Home Common Problem What are the applications of big data in life?

What are the applications of big data in life?

Sep 22, 2021 am 10:48 AM
Big Data

The applications of big data in life include: 1. Agricultural Internet; 2. Financial Internet; 3. E-commerce; 4. Medical device industry; 5. Big data in retail industry; 6. Biotechnology, etc.

What are the applications of big data in life?

The operating environment of this tutorial: Windows 10 system, Dell G3 computer.

Various data collection capabilities such as government data sharing and Internet of Things data collection are constantly improving. Technologies such as cloud computing and artificial intelligence provide capabilities for further development of data storage and processing. More agile, smarter, more integrated, and more secure data analysis and intelligent tools will become the main needs of enterprises.

Application of Big Data in Life

1. Agricultural Internet

What are the applications of big data in life?

The application of agricultural Internet big data in agriculture and animal husbandry mainly refers to the production of animal husbandry products based on the analysis of future commercial needs, so as to reduce the chance of low prices hurting farmers.

2. Financial Industry Internet

What are the applications of big data in life?

##Financial Industry Internet big data is widely used in the financial industry .

The application of Internet big data in the financial industry can be summarized into the following two aspects:

A: Big data marketing: recommendations based on customer consumption habits, location, and consumption time.

B: Risk prevention and control: Provide credit rating or financing support based on customer consumption and cash flow, and use customer social behavior records to control credit card risk.

3. E-commerce

What are the applications of big data in life?

E-commerce e-commerce data is relatively concentrated, with large amounts of information and types There will be more room for using big data in the future, including analyzing trends, consumption trends, regional consumption characteristics, customer consumption habits, the correlation of various consumer behaviors, consumer markets, and factors affecting consumption. elements etc.

4. Medical device industry

What are the applications of big data in life?##Medical device industry The medical device industry has many medical records, pathology Reports, recovery plans, drug reports, etc. In the future, with the help of data management platforms, people can collect different medical records and treatment plans, as well as patient characteristics, and create a database of disease characteristics.

5. Big Data in Retail Industry

What are the applications of big data in life?##The application of big data in retail industry has two aspects. One aspect is that the retail industry can understand customer consumption preferences and trends, carry out big data marketing of products, and reduce marketing and promotion costs. The other aspect is to provide customers with other products they will buy according to their purchase of products, so as to increase sales, which also belongs to the aspect of big data marketing. In addition, the retail industry can grasp future consumption trends through Internet big data, which is beneficial to the acquisition management of hot-selling products and the processing of out-of-season goods.

6. Biotechnology

##The key to biotechnology is the application of cloud computing technology in genetic analysis Application, through the data platform, people can record and store the results of genetic analysis of themselves and plants, and use the genetic database query of cloud computing technology to create application scenarios. Cloud computing technology will accelerate scientific research on genetic technology and quickly assist scientists in creating models and simulating genetic composition. What are the applications of big data in life?Recommended learning:

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