Source code for trajdl.datasets.modules.hier

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from dataclasses import dataclass
from datetime import datetime
from typing import List

import torch
from torch.nn.utils.rnn import pad_sequence

from ..arrow import LocSeqDataset
from .abstract import BaseLocSeqDataModule


[docs] @dataclass class HIERDataModule(BaseLocSeqDataModule): def __post_init__(self): super().__post_init__()
[docs] def collate_function(self, ds: LocSeqDataset): # TODO: update doc loc_seq_cols = ds.seq ts_seq_cols = ds.ts_seq # ้œ€่ฆๅค„็†ๅ‡บweekใ€hourใ€duration loc_list: List[torch.LongTensor] = [] weekday_list: List[torch.LongTensor] = [] hour_list: List[torch.LongTensor] = [] duration_list: List[torch.LongTensor] = [] lengths: List[int] = [] for idx in range(len(ds)): loc_list.append( self.tokenizer.tokenize_loc_seq( loc_seq=loc_seq_cols[idx], return_as="pt" ) ) ts_list = ts_seq_cols[idx].as_py() # transform ts into datetime datetime_list = [datetime.fromtimestamp(ts) for ts in ts_list] # weekday weekday_list.append( torch.LongTensor([date.weekday() for date in datetime_list]) ) # hour hour_list.append(torch.LongTensor([date.hour for date in datetime_list])) # duration duration_list.append( torch.LongTensor( [ (ts_list[i + 1] - ts_list[i]) % (24 * 60 * 60) // 60 // 60 for i in range(len(ts_list) - 1) ] ) ) lengths.append(len(loc_seq_cols[idx])) loc_src = pad_sequence( [i[:-1] for i in loc_list], batch_first=True, padding_value=self.tokenizer.pad, ) week_src = pad_sequence( [i[:-1] for i in weekday_list], batch_first=True, padding_value=0 ) hour_src = pad_sequence( [i[:-1] for i in hour_list], batch_first=True, padding_value=0 ) duration_src = pad_sequence(duration_list, batch_first=True, padding_value=0) lengths = [i - 1 for i in lengths] targets = pad_sequence( [i[1:] for i in loc_list], batch_first=True, padding_value=self.tokenizer.pad, ) return loc_src, week_src, hour_src, duration_src, lengths, targets