LSTM — PyTorch 2.7 documentation (original) (raw)

class torch.nn.LSTM(input_size, hidden_size, num_layers=1, bias=True, batch_first=False, dropout=0.0, bidirectional=False, proj_size=0, device=None, dtype=None)[source][source]

Apply a multi-layer long short-term memory (LSTM) RNN to an input sequence. For each element in the input sequence, each layer computes the following function:

it=σ(Wiixt+bii+Whiht−1+bhi)ft=σ(Wifxt+bif+Whfht−1+bhf)gt=tanh⁡(Wigxt+big+Whght−1+bhg)ot=σ(Wioxt+bio+Whoht−1+bho)ct=ft⊙ct−1+it⊙gtht=ot⊙tanh⁡(ct)\begin{array}{ll} \\ i_t = \sigma(W_{ii} x_t + b_{ii} + W_{hi} h_{t-1} + b_{hi}) \\ f_t = \sigma(W_{if} x_t + b_{if} + W_{hf} h_{t-1} + b_{hf}) \\ g_t = \tanh(W_{ig} x_t + b_{ig} + W_{hg} h_{t-1} + b_{hg}) \\ o_t = \sigma(W_{io} x_t + b_{io} + W_{ho} h_{t-1} + b_{ho}) \\ c_t = f_t \odot c_{t-1} + i_t \odot g_t \\ h_t = o_t \odot \tanh(c_t) \\ \end{array}

where hth_t is the hidden state at time t, ctc_t is the cell state at time t, xtx_t is the input at time t, ht−1h_{t-1}is the hidden state of the layer at time t-1 or the initial hidden state at time 0, and iti_t, ftf_t, gtg_t,oto_t are the input, forget, cell, and output gates, respectively.σ\sigma is the sigmoid function, and ⊙\odot is the Hadamard product.

In a multilayer LSTM, the input xt(l)x^{(l)}_t of the ll -th layer (l≥2l \ge 2) is the hidden state ht(l−1)h^{(l-1)}_t of the previous layer multiplied by dropout δt(l−1)\delta^{(l-1)}_t where each δt(l−1)\delta^{(l-1)}_t is a Bernoulli random variable which is 00 with probability dropout.

If proj_size > 0 is specified, LSTM with projections will be used. This changes the LSTM cell in the following way. First, the dimension of hth_t will be changed fromhidden_size to proj_size (dimensions of WhiW_{hi} will be changed accordingly). Second, the output hidden state of each layer will be multiplied by a learnable projection matrix: ht=Whrhth_t = W_{hr}h_t. Note that as a consequence of this, the output of LSTM network will be of different shape as well. See Inputs/Outputs sections below for exact dimensions of all variables. You can find more details in https://arxiv.org/abs/1402.1128.

Parameters

Inputs: input, (h_0, c_0)

where:

N=batch sizeL=sequence lengthD=2 if bidirectional=True otherwise 1Hin=input_sizeHcell=hidden_sizeHout=proj_size if proj_size>0 otherwise hidden_size\begin{aligned} N ={} & \text{batch size} \\ L ={} & \text{sequence length} \\ D ={} & 2 \text{ if bidirectional=True otherwise } 1 \\ H_{in} ={} & \text{input\_size} \\ H_{cell} ={} & \text{hidden\_size} \\ H_{out} ={} & \text{proj\_size if } \text{proj\_size}>0 \text{ otherwise hidden\_size} \\ \end{aligned}

Outputs: output, (h_n, c_n)

Variables

Note

All the weights and biases are initialized from U(−k,k)\mathcal{U}(-\sqrt{k}, \sqrt{k})where k=1hidden_sizek = \frac{1}{\text{hidden\_size}}

Note

For bidirectional LSTMs, forward and backward are directions 0 and 1 respectively. Example of splitting the output layers when batch_first=False:output.view(seq_len, batch, num_directions, hidden_size).

Note

For bidirectional LSTMs, h_n is not equivalent to the last element of output; the former contains the final forward and reverse hidden states, while the latter contains the final forward hidden state and the initial reverse hidden state.

Note

batch_first argument is ignored for unbatched inputs.

Note

proj_size should be smaller than hidden_size.

Warning

There are known non-determinism issues for RNN functions on some versions of cuDNN and CUDA. You can enforce deterministic behavior by setting the following environment variables:

On CUDA 10.1, set environment variable CUDA_LAUNCH_BLOCKING=1. This may affect performance.

On CUDA 10.2 or later, set environment variable (note the leading colon symbol)CUBLAS_WORKSPACE_CONFIG=:16:8orCUBLAS_WORKSPACE_CONFIG=:4096:2.

See the cuDNN 8 Release Notes for more information.

Note

If the following conditions are satisfied: 1) cudnn is enabled, 2) input data is on the GPU 3) input data has dtype torch.float164) V100 GPU is used, 5) input data is not in PackedSequence format persistent algorithm can be selected to improve performance.

Examples:

rnn = nn.LSTM(10, 20, 2) input = torch.randn(5, 3, 10) h0 = torch.randn(2, 3, 20) c0 = torch.randn(2, 3, 20) output, (hn, cn) = rnn(input, (h0, c0))