English

Accelerating Deep Neural Network guided MCTS using Adaptive Parallelism

Performance 2023-10-10 v1 Distributed, Parallel, and Cluster Computing

Abstract

Deep Neural Network guided Monte-Carlo Tree Search (DNN-MCTS) is a powerful class of AI algorithms. In DNN-MCTS, a Deep Neural Network model is trained collaboratively with a dynamic Monte-Carlo search tree to guide the agent towards actions that yields the highest returns. While the DNN operations are highly parallelizable, the search tree operations involved in MCTS are sequential and often become the system bottleneck. Existing MCTS parallel schemes on shared-memory multi-core CPU platforms either exploit data parallelism but sacrifice memory access latency, or take advantage of local cache for low-latency memory accesses but constrain the tree search to a single thread. In this work, we analyze the tradeoff of these parallel schemes and develop performance models for both parallel schemes based on the application and hardware parameters. We propose a novel implementation that addresses the tradeoff by adaptively choosing the optimal parallel scheme for the MCTS component on the CPU. Furthermore, we propose an efficient method for searching the optimal communication batch size as the MCTS component on the CPU interfaces with DNN operations offloaded to an accelerator (GPU). Using a representative DNN-MCTS algorithm - Alphazero on board game benchmarks, we show that the parallel framework is able to adaptively generate the best-performing parallel implementation, leading to a range of 1.5×3×1.5\times - 3\times speedup compared with the baseline methods on CPU and CPU-GPU platforms.

Keywords

Cite

@article{arxiv.2310.05313,
  title  = {Accelerating Deep Neural Network guided MCTS using Adaptive Parallelism},
  author = {Yuan Meng and Qian Wang and Tianxin Zu and Viktor Prasanna},
  journal= {arXiv preprint arXiv:2310.05313},
  year   = {2023}
}

Comments

The first two authors contributed equally. Accepted to the 13th Workshop on Irregular Applications: Architectures and Algorithms (IA^3) 2023

R2 v1 2026-06-28T12:44:06.077Z