Applying
artificial intelligence for social good PART I
AI is not a silver bullet, but it could help
tackle some of the world’s most challenging social problems.
Artificial
intelligence (AI) has the potential to help tackle
some of the world’s most challenging social problems. To analyze potential applications
for social good, we compiled a library of about 160 AI social-impact use cases.
They suggest that existing capabilities could contribute to tackling cases
across all 17 of the UN’s sustainable-development goals, potentially helping
hundreds of millions of people in both advanced and emerging countries.
Real-life examples of AI are already being
applied in about one-third of these use cases, albeit in relatively small
tests. They range from diagnosing cancer to helping blind people navigate their
surroundings, identifying victims of online sexual exploitation, and aiding
disaster-relief efforts (such as the flooding that followed Hurricane Harvey in
2017). AI is only part of a much broader tool kit of measures that can be used
to tackle societal issues, however. For now, issues such as data accessibility
and shortages of AI talent constrain its application for social good.
This article is a condensed version of our
discussion paper, Notes from the AI frontier: Applying AI for social good . It looks at domains of social good where AI could be
applied, and the most pertinent types of AI capabilities, as well as the
bottlenecks and risks that must be overcome and mitigated if AI is to scale up
and realize its full potential for social impact.
The article is divided into five sections:
1. Mapping AI use
cases to domains of social good
2. AI capabilities
that can be used for social good
3. Overcoming
bottlenecks, especially around data and talent
4. Risks to be
managed
5. Scaling up the
use of AI for social good
1.
Mapping AI use cases to domains of social good
For the purposes of this research, we
defined AI as deep learning. We grouped use cases into ten social-impact
domains based on taxonomies in use among social-sector organizations, such as
the AI for Good Foundation and the World Bank. Each use case highlights a type
of meaningful problem that can be solved by one or more AI capability. The cost
of human suffering, and the value of alleviating it, are impossible to gauge
and compare. Nonetheless, employing usage frequency as a proxy, we measure the
potential impact of different AI capabilities.
For about one-third of the use cases in
our library, we identified an actual AI deployment (Exhibit 1). Since many of
these solutions are small test cases to determine feasibility, their
functionality and scope of deployment often suggest that additional potential
could be captured. For three-quarters of our use cases, we have seen solutions
deployed that use some level of advanced analytics; most of these use cases,
although not all, would further benefit from the use of AI techniques. Our library is not exhaustive and
continues to evolve, along with the capabilities of AI.
Exhibit 1 SEE ORIGINAL ARTICLE
Crisis response
These are specific crisis-related
challenges, such as responses to natural and human-made disasters in search and
rescue missions, as well as the outbreak of disease. Examples include using AI
on satellite data to map and predict the progression of wildfires and thereby
optimize the response of firefighters. Drones with AI capabilities can also be
used to find missing persons in wilderness areas.
Economic empowerment
With an emphasis on currently vulnerable
populations, these domains involve opening access to economic resources and
opportunities, including jobs, the development of skills, and market information.
For example, AI can be used to detect plant damage early through low-altitude
sensors, including smartphones and drones, to improve yields for small farms.
Educational challenges
These include maximizing student
achievement and improving teachers’ productivity. For example,
adaptive-learning technology could base recommended content to students on past
success and engagement with the material.
Environmental challenges
Sustaining biodiversity and combating the
depletion of natural resources, pollution, and climate change are challenges in
this domain. (See Exhibit 2 for an illustration on how AI can be used to catch
wildlife poachers.) The Rainforest Connection, a Bay Area nonprofit,
uses AI tools such as Google’s TensorFlow in conservancy efforts across the
world. Its platform can detect illegal logging in vulnerable forest areas by
analyzing audio-sensor data.
Exhibit 2 SEE ORIGINAL ARTICLE
Equality and inclusion
Addressing challenges to equality,
inclusion, and self-determination (such as reducing or eliminating bias based
on race, sexual orientation, religion, citizenship, and disabilities) are
issues in this domain. One use case, based on work by Affectiva, which was spun
out of the MIT Media Lab, and Autism Glass, a Stanford research project,
involves using AI to automate the recognition of emotions and to provide social
cues to help individuals along the autism spectrum interact in social
environments.
Health and hunger
This domain addresses health and hunger
challenges, including early-stage diagnosis and optimized food distribution.
Researchers at the University of Heidelberg and Stanford University have
created a disease-detection AI system—using the visual diagnosis of natural
images, such as images of skin lesions to determine if they are
cancerous—that outperformed professional dermatologists. AI-enabled wearable devices can
already detect people with potential early signs of diabetes with 85 percent
accuracy by analyzing heart-rate sensor data. These devices, if sufficiently affordable, could help
more than 400 million people around the world afflicted by the disease.
Information verification and validation
This domain concerns the challenge of
facilitating the provision, validation, and recommendation of helpful,
valuable, and reliable information to all. It focuses on filtering or
counteracting misleading and distorted content, including false and polarizing
information disseminated through the relatively new channels of the internet and
social media. Such content can have severely negative consequences, including
the manipulation of election results or even mob killings, in India and Mexico, triggered by the
dissemination of false news via messaging applications. Use cases in this
domain include actively presenting opposing views to
ideologically isolated pockets in social media.
Infrastructure management
This domain includes infrastructure
challenges that could promote the public good in the categories of energy,
water and waste management, transportation, real estate, and urban planning.
For example, traffic-light networks can be optimized using real-time traffic camera data and Internet of Things (IoT)
sensors to maximize vehicle throughput. AI can also be used to schedule
predictive maintenance of public transportation systems, such as trains and
public infrastructure (including bridges), to
identify potentially malfunctioning components.
Public and social-sector management
Initiatives related to efficiency and the
effective management of public- and social-sector entities, including strong
institutions, transparency, and financial management, are included in this
domain. For example, AI can be used to identify tax fraud using alternative
data such as browsing data, retail data, or payments history.
Security and justice
This domain involves challenges in society
such as preventing crime and other physical dangers, as well as tracking
criminals and mitigating bias in police forces. It focuses on security,
policing, and criminal-justice issues as a unique category, rather than as part
of public-sector management. An example is using AI and data from IoT devices
to create solutions that help firefighters determine safe paths through burning
buildings.
Our use-case domains cover all 17 of the UN’s Sustainable
Development Goals
The United
Nations’ Sustainable Development Goals (SDGs) are among the best-known and most
frequently cited societal challenges, and our use cases
map to all 17 of the goals, supporting some aspect of each one (Exhibit 3). Our
use-case library does not rest on the taxonomy of the SDGs, because their
goals, unlike ours, are not directly related to AI usage; about 20 cases in our
library do not map to the SDGs at all. The chart should not be read as a
comprehensive evaluation of AI’s potential for each SDG; if an SDG has a low
number of cases, that reflects our library rather than AI’s applicability to
that SDG.
Exhibit 3 SEE ORIGINAL ARTICLE
By Michael Chui, Martin Harrysson, James Manyika, Roger Roberts, Rita Chung, Pieter Nel, and Ashley van Heteren
https://www.mckinsey.com/featured-insights/artificial-intelligence/applying-artificial-intelligence-for-social-good?cid=other-eml-alt-mgi-mck-oth-1811&hlkid=485b551e30be4defadc2592045042ed6&hctky=1627601&hdpid=465daed6-1d79-427b-9ff3-417da5844a17
CONTINUES IN PART II
1 comment:
Relevant information to know that AI help tackle some of the world's most challenging social problems and to analyze potential applications for social good.
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