An approach to indirect real-time predictions with amazon machine learning
Manufacturing all around the world is going through a phenomenon known as industry 4.0 where digital transformations are taking place across the manufacturing value chain. Concepts such as the industrial internet of things and machine learning have become a norm in the industry. The biggest challeng...
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sg-ntu-dr.10356-755222023-03-04T18:35:51Z An approach to indirect real-time predictions with amazon machine learning Lee, Daryl Wei Qiang Tegoeh Tjahjowidodo School of Mechanical and Aerospace Engineering DRNTU::Engineering::Mechanical engineering Manufacturing all around the world is going through a phenomenon known as industry 4.0 where digital transformations are taking place across the manufacturing value chain. Concepts such as the industrial internet of things and machine learning have become a norm in the industry. The biggest challenges currently faced by organizations in achieving the goals of industry 4.0 include the issues of interoperability, analytical complications, and cyber-security risks amongst many others. In this project, we will develop an approach to create an indirect real-time prediction system using amazon machine learning. The system will be tested on a deburring (abrasive grinding) process as a case study. The proposed approach will enable users to utilize machine learning techniques provided on the AML platform to create a machine learning model and subsequently generate predictions and display them visually in a dynamic chart. Bachelor of Engineering (Mechanical Engineering) 2018-06-01T04:25:28Z 2018-06-01T04:25:28Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75522 en Nanyang Technological University 74 p. application/pdf |
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DRNTU::Engineering::Mechanical engineering Lee, Daryl Wei Qiang An approach to indirect real-time predictions with amazon machine learning |
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Manufacturing all around the world is going through a phenomenon known as industry 4.0 where digital transformations are taking place across the manufacturing value chain. Concepts such as the industrial internet of things and machine learning have become a norm in the industry. The biggest challenges currently faced by organizations in achieving the goals of industry 4.0 include the issues of interoperability, analytical complications, and cyber-security risks amongst many others. In this project, we will develop an approach to create an indirect real-time prediction system using amazon machine learning. The system will be tested on a deburring (abrasive grinding) process as a case study. The proposed approach will enable users to utilize machine learning techniques provided on the AML platform to create a machine learning model and subsequently generate predictions and display them visually in a dynamic chart. |
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Tegoeh Tjahjowidodo |
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Tegoeh Tjahjowidodo Lee, Daryl Wei Qiang |
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Final Year Project |
author |
Lee, Daryl Wei Qiang |
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Lee, Daryl Wei Qiang |
title |
An approach to indirect real-time predictions with amazon machine learning |
title_short |
An approach to indirect real-time predictions with amazon machine learning |
title_full |
An approach to indirect real-time predictions with amazon machine learning |
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An approach to indirect real-time predictions with amazon machine learning |
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An approach to indirect real-time predictions with amazon machine learning |
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approach to indirect real-time predictions with amazon machine learning |
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2018 |
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http://hdl.handle.net/10356/75522 |
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1759855970116173824 |