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import copy |
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import math |
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import os.path as osp |
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from fnmatch import fnmatch |
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from typing import Dict, List, Optional, Tuple, Union |
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import mmengine |
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from mmengine.config import Config, ConfigDict |
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from opencompass.registry import PARTITIONERS |
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from opencompass.utils import (build_dataset_from_cfg, dataset_abbr_from_cfg, |
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get_infer_output_path) |
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from .sub_naive import SubjectiveNaivePartitioner |
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@PARTITIONERS.register_module() |
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class SubjectiveSizePartitioner(SubjectiveNaivePartitioner): |
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"""Task partitioner based on the size of the dataset (with some rough |
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expansion as an estimation of computational cost). |
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Args: |
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out_dir (str): The output directory of tasks. |
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max_task_size (int): The maximum size of a task. |
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gen_task_coef (int): The dataset cost measurement coefficient for |
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generation tasks. |
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strategy (str): The partition strategy. Supported strategies are: |
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'heuristic' and 'split'. Defaults to 'heuristic'. |
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heuristic: split large datasets into several tasks, merge small |
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datasets into one task. |
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split: split large datasets into several tasks only. |
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dataset_size_path (str): The path to the dataset size cache file. |
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keep_keys (list[str]): The keys to be kept from the experiment config |
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to the task config. |
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""" |
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def __init__(self, |
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mode: str, |
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out_dir: str, |
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models: Optional[List[ConfigDict]] = [], |
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base_models: Optional[List[ConfigDict]] = [], |
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compare_models: Optional[List[ConfigDict]] = [], |
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model_pairs: Optional[List[Tuple]] = None, |
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max_task_size: int = 40000, |
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gen_task_coef: int = 20, |
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strategy: str = 'heuristic', |
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dataset_size_path: str = '.cache/dataset_size.json', |
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keep_keys: Optional[List[str]] = None): |
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super().__init__(out_dir=out_dir, |
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keep_keys=keep_keys, |
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mode=mode, |
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models=models, |
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base_models=base_models, |
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compare_models=compare_models, |
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model_pairs=model_pairs) |
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self.max_task_size = max_task_size |
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self.gen_task_coef = gen_task_coef |
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self.dataset_size_path = dataset_size_path |
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assert strategy in ('heuristic', 'split'), \ |
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f'Unsupported partition strategy: {strategy}. '\ |
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'Supported strategies are: `heuristic`, `split` .' |
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self.strategy = strategy |
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def partition(self, |
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models: List[ConfigDict], |
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datasets: List[ConfigDict], |
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work_dir: str, |
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out_dir: str, |
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add_cfg: Dict = {}) -> List[ConfigDict]: |
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"""Partition model-dataset pairs into tasks. Each task is defined as a |
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dict and will run independently as a unit. Its structure is as |
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follows: |
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.. code-block:: python |
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{ |
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'models': [], # a list of model configs |
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'datasets': [[]], # a nested list of dataset configs, each |
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list corresponds to a model |
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'work_dir': '', # the work dir |
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**add_cfg # other keys to be kept in the config |
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} |
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Args: |
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models (List[ConfigDict]): A list of model configs. |
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datasets (List[ConfigDict]): A list of dataset configs. |
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work_dir (str): The work dir for the task. |
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out_dir (str): The full output path for the task, intended for |
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Partitioners to check whether the task is finished via the |
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existency of result file in this directory. |
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add_cfg (dict): Other common keys to be added in the task config, |
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used to share the same config among tasks. Defaults to {}. |
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Returns: |
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List[ConfigDict]: A list of tasks. |
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""" |
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models = self.models if self.models != [] else models |
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base_models, compare_models = self.base_models, self.compare_models |
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if self.mode == 'singlescore': |
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models = models |
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else: |
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models = super().get_model_combinations(models, base_models, |
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compare_models) |
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model_dataset_combinations = [{'models': models, 'datasets': datasets}] |
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tasks = [] |
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for comb in model_dataset_combinations: |
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comb['datasets'] = sorted(comb['datasets'], |
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key=lambda x: self.get_cost(x), |
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reverse=True) |
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for model in comb['models']: |
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chunks = [] |
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for dataset in comb['datasets']: |
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filename = get_infer_output_path(model, dataset, out_dir) |
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if osp.exists(filename): |
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continue |
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dataset_size = self.get_cost(dataset) |
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if dataset_size > self.max_task_size: |
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root, ext = osp.splitext(filename) |
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dataset_splits = self.split_dataset(dataset) |
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for i, dataset_split in enumerate(dataset_splits): |
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if not osp.exists(f'{root}_{i}{ext}'): |
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chunks.append( |
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(self.max_task_size, dataset_split)) |
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else: |
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chunks.append((dataset_size, dataset)) |
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if self.strategy == 'heuristic': |
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chunks = sorted(chunks, key=lambda x: x[0], reverse=True) |
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current_size, current_chunks = 0, [] |
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for index in range(len(chunks)): |
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current_size += chunks[index][0] |
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current_chunks.append(chunks[index][1]) |
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if index == len(chunks) - 1 or current_size + chunks[ |
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index + 1][0] > self.max_task_size: |
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tasks.append( |
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Config({ |
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'models': [model], |
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'datasets': [current_chunks], |
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'work_dir': work_dir, |
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**add_cfg |
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})) |
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current_size, current_chunks = 0, [] |
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elif self.strategy == 'split': |
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for _, dataset in chunks: |
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tasks.append( |
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Config({ |
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'models': [model], |
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'datasets': [[dataset]], |
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'work_dir': work_dir, |
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**add_cfg |
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})) |
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return tasks |
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@property |
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def dataset_size(self): |
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if not hasattr(self, '_dataset_size'): |
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if osp.exists(self.dataset_size_path): |
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self._dataset_size = mmengine.load(self.dataset_size_path) |
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else: |
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self._dataset_size = {} |
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return self._dataset_size |
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def split_dataset(self, dataset_cfg: ConfigDict) -> List[ConfigDict]: |
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"""Split dataset into several parts.""" |
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dataset_size, num_repeats = self.get_cost(dataset_cfg, |
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get_raw_factors=True) |
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split_configs = [] |
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abbr = dataset_abbr_from_cfg(dataset_cfg) |
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step = self.max_task_size // num_repeats |
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step = math.ceil(dataset_size / math.ceil(dataset_size / step)) |
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for part, i in enumerate(range(0, dataset_size, step)): |
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cfg = copy.deepcopy(dataset_cfg) |
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cfg['abbr'] = abbr + f'_{part}' |
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test_range = cfg['reader_cfg'].get('test_range', '') |
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cfg['reader_cfg']['test_range'] = f'{test_range}[{i}:{i+step}]' |
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split_configs.append(cfg) |
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return split_configs |
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def get_factor(self, dataset: ConfigDict) -> int: |
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infer_cfg = dataset.infer_cfg |
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template = (infer_cfg.prompt_template.template if 'prompt_template' |
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in infer_cfg else infer_cfg.ice_template.template) |
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factor = self.gen_task_coef |
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if isinstance(template, dict): |
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ctr = sum(key in template for key in ('begin', 'round', 'end')) |
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if ctr != len(template.keys()): |
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factor = len(template.keys()) |
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dataset_abbr = dataset_abbr_from_cfg(dataset) |
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if any( |
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fnmatch(dataset_abbr, pattern) |
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for pattern in ('bbh*', 'gsm8k*', 'math*', 'strategyqa*', |
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'agieval-jec*', 'agieval-gaokao-mathcloze', |
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'agieval-math', '*professional_law')): |
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factor *= 10 |
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return factor |
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def get_cost(self, |
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dataset: ConfigDict, |
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get_raw_factors: bool = False) -> Union[int, Tuple[int, int]]: |
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"""Get the computational cost of inferring on the dataset. |
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Args: |
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dataset (ConfigDict): The dataset config. |
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get_raw_factors (bool): If True, the raw factors of computational |
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cost will be returned. |
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Returns: |
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int or Tuple[int, int]: The size of the dataset. If get_raw_factors |
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is True, the number of repeats will also be returned. |
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""" |
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dataset_abbr = dataset_abbr_from_cfg(dataset) |
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test_range = dataset.reader_cfg.get('test_range', '') |
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factor = self.get_factor(dataset) |
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if dataset_abbr in self.dataset_size: |
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actual_size = eval('len(range(self.dataset_size[dataset_abbr])' |
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f'{test_range})') |
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if get_raw_factors: |
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return actual_size, factor |
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return factor * actual_size |
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dataset = build_dataset_from_cfg(dataset) |
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self.dataset_size[dataset_abbr] = len(dataset.test) |
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mmengine.mkdir_or_exist('.cache/') |
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mmengine.dump(self.dataset_size, |
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self.dataset_size_path, |
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indent=4, |
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ensure_ascii=False) |
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actual_size = eval('len(range(self.dataset_size[dataset_abbr])' |
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f'{test_range})') |
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if get_raw_factors: |
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return actual_size, factor |
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return factor * actual_size |
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