This manual provides comprehensive guidance for understanding and utilizing data munging techniques with Apache Hadoop. Authors Ofer Mendelevitch and Casey Stella, both leading data scientists, deliver practical insights drawn from extensive experience. The content is designed to assist data scientists, data engineers, and architects in mastering the critical and often time-consuming tasks of data cleansing, normalization, aggregation, sampling, and transformation. This resource emphasizes hands-on application, offering realistic examples and code based on widely used tools such as Pig, Hive, and Spark to address common challenges encountered when working with large datasets.
The scope of this guide covers a framework for data quality checks, including cell-based rules, distribution validation, and outlier analysis. It delves into assessing tradeoffs for imputing missing values, implementing quality checks using Pig or Hive UDFs, and transforming raw data into feature matrix formats suitable for machine learning algorithms. Further topics include feature and instance selection, handling text data through bag-of-words and NLP techniques, managing time-series data, and manipulating feature values for modeling. This manual serves as an essential practical resource for anyone looking to enhance their data munging capabilities on the Hadoop platform.
The Example-Rich, Hands-On Guide to Data Munging with Apache HadoopTM
Data scientists spend much of their time “munging” data: handling day-to-day tasks such as data cleansing, normalization, aggregation, sampling, and transformation. These tasks are both critical and surprisingly interesting. Most important, they deepen your understanding of your data’s structure and limitations: crucial insight for improving accuracy and mitigating risk in any analytical project.
Now, two leading Hortonworks data scientists, Ofer Mendelevitch and Casey Stella, bring together powerful, practical insights for effective Hadoop-based data munging of large datasets. Drawing on extensive experience with advanced analytics, the authors offer realistic examples that address the common issues you’re most likely to face. They describe each task in detail, presenting example code based on widely used tools such as Pig, Hive, and Spark.
This concise, hands-on eBook is valuable for every data scientist, data engineer, and architect who wants to master data munging: not just in theory, but in practice with the field’s #1 platform–Hadoop.
Coverage includes
- A framework for understanding the various types of data quality checks, including cell-based rules, distribution validation, and outlier analysis
- Assessing tradeoffs in common approaches to imputing missing values
- Implementing quality checks with Pig or Hive UDFs
- Transforming raw data into “feature matrix” format for machine learning algorithms
- Choosing features and instances
- Implementing text features via “bag-of-words” and NLP techniques
- Handling time-series data via frequency- or time-domain methods
- Manipulating feature values to prepare for modeling
Data Munging with Hadoop is part of a larger, forthcoming work entitled Data Science Using Hadoop. To be notified when the larger work is available, register your purchase of Data Munging with Hadoop at informit.com/register and check the box “I would like to hear from InformIT and its family of brands about products and special offers.”
Author: Mendelevitch, Ofer
Author: Stella, Casey
Publisher: Addison-Wesley Professional
Illustration: n
Language: ENG
Title: Data Munging with Hadoop
Pages: 00031 (Encrypted EPUB) / 00031 (Encrypted PDF)
On Sale: 2015-11-20
SKU-13/ISBN: 9780134435480
Category: Computers : Database Management - Database Mining
The Example-Rich, Hands-On Guide to Data Munging with Apache HadoopTM
Data scientists spend much of their time “munging” data: handling day-to-day tasks such as data cleansing, normalization, aggregation, sampling, and transformation. These tasks are both critical and surprisingly interesting. Most important, they deepen your understanding of your data’s structure and limitations: crucial insight for improving accuracy and mitigating risk in any analytical project.
Now, two leading Hortonworks data scientists, Ofer Mendelevitch and Casey Stella, bring together powerful, practical insights for effective Hadoop-based data munging of large datasets. Drawing on extensive experience with advanced analytics, the authors offer realistic examples that address the common issues you’re most likely to face. They describe each task in detail, presenting example code based on widely used tools such as Pig, Hive, and Spark.
This concise, hands-on eBook is valuable for every data scientist, data engineer, and architect who wants to master data munging: not just in theory, but in practice with the field’s #1 platform–Hadoop.
Coverage includes
- A framework for understanding the various types of data quality checks, including cell-based rules, distribution validation, and outlier analysis
- Assessing tradeoffs in common approaches to imputing missing values
- Implementing quality checks with Pig or Hive UDFs
- Transforming raw data into “feature matrix” format for machine learning algorithms
- Choosing features and instances
- Implementing text features via “bag-of-words” and NLP techniques
- Handling time-series data via frequency- or time-domain methods
- Manipulating feature values to prepare for modeling
Data Munging with Hadoop is part of a larger, forthcoming work entitled Data Science Using Hadoop. To be notified when the larger work is available, register your purchase of Data Munging with Hadoop at informit.com/register and check the box “I would like to hear from InformIT and its family of brands about products and special offers.”
Author: Mendelevitch, Ofer
Author: Stella, Casey
Publisher: Addison-Wesley Professional
Illustration: n
Language: ENG
Title: Data Munging with Hadoop
Pages: 00031 (Encrypted EPUB) / 00031 (Encrypted PDF)
On Sale: 2015-11-20
SKU-13/ISBN: 9780134435480
Category: Computers : Database Management - Database Mining