Print Email Facebook Twitter Privacy-Preserving Techniques for Machine Learning Applications in Supply Chains Title Privacy-Preserving Techniques for Machine Learning Applications in Supply Chains Author Joshi, Ayush (TU Delft Electrical Engineering, Mathematics and Computer Science; TU Delft Intelligent Systems; TU Delft Cyber Security) Contributor Li, T. (mentor) Erkin, Z. (mentor) Hildebrandt, K.A. (graduation committee) Degree granting institution Delft University of Technology Programme Computer Science and Engineering Project CSE3000 Research Project Date 2021-07-01 Abstract Supply chains are vital to the global economy, and so, increasing efficiency in supply chain management is of utmost importance. Modernizing technology has allowed for various uses of machine learning to be possible in several aspects of supply chains, specifically in demand forecasting with prediction models, and customer relations with chat-bots. While this may be the case, many organizations are reluctant to implement such solutions due to potential threats to their privacy. In addition to this, some currently existing solutions do not take special care for privacy preservation. This brings the question of, "How can privacy be preserved in machine learning based applications in supply chains?" The results of this survey show that several approaches for privacy-preservation of machine learning applications exist, and can be applied to supply chains while maintaining increased efficiency in supply chain management. Subject machine learningprivacysupply chainsdemand forecastingChatbotPrivacy Preserving Machine Learningprivacy preservation To reference this document use: http://resolver.tudelft.nl/uuid:9c443417-09aa-4f96-8a6f-f6d8f686e1f1 Part of collection Student theses Document type bachelor thesis Rights © 2021 Ayush Joshi Files PDF Research_Project_AK_Joshi.pdf 297.55 KB Close viewer /islandora/object/uuid:9c443417-09aa-4f96-8a6f-f6d8f686e1f1/datastream/OBJ/view