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Data Science vs Information Science

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Data science is the discovery of knowledge or actionable information in data.
Information science is the design of practices for storing and retrieving information.

The Difference

Data science and information science are distinct but complimentary disciplines.
Data science is heavy on computer science and mathematics. Information science is more concerned with areas such as library science, cognitive science and communications.
Data science is used in business functions such as strategy formation, decision making and operational processes. It touches on practices such as artificial intelligence, analytics, predictive analytics and algorithm design.
Information science is used in areas such as knowledge management, data management and interaction design.
Data Science vs Information Science
Data Science
Information Science
The discovery of knowledge and actionable information in data.
The design of practices for storing, retrieving and interacting with information.
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