


'Eternal Tribulation' × NetEase Fuxi's first AI co-created game design, very people-oriented
Recently, significant progress in generative AI has caused widespread discussion. Its excellent creative capabilities bring us many new possibilities, especially the popularity of the AI drawing function. More and more ordinary people are beginning to experience AI personally and try to use it to create.

Timur Ozdoev uses AI drawing to generate material pictures
The practice of game practitioners has proved that AI drawing can indeed promote design ideas and improve research and development efficiency, providing Games bring more possibilities. However, decision-making and realizing these possibilities still require the intervention of human intelligence.
With the application of AI-assisted and human-processing models in the game development process, "Everlasting", which has been the Steam Platinum level best game of the year for two consecutive years, has launched an innovation try. NetEase Fuxi Lab and Dr. Fan Changjie launched the "AI Smart Fashion Co-Creation Project", which allows ordinary players to use AI technology to participate in the development of game fashion.

AI Zhihua·Fashion Co-creation Planning
In this event, players can not only vote for their favorite AI inspiration pictures, but also Use inspiration words to design your own fashion. In the end, "Eternal Calamity" will bring together the wisdom of tens of thousands of people, generate fashion inspiration based on players' co-created inspiration words and AI technology, and develop fashion based on this, and finally give it to players as anniversary gifts.

AI Zhihua·Fashion Co-creation Planning Activity Interface
How to accurately gather and present players’ inspiration lies in the accumulation of technology.
In this event, NetEase Fuxi Lab based on the large-scale pre-training model around the cultural themes and player preferences of "Eternal Tribulation", using NetEase's own copyright material library data to generate AI enables in-depth customization.
It is understood that NetEase Fuxi’s large-scale pre-training model has been selected into the Zhejiang Provincial Science and Technology Plan Project - the "Pioneer" project. The scale of self-developed models has grown from the earliest 100 million parameters to 100 billion parameters. The model field has expanded from text to graphics, music, behavioral sequences and other modalities, and it has accumulated rich experience in pre-training model training and engineering optimization.
The use of AI technology also provides players with a better experience. For example, the development team of "Eternal Tribulation" has used AI anti-cheating technology to analyze players' behavioral data in the game and quickly identify players with abnormal behavior, effectively supplementing traditional anti-cheating technology. For example, AI man-machine can learn the player's fighting styles during the battle, and develop a new nightmare man-machine model for players, bringing a different game experience.

Nightmare AI has defeated 100 million players in total
From game experience optimization to game operations, AI is empowering all areas of the game and assisting game manufacturers Improve production quality and efficiency. At the same time, various game scenes have also become excellent scenarios for researching and verifying AI technology. The AI research team repeatedly polishes AI algorithms and verifies technical effects through complex game scenes, which greatly promotes the advancement of AI industry algorithms, model structures, and large-scale The development of distributed computing and other technologies.
It is conceivable that in the future, AI will continue to expand application scenarios and become an auxiliary tool for all walks of life, thus promoting its application in algorithm research, neural network architecture exploration, and large-scale distributed computing. Achieve higher development and bring more possibilities to all walks of life.
The above is the detailed content of 'Eternal Tribulation' × NetEase Fuxi's first AI co-created game design, very people-oriented. For more information, please follow other related articles on the PHP Chinese website!

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