COLLAFUSE addresses challenges in generative artificial intelligence by optimizing denoising diffusion probabilistic models through collaborative learning. It enables shared server training while retaining computationally inexpensive processes locally, enhancing privacy and reducing data sharing needs. The framework impacts various fields like edge computing solutions, healthcare research, and autonomous driving. By introducing a cut-ratio parameter, COLLAFUSE aims to balance performance, privacy, and resource utilization effectively. Initial experiments with MRI brain scans support the hypotheses that collaborative learning improves image fidelity and reduces local computational intensity.
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