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Auteurs principaux: Jin, Zhanggen, Duan, Haobin, Hang, Zhiyang
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2503.13178
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author Jin, Zhanggen
Duan, Haobin
Hang, Zhiyang
author_facet Jin, Zhanggen
Duan, Haobin
Hang, Zhiyang
contents Games have played a pivotal role in advancing artificial intelligence, with AI agents using sophisticated techniques to compete. Despite the success of neural network based game AIs, their performance often requires significant computational resources. In this paper, we present Rapfi, an efficient Gomoku agent that outperforms CNN-based agents in limited computation environments. Rapfi leverages a compact neural network with a pattern-based codebook distilled from CNNs, and an incremental update scheme that minimizes computation when input changes are minor. This new network uses computation that is orders of magnitude less to reach a similar accuracy of much larger neural networks such as Resnet. Thanks to our incremental update scheme, depth-first search methods such as the alpha-beta search can be significantly accelerated. With a carefully tuned evaluation and search, Rapfi reached strength surpassing Katagomo, the strongest open-source Gomoku AI based on AlphaZero's algorithm, under limited computational resources where accelerators like GPUs are absent. Rapfi ranked first among 520 Gomoku agents on Botzone and won the championship in GomoCup 2024.
format Preprint
id arxiv_https___arxiv_org_abs_2503_13178
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rapfi: Distilling Efficient Neural Network for the Game of Gomoku
Jin, Zhanggen
Duan, Haobin
Hang, Zhiyang
Artificial Intelligence
Machine Learning
Games have played a pivotal role in advancing artificial intelligence, with AI agents using sophisticated techniques to compete. Despite the success of neural network based game AIs, their performance often requires significant computational resources. In this paper, we present Rapfi, an efficient Gomoku agent that outperforms CNN-based agents in limited computation environments. Rapfi leverages a compact neural network with a pattern-based codebook distilled from CNNs, and an incremental update scheme that minimizes computation when input changes are minor. This new network uses computation that is orders of magnitude less to reach a similar accuracy of much larger neural networks such as Resnet. Thanks to our incremental update scheme, depth-first search methods such as the alpha-beta search can be significantly accelerated. With a carefully tuned evaluation and search, Rapfi reached strength surpassing Katagomo, the strongest open-source Gomoku AI based on AlphaZero's algorithm, under limited computational resources where accelerators like GPUs are absent. Rapfi ranked first among 520 Gomoku agents on Botzone and won the championship in GomoCup 2024.
title Rapfi: Distilling Efficient Neural Network for the Game of Gomoku
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2503.13178