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Azure Announces 1.0.0 of Batch Shipyard

The Azure Big Compute team has announced the launch of 1.0.0 of Batch Shipyard, which enables simple deployment of Dockerized workloads to Azure Batch compute pools and allows users to run parallel jobs in the cloud. The solution is optimized for parametric sweeps, Deep Learning with NVIDIA GPUs, and simulations using MPI and InfiniBand, and can be used to run containerized jobs on thousands of machines.

Batch Shipyard combines features of Azure Batch (i.e. the ability to handle large-scale and complex VM deployment and management, high throughput, highly available job scheduling, and auto-scaling pay) with those of Docker containers. This allows for deployment consistency and isolation of batch-style and HPC containerized workloads at any scale without requiring developing directly to the Azure Batch SDK.

The initial version of Batch Shipyard features the following:

Azure has also released a directory of recipes on Github that enable Deep Learning, Computational Fluid Dynamics, Molecular Dynamics, and Video Processing on Batch Shipyard, along with sample batch-style Docker workloads.

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