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Prediction #16

@0xecute

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@0xecute

Hi,
First, thanks for your code and tutorial, it is really interesting! I learned a lot.

Second, I have a question but I feel pretty stupid asking that since I got the impression I m missing the obvious :/
I did train my IA with all the stock_count (100 actually) and I would like to test how it will predict the price of GOOG.

So I did:

# python main.py --stock_symbol=GOOG --input_size=1 --lstm_size=128 --embed_size=8
{'batch_size': 64,
 'embed_size': 8,
 'init_epoch': 5,
 'init_learning_rate': 0.001,
 'input_size': 1,
 'keep_prob': 0.8,
 'learning_rate_decay': 0.99,
 'lstm_size': 128,
 'max_epoch': 50,
 'num_layers': 1,
 'num_steps': 30,
 'sample_size': 4,
 'stock_count': 100,
 'stock_symbol': 'GOOG',
 'train': False}
2018-02-14 14:47:55.716691: W tensorflow/core/platform/cpu_feature_guard.cc:45] The TensorFlow library wasn't compiled to use SSE4.1 instructions, but these are available on your machine and could speed up CPU computations.
2018-02-14 14:47:55.716715: W tensorflow/core/platform/cpu_feature_guard.cc:45] The TensorFlow library wasn't compiled to use SSE4.2 instructions, but these are available on your machine and could speed up CPU computations.
inputs.shape: (?, 30, 1)
inputs_with_embed.shape: (?, 30, 9)
/home/mike/anaconda3/envs/IA/lib/python2.7/site-packages/tensorflow/python/ops/gradients_impl.py:95: UserWarning: Converting sparse IndexedSlices to a dense Tensor of unknown shape. This may consume a large amount of memory.
  "Converting sparse IndexedSlices to a dense Tensor of unknown shape. "
---------
Variables: name (type shape) [size]
---------
embed_matrix:0 (float32_ref 100x8) [800, bytes: 3200]
dynamic_rnn/lstm_cell/kernel:0 (float32_ref 137x512) [70144, bytes: 280576]
dynamic_rnn/lstm_cell/bias:0 (float32_ref 512) [512, bytes: 2048]
w:0 (float32_ref 128x1) [128, bytes: 512]
b:0 (float32_ref 1) [1, bytes: 4]
Total size of variables: 71585
Total bytes of variables: 286340
 [*] Reading checkpoints...
 [*] Success to read stock_rnn_lstm128_step30_input1_embed8.model-218450

So it's working, but where can I get the prediction? It is writing no images and printing nothing.

Thanks again for you help, I have some idea of improvement for the project but I m stuck at this point :(

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