International audienceSingle memristor crossbar arrays are a very promising approach to reduce the power consumption of deep learning accelerators. In parallel, the emerging bio-inspired Spiking Neural Networks (SNNs) offer very low power consumption with satisfactory performance on complex artificial intelligence tasks. In such neural networks, synaptic weights can be stored in non-volatile memories. These latter are massively read during inference, which can lead to device failure. In this context, we propose a 1S1R (1 Selector 1 Resistor) device composed by a HfO2-based OxRAM memory stacked on a Ge-Se-Sb-N-based Ovonic Threshold Switch (OTS) back-end selector for high-density Binarized SNNs (BSNNs) synaptic weight hardware implementation...