Explore the latest books of this year!
Bookbot

Process Mining

Data Science in Action - Second Edition

More about the book

This second edition of Wil van der Aalst’s influential work on process mining expands its scope to include data science and big data. It features updates on inductive mining techniques, alignments, an expanded section on software tools, and a new chapter on large-scale process mining. The book is self-contained, covering the full spectrum of process mining from discovery to predictive analytics. Part I introduces data science and process mining, while Part II lays the groundwork in business process modeling and data mining. Part III emphasizes process discovery, the key task in process mining, and Part IV explores conformance checking along with organizational and time perspectives. Part V guides readers in practical applications of process mining, introducing the widely used open-source tool ProM and various commercial products. Finally, Part VI reflects on the presented material and identifies key open challenges. This comprehensive overview serves business process analysts, consultants, managers, graduate students, and BPM researchers, offering valuable insights into the current state of process mining.

Book purchase

Process Mining, Wil van der Aalst

Language
Released
2016
product-detail.submit-box.info.binding
(Hardcover)
We’ll email you as soon as we track it down.

Payment methods

No one has rated yet.Add rating

Title
Process Mining
Subtitle
Data Science in Action - Second Edition
Language
English
Publisher
Springer
Released
2016
Format
Hardcover
Pages
467
ISBN10
3662498502
ISBN13
9783662498507
Series
Description
This second edition of Wil van der Aalst’s influential work on process mining expands its scope to include data science and big data. It features updates on inductive mining techniques, alignments, an expanded section on software tools, and a new chapter on large-scale process mining. The book is self-contained, covering the full spectrum of process mining from discovery to predictive analytics. Part I introduces data science and process mining, while Part II lays the groundwork in business process modeling and data mining. Part III emphasizes process discovery, the key task in process mining, and Part IV explores conformance checking along with organizational and time perspectives. Part V guides readers in practical applications of process mining, introducing the widely used open-source tool ProM and various commercial products. Finally, Part VI reflects on the presented material and identifies key open challenges. This comprehensive overview serves business process analysts, consultants, managers, graduate students, and BPM researchers, offering valuable insights into the current state of process mining.