QuickStart TensorFlow
Tensorflow is a symbolic math library based on dataflow and differentiable programming.
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                           Use Global Protect VPN: Whether on or Off-Campus In the top menu bar access (globe icon). Be sure vpn-groups selected when you connect. 
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                           Start an SSH Session SSH your_netid@hpc.kennesaw.edu 
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                           To Test or Develop, Reserve a Node (for non-gpu) $ qsub -I -q batch -l nodes=1:ppn=24,walltime=1:00:00 
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                           To Test or Develop, Reserve a Node (gpu) $ qsub -I -q gpuq -l nodes=1:ppn=24:gpus=2,walltime=1:00:00 
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                           Due to the Variety of Ways TensorFlow is Used, It is Now Advised to Build Your Own Python Virtual Environment to Access a Recent Copy of TensorFlow You will want to utilize the Anaconda module to . From your Conda environment, you can have access to TensorFlow with GPU support that should work without a GPU. Once created, to use the environment in an interactive session or from within a PBS job submission script, you will need to load Anaconda and activate your new TensorFlow-aware conda environment. Step by step instructions have been prepared by the KSU Sysadmins on the KSU HPCdocs wiki: . 
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                           Write a Job Submission Script (run_tf2.pbs) Check the at hpcdocs. 
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                           Submit Your Job to the Scheduler Use the qsub sumission example at the bottom of the . 
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                           TensorFlow Tutorials and Guides Visit . 
