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keras-tuner reviews and mentions
- Is there any premade evolutionary algorithm selecting optimal NN architectures in TensorFlow ?
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What has priority in the performance?
If you are using tensorflow, you can do all of that with the very elegant (in my opinion) https://keras.io/keras_tuner/
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Space Science with Python - Asteroids meet Deep Learning #10
today I'd like to show you how to optimize a Conv1D network using Keras-Tuner. It enables one to automatically test some pre-defined networks; or it applies Bayesian or Hyperband optimization to find the best model!
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How to know how many layers (LSTM and dense) should I create and how to know the right parameters? (beginner)
Tbh, just try and error. There is no right or wrong. You can use the Hyperparameter Tuner from keras to define some architectures with varying number of layers and units as well as some other hyperparameters.
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A note from our sponsor - WorkOS
workos.com | 25 Apr 2024
Stats
keras-team/keras-tuner is an open source project licensed under Apache License 2.0 which is an OSI approved license.
The primary programming language of keras-tuner is Python.
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