International audienceToday computing centric von Neumann architectures face strong limitations in the data-intensive context of numerous applications, such as deep learning. One of these limitations corresponds to the well known von Neumann bottleneck. To overcome this bottleneck, the concepts of In-Memory Computing (IMC) and Near-Memory Computing (NMC) have been proposed. IMC solutions based on volatile memories, such as SRAM and DRAM, with nearly infinite endurance, solve only partially the data transfer problem from the Storage Class Memory (SCM). Computing in SCM is extremely limited by the intrinsic poor endurance of the Non-Volatile Memory (NVM) technologies. In this paper, we propose to take the best of both solutions, by introducin...