High-level FPGA accelerator design for structured-mesh-based numerical solvers

Abstract

Field Programmable Gate Arrays (FPGAs) have become highly attractive as accelerators due to their low power consumption and re-programmability. However, a key limitation is the time and know-how required to program them. Even with high-level synthesis tools, they still require significant hand-tuned/low-level customizations and design space exploration to gain good performance. The need to program FPGAs using the dataflow programming model, much less well known and practised by the high-performance computing (HPC) community, is a major barrier for adoption for HPC. The underlying motivation of this work is to bridge this gap - attaining near-optimal performance vs the ease of programming. To this end, we target the important class of applications based on structured meshes, focusing on numerical algorithms based on explicit and implicit techniques. We leverage the main characteristics of the application class, its computation-communication pattern and the hardware features. For explicit schemes, characterized by stencil computations, we unify the state-of-the-art techniques such as vectorization and unrolling with a number of new high-gain optimizations such as creating perfect data reuse data-paths, batching and tiling. A key new feature is their applicability to multiple stencil loops enabling the development of real-world workloads. For implicit schemes, we re-evaluate the characteristics of the tridiagonal system solver algorithms for FPGAs and develop a new high throughput batched multi-dimensional tridiagonal system solver library with orders of magnitude better performance than the state-of-the-art. New analytic models are developed to support the solvers, elucidating and modelling the critical path of execution and parameterizing the design. This together with the optimal designs and new library lead to a unified design work-flow for synthesis on FPGAs. The new workflow is used to implement a range of applications, from simple single stencil designs, multiple stencil loops to solvers with real-world utility. They are synthesized on the currently dominant Xilinx and Intel FPGAs. Benchmarking indicate the FPGAs matching or outperforming the best GPU implementations, the current best traditional architecture device solution. Over 30% energy saving can also be observed. The performance model demonstrates over 85% accuracy. The thesis discusses the determinants for these applications to be amenable for FPGA implementation, providing insights into the feasibility and profitability of a design. Finally we propose initial steps in automating the workflow to be used through a DSL

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