Article 12323

Title of the article

INVESTIGATION MACHINE LEARNING MODEL USING STREAMLIT 

Authors

Olga Yu. Kuznetsova, Candidate of technical sciences, associate professor of the sub-department of information and computing systems, Penza State University (40 Krasnaya street, Penza, Russia), ellekasandra@yandex.ru
Roman N. Kuznetsov, Head of the department of informatization, Penza State University (40 Krasnaya street, Penza, Russia), nahab007@rambler.ru
Andrey V. Kuzmin, Dосtor of technical sciences, professor, professor of the sub-department of information and computing systems, Penza State University (40 Krasnaya street, Penza, Russia), a.v.kuzmin@pnzgu.ru

Abstract

Background. MLOps (Machine Learning Operations) is a relevant and important topic in the field of machine learning. It brings together the practices and processes needed to effectively develop, deploy, and manage machine learning models. Materials and methods. To predict complications after surgery, a Web-based user interface using Streamlit was developed. In this paper, the machine learning pipeline was applied using the Scikit-learn library and a Web application was created using the Streamlit platform, which is open source. This web application has a simple interface for users that allows you to create forecasts of postoperative complications in patients. Results. The user interface was implemented using the Streamlit library for the machine learning model. Conclusions. As a result, the features of implementing a machine learning model using the Streamlit library and developing a user interface were considered. A data set for predicting postoperative complications was used as an example.

Key words

machine learning, forecasting, prediction of postoperative complications, logistic regression, k-nearest neighbors, decision tree, support vector machine, multilayer perceptron, random forest, Streamlit

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For citation

Kuznetsova O.Yu., Kuznetsov R.N., Kuzmin A.V. Investigation machine learning model using Streamlit. Modeli, sistemy, seti v ekonomike, tekhnike, prirode i obshchestve = Models, systems, networks in economics, technology, nature and society. 2023;(3):167–176. (In Russ.). doi: 10.21685/2227-8486-2023-3-12

 

Дата создания: 01.11.2023 09:18
Дата обновления: 02.11.2023 14:04