MLHarness: A Scalable Benchmarking System for MLCommons
Yen-Hsiang Chang, Jianhao Pu, Wen-mei Hwu, Jinjun Xiong

TL;DR
MLHarness is a scalable benchmarking system that extends MLCommons Inference to include a broader range of models, datasets, and hardware, enabling more comprehensive and flexible ML model evaluation.
Contribution
It introduces MLHarness, a system that standardizes, simplifies, and scales the benchmarking process for MLCommons Inference, supporting diverse models and facilitating community contributions.
Findings
Demonstrates superior flexibility and scalability in benchmarking.
Supports a wide range of models with different modalities.
Enhances community participation in benchmarking efforts.
Abstract
With the society's growing adoption of machine learning (ML) and deep learning (DL) for various intelligent solutions, it becomes increasingly imperative to standardize a common set of measures for ML/DL models with large scale open datasets under common development practices and resources so that people can benchmark and compare models quality and performance on a common ground. MLCommons has emerged recently as a driving force from both industry and academia to orchestrate such an effort. Despite its wide adoption as standardized benchmarks, MLCommons Inference has only included a limited number of ML/DL models (in fact seven models in total). This significantly limits the generality of MLCommons Inference's benchmarking results because there are many more novel ML/DL models from the research community, solving a wide range of problems with different inputs and outputs modalities. To…
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Taxonomy
TopicsTopic Modeling · Machine Learning and Data Classification · Advanced Neural Network Applications
