Deep learning (DL) has proven to be a highly effective approach for developing models in diverse contexts, including visual perception, speech recognition, and machine translation. However, the end-to-end process for applying DL is not trivial. It requires grappling with problem formulation and context understanding, data engineering, model development, deployment, continuous monitoring and maintenance, and so on. Moreover, each of these steps typically relies heavily on humans, in terms of both knowledge and interactions, which impedes the further advancement and democratization of DL. Consequently, in response to these issues, a new field has emerged over the last few years: automated deep learning (AutoDL). This endeavor seeks to minimize the need for human involvement and is best known for its achievements in neural architecture search (NAS), a topic that has been the focus of several surveys. That stated, NAS is not the be-all and end-all of AutoDL. Accordingly, this review adopts an overarching perspective, examining research efforts into automation across the entirety of an archetypal DL workflow. In so doing, this work also proposes a comprehensive set of ten criteria by which to assess existing work in both individual publications and broader research areas. These criteria are: novelty, solution quality, efficiency, stability, interpretability, reproducibility, engineering quality, scalability, generalizability, and eco-friendliness. Thus, ultimately, this review provides an evaluative overview of AutoDL in the early 2020s, identifying where future opportunities for progress may exist.
翻译:深层学习(DL)已证明是在不同背景下开发模型的高度有效方法,包括视觉认知、语音识别和机器翻译。然而,应用DL的端到端过程并非微不足道。它需要努力解决问题的制定和背景理解、数据工程、模型开发、部署、持续监测和维护等问题。此外,从知识和互动两个方面来看,这些步骤通常都严重依赖人,这阻碍了DL的进一步发展和民主化。因此,在过去几年中出现了一个新的领域:自动深层学习(AutoDL)。这项努力力求最大限度地减少人类参与的需要,并因其在神经结构搜索(NAS)方面的成就而闻名不虚奇多。这个专题一直是若干调查的重点。他说,NAS并不是自动发展L的包罗万象和终端。 因此,本审查从一个总体角度出发,审查整个DL工作流程的自动化。因此,这项工作还提出了一整套十项标准,用以评估当前工作的质量、质量、质量审查以及更广泛的研究领域。这些是评估当前工作、质量、可持续性、可持续性、可持续性、可持续性、可持续性、可持续性、可持续性、可持续性审查。