Biomedical Research Data Platform for clinical insights at scale

Logo
Presented by

Travis Richardson, Alex Porter and Brad Genereaux

About this talk

Scientific discoveries are harder than they look. Data scientists can spend up to 80% of their time collecting, prepping, and accessing disparate data repositories.  In biomedical research, these lengthy and time-consuming processes can negatively affect clinical study timelines, the quality of collaboration between experts, and in some cases, patient outcomes.  We’re changing that.  With Flywheel, NVIDIA, and HPE, researchers can streamline complex data management, optimize large-scale GPU processing, and safe sharing with a robust, distributed ML framework on a secure unified cloud model.  Biomedical researchers in life sciences, clinical, and academic institutions can automate data capture and improve data curation tasks from diverse, real-world sources in one place to accelerate discovery. In this webinar you hear from the foremost experts Alex Porter (HPE), Brad Genereaux (NVIDIA), and Travis Richardson (Flywheel) and how they have working together, to deliver an environment the meets three clear needs;. - Provide a readymade cloud-like data platform for AI application development and testing.    - Enable multi-centre collaboration at enterprise speed and scale in a managed environment. - Promote Data sharing to meet the need for NIH data sharing mandates securely. Speakers: Travis Richardson, Chief Strategy Officer, Flywheel Alex Porter, Global GreenLake Healthcare and Life Sciences Lead, HPE  Brad Genereaux, Global Lead Healthcare Alliances, NVIDIA
Related topics:

More from this channel

Upcoming talks (0)
On-demand talks (11)
Subscribers (1237)
HPE and NVIDIA deliver an industry-leading portfolio of optimized artificial intelligence (AI) solutions that provide the technology power and consumption flexibility you need to transform your business. NVIDIA’s pioneering systems, apps, and models combined with the expertise and comprehensive set of computing and infrastructure breakthroughs from HPE can help you unlock the value of AI and lead to data-first modernization. Together, we enable your business to gain deeper insights and maintain your competitive edge. • Tap into the right expertise For custom NVIDIA-based AI and edge deployments, work with experienced advisory and professional services teams to leverage our tested HPE Cloud Adoption Framework. • Optimize IT Quickly spin up containerized AI and machine learning environments and offload management of your data science ecosystem so you can deploy resources and capacity to reach better business outcomes. • Achieve faster time to value Streamline AI and high performance computing workloads across business units to improve performance, helping data scientists, developers, IT teams, and researchers get back to building solutions, gathering insights, and accelerating time to value. • Pay only for what you need Stay ahead of the variability of AI, ML, and HPC workloads and reduce infrastructure costs with active capacity management based on a pay-per-use model. By operationalizing systems with the flexibility you need for GPU workloads, you save significant overhead expenses. • Fully managed Offload the burden of operating IT and free up resources with a fully managed and supported NVIDIA GPU environment. See how HPE and NVIDIA together deliver real-time AI with game-changing insights at the intelligent edge.