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Publication Years
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Category
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Toolboxes
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Strategical plan
An attempt has been made to map the incidence of uni-dimensional and multi-dimensional poverty simultaneously arguably for the first time in Pakistan. While multi-dimensional poverty map is calculated using PSLM 2010-11; small area estimation technique is utilized to map uni-dimensional poverty usin
...
g both nationally representative HIES (Household Integrated Economic Survey) and district-level representative PSLM (Pakistan Standard of Living Measurement) for the same year of 2010-11. The result indicates the existence of spatial distribution of poverty pockets in each of the four provinces of Pakistan. Furthermore, it is also observed that these pockets of poverty are more concentrated in the desert and mountains regions of the country.
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The BRACED Myanmar Alliance was a three-year project aiming to ‘build the resilience of 350,000 people across Myanmar to climate extremes’. The project worked in 7 states, 8 townships and 155 communities. The main impact for project populations was intended to be ‘improved well-being and reduc
...
ed loss and damage despite climate shocks’, and the project sought to do this by addressing immediate hazard-related needs at community level while encouraging longer-term solutions driven and delivered by communities and subnational and national government.
Community Resilience Assessments (CRAs) were the first activities delivered as part of the project, and the list of community-identified needs became the basis from which local-level project interventions were selected. The selection typically involved an infrastructure requirement (linked to addressing a natural hazard, and sometimes shared between communities); a package of livelihood support (assets and trainings); capacity-building on climate change/resilience topics; and village savings and loans association (VSLA) support. A particular emphasis was placed on women’s empowerment, and leadership trainings and support to women’s self-help groups were provided. more
Community Resilience Assessments (CRAs) were the first activities delivered as part of the project, and the list of community-identified needs became the basis from which local-level project interventions were selected. The selection typically involved an infrastructure requirement (linked to addressing a natural hazard, and sometimes shared between communities); a package of livelihood support (assets and trainings); capacity-building on climate change/resilience topics; and village savings and loans association (VSLA) support. A particular emphasis was placed on women’s empowerment, and leadership trainings and support to women’s self-help groups were provided. more
The International Organization for Migration (IOM) and partners from 27 humanitarian and development organisations and governments are appealing for USD 84 million to provide life-saving assistance to hundreds of thousands of African migrants and host community members affected by COVID-19 in the Ho
...
rn of Africa and Yemen. The many partners include the UN Children’s Fund (UNICEF), Save the Children, among others.
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The Central African Republic is at a major turning point in its history. The country
is just emerging from a very violent conflict, during which thousands of human lives were lost and one-third of the population was displaced. After
a three-year transition, and with the support of the internationa
...
l community, authorities successfully created the conditions required to conduct credible presidential and legislative
elections. Central African citizens mobilized to express their desire for peace and to break
with the cycle of past violence. Their exemplary democratic maturity ensured the electoral
process was peaceful, despite palpable tensions. The welcome given Pope Francis in Bangui in
November 2015 and visible reconciliation efforts demonstrate the population wishes to turn
the page on this conflict.
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Este documento resume la actual posición del
Departamento de Salud Mental y Toxicomanías para
asistir a las poblaciones expuestas a factores estresantes
extremos, como los refugiados, los desplazados
internos, los sobrevivientes de desastres y poblaciones
expuestas al terrorismo, a la guerra
...
o al genocidio.
more
Report commissioned by the IASC Inter-Agency Humanitarian Evaluations Steering Group as part of the Syria Coordinated Accountability and Lessons Learning Initiative
Disaster Recovery Toolkit
The report provides an overview of the disaster risk reduction and management in Nepal, a country under threat of multiple natural hazards: earthquakes, floods, landslides, fires, storms, the epidemics, and others. It presents background information on the country, its disaster profile, its legal an
...
d institutional framework, the country's achievements in regards to the Hyogo Framework for Action, and looks at the challenges and future steps in the area of disaster management in Nepal.
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The study analyses the intersection of gender with disability issues by combining economic and social analysis across four states in India by using both quantitative and qualitative methods including gender analysis of disability budgets.
The Multi-Cluster/Sector Initial Rapid Assessment (MIRA) is a joint needs assessment tool that can be used in sudden onset emergencies, including IASC System-Wide Level 3 Emergency Responses (L3 Responses).
Too important to fail - addressing the humanitarian financing gap
High-Level Panel on Humanitarian Financing Report to the Secretary-General
World Humanitarian Summit
(2016)
C1
Sphere unpacked
Series on Disability-Inclusive Development. This publication introduces the key concepts for disability-inclusive development and highlights practical examples by CBM, to contribute to the dialogue on disability-inclusive development
Progress report of the Human Rights Council Advisory Committee (A/HRC/33/53) (Advance edited version)
With the increase in frequency of disasters, there is a need to improve early warning systems (EWS) for EA to reduce the risks faced by children and their families. As a consequence, the term early warning, early action (EWEA) has become increasingly common among those responding to slow-onset disas
...
ters.
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