not store the data from the transaction. This way,
when a citizen contacts the chatbot and asks a
question, the chatbots can refer the citizen to the
chatbot with the proper knowledge base. The KrattAI
chatbot POC is not yet to the point of executing
government transactions but the POC has proven that
a network of chatbots can allow for the proper
functioning to find the proper chatbot for a
transaction. This method maintains the legal
boundaries put into place by Estonia while effectively
handling the technical concerns from not having large
data pools with which they can train the NLP engines
of the chatbots.
According to the workshop attendees, in
agreement with the NGDA vision paper, there are
changes in the current E-governance architecture are
necessary to enable the vision of virtual assistant
enabled services. One change that still must be made
is moving X-Road from a synchronous
communication mode to an asynchronous version of
communication. This could include publish,
subscribe messaging patterns. The CTO has called
this change introducing X-Rooms. X-Rooms would
allow more than one verified entity to be party to the
communication being passed and not require that both
entities be connected at the exact same time. This is
key for the vision to be achieved with virtual assistant
driven services.
With a PPP the Estonian authorities have
managed design, code, and test a system that uses AI
and ML for the benefit of the citizen while attempting
manage the difficulty points of these types of projects.
Limitations of the research are that the number of
interactions with stakeholders were few. The projects
are also not that far along. The specific partnership
potential with public virtual assistant providers is not
able to be discussed and legally very complex.
Because of these legal complexities, the options for
integration to make the chatbot POC able to use
virtual assistant capabilities would be conjecture.
Future work will take a specific case for which the
virtual assistant capability could be used, and follow
the business processes as well as specific technical
processes through to the end of the transaction. If
possible, an artefact will be designed to help solve a
technical issue pertinent to initiatives of similar
purpose.
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