.. _glossary:
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Glossary
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.. glossary::
**Digital Imaging and Communications in Medicine (DICOM)**
This is the standard data format for medical imaging information and related data, and enables integration between medical imaging devices and picture archiving and communication systems (PACS).
**Federated learning**
Federated learning is a machine learning (ML) technique that trains an algorithm across multiple decentralized edge devices or servers holding local data samples, without exchanging them.
**Flower Framework**
Flower is an open-source framework for building federated learning systems. It provides tools and libraries to facilitate the development and deployment of federated learning applications. For more information, please see its `official documentation `_.
**NVIDIA FLARE**
NVIDIA Federated Learning Application Runtime Environment is a domain-agnostic, open-source, extensible SDK that allows researchers and data scientists to adapt existing ML/DL workflows to a federated paradigm.
For more information, please see the documentation `here `_.
**OMOP**
Observational Medical Outcomes Partnership (OMOP). In FLIP documentation, this typically refers to the OMOP Common Data Model (CDM) used to standardise clinical data for federated cohort queries.
**PACS**
Picture Archiving and Communication System (PACS), the clinical system used to store and retrieve medical imaging studies (such as DICOM series).
**RBAC**
Role Based Access Control (RBAC) defines what users are able to access within the FLIP platform.
**XNAT**
XNAT is an open-source imaging informatics platform used in FLIP to store, manage and access imaging data for research workflows. For more information on XNAT, please see the `documentation `_.