Technical Features and Trends of Data Science in Financial Engineering

Authors

  • Songyuanyi Lu

DOI:

https://doi.org/10.54097/fbem.v4i3.1068

Keywords:

Data science, Financial engineering, Technical characteristics, Development trend.

Abstract

In the new financial era, the huge amount of data brings more challenges to the traditional financial business and creates unprecedented opportunities at the same time. In the financial industry, the use of data science by financial institutions has significantly deepened, from the traditional "data visualization presentation" to "data-based decision analysis". This paper analyzes the technical characteristics and development trend of data science in financial engineering against the background of rapid development of financial technology.

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References

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Published

31 July 2022

How to Cite

Lu, S. (2022). Technical Features and Trends of Data Science in Financial Engineering. Frontiers in Business, Economics and Management, 4(3), 34–37. https://doi.org/10.54097/fbem.v4i3.1068

Issue

Section

Articles