\begin{thebibliography}{1}

\bibitem{Stiller10}
B.~Stiller, T.~Bocek, F.~Hecht, G.~Machado, P.~Racz, and M.~Waldburger,
  ``{Mobile Systems IV},'' tech. rep., University of Zurich, Department of
  Informatics, 01 2010.

\bibitem{Werth2021}
J.~Werth, ``{LSTM for Predictive Maintenance on Pump Sensor Data}.''
  \url{https://towardsdatascience.com/lstm-for-predictive-maintenance-on-pump-sensor-data-b43486eb3210},
  2021.
\newblock [Online; accessed 22-November-2022].

\bibitem{gkamas22}
T.~Gkamas, V.~Karaiskos, and S.~Kontogiannis, ``Performance {E}valuation of
  {D}istributed {D}atabase {S}trategies using {D}ocker as a {S}ervice for
  {I}ndustrial {IoT} {D}ata: {A}pplication to {I}ndustry 4.0,'' {\em
  Information}, vol.~13, no.~4, 2022.

\bibitem{gkamas22c}
T.~Gkamas, S.~Kontogiannis, V.~Karaiskos, C.~Pikridas, and I.~A. Karolos,
  ``Proposed cloud-assisted machine learning classification process implemented
  on industrial systems: Application to critical events detection and
  industrial maintenance,'' in {\em 5th {W}orld {S}ymposium on {C}ommunication
  {E}ngineering {(WSCE)}}, pp.~95--99, 2022.

\bibitem{leukel2021}
J.~Leukel, J.~González, and M.~Riekert, ``Adoption of machine learning
  technology for failure prediction in industrial maintenance: A systematic
  review,'' {\em Journal of Manufacturing Systems}, vol.~61, pp.~87--96, 2021.

\end{thebibliography}
