Abhari A. Topics in Data Science with Practical Examples 2018
- Type:
- Other > E-books
- Files:
- 1
- Size:
- 15.7 MiB (16462831 Bytes)
- Uploaded:
- 2022-02-27 11:25:51 GMT
- By:
- andryold1
- Seeders:
- 0
- Leechers:
- 1
- Comments
- 0
- Info Hash: 25D81DCD1F8302334BF0E6213259D176479A039B
(Problems with magnets links are fixed by upgrading your torrent client!)
Textbook in PDF format Data Science, sometimes known as methods of processing and analyzing massive data sets (Big Data), is a rapidly evolving field. This book teaches important topics of the emerging data science by providing simple and practical examples in R language. Initial chapters are about data collection and management at large scale, and then data analytics and applying statistical and machine learning models on the collected data are discussed in rest of the book. Ten important topics in data science are explained in ten chapters of this book with practical examples in Oracle SQL, R, Hadoop, and MapReduce. The fundamental of data management such as relational database systems, data mining and distributed computing with practical examples of SQL and implementing Hadoop and MapReduce are detailed in chapters 1 to 3. Regression and statistical analysis, neural networks, support vector machines and machine learning are explained in simple language together with R programming examples, in chapter 4 to 7. Natural language processing, recommendation systems and analyzing social networks graphs are explained in chapters 8 to 10 of this book. Dr. Abdolreza Abhari, a professor of computer science department at Ryerson University, has collected the material of this book after many years of teaching Data Science. With the background in computer science dating back to before the invention of the world wide web, professor Abhari has extensive experience in analyzing web and social network data and creating database systems for the companies and industrial sectors in Europe and North America. His teaching area in academia includes database systems, distributed systems, and data science for graduate and undergraduate students. Although this book is written for professionals and graduated students who have a university or college degree, it is also useful for whoever considers working in the data science industry. Data Management Data Mining Massive Data Sets, Hadoop, and MapReduce Regression Analysis Neural Networks Machine Learning Recurrent Neural Networks Text Processing (Natural Language Processing) Recommendation Systems and Netflix Challenge Analyzing Social Graphs
Abhari A. Topics in Data Science with Practical Examples 2018.pdf | 15.7 MiB |