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In vertical federated learning, parties hold different features of a dataset, while in horizontal settings, each party holds all features for a subset of the population.NVIDIA FLARE, an open-source SDK, supports this federated learning framework by managing communication challenges and ensuring seamless operation across various network conditions.

Federated XGBoost operates under an assumption of full mutual trust, but NVIDIA acknowledges that in practice, participants may attempt to glean additional information from the data, necessitating enhanced security measures.To mitigate potential data leaks, NVIDIA has integrated homomorphic encryption (HE) into Federated XGBoost.

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