The traditional supply chain network planning problem is stated as a multi-period resource allocation model involving 0-1 discrete strategic decision variables. The MIP structure of this problem makes it fairly intractable for practical applications, which involve multiple products, factories, warehouses and distribution centres (DCs). The same problem formulated and studied under uncertainty makes it even more intractable. In this paper we consider two related modelling approaches and solution techniques addressing this issue. The first involves scenario analysis of solutions to "wait and see" models and the second involves a two-stage integer stochastic programming (ISP) representation and solution; of the same problem. We show how the results from the former can be used in the solution of the latter model. We also give some computational results based on serial and parallel implementations of the algorithms. (C) 2000 Elsevier Science B.V. All rights reserved.