composite_rules.py 8.7 KB
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# Copyright (c) 2023 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

# This file contains composite rules of nonbasic operations. There are some notes:
# 1. When define composite rule of some op, you can only use primitive ops defined in primitives.py.
# 2. The name and args of target op must be corresponding with standard description of op in
#    ops.yaml or legacy_ops.yaml.

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import functools
import operator
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from paddle.fluid import core

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from .primitives import *  # noqa: F403
from .primreg import REGISTER_COMPOSITE, lookup_composite


def _composite(op, *args):
    _lowerrule = lookup_composite(op.type)
    return _lowerrule(op, *args)


@REGISTER_COMPOSITE('softmax')
def softmax_composite(x, axis):
    """define composite rule of op softmax"""
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    if not x.shape:
        # do not return 1, to ensure gradients
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        res = exp(x - x)
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        return res
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    max_temp = max(x, axis, keepdim=True)
    max_temp.stop_gradient = True
    molecular = exp(x - max_temp)
    denominator = sum(molecular, axis=axis, keepdim=True)
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    res = divide(molecular, denominator)
    return res
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@REGISTER_COMPOSITE('batch_norm')
def composite_batchnorm(
    x,
    run_mean,
    run_var,
    scale,
    bias,
    is_test,
    momentum,
    epsilon,
    data_layout,
    use_global_stats,
    trainable_statistics,
):
    """define composite rule of op batch_norm"""
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    is_amp = False
    from paddle.fluid.data_feeder import convert_dtype

    if convert_dtype(x.dtype) == "float16":
        print("Running batch_norm in amp")
        is_amp = True
        x = cast(x, "float32")
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    feature_axis = (
        1 if data_layout in ('NC', 'NCL', 'NCHW', 'NCHWD') else len(x.shape) - 1
    )
    if use_global_stats is None:
        use_global_stats = is_test
        trainable_statistics = False
    else:
        trainable_statistics = not use_global_stats

    use_run_stat = (is_test and (not trainable_statistics)) or use_global_stats
    reduce_axes = tuple(i for i in range(len(x.shape)) if i != feature_axis)
    stats_shape = tuple(
        1 if i in reduce_axes else s for i, s in enumerate(x.shape)
    )

    batch_mean = zeros(run_mean.shape, run_mean.dtype)
    batch_var = zeros(run_var.shape, run_var.dtype)
    if not use_run_stat:
        batch_mean = mean(x, reduce_axes, keepdim=True)
        temp = mean(x * x, reduce_axes, keepdim=True)
        batch_var = temp - batch_mean * batch_mean

        x_hat = (x - reshape(batch_mean, stats_shape)) / sqrt(
            reshape(batch_var, stats_shape) + epsilon
        )

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        run_mean = momentum * run_mean + (1 - momentum) * reshape(
            batch_mean, run_mean.shape
        )
        run_var = momentum * run_var + (1 - momentum) * reshape(
            batch_var, run_var.shape
        )
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    else:
        x_hat = (x - reshape(run_mean, stats_shape)) / sqrt(
            reshape(run_var, stats_shape) + epsilon
        )
    y = reshape(scale, stats_shape) * x_hat + reshape(bias, stats_shape)
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    if is_amp:
        y = cast(y, "float16")
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    # add op assign to detach tensor in void unsafe change outside the rule.
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    batch_mean_ = assign(reshape(batch_mean, run_mean.shape))
    batch_var_ = assign(reshape(batch_var, run_var.shape))
    run_mean_ = assign(run_mean)
    run_var_ = assign(run_var)
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    # reserve_space is not needed in composite rule, but still ruturn None to keep same as phi op definition.
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    reserve_space = None
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    return y, run_mean_, run_var_, batch_mean_, batch_var_, reserve_space
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@REGISTER_COMPOSITE('layer_norm')
def layernorm_composite(x, scale, bias, epsilon, begin_norm_axis):
    """
    define composite rule of op layer_norm
    out = (x - mean(x)) / sqrt(var + epsilon))
    var = mean((x-mean(x))^2)
    """

    axis = tuple(range(begin_norm_axis, len(x.shape)))
    mean_ = mean(x, axis=axis, keepdim=True)
    difference = x - mean_
    var_tmp1 = difference * difference
    variance = mean(var_tmp1, axis=axis, keepdim=True)
    var_tmp3 = variance + epsilon
    sqrt_var = sqrt(var_tmp3)
    out = difference / sqrt_var

    if scale is not None:
        scale = reshape(scale, x.shape[begin_norm_axis:])
        out = out * scale
    if bias is not None:
        bias = reshape(bias, x.shape[begin_norm_axis:])
        out = out + bias

    mean_ = reshape(mean_, [-1])
    variance = reshape(variance, [-1])
    return out, mean_, variance


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@REGISTER_COMPOSITE('gelu')
def gelu_composite(x, approximate):
    """define composite rule of op gelu"""
    M_SQRT1_2 = (
        0.70710678118654752440  # /* 1/sqrt(2) */ copy from gelu-kernel.cc
    )
    M_2_SQRTPI = 1.12837916709551257390  # /* 2/sqrt(pi) */
    one = ones(x.shape, x.dtype)
    half = full(x.shape, 0.5, x.dtype)
    if approximate:
        # gelu(x) = 0.5 * x * (1 + tanh(sqrt(2 / \pi) * (x + 0.044715 * x^{3})))
        kAlpha = full(x.shape, M_2_SQRTPI * M_SQRT1_2, x.dtype)
        GELU_CONSTANT = full(x.shape, 0.044715, x.dtype)
        tanh_out = tanh(kAlpha * (x + GELU_CONSTANT * x * x * x))
        out = x * half * (one + tanh_out)
        return out

    else:
        # gelu(x) = 0.5 * x *  (1 + erf(x / sqrt(2)))
        cdf = half * (one + erf(x * full(x.shape, M_SQRT1_2, x.dtype)))
        out = x * cdf
        return out
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@REGISTER_COMPOSITE('reduce_mean')
def mean_composite(x, axis, keepdim):
    """define composite rule of op mean"""
    axes = axis or list(range(0, len(x.shape)))
    axes = [axes] if isinstance(axes, int) else axes
    sum_x = sum(x, axis=axes, keepdim=keepdim)
    value_to_fill = functools.reduce(
        operator.mul, [x.shape[axis] for axis in axes]
    )
    norm = fill_constant(
        shape=sum_x.shape,
        value=value_to_fill,
        dtype=sum_x.dtype,
    )
    return divide(sum_x, norm)
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@REGISTER_COMPOSITE('flatten_contiguous_range')
def flatten_contiguous_range_composite(x, start_axis, stop_axis):
    """
    define composite rule of op flatten, flatten_contiguous_range -> flatten.
    CINN doesn't need xshape for backward pass, return none instead of xshape.
    shape_out is the parameter of reshape, get from start_axis and stop_axis.
    out = reshape(x, shape=shape_out), xshape
    """
    shape_in = x.shape
    start_dim = start_axis if len(shape_in) != 0 else 0
    end_dim = stop_axis if len(shape_in) != 0 else 0
    assert start_dim <= end_dim
    if len(shape_in) == 0 or start_dim == end_dim:
        return reshape(x, shape=shape_in), None
    slice_numel = 1
    for i in range(start_dim, end_dim + 1):
        slice_numel *= shape_in[i]
    shape_out = []
    for i in range(start_dim):
        shape_out.append(shape_in[i])
    shape_out.append(slice_numel)
    for i in range(end_dim + 1, len(shape_in)):
        shape_out.append(shape_in[i])
    return reshape(x, shape=shape_out), None


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@REGISTER_COMPOSITE('dropout')
def dropout_composite(x, seed_tensor, p, is_test, mode, seed, fix_seed):
    """define composite rule of op dropout.
    upscale_in_train:
        train: out = input * mask / ( 1.0 - p )
        inference: out = input
    downscale_in_infer
        train: out = input * mask
        inference: out = input * (1.0 - p)
    """
    fix_seed = True if fix_seed is None else fix_seed
    seed = seed if fix_seed else 0
    upscale_in_train = mode == "upscale_in_train"
    mask = bernoulli(shape=x.shape, dtype=x.dtype, p=p, seed=seed)

    if upscale_in_train:
        if not is_test:
            # Process p=1.0 for avoid devide zero error (x*mask/(1.0-p))
            if p == 1.0:
                return 0.0 * x, zeros(x.shape, core.VarDesc.VarType.UINT8)
            else:
                return x * mask / (1.0 - p), cast(
                    mask, core.VarDesc.VarType.UINT8
                )
        else:
            return assign(x), cast(mask, core.VarDesc.VarType.UINT8)
    else:
        if not is_test:
            return x * mask, cast(mask, core.VarDesc.VarType.UINT8)
        else:
            return x * (1.0 - p), cast(mask, core.VarDesc.VarType.UINT8)


def bernoulli(shape, dtype, p, seed=0):
    return cast(
        greater_equal(
            uniform(shape, dtype, min=0.0, max=1.0, seed=seed),
            fill_constant(shape, dtype, p),
        ),
        dtype,
    )
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@REGISTER_COMPOSITE('silu')
def silu_composite(x):
    """
    define composite rule of op silu
    res = x / (1 + exp(-x))
    """
    sum_temp = 1 + exp(-x)
    res = x / sum_temp
    return res