Robotics & Artificial Intelligence
How is data different from information in the context of decision-making?
- Data and information are the same in decision-making.
- Data becomes information only when it is processed and holds meaning or context.
- Data is always more useful than information.
- Information refers only to numerical data while data includes all forms of content.
Role of Data & Information
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Answer
Data becomes information only when it is processed and holds meaning or context.
Reason — Data refers to raw or unprocessed facts that do not have meaning or context on their own. When this data is processed, organised, or analysed, it becomes information, which is meaningful and useful for decision-making. Therefore, data is converted into information only after processing gives it context and significance.
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