Timeloop: A Systematic Approach to DNN Accelerator Evaluation
Massachusetts Institute of Technology
Abstract
This paper presents Timeloop, an infrastructure for evaluating and exploring the architecture design space of deep neural network (DNN) accelerators. Timeloop uses a concise and unified representation of the key architecture and implementation attributes of DNN accelerators to describe a broad space of hardware topologies. It can then emulate those topologies to generate an accurate projection of performance and energy efficiency for a DNN workload through a mapper that finds the best way to schedule operations and stage data on the specified architecture. This enables fair comparisons across different architectures and makes DNN accelerator design more systematic. This paper describes Timeloop's underlying…
Citation impact
- FWCI
- 20.82
- Percentile
- 100%
- References
- 47
Authors
10Topics & keywords
- Dataflow
- Computer science
- Design space exploration
- Computer architecture
- Network topology
- Efficient energy use
- Computer engineering
- Architecture
- Affordable and clean energy