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Autori principali: Jha, Abhash Kumar, Moradian, Shakiba, Krishnakumar, Arjun, Rapp, Martin, Hutter, Frank
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.16533
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author Jha, Abhash Kumar
Moradian, Shakiba
Krishnakumar, Arjun
Rapp, Martin
Hutter, Frank
author_facet Jha, Abhash Kumar
Moradian, Shakiba
Krishnakumar, Arjun
Rapp, Martin
Hutter, Frank
contents Gradient-based one-shot neural architecture search (NAS) has significantly reduced the cost of exploring architectural spaces with discrete design choices, such as selecting operations within a model. However, the field faces two major challenges. First, evaluations of gradient-based NAS methods heavily rely on the DARTS benchmark, despite the existence of other available benchmarks. This overreliance has led to saturation, with reported improvements often falling within the margin of noise. Second, implementations of gradient-based one-shot NAS methods are fragmented across disparate repositories, complicating fair and reproducible comparisons and further development. In this paper, we introduce Configurable Optimizer (confopt), an extensible library designed to streamline the development and evaluation of gradient-based one-shot NAS methods. Confopt provides a minimal API that makes it easy for users to integrate new search spaces, while also supporting the decomposition of NAS optimizers into their core components. We use this framework to create a suite of new DARTS-based benchmarks, and combine them with a novel evaluation protocol to reveal a critical flaw in how gradient-based one-shot NAS methods are currently assessed. The code can be found at https://github.com/automl/ConfigurableOptimizer.
format Preprint
id arxiv_https___arxiv_org_abs_2507_16533
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle confopt: A Library for Implementation and Evaluation of Gradient-based One-Shot NAS Methods
Jha, Abhash Kumar
Moradian, Shakiba
Krishnakumar, Arjun
Rapp, Martin
Hutter, Frank
Machine Learning
Artificial Intelligence
68T01
I.2.6
Gradient-based one-shot neural architecture search (NAS) has significantly reduced the cost of exploring architectural spaces with discrete design choices, such as selecting operations within a model. However, the field faces two major challenges. First, evaluations of gradient-based NAS methods heavily rely on the DARTS benchmark, despite the existence of other available benchmarks. This overreliance has led to saturation, with reported improvements often falling within the margin of noise. Second, implementations of gradient-based one-shot NAS methods are fragmented across disparate repositories, complicating fair and reproducible comparisons and further development. In this paper, we introduce Configurable Optimizer (confopt), an extensible library designed to streamline the development and evaluation of gradient-based one-shot NAS methods. Confopt provides a minimal API that makes it easy for users to integrate new search spaces, while also supporting the decomposition of NAS optimizers into their core components. We use this framework to create a suite of new DARTS-based benchmarks, and combine them with a novel evaluation protocol to reveal a critical flaw in how gradient-based one-shot NAS methods are currently assessed. The code can be found at https://github.com/automl/ConfigurableOptimizer.
title confopt: A Library for Implementation and Evaluation of Gradient-based One-Shot NAS Methods
topic Machine Learning
Artificial Intelligence
68T01
I.2.6
url https://arxiv.org/abs/2507.16533