How to scale data science for innovation across healthcare and life sciences
ON DEMAND | Originally Aired March 23, 2022
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How Arthur D. Little is helping companies transform their business
Can data science increase the likelihood and velocity of scientific discoveries making it into clinical practice? How has COVID-19 accelerated digital transformation, and what innovation in AI and machine learning has this driven?
In this on demand webinar, you'll hear from Michael Eiden, Global Head of AI and Machine Learning and Greg Smith, Partner, at Arthur D. Little, as they discuss the journeys they've taken with client companies in deploying data science at scale.
They'll highlight their recent work with one established pharmaceutical company and how their adoption of Enterprise MLOps:
- Expedited clinical trials by developing new models up to 1.5 times faster
- Drove 30% productivity gains through automation and standardization of key processes
- Enabled seamless collaboration between their staff and clients
We've also included a demonstration of how Domino modernizes statistical computing.
Meet the speakers
Dr. Michael Eiden
Global Head of AI/ML, Arthur D. Little
Michael is an Associate Director and a member of the Digital Problem Solving team. Michael leads ADL’s data science team and delivers innovative state-of-the-art AI/ML solutions addressing complex problems in a variety of different industries.
Greg Smith
Managing Partner, Arthur D. Little
Greg is a Managing Partner at Arthur D. Little, and leader of Digital Problem Solving practice. Greg focuses on how emerging digital technologies and associated ways of working can be harnessed to drive the transformation of the business, either to breakthrough problems or to seize new opportunities.
Find out how the adoption of MLOps helped drive 30% productivity gains
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