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import torch |
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import torch.nn as nn |
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import torch.nn.functional as F |
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import torch.fft |
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from layers.Embed import DataEmbedding |
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from layers.Conv_Blocks import Inception_Block_V1 |
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def FFT_for_Period(x, k=2): |
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xf = torch.fft.rfft(x, dim=1) |
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frequency_list = abs(xf).mean(0).mean(-1) |
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frequency_list[0] = 0 |
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_, top_list = torch.topk(frequency_list, k) |
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top_list = top_list.detach().cpu().numpy() |
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period = x.shape[1] // top_list |
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return period, abs(xf).mean(-1)[:, top_list] |
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class TimesBlock(nn.Module): |
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def __init__(self, configs): |
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super(TimesBlock, self).__init__() |
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self.seq_len = configs.seq_len |
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self.pred_len = configs.pred_len |
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self.k = configs.top_k |
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self.conv = nn.Sequential( |
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Inception_Block_V1(configs.d_model, configs.d_ff, |
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num_kernels=configs.num_kernels), |
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nn.GELU(), |
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Inception_Block_V1(configs.d_ff, configs.d_model, |
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num_kernels=configs.num_kernels) |
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) |
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def forward(self, x): |
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B, T, N = x.size() |
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period_list, period_weight = FFT_for_Period(x, self.k) |
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res = [] |
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for i in range(self.k): |
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period = period_list[i] |
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if (self.seq_len + self.pred_len) % period != 0: |
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length = ( |
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((self.seq_len + self.pred_len) // period) + 1) * period |
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padding = torch.zeros([x.shape[0], (length - (self.seq_len + self.pred_len)), x.shape[2]]).to(x.device) |
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out = torch.cat([x, padding], dim=1) |
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else: |
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length = (self.seq_len + self.pred_len) |
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out = x |
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out = out.reshape(B, length // period, period, |
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N).permute(0, 3, 1, 2).contiguous() |
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out = self.conv(out) |
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out = out.permute(0, 2, 3, 1).reshape(B, -1, N) |
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res.append(out[:, :(self.seq_len + self.pred_len), :]) |
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res = torch.stack(res, dim=-1) |
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period_weight = F.softmax(period_weight, dim=1) |
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period_weight = period_weight.unsqueeze( |
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1).unsqueeze(1).repeat(1, T, N, 1) |
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res = torch.sum(res * period_weight, -1) |
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res = res + x |
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return res |
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class Model(nn.Module): |
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""" |
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Paper link: https://openreview.net/pdf?id=ju_Uqw384Oq |
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""" |
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def __init__(self, configs): |
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super(Model, self).__init__() |
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self.configs = configs |
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self.task_name = configs.task_name |
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self.seq_len = configs.seq_len |
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self.label_len = configs.label_len |
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self.pred_len = configs.pred_len |
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self.model = nn.ModuleList([TimesBlock(configs) |
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for _ in range(configs.e_layers)]) |
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self.enc_embedding = DataEmbedding(configs.enc_in, configs.d_model, configs.embed, configs.freq, |
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configs.dropout) |
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self.layer = configs.e_layers |
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self.layer_norm = nn.LayerNorm(configs.d_model) |
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if self.task_name == 'long_term_forecast' or self.task_name == 'short_term_forecast': |
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self.predict_linear = nn.Linear( |
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self.seq_len, self.pred_len + self.seq_len) |
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self.projection = nn.Linear( |
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configs.d_model, configs.c_out, bias=True) |
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if self.task_name == 'imputation' or self.task_name == 'anomaly_detection': |
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self.projection = nn.Linear( |
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configs.d_model, configs.c_out, bias=True) |
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if self.task_name == 'classification': |
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self.act = F.gelu |
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self.dropout = nn.Dropout(configs.dropout) |
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self.projection = nn.Linear( |
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configs.d_model * configs.seq_len, configs.num_class) |
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def forecast(self, x_enc, x_mark_enc, x_dec, x_mark_dec): |
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means = x_enc.mean(1, keepdim=True).detach() |
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x_enc = x_enc - means |
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stdev = torch.sqrt( |
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torch.var(x_enc, dim=1, keepdim=True, unbiased=False) + 1e-5) |
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x_enc /= stdev |
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enc_out = self.enc_embedding(x_enc, x_mark_enc) |
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enc_out = self.predict_linear(enc_out.permute(0, 2, 1)).permute( |
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0, 2, 1) |
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for i in range(self.layer): |
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enc_out = self.layer_norm(self.model[i](enc_out)) |
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dec_out = self.projection(enc_out) |
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dec_out = dec_out * \ |
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(stdev[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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dec_out = dec_out + \ |
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(means[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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return dec_out |
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def imputation(self, x_enc, x_mark_enc, x_dec, x_mark_dec, mask): |
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means = torch.sum(x_enc, dim=1) / torch.sum(mask == 1, dim=1) |
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means = means.unsqueeze(1).detach() |
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x_enc = x_enc - means |
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x_enc = x_enc.masked_fill(mask == 0, 0) |
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stdev = torch.sqrt(torch.sum(x_enc * x_enc, dim=1) / |
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torch.sum(mask == 1, dim=1) + 1e-5) |
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stdev = stdev.unsqueeze(1).detach() |
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x_enc /= stdev |
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enc_out = self.enc_embedding(x_enc, x_mark_enc) |
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for i in range(self.layer): |
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enc_out = self.layer_norm(self.model[i](enc_out)) |
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dec_out = self.projection(enc_out) |
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dec_out = dec_out * \ |
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(stdev[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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dec_out = dec_out + \ |
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(means[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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return dec_out |
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def anomaly_detection(self, x_enc): |
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means = x_enc.mean(1, keepdim=True).detach() |
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x_enc = x_enc - means |
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stdev = torch.sqrt( |
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torch.var(x_enc, dim=1, keepdim=True, unbiased=False) + 1e-5) |
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x_enc /= stdev |
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enc_out = self.enc_embedding(x_enc, None) |
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for i in range(self.layer): |
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enc_out = self.layer_norm(self.model[i](enc_out)) |
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dec_out = self.projection(enc_out) |
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dec_out = dec_out * \ |
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(stdev[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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dec_out = dec_out + \ |
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(means[:, 0, :].unsqueeze(1).repeat( |
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1, self.pred_len + self.seq_len, 1)) |
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return dec_out |
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def classification(self, x_enc, x_mark_enc): |
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enc_out = self.enc_embedding(x_enc, None) |
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for i in range(self.layer): |
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enc_out = self.layer_norm(self.model[i](enc_out)) |
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output = self.act(enc_out) |
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output = self.dropout(output) |
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output = output * x_mark_enc.unsqueeze(-1) |
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output = output.reshape(output.shape[0], -1) |
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output = self.projection(output) |
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return output |
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def forward(self, x_enc, x_mark_enc, x_dec, x_mark_dec, mask=None): |
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if self.task_name == 'long_term_forecast' or self.task_name == 'short_term_forecast': |
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dec_out = self.forecast(x_enc, x_mark_enc, x_dec, x_mark_dec) |
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return dec_out[:, -self.pred_len:, :] |
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if self.task_name == 'imputation': |
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dec_out = self.imputation( |
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x_enc, x_mark_enc, x_dec, x_mark_dec, mask) |
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return dec_out |
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if self.task_name == 'anomaly_detection': |
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dec_out = self.anomaly_detection(x_enc) |
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return dec_out |
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if self.task_name == 'classification': |
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dec_out = self.classification(x_enc, x_mark_enc) |
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return dec_out |
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return None |
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