Current Scanning Electron Microscopy (SEM) acquisition techniques are far too slow to capture large volumes in a feasible time. One solution is to use low-dose and sparse imaging. By computationally denoising and inpainting an image with acceptable quality can be approximated. This approach, however, requires significant compute resources. Therefore, this paper proposes CELR, a framework, that hides the computationally expensive workload of reconstructing low-dose sparse SEM images, such that (delayed) live reconstruction is possible. Live reconstruction is possible by using Convolutional Neural Networks (CNNs) that approximate a classical reconstruction algorithm like GOAL. The reconstruction by CNNs is done locally, while recurring traini...