DCPFMay 22, 2024

Cache Blocking of Distributed-Memory Parallel Matrix Power Kernels

arXiv:2405.12525h-index: 39
Originality Incremental advance
AI Analysis

For scientists running iterative sparse linear algebra on distributed-memory systems, this work provides a practical method to accelerate matrix power kernels, which are common in many scientific codes.

The paper tackles the low arithmetic intensity of repeated sparse matrix-vector products (matrix power kernel) in distributed-memory parallel environments. It proposes a method combining cache-blocking with MPI communication to enable data reuse across nodes, achieving up to 4x speedup on 832 cores.

Sparse matrix-vector products (SpMVs) are a bottleneck in many scientific codes. Due to the heavy strain on the main memory interface from loading the sparse matrix and the possibly irregular memory access pattern, SpMV typically exhibits low arithmetic intensity. Repeating these products multiple times with the same matrix is required in many algorithms. This so-called matrix power kernel (MPK) provides an opportunity for data reuse since the same matrix data is loaded from main memory multiple times, an opportunity that has only recently been exploited successfully with the Recursive Algebraic Coloring Engine (RACE). Using RACE, one considers a graph based formulation of the SpMV and employs s level-based implementation of SpMV for reuse of relevant matrix data. However, the underlying data dependencies have restricted the use of this concept to shared memory parallelization and thus to single compute nodes. Enabling cache blocking for distributed-memory parallelization of MPK is challenging due to the need for explicit communication and synchronization of data in neighboring levels. In this work, we propose and implement a flexible method that interleaves the cache-blocking capabilities of RACE with an MPI communication scheme that fulfills all data dependencies among processes. Compared to a "traditional" distributed memory parallel MPK, our new Distributed Level-Blocked MPK yields substantial speed-ups on modern Intel and AMD architectures across a wide range of sparse matrices from various scientific applications. Finally, we address a modern quantum physics problem to demonstrate the applicability of our method, achieving a speed-up of up to 4x on 832 cores of an Intel Sapphire Rapids cluster.

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