test_fused_multi_transformer_op.py 32.3 KB
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# Copyright (c) 2021 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.

import numpy as np

import paddle
import paddle.nn as nn
import paddle.fluid.core as core
import paddle.nn.functional as F
import paddle.incubate.nn.functional as incubate_f
from paddle.nn.layer.norm import LayerNorm
from paddle.nn.layer.common import Linear, Dropout
from paddle.nn.layer.transformer import _convert_attention_mask
from paddle import tensor
from paddle.fluid import layers
import unittest
from op_test import OpTest
from paddle.fluid.framework import default_main_program
from paddle.fluid.dygraph.layers import Layer
from paddle.fluid.layer_helper import LayerHelper
from paddle.nn.initializer import Constant
from paddle.fluid.data_feeder import check_variable_and_dtype, check_dtype
from paddle.fluid.framework import _non_static_mode, default_main_program
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from paddle import _C_ops, _legacy_C_ops
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from paddle.incubate.nn.functional import fused_multi_transformer
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from paddle.incubate.nn import FusedMultiTransformer
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default_main_program().random_seed = 42


class TestFusedMultiTransformerOp(OpTest):
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    def setUp(self):
        self.config()
        self.generate_input_data()

        self.rtol = 1e-5
        # FIXME(wangxi): Because there is a problem with the test precision
        #  on A100, atol is temporarily set to 1e-2, and it will be
        #  changed back after the precision problem is solved.
        self.atol = 1e-2
        # make sure local development precision
        if "V100" in paddle.device.cuda.get_device_name():
            self.atol = 1e-4
        if self.x_type is np.float16:
            self.atol = 1e-1

        paddle.set_default_dtype(self.x_type)
        self.__class__.op_type = "fused_multi_transformer"
        # use autograd to check grad in this unittest.
        self.__class__.no_need_check_grad = False

        bias_attr = paddle.fluid.ParamAttr(
            initializer=paddle.fluid.initializer.Constant(value=0.0005))
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        self.q_proj = Linear(self.embed_dim,
                             self.embed_dim,
                             self.weight_attr,
                             bias_attr=bias_attr)
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        #bias_attr=self.bias_attr)

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        self.k_proj = Linear(self.kdim,
                             self.embed_dim,
                             self.weight_attr,
                             bias_attr=self.bias_attr)
        self.v_proj = Linear(self.vdim,
                             self.embed_dim,
                             self.weight_attr,
                             bias_attr=self.bias_attr)
        self.out_proj = Linear(self.embed_dim,
                               self.embed_dim,
                               self.weight_attr,
                               bias_attr=self.bias_attr)

        self.ffn1_proj = Linear(self.embed_dim,
                                4 * self.embed_dim,
                                self.weight_attr,
                                bias_attr=self.bias_attr)
        self.ffn2_proj = Linear(4 * self.embed_dim,
                                self.embed_dim,
                                self.weight_attr,
                                bias_attr=self.bias_attr)
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        paddle.set_default_dtype(np.float32)
        self.norm = LayerNorm(self.embed_dim)
        self.ffn_norm = LayerNorm(self.embed_dim)

        paddle.set_default_dtype(self.x_type)
        self.dropout = Dropout(self.dropout_prob, mode="upscale_in_train")
        self.activation = getattr(F, self.act_method)

    def config(self):
        # for debug
        self.debug = False

        self.x_type = np.float32
        self.attn_mask_type = np.float64
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        #self.attn_mask_type = np.bool
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        self.pre_layer_norm = True
        self.has_attn_mask = True

        # has_cache_kv, gen_cache_kv, stage
        # False,        False,        not generation
        # True,         True,         generation context stage
        # True,         False,        generation decoder stage
        self.has_cache_kv = False
        self.gen_cache_kv = False
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        self.has_pre_cache = False
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        self.training = False

        self.layers = 4
        self.batch_size = 8
        self.query_length = 128
        self.cache_length = 128
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        self.pre_cache_num = 64
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        self.head_dim = 64
        self.num_heads = 16
        self.embed_dim = self.head_dim * self.num_heads

        self.dropout_prob = 0.0
        self.attn_dropout_prob = 0.0
        self.act_method = 'gelu'
        self.weight_attr = None
        self.bias_attr = None
        self.kdim, self.vdim = self.embed_dim, self.embed_dim
        self.key_length, self.value_length = self.query_length, self.query_length

    def generate_input_data(self):
        self.query = np.random.rand(self.batch_size, self.query_length,
                                    self.embed_dim).astype(self.x_type)
        out_seq_len = self.key_length
        if self.has_cache_kv:
            assert self.training is False, ValueError(
                'cache_kv can only used in inference')
            self.cache_kv = np.random.rand(2, self.batch_size, self.num_heads,
                                           self.cache_length,
                                           self.head_dim).astype(self.x_type)
            if self.gen_cache_kv:
                self.cache_kv[:] = 0
            else:
                out_seq_len += self.cache_length
        else:
            self.cache_kv = None

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        if self.has_pre_cache:
            out_seq_len += self.pre_cache_num
            self.pre_cache_kv = np.random.rand(
                2, self.batch_size, self.num_heads, self.pre_cache_num,
                self.head_dim).astype(self.x_type)

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        if self.has_attn_mask:
            # [B, n_head, seq_len, out_seq_len]
            self.attn_mask = np.ones(
                (self.batch_size, 1, self.query_length, out_seq_len),
                dtype=self.attn_mask_type)
            if self.attn_mask_type == np.int64:
                self.attn_mask = np.tril(self.attn_mask)
            elif self.attn_mask_type == np.float64:
                if self.has_cache_kv and not self.gen_cache_kv:
                    # NOTE: decoder stage, -1(out_seq_len) should no mask
                    self.attn_mask[:, :, :, -2] = 0.0
                    self.attn_mask = (self.attn_mask - 1.0) * 1e4
                else:
                    self.attn_mask = (np.tril(self.attn_mask) - 1.0) * 1e4
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            elif self.attn_mask_type == np.bool_:
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                if self.has_cache_kv and not self.gen_cache_kv:
                    self.attn_mask[:, :, :, -2] = 0
                else:
                    self.attn_mask = np.tril(self.attn_mask)
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            else:
                raise ValueError(
                    "'attn_mask_type' should be 'int64' or 'float64'.")
        else:
            self.attn_mask = None
        self.key, self.value = self.query, self.query

        self.dout = np.random.random((self.batch_size, self.query_length,
                                      self.embed_dim)).astype(self.x_type)

    def GetBaselineOut(self):
        paddle.disable_static(place=paddle.CUDAPlace(0))
        tensor_query = paddle.to_tensor(self.query, stop_gradient=False)

        cache_kvs = []
        cache_kv = None
        if self.has_cache_kv:
            cache_kv = paddle.to_tensor(self.cache_kv, stop_gradient=False)

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        if self.has_pre_cache:
            pre_cache_kv = paddle.to_tensor(self.pre_cache_kv,
                                            stop_gradient=False)

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        if self.has_attn_mask:
            attn_mask = paddle.to_tensor(self.attn_mask, stop_gradient=False)
        else:
            attn_mask = None

        for i in range(self.layers):
            residual = tensor_query
            ln1_out = tensor_query
            if self.pre_layer_norm:
                ln1_out = self.norm(tensor_query)

            q = self.q_proj(ln1_out)
            q = tensor.reshape(x=q, shape=[0, 0, self.num_heads, self.head_dim])
            q_out = tensor.transpose(x=q, perm=[0, 2, 1, 3])
            k = self.k_proj(ln1_out)
            v = self.v_proj(ln1_out)
            k = tensor.reshape(x=k, shape=[0, 0, self.num_heads, self.head_dim])
            k_out = tensor.transpose(x=k, perm=[0, 2, 1, 3])
            v = tensor.reshape(x=v, shape=[0, 0, self.num_heads, self.head_dim])
            v_out = tensor.transpose(x=v, perm=[0, 2, 1, 3])

            if self.has_cache_kv:
                # [1, B, n_head, cache_seq_len, head_dim]
                cache_k, cache_v = paddle.split(cache_kv, 2)
                cache_k = paddle.squeeze(cache_k, axis=0)
                cache_v = paddle.squeeze(cache_v, axis=0)
                # [B, n_head, cache_seq_len + seq_len, head_dim]
                # out_seq_len = cache_seq_len + seq_len
                if self.debug:
                    print('q out is')
                    print(q_out[0, 0, :, :])
                    print('cache k out seq=128')
                    print(k_out[0, 0, :, :])
                if self.gen_cache_kv:
                    cache_kvs.append((k_out, v_out))
                else:
                    k_out = paddle.concat([cache_k, k_out], axis=-2)
                    v_out = paddle.concat([cache_v, v_out], axis=-2)

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            if self.has_pre_cache:
                pre_cache_k, pre_cache_v = paddle.split(pre_cache_kv, 2)
                pre_cache_k = paddle.squeeze(pre_cache_k, axis=0)
                pre_cache_v = paddle.squeeze(pre_cache_v, axis=0)
                k_out = paddle.concat([pre_cache_k, k_out], axis=-2)
                v_out = paddle.concat([pre_cache_v, v_out], axis=-2)

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            # [B, n_head, seq_len, head_dim] * [B, n_head, out_seq_len, head_dim]
            # --> [B, n_head, seq_len, out_seq_len]
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            qk_out = layers.matmul(x=q_out,
                                   y=k_out,
                                   transpose_y=True,
                                   alpha=self.head_dim**-0.5)
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            if self.debug:
                print('qk out is')
                print(qk_out[0][0][0])

            if attn_mask is not None:
                attn_mask = _convert_attention_mask(attn_mask, qk_out.dtype)
                attn_mask_out = qk_out + attn_mask
                if self.debug:
                    print('attn mask out is')
                    print(attn_mask_out[0][0][0])
                softmax_out = F.softmax(attn_mask_out)
            else:
                softmax_out = F.softmax(qk_out)

            if self.debug:
                print('softmax out is')
                print(softmax_out[0][0][0])
            if self.dropout_prob:
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                dropout_out = F.dropout(softmax_out,
                                        self.dropout_prob,
                                        training=self.training,
                                        mode="upscale_in_train")
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                # [B, n_head, seq_len, out_seq_len] * [B, n_head, out_seq_len, head_dim]
                # --> [B, n_head, seq_len, head_dim]
                qktv_out = tensor.matmul(dropout_out, v_out)
            else:
                qktv_out = tensor.matmul(softmax_out, v_out)

            fmha_out = tensor.transpose(qktv_out, perm=[0, 2, 1, 3])
            if self.debug:
                print('fmha out is')
                print(fmha_out[0][0][0])
            out_linear_in = tensor.reshape(
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                x=fmha_out, shape=[0, 0, fmha_out.shape[2] * fmha_out.shape[3]])
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            out = self.out_proj(out_linear_in)

            residual_out = residual + self.dropout(out)
            if not self.pre_layer_norm:
                attn_out = self.norm(residual_out)
            else:
                attn_out = residual_out

            ffn_ln_out = attn_out
            if self.pre_layer_norm:
                ffn_ln_out = self.ffn_norm(attn_out)

            ffn1_out = self.ffn1_proj(ffn_ln_out)
            ffn1_out = self.dropout(self.activation(ffn1_out))
            ffn2_out = self.ffn2_proj(ffn1_out)

            residual_out = attn_out + self.dropout(ffn2_out)
            final_out = residual_out
            if not self.pre_layer_norm:
                final_out = self.ffn_norm(residual_out)

            tensor_query = final_out

        if self.has_cache_kv and self.gen_cache_kv:
            return final_out, cache_kvs
        return final_out

    def GetFusedMultiTransformerOut(self):
        paddle.disable_static(place=paddle.CUDAPlace(0))
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        q_proj_weight = paddle.to_tensor(self.q_proj.weight,
                                         stop_gradient=False)
        k_proj_weight = paddle.to_tensor(self.k_proj.weight,
                                         stop_gradient=False)
        v_proj_weight = paddle.to_tensor(self.v_proj.weight,
                                         stop_gradient=False)
        out_linear_weight = paddle.to_tensor(self.out_proj.weight,
                                             stop_gradient=False)
        ffn1_weight = paddle.to_tensor(self.ffn1_proj.weight,
                                       stop_gradient=False)
        ffn2_weight = paddle.to_tensor(self.ffn2_proj.weight,
                                       stop_gradient=False)
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        if self.bias_attr is False:
            qkv_bias_tensor = None
            out_linear_bias = None
        else:
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            q_proj_bias = paddle.to_tensor(self.q_proj.bias,
                                           stop_gradient=False)
            k_proj_bias = paddle.to_tensor(self.k_proj.bias,
                                           stop_gradient=False)
            v_proj_bias = paddle.to_tensor(self.v_proj.bias,
                                           stop_gradient=False)
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            qkv_bias = np.concatenate(
                (q_proj_bias.numpy(), k_proj_bias.numpy(), v_proj_bias.numpy()))
            qkv_bias = qkv_bias.reshape((3, self.num_heads, self.head_dim))
            qkv_bias_tensor = paddle.to_tensor(qkv_bias, stop_gradient=False)
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            out_linear_bias = paddle.to_tensor(self.out_proj.bias,
                                               stop_gradient=False)
            ffn1_bias = paddle.to_tensor(self.ffn1_proj.bias,
                                         stop_gradient=False)
            ffn2_bias = paddle.to_tensor(self.ffn2_proj.bias,
                                         stop_gradient=False)
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        ln_scale = paddle.to_tensor(self.norm.weight, stop_gradient=False)
        ln_bias = paddle.to_tensor(self.norm.bias, stop_gradient=False)
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        ffn_ln_scale = paddle.to_tensor(self.ffn_norm.weight,
                                        stop_gradient=False)
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        ffn_ln_bias = paddle.to_tensor(self.ffn_norm.bias, stop_gradient=False)

        q_proj_weight = q_proj_weight.numpy().transpose((1, 0))
        k_proj_weight = k_proj_weight.numpy().transpose((1, 0))
        v_proj_weight = v_proj_weight.numpy().transpose((1, 0))
        qkv_weight = np.concatenate(
            (q_proj_weight, k_proj_weight, v_proj_weight))
        qkv_weight = qkv_weight.reshape(
            (3, self.num_heads, self.head_dim, self.embed_dim))

        x = paddle.to_tensor(self.query, stop_gradient=False)
        cache_kvs, cache_kv = None, None
        time_step = None
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        pre_caches, pre_cache = None, None
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        if self.has_cache_kv:
            cache_kvs = []

            max_seq_length = (self.cache_length + 128) // 128 * 128
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            cache_kv = np.zeros([
                2, self.batch_size, self.num_heads, max_seq_length,
                self.head_dim
            ],
                                dtype=self.x_type)
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            elems = 4
            if self.x_type is np.float16:
                elems = 8

            assert self.head_dim % elems == 0
            v_elems = self.head_dim // elems

            # [B, num_head, 128, head_dim]
            # cache_k_tmp = self.cache_kv[0, :]
            # [B, num_head, 128, head_dim / 4, 4]
            cache_k_tmp = self.cache_kv[0].reshape([
                self.batch_size, self.num_heads, self.cache_length, v_elems,
                elems
            ])
            # [B, num_head, head_dim / 4, 128, 4]
            cache_k_tmp = cache_k_tmp.transpose([0, 1, 3, 2, 4])

            cache_kv[0, :].reshape([
                self.batch_size, self.num_heads, v_elems, max_seq_length, elems
            ])[:, :, :, :self.cache_length, :] = cache_k_tmp

            cache_kv[1, :, :, :self.cache_length, :] = self.cache_kv[1]
            if self.gen_cache_kv:
                assert self.query_length == self.cache_length
                cache_kv[:] = 0
            else:
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                time_step = paddle.to_tensor([self.cache_length],
                                             dtype='int32',
                                             place=paddle.CPUPlace())
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        if self.has_pre_cache:
            cache_kvs = []
            max_seq_length = (self.cache_length +
                              128) // 128 * 128 + self.pre_cache_num
            cache_kv = np.zeros([
                2, self.batch_size, self.num_heads, max_seq_length,
                self.head_dim
            ],
                                dtype=self.x_type)
            pre_caches = []

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        if self.has_attn_mask:
            attn_mask = paddle.to_tensor(self.attn_mask, stop_gradient=False)
        else:
            attn_mask = None
        qkv_weight_tensor = paddle.to_tensor(qkv_weight, stop_gradient=False)
        epsilon = 1e-05
        ln2_epsilon = 1e-05

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        if attn_mask is not None and self.attn_mask_type != np.bool_:
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            attn_mask = _convert_attention_mask(attn_mask, x.dtype)

        qkv_weights, qkv_biases = [], []
        out_weights, out_biases = [], []
        ln_scales, ln_biases = [], []
        ffn1_weights, ffn1_biases = [], []
        ffn2_weights, ffn2_biases = [], []
        ffn_ln_scales, ffn_ln_biases = [], []
        for i in range(self.layers):
            qkv_weights.append(qkv_weight_tensor)
            qkv_biases.append(qkv_bias_tensor)
            out_weights.append(out_linear_weight)
            out_biases.append(out_linear_bias)
            ln_scales.append(ln_scale)
            ln_biases.append(ln_bias)
            ffn1_weights.append(ffn1_weight)
            ffn1_biases.append(ffn1_bias)
            ffn2_weights.append(ffn2_weight)
            ffn2_biases.append(ffn2_bias)
            ffn_ln_scales.append(ffn_ln_scale)
            ffn_ln_biases.append(ffn_ln_bias)
            if self.has_cache_kv:
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                cache_kvs.append(paddle.to_tensor(cache_kv,
                                                  stop_gradient=False))
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            if self.has_pre_cache:
                cache_kvs.append(paddle.to_tensor(cache_kv,
                                                  stop_gradient=False))
                pre_caches.append(
                    paddle.to_tensor(self.pre_cache_kv, stop_gradient=False))
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        final_out = fused_multi_transformer(x,
                                            ln_scales,
                                            ln_biases,
                                            qkv_weights,
                                            qkv_biases,
                                            out_weights,
                                            out_biases,
                                            ffn_ln_scales,
                                            ffn_ln_biases,
                                            ffn1_weights,
                                            ffn1_biases,
                                            ffn2_weights,
                                            ffn2_biases,
                                            pre_layer_norm=self.pre_layer_norm,
                                            epsilon=epsilon,
                                            cache_kvs=cache_kvs,
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                                            pre_caches=pre_caches,
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                                            time_step=time_step,
                                            attn_mask=attn_mask,
                                            dropout_rate=self.dropout_prob,
                                            training=self.training)
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        if self.has_cache_kv:
            return final_out[0], final_out[1]

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        if self.has_pre_cache:
            return final_out[0]

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        return final_out

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    def GetFusedMultiTransformerOutStatic(self):
        paddle.enable_static()
        x = paddle.fluid.data('x', self.query.shape, self.query.dtype)
        cache_kvs, cache_kv = None, None
        time_step = None
        time_step_feed = None
        pre_caches, pre_cache = None, None
        if self.has_cache_kv:
            cache_kvs = []

            max_seq_length = (self.cache_length + 128) // 128 * 128
            cache_kv = np.zeros([
                2, self.batch_size, self.num_heads, max_seq_length,
                self.head_dim
            ],
                                dtype=self.x_type)

            elems = 4
            if self.x_type is np.float16:
                elems = 8

            assert self.head_dim % elems == 0
            v_elems = self.head_dim // elems
            cache_k_tmp = self.cache_kv[0].reshape([
                self.batch_size, self.num_heads, self.cache_length, v_elems,
                elems
            ])
            # [B, num_head, head_dim / 4, 128, 4]
            cache_k_tmp = cache_k_tmp.transpose([0, 1, 3, 2, 4])

            cache_kv[0, :].reshape([
                self.batch_size, self.num_heads, v_elems, max_seq_length, elems
            ])[:, :, :, :self.cache_length, :] = cache_k_tmp

            cache_kv[1, :, :, :self.cache_length, :] = self.cache_kv[1]
            if self.gen_cache_kv:
                assert self.query_length == self.cache_length
                cache_kv[:] = 0
            else:
                time_step = layers.fill_constant(shape=[1],
                                                 dtype="int32",
                                                 value=0,
                                                 force_cpu=True)
                time_step_feed = self.cache_length

        if self.has_pre_cache:
            cache_kvs = []
            max_seq_length = (self.cache_length +
                              128) // 128 * 128 + self.pre_cache_num
            cache_kv = np.zeros([
                2, self.batch_size, self.num_heads, max_seq_length,
                self.head_dim
            ],
                                dtype=self.x_type)
            pre_caches = []

        attn_mask = None
        epsilon = 1e-05
        ln2_epsilon = 1e-05

        qkv_weights_attr, qkv_biases_attr = [], []
        out_weights_attr, out_biases_attr = [], []
        ln_scales_attr, ln_biases_attr = [], []
        ffn1_weights_attr, ffn1_biases_attr = [], []
        ffn2_weights_attr, ffn2_biases_attr = [], []
        ffn_ln_scales_attr, ffn_ln_biases_attr = [], []

        if self.has_cache_kv:
            cache_kvs_feed = []
        if self.has_pre_cache:
            cache_kvs_feed = []
            pre_caches_feed = []

        for i in range(self.layers):
            qkv_weights_attr.append(self.weight_attr)
            qkv_biases_attr.append(self.bias_attr)
            out_weights_attr.append(self.weight_attr)
            out_biases_attr.append(self.bias_attr)
            ln_scales_attr.append(self.ln_w_attr)
            ln_biases_attr.append(self.ln_b_attr)
            ffn1_weights_attr.append(self.weight_attr)
            ffn1_biases_attr.append(self.bias_attr)
            ffn2_weights_attr.append(self.weight_attr)
            ffn2_biases_attr.append(self.bias_attr)
            ffn_ln_scales_attr.append(self.ln_w_attr)
            ffn_ln_biases_attr.append(self.ln_b_attr)

        transformer = FusedMultiTransformer(
            self.embed_dim,
            self.num_heads,
            4 * self.embed_dim,
            self.dropout_prob,
            normalize_before=self.pre_layer_norm,
            ln_scale_attrs=ln_scales_attr,
            ln_bias_attrs=ln_biases_attr,
            qkv_weight_attrs=qkv_weights_attr,
            qkv_bias_attrs=qkv_biases_attr,
            linear_weight_attrs=out_weights_attr,
            linear_bias_attrs=out_biases_attr,
            ffn_ln_scale_attrs=ffn_ln_scales_attr,
            ffn_ln_bias_attrs=ffn_ln_biases_attr,
            ffn1_weight_attrs=ffn1_weights_attr,
            ffn1_bias_attrs=ffn1_biases_attr,
            ffn2_weight_attrs=ffn2_weights_attr,
            ffn2_bias_attrs=ffn2_biases_attr)

        transformer.eval()

        for i in range(self.layers):
            if self.has_cache_kv:
                cache_kvs.append(
                    layers.fill_constant(shape=cache_kv.shape,
                                         dtype=cache_kv.dtype,
                                         value=0))
                cache_kvs_feed.append(cache_kv)

            if self.has_pre_cache:
                cache_kvs.append(
                    layers.fill_constant(shape=cache_kv.shape,
                                         dtype=cache_kv.dtype,
                                         value=0))
                cache_kvs_feed.append(cache_kv)
                pre_caches.append(
                    layers.fill_constant(shape=self.pre_cache_kv.shape,
                                         dtype=self.pre_cache_kv.dtype,
                                         value=0))
                pre_caches_feed.append(self.pre_cache_kv)

        final_out = transformer(x,
                                attn_mask=attn_mask,
                                caches=cache_kvs,
                                pre_caches=pre_caches,
                                time_step=time_step)[0]
        exe = paddle.static.Executor(place=paddle.CUDAPlace(0))
        exe.run(paddle.static.default_startup_program())
        feed_data = {
            'x': self.query,
            'cache_kvs': cache_kvs_feed,
            'pre_caches': pre_caches_feed,
            'time_step': time_step_feed,
            'attn_mask': attn_mask
        }
        out = exe.run(paddle.fluid.default_main_program(),
                      feed=feed_data,
                      fetch_list=[final_out])
        paddle.disable_static()
        return out[0]

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    def test_fused_multi_transformer_op(self):
        final_out_ref = self.GetBaselineOut()
        final_out = self.GetFusedMultiTransformerOut()
        if self.has_cache_kv:
            final_out, cache_kv_out = final_out
            s = cache_kv_out[0].shape
            bsz = s[1]
            num_head = s[2]
            max_seq_len = s[3]
            head_dim = s[4]
            elems = 8 if self.x_type is np.float16 else 4
            v_elems = head_dim // elems

            if self.debug:
                print("cache_k out timestep=128")
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                print(cache_kv_out[0].reshape(
                    [2, bsz, num_head, v_elems, max_seq_len,
                     elems])[0, 0, 0, :, self.cache_length, :])
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                print("cache_v out timestep=128")
                print(cache_kv_out[0][1, 0, 0, self.cache_length, :])

            if self.gen_cache_kv:
                final_out_ref, cache_kvs = final_out_ref
                for i in range(self.layers):
                    cache_k_ref = cache_kvs[i][0]
                    cache_v_ref = cache_kvs[i][1]

                    cache_k = cache_kv_out[i][0, :]
                    cache_k = cache_k.reshape(
                        [bsz, num_head, v_elems, max_seq_len, elems])
                    cache_k = cache_k[:, :, :, :self.cache_length, :]
                    cache_k = cache_k.transpose([0, 1, 3, 2, 4])
                    cache_k = cache_k.reshape(
                        [bsz, num_head, self.cache_length, head_dim])

                    cache_v = cache_kv_out[i][1, :, :, :self.cache_length, :]

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                    np.testing.assert_allclose(cache_k_ref,
                                               cache_k,
                                               rtol=self.rtol,
                                               atol=self.atol)
                    np.testing.assert_allclose(cache_v_ref,
                                               cache_v,
                                               rtol=self.rtol,
                                               atol=self.atol)
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                    if i == 0:
                        break

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        np.testing.assert_allclose(final_out_ref,
                                   final_out,
                                   rtol=self.rtol,
                                   atol=self.atol)
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class TestFusedMultiTransformerOpFp16(TestFusedMultiTransformerOp):
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    def config(self):
        super().config()
        self.x_type = np.float16
        self.layers = 3  # odd layers


class TestFusedMultiTransformerOpCacheKV(TestFusedMultiTransformerOp):
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    def config(self):
        super().config()
        self.has_cache_kv = True
        self.query_length = 1
        self.key_length, self.value_length = 1, 1
        self.layers = 3  # odd layers


class TestFusedMultiTransformerOpCacheKVFp16(TestFusedMultiTransformerOp):
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    def config(self):
        super().config()
        self.has_cache_kv = True
        self.query_length = 1
        self.key_length, self.value_length = 1, 1
        self.x_type = np.float16


class TestFusedMultiTransformerOpGenCacheKV(TestFusedMultiTransformerOp):
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    def config(self):
        super().config()
        self.has_cache_kv = True
        self.gen_cache_kv = True


class TestFusedMultiTransformerOpGenCacheKVFp16(TestFusedMultiTransformerOp):
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    def config(self):
        super().config()
        self.has_cache_kv = True
        self.gen_cache_kv = True
        self.x_type = np.float16
        self.layers = 3  # odd layers


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class TestFusedMultiTransformerOpPostLayerNormFp16(TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.x_type = np.float16
        self.layers = 3  # odd layers
        self.pre_layer_norm = False


class TestFusedMultiTransformerOpCacheKVPostLayerNorm(
        TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_cache_kv = True
        self.query_length = 1
        self.key_length, self.value_length = 1, 1
        self.layers = 3  # odd layers
        self.pre_layer_norm = False


class TestFusedMultiTransformerOpCacheKVPostLayerNormFp16(
        TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_cache_kv = True
        self.query_length = 1
        self.key_length, self.value_length = 1, 1
        self.x_type = np.float16
        self.pre_layer_norm = False


class TestFusedMultiTransformerOpGenCacheKVPostLayerNorm(
        TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_cache_kv = True
        self.gen_cache_kv = True
        self.pre_layer_norm = False


class TestFusedMultiTransformerOpGenCacheKVPostLayerNormFp16(
        TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_cache_kv = True
        self.gen_cache_kv = True
        self.x_type = np.float16
        self.layers = 3  # odd layers
        self.pre_layer_norm = False


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class TestFusedMultiTransformerOpPreCache(TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_pre_cache = True
        self.x_type = np.float16


class TestFusedMultiTransformerOpPreCacheStatic(TestFusedMultiTransformerOp):

    def config(self):
        super().config()
        self.has_pre_cache = True
        self.has_attn_mask = False
        self.x_type = np.float32
        self.weight_attr = paddle.ParamAttr(
            initializer=paddle.fluid.initializer.Constant(0.))
        self.bias_attr = paddle.ParamAttr(
            initializer=paddle.fluid.initializer.Constant(0.0005))
        self.ln_w_attr = paddle.ParamAttr(
            initializer=paddle.fluid.initializer.Constant(1.))
        self.ln_b_attr = paddle.ParamAttr(
            initializer=paddle.fluid.initializer.Constant(0.))

    def test_fused_multi_transformer_op(self):
        final_out_ref = self.GetBaselineOut()
        final_out = self.GetFusedMultiTransformerOutStatic()

        np.testing.assert_allclose(final_out_ref,
                                   final_out,
                                   rtol=self.rtol,
                                   atol=self.atol)


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if __name__ == "__main__":
    unittest.main()