CARE
Survey data analysis
Manual analysis delayed emergency prep by a month. AI now synthesizes feedback in 30 minutes, helping teams fix readiness gaps faster.
- 20% of staff time freed for service
- Analysis time cut from weeks to 30 mins
Spreadsheets delayed reports for 5 hours. AI analyzes remote triage data in minutes, cutting recurring medical issues by 15%.
A global nonprofit providing cleft surgeries and medical training in low-resource environments worldwide, often operating in areas with limited internet connectivity.
Medical teams relied on manual spreadsheets to track worldwide performance, requiring four to five hours to generate a single report. Language...
“Creating access to care relies on real-time data, which enables us to better understand patients, their needs, and the challenges they face. Insights from Microsoft Azure OpenAI Service allow us to deliver more effective care and create a lasting impact in communities.”
Non-profit providing free cleft lip and palate surgeries for children worldwide.
Enterprise software, cloud infrastructure, and consumer electronics platform.
Architected and deployed Azure AI solutions and Power Apps to digitalize registration for Operation Smile.
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Manual analysis delayed emergency prep by a month. AI now synthesizes feedback in 30 minutes, helping teams fix readiness gaps faster.
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