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30.08.2024

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Teaser image to MCML at BPM 2024

MCML at BPM 2024

Two Accepted Papers

22nd International Conference on Business Process Management, Krakow, Poland, Sep 01-06, 2024

We are happy to announce that MCML researchers have contributed a total of 2 papers to BPM 2024. Congrats to our researchers!

Main Track (2 papers)

A. Maldonado • C. M. M. Frey • G. M. Tavares • N. Rehwald • T. Seidl
GEDI: Generating Event Data with Intentional Features for Benchmarking Process Mining.
BPM 2024 - 22nd International Conference on Business Process Management. Krakow, Poland, Sep 01-06, 2024. DOI

R. S. Oyamada • G. M. Tavares • S. B. Junior • P. Ceravolo
CoSMo: A Framework to Instantiate Conditioned Process Simulation Models.
BPM 2024 - 22nd International Conference on Business Process Management. Krakow, Poland, Sep 01-06, 2024. DOI

#research #top-tier-work #seidl

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