Difference between revisions of "TensorBoard"

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[http://www.google.com/search?q=tensorboard+deep+machine+learning+ML ...Google search]
 
[http://www.google.com/search?q=tensorboard+deep+machine+learning+ML ...Google search]
  
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* [http://www.tensorflow.org/tensorboard TensorBoard: TensorFlow's visualization toolkit]
 
* [[TensorFlow]]
 
* [[TensorFlow]]
 
* [[TensorFlow Playground]]
 
* [[TensorFlow Playground]]
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* [[Graphical Tools for Modeling AI Components]]
 
* [[Graphical Tools for Modeling AI Components]]
  
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In machine learning, to improve something you often need to be able to measure it. TensorBoard is a tool for providing the measurements and visualizations needed during the machine learning workflow. It enables tracking experiment metrics like loss and accuracy, visualizing the model graph, projecting embeddings to a lower dimensional space, and much more. provides the visualization and tooling needed for machine learning experimentation:
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* Tracking and visualizing metrics such as loss and accuracy
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* Visualizing the model graph (ops and layers)
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* Viewing histograms of weights, biases, or other tensors as they change over time
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* Projecting embeddings to a lower dimensional space
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* Displaying images, text, and audio data
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* Profiling TensorFlow programs
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<youtube>qEQ-_EId-D0</youtube>
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<youtube>v9a240kjAx4</youtube>
 
<youtube>OI4cskHUslQ</youtube>
 
<youtube>OI4cskHUslQ</youtube>
 
<youtube>xM8sO33x_OU</youtube>
 
<youtube>xM8sO33x_OU</youtube>

Revision as of 12:58, 22 August 2020

YouTube search... ...Google search

In machine learning, to improve something you often need to be able to measure it. TensorBoard is a tool for providing the measurements and visualizations needed during the machine learning workflow. It enables tracking experiment metrics like loss and accuracy, visualizing the model graph, projecting embeddings to a lower dimensional space, and much more. provides the visualization and tooling needed for machine learning experimentation:

  • Tracking and visualizing metrics such as loss and accuracy
  • Visualizing the model graph (ops and layers)
  • Viewing histograms of weights, biases, or other tensors as they change over time
  • Projecting embeddings to a lower dimensional space
  • Displaying images, text, and audio data
  • Profiling TensorFlow programs