In AI Video Generation, 'Leading by a Wide Margin' Has Become a Reality

marsbitPublished on 2026-05-21Last updated on 2026-05-21

Abstract

Chinese AI companies, particularly ByteDance and Kuaishou, are now leading in AI video generation, surpassing their US counterparts like OpenAI and Google, according to a recent viral overseas article. The core advantage stems from access to massive, high-quality, and user-behavior-annotated video training data from platforms like Douyin and Kuaishou, creating a self-reinforcing data flywheel that US labs struggle to match. Key Chinese models such as ByteDance's Seedance 2.0, Kuaishou's Kling 3.0, and Alibaba's HappyHorse dominate user-voted rankings on platforms like Artificial Analysis. Their lead is amplified by strong commercial integration in e-commerce, advertising, and short dramas, driving practical monetization absent in the US. However, challenges persist: a widening compute power gap with the US, copyright disputes with Hollywood, rising commercialization costs leading to usage caps and fees, and a foundational lag behind US giants like OpenAI in underlying large language model capabilities. While China holds a tangible lead in this vertical, sustaining it requires navigating these significant hurdles.

By Letters AI

Rumors suggest that ByteDance's video generation model Seedance 2.1 will be released soon, with its generation effect expected to improve by 20% compared to the 2.0 version. ByteDance told Letters AI that this is false information.

Although Seedance 2.1 may not be released in the near future, it is true that Seedance 2.0's popularity has surged overseas.

The reason is that over the weekend, an article titled "Chinese AI groups pull ahead of US rivals in video generation race" went viral overseas.

Using Seedance 2.0 and Kuaishou's Kling 3.0 as core evidence, the article reached a surprising conclusion: "In the field of AI video generation, China not only leads the United States, but this advantage will last forever."

This judgment sounds somewhat counter-intuitive; it seems more like flattery for Chinese AI. After all, over the past few years, the AI industry has always seen Silicon Valley launch a product first, followed by similar Chinese products, as we have all witnessed.

But after reading the foreign media's viewpoint, I realized that my thinking was indeed too one-sided. In Chinese AI video generation, it truly is leading the United States.

The article specifically interviewed several American AI entrepreneurs and filmmakers using AI video generation technology. The result was unanimous: everyone agrees that Chinese AI video tools have comprehensively surpassed their American counterparts.

More importantly, this lead is not a phased technological advantage but a comprehensive one, leading in every aspect from data to practical application.

Not only that, this lead is of the "unbeatable" kind. That is to say, this leading position will be maintained indefinitely.

Has "leading by a wide margin" become reality?

Why Will Chinese AI Forever Lead American AI?

One argument in the article is that in the field of AI video generation, the gap at the algorithm level is rapidly narrowing.

Currently, the technical architectures of various companies are already "more or less the same." Underlying technological paths like Transformer, diffusion models, and spatiotemporal attention mechanisms have become relatively transparent.

So the key question becomes: who possesses higher quality and larger quantities of training data?

This happens to be where ByteDance and Kuaishou excel. Douyin and Kuaishou are among the world's largest video production machines.

More importantly, this data comes with complete user behavior annotations.

Which videos are liked, favorited, shared; which have high completion rates—this data is all clear in the backend.

Moreover, these annotations do not require manual labeling; they are naturally generated from users' real behavior. This kind of high-quality, annotated data is something you might not be able to buy on the market even if you wanted to.

In contrast, OpenAI and Anthropic have no accumulation of video data.

When OpenAI launched Sora, it primarily relied on publicly crawled video data from the internet and some licensed film and television materials.

The problem is that public videos on the internet are often of mixed quality, containing a large amount of duplicate content, low-quality content, and even secondarily processed content with watermarks and advertisements.

Therefore, during the training process, it often results in more effort for less gain.

On the global evaluation platform Artificial Analysis, ByteDance's Seedance 2.0, Kuaishou's Kling 3.0, and Alibaba's HappyHorse together took the top spots in the text-to-video and image-to-video rankings.

This ranking is generated by real user votes, meaning that everyone generally finds the content generated by these three Chinese AI video tools to be better.

Although Google has YouTube as a data source and its own video generation model Veo 3,

Google's problem lies in having too many constraints. Videos on YouTube are generally over 5 minutes long, but current GPUs cannot yet accommodate such long, high-definition videos as training data, which can cause the model to fail during training.

This has led to a market reception for Veo 3 that has not been very good, falling short of Chinese AI video generation models like Seedance 2.0 and Kling 3.0.

"We've tried most American models, but they haven't performed well enough in video generation," said Ben Chiang, founder of Director AI. Therefore, he currently mainly uses Chinese tools like Kling, Seedance 2.0, and Halulu for creation.

Independent AI filmmaker George Won stated, "Seedance 2.0 is a game-changer. It can handle aggressive camera angles and speeds without losing facial details of characters or the contrast of light and shadow. Most AI models start to shake or drift during rapid movement."

Moreover, this data advantage can also enable products to undergo "self-reinforcement."

ByteDance has integrated Seedance 2.0 into creative tools like CapCut, allowing ByteDance to receive feedback data on over 50 million generated videos daily.

This way, ByteDance can know that "this video satisfied the user, this one did not."

Each piece of such feedback makes the development direction of the next-generation Seedance product a bit clearer.

This kind of continuous, large-scale feedback loop in real-world scenarios is also unmatched by the lab environments of companies like OpenAI and Anthropic.

Even with massive resource investment, it is difficult to establish a similar data flywheel in the short term.

Technology can be caught up with, algorithms can be imitated, but the accumulation of ecosystems and data takes time, requires a user base, and needs a complete product cycle.

Application Scenarios

For companies developing AI video, there must be a "purpose."

Data advantage is just the starting point; what truly turns technology into competitiveness is finding profitable application scenarios. With landing scenarios, companies have the motivation to develop AI video generation.

In this dimension, ByteDance and Kuaishou also outperform American AI.

The first large-scale application scenario is e-commerce video.

In the past, the cost of shooting a professional video for a product could be as high as several thousand yuan, including photographer, lighting technician, venue rental, model fees, post-production editing, etc.

For most small and medium-sized merchants, an ordinary Taobao store might have hundreds of products; filming them all would cost at least several hundred thousand yuan.

AI video generation technology has changed this situation.

Vincent Yang, CEO of video infrastructure company Firework, said, "A retailer asked us to create 100,000 videos for their product pages. Without AI, this would be completely unfeasible in terms of cost. Now, each product can have its own video, and even multiple customized versions for different customers."

Data shows that product pages with videos have a conversion rate 30% to 80% higher than those with only images and text. Moreover, Douyin and Kuaishou are among China's largest e-commerce live-streaming and short video sales platforms.

Once AI generates the video, you can turn right out the door and directly launch an advertising campaign.

Alibaba's HappyHorse model also explicitly positions e-commerce video as a core application scenario. It supports batch generation of product showcase short videos and virtual host talking videos. A merchant can upload product images and simple text descriptions, and the system can automatically generate multiple versions of sales videos, each targeting different audience groups with different scripts and presentation styles.

The second scenario is advertising.

The production cycle for traditional TVC (television commercial) is too long.

A 30-second brand advertisement often takes several weeks from creative planning to filming and production.

With video generation models, dozens of different versions of advertising creatives can be generated in just a few minutes.

The third scenario is short dramas.

AI short dramas experienced explosive growth in 2026. Data shows that the number of AI short dramas airing in March 2026 increased by 138% compared to January, far exceeding the production speed of traditional film and television content.

Through AI video generation, a small team or even an individual creator can produce a short drama within a few days.

Furthermore, ByteDance's Hongguo Short Drama platform has integrated an "image search for same items" feature.

This feature is easy to understand: while watching a short drama, if you are interested in a character's outfit, furniture in a scene, or a car parked at the door, you can directly click on image search. The system will recommend the same or similar items, allowing you to purchase them directly.

This essentially turns short dramas into a commercial scenario that can generate conversions.

In contrast, in the American market, despite having content platforms like Netflix and YouTube, there is no comparable application and conversion mechanism.

American AI video tools remain more in the creative experimentation stage, with the only commercial application scenario being subscription memberships.

Moreover, in terms of product functionality, Chinese video generation models are also more suitable for commercial application.

Seedance 2.0 can incorporate multiple source photos, videos, and sounds into the same AI video. Sora cannot do this; it can only generate videos by specifying an image and text to the model.

This is not because Sora's technology is insufficient, but because it lacks a complete commercial ecosystem to leverage these technological capabilities.

The Computing Power Gap

However, Chinese video AI also faces an unavoidable hurdle: computing power.

Leading American AI companies treat computing power as gold, hoarding all the computing power available on the market.

Anthropic recently signed computing power agreements totaling over 10 gigawatts.

This figure includes leasing all the computing power of SpaceX's Colossus 1 data center, covering 220,000 NVIDIA GPUs; a 5-gigawatt agreement with Amazon; and 3.5-gigawatt agreements with Google and Broadcom.

OpenAI operates similarly.

Through its deep collaboration with Microsoft, OpenAI has gained access to hundreds of thousands of high-end GPUs, and Microsoft has specifically built several hyperscale data centers for OpenAI.

In comparison, although Chinese companies have made significant progress in algorithm efficiency optimization, there is still a gap in the absolute scale of computing power.

According to foreign media statistics, the gap in AI computing power between China and the US was about 3 times in 2023 and had expanded to about 8 times by early 2026.

Besides computing power, Chinese AI faces other challenges.

The first is copyright.

Taking Seedance 2.0 as an example, about a month after its release, six Hollywood giants including Disney, Warner Bros., Paramount, Skydance, and Netflix jointly sent a cease-and-desist letter to ByteDance. They claimed that Seedance 2.0 had used copyright-protected film and television materials on a large scale without authorization during its training phase.

Subsequently, ByteDance urgently suspended the originally planned global release of Seedance 2.0 in mid-March.

If you have been using Seedance 2.0 from February until now, you will find that IP characters that could be generated before can no longer be used; instead, only "passerby" images can be used.

The second is that the commercialization threshold is rising.

American video generation AI, represented by Sora, often rejects generation requests due to usage policies. Chinese tools are more lenient, and their prices are also cheaper.

But this has also brought a "happy trouble" for Chinese AI companies.

Since February, Seedance 2.0 has seen a surge in usage demand, and some users have already encountered quota limits and longer queue times.

Foreign media reported that ByteDance has adopted a heavier commercialization approach for some American enterprise clients, requiring them to prepay approximately $2 million in exchange for model access rights and usage quotas.

Kuaishou is in a similar situation; they are spinning off the Kling business and may promote Kling for a separate listing in the future.

This indicates that Kling is an independent business with a potentially stronger growth story than Kuaishou's main entity.

The bigger the growth story, the clearer the accounting needs to be.

However, the cost of AI video is higher. The computing power consumed behind generating a few seconds of video for a user is far higher than generating a piece of text.

The higher the quality and the longer the duration of the generated video, the higher the inference cost.

Many video generation models are like this: initially very cheap, even free, but once users flood in, they quickly start implementing limits, queues, and price increases.

It's not that companies don't want to scale up; it's that the landlord doesn't have surplus grain either.

So what Chinese video AI needs to face next is not just "whether it can create a good model," but "whether it can turn a good model into a good business."

If the price is too low, the faster the user growth, the greater the losses; if the price is too high, there are no users, which defeats the purpose.

The third is the generational gap in model capabilities.

Ultimately, video generation capabilities are built upon language models.

No matter how powerful a video generation model is, it still needs language understanding capabilities as a foundation to understand user prompts. Then it uses reasoning capabilities to understand the logical relationships of scenes and characters and maintain coherence in the generated content.

According to foreign media assessments, OpenAI's ChatGPT 5.5 and Anthropic's Mythos have taken a lead of 9 months to 1 year over domestic AI companies.

This generational gap is reflected in multiple aspects, such as reasoning ability, contextual understanding, multi-turn dialogue, complex task handling, etc.

Although China leads American AI in vertical fields like AI video, a relatively noticeable gap can still be felt in general-purpose large models.

In summary, Chinese AI's lead in the field of video generation is real, but it is not without worries. The gap in computing power and foundational models is always a sword hanging overhead. But at least for now, we finally don't have to look up at the back of Silicon Valley anymore.

Related Questions

QAccording to the article, why does it claim that Chinese AI video generation tools will maintain a permanent lead over American competitors?

AThe article argues that the lead is built on superior, user-behavior-annotated training data from platforms like Douyin and Kuaishou, a self-reinforcing product feedback loop, and strong commercial application scenarios (e.g., e-commerce, advertising, short dramas). These factors create an ecosystem and data advantage that is difficult for U.S. companies without such platforms to replicate quickly.

QWhat are the three main commercial application scenarios mentioned for AI video generation in China?

AThe three main commercial application scenarios are: 1) E-commerce product videos, 2) Advertising content creation, and 3) AI-generated short dramas, which are often integrated with shopping features for direct conversion.

QWhat significant challenge does the article highlight for Chinese AI video companies despite their technological lead?

AThe article highlights a significant and growing compute power (算力) gap with the U.S., estimating it had widened to about 8 times by early 2026. Other challenges include copyright infringement accusations from Hollywood studios, the high cost of video generation straining business models, and a foundational gap in underlying large language models (LLMs) compared to leaders like OpenAI and Anthropic.

QHow do Chinese platforms like ByteDance gain a data advantage for training their AI video models according to the text?

APlatforms like ByteDance's Douyin and Kuaishou are massive video production engines. They provide vast amounts of high-quality video data that is naturally annotated with user engagement metrics (likes, shares, completion rates). Furthermore, integrating models like Seedance into editing tools (e.g., CapCut) generates millions of daily feedback data points on what users like or dislike, creating a powerful, self-reinforcing data flywheel.

QWhat example does the article give to illustrate the functional advantage of Chinese AI video tools for commercial use compared to models like Sora?

AThe article states that ByteDance's Seedance 2.0 can integrate multiple source photos, videos, and audio into a single AI-generated video, making it more versatile for commercial content creation. In contrast, it mentions that OpenAI's Sora is limited to generating video from a single image and text prompt, not due to inferior technology but due to a lack of a comprehensive commercial ecosystem to support such features.

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Agent S: The Future of Autonomous Interaction in Web3 Introduction In the ever-evolving landscape of Web3 and cryptocurrency, innovations are constantly redefining how individuals interact with digital platforms. One such pioneering project, Agent S, promises to revolutionise human-computer interaction through its open agentic framework. By paving the way for autonomous interactions, Agent S aims to simplify complex tasks, offering transformative applications in artificial intelligence (AI). This detailed exploration will delve into the project's intricacies, its unique features, and the implications for the cryptocurrency domain. What is Agent S? Agent S stands as a groundbreaking open agentic framework, specifically designed to tackle three fundamental challenges in the automation of computer tasks: Acquiring Domain-Specific Knowledge: The framework intelligently learns from various external knowledge sources and internal experiences. This dual approach empowers it to build a rich repository of domain-specific knowledge, enhancing its performance in task execution. Planning Over Long Task Horizons: Agent S employs experience-augmented hierarchical planning, a strategic approach that facilitates efficient breakdown and execution of intricate tasks. This feature significantly enhances its ability to manage multiple subtasks efficiently and effectively. Handling Dynamic, Non-Uniform Interfaces: The project introduces the Agent-Computer Interface (ACI), an innovative solution that enhances the interaction between agents and users. Utilizing Multimodal Large Language Models (MLLMs), Agent S can navigate and manipulate diverse graphical user interfaces seamlessly. Through these pioneering features, Agent S provides a robust framework that addresses the complexities involved in automating human interaction with machines, setting the stage for myriad applications in AI and beyond. Who is the Creator of Agent S? While the concept of Agent S is fundamentally innovative, specific information about its creator remains elusive. The creator is currently unknown, which highlights either the nascent stage of the project or the strategic choice to keep founding members under wraps. Regardless of anonymity, the focus remains on the framework's capabilities and potential. Who are the Investors of Agent S? As Agent S is relatively new in the cryptographic ecosystem, detailed information regarding its investors and financial backers is not explicitly documented. The lack of publicly available insights into the investment foundations or organisations supporting the project raises questions about its funding structure and development roadmap. Understanding the backing is crucial for gauging the project's sustainability and potential market impact. How Does Agent S Work? At the core of Agent S lies cutting-edge technology that enables it to function effectively in diverse settings. 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.

687 Total ViewsPublished 2025.01.14Updated 2025.01.14

What is AGENT S

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