measurements to compute the scaling factor values for each processor. This
operation, measurements and computing new scaling factor, can be repeated as
much as needed if the iterations are not regular. Kimura, Peraza, Yu-Liang et
-al.~\cite{11,2,31} used learning methods to select the appropriate scaling
+al.~\cite{11,2,31} used varied heuristics to select the appropriate scaling
factor values to eliminate the slack times during runtime. However, as seen
in~\cite{39,19}, machine learning methods can take a lot of time to converge
when the number of available gears is big. To reduce the impact of slack times,
\item It is well adapted to distributed architectures because it takes into
account the communication time.
\item It is well adapted to distributed applications with imbalanced tasks.
-\item it has very small footprint when compared to other methods
+\item It has very small footprint when compared to other methods
(e.g.,~\cite{19}) and does not require profiling or training as
in~\cite{38,34}.
\end{enumerate}
\section*{Acknowledgment}
-This work has been supported by the Labex ACTION project (contract
+This work has been partially supported by the Labex ACTION project (contract
``ANR-11-LABX-01-01''). Computations have been performed on the supercomputer
facilities of the Mésocentre de calcul de Franche-Comté. As a PhD student,
Mr. Ahmed Fanfakh, would like to thank the University of Babylon (Iraq) for