Difference between revisions of "AI Help"

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=== PyTorch===  
 
=== PyTorch===  
 
'''[[PyTorch]]''' is deep learning framework developed by Facebook AI Research Lab and has interfaces for Python, Java, and C++. It supports training on both GPU and CPUs, as well as distributed training and multi-GPU models.
 
'''[[PyTorch]]''' is deep learning framework developed by Facebook AI Research Lab and has interfaces for Python, Java, and C++. It supports training on both GPU and CPUs, as well as distributed training and multi-GPU models.
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=== Tensorflow/Keras ===
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'''[[TensorFlow]]''' is an open-source AI framework/platform developed by Google Brain team. '''[[Keras]]''' is an open-source neural network library which can be run on top of TensorFlow. With TensorFlow 2.0, the Keras API has been integrated in TensorFlow's core library and serves as a high-level programming interface that uses TensorFlow as a backend. It supports both GPU and CPUs, as well as multi-GPU and distributed training. APIs are available for Python, Java, Go and C++.

Revision as of 22:20, 2 February 2021

AI Software

A comprehensive software stack for AI research is available on HiPerGator for both CPU and GPU accelerated applications.

AI Frameworks

AI frameworks provide building blocks for designing and training machine learning and deep learning models. The following AI frameworks are available on HiPerGator.

PyTorch

PyTorch is deep learning framework developed by Facebook AI Research Lab and has interfaces for Python, Java, and C++. It supports training on both GPU and CPUs, as well as distributed training and multi-GPU models.

Tensorflow/Keras

TensorFlow is an open-source AI framework/platform developed by Google Brain team. Keras is an open-source neural network library which can be run on top of TensorFlow. With TensorFlow 2.0, the Keras API has been integrated in TensorFlow's core library and serves as a high-level programming interface that uses TensorFlow as a backend. It supports both GPU and CPUs, as well as multi-GPU and distributed training. APIs are available for Python, Java, Go and C++.