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facs UI

FACS - Flu And Coronavirus Simulator

Agent based modelling tool to simulate spread of flu and coronavirus in a local region
Sign-in page

Preparedness Pandemic Training tool (PPT)

This is a scenario builder tool, in which a trainer is able to create simple or complex training scenarios and execute them in order to perform exercises
CAE GESI-SiTA Classroom setup

CAE GESI-SiTA Classroom Trainer

The CAE GESI-SiTA classroom trainer offers a unique foundation to experience and learn tactical basics at a new level of detail and interactivity.
XVR Crisis Media in use in an emergency management exercise

XVR Crisis Media

With XVR Crisis Media you can train how to manage and monitor communication from news media, social media and internal communication sources in a crisis situation.
Mixed reality shown in glasses

Mixed Reality Glasses

Using mixed-reality glasses to train, inform and warn the first responders
CAE GESI-based exercise image

CAE GESI

CAE GESI provides an environment for emergency managers and their staff to plan, test, and train their response strategies in a safe and controlled environment.
Screenshots of natural disaster scenes

XVR On Scene

XVR On Scene provides 3D virtual reality simulation of an incident scene. Instructors can build any type of incident to educate, train or assess operational and tactical first responders and incident commanders, either individually or in teams.
AIR Worldwide

AIR's Life and Health Models

AIR models help to anticipate the drivers of mortality and morbidity risk to facilitate optimal risk management, risk transfer, and risk mitigation decisions that align with organisation's strategic goals.
EWS main components

ML-Based Early Warning System

ML-Based Early Warning System is responsible to provide the necessary notifications (warnings and/or alerts) to the end users in case of potential outbreaks taking into consideration certain rules and patterns based on Machine Learning models. Support users in order to identify needs on material resources, while assist authorities to monitor and validate the effectiveness of policies and measures that are applied.
mHero

mHero

a two-way, mobile phone-based communication system that uses basic text messaging, or SMS, to connect ministries of health and health workers. mHero operates on simple talk-and-text mobile devices—no smartphone or tablet required.
AIR models architecture (both Single Task Learning and Multi-Task Learning)

Antimicrobial Resistance Model (AIR)

AIR is a Deep Neural Network (DNN) model used for predicting the excess mortality due to antimicrobial resistance. Additionally, it incorporates patient’s contextual epidemiological and infectious information.
WN cycle

BIMS_WN West Nile epidemics model. 

The BIMS_WN model is a muti-agent model whose goal is to predict the occurrence of a WN epidemic using climate and bird migration and movement data.
Flee logo

Flee - Predictive Modelling Tool

Flee is an agent-based modelling code used to model (forced) migration and other movements across country borders.
GUI

Preparedness for Decision Making in Crisis

PROCeed is a computer system which prepares its users for proper decision-making in crisis situations.
ScenarioExecution_INPRERScenarioBuildingTool

Scenario Building Tool

A dynamic tool regarding multiple hazard scenarios simulation for the training civil protection actors
GLEAMviz logo

Global Epidemic and Mobility simulator (GLEAM)

The Global Epidemic and Mobility simulator (GLEAM) is a realistic simulator of infectious disease spreading and pandemic outbreaks, based on a stochastic metapopulation model that uses real-world data about census and mobility.
eu Portfolio of Solutions web site has been initially developed in the scope of DRIVER+ project. Today, the service is managed by AIT Austrian Institute of Technology GmbH., for the benefit of the European Management. PoS is endorsed and supported by the Disaster Competence Network Austria (DCNA) as well as by the STAMINA and TeamAware H2020 projects.