Advances in machine learning and neuromorphic systems are fuelled by the development of architectures required for these applications, such as content addressable memory. In an attempt to address this need, this paper presents a new RRAM tuned window comparator, building upon existing work in reconfigurable computing. The circuit uses a low component count at 6T2R2M, comparable with the most compact existing cells of this type. This paper will present this design, demonstrating its operation with TiOx memristive devices, showing its controllability and specificity. This paper will then simulate the energy dissipated in its operation, showing it to be below 100pJ per test, comparable to existing works.