Big Data Analysis: Techniques, Challenges, and Business Applications
Verified
Added on 2023/06/14
|1
|769
|267
AI Summary
This presentation provides an overview of big data analysis, including its history, definition, techniques, challenges, and business applications. It also discusses the characteristics of big data and provides examples of how big data technology can support businesses.
Contribute Materials
Your contribution can guide someone’s learning journey. Share your
documents today.
Information Systems and Big Data Analysis History on big Data Data is the characters, symbols, quantities on which the computers operate. These can be stored and transferred from one computer or device from another. Big data is data which is very large in volume and is growing very rapidly (Farboodi, M., et.al., 2019). The size of these data is very large that it is very difficult to manage by the traditional tools of data management and even they cannot store and process it effectively. The challenges of big data analytics There are various challenges which are faced using the big data are- Lack of knowledge-Modern technologies and managing tools for large data companies require highly skilled employees. For these companies hire data scientists, data analysts and data engineers to work for these big data. The biggest challenge faced by the companies there is lack of knowledge for working with these big data this is because there are many tools manufactured to handle the data but there is lack of knowledge in professionals to handle these data. What is big Data Big data is larger as well as more complex data from the new sources of data. These are very difficult to manage by data processing software as they are much voluminous. These large volumes of data can be utilized to address the problems of the organization which were not able to handle previously. Big data analytics helps businesses in various aspects such as helps businesses in better understanding of consumers, identification of operational issues, managing the supply chains and detecting the fraudulent activities happens in the businesses. Techniques that are currently available to analysis big data Predictive Analytics-One of the most frequentlyusedtoolsinbusinesses predictive analytics. Knowledge discovery tools-This tools helps the businesses to organize the big data which are stored at various sources. Stream Analytics-The data stored of the organizations can be stored on the various sources. In-memory Data fabric-This technological tool helps in the distribution of data to different sources like Dynamic RAM, Solid state storage drives. Characteristics of Big data Volume-This feature of the big data includes the amount or size of big data that the businesses manages and analysis. Value-It is the most important V of the big data from the business point of view. Value is the term which describes the usefulness of data which has been gathered Variety-There are variety of types of data such as unstructured data, semi-structured data and raw data Velocity-It includes the speed at which businesses store, manage and receive the data. Veracity-It states the accuracy of the data and its information. How Big Data technology could support business & Examples Making better business decisions-It enables the business to take smarter decisions which related to data. Every company must have access to data for improvement of decision-making. Understanding the customers-It is very important for the organizations to understand their customers for their satisfaction. Big data enables the organization to understand the customers and through which they can serve them. Providing smarter products-By evaluating the data the organizations can provide better services or products to the customers References Choi, T.M., Wallace, S.W. and Wang, Y., 2018. Big data analytics in operations management. Production and Operations Management. 27(10). pp.1868-1883. De Mauro, A., et.al. 2018. Human resources for Big Data professions: A systematic classification of job roles and required skill sets. Information Processing & Management.54(5). pp.807- 817. Farboodi, M., et.al., 2019, May. Big data and firm dynamics. In AEA papers and proceedings (Vol. 109, pp. 38-42). Marinakis, V., et.al. 2020. From big data to smart energy services: An application for intelligent energy management. Future Generation Computer Systems.110. pp.572-586. Rabhi, L., et.al., 2019. Big data approach and its applications in various fields. Procedia Computer Science.155. pp.599-605. Ranjan, J., 2019. The 10 Vs of Big Data framework in the Context of 5 Industry Verticals. Productivity.59(4). Rossi, R. and Hirama, K., 2022. Characterizing big data management. arXiv preprint arXiv:2201.05929.