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126 lines
4.7 KiB
Python
126 lines
4.7 KiB
Python
# Copyright 2022 The JAX Authors.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# https://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import jaxlib.mlir.ir as ir
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import jaxlib.mlir.dialects.stablehlo as hlo
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import numpy as np
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from jaxlib import xla_client
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try:
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from .cuda import _rnn # pytype: disable=import-error
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for _name, _value in _rnn.registrations().items():
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xla_client.register_custom_call_target(_name, _value, platform='CUDA')
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except ImportError:
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_rnn = None
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if _rnn:
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compute_rnn_workspace_reserve_space_sizes = _rnn.compute_rnn_workspace_reserve_space_sizes
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def cudnn_rnn_lowering(ctx, input, h_0, c_0, weights, seq_lengths, *,
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input_size: int, hidden_size: int, num_layers: int,
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dropout: bool, bidirectional: bool):
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"""CuDnn RNN."""
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out_dtype = ctx.avals_out[0].dtype
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if out_dtype == np.float32:
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out_type = ir.F32Type.get()
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elif out_dtype == np.float64:
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out_type = ir.F64Type.get()
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elif out_dtype == np.complex64:
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out_type = ir.ComplexType.get(ir.F32Type.get())
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elif out_dtype == np.complex128:
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out_type = ir.ComplexType.get(ir.F64Type.get())
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else:
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raise ValueError(f'Unknown output type {out_dtype}')
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output_type = ir.RankedTensorType.get(ctx.avals_out[0].shape, out_type)
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batch_size = ctx.avals_in[0].shape[0]
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max_seq_length = ctx.avals_in[0].shape[1]
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workspace_shape = ctx.avals_out[3].shape
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reserve_space_shape = ctx.avals_out[4].shape
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workspace_type = ir.RankedTensorType.get(workspace_shape, ir.F32Type.get())
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reserve_space_type = ir.RankedTensorType.get(reserve_space_shape,
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ir.F32Type.get())
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opaque = _rnn.build_rnn_descriptor(input_size, hidden_size, num_layers,
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batch_size, max_seq_length, dropout,
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bidirectional, workspace_shape[0],
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reserve_space_shape[0])
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i32_type = ir.IntegerType.get_signless(32)
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out = hlo.CustomCallOp(
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[
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ir.TupleType.get_tuple([
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output_type, h_0.type, c_0.type, workspace_type,
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reserve_space_type
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])
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],
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[input, h_0, c_0, weights, seq_lengths],
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call_target_name=ir.StringAttr.get('cudnn_rnn'),
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has_side_effect=ir.BoolAttr.get(False),
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backend_config=ir.StringAttr.get(opaque),
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api_version=ir.IntegerAttr.get(i32_type, 2),
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called_computations=ir.ArrayAttr.get([]),
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)
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return [
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hlo.GetTupleElementOp(out, ir.IntegerAttr.get(i32_type, i)).result
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for i in range(5)
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]
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def _hlo_zeros_f32(shape):
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return hlo.ConstantOp(
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ir.DenseElementsAttr.get(
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np.zeros(shape, dtype=np.float32), type=ir.F32Type.get())).result
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def cudnn_rnn_bwd_lowering(ctx, dy, dhn, dcn, x, h0, c0, w, y, workspace,
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reserve_space, seq_lengths, *, input_size: int,
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hidden_size: int, num_layers: int, dropout: bool,
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bidirectional: bool):
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"""CuDnn RNN Backward pass."""
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batch_size = ctx.avals_in[3].shape[0]
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max_seq_length = ctx.avals_in[3].shape[1]
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workspace_shape = ctx.avals_in[8].shape
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reserve_space_shape = ctx.avals_in[9].shape
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opaque = _rnn.build_rnn_descriptor(input_size, hidden_size, num_layers,
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batch_size, max_seq_length, dropout,
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bidirectional, workspace_shape[0],
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reserve_space_shape[0])
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i32_type = ir.IntegerType.get_signless(32)
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zeroed_dw = _hlo_zeros_f32(ctx.avals_out[3].shape)
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out = hlo.CustomCallOp(
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[ir.TupleType.get_tuple([x.type, h0.type, c0.type, w.type])], [
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dy, dhn, dcn, x, h0, c0, w, y, workspace, reserve_space, zeroed_dw,
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seq_lengths
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],
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call_target_name=ir.StringAttr.get('cudnn_rnn_bwd'),
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has_side_effect=ir.BoolAttr.get(False),
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backend_config=ir.StringAttr.get(opaque),
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api_version=ir.IntegerAttr.get(i32_type, 2),
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called_computations=ir.ArrayAttr.get([]),
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output_operand_aliases=ir.ArrayAttr.get([
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hlo.OutputOperandAlias.get(
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output_tuple_indices=[3],
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operand_index=10,
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operand_tuple_indices=[])
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]))
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return [
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hlo.GetTupleElementOp(out, ir.IntegerAttr.get(i32_type, i)).result
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for i in range(4)
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]
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