Scientists at the University of Illinois at Urbana-Champaign have successfully simulated living cells through the use of NVIDIA's GPUs. The cell simulated was a living minimal cell, which means the cell only has the minimal required genes to survive, function, and replicate. Despite this, a minimal cell still requires over two billion atoms.
With the use of NVIDIA GPUs processing over 7,000 genetic information simulations over the course of 20 minutes, a real-time 3D model of a living minimal cell was created. Scientists from the University of Illinois at Urbana-Champaign have stated that this is the most advanced and complex cell simulation to date. The software used for this simulation is called 'Lattice Microbes' which was co-developed by one of these scientists, Luthey-Schulten. Lattice Microbes is available for use from the NVIDIA NGC software hub.
Digitally Simulated Living Cells
Scientists Have Utilized NVIDIA GPUs to Simulate a Living Cell
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