AI for Health
We are mobilizing our efforts on the AI for Health Initiative to support researchers and organizations responding to COVID-19.

Understanding COVID-19
When communities have access to better data, they can make better decisions. We have developed interactive visualizations so everyone can understand the scope of the challenge – and the progress we are making towards ending the pandemic. Explore maps for COVID-19 Risk Levels, Progress to Zero (P0), Rt, Testing, and Spread Analysis.
Quest for discovery
Accelerating medical research to advance the prevention, diagnoses, and treatment of diseases.
Global health insights
Increasing our shared understanding of health and longevity to protect against global health crises.
Health equity
Reducing health inequity and improving access to care for underserved populations.
Research capabilities
Supporting fundamental research capabilities, including data collaboratives and differential privacy.

Reinventing ventilators to save lives
Professor Amanda Randles at Duke University is using the power of Azure to conduct hundreds of millions of simulations required to help more patients have access to critical ventilators.

Taking on the COVID-19 moonshot
A grassroots employee volunteer effort at Belgian biopharmaceutical company UCB has identified 150 new molecules that could potentially counteract replication of the SARS-CoV-2 virus and aid in drug therapies as part of the COVID-19 Moonshot initiative.

Building a community to find new cures
Folding@home, a distributed computing project at Washington University in St. Louis, is using AI to better understand the relationship between proteins and diseases with a goal of accelerating new therapeutics, including for COVID-19.

BRAC
Our community-based healthcare approach employs a wide network of community health workers to ensure that people living in poverty can access high quality, affordable services. Health workers are social entrepreneurs who ensure a continuum of care, bridging the gap between formal healthcare systems and communities.

COVID-19 High Performance Computing Consortium
The COVID-19 High Performance Computing Consortium, led by the White House, gives researchers access to world’s most powerful supercomputing resources that can help identify new ways to fight the virus.

Cascadia Data Discovery Initiative (CDDI)
The CDDI, led by the Fred Hutchinson Cancer Research Center, aims to establish a regional data sharing ecosystem. By enabling collaboration, data sharing, and research, the CDDI will help each participating organization advance its research capabilities and lead to health and science breakthroughs to help patients.

Institute for Health Metrics and Evaluation (IHME)
IHME, a global health research organization at the University of Washington School of Medicine, forecasts the COVID-19 pandemic, helping governors, hospital administrators, and vaccine makers mobilize resources.

Intelligent Retinal Imaging Systems (IRIS)
Diabetic retinopathy is a leading cause of blindness among working-aged adults across the world. Early detection can reduce the risk of blindness by up to 95%. Intelligent Retinal Imaging Systems (IRIS) can use AI to identify vision threatening forms of disease through the evaluation of images.

Novartis Foundation
Every year, there are over 200,000 new cases of leprosy but increasing early diagnosis can help limit transmission of the disease. We partnered with the Novartis Foundation to develop an AI-enabled digital health tool, which can accelerate early detection, helping the world toward leprosy elimination.

PATH
Using AI and data science, PATH works with underserved communities to improve the diagnosis of diseases like tuberculosis and cervical cancer, detect and respond to disease outbreaks, and support efficient and effective health systems.

Seattle Children’s Research Institute
Machine learning and data analytics are helping scientists at Seattle Children’s Research Institute uncover the root causes of breathing disorders like Sudden Infant Death Syndrome (SIDS).

Take
Take, the Brazilian leader in chatbots and the smart contacts market, developed a bot to bring official and credible information to the public and connect potential patients to medical teams to avoid overloading Brazilian hospitals.

University of California, Riverside
Harnessing GPU-enabled cloud resources, UC Riverside researchers utilized quantum-based methods to more accurately predict the effectiveness of proposed COVID-19 inhibitors and used CRISPR-Cas12a genome editing tools to better detect the virus.

University of Illinois at Urbana-Champaign (UIUC)
Researchers at UIUC are using GPU-enabled compute systems in various ways including designing peptide inhibitors and simulating the SARS-CoV-2 spike protein in a crowded viral environment.

University of Notre Dame
Notre Dame librarians have created a new way to do research by enabling access to curated sets of research literature in the cloud that can also be taken offline for analysis when students and researchers are not on campus due to lockdowns.