Due to the large success of the first two runs, this 6 week online course is 
repeated as of October 7.
The course provides data science knowledge that can be applied directly to 
analyze and improve processes in a variety of domains.

First Massive Open Online Course on Process Mining

Starts: October 7, 2015

For more information and to register visit:
Process Mining: Data science in Action<https://www.coursera.org/course/procmin>.
A teaser trailer of the MOOC is available 
too!<https://www.youtube.com/watch?v=jOOI2NBsHd0>

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).

[https://d396qusza40orc.cloudfront.net/procmin/images/mails/X-ray.png]

Process mining is not just another data mining technique. Although both process 
mining and data mining start from data, data mining techniques are typically 
not process-centric and do not focus on event data. For data mining techniques 
the rows (instances) and columns (variables) can mean anything. For process 
mining techniques, we assume event data where events refer to process instances 
and activities. Moreover, the events are ordered and we are interested in 
end-to-end processes rather than local patterns. End-to-end process models and 
concurrency are essential for process mining. Moreover, topics such as process 
discovery, conformance checking, and bottleneck analysis are not addressed by 
traditional data mining techniques and tools. 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 Coursera course "Process Mining: Data science in Action" explains the key 
analysis techniques in process mining and provides practical tips to apply 
process mining immediately. Close to 70,000 participants joined in the first 
two runs where they learned 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 are also presented. Moreover, 
the course provides easy-to-use software, real-life data sets, and practical 
skills to directly apply the theory in a variety of application domains. To 
give everyone who missed the previous runs a chance to follow this course, the 
course runs again as of October 7, 2015.

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