Working with AIoT Solutions in Embedded Software Applications. Recommendations, Guidelines, and Lessons Learned

Uloženo v:
Podrobná bibliografie
Název: Working with AIoT Solutions in Embedded Software Applications. Recommendations, Guidelines, and Lessons Learned
Att arbeta med AI i inbyggda system. Rekommendationer och riktlinjer.
Autoři: Gratorp, Christina
Přispěvatelé: Lund University, Faculty of Engineering, LTH, Departments at LTH, Department of Technology and Society, Environmental and Energy Systems Studies, Lunds universitet, Lunds Tekniska Högskola, Institutioner vid LTH, Institutionen för teknik och samhälle, Miljö- och energisystem, Originator
Zdroj: Intelligent Secure Trustable Things Studies in Computational Intelligence. 1147(1):309-329
Témata: Natural Sciences, Computer and Information Sciences, Computer Sciences, Naturvetenskap, Data- och informationsvetenskap (Datateknik), Datavetenskap (Datalogi)
Popis: This chapter aims to be a broad introduction for embedded systems professionals that wish to add machine learning to traditional embedded software. It briefly describes the foundation for a stable and secure IoT communication platform, touching on important areas such as the MQTT protocol and data extraction. The discussion is based on a case study for a digitalized marine vessel, and focuses on guidelines and recommendations for how to work with machine learning models in industrial embedded software applications.
Přístupová URL adresa: https://link.springer.com/chapter/10.1007/978-3-031-54049-3_17
Databáze: SwePub
Popis
Abstrakt:This chapter aims to be a broad introduction for embedded systems professionals that wish to add machine learning to traditional embedded software. It briefly describes the foundation for a stable and secure IoT communication platform, touching on important areas such as the MQTT protocol and data extraction. The discussion is based on a case study for a digitalized marine vessel, and focuses on guidelines and recommendations for how to work with machine learning models in industrial embedded software applications.
ISSN:1860949X
18609503