When a sudden and unpredictable disaster places great demands on
humanitarian aid supply chains, there can be finite supply chain capacity into
the disaster zone. “Often, the wrong types of goods can be shipped-by
organizations that don’t have the ability to traverse the critical “last mile”
to the disaster site. The “coordination” attempt on the ground is nothing
more than marshaling of incoming goods and trying to get the most needed ones
through a constrained pipeline. Examples of where this has happened include
Haiti, the tsunami in Japan and the earthquake in Pakistan.”
Orchestrating disaster response depends not only on coordination, but on
the ability of aid organizations to collaborate with one another, access
information coming in from all directions, and derive actionable intelligence
from information. Humanitarian aid organizations like the IFRC,UNICEF, the Red Cross and others are beginning to meet these challenges with
the use of Big Data that gives them more complete views of how well aid is
working, and how they can optimize aid efforts. Just as importantly,
these organizations are beginning to use Big Data in new ways that can help
them in non-disaster aid efforts that have the power to preempt tragedy– if
they act swiftly enough, and apply the right solutions.
Improving crop yields
and agricultural practices in countries with high starvation and malnutrition
rates is one example. For years, non-profit aid organizations have been sending
in field workers to advise local farmers on best agricultural practices. These
workers file progress reports and keep tabs on agricultural projects to see if
crop yields improve.
The difficulty has
been in collecting all of these reports, which come in many different forms–and
then trying to glean insights into them after they become a monolithic body of
unstructured and semi-structured data. By using Big Data collection,
grooming and analytics techniques, humanitarian aid organizations are now able
to compile all of these unstructured reports of field farming activity into
databases-and then to mine these databases for information about which farming
projects are succeeding, which are not, and why.
These Big Data practices allow them to refine
their metrics and practices for improved outcomes. They are also tying in
weather reports with incidences of malaria and then breaking down malaria
outbreaks by age group—again, an example of how Big Data emanating from a
variety of collection points can be pulled together into a database and then
queried for meaningful aid
interventions.
Then there is Benetech,
which processes over 1.3 million downloads of accessibility-friendly books from
its online library for persons with disabilities like blindness and severe dyslexia.
The organization collects information on over 200,000 program participants, as
well as data on which books are most widely read. This information can provide
insights into the handicapped demographic, how best to serve it-and potentially
even intelligence on cognitive and motor skills.
This has resulted in interventions in both disaster and
non-disaster scenarios that have yielded more success and relief from
suffering-and just as importantly, less waste in situations that are always
resource-critical.
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