Marvel: A Data-centric Compiler for DNN Operators on Spatial Accelerators
Prasanth Chatarasi, Hyoukjun Kwon, Natesh Raina, Saurabh Malik,, Vaisakh Haridas, Angshuman Parashar, Michael Pellauer, Tushar Krishna, Vivek, Sarkar

TL;DR
Marvel introduces a data-centric compiler framework for spatial DNN accelerators that formalizes operator mappings using MDC notation, enabling efficient optimization of diverse operators and configurations.
Contribution
The paper presents a formal MDC-based analysis of DNN operators and a decoupled search approach to optimize mappings efficiently for spatial accelerators.
Findings
Formal MDC analysis applies to any operator conforming to the notation.
Decoupled search reduces mapping space and improves optimization efficiency.
Implementation in Marvel demonstrates practical applicability.
Abstract
The efficiency of a spatial DNN accelerator depends heavily on the compiler and its cost model ability to generate optimized mappings for various operators of DNN models on to the accelerator's compute and memory resources. But, existing cost models lack a formal boundary over the operators for precise and tractable analysis, which poses adaptability challenges for new DNN operators. To address this challenge, we leverage the recently introduced Maestro Data-Centric (MDC) notation. We develop a formal understanding of DNN operators whose mappings can be described in the MDC notation, because any mapping adhering to the notation is always analyzable by the MDC's cost model. Furthermore, we introduce a transformation for translating mappings into the MDC notation for exploring the mapping space. Searching for the optimal mappings is challenging because of the large space of mappings,…
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Taxonomy
TopicsScientific Computing and Data Management · Distributed and Parallel Computing Systems · Computer Graphics and Visualization Techniques
MethodsDepthwise Convolution · Pointwise Convolution · Depthwise Separable Convolution · Batch Normalization · Inverted Residual Block · Average Pooling · 1x1 Convolution · Tether Customer Service Number +1-833-534-1729 · Convolution
