading in multimodal/video generation. **MiniMax** and **Kuaishou** are also rated favorably. The firm forecasts China's AI model API/subscription revenue growing from ~RMB 35bn (2026E) to RMB 879bn by 2030.

Author: Wall Street Insights, Bu Shuqing

Original Title: Goldman Sachs In-Depth Report: Who Will Be the Long-Term Winner in China's AI Large Model Industry?

China's AI large models are standing at a historic inflection point. Goldman Sachs believes that the intelligence performance of China's open-source/open-weight large models is approaching that of the world's top proprietary models, and adoption scale by domestic enterprises and global SMEs is rapidly expanding, thereby forming a data flywheel effect that will further drive model iteration and upgrades.

According to Zhui Feng Trading Desk, the latest Goldman Sachs report points out that this evolution trajectory can be summarized as 'from DeepSeek's cost-efficiency moment last year to Zhipu GLM's model intelligence moment this year'. The team led by Goldman Sachs analyst Ronald Keung systematically evaluates four core questions in this 50-page report: how Chinese AI models achieve high performance at low cost, why they choose the open-source route and how to monetize, where the core addressable market is, and who will be the long-term winners.

In assessing the competitive landscape, Goldman Sachs introduced a "competitive positioning framework" based on pricing power, cost advantage, and financial strength. Based on this, it determines that in the foundational text model field, Zhipu (initially covered) and DeepSeek (unlisted) have the strongest positioning; in the multimodal field, ByteDance (unlisted) is leading. Goldman Sachs also maintains Buy ratings on MiniMax and Kuaishou.

Small but Mighty, Efficiency Wins

The core reason Chinese large models can achieve performance close to their US counterparts at significantly lower cost lies in dual breakthroughs in architectural innovation and parameter efficiency.

The Goldman Sachs report points out that the parameter scale of Chinese open-source models is generally between 200 billion and 1.6 trillion, only 2% to 10% of the world's top models, primarily due to limited access to high-end computing power. Meanwhile, innovations like Mixture of Experts (MoE) architecture and sparse attention mechanisms have reduced the proportion of actually activated parameters to total parameters to only 3% to 5%, significantly lowering training and inference costs.

At the specific model level, DeepSeek V4 Pro has 1.6 trillion parameters, Zhipu GLM5.2 has 0.7 trillion, and MiniMax M3 has 0.4 trillion.

Goldman Sachs attributes the recent leap in Chinese models' coding capabilities to the synergistic effects of data curation, reinforcement learning fine-tuning, and other factors. On June 27th, DeepSeek launched the speculative decoding framework DSpark, already deployed in the online services of V4-Flash and V4 Pro, boosting per-user generation speed by 60% to 85% (V4-Flash) and 57% to 78% (V4 Pro) without altering model weights or output quality.

Meituan's LongCat 2.0 released on June 30th is viewed by Goldman Sachs as a major milestone in the localization of China's AI infrastructure—this is China's first fully open-source 1.6-trillion-parameter MoE model trained and deployed entirely on 50,000 domestic compute cards. Goldman Sachs believes this proves the feasibility of a localized hardware stack during the compute-intensive pre-training phase, holding profound significance for China's AI models to reduce dependence on foreign high-end chips.

A Two-Tiered Market, the Strong Get Stronger

Goldman Sachs describes the Chinese AI model market as an emerging "two-tiered structure" and identifies two ARR-maximizing quadrants.

In the high-end market, top models represented by Zhipu GLM5.2 and Alibaba's Qwen3.7 Max are priced at approximately $1 per million tokens, five times that of low-end models, with an estimated inference gross margin of about 10% to 20% (Goldman Sachs estimate). In comparison, top US models are priced at $4 to $8 per million tokens. Chinese high-end models are only 10% to 25% of that price, but can still maintain positive gross margins due to their lower activated parameter ratio.

In the low-end market, models targeting agent tasks are priced as low as $0.06 to $0.2 per million tokens, opening up markets for price-sensitive global SMEs and individual users. MiniMax derives 60% to 70% of its revenue from overseas. Notably, DeepSeek has announced the introduction of peak/off-peak pricing for its V4 series from mid-July, with peak rates being twice the off-peak rate, resulting in a blended price of approximately $0.35 per million tokens (V4 Pro) and $0.12 per million tokens (V4 Flash).

Goldman Sachs predicts that API and subscription revenue from Chinese AI models will grow from an estimated 35 billion RMB in 2026 to 879 billion RMB in 2030, corresponding to daily token consumption increasing from 350 trillion to 4.6 quadrillion tokens, a roughly 25-fold increase.

Open-Source Strategy: Broad Penetration, Monetization Paths Await Upgrade

The Goldman Sachs report details the strategic logic behind the prevalent open-source/open-weight approach among Chinese AI models and its monetization limitations.

The core advantages of the open-source strategy are deployment flexibility and community ecosystem. Alibaba's Qwen series, DeepSeek, Zhipu GLM, and MiniMax M3 all adopt open-source or open-weight approaches, with ByteDance's Seed model being a major exception, taking a fully closed, proprietary route. The open-source model allows flexible deployment both within and outside mainland China and accelerates iteration through community feedback.

However, Goldman Sachs points out that the ARR numbers disclosed by open-source model companies likely severely underestimate the actual deployment scale and revenue potential. Taking Zhipu as an example, its ARR target for the end of 2026 is $1 billion, but the actual global deployment volume of GLM5.2 will far exceed the token volume and revenue from Zhipu's own API channels—Alibaba Cloud's Bailian MaaS platform can directly host the GLM5.2 open-source model without paying any fees to Zhipu.

Goldman Sachs expects the industry to gradually migrate from pure open-source (MIT license, completely free) to an "open-weight + community license" model—where commercial use requires signing a revenue-sharing agreement with the model company. The MiniMax M series has already adopted this model. Goldman Sachs believes this shift will significantly improve the unit economics for AI model companies, as they can benefit from revenue-sharing agreements with platforms like AWS Bedrock and Alibaba Cloud Bailian without bearing the inference compute costs themselves.

From "Token Maximization" to ROI Priority

Goldman Sachs characterizes international market expansion as the most important upside for Chinese AI models, especially in non-US markets.

Goldman Sachs' US research team estimates that by 2030, agent AI will drive a 24-fold increase in global token consumption to 120 quintillion tokens per month, with enterprise agents contributing a 55-fold increase and consumer agents a 12-fold increase. In global (non-China) markets, Chinese AI models have already achieved significant token share growth leveraging performance improvements and price advantages.

The Goldman Sachs report notes that the AI usage paradigm for global enterprises is undergoing a fundamental shift from "token maximization" to "ROI priority." The former prevailed from late 2025 to early 2026, where companies equated high token consumption with organizational productivity; the latter focuses more on clear task boundaries, daily active agent count, backend process automation, and tangible output. Data from a Jellyfish AI Engineering Trends study shows that heavy AI users in enterprises consume 10x the tokens but only achieve a 2x increase in output.

On the channel front, Alphabet's Gemini Enterprise Agent Platform and Amazon's AWS Bedrock already offer hosting services for Chinese AI models like DeepSeek, MiniMax, Moonshot, GLM, and Qwen. According to The Wall Street Journal, Microsoft's CEO recently stated that Microsoft is considering hosting a version of DeepSeek on Copilot as an optional low-cost model, emphasizing that if DeepSeek were hosted, the model would run within Microsoft's cloud ecosystem, ensuring customer data remains within Azure.

Who Are the Long-Term Winners?

Goldman Sachs constructed a three-dimensional competitive positioning framework, using quantitative metrics to assess each player's long-term winning probability. The core formula is: ARR Scale × Gross Margin Advantage + Financial Strength.

The pricing power dimension examines release speed (compared to previous generation and peer models), LMArena Arena ranking (based on large-scale blind user evaluation), and blended price per million tokens.

The cost advantage dimension examines throughput (tokens per second), cache hit rate, activated parameter ratio, and inference gross margin. The financial strength dimension examines cash on hand, net cash as a percentage of total assets, and valuation multiples.

In the foundational text model field, Goldman Sachs identifies Zhipu (initially covered, Neutral rating, target valuation $110 billion) and DeepSeek (unlisted) as having the strongest positioning, with both showing outstanding performance in pricing power and cost advantage. The aggregate implied valuation of independent AI model companies exceeds $200 billion.

In the multimodal/video generation field, ByteDance leads with Seedance. According to LatePost and 36Kr reports, Seedance has a gross margin as high as 70%, and its ARR run rate already exceeds $2 billion. Kuaishou's Kling and MiniMax's Hailuo/upcoming H3 model are also viewed favorably by Goldman Sachs, expected to benefit in the second half of 2026 from functional breakthroughs in video generation and LLM integration, as well as healthy pricing driven by supply tightness.

Goldman Sachs maintains a Buy rating on MiniMax with a target price of HK$860, citing its M3 model's position in the ARR-maximizing quadrant of high token volume and attractive pricing, and its current valuation of only 13x 2026 year-end ARR, representing a significant discount compared to valuation multiples of Chinese and global peers, with a risk-reward skewed to the upside.

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Related Questions

QAccording to Goldman Sachs' report, what is the core competitive advantage of Chinese AI models in terms of cost and performance?

AThe core advantage is achieving performance close to global top-tier models at significantly lower cost. This stems from architectural innovations (like Mixture of Experts - MoE) and parameter efficiency, which result in a low parameter activation ratio (3%-5%). Chinese models typically have 2%-10% the parameter count of top global models but maintain competitive performance.

QHow does Goldman Sachs describe the evolving pricing structure in the Chinese AI model market?

AGoldman Sachs describes a forming 'two-layer structure' with two ARR maximization quadrants. The high-end market (e.g., GLM5.2, Qwen3.7 Max) prices around $1 per million tokens. The low-end market, targeting price-sensitive users, sees prices as low as $0.06-$0.2 per million tokens for agent-focused models.

QWhat is a key strategic limitation of the open-source/open-weight approach adopted by many Chinese AI model companies, as highlighted by Goldman Sachs?

AA key limitation is that reported ARR figures likely 'materially understate' actual deployment scale and revenue potential. For example, GLM5.2 can be directly hosted on platforms like Alibaba Cloud's Bailian MaaS without the model creator (e.g., Zhipu AI) receiving any revenue, as the model is fully open-source under a permissive license.

QWhich companies does Goldman Sachs identify as having the strongest positioning in the foundational text model and multimodal/video generation sectors respectively?

AFor foundational text models, Goldman Sachs identifies Zhipu AI (GLM) and DeepSeek as having the strongest positioning. In the multimodal/video generation sector, ByteDance (with its Seed model) is identified as the leader.

QWhat global market shift in AI usage paradigm does the Goldman Sachs report discuss, and what does it entail?

AThe report discusses a shift from 'Token Maximization' to 'ROI First.' The earlier 'Token Maximization' phase equated high token consumption with productivity. The emerging 'ROI First' paradigm focuses more on defined task boundaries, daily active agents, backend process automation, and tangible output, prioritizing return on investment over sheer token volume.

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Its operational model is built around several key features: Human-like Computer Interaction: The framework offers advanced AI planning, striving to make interactions with computers more intuitive. By mimicking human behaviour in tasks execution, it promises to elevate user experiences. Narrative Memory: Employed to leverage high-level experiences, Agent S utilises narrative memory to keep track of task histories, thereby enhancing its decision-making processes. Episodic Memory: This feature provides users with step-by-step guidance, allowing the framework to offer contextual support as tasks unfold. Support for OpenACI: With the ability to run locally, Agent S allows users to maintain control over their interactions and workflows, aligning with the decentralised ethos of Web3. Easy Integration with External APIs: Its versatility and compatibility with various AI platforms ensure that Agent S can fit seamlessly into existing technological ecosystems, making it an appealing choice for developers and organisations. These functionalities collectively contribute to Agent S's unique position within the crypto space, as it automates complex, multi-step tasks with minimal human intervention. As the project evolves, its potential applications in Web3 could redefine how digital interactions unfold. Timeline of Agent S The development and milestones of Agent S can be encapsulated in a timeline that highlights its significant events: September 27, 2024: The concept of Agent S was launched in a comprehensive research paper titled “An Open Agentic Framework that Uses Computers Like a Human,” showcasing the groundwork for the project. October 10, 2024: The research paper was made publicly available on arXiv, offering an in-depth exploration of the framework and its performance evaluation based on the OSWorld benchmark. October 12, 2024: A video presentation was released, providing a visual insight into the capabilities and features of Agent S, further engaging potential users and investors. These markers in the timeline not only illustrate the progress of Agent S but also indicate its commitment to transparency and community engagement. Key Points About Agent S As the Agent S framework continues to evolve, several key attributes stand out, underscoring its innovative nature and potential: Innovative Framework: Designed to provide an intuitive use of computers akin to human interaction, Agent S brings a novel approach to task automation. Autonomous Interaction: The ability to interact autonomously with computers through GUI signifies a leap towards more intelligent and efficient computing solutions. Complex Task Automation: With its robust methodology, it can automate complex, multi-step tasks, making processes faster and less error-prone. Continuous Improvement: The learning mechanisms enable Agent S to improve from past experiences, continually enhancing its performance and efficacy. Versatility: Its adaptability across different operating environments like OSWorld and WindowsAgentArena ensures that it can serve a broad range of applications. As Agent S positions itself in the Web3 and crypto landscape, its potential to enhance interaction capabilities and automate processes signifies a significant advancement in AI technologies. Through its innovative framework, Agent S exemplifies the future of digital interactions, promising a more seamless and efficient experience for users across various industries. Conclusion Agent S represents a bold leap forward in the marriage of AI and Web3, with the capacity to redefine how we interact with technology. While still in its early stages, the possibilities for its application are vast and compelling. Through its comprehensive framework addressing critical challenges, Agent S aims to bring autonomous interactions to the forefront of the digital experience. As we move deeper into the realms of cryptocurrency and decentralisation, projects like Agent S will undoubtedly play a crucial role in shaping the future of technology and human-computer collaboration.

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