TAMM: Tensor Algebra for Many-body Methods

01/04/2022
by   Erdal Mutlu, et al.
1

Tensor contraction operations in computational chemistry consume significant fractions of computing time on large-scale computing platforms. The widespread use of tensor contractions between large multi-dimensional tensors in describing electronic structure theory has motivated the development of multiple tensor algebra frameworks targeting heterogeneous computing platforms. In this paper, we present Tensor Algebra for Many-body Methods (TAMM), a framework for productive and performance-portable development of scalable computational chemistry methods. The TAMM framework decouples the specification of the computation and the execution of these operations on available high-performance computing systems. With this design choice, the scientific application developers (domain scientists) can focus on the algorithmic requirements using the tensor algebra interface provided by TAMM whereas high-performance computing developers can focus on various optimizations on the underlying constructs such as efficient data distribution, optimized scheduling algorithms, efficient use of intra-node resources (e.g., GPUs). The modular structure of TAMM allows it to be extended to support different hardware architectures and incorporate new algorithmic advances. We describe the TAMM framework and our approach to sustainable development of tensor contraction-based methods in computational chemistry applications. We present case studies that highlight the ease of use as well as the performance and productivity gains compared to other implementations.

READ FULL TEXT
research
11/18/2022

Compiling Structured Tensor Algebra

Tensor algebra is essential for data-intensive workloads in various comp...
research
03/15/2022

DISTAL: The Distributed Tensor Algebra Compiler

We introduce DISTAL, a compiler for dense tensor algebra that targets mo...
research
07/01/2016

High-Performance Tensor Contraction without Transposition

Tensor computations--in particular tensor contraction (TC)--are importan...
research
08/13/2022

Tensor Algebra on an Optoelectronic Microchip

Tensor algebra lies at the core of computational science and machine lea...
research
05/15/2016

A Foray into Efficient Mapping of Algorithms to Hardware Platforms on Heterogeneous Systems

Heterogeneous computing can potentially offer significant performance an...
research
05/11/2018

Towards scalable pattern-based optimization for dense linear algebra

Linear algebraic expressions are the essence of many computationally int...
research
09/01/2021

Reducing Computational Complexity of Tensor Contractions via Tensor-Train Networks

There is a significant expansion in both volume and range of application...

Please sign up or login with your details

Forgot password? Click here to reset