SQL for Data Science: Data Cleaning, Wrangling and Analytics with Relational Databases: Data-Centric Systems and Applications
Autor Antonio Badiaen Limba Engleză Paperback – 10 noi 2020
The book is organized as follows. Chapter 1 describes the data life cycle, i.e. the sequence of stages from data acquisition to archiving, that data goes through as it is prepared and then actually analyzed, together with the different activities that take place at each stage. Chapter 2 gets into databases proper, explaining how relational databases organize data. Non-traditional data, like XML and text, are also covered. Chapter 3 introduces SQL queries, but unlike traditional textbooks, queries and their parts are described around typical data analysis tasks like data exploration, cleaning and transformation.Chapter 4 introduces some basic techniques for data analysis and shows how SQL can be used for some simple analyses without too much complication. Chapter 5 introduces additional SQL constructs that are important in a variety of situations and thus completes the coverage of SQL queries. Lastly, chapter 6 briefly explains how to use SQL from within R and from within Python programs. It focuses on how these languages can interact with a database, and how what has been learned about SQL can be leveraged to make life easier when using R or Python. All chapters contain a lot of examples and exercises on the way, and readers are encouraged to install the two open-source database systems (MySQL and Postgres) that are used throughout the book in order to practice and work on the exercises, because simply reading the book is much less useful than actually using it.
This book is for anyone interested in data science and/or databases. It just demands a bit of computer fluency, butno specific background on databases or data analysis. All concepts are introduced intuitively and with a minimum of specialized jargon. After going through this book, readers should be able to profitably learn more about data mining, machine learning, and database management from more advanced textbooks and courses.
Din seria Data-Centric Systems and Applications
- 20% Preț: 777.06 lei
- 20% Preț: 472.94 lei
- 20% Preț: 1006.65 lei
- 20% Preț: 326.42 lei
- 20% Preț: 628.57 lei
- 20% Preț: 575.46 lei
- 20% Preț: 329.47 lei
- 20% Preț: 485.69 lei
- 20% Preț: 321.35 lei
- 20% Preț: 661.22 lei
- 20% Preț: 615.93 lei
- 20% Preț: 375.69 lei
- 20% Preț: 398.71 lei
- 20% Preț: 454.07 lei
- 20% Preț: 321.70 lei
- 20% Preț: 687.81 lei
- 20% Preț: 486.00 lei
- 20% Preț: 333.50 lei
- 20% Preț: 789.72 lei
- 20% Preț: 316.37 lei
- 20% Preț: 352.26 lei
- 20% Preț: 493.37 lei
Preț: 338.32 lei
Preț vechi: 422.90 lei
-20% Nou
Puncte Express: 507
Preț estimativ în valută:
64.77€ • 70.33$ • 54.47£
64.77€ • 70.33$ • 54.47£
Carte disponibilă
Livrare economică 25 noiembrie-09 decembrie
Livrare express 09-15 noiembrie pentru 31.44 lei
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9783030575915
ISBN-10: 3030575918
Pagini: 285
Ilustrații: XI, 285 p. 16 illus.
Dimensiuni: 155 x 235 x 22 mm
Greutate: 0.46 kg
Ediția:1st ed. 2020
Editura: Springer International Publishing
Colecția Springer
Seria Data-Centric Systems and Applications
Locul publicării:Cham, Switzerland
ISBN-10: 3030575918
Pagini: 285
Ilustrații: XI, 285 p. 16 illus.
Dimensiuni: 155 x 235 x 22 mm
Greutate: 0.46 kg
Ediția:1st ed. 2020
Editura: Springer International Publishing
Colecția Springer
Seria Data-Centric Systems and Applications
Locul publicării:Cham, Switzerland
Cuprins
1. The Data Life Cycle.- 2. Relational Data.- 3. Data Cleaning and Pre-processing.- 4. Introduction to Data Analysis.- 5. More SQL.- 6. Databases and Other Tools.
Notă biografică
Antonio Badia is Associate Professor in the Department of Computer Science and Engineering at the University of Louisville, KY, USA. He has taught both introductory and advanced college database courses for more than 20 years, and created and taught a course on data management and analysis for non-computer science students. His research on database systems has been funded by NSF and others, and produced more than 50 publications in conferences and technical journals.
Textul de pe ultima copertă
This textbook explains SQL within the context of data science and introduces the different parts of SQL as they are needed for the tasks usually carried out during data analysis. Using the framework of the data life cycle, it focuses on the steps that are very often given the short shift in traditional textbooks, like data loading, cleaning and pre-processing.
The book is organized as follows. Chapter 1 describes the data life cycle, i.e. the sequence of stages from data acquisition to archiving, that data goes through as it is prepared and then actually analyzed, together with the different activities that take place at each stage. Chapter 2 gets into databases proper, explaining how relational databases organize data. Non-traditional data, like XML and text, are also covered. Chapter 3 introduces SQL queries, but unlike traditional textbooks, queries and their parts are described around typical data analysis tasks like data exploration, cleaning and transformation.Chapter 4 introduces some basic techniques for data analysis and shows how SQL can be used for some simple analyses without too much complication. Chapter 5 introduces additional SQL constructs that are important in a variety of situations and thus completes the coverage of SQL queries. Lastly, chapter 6 briefly explains how to use SQL from within R and from within Python programs. It focuses on how these languages can interact with a database, and how what has been learned about SQL can be leveraged to make life easier when using R or Python. All chapters contain a lot of examples and exercises on the way, and readers are encouraged to install the two open-source database systems (MySQL and Postgres) that are used throughout the book in order to practice and work on the exercises, because simply reading the book is much less useful than actually using it.
This book is for anyone interested in data science and/or databases. It just demands a bit of computer fluency, butno specific background on databases or data analysis. All concepts are introduced intuitively and with a minimum of specialized jargon. After going through this book, readers should be able to profitably learn more about data mining, machine learning, and database management from more advanced textbooks and courses.
The book is organized as follows. Chapter 1 describes the data life cycle, i.e. the sequence of stages from data acquisition to archiving, that data goes through as it is prepared and then actually analyzed, together with the different activities that take place at each stage. Chapter 2 gets into databases proper, explaining how relational databases organize data. Non-traditional data, like XML and text, are also covered. Chapter 3 introduces SQL queries, but unlike traditional textbooks, queries and their parts are described around typical data analysis tasks like data exploration, cleaning and transformation.Chapter 4 introduces some basic techniques for data analysis and shows how SQL can be used for some simple analyses without too much complication. Chapter 5 introduces additional SQL constructs that are important in a variety of situations and thus completes the coverage of SQL queries. Lastly, chapter 6 briefly explains how to use SQL from within R and from within Python programs. It focuses on how these languages can interact with a database, and how what has been learned about SQL can be leveraged to make life easier when using R or Python. All chapters contain a lot of examples and exercises on the way, and readers are encouraged to install the two open-source database systems (MySQL and Postgres) that are used throughout the book in order to practice and work on the exercises, because simply reading the book is much less useful than actually using it.
This book is for anyone interested in data science and/or databases. It just demands a bit of computer fluency, butno specific background on databases or data analysis. All concepts are introduced intuitively and with a minimum of specialized jargon. After going through this book, readers should be able to profitably learn more about data mining, machine learning, and database management from more advanced textbooks and courses.
Caracteristici
Explains SQL within the context of data science and introduces its different parts as they are needed for data analysis Focuses on the steps that are very often given the short shift in traditional textbooks, like data loading, cleaning and pre-processing Contains a lot of examples and exercises that can be played with using the open-source database systems MySQL and Postgres