In the context of Big Data Analytics, what does the term "Data Mining" refer to?(1 Point)a) Extracting valuable insights from large datasetsb) Storing data in a distributed databasec) Transforming data into a structured formatd) Running complex SQL queries
Question
In the context of Big Data Analytics, what does the term "Data Mining" refer to?(1 Point)a) Extracting valuable insights from large datasetsb) Storing data in a distributed databasec) Transforming data into a structured formatd) Running complex SQL queries
Solution
The term "Data Mining" in the context of Big Data Analytics refers to a) Extracting valuable insights from large datasets. This process involves analyzing large amounts of data to discover patterns and other useful information. It can also involve the process of cleaning, processing, and modeling data to uncover relevant insights. The insights derived can be used for further analysis, prediction, and decision making in various business contexts.
Similar Questions
What is true about data mining?Question 8Answera.Data Mining is defined as the procedure of extracting information from huge sets of datab.Data mining also involves other processes such as Data Cleaning, Data Integration, Data Transformationc.Data mining is the procedure of mining knowledge from data.d.All of the above
4. What is data mining?a. Data mining is a process of extracting and discovering patterns in large datasets.b. Data mining is the process of finding correlations within large data sets.c. Data mining is a process used to extract usable data from a larger set of anyraw data.d. All of the above
Definition of Data Mining
What is the process of applying machine learning algorithms to data called?Select one:a.Data modelingb.Data analysisc.Data visualizationd.Data mining
A huge collection of the information or data accumulated form several different sources is known as ________.a.Data Miningb.Data mining and Data managementc.Data Warehoused.Data Management
Upgrade your grade with Knowee
Get personalized homework help. Review tough concepts in more detail, or go deeper into your topic by exploring other relevant questions.