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from typing import Optional |
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import torch |
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from torch.ao.nn.quantized.modules.utils import _quantize_weight, hide_packed_params_repr |
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__all__ = ['LinearPackedParams', 'Linear'] |
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class LinearPackedParams(torch.nn.Module): |
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_version = 1 |
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def __init__(self, row_block_size=1, col_block_size=4, dtype=torch.qint8): |
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super().__init__() |
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if dtype != torch.qint8: |
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raise NotImplementedError("Linear prepacking only supports QINT8") |
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self.dtype = dtype |
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wq = torch._empty_affine_quantized([1, 1], scale=1.0, zero_point=0, dtype=torch.qint8) |
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self.set_weight_bias(wq, None, row_block_size, col_block_size) |
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def _get_name(self): |
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return "SparseQuantizedLinearPackedParams" |
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@torch.jit.export |
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def set_weight_bias(self, weight: torch.Tensor, bias: Optional[torch.Tensor], |
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row_block_size: Optional[int], col_block_size: Optional[int]) -> None: |
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assert row_block_size is not None and col_block_size is not None |
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self._packed_params = torch.ops.sparse.qlinear_prepack(weight, bias, row_block_size, col_block_size) |
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@torch.jit.export |
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def _weight_bias(self): |
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(weight, bias, block_sizes) = torch.ops.sparse.qlinear_unpack(self._packed_params) |
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return (weight, bias, block_sizes[0], block_sizes[1]) |
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def forward(self, x): |
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return x |
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def _save_to_state_dict(self, destination, prefix, keep_vars): |
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super()._save_to_state_dict(destination, prefix, keep_vars) |
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destination[prefix + 'dtype'] = self.dtype |
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destination[prefix + '_packed_params'] = self._weight_bias() |
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def _load_from_state_dict(self, state_dict, prefix, local_metadata, strict, |
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missing_keys, unexpected_keys, error_msgs): |
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version = local_metadata.get('version', None) |
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assert version <= self._version |
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self.dtype = state_dict.pop(prefix + 'dtype') |
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weight, bias, row_block_size, col_block_size = state_dict.pop(prefix + '_packed_params') |
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self.set_weight_bias(weight, bias, row_block_size, col_block_size) |
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super()._load_from_state_dict(state_dict, prefix, local_metadata, False, |
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missing_keys, unexpected_keys, error_msgs) |
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@torch.jit.export |
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def __getstate__(self): |
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return self._packed_params, self.training, self.dtype |
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@torch.jit.export |
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def __setstate__(self, state): |
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(self._packed_params, self.training, self.dtype) = state |
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def __repr__(self): |
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return self._weight_bias().__repr__() |
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class Linear(torch.nn.Module): |
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r""" |
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A quantized sparse linear module with quantized tensor as inputs and outputs. |
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""" |
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_version = 1 |
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_FLOAT_MODULE = torch.nn.Linear |
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def __init__(self, in_features, out_features, row_block_size, col_block_size, bias=True, dtype=torch.qint8): |
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super().__init__() |
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if dtype != torch.qint8: |
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raise NotImplementedError("Only QINT8 is supported for Sparse Quantized Linear") |
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self.in_features = in_features |
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self.out_features = out_features |
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if bias: |
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bias = torch.zeros(self.out_features, dtype=torch.float) |
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else: |
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bias = None |
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qweight = torch._empty_affine_quantized([out_features, in_features], |
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scale=1, zero_point=0, dtype=torch.qint8) |
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self._packed_params = LinearPackedParams(row_block_size=row_block_size, |
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col_block_size=col_block_size, |
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dtype=dtype) |
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self._packed_params.set_weight_bias(qweight, bias, row_block_size, col_block_size) |
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self.scale = 1.0 |
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self.zero_point = 0 |
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@classmethod |
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def _get_name(cls): |
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return 'SparseQuantizedLinear' |
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def extra_repr(self): |
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return 'in_features={}, out_features={}, scale={}, zero_point={}, qscheme={}'.format( |
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self.in_features, self.out_features, self.scale, self.zero_point, self.weight().qscheme() |
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) |
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def __repr__(self): |
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return hide_packed_params_repr(self, LinearPackedParams) |
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def forward(self, x: torch.Tensor) -> torch.Tensor: |
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return torch.ops.sparse.qlinear(x, self._packed_params._packed_params, self.scale, self.zero_point) |
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def _save_to_state_dict(self, destination, prefix, keep_vars): |
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super()._save_to_state_dict(destination, prefix, keep_vars) |
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destination[prefix + 'scale'] = torch.tensor(self.scale) |
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destination[prefix + 'zero_point'] = torch.tensor(self.zero_point) |
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def _load_from_state_dict(self, state_dict, prefix, local_metadata, strict, |
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missing_keys, unexpected_keys, error_msgs): |
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self.scale = float(state_dict[prefix + 'scale']) |
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state_dict.pop(prefix + 'scale') |
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self.zero_point = int(state_dict[prefix + 'zero_point']) |
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state_dict.pop(prefix + 'zero_point') |
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op_type = int(state_dict[prefix + 'op_type']) |
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state_dict.pop(prefix + 'op_type') |
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version = local_metadata.get('version', None) |
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assert version <= self._version |
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super()._load_from_state_dict( |
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state_dict, prefix, local_metadata, False, |
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missing_keys, unexpected_keys, error_msgs) |
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def _weight_bias(self): |
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return self._packed_params._weight_bias() |
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def weight(self): |
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return self._weight_bias()[0] |
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def bias(self): |
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return self._weight_bias()[1] |
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def set_weight_bias(self, w: torch.Tensor, b: Optional[torch.Tensor], |
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row_block_size: Optional[int], col_block_size: Optional[int]) -> None: |
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assert row_block_size is not None and col_block_size is not None |
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self._packed_params.set_weight_bias(w, b, row_block_size, col_block_size) |
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@classmethod |
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def from_float(cls, mod): |
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r"""Create a quantized sparse module from a float module. |
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We only care about the convert at this stage, no need for observers just yet. |
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TODO(zaf): Need to add the sparse params to the qconfig |
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""" |
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assert type(mod) == cls._FLOAT_MODULE, cls._get_name() + \ |
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'.from_float only works for ' + cls._FLOAT_MODULE.__name__ |
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assert hasattr(mod, 'sparse_params'), \ |
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('Expecting the Linear to have `sparse_params`. Make sure you have provided arguments ' |
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'in the `sparsifier.squash_mask(params_to_save=("sparse_block_shape",))` method.') |
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sparse_block_shape = mod.sparse_params.get('sparse_block_shape', None) |
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assert isinstance(sparse_block_shape, (tuple, list)) |
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assert len(sparse_block_shape) == 2 |
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assert hasattr(mod, 'qconfig'), 'Input float module must have qconfig defined' |
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activation_post_process = mod.activation_post_process |
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weight_post_process = mod.qconfig.weight() |
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weight = mod.weight |
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weight_post_process(weight) |
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dtype = weight_post_process.dtype |
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act_scale, act_zp = activation_post_process.calculate_qparams() |
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assert dtype == torch.qint8, 'Weight observer must have dtype torch.qint8' |
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w_sc, w_zp = weight_post_process.calculate_qparams() |
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if isinstance(w_zp, torch.Tensor): |
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assert not torch.any(w_zp.bool()), "All weight zero points must map to 0" |
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else: |
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assert w_zp == 0, 'Weight zero point must map to 0' |
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qweight = _quantize_weight(weight.float(), weight_post_process) |
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row_block_size = mod.sparse_params['sparse_block_shape'][0] |
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col_block_size = mod.sparse_params['sparse_block_shape'][1] |
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qlinear = cls(mod.in_features, |
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mod.out_features, |
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row_block_size, |
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col_block_size, |
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dtype=dtype) |
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qlinear.set_weight_bias(qweight, mod.bias, |
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row_block_size, col_block_size) |
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qlinear.scale = float(act_scale) |
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qlinear.zero_point = int(act_zp) |
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return qlinear |
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