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Academic Journal of Environmental Biology, 2021, 2(2); doi: 10.38007/AJEB.2021.020204.

Bioinformatics Data Analysis of Space Environment under the Background of Artificial Intelligence

Author(s)

Additya Kumar

Corresponding Author:
Additya Kumar
Affiliation(s)

Binghamton University State University of New York, The United States of America

Abstract

Bioinformatics (BI) addresses academic problems by using information technology to collect, store, organize, and index biological data, and to present, analyze, and integrate problems through biological data. It applies the fundamentals of computer science and information technology to make large, diverse and complex scientific data understandable and help realize its potential. The main purpose of this paper is to study the analysis methods of space environment BI data based on the background of artificial intelligence (AI). This paper combines big data (BD), discusses the ecological value of technology, puts forward the ecological value of BD technology, applies BD technology to the ecological field, points out the problems and reasons existing in the application of BD technology in the ecological environment, and finds solutions in the process of practice. In order to give full play to the ecological value of BD technology. Experiments show that the improved algorithm DGAN-VAE has good performance and can work well on images and gene sequences in the field of biological information.

Keywords

Artificial Intelligence, Space Environment, Bioinformatics Data, Data Analysis Methods

Cite This Paper

Additya Kumar. Bioinformatics Data Analysis of Space Environment under the Background of Artificial Intelligence. Academic Journal of Environmental Biology (2021), Vol. 2, Issue 2: 30-38. https://doi.org/10.38007/AJEB.2021.020204.

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