Matches in SemOpenAlex for { <https://semopenalex.org/work/W3011050576> ?p ?o ?g. }
Showing items 1 to 48 of
48
with 100 items per page.
- W3011050576 endingPage "150" @default.
- W3011050576 startingPage "129" @default.
- W3011050576 abstract "Data science is an interdisciplinary field that deals with a methodical approach to process large volumes of data both structured and unstructured in nature. The very objective is to analyze the data to uncover hidden patterns and extract actionable insights from the data for better managerial decision-making in an organization. Data science has been used in diverse areas such as business and finance, marketing, risk management, operations and planning, disease diagnosis and health care, agriculture, fraud detection, crime investigation, image and speech recognition, gaming, virtual reality, weather and environmental studies, space and defense applications to name a few. Data science is not an entirely new discipline; rather, it has evolved from the existing fields such as data mining and knowledge discovery, business intelligence, data analytics, machine learning, computer science, software engineering, mathematics and statistics, among others. It is an umbrella field to many such fields which make data processing more systematic than ever before and very useful for organizational decision-making. Data science has a lot of potentials to solve complex organizational problems effectively. With the growth of social media, Internet of Things, ubiquitous computing, connectivity, ambient intelligence and above all digital economy, the field of big data has emerged as an opportunity as well as a challenge for many organizations. While big data stores a lot of business opportunities, how to make it useful for the organization is rather challenging. In this context, embracing data science becomes more pertinent for the organization. With the advent of big data, the importance and popularity of data science is accelerating. This chapter will provide a compressive introduction to data science and big data analytics. It will elaborate on the data analytics life cycle. The chapter will delve into the theories and methods such as regression, classification, clustering and association rules used in data science. It will also introduce the relevant technologies such as MapReduce, NoSQL and popular tools such as Hadoop ecosystem. Finally, this chapter will conclude with research challenges in the field of data science and big data analytics." @default.
- W3011050576 created "2020-03-23" @default.
- W3011050576 creator A5035051643 @default.
- W3011050576 creator A5035240808 @default.
- W3011050576 date "2020-03-17" @default.
- W3011050576 modified "2023-09-24" @default.
- W3011050576 title "Data Science and Big Data Analytics" @default.
- W3011050576 cites W2285144687 @default.
- W3011050576 doi "https://doi.org/10.1201/9781003024743-6" @default.
- W3011050576 hasPublicationYear "2020" @default.
- W3011050576 type Work @default.
- W3011050576 sameAs 3011050576 @default.
- W3011050576 citedByCount "2" @default.
- W3011050576 countsByYear W30110505762021 @default.
- W3011050576 crossrefType "book-chapter" @default.
- W3011050576 hasAuthorship W3011050576A5035051643 @default.
- W3011050576 hasAuthorship W3011050576A5035240808 @default.
- W3011050576 hasConcept C124101348 @default.
- W3011050576 hasConcept C175801342 @default.
- W3011050576 hasConcept C2522767166 @default.
- W3011050576 hasConcept C41008148 @default.
- W3011050576 hasConcept C75684735 @default.
- W3011050576 hasConcept C79158427 @default.
- W3011050576 hasConceptScore W3011050576C124101348 @default.
- W3011050576 hasConceptScore W3011050576C175801342 @default.
- W3011050576 hasConceptScore W3011050576C2522767166 @default.
- W3011050576 hasConceptScore W3011050576C41008148 @default.
- W3011050576 hasConceptScore W3011050576C75684735 @default.
- W3011050576 hasConceptScore W3011050576C79158427 @default.
- W3011050576 hasLocation W30110505761 @default.
- W3011050576 hasOpenAccess W3011050576 @default.
- W3011050576 hasPrimaryLocation W30110505761 @default.
- W3011050576 hasRelatedWork W2337265393 @default.
- W3011050576 hasRelatedWork W2472976221 @default.
- W3011050576 hasRelatedWork W2508885301 @default.
- W3011050576 hasRelatedWork W2625749796 @default.
- W3011050576 hasRelatedWork W2739436898 @default.
- W3011050576 hasRelatedWork W2777139086 @default.
- W3011050576 hasRelatedWork W2929289283 @default.
- W3011050576 hasRelatedWork W4281396659 @default.
- W3011050576 hasRelatedWork W4372291825 @default.
- W3011050576 hasRelatedWork W2551093110 @default.
- W3011050576 isParatext "false" @default.
- W3011050576 isRetracted "false" @default.
- W3011050576 magId "3011050576" @default.
- W3011050576 workType "book-chapter" @default.