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Quantum Computing and Blockchain in Business

You're reading from   Quantum Computing and Blockchain in Business Exploring the applications, challenges, and collision of quantum computing and blockchain

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Product type Paperback
Published in Mar 2020
Publisher Packt
ISBN-13 9781838647766
Length 334 pages
Edition 1st Edition
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Author (1):
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Arunkumar Krishnakumar Arunkumar Krishnakumar
Author Profile Icon Arunkumar Krishnakumar
Arunkumar Krishnakumar
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Table of Contents (20) Chapters Close

Preface 1. Introduction to Quantum Computing and Blockchain 2. Quantum Computing – Key Discussion Points FREE CHAPTER 3. The Data Economy 4. The Impact on Financial Services 5. Interview with Dr. Dave Snelling, Fujitsu Fellow 6. The Impact on Healthcare and Pharma 7. Interview with Dr. B. Rajathilagam, Head of AI Research, Amrita Vishwa Vidyapeetham 8. The Impact on Governance 9. Interview with Max Henderson, Senior Data Scientist, Rigetti and QxBranch 10. The Impact on Smart Cities and Environment 11. Interview with Sam McArdle, Quantum Computing Researcher at the University of Oxford 12. The Impact on Chemistry 13. The Impact on Logistics 14. Interview with Dinesh Nagarajan, Partner, IBM 15. Quantum-Safe Blockchain 16. Nation States and Cyberwars 17. Conclusion – Blue Skies 18. Other Books You May Enjoy
19. Index

Big data

The term Big data was coined by Roger Mougalas in 2005, a year after Web 2.0 was coined. Web 2.0 was used to indicate the data era where traditional business intelligence tools were ineffective due to the size of the data they had to deal with. The same year, Yahoo developed Hadoop on Google's MapReduce with an ambition to index the World Wide Web. Hadoop is an open source framework that can handle both structured and unstructured data.

Structured data is identified by well-defined data types, data rules, and controls that they would adhere to. Structured data typically sits in databases where the exact parameters of data are predefined. Oracle, Microsoft SQL Server, and several other database management systems were very focused on dealing with structured data.

Unstructured data does not have the same level of structural discipline, primarily because of the way it is generated. Unstructured data comes in all shapes and forms most of the data that exists...

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