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arxiv 2407.00031 v2 pith:I5TYQ75Z submitted 2024-05-21 cs.DC cs.SE

Supercharging Federated Learning with Flower and NVIDIA FLARE

classification cs.DC cs.SE
keywords flowerflareapplicationsintegrationenvironmentfederatedinitiallearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Several open-source systems, such as Flower and NVIDIA FLARE, have been developed in recent years while focusing on different aspects of federated learning (FL). Flower is dedicated to implementing a cohesive approach to FL, analytics, and evaluation. Over time, Flower has cultivated extensive strategies and algorithms tailored for FL application development, fostering a vibrant FL community in research and industry. Conversely, FLARE has prioritized the creation of an enterprise-ready, resilient runtime environment explicitly designed for FL applications in production environments. In this paper, we describe our initial integration of both frameworks and show how they can work together to supercharge the FL ecosystem as a whole. Through the seamless integration of Flower and FLARE, applications crafted within the Flower framework can effortlessly operate within the FLARE runtime environment without necessitating any modifications. This initial integration streamlines the process, eliminating complexities and ensuring smooth interoperability between the two platforms, thus enhancing the overall efficiency and accessibility of FL applications.

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