Coarse Grained Reconfigurable Arrays (CGRAs) are a promising class of architectures conjugating flexibility and efficiency. Devising effective methodologies to map applications onto CGRAs is a challenging task, due to their parallel execution paradigm and sparse interconnection topology. In this paper we present a scheduling framework that is able to efficiently map operations on CGRA architectures. It leverages differences in delays of various operations, which a reconfigurable architecture always exhibits at run-time, to effectively route data. We call this ability “slack-awareness”. Experimental evidence showcases the benefit of slack-aware scheduling in a coarse-grained re-configurable environment, as more complex applications can be mapped for a given mesh size and more efficient schedules can be achieved, compared to the state of the art methods.