We consider the parallel approximability of two problems arising
from high multiplicity scheduling, namely the unweighted
model with variable processing requirements and the weighted model with identical processing requirements. These two
problems are known to be modelled by a class of quadratic programs
that are efficiently solvable in polynomial time. On the parallel
setting, both problems are P-complete and hence cannot be
efficiently solved in parallel unless P = NC. To deal with the
parallel approximablity of these problems, we show first a
parallel additive approximation procedure to a subclass of
multi-valued quadratic programming, called smooth multi-valued
QP, which is defined by imposing certain restrictions on
the coefficients of the instance. We use this procedure to obtain
parallel approximation to dense instances
of the two problems by observing that dense
instances of these problems are instances of smooth multi-valued
QP. The dense instances of the problems
considered here are defined similarly as for other combinatorial
problems in the literature. For such instances we can find in
parallel a near optimal schedule. The definition of smooth
multi-valued QP as well as the procedure for
approximating it in parallel are of interest independently of the
application to the scheduling problems considered in this paper.