Generic web-service client for cloud-based machine learning platforms

Thesis title: Generic web-service client for cloud-based machine learning platforms
Author: Rende, Mehmet Ali
Thesis type: Diploma thesis
Supervisor: Kliegr, Tomáš
Opponents: Chudán, David
Thesis language: English
Abstract:
The thesis consists of a full-stack web service application: the client-side application written with JavaScript / React Framework, the server-side application written with Python / Django REST Framework. The server listens to input and interactions on the user interface and sending responses back after analyses of the input. These two applications serve as a web service that compares different behaviors of cloud-based machine learning platforms and tests them from different aspects with input from the user interface in order to evaluate predictive performances in real-time and ease potential users’ decision process. On the other hand, the thesis discusses possible use cases and future adaptions of the application. The thesis includes the full implementation of the demo application, business logic process flows as well as the documentation explaining exactly how the web service implemented and works actively. Additionally, the paper includes findings from two cloud-based machine learning platforms’ comparison.
Keywords: Machine learning; Python; REST; Web service; API; Cloud Systems
Thesis title: GENERIC WEB-SERVICE CLIENT FOR CLOUD-BASED MACHINE LEARNING PLATFORMS
Author: Rende, Mehmet Ali
Thesis type: Diplomová práce
Supervisor: Kliegr, Tomáš
Opponents: Chudán, David
Thesis language: English
Abstract:
The thesis consists of a full-stack web service application: the client-side application written with JavaScript / React Framework, the server-side application written with Python / Django REST Framework. The server listens to input and interactions on the user interface and sending responses back after analyses of the input. These two applications serve as a web service that compares different behaviors of cloud-based machine learning platforms and tests them from different aspects with input from the user interface in order to evaluate predictive performances in real-time and ease potential users’ decision process. On the other hand, the thesis discusses possible use cases and future adaptions of the application. The thesis includes the full implementation of the demo application, business logic process flows as well as the documentation explaining exactly how the web service implemented and works actively. Additionally, the paper includes findings from two cloud-based machine learning platforms’ comparison.
Keywords: Machine learning; Python; REST; Cloud systems; API; Web service

Information about study

Study programme: Aplikovaná informatika/Information Systems Management
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Information and Knowledge Engineering

Information on submission and defense

Date of assignment: 8. 10. 2019
Date of submission: 4. 12. 2020
Date of defense: 13. 1. 2021
Identifier in the InSIS system: https://insis.vse.cz/zp/71178/podrobnosti

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