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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
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TensorFlow Federated

Open-source framework developed by Google for federated learning, integrated with TensorFlow and enabling simulation and deployment of distributed learning algorithms on decentralized data.

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PySyft

Open-source Python library for federated learning and privacy preservation, combining PyTorch with cryptography and secure secret sharing techniques.

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Flower Framework

ML framework-agnostic federated learning framework, offering a flexible architecture for deploying federated learning systems with heterogeneous clients and customizable aggregation strategies.

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FedML

Research and production library for federated learning, MLOps and benchmarking, providing a comprehensive platform for developing and deploying large-scale federated learning applications.

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OpenFL

Open-source framework for federated learning in healthcare and medical environments, developed by Intel and specifically designed for HIPAA privacy and compliance requirements.

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Substrato

Open-source federated learning platform based on Kubernetes, enabling orchestration of distributed learning workloads with enhanced isolation and security between participants.

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LEAF

Open-source benchmark for federated learning, providing realistically partitioned datasets and reference implementations for evaluating algorithms under heterogeneous conditions.

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FedAvg

Fundamental aggregation algorithm in federated learning performing weighted averaging of client local models based on their dataset sizes, serving as the basis for many variants.

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FedProx

Extension of FedAvg adding a proximal regularization term to the local objective to handle system and statistical heterogeneity between clients, improving convergence in non-IID environments.

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SCAFFOLD

Federated learning algorithm correcting client-server gradient drift by using control variables to stabilize training in highly heterogeneous scenarios.

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FedBN

Federated learning technique preserving local Batch Normalization statistics for each client, allowing better management of non-IID data distributions among participants.

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FedOpt

Family of server optimizers for federated learning applying adaptive optimization methods like Adam or Yogi directly to the global model aggregation process.

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FedPer

Federated learning approach separating model parameters into base (globally shared) and personalized (local), enabling effective customization while preserving collaboration.

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Aggregation Server

Central component in federated architecture collecting local updates from clients, executing the aggregation algorithm and distributing the updated global model to participants.

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Client Library

Set of client-side software tools implementing communication protocols, secure local training and model lifecycle management in a federated learning system.

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Secure Aggregation

Cryptographic protocol allowing the server to aggregate model updates without accessing individual client updates, thus preserving the confidentiality of local contributions.

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Homomorphic Encryption

Cryptographic technique allowing computations to be performed directly on encrypted data, used in federated learning to aggregate models without ever decrypting client contributions.

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