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Question

What is the purpose of the knowledge extraction subsystem in the KO ecosystem?

a.

To create ontologies from scratch.

b.

To prepare ontologies for seamless integration.

c.

To transform data into knowledge tokens.

d.

To facilitate ontology reuse.

Posted under Big Data Computing

Answer: (c).To transform data into knowledge tokens. Explanation:The knowledge extraction subsystem transforms units of data into knowledge tokens in the KO ecosystem.

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Q. What is the purpose of the knowledge extraction subsystem in the KO ecosystem?

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