estimating the transition  probabilities, it is expected 
that  the  file  contains enough  records  of  the flow  of 
patients  so  that  the  transition  probabilities  can  be 
estimated from the frequencies observed on the event 
sequences. 
From  this  experimentation  we  defined the  basic 
requirements for an automated IDM solution for DES 
model of EDs. Such requirements include managing 
the  input  data,  verifying  the  quality  of  the  data, 
processing  and  presenting  process  statistics  in 
dashboards.  The  preliminary  solution consists of  an 
architecture  that  includes  a  set  of  functional 
automation areas that satisfies these requirements. 
As future work, we need to detail the architecture 
and carry out further developments. To do so, early 
indications are that the best solution would be to take 
a  microservices  approach  and  to  adopt  a  cloud 
infrastructure  instead  of  on-premises  infrastructure 
by  considering  three  characteristics  of  the  former 
model: manageability, scalability, and cost. 
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