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import numbers |
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from typing import Optional, Tuple |
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import warnings |
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import torch |
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from torch import Tensor |
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""" |
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We will recreate all the RNN modules as we require the modules to be decomposed |
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into its building blocks to be able to observe. |
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""" |
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class LSTMCell(torch.nn.Module): |
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r"""A quantizable long short-term memory (LSTM) cell. |
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For the description and the argument types, please, refer to :class:`~torch.nn.LSTMCell` |
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Examples:: |
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>>> import torch.nn.quantizable as nnqa |
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>>> rnn = nnqa.LSTMCell(10, 20) |
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>>> input = torch.randn(6, 10) |
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>>> hx = torch.randn(3, 20) |
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>>> cx = torch.randn(3, 20) |
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>>> output = [] |
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>>> for i in range(6): |
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... hx, cx = rnn(input[i], (hx, cx)) |
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... output.append(hx) |
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""" |
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_FLOAT_MODULE = torch.nn.LSTMCell |
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def __init__(self, input_dim: int, hidden_dim: int, bias: bool = True, |
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device=None, dtype=None) -> None: |
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factory_kwargs = {'device': device, 'dtype': dtype} |
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super().__init__() |
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self.input_size = input_dim |
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self.hidden_size = hidden_dim |
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self.bias = bias |
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self.igates = torch.nn.Linear(input_dim, 4 * hidden_dim, bias=bias, **factory_kwargs) |
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self.hgates = torch.nn.Linear(hidden_dim, 4 * hidden_dim, bias=bias, **factory_kwargs) |
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self.gates = torch.ao.nn.quantized.FloatFunctional() |
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self.fgate_cx = torch.ao.nn.quantized.FloatFunctional() |
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self.igate_cgate = torch.ao.nn.quantized.FloatFunctional() |
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self.fgate_cx_igate_cgate = torch.ao.nn.quantized.FloatFunctional() |
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self.ogate_cy = torch.ao.nn.quantized.FloatFunctional() |
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def forward(self, x: Tensor, hidden: Optional[Tuple[Tensor, Tensor]] = None) -> Tuple[Tensor, Tensor]: |
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if hidden is None or hidden[0] is None or hidden[1] is None: |
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hidden = self.initialize_hidden(x.shape[0], x.is_quantized) |
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hx, cx = hidden |
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igates = self.igates(x) |
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hgates = self.hgates(hx) |
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gates = self.gates.add(igates, hgates) |
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input_gate, forget_gate, cell_gate, out_gate = gates.chunk(4, 1) |
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input_gate = torch.sigmoid(input_gate) |
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forget_gate = torch.sigmoid(forget_gate) |
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cell_gate = torch.tanh(cell_gate) |
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out_gate = torch.sigmoid(out_gate) |
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fgate_cx = self.fgate_cx.mul(forget_gate, cx) |
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igate_cgate = self.igate_cgate.mul(input_gate, cell_gate) |
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fgate_cx_igate_cgate = self.fgate_cx_igate_cgate.add(fgate_cx, igate_cgate) |
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cy = fgate_cx_igate_cgate |
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tanh_cy = torch.tanh(cy) |
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hy = self.ogate_cy.mul(out_gate, tanh_cy) |
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return hy, cy |
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def initialize_hidden(self, batch_size: int, is_quantized: bool = False) -> Tuple[Tensor, Tensor]: |
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h, c = torch.zeros((batch_size, self.hidden_size)), torch.zeros((batch_size, self.hidden_size)) |
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if is_quantized: |
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h = torch.quantize_per_tensor(h, scale=1.0, zero_point=0, dtype=torch.quint8) |
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c = torch.quantize_per_tensor(c, scale=1.0, zero_point=0, dtype=torch.quint8) |
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return h, c |
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def _get_name(self): |
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return 'QuantizableLSTMCell' |
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@classmethod |
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def from_params(cls, wi, wh, bi=None, bh=None): |
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"""Uses the weights and biases to create a new LSTM cell. |
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Args: |
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wi, wh: Weights for the input and hidden layers |
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bi, bh: Biases for the input and hidden layers |
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""" |
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assert (bi is None) == (bh is None) |
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input_size = wi.shape[1] |
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hidden_size = wh.shape[1] |
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cell = cls(input_dim=input_size, hidden_dim=hidden_size, |
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bias=(bi is not None)) |
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cell.igates.weight = torch.nn.Parameter(wi) |
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if bi is not None: |
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cell.igates.bias = torch.nn.Parameter(bi) |
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cell.hgates.weight = torch.nn.Parameter(wh) |
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if bh is not None: |
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cell.hgates.bias = torch.nn.Parameter(bh) |
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return cell |
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@classmethod |
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def from_float(cls, other): |
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assert type(other) == cls._FLOAT_MODULE |
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assert hasattr(other, 'qconfig'), "The float module must have 'qconfig'" |
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observed = cls.from_params(other.weight_ih, other.weight_hh, |
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other.bias_ih, other.bias_hh) |
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observed.qconfig = other.qconfig |
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observed.igates.qconfig = other.qconfig |
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observed.hgates.qconfig = other.qconfig |
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return observed |
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class _LSTMSingleLayer(torch.nn.Module): |
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r"""A single one-directional LSTM layer. |
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The difference between a layer and a cell is that the layer can process a |
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sequence, while the cell only expects an instantaneous value. |
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""" |
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def __init__(self, input_dim: int, hidden_dim: int, bias: bool = True, |
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device=None, dtype=None) -> None: |
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factory_kwargs = {'device': device, 'dtype': dtype} |
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super().__init__() |
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self.cell = LSTMCell(input_dim, hidden_dim, bias=bias, **factory_kwargs) |
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def forward(self, x: Tensor, hidden: Optional[Tuple[Tensor, Tensor]] = None): |
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result = [] |
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for xx in x: |
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hidden = self.cell(xx, hidden) |
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result.append(hidden[0]) |
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result_tensor = torch.stack(result, 0) |
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return result_tensor, hidden |
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@classmethod |
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def from_params(cls, *args, **kwargs): |
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cell = LSTMCell.from_params(*args, **kwargs) |
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layer = cls(cell.input_size, cell.hidden_size, cell.bias) |
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layer.cell = cell |
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return layer |
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class _LSTMLayer(torch.nn.Module): |
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r"""A single bi-directional LSTM layer.""" |
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def __init__(self, input_dim: int, hidden_dim: int, bias: bool = True, |
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batch_first: bool = False, bidirectional: bool = False, |
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device=None, dtype=None) -> None: |
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factory_kwargs = {'device': device, 'dtype': dtype} |
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super().__init__() |
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self.batch_first = batch_first |
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self.bidirectional = bidirectional |
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self.layer_fw = _LSTMSingleLayer(input_dim, hidden_dim, bias=bias, **factory_kwargs) |
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if self.bidirectional: |
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self.layer_bw = _LSTMSingleLayer(input_dim, hidden_dim, bias=bias, **factory_kwargs) |
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def forward(self, x: Tensor, hidden: Optional[Tuple[Tensor, Tensor]] = None): |
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if self.batch_first: |
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x = x.transpose(0, 1) |
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if hidden is None: |
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hx_fw, cx_fw = (None, None) |
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else: |
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hx_fw, cx_fw = hidden |
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hidden_bw: Optional[Tuple[Tensor, Tensor]] = None |
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if self.bidirectional: |
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if hx_fw is None: |
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hx_bw = None |
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else: |
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hx_bw = hx_fw[1] |
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hx_fw = hx_fw[0] |
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if cx_fw is None: |
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cx_bw = None |
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else: |
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cx_bw = cx_fw[1] |
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cx_fw = cx_fw[0] |
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if hx_bw is not None and cx_bw is not None: |
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hidden_bw = hx_bw, cx_bw |
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if hx_fw is None and cx_fw is None: |
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hidden_fw = None |
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else: |
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hidden_fw = torch.jit._unwrap_optional(hx_fw), torch.jit._unwrap_optional(cx_fw) |
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result_fw, hidden_fw = self.layer_fw(x, hidden_fw) |
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if hasattr(self, 'layer_bw') and self.bidirectional: |
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x_reversed = x.flip(0) |
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result_bw, hidden_bw = self.layer_bw(x_reversed, hidden_bw) |
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result_bw = result_bw.flip(0) |
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result = torch.cat([result_fw, result_bw], result_fw.dim() - 1) |
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if hidden_fw is None and hidden_bw is None: |
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h = None |
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c = None |
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elif hidden_fw is None: |
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(h, c) = torch.jit._unwrap_optional(hidden_bw) |
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elif hidden_bw is None: |
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(h, c) = torch.jit._unwrap_optional(hidden_fw) |
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else: |
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h = torch.stack([hidden_fw[0], hidden_bw[0]], 0) |
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c = torch.stack([hidden_fw[1], hidden_bw[1]], 0) |
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else: |
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result = result_fw |
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h, c = torch.jit._unwrap_optional(hidden_fw) |
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if self.batch_first: |
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result.transpose_(0, 1) |
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return result, (h, c) |
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@classmethod |
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def from_float(cls, other, layer_idx=0, qconfig=None, **kwargs): |
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r""" |
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There is no FP equivalent of this class. This function is here just to |
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mimic the behavior of the `prepare` within the `torch.ao.quantization` |
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flow. |
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""" |
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assert hasattr(other, 'qconfig') or (qconfig is not None) |
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input_size = kwargs.get('input_size', other.input_size) |
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hidden_size = kwargs.get('hidden_size', other.hidden_size) |
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bias = kwargs.get('bias', other.bias) |
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batch_first = kwargs.get('batch_first', other.batch_first) |
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bidirectional = kwargs.get('bidirectional', other.bidirectional) |
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layer = cls(input_size, hidden_size, bias, batch_first, bidirectional) |
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layer.qconfig = getattr(other, 'qconfig', qconfig) |
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wi = getattr(other, f'weight_ih_l{layer_idx}') |
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wh = getattr(other, f'weight_hh_l{layer_idx}') |
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bi = getattr(other, f'bias_ih_l{layer_idx}', None) |
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bh = getattr(other, f'bias_hh_l{layer_idx}', None) |
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layer.layer_fw = _LSTMSingleLayer.from_params(wi, wh, bi, bh) |
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if other.bidirectional: |
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wi = getattr(other, f'weight_ih_l{layer_idx}_reverse') |
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wh = getattr(other, f'weight_hh_l{layer_idx}_reverse') |
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bi = getattr(other, f'bias_ih_l{layer_idx}_reverse', None) |
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bh = getattr(other, f'bias_hh_l{layer_idx}_reverse', None) |
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layer.layer_bw = _LSTMSingleLayer.from_params(wi, wh, bi, bh) |
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return layer |
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class LSTM(torch.nn.Module): |
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r"""A quantizable long short-term memory (LSTM). |
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For the description and the argument types, please, refer to :class:`~torch.nn.LSTM` |
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Attributes: |
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layers : instances of the `_LSTMLayer` |
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.. note:: |
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To access the weights and biases, you need to access them per layer. |
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See examples below. |
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Examples:: |
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>>> import torch.nn.quantizable as nnqa |
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>>> rnn = nnqa.LSTM(10, 20, 2) |
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>>> input = torch.randn(5, 3, 10) |
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>>> h0 = torch.randn(2, 3, 20) |
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>>> c0 = torch.randn(2, 3, 20) |
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>>> output, (hn, cn) = rnn(input, (h0, c0)) |
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>>> # To get the weights: |
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>>> # xdoctest: +SKIP |
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>>> print(rnn.layers[0].weight_ih) |
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tensor([[...]]) |
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>>> print(rnn.layers[0].weight_hh) |
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AssertionError: There is no reverse path in the non-bidirectional layer |
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""" |
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_FLOAT_MODULE = torch.nn.LSTM |
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def __init__(self, input_size: int, hidden_size: int, |
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num_layers: int = 1, bias: bool = True, |
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batch_first: bool = False, dropout: float = 0., |
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bidirectional: bool = False, |
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device=None, dtype=None) -> None: |
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factory_kwargs = {'device': device, 'dtype': dtype} |
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super().__init__() |
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self.input_size = input_size |
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self.hidden_size = hidden_size |
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self.num_layers = num_layers |
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self.bias = bias |
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self.batch_first = batch_first |
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self.dropout = float(dropout) |
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self.bidirectional = bidirectional |
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self.training = False |
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num_directions = 2 if bidirectional else 1 |
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if not isinstance(dropout, numbers.Number) or not 0 <= dropout <= 1 or \ |
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isinstance(dropout, bool): |
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raise ValueError("dropout should be a number in range [0, 1] " |
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"representing the probability of an element being " |
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"zeroed") |
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if dropout > 0: |
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warnings.warn("dropout option for quantizable LSTM is ignored. " |
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"If you are training, please, use nn.LSTM version " |
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"followed by `prepare` step.") |
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if num_layers == 1: |
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warnings.warn("dropout option adds dropout after all but last " |
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"recurrent layer, so non-zero dropout expects " |
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"num_layers greater than 1, but got dropout={} " |
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"and num_layers={}".format(dropout, num_layers)) |
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layers = [_LSTMLayer(self.input_size, self.hidden_size, |
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self.bias, batch_first=False, |
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bidirectional=self.bidirectional, **factory_kwargs)] |
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for layer in range(1, num_layers): |
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layers.append(_LSTMLayer(self.hidden_size, self.hidden_size, |
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self.bias, batch_first=False, |
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bidirectional=self.bidirectional, |
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**factory_kwargs)) |
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self.layers = torch.nn.ModuleList(layers) |
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def forward(self, x: Tensor, hidden: Optional[Tuple[Tensor, Tensor]] = None): |
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if self.batch_first: |
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x = x.transpose(0, 1) |
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max_batch_size = x.size(1) |
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num_directions = 2 if self.bidirectional else 1 |
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if hidden is None: |
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zeros = torch.zeros(num_directions, max_batch_size, |
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self.hidden_size, dtype=torch.float, |
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device=x.device) |
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zeros.squeeze_(0) |
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if x.is_quantized: |
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zeros = torch.quantize_per_tensor(zeros, scale=1.0, |
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zero_point=0, dtype=x.dtype) |
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hxcx = [(zeros, zeros) for _ in range(self.num_layers)] |
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else: |
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hidden_non_opt = torch.jit._unwrap_optional(hidden) |
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if isinstance(hidden_non_opt[0], Tensor): |
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hx = hidden_non_opt[0].reshape(self.num_layers, num_directions, |
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max_batch_size, |
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self.hidden_size).unbind(0) |
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cx = hidden_non_opt[1].reshape(self.num_layers, num_directions, |
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max_batch_size, |
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self.hidden_size).unbind(0) |
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hxcx = [(hx[idx].squeeze_(0), cx[idx].squeeze_(0)) for idx in range(self.num_layers)] |
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else: |
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hxcx = hidden_non_opt |
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hx_list = [] |
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cx_list = [] |
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for idx, layer in enumerate(self.layers): |
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x, (h, c) = layer(x, hxcx[idx]) |
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hx_list.append(torch.jit._unwrap_optional(h)) |
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cx_list.append(torch.jit._unwrap_optional(c)) |
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hx_tensor = torch.stack(hx_list) |
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cx_tensor = torch.stack(cx_list) |
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hx_tensor = hx_tensor.reshape(-1, hx_tensor.shape[-2], hx_tensor.shape[-1]) |
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cx_tensor = cx_tensor.reshape(-1, cx_tensor.shape[-2], cx_tensor.shape[-1]) |
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if self.batch_first: |
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x = x.transpose(0, 1) |
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return x, (hx_tensor, cx_tensor) |
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def _get_name(self): |
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return 'QuantizableLSTM' |
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@classmethod |
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def from_float(cls, other, qconfig=None): |
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assert isinstance(other, cls._FLOAT_MODULE) |
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assert (hasattr(other, 'qconfig') or qconfig) |
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observed = cls(other.input_size, other.hidden_size, other.num_layers, |
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other.bias, other.batch_first, other.dropout, |
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other.bidirectional) |
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observed.qconfig = getattr(other, 'qconfig', qconfig) |
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for idx in range(other.num_layers): |
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observed.layers[idx] = _LSTMLayer.from_float(other, idx, qconfig, |
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batch_first=False) |
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observed.eval() |
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observed = torch.ao.quantization.prepare(observed, inplace=True) |
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return observed |
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@classmethod |
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def from_observed(cls, other): |
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raise NotImplementedError("It looks like you are trying to convert a " |
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"non-quantizable LSTM module. Please, see " |
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"the examples on quantizable LSTMs.") |
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