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Process Mining: Data science in Action(으)로 돌아가기

아이트호벤 공과 대학의 Process Mining: Data science in Action 학습자 리뷰 및 피드백

4.8
별점
809개의 평가
211개의 리뷰

강좌 소개

Process mining is the missing link between model-based process analysis and data-oriented analysis techniques. Through concrete data sets and easy to use software the course provides data science knowledge that can be applied directly to analyze and improve processes in a variety of domains. Data science is the profession of the future, because organizations that are unable to use (big) data in a smart way will not survive. It is not sufficient to focus on data storage and data analysis. The data scientist also needs to relate data to process analysis. Process mining bridges the gap between traditional model-based process analysis (e.g., simulation and other business process management techniques) and data-centric analysis techniques such as machine learning and data mining. Process mining seeks the confrontation between event data (i.e., observed behavior) and process models (hand-made or discovered automatically). This technology has become available only recently, but it can be applied to any type of operational processes (organizations and systems). Example applications include: analyzing treatment processes in hospitals, improving customer service processes in a multinational, understanding the browsing behavior of customers using booking site, analyzing failures of a baggage handling system, and improving the user interface of an X-ray machine. All of these applications have in common that dynamic behavior needs to be related to process models. Hence, we refer to this as "data science in action". The course explains the key analysis techniques in process mining. Participants will learn various process discovery algorithms. These can be used to automatically learn process models from raw event data. Various other process analysis techniques that use event data will be presented. Moreover, the course will provide easy-to-use software, real-life data sets, and practical skills to directly apply the theory in a variety of application domains. This course starts with an overview of approaches and technologies that use event data to support decision making and business process (re)design. Then the course focuses on process mining as a bridge between data mining and business process modeling. The course is at an introductory level with various practical assignments. The course covers the three main types of process mining. 1. The first type of process mining is discovery. A discovery technique takes an event log and produces a process model without using any a-priori information. An example is the Alpha-algorithm that takes an event log and produces a process model (a Petri net) explaining the behavior recorded in the log. 2. The second type of process mining is conformance. Here, an existing process model is compared with an event log of the same process. Conformance checking can be used to check if reality, as recorded in the log, conforms to the model and vice versa. 3. The third type of process mining is enhancement. Here, the idea is to extend or improve an existing process model using information about the actual process recorded in some event log. Whereas conformance checking measures the alignment between model and reality, this third type of process mining aims at changing or extending the a-priori model. An example is the extension of a process model with performance information, e.g., showing bottlenecks. Process mining techniques can be used in an offline, but also online setting. The latter is known as operational support. An example is the detection of non-conformance at the moment the deviation actually takes place. Another example is time prediction for running cases, i.e., given a partially executed case the remaining processing time is estimated based on historic information of similar cases. Process mining provides not only a bridge between data mining and business process management; it also helps to address the classical divide between "business" and "IT". Evidence-based business process management based on process mining helps to create a common ground for business process improvement and information systems development. The course uses many examples using real-life event logs to illustrate the concepts and algorithms. After taking this course, one is able to run process mining projects and have a good understanding of the Business Process Intelligence field. After taking this course you should: - have a good understanding of Business Process Intelligence techniques (in particular process mining), - understand the role of Big Data in today’s society, - be able to relate process mining techniques to other analysis techniques such as simulation, business intelligence, data mining, machine learning, and verification, - be able to apply basic process discovery techniques to learn a process model from an event log (both manually and using tools), - be able to apply basic conformance checking techniques to compare event logs and process models (both manually and using tools), - be able to extend a process model with information extracted from the event log (e.g., show bottlenecks), - have a good understanding of the data needed to start a process mining project, - be able to characterize the questions that can be answered based on such event data, - explain how process mining can also be used for operational support (prediction and recommendation), and - be able to conduct process mining projects in a structured manner....

최상위 리뷰

RK
2019년 7월 1일

The course is designed and presented by professor aptly for beginners. I think before reading the Process Mining book it is good to take this course and then read the book later. The quizzes are good.

PP
2019년 12월 9일

Good content, very thorough, and I learned a LOT! Took more time than suggested, as I learn by taking notes and reproducing diagrams. But the course structure allowed for frequent pauses to do this.

필터링 기준:

Process Mining: Data science in Action의 208개 리뷰 중 126~150

교육 기관: Behrouz S

2018년 10월 28일

Thank you Prof. Aalst

Thank you coursera

교육 기관: abdelahmid M r

2020년 8월 28일

comperhensive course in Process mining

교육 기관: Braulio B

2020년 11월 16일

Great! Very clear and very practical

교육 기관: Thibaut L

2020년 1월 21일

An in depth course on Process Mining

교육 기관: Vishnu D S

2018년 8월 24일

Good Learning and very well designed

교육 기관: Mahendra V

2018년 7월 22일

Well explained, Knowledge oriented..

교육 기관: Nikita

2018년 6월 4일

Thanks a lot. It was very usefull!

교육 기관: aniket n

2017년 10월 16일

Learned a lot of new concepts. :)

교육 기관: Davide D

2019년 1월 18일

Perfectly fit my expectations.

교육 기관: Pepijn V

2020년 3월 11일

Diverse and original content.

교육 기관: mcy

2019년 9월 26일

REALLY NICE! MUCH APPRECIATE!

교육 기관: Deleted A

2017년 9월 17일

Good start to Process Mining

교육 기관: ANN G W

2020년 9월 27일

Very interesting course!

교육 기관: Christos H

2019년 1월 6일

Very informative course.

교육 기관: Rafael R

2017년 7월 6일

It's such a good course!

교육 기관: Cedric b

2016년 6월 23일

High quality course !

교육 기관: Bo P

2016년 10월 4일

非常好的课程,不同背景d额人都能进来学习

교육 기관: Nilson H P

2019년 12월 18일

Excellent course!

교육 기관: Ahmed T

2017년 1월 22일

Amazing Course :)

교육 기관: Paulo A

2017년 1월 8일

Really excellent!

교육 기관: Rose M M

2020년 5월 22일

Very Good Course

교육 기관: Paulo Y C

2019년 9월 30일

Excelent course!

교육 기관: Josef M

2018년 5월 17일

Very good course

교육 기관: Jingyao L

2017년 8월 24일

这个课程并不难懂。。大师就是大师

교육 기관: Tấn T M

2017년 5월 24일

Excellent course