基于经典规划的矩阵乘法算法研究

David Speck, Paul Höft, Daniel Gnad, Jendrik Seipp
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引用次数: 1

摘要

矩阵乘法是线性代数的基本运算,其应用范围从量子物理到人工智能。鉴于它的重要性,人们已经投入了大量的资源来寻找更快的矩阵乘法算法。最近,这一搜索变成了单人游戏。通过学习如何有效地玩这个游戏,新引入的alphatensensor强化学习代理能够发现许多新的更快的算法。在本文中,我们证明了寻找矩阵乘法算法也可以作为一个经典的规划问题。基于这一观察,我们为经典规划引入了一个具有挑战性的基准套件,并在其上评估最先进的规划技术。我们分析了不同规划方法在这一领域的优势和局限性,并表明我们可以使用经典规划来寻找矩阵乘法的下界和具体算法。
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Finding Matrix Multiplication Algorithms with Classical Planning
Matrix multiplication is a fundamental operation of linear algebra, with applications ranging from quantum physics to artificial intelligence. Given its importance, enormous resources have been invested in the search for faster matrix multiplication algorithms. Recently, this search has been cast as a single-player game. By learning how to play this game efficiently, the newly-introduced AlphaTensor reinforcement learning agent is able to discover many new faster algorithms. In this paper, we show that finding matrix multiplication algorithms can also be cast as a classical planning problem. Based on this observation, we introduce a challenging benchmark suite for classical planning and evaluate state-of-the-art planning techniques on it. We analyze the strengths and limitations of different planning approaches in this domain and show that we can use classical planning to find lower bounds and concrete algorithms for matrix multiplication.
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