Design Andimplementation of the Stock Data Analysis System based on Django
DOI:
https://doi.org/10.54691/sjt.v4i11.2737Keywords:
Data Analysis; Crawler Technology; Python; Doris Data Warehouse; Django Framework.Abstract
In order to facilitate stock market browsing and data analysis for shareholders, a stock data analysis system is designed and implemented. This system can obtain daily stock data information and enable shareholders to conduct preliminary screening according to the trend of visual data. It can also browse shareholders' consultation for exchange comments, and users can add their own stocks to observe and wait for the best trading opportunity. The system is divided into two roles, administrator user and general user. The system includes four modules: the information module of individual accounts of shareholders, the real-time stock market module, the management module of self selected shares and the advisory forum module. The development of this system adopts Python technology, B/S framework, and Django framework. Because the stock market contains massive stock data, it uses Doris to store stock market data to improve efficient and highly available queries. For the visualization part of stock history data, ECharts is used for chart display.
Downloads
References
Nti, Isaac Kofi, Adebayo Felix Adekoya, and Benjamin Asubam Weyori. "A systematic review of fundamental and technical analysis of stock market predictions." Artificial Intelligence Review 53.4 (2020): 3007-3057.
Sprecher, Benjamin, et al. "Material intensity database for the Dutch building stock: Towards Big Data in material stock analysis." Journal of Industrial Ecology 26.1 (2022): 272-280.
Zhong huibin. "Design and Implementation of Stock Trading Management System Based on B/S Structure." South China University of Technology, 2016.
Li Ying. "Design and Implementation of the Stock System." Qingdao University of Science and Technology, 2018.
Burch, Carl. "Django, a web framework using python: Tutorial presentation." Journal of Computing Sciences in Colleges 25.5 (2010): 154-155.
Lv, Taizhi, Yongbing Chen, and Peiyi Tang. "Research on Data Analysis of The Vessel Shore Report." 2022: 114-120,2022.
Li, Deqing, et al. "ECharts: a declarative framework for rapid construction of web-based visualization." Visual Informatics 2.2 (2018): 136-146.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.




