| | import torch |
| | import torch.nn as nn |
| | import torch.nn.functional as F |
| | import math |
| | import numpy as np |
| |
|
| | |
| | |
| |
|
| | class AutoCorrelation(nn.Module): |
| | """ |
| | AutoCorrelation Mechanism with the following two phases: |
| | (1) period-based dependencies discovery |
| | (2) time delay aggregation |
| | This block can replace the self-attention family mechanism seamlessly. |
| | """ |
| |
|
| | def __init__(self, mask_flag=True, factor=1, scale=None, attention_dropout=0.1, output_attention=False): |
| | super(AutoCorrelation, self).__init__() |
| | self.factor = factor |
| | self.scale = scale |
| | self.mask_flag = mask_flag |
| | self.output_attention = output_attention |
| | self.dropout = nn.Dropout(attention_dropout) |
| |
|
| | def time_delay_agg_training(self, values, corr): |
| | """ |
| | SpeedUp version of Autocorrelation (a batch-normalization style design) |
| | This is for the training phase. |
| | """ |
| | head = values.shape[1] |
| | channel = values.shape[2] |
| | length = values.shape[3] |
| | |
| | top_k = int(self.factor * math.log(length)) |
| | mean_value = torch.mean(torch.mean(corr, dim=1), dim=1) |
| | index = torch.topk(torch.mean(mean_value, dim=0), top_k, dim=-1)[1] |
| | weights = torch.stack([mean_value[:, index[i]] for i in range(top_k)], dim=-1) |
| | |
| | tmp_corr = torch.softmax(weights, dim=-1) |
| | |
| | tmp_values = values |
| | delays_agg = torch.zeros_like(values).float() |
| | for i in range(top_k): |
| | pattern = torch.roll(tmp_values, -int(index[i]), -1) |
| | delays_agg = delays_agg + pattern * \ |
| | (tmp_corr[:, i].unsqueeze(1).unsqueeze(1).unsqueeze(1).repeat(1, head, channel, length)) |
| | return delays_agg |
| |
|
| | def time_delay_agg_inference(self, values, corr): |
| | """ |
| | SpeedUp version of Autocorrelation (a batch-normalization style design) |
| | This is for the inference phase. |
| | """ |
| | batch = values.shape[0] |
| | head = values.shape[1] |
| | channel = values.shape[2] |
| | length = values.shape[3] |
| | |
| | init_index = torch.arange(length).unsqueeze(0).unsqueeze(0).unsqueeze(0).repeat(batch, head, channel, 1).cuda() |
| | |
| | top_k = int(self.factor * math.log(length)) |
| | mean_value = torch.mean(torch.mean(corr, dim=1), dim=1) |
| | weights, delay = torch.topk(mean_value, top_k, dim=-1) |
| | |
| | tmp_corr = torch.softmax(weights, dim=-1) |
| | |
| | tmp_values = values.repeat(1, 1, 1, 2) |
| | delays_agg = torch.zeros_like(values).float() |
| | for i in range(top_k): |
| | tmp_delay = init_index + delay[:, i].unsqueeze(1).unsqueeze(1).unsqueeze(1).repeat(1, head, channel, length) |
| | pattern = torch.gather(tmp_values, dim=-1, index=tmp_delay) |
| | delays_agg = delays_agg + pattern * \ |
| | (tmp_corr[:, i].unsqueeze(1).unsqueeze(1).unsqueeze(1).repeat(1, head, channel, length)) |
| | return delays_agg |
| |
|
| | def time_delay_agg_full(self, values, corr): |
| | """ |
| | Standard version of Autocorrelation |
| | """ |
| | batch = values.shape[0] |
| | head = values.shape[1] |
| | channel = values.shape[2] |
| | length = values.shape[3] |
| | |
| | init_index = torch.arange(length).unsqueeze(0).unsqueeze(0).unsqueeze(0).repeat(batch, head, channel, 1).cuda() |
| | |
| | top_k = int(self.factor * math.log(length)) |
| | weights, delay = torch.topk(corr, top_k, dim=-1) |
| | |
| | tmp_corr = torch.softmax(weights, dim=-1) |
| | |
| | tmp_values = values.repeat(1, 1, 1, 2) |
| | delays_agg = torch.zeros_like(values).float() |
| | for i in range(top_k): |
| | tmp_delay = init_index + delay[..., i].unsqueeze(-1) |
| | pattern = torch.gather(tmp_values, dim=-1, index=tmp_delay) |
| | delays_agg = delays_agg + pattern * (tmp_corr[..., i].unsqueeze(-1)) |
| | return delays_agg |
| |
|
| | def forward(self, queries, keys, values, attn_mask): |
| | B, L, H, E = queries.shape |
| | _, S, _, D = values.shape |
| | if L > S: |
| | zeros = torch.zeros_like(queries[:, :(L - S), :]).float() |
| | values = torch.cat([values, zeros], dim=1) |
| | keys = torch.cat([keys, zeros], dim=1) |
| | else: |
| | values = values[:, :L, :, :] |
| | keys = keys[:, :L, :, :] |
| |
|
| | |
| | q_fft = torch.fft.rfft(queries.permute(0, 2, 3, 1).contiguous(), dim=-1) |
| | k_fft = torch.fft.rfft(keys.permute(0, 2, 3, 1).contiguous(), dim=-1) |
| | res = q_fft * torch.conj(k_fft) |
| | corr = torch.fft.irfft(res, dim=-1) |
| |
|
| | |
| | if self.training: |
| | V = self.time_delay_agg_training(values.permute(0, 2, 3, 1).contiguous(), corr).permute(0, 3, 1, 2) |
| | else: |
| | V = self.time_delay_agg_inference(values.permute(0, 2, 3, 1).contiguous(), corr).permute(0, 3, 1, 2) |
| |
|
| | if self.output_attention: |
| | return (V.contiguous(), corr.permute(0, 3, 1, 2)) |
| | else: |
| | return (V.contiguous(), None) |
| |
|
| |
|
| | class AutoCorrelationLayer(nn.Module): |
| | def __init__(self, correlation, d_model, n_heads, d_keys=None, |
| | d_values=None): |
| | super(AutoCorrelationLayer, self).__init__() |
| |
|
| | d_keys = d_keys or (d_model // n_heads) |
| | d_values = d_values or (d_model // n_heads) |
| |
|
| | self.inner_correlation = correlation |
| | self.query_projection = nn.Linear(d_model, d_keys * n_heads) |
| | self.key_projection = nn.Linear(d_model, d_keys * n_heads) |
| | self.value_projection = nn.Linear(d_model, d_values * n_heads) |
| | self.out_projection = nn.Linear(d_values * n_heads, d_model) |
| | self.n_heads = n_heads |
| |
|
| | def forward(self, queries, keys, values, attn_mask): |
| | B, L, _ = queries.shape |
| | _, S, _ = keys.shape |
| | H = self.n_heads |
| |
|
| | queries = self.query_projection(queries).view(B, L, H, -1) |
| | keys = self.key_projection(keys).view(B, S, H, -1) |
| | values = self.value_projection(values).view(B, S, H, -1) |
| |
|
| | out, attn = self.inner_correlation( |
| | queries, |
| | keys, |
| | values, |
| | attn_mask |
| | ) |
| | out = out.view(B, L, -1) |
| |
|
| | return self.out_projection(out), attn |
| |
|
| | class my_Layernorm(nn.Module): |
| | """ |
| | Special designed layernorm for the seasonal part |
| | """ |
| |
|
| | def __init__(self, channels): |
| | super(my_Layernorm, self).__init__() |
| | self.layernorm = nn.LayerNorm(channels) |
| |
|
| | def forward(self, x): |
| | x_hat = self.layernorm(x) |
| | bias = torch.mean(x_hat, dim=1).unsqueeze(1).repeat(1, x.shape[1], 1) |
| | return x_hat - bias |
| |
|
| |
|
| | class moving_avg(nn.Module): |
| | """ |
| | Moving average block to highlight the trend of time series |
| | """ |
| |
|
| | def __init__(self, kernel_size, stride): |
| | super(moving_avg, self).__init__() |
| | self.kernel_size = kernel_size |
| | self.avg = nn.AvgPool1d(kernel_size=kernel_size, stride=stride, padding=0) |
| |
|
| | def forward(self, x): |
| | |
| | front = x[:, 0:1, :].repeat(1, (self.kernel_size - 1) // 2, 1) |
| | end = x[:, -1:, :].repeat(1, (self.kernel_size - 1) // 2, 1) |
| | x = torch.cat([front, x, end], dim=1) |
| | x = self.avg(x.permute(0, 2, 1)) |
| | x = x.permute(0, 2, 1) |
| | return x |
| |
|
| |
|
| | class series_decomp(nn.Module): |
| | """ |
| | Series decomposition block |
| | """ |
| |
|
| | def __init__(self, kernel_size): |
| | super(series_decomp, self).__init__() |
| | self.moving_avg = moving_avg(kernel_size, stride=1) |
| |
|
| | def forward(self, x): |
| | moving_mean = self.moving_avg(x) |
| | res = x - moving_mean |
| | return res, moving_mean |
| |
|
| |
|
| | class series_decomp_multi(nn.Module): |
| | """ |
| | Multiple Series decomposition block from FEDformer |
| | """ |
| |
|
| | def __init__(self, kernel_size): |
| | super(series_decomp_multi, self).__init__() |
| | self.kernel_size = kernel_size |
| | self.series_decomp = [series_decomp(kernel) for kernel in kernel_size] |
| |
|
| | def forward(self, x): |
| | moving_mean = [] |
| | res = [] |
| | for func in self.series_decomp: |
| | sea, moving_avg = func(x) |
| | moving_mean.append(moving_avg) |
| | res.append(sea) |
| |
|
| | sea = sum(res) / len(res) |
| | moving_mean = sum(moving_mean) / len(moving_mean) |
| | return sea, moving_mean |
| |
|
| |
|
| | class EncoderLayer(nn.Module): |
| | """ |
| | Autoformer encoder layer with the progressive decomposition architecture |
| | """ |
| |
|
| | def __init__(self, attention, d_model, d_ff=None, moving_avg=25, dropout=0.1, activation="relu"): |
| | super(EncoderLayer, self).__init__() |
| | d_ff = d_ff or 4 * d_model |
| | self.attention = attention |
| | self.conv1 = nn.Conv1d(in_channels=d_model, out_channels=d_ff, kernel_size=1, bias=False) |
| | self.conv2 = nn.Conv1d(in_channels=d_ff, out_channels=d_model, kernel_size=1, bias=False) |
| | self.decomp1 = series_decomp(moving_avg) |
| | self.decomp2 = series_decomp(moving_avg) |
| | self.dropout = nn.Dropout(dropout) |
| | self.activation = F.relu if activation == "relu" else F.gelu |
| |
|
| | def forward(self, x, attn_mask=None): |
| | new_x, attn = self.attention( |
| | x, x, x, |
| | attn_mask=attn_mask |
| | ) |
| | x = x + self.dropout(new_x) |
| | x, _ = self.decomp1(x) |
| | y = x |
| | y = self.dropout(self.activation(self.conv1(y.transpose(-1, 1)))) |
| | y = self.dropout(self.conv2(y).transpose(-1, 1)) |
| | res, _ = self.decomp2(x + y) |
| | return res, attn |
| |
|
| |
|
| | class Encoder(nn.Module): |
| | """ |
| | Autoformer encoder |
| | """ |
| |
|
| | def __init__(self, attn_layers, conv_layers=None, norm_layer=None): |
| | super(Encoder, self).__init__() |
| | self.attn_layers = nn.ModuleList(attn_layers) |
| | self.conv_layers = nn.ModuleList(conv_layers) if conv_layers is not None else None |
| | self.norm = norm_layer |
| |
|
| | def forward(self, x, attn_mask=None): |
| | attns = [] |
| | if self.conv_layers is not None: |
| | for attn_layer, conv_layer in zip(self.attn_layers, self.conv_layers): |
| | x, attn = attn_layer(x, attn_mask=attn_mask) |
| | x = conv_layer(x) |
| | attns.append(attn) |
| | x, attn = self.attn_layers[-1](x) |
| | attns.append(attn) |
| | else: |
| | for attn_layer in self.attn_layers: |
| | x, attn = attn_layer(x, attn_mask=attn_mask) |
| | attns.append(attn) |
| |
|
| | if self.norm is not None: |
| | x = self.norm(x) |
| |
|
| | return x, attns |
| |
|
| |
|
| | class DecoderLayer(nn.Module): |
| | """ |
| | Autoformer decoder layer with the progressive decomposition architecture |
| | """ |
| |
|
| | def __init__(self, self_attention, cross_attention, d_model, c_out, d_ff=None, |
| | moving_avg=25, dropout=0.1, activation="relu"): |
| | super(DecoderLayer, self).__init__() |
| | d_ff = d_ff or 4 * d_model |
| | self.self_attention = self_attention |
| | self.cross_attention = cross_attention |
| | self.conv1 = nn.Conv1d(in_channels=d_model, out_channels=d_ff, kernel_size=1, bias=False) |
| | self.conv2 = nn.Conv1d(in_channels=d_ff, out_channels=d_model, kernel_size=1, bias=False) |
| | self.decomp1 = series_decomp(moving_avg) |
| | self.decomp2 = series_decomp(moving_avg) |
| | self.decomp3 = series_decomp(moving_avg) |
| | self.dropout = nn.Dropout(dropout) |
| | self.projection = nn.Conv1d(in_channels=d_model, out_channels=c_out, kernel_size=3, stride=1, padding=1, |
| | padding_mode='circular', bias=False) |
| | self.activation = F.relu if activation == "relu" else F.gelu |
| |
|
| | def forward(self, x, cross, x_mask=None, cross_mask=None): |
| | x = x + self.dropout(self.self_attention( |
| | x, x, x, |
| | attn_mask=x_mask |
| | )[0]) |
| | x, trend1 = self.decomp1(x) |
| | x = x + self.dropout(self.cross_attention( |
| | x, cross, cross, |
| | attn_mask=cross_mask |
| | )[0]) |
| | x, trend2 = self.decomp2(x) |
| | y = x |
| | y = self.dropout(self.activation(self.conv1(y.transpose(-1, 1)))) |
| | y = self.dropout(self.conv2(y).transpose(-1, 1)) |
| | x, trend3 = self.decomp3(x + y) |
| |
|
| | residual_trend = trend1 + trend2 + trend3 |
| | residual_trend = self.projection(residual_trend.permute(0, 2, 1)).transpose(1, 2) |
| | return x, residual_trend |
| |
|
| |
|
| | class Decoder(nn.Module): |
| | """ |
| | Autoformer encoder |
| | """ |
| |
|
| | def __init__(self, layers, norm_layer=None, projection=None): |
| | super(Decoder, self).__init__() |
| | self.layers = nn.ModuleList(layers) |
| | self.norm = norm_layer |
| | self.projection = projection |
| |
|
| | def forward(self, x, cross, x_mask=None, cross_mask=None, trend=None): |
| | for layer in self.layers: |
| | x, residual_trend = layer(x, cross, x_mask=x_mask, cross_mask=cross_mask) |
| | trend = trend + residual_trend |
| |
|
| | if self.norm is not None: |
| | x = self.norm(x) |
| |
|
| | if self.projection is not None: |
| | x = self.projection(x) |
| | return x, trend |
| |
|
| | class FixedEmbedding(nn.Module): |
| | def __init__(self, c_in, d_model): |
| | super(FixedEmbedding, self).__init__() |
| |
|
| | w = torch.zeros(c_in, d_model).float() |
| | w.require_grad = False |
| |
|
| | position = torch.arange(0, c_in).float().unsqueeze(1) |
| | div_term = (torch.arange(0, d_model, 2).float() |
| | * -(math.log(10000.0) / d_model)).exp() |
| |
|
| | w[:, 0::2] = torch.sin(position * div_term) |
| | w[:, 1::2] = torch.cos(position * div_term) |
| |
|
| | self.emb = nn.Embedding(c_in, d_model) |
| | self.emb.weight = nn.Parameter(w, requires_grad=False) |
| |
|
| | def forward(self, x): |
| | return self.emb(x).detach() |
| |
|
| | class TemporalEmbedding(nn.Module): |
| | def __init__(self, d_model, embed_type='fixed', freq='h'): |
| | super(TemporalEmbedding, self).__init__() |
| |
|
| | hour_size = 96 |
| | weekday_size = 7 |
| |
|
| | Embed = FixedEmbedding if embed_type == 'fixed' else nn.Embedding |
| | self.hour_embed = Embed(hour_size, d_model) |
| | self.weekday_embed = Embed(weekday_size, d_model) |
| | |
| | def forward(self, x): |
| | x = x.long() |
| | hour_x = self.hour_embed(x[:, :, 0]) |
| | weekday_x = self.weekday_embed(x[:, :, 1]) |
| |
|
| | return hour_x + weekday_x |
| |
|
| | class PositionalEmbedding(nn.Module): |
| | def __init__(self, d_model, max_len=5000): |
| | super(PositionalEmbedding, self).__init__() |
| | |
| | pe = torch.zeros(max_len, d_model).float() |
| | pe.require_grad = False |
| |
|
| | position = torch.arange(0, max_len).float().unsqueeze(1) |
| | div_term = (torch.arange(0, d_model, 2).float() |
| | * -(math.log(10000.0) / d_model)).exp() |
| |
|
| | pe[:, 0::2] = torch.sin(position * div_term) |
| | pe[:, 1::2] = torch.cos(position * div_term) |
| |
|
| | pe = pe.unsqueeze(0) |
| | self.register_buffer('pe', pe) |
| |
|
| | def forward(self, x): |
| | return self.pe[:, :x.size(1)] |
| |
|
| | class TokenEmbedding(nn.Module): |
| | def __init__(self, c_in, d_model): |
| | super(TokenEmbedding, self).__init__() |
| | padding = 1 if torch.__version__ >= '1.5.0' else 2 |
| | self.tokenConv = nn.Conv1d(in_channels=c_in, out_channels=d_model, |
| | kernel_size=3, padding=padding, padding_mode='circular', bias=False) |
| | for m in self.modules(): |
| | if isinstance(m, nn.Conv1d): |
| | nn.init.kaiming_normal_( |
| | m.weight, mode='fan_in', nonlinearity='leaky_relu') |
| |
|
| | def forward(self, x): |
| | x = self.tokenConv(x.permute(0, 2, 1)).transpose(1, 2) |
| | return x |
| |
|
| | class DataEmbedding_wo_pos(nn.Module): |
| | def __init__(self, c_in, d_model, embed_type='fixed', freq='h', dropout=0.1): |
| | super(DataEmbedding_wo_pos, self).__init__() |
| |
|
| | self.value_embedding = TokenEmbedding(c_in=c_in, d_model=d_model) |
| | self.temporal_embedding = TemporalEmbedding(d_model=d_model, embed_type=embed_type, |
| | freq=freq) |
| | self.dropout = nn.Dropout(p=dropout) |
| |
|
| | def forward(self, x, x_mark): |
| | if x_mark is None: |
| | x = self.value_embedding(x) |
| | else: |
| | x = self.value_embedding(x) + self.temporal_embedding(x_mark) |
| | return self.dropout(x) |
| |
|
| | class Autoformer(nn.Module): |
| | """ |
| | Autoformer is the first method to achieve the series-wise connection, |
| | with inherent O(LlogL) complexity |
| | Paper link: https://openreview.net/pdf?id=I55UqU-M11y |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | enc_in, |
| | dec_in, |
| | c_out, |
| | pred_len, |
| | seq_len, |
| | d_model = 64, |
| | data_idx = [0,3,4,5,6,7], |
| | time_idx = [1,2], |
| | output_attention = False, |
| | moving_avg_val = 25, |
| | factor = 3, |
| | n_heads = 4, |
| | d_ff = 512, |
| | d_layers = 3, |
| | e_layers = 3, |
| | activation = 'gelu', |
| | dropout = 0.1 |
| | ): |
| | super(Autoformer, self).__init__() |
| | self.seq_len = seq_len |
| | self.pred_len = pred_len |
| | self.output_attention = output_attention |
| | self.data_idx = data_idx |
| | self.time_idx = time_idx |
| | dec_in = enc_in |
| | self.dec_in = dec_in |
| | self.label_len = self.seq_len//2 |
| |
|
| | |
| | kernel_size = moving_avg_val |
| | self.decomp = series_decomp(kernel_size) |
| |
|
| | |
| | self.enc_embedding = DataEmbedding_wo_pos(enc_in, d_model, 'fixed','h', |
| | dropout) |
| | |
| | self.encoder = Encoder( |
| | [ |
| | EncoderLayer( |
| | AutoCorrelationLayer( |
| | AutoCorrelation(False, factor, attention_dropout=dropout, |
| | output_attention=output_attention), |
| | d_model, n_heads), |
| | d_model, |
| | d_ff, |
| | moving_avg=moving_avg_val, |
| | dropout=dropout, |
| | activation=activation |
| | ) for l in range(e_layers) |
| | ], |
| | norm_layer=my_Layernorm(d_model) |
| | ) |
| | |
| | self.dec_embedding = DataEmbedding_wo_pos(dec_in, d_model, 'fixed','h', |
| | dropout) |
| | self.decoder = Decoder( |
| | [ |
| | DecoderLayer( |
| | AutoCorrelationLayer( |
| | AutoCorrelation(True, factor, attention_dropout=dropout, |
| | output_attention=False), |
| | d_model, n_heads), |
| | AutoCorrelationLayer( |
| | AutoCorrelation(False, factor, attention_dropout=dropout, |
| | output_attention=False), |
| | d_model, n_heads), |
| | d_model, |
| | c_out, |
| | d_ff, |
| | moving_avg=moving_avg_val, |
| | dropout=dropout, |
| | activation=activation, |
| | ) |
| | for l in range(d_layers) |
| | ], |
| | norm_layer=my_Layernorm(d_model), |
| | projection=nn.Linear(d_model, c_out, bias=True) |
| | ) |
| |
|
| | def forecast(self, x_enc, x_mark_enc, x_dec, x_mark_dec): |
| | |
| | mean = torch.mean(x_enc, dim=1).unsqueeze(1).repeat(1, self.pred_len, 1) |
| | zeros = torch.zeros([x_mark_dec.shape[0], self.pred_len,self.dec_in], device=x_enc.device) |
| | seasonal_init, trend_init = self.decomp(x_enc) |
| | |
| | trend_init = torch.cat([trend_init[:, -self.label_len:, :], mean], dim=1) |
| | seasonal_init = torch.cat([seasonal_init[:, -self.label_len:, :], zeros], dim=1) |
| | |
| | enc_out = self.enc_embedding(x_enc, x_mark_enc) |
| | enc_out, attns = self.encoder(enc_out, attn_mask=None) |
| | |
| | x_mark_dec = torch.cat([x_mark_enc,x_mark_dec],dim=1)[:,-(self.label_len+self.pred_len):,:] |
| | dec_out = self.dec_embedding(seasonal_init, x_mark_dec) |
| | seasonal_part, trend_part = self.decoder(dec_out, enc_out, x_mask=None, cross_mask=None, |
| | trend=trend_init) |
| | dec_out = trend_part + seasonal_part |
| |
|
| | |
| | return dec_out[:, -self.pred_len:, :] |
| |
|
| | def forward(self, x, fut_time): |
| |
|
| | x_enc = x[:,:,self.data_idx] |
| | x_mark_enc = x[:,:,self.time_idx] |
| | |
| | x_mark_dec = fut_time |
| | |
| | |
| | |
| | return self.forecast(x_enc, x_mark_enc, None, x_mark_dec)[:,-1,[0]] |