Genentech
Drug discovery research
Scientists spent weeks manually searching 38 million files. Agents now finish in minutes, saving 43,000 hours.
- Research tasks reduced from weeks to minutes
- Expected 43,000+ hours of manual effort automated
1,500 scientists manually searched 20,000 docs per drug. They now use generative AI to synthesize answers via voice or chat.
A multinational pharmaceutical corporation serving 1.3 billion patients, where the development of a single drug generates approximately 20,000 documents.
Scientists had to manually search through disparate tools and repositories to find historical data, a process that slowed research for 1,500 staff...
“To keep up with the pace of technology, somebody would constantly have to learn the technologies that AWS releases. Our collaboration with AWS lets Pfizer remain focused on the science yet use the breadth and depth of new technologies that AWS brings to the table.”
Global biopharmaceutical company focused on medicine and vaccine development.
Cloud computing platform and on-demand infrastructure services.
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