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AI video generation technology breakthroughs reshape the creative ecosystem and Computing Power demand.
Breakthroughs and Application Prospects of AI Video Generation Technology
Recently, one of the most significant advancements in the field of AI has been the breakthrough in multimodal video generation technology. This technology has evolved from purely generating videos from text to integrating text, images, and audio into a complete end-to-end generation capability.
Several typical cases of technological breakthroughs are worth paying attention to:
The open-source EX-4D framework developed by a certain technology company can convert ordinary videos into freely viewable 4D content, with a user approval rating of 70.7%. This technology makes it possible to generate viewing effects from any angle, which in the past required a professional 3D modeling team to achieve.
An AI platform's "Hui Xiang" feature claims to generate a 10-second "movie-quality" video from a single image. However, the authenticity of this claim is yet to be verified.
The Veo technology developed by an AI research institution can simultaneously generate 4K video and ambient sound. This technology overcomes the challenge of video and audio synchronization, achieving semantic matching in complex scenarios.
A certain short video platform's ContentV technology has 8 billion parameters and can generate 1080p video in 2.3 seconds at a cost of 3.67 yuan per 5 seconds. Although cost control is good, there is still room for improvement in the generation quality in complex scenarios.
These technological breakthroughs are of great significance in terms of video quality, production costs, and application scenarios:
First of all, the technical complexity of multi-modal video generation is exponential. It not only requires handling the pixel points of single frame images but also ensures the temporal coherence of the video, audio synchronization, and 3D spatial consistency. Now, through modular decomposition and the collaborative work of large models, these complex tasks can be accomplished.
Secondly, significant progress has been made in cost reduction. This is attributed to the optimization of the inference architecture, including techniques such as hierarchical generation strategies, cache reuse mechanisms, and dynamic resource allocation.
Finally, these technological breakthroughs have brought a tremendous impact on the traditional video production industry. AI technology simplifies the video production process, which originally required a lot of manpower and resources, to just inputting prompt words and waiting a few minutes, while also achieving perspectives and special effects that are difficult to attain through traditional shooting. This may lead to a reshuffling of the creator economy.
These changes have had a profound impact on the development of AI technology:
The structure of computing power demand has changed. Multimodal video generation requires a diversified combination of computing power, creating new opportunities for distributed idle computing power.
The demand for data annotation has increased. Generating professional-level videos requires precise scene descriptions, reference images, audio styles, and other professional data annotations, which provides new opportunities for relevant professionals.
The trend of modular collaboration is becoming prominent. AI technology is gradually shifting from centralized large-scale resource allocation to modular collaboration, which itself is a new demand for decentralized platforms.
In the future, with the collaborative development of computing power, data, models, and incentive mechanisms, AI technology is expected to form a self-reinforcing virtuous cycle, promoting the integration and innovation of various AI application scenarios.