Abstract
In the Internet era, data are generated all the time everyday, and the huge data with exponential explosive growth contains endless information resources. An increasing number of people think that big data will become an important asset of enterprises, which will bring opportunities for innovation and development of enterprises. Data resources are very important to enterprise. Whether the enterprise can seize this opportunity, integrate and analyze the externally generated data, form the data analysis ability, build its own unique competitive advantage, extract the key information resources that are beneficial to the development of the organization, promote the improvement of the enterprise’s innovation performance and innovation ability, and truly realize sustainable development. Therefore, how to apply big data capabilities to improve the innovation performance of has become the focus of enterprises’ attention. Based on this, this paper analyzes the value of “big data” in general by using the literature research method, investigates the research status of big data capability in the field of enterprise innovation performance, and reveals the relationship between big data capability and innovation performance, which is beneficial for enterprises to explore ways to improve innovation performance by using big data capability, and also has certain reference significance for future research in related fields.
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