It has been a while since Approximate Computing (AxC) is applied systematically at various abstraction levels to increase the efficiency of several applications such as image processing and machine learning. Despite its benefit, AxC is still agnostic concerning the specific workload (i.e., input data to be processed) of a given application. For instance, in signal processing applications (such as a filter), some inputs are constants (filter coefficients). Meaning that a further level of approximation can be introduced by considering the specific input distribution. This approach has been referred to as “input-aware approximation”. In this paper, we explore how the input-aware approximate design approach can become part of a systematic, gene...