Obtaining value from big data for service delivery /
Kaisler, Stephen H.
Obtaining value from big data for service delivery / Stephen H. Kaisler, Frank Armour, J. Alberto Espinosa, and William H. Money. - First edition. - 1 online resource (xxi, 176 pages) - Service systems and innovations in business and society collection, 2326-2699 . - Service systems and innovations in business and society collection. .
1. Introduction -- 2. Applications of big data to service delivery -- 3. Analyzing big data for successful results -- 4. Big data infrastructure, a technical architecture overview -- 5. Building an effective big data organization -- 6. Issues and challenges in big data and analytics -- 7. Conclusion: capturing the value of big data projects -- Appendix A. Methods-based analytics taxonomy -- References -- Further reading -- Glossary -- Index.
Access restricted to authorized users and institutions.
Big data is an emerging phenomenon that has enormous implications and impacts upon business strategy, profitability, and process improvements. All service systems generate big data these days, especially human-centered service systems such as government (including cities), healthcare, education, retail, finance, and so on. It has been characterized as the collection, analysis and use of data characterized by the five Vs: volume, velocity, variety, veracity, and value (of data). As the plethora of data sources grows from sensors, social media, and electronic transactions, new methods for collecting or acquiring, integrating, processing, analyzing, understanding, and visualizing data to provide actionable information and support integrated and timely senior and executive decision-making are required. The discipline of applying analytic processes to find and combine new sources of data and extract hidden crucial decision-making information from the oceans of data is rapidly developing, but requires expertise to apply in ways that will yield useful, actionable results for service organizations. Many service-oriented organizations that are just beginning to invest in big data collection, storage, and analysis need to address the numerous issues and challenges that abound--technological, managerial, and legal. Other organizations that have begun to use new data tools and techniques must keep up with the rapidly changing and snowballing work in the field. This booklet will help middle, senior, and executive managers to understand what big data is; how to recognize, collect, process, and analyze it; how to store and manage it; how to obtain useful information from it; and how to assess its contribution to operational, tactical, and strategic decision-making in service-oriented organizations.
Mode of access: World Wide Web.
System requirements: Adobe Acrobat reader.
9781631572234
Service-oriented architecture (Computer science)
Big data.
analytic science Big Data business analytics business intelligence data science descriptive analytics enterprise architecture NoSQL predictive analytics service delivery service-oriented architecture
[genre]
TK5105.5828
Obtaining value from big data for service delivery / Stephen H. Kaisler, Frank Armour, J. Alberto Espinosa, and William H. Money. - First edition. - 1 online resource (xxi, 176 pages) - Service systems and innovations in business and society collection, 2326-2699 . - Service systems and innovations in business and society collection. .
1. Introduction -- 2. Applications of big data to service delivery -- 3. Analyzing big data for successful results -- 4. Big data infrastructure, a technical architecture overview -- 5. Building an effective big data organization -- 6. Issues and challenges in big data and analytics -- 7. Conclusion: capturing the value of big data projects -- Appendix A. Methods-based analytics taxonomy -- References -- Further reading -- Glossary -- Index.
Access restricted to authorized users and institutions.
Big data is an emerging phenomenon that has enormous implications and impacts upon business strategy, profitability, and process improvements. All service systems generate big data these days, especially human-centered service systems such as government (including cities), healthcare, education, retail, finance, and so on. It has been characterized as the collection, analysis and use of data characterized by the five Vs: volume, velocity, variety, veracity, and value (of data). As the plethora of data sources grows from sensors, social media, and electronic transactions, new methods for collecting or acquiring, integrating, processing, analyzing, understanding, and visualizing data to provide actionable information and support integrated and timely senior and executive decision-making are required. The discipline of applying analytic processes to find and combine new sources of data and extract hidden crucial decision-making information from the oceans of data is rapidly developing, but requires expertise to apply in ways that will yield useful, actionable results for service organizations. Many service-oriented organizations that are just beginning to invest in big data collection, storage, and analysis need to address the numerous issues and challenges that abound--technological, managerial, and legal. Other organizations that have begun to use new data tools and techniques must keep up with the rapidly changing and snowballing work in the field. This booklet will help middle, senior, and executive managers to understand what big data is; how to recognize, collect, process, and analyze it; how to store and manage it; how to obtain useful information from it; and how to assess its contribution to operational, tactical, and strategic decision-making in service-oriented organizations.
Mode of access: World Wide Web.
System requirements: Adobe Acrobat reader.
9781631572234
Service-oriented architecture (Computer science)
Big data.
analytic science Big Data business analytics business intelligence data science descriptive analytics enterprise architecture NoSQL predictive analytics service delivery service-oriented architecture
[genre]
TK5105.5828