AITIA: Embedded AI Techniques for Embedded Industrial Applications

M. Brandalero, Muhammad Ali, Laurens Le Jeune, Hector Gerardo Muñoz Hernandez, M. Veleski, B. Silva, J. Lemeire, Kristof Van Beeck, A. Touhafi, T. Goedemé, N. Mentens, D. Göhringer, M. Hübner
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引用次数: 10

Abstract

New achievements in Artificial Intelligence (AI) and Machine Learning (ML) are reported almost daily by the big companies. While those achievements are accomplished by fast and massive data processing techniques, the potential of embedded machine learning, where intelligent algorithms run in resource-constrained devices rather than in the cloud, is still not understood well by the majority of the industrial players and Small and Medium Entereprises (SMEs). Nevertheless, the potential embedded machine learning for processing high-performance algorithms without relying on expensive cloud solutions is perceived as very high. This potential has led to a broad demand by industry and SMEs for a practical and application-oriented feasibility study, which helps them to understand the potential benefits, but also the limitations of embedded AI. To address these needs, this paper presents the approach of the AITIA project, a consortium of four Universities which aims at developing and demonstrating best practices for embedded AI by means of four industrial case studies of high-relevance to the European industry and SMEs: sensors, security, automotive and industry 4.0.
AITIA:嵌入式工业应用的嵌入式AI技术
大公司几乎每天都在报道人工智能(AI)和机器学习(ML)方面的新成就。虽然这些成就是通过快速和大规模的数据处理技术实现的,但嵌入式机器学习的潜力,即智能算法在资源受限的设备而不是云中运行,仍然没有被大多数工业参与者和中小型企业(sme)很好地理解。然而,在不依赖昂贵的云解决方案的情况下,处理高性能算法的嵌入式机器学习的潜力被认为是非常大的。这种潜力导致了工业和中小企业对实际和面向应用的可行性研究的广泛需求,这有助于他们了解嵌入式人工智能的潜在好处,但也有局限性。为了满足这些需求,本文介绍了AITIA项目的方法,该项目是一个由四所大学组成的联盟,旨在通过与欧洲工业和中小企业高度相关的四个工业案例研究(传感器、安全、汽车和工业4.0),开发和展示嵌入式人工智能的最佳实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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