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1
The compendium compiles practical case studies on the use of Geospatial Artificial Intelligence (GeoAI) to enhance disaster risk reduction and emergency response across diverse geographic and institutional contexts.
The compendium features selected case studies submitted by twenty-seven Regional Su
...
pport Offices (RSOs) working across Asia, Africa, Latin America, and Europe. These examples highlight how GeoAI, is being used to forecast floods, map wildfire risk, assess landslide susceptibility, monitor droughts, and support emergency response. Each project demonstrates how cloud-based platforms and machine learning tools help governments act faster and more precisely when disaster strike.
more
The COVID-19 pandemic is the most severe health crisis in a century, exposing deep gaps in the world’s defences against epidemics and pandemics, and teaching us painful
lessons. One of them is that in our intimately connected world, pathogens can spread around the world very quickly, demanding sy
...
stems that can respond equally quickly. That
includes systems to facilitate the rapid exchange of biological materials and related data, to support the development of guidance and medical countermeasures including vaccines,
tests and treatments.
Based on the lessons that COVID-19 was teaching us, World Health Organization announced the
establishment of the WHO BioHub System at the height of the pandemic, in January 2021. Developed collaboratively and iteratiely with the active engagement of Member States and other partners, the BioHub System has now been through a pilot-testing phase that has demonstrated its value as a multilateral model and a tangible asset that Member States can harness to bolster their preparedness against emergent viral threats.
more
Emergency Medical Teams 2030 strategy
recommended
The Emergency Medical Teams (EMT) initiative plays a vital role in building this stronger and
more resilient global health emergency architecture, both by driving its formation and by
contributing to a rapidly deployable global health emergency corps. The Initiative and EMTs
bring something uniqu
...
e to health emergency preparedness and response – they bring
standards, professionalism, reliability, scalability, coordination, and the ability and willingness to
rapidly deploy wherever and whenever they are most needed. Most importantly, EMTs save lives.
more
This edition provides detailed guidance on essential components such as infrastructure, human resources, equipment, logistics, governance, and monitoring and evaluation (M&E). These elements are crucial for the successful establishment and sustainable operation of NPHIs, which are envisioned as Cent
...
res of Excellence for public health in Africa.
more
Recognizing this need and the role of NPHIs in ensuring health security across the continent, the Africa CDC has prioritized the strengthening of NPHIs as a critical pillar of both the New Public Health Order and the Africa CDC Strategic Plan 2023-2027. To aid the realization of this goal, the Afric
...
a CDC has developed a Plan for the Development of National Public Health Institutes in Africa 2025-2027. The goal is to ensure that NPHIs are not only present in every Member State but are also empowered with the necessary legal frameworks, resources and expertise to effectively lead Africa’s health security efforts.
more
Key resources include the Manual for Disaster Response Teams, which helps experts plan public communication, exchange information, and manage media, ensuring crucial data reaches humanitarian actors
This toolkit lays out a framework for a waterborne disease investigation and consolidates resources to assist investigation activities.
The Waterborne Disease Outbreak Investigation Toolkit was designed to assist state and local health departments in conducting waterborne disease outbreak invest
...
igations. Using experiences of epidemiologists at the state and local levels, this toolkit describes best practices in preparing for, identifying, and responding to a waterborne disease outbreak.
more
This document compiles best practices in emergency supply chain preparedness so that countries
can respond rapidly and effectively to epidemic and pandemic threats. Such a response requires a well-functioning supply chain
This guidance document, titled 'Preparedness Enabler's Guide (PEG)', published in May 2023, aims to promote effective and sustainable localization in humanitarian preparedness through insights and practical tools derived from the Global Logistics Cluster's experience.
The Demographic Dividend study on Rwanda assessed the socio-economic and human development potential of our country in the short, medium and long-term period using a comprehensive approach. It generated relevant policy and programme information to guide a well-informed polciy required to propel Rwan
...
da towards achieving its aspirations of being high middle income country by 2035 and high income country by 2050.
The primary objectives of this study were to assess Rwanda’s prospects for harnessing the demographic dividend and demonstrate priority policy and programme options that the country should adopt in order to optimise its chances of earning a maximum demographic dividend in the context of its youthful population and medium, long-term socio-economic development aspirations.
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2016 revision