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The Number One Educational Resource for the Game Industry

Session Name: Machine Learning Summit: Multi-Modal Based Frame Rate Prediction
Speaker(s): Ruidong Feng
Company Name(s): Booming Tech & Netease
Track / Format: Machine Learning Summit

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Overview: Frame rate is a key indicator which measure the fluency of a game. Assuming that we can predict frame rate by a model, we can take measures (such as reducing the rendering quality in advance) to ensure the smooth running of a game when the frame rate is predicted to drop. This lecture will take "Conqueror's Blade", a recently released multiplayer action competitive game, as the experimental platform. Here, we will introduce how Booming Tech collects and stores relative data at the scene of game latency and how to implement a frame rate prediction model to mine those key features that affect frame rate. In this experiment, the data we collected are all general game data. In other words, you can also collect similar data in your own game and easily reproduce our model, thereby helping you iterate the strategy of game optimization.

Game Developers Conference 2022

Ruidong Feng

Booming Tech & Netease

free content

Machine Learning Summit

Programming