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## Does GPU speed up machine learning?

Why is the GPU good for Deep Learning? Since the GPU has a significantly high number of cores and a large memory bandwidth, it can be used to perform high-speed parallel processing on any task that can be broken down for parallel computing.

## Does keras LSTM use GPU?

Like @pcko1 said, LSTM is assisted by GPU if you have tensorflow-gpu installed, but it does not necessarily run faster on a GPU.

## What is loss in LSTM?

From what I understood until now, backpropagation is used to get and update matrices and bias used in forward propagation in the LSTM algorithm to get current cell and hidden states. And loss function takes the predicted output and real output from the training set.

## Can LSTM be parallelized?

A layer of LSTM with only one unit is of no use as the memory propagates across the cells of LSTMs for sequential input. A one unit LSTM only processes one input value leaving other values as is. So, to answer your question, no. Both are not the same.

## Can a LSTM be run on a GPU?

In Keras, the fast LSTM implementation with CuDNN. It can only be run on the GPU with the TensorFlow backend. Thanks for contributing an answer to Stack Overflow!

## Why is Keras LSTM faster than GPU in Python?

The smaller data types mean you can crunch more numbers faster at the cost of accuracy. For NN applications this is often acceptable because no individual number needs to be especially accurate for the net to produce acceptable results.

## How are LSTM and cudnnlstm different?

I also found that LSTM only used ~25% of the GPU, while CuDNNLSTM used ~35% of the GPU, but haven’t done a thorough investigation to figure out where the difference comes from. how are LSTM and CuDNNLSTM different?

## How are op kernels used in normal keras LSTM?

Normal Keras LSTM is implemented with several op-kernels. If you use the function like “keras.layers.LSTM (~,implementation=2)”, then you will get op-kernel graph with two matmul op-kernels, 1 biasAdd op-kernels, 3 element-wise multiplication op-kernels, and several op-kernels regarding non-linear function and matrix manipulation..