mmclassification/mmpretrain/apis/base.py

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[Feature] Support multiple multi-modal algorithms and inferencers. (#1561) * [Feat] Migrate blip caption to mmpretrain. (#50) * Migrate blip caption to mmpretrain * minor fix * support train * [Feature] Support OFA caption task. (#51) * [Feature] Support OFA caption task. * Remove duplicated files. * [Feature] Support OFA vqa task. (#58) * [Feature] Support OFA vqa task. * Fix lint. * [Feat] Add BLIP retrieval to mmpretrain. (#55) * init * minor fix for train * fix according to comments * refactor * Update Blip retrieval. (#62) * [Feature] Support OFA visual grounding task. (#59) * [Feature] Support OFA visual grounding task. * minor add TODO --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Add flamingos coco caption and vqa. (#60) * first init * init flamingo coco * add vqa * minor fix * remove unnecessary modules * Update config * Use `ApplyToList`. --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 coco retrieval (#53) * [Feature]: Add blip2 retriever * [Feature]: Add blip2 all modules * [Feature]: Refine model * [Feature]: x1 * [Feature]: Runnable coco ret * [Feature]: Runnable version * [Feature]: Fix lint * [Fix]: Fix lint * [Feature]: Use 364 img size * [Feature]: Refactor blip2 * [Fix]: Fix lint * refactor files * minor fix * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Remove * fix blip caption inputs (#68) * [Feat] Add BLIP NLVR support. (#67) * first init * init flamingo coco * add vqa * add nlvr * refactor nlvr * minor fix * minor fix * Update dataset --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 Caption (#70) * [Feature]: Add language model * [Feature]: blip2 caption forward * [Feature]: Reproduce the results * [Feature]: Refactor caption * refine config --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Migrate BLIP VQA to mmpretrain (#69) * reformat * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * refactor code --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Update RefCOCO dataset * [Fix] fix lint * [Feature] Implement inference APIs for multi-modal tasks. (#65) * [Feature] Implement inference APIs for multi-modal tasks. * [Project] Add gradio demo. * [Improve] Update requirements * Update flamingo * Update blip * Add NLVR inferencer * Update flamingo * Update hugging face model register * Update ofa vqa * Update BLIP-vqa (#71) * Update blip-vqa docstring (#72) * Refine flamingo docstring (#73) * [Feature]: BLIP2 VQA (#61) * [Feature]: VQA forward * [Feature]: Reproduce accuracy * [Fix]: Fix lint * [Fix]: Add blank line * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feature]: BLIP2 docstring (#74) * [Feature]: Add caption docstring * [Feature]: Add docstring to blip2 vqa * [Feature]: Add docstring to retrieval * Update BLIP-2 metafile and README (#75) * [Feature]: Add readme and docstring * Update blip2 results --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature] BLIP Visual Grounding on MMPretrain Branch (#66) * blip grounding merge with mmpretrain * remove commit * blip grounding test and inference api * refcoco dataset * refcoco dataset refine config * rebasing * gitignore * rebasing * minor edit * minor edit * Update blip-vqa docstring (#72) * rebasing * Revert "minor edit" This reverts commit 639cec757c215e654625ed0979319e60f0be9044. * blip grounding final * precommit * refine config * refine config * Update blip visual grounding --------- Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: mzr1996 <mzr1996@163.com> * Update visual grounding metric * Update OFA docstring, README and metafiles. (#76) * [Docs] Update installation docs and gradio demo docs. (#77) * Update OFA name * Update Visual Grounding Visualizer * Integrate accelerate support * Fix imports. * Fix timm backbone * Update imports * Update README * Update circle ci * Update flamingo config * Add gradio demo README * [Feature]: Add scienceqa (#1571) * [Feature]: Add scienceqa * [Feature]: Change param name * Update docs * Update video --------- Co-authored-by: Hubert <42952108+yingfhu@users.noreply.github.com> Co-authored-by: yingfhu <yingfhu@gmail.com> Co-authored-by: Yuan Liu <30762564+YuanLiuuuuuu@users.noreply.github.com> Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: Rongjie Li <limo97@163.com>
2023-05-19 16:50:04 +08:00
# Copyright (c) OpenMMLab. All rights reserved.
from abc import abstractmethod
from math import ceil
[Feature] Support multiple multi-modal algorithms and inferencers. (#1561) * [Feat] Migrate blip caption to mmpretrain. (#50) * Migrate blip caption to mmpretrain * minor fix * support train * [Feature] Support OFA caption task. (#51) * [Feature] Support OFA caption task. * Remove duplicated files. * [Feature] Support OFA vqa task. (#58) * [Feature] Support OFA vqa task. * Fix lint. * [Feat] Add BLIP retrieval to mmpretrain. (#55) * init * minor fix for train * fix according to comments * refactor * Update Blip retrieval. (#62) * [Feature] Support OFA visual grounding task. (#59) * [Feature] Support OFA visual grounding task. * minor add TODO --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Add flamingos coco caption and vqa. (#60) * first init * init flamingo coco * add vqa * minor fix * remove unnecessary modules * Update config * Use `ApplyToList`. --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 coco retrieval (#53) * [Feature]: Add blip2 retriever * [Feature]: Add blip2 all modules * [Feature]: Refine model * [Feature]: x1 * [Feature]: Runnable coco ret * [Feature]: Runnable version * [Feature]: Fix lint * [Fix]: Fix lint * [Feature]: Use 364 img size * [Feature]: Refactor blip2 * [Fix]: Fix lint * refactor files * minor fix * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Remove * fix blip caption inputs (#68) * [Feat] Add BLIP NLVR support. (#67) * first init * init flamingo coco * add vqa * add nlvr * refactor nlvr * minor fix * minor fix * Update dataset --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 Caption (#70) * [Feature]: Add language model * [Feature]: blip2 caption forward * [Feature]: Reproduce the results * [Feature]: Refactor caption * refine config --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Migrate BLIP VQA to mmpretrain (#69) * reformat * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * refactor code --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Update RefCOCO dataset * [Fix] fix lint * [Feature] Implement inference APIs for multi-modal tasks. (#65) * [Feature] Implement inference APIs for multi-modal tasks. * [Project] Add gradio demo. * [Improve] Update requirements * Update flamingo * Update blip * Add NLVR inferencer * Update flamingo * Update hugging face model register * Update ofa vqa * Update BLIP-vqa (#71) * Update blip-vqa docstring (#72) * Refine flamingo docstring (#73) * [Feature]: BLIP2 VQA (#61) * [Feature]: VQA forward * [Feature]: Reproduce accuracy * [Fix]: Fix lint * [Fix]: Add blank line * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feature]: BLIP2 docstring (#74) * [Feature]: Add caption docstring * [Feature]: Add docstring to blip2 vqa * [Feature]: Add docstring to retrieval * Update BLIP-2 metafile and README (#75) * [Feature]: Add readme and docstring * Update blip2 results --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature] BLIP Visual Grounding on MMPretrain Branch (#66) * blip grounding merge with mmpretrain * remove commit * blip grounding test and inference api * refcoco dataset * refcoco dataset refine config * rebasing * gitignore * rebasing * minor edit * minor edit * Update blip-vqa docstring (#72) * rebasing * Revert "minor edit" This reverts commit 639cec757c215e654625ed0979319e60f0be9044. * blip grounding final * precommit * refine config * refine config * Update blip visual grounding --------- Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: mzr1996 <mzr1996@163.com> * Update visual grounding metric * Update OFA docstring, README and metafiles. (#76) * [Docs] Update installation docs and gradio demo docs. (#77) * Update OFA name * Update Visual Grounding Visualizer * Integrate accelerate support * Fix imports. * Fix timm backbone * Update imports * Update README * Update circle ci * Update flamingo config * Add gradio demo README * [Feature]: Add scienceqa (#1571) * [Feature]: Add scienceqa * [Feature]: Change param name * Update docs * Update video --------- Co-authored-by: Hubert <42952108+yingfhu@users.noreply.github.com> Co-authored-by: yingfhu <yingfhu@gmail.com> Co-authored-by: Yuan Liu <30762564+YuanLiuuuuuu@users.noreply.github.com> Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: Rongjie Li <limo97@163.com>
2023-05-19 16:50:04 +08:00
from typing import Callable, Iterable, List, Optional, Tuple, Union
import numpy as np
import torch
from mmengine.config import Config
from mmengine.dataset import default_collate
from mmengine.fileio import get_file_backend
from mmengine.model import BaseModel
from mmengine.runner import load_checkpoint
from mmpretrain.structures import DataSample
from mmpretrain.utils import track
from .model import get_model, list_models
ModelType = Union[BaseModel, str, Config]
InputType = Union[str, np.ndarray, list]
class BaseInferencer:
"""Base inferencer for various tasks.
The BaseInferencer provides the standard workflow for inference as follows:
1. Preprocess the input data by :meth:`preprocess`.
2. Forward the data to the model by :meth:`forward`. ``BaseInferencer``
assumes the model inherits from :class:`mmengine.models.BaseModel` and
will call `model.test_step` in :meth:`forward` by default.
3. Visualize the results by :meth:`visualize`.
4. Postprocess and return the results by :meth:`postprocess`.
When we call the subclasses inherited from BaseInferencer (not overriding
``__call__``), the workflow will be executed in order.
All subclasses of BaseInferencer could define the following class
attributes for customization:
- ``preprocess_kwargs``: The keys of the kwargs that will be passed to
:meth:`preprocess`.
- ``forward_kwargs``: The keys of the kwargs that will be passed to
:meth:`forward`
- ``visualize_kwargs``: The keys of the kwargs that will be passed to
:meth:`visualize`
- ``postprocess_kwargs``: The keys of the kwargs that will be passed to
:meth:`postprocess`
All attributes mentioned above should be a ``set`` of keys (strings),
and each key should not be duplicated. Actually, :meth:`__call__` will
dispatch all the arguments to the corresponding methods according to the
``xxx_kwargs`` mentioned above.
Subclasses inherited from ``BaseInferencer`` should implement
:meth:`_init_pipeline`, :meth:`visualize` and :meth:`postprocess`:
- _init_pipeline: Return a callable object to preprocess the input data.
- visualize: Visualize the results returned by :meth:`forward`.
- postprocess: Postprocess the results returned by :meth:`forward` and
:meth:`visualize`.
Args:
model (BaseModel | str | Config): A model name or a path to the config
file, or a :obj:`BaseModel` object. The model name can be found
by ``cls.list_models()`` and you can also query it in
:doc:`/modelzoo_statistics`.
pretrained (str, optional): Path to the checkpoint. If None, it will
try to find a pre-defined weight from the model you specified
(only work if the ``model`` is a model name). Defaults to None.
device (str | torch.device | None): Transfer the model to the target
device. Defaults to None.
device_map (str | dict | None): A map that specifies where each
submodule should go. It doesn't need to be refined to each
parameter/buffer name, once a given module name is inside, every
submodule of it will be sent to the same device. You can use
`device_map="auto"` to automatically generate the device map.
Defaults to None.
offload_folder (str | None): If the `device_map` contains any value
`"disk"`, the folder where we will offload weights.
**kwargs: Other keyword arguments to initialize the model (only work if
the ``model`` is a model name).
"""
preprocess_kwargs: set = set()
forward_kwargs: set = set()
visualize_kwargs: set = set()
postprocess_kwargs: set = set()
def __init__(self,
model: ModelType,
pretrained: Union[bool, str] = True,
device: Union[str, torch.device, None] = None,
device_map=None,
offload_folder=None,
**kwargs) -> None:
if isinstance(model, BaseModel):
if isinstance(pretrained, str):
load_checkpoint(model, pretrained, map_location='cpu')
if device_map is not None:
from .utils import dispatch_model
model = dispatch_model(
model,
device_map=device_map,
offload_folder=offload_folder)
elif device is not None:
model.to(device)
else:
model = get_model(
model,
pretrained,
device=device,
device_map=device_map,
offload_folder=offload_folder,
**kwargs)
model.eval()
self.config = model._config
self.model = model
self.pipeline = self._init_pipeline(self.config)
self.visualizer = None
def __call__(
self,
inputs,
return_datasamples: bool = False,
batch_size: int = 1,
**kwargs,
) -> dict:
"""Call the inferencer.
Args:
inputs (InputsType): Inputs for the inferencer.
return_datasamples (bool): Whether to return results as
:obj:`BaseDataElement`. Defaults to False.
batch_size (int): Batch size. Defaults to 1.
**kwargs: Key words arguments passed to :meth:`preprocess`,
:meth:`forward`, :meth:`visualize` and :meth:`postprocess`.
Each key in kwargs should be in the corresponding set of
``preprocess_kwargs``, ``forward_kwargs``, ``visualize_kwargs``
and ``postprocess_kwargs``.
Returns:
dict: Inference and visualization results.
"""
(
preprocess_kwargs,
forward_kwargs,
visualize_kwargs,
postprocess_kwargs,
) = self._dispatch_kwargs(**kwargs)
ori_inputs = self._inputs_to_list(inputs)
inputs = self.preprocess(
ori_inputs, batch_size=batch_size, **preprocess_kwargs)
preds = []
for data in track(
inputs, 'Inference', total=ceil(len(ori_inputs) / batch_size)):
[Feature] Support multiple multi-modal algorithms and inferencers. (#1561) * [Feat] Migrate blip caption to mmpretrain. (#50) * Migrate blip caption to mmpretrain * minor fix * support train * [Feature] Support OFA caption task. (#51) * [Feature] Support OFA caption task. * Remove duplicated files. * [Feature] Support OFA vqa task. (#58) * [Feature] Support OFA vqa task. * Fix lint. * [Feat] Add BLIP retrieval to mmpretrain. (#55) * init * minor fix for train * fix according to comments * refactor * Update Blip retrieval. (#62) * [Feature] Support OFA visual grounding task. (#59) * [Feature] Support OFA visual grounding task. * minor add TODO --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Add flamingos coco caption and vqa. (#60) * first init * init flamingo coco * add vqa * minor fix * remove unnecessary modules * Update config * Use `ApplyToList`. --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 coco retrieval (#53) * [Feature]: Add blip2 retriever * [Feature]: Add blip2 all modules * [Feature]: Refine model * [Feature]: x1 * [Feature]: Runnable coco ret * [Feature]: Runnable version * [Feature]: Fix lint * [Fix]: Fix lint * [Feature]: Use 364 img size * [Feature]: Refactor blip2 * [Fix]: Fix lint * refactor files * minor fix * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Remove * fix blip caption inputs (#68) * [Feat] Add BLIP NLVR support. (#67) * first init * init flamingo coco * add vqa * add nlvr * refactor nlvr * minor fix * minor fix * Update dataset --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature]: BLIP2 Caption (#70) * [Feature]: Add language model * [Feature]: blip2 caption forward * [Feature]: Reproduce the results * [Feature]: Refactor caption * refine config --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feat] Migrate BLIP VQA to mmpretrain (#69) * reformat * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * change * refactor code --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * Update RefCOCO dataset * [Fix] fix lint * [Feature] Implement inference APIs for multi-modal tasks. (#65) * [Feature] Implement inference APIs for multi-modal tasks. * [Project] Add gradio demo. * [Improve] Update requirements * Update flamingo * Update blip * Add NLVR inferencer * Update flamingo * Update hugging face model register * Update ofa vqa * Update BLIP-vqa (#71) * Update blip-vqa docstring (#72) * Refine flamingo docstring (#73) * [Feature]: BLIP2 VQA (#61) * [Feature]: VQA forward * [Feature]: Reproduce accuracy * [Fix]: Fix lint * [Fix]: Add blank line * minor fix --------- Co-authored-by: yingfhu <yingfhu@gmail.com> * [Feature]: BLIP2 docstring (#74) * [Feature]: Add caption docstring * [Feature]: Add docstring to blip2 vqa * [Feature]: Add docstring to retrieval * Update BLIP-2 metafile and README (#75) * [Feature]: Add readme and docstring * Update blip2 results --------- Co-authored-by: mzr1996 <mzr1996@163.com> * [Feature] BLIP Visual Grounding on MMPretrain Branch (#66) * blip grounding merge with mmpretrain * remove commit * blip grounding test and inference api * refcoco dataset * refcoco dataset refine config * rebasing * gitignore * rebasing * minor edit * minor edit * Update blip-vqa docstring (#72) * rebasing * Revert "minor edit" This reverts commit 639cec757c215e654625ed0979319e60f0be9044. * blip grounding final * precommit * refine config * refine config * Update blip visual grounding --------- Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: mzr1996 <mzr1996@163.com> * Update visual grounding metric * Update OFA docstring, README and metafiles. (#76) * [Docs] Update installation docs and gradio demo docs. (#77) * Update OFA name * Update Visual Grounding Visualizer * Integrate accelerate support * Fix imports. * Fix timm backbone * Update imports * Update README * Update circle ci * Update flamingo config * Add gradio demo README * [Feature]: Add scienceqa (#1571) * [Feature]: Add scienceqa * [Feature]: Change param name * Update docs * Update video --------- Co-authored-by: Hubert <42952108+yingfhu@users.noreply.github.com> Co-authored-by: yingfhu <yingfhu@gmail.com> Co-authored-by: Yuan Liu <30762564+YuanLiuuuuuu@users.noreply.github.com> Co-authored-by: Yiqin Wang 王逸钦 <wyq1217@outlook.com> Co-authored-by: Rongjie Li <limo97@163.com>
2023-05-19 16:50:04 +08:00
preds.extend(self.forward(data, **forward_kwargs))
visualization = self.visualize(ori_inputs, preds, **visualize_kwargs)
results = self.postprocess(preds, visualization, return_datasamples,
**postprocess_kwargs)
return results
def _inputs_to_list(self, inputs: InputType) -> list:
"""Preprocess the inputs to a list.
Cast the input data to a list of data.
- list or tuple: return inputs
- str:
- Directory path: return all files in the directory
- other cases: return a list containing the string. The string
could be a path to file, a url or other types of string according
to the task.
- other: return a list with one item.
Args:
inputs (str | array | list): Inputs for the inferencer.
Returns:
list: List of input for the :meth:`preprocess`.
"""
if isinstance(inputs, str):
backend = get_file_backend(inputs)
if hasattr(backend, 'isdir') and backend.isdir(inputs):
# Backends like HttpsBackend do not implement `isdir`, so only
# those backends that implement `isdir` could accept the inputs
# as a directory
file_list = backend.list_dir_or_file(inputs, list_dir=False)
inputs = [
backend.join_path(inputs, file) for file in file_list
]
if not isinstance(inputs, (list, tuple)):
inputs = [inputs]
return list(inputs)
def preprocess(self, inputs: InputType, batch_size: int = 1, **kwargs):
"""Process the inputs into a model-feedable format.
Customize your preprocess by overriding this method. Preprocess should
return an iterable object, of which each item will be used as the
input of ``model.test_step``.
``BaseInferencer.preprocess`` will return an iterable chunked data,
which will be used in __call__ like this:
.. code-block:: python
def __call__(self, inputs, batch_size=1, **kwargs):
chunked_data = self.preprocess(inputs, batch_size, **kwargs)
for batch in chunked_data:
preds = self.forward(batch, **kwargs)
Args:
inputs (InputsType): Inputs given by user.
batch_size (int): batch size. Defaults to 1.
Yields:
Any: Data processed by the ``pipeline`` and ``default_collate``.
"""
chunked_data = self._get_chunk_data(
map(self.pipeline, inputs), batch_size)
yield from map(default_collate, chunked_data)
@torch.no_grad()
def forward(self, inputs: Union[dict, tuple], **kwargs):
"""Feed the inputs to the model."""
return self.model.test_step(inputs)
def visualize(self,
inputs: list,
preds: List[DataSample],
show: bool = False,
**kwargs) -> List[np.ndarray]:
"""Visualize predictions.
Customize your visualization by overriding this method. visualize
should return visualization results, which could be np.ndarray or any
other objects.
Args:
inputs (list): Inputs preprocessed by :meth:`_inputs_to_list`.
preds (Any): Predictions of the model.
show (bool): Whether to display the image in a popup window.
Defaults to False.
Returns:
List[np.ndarray]: Visualization results.
"""
if show:
raise NotImplementedError(
f'The `visualize` method of {self.__class__.__name__} '
'is not implemented.')
@abstractmethod
def postprocess(
self,
preds: List[DataSample],
visualization: List[np.ndarray],
return_datasample=False,
**kwargs,
) -> dict:
"""Process the predictions and visualization results from ``forward``
and ``visualize``.
This method should be responsible for the following tasks:
1. Convert datasamples into a json-serializable dict if needed.
2. Pack the predictions and visualization results and return them.
3. Dump or log the predictions.
Customize your postprocess by overriding this method. Make sure
``postprocess`` will return a dict with visualization results and
inference results.
Args:
preds (List[Dict]): Predictions of the model.
visualization (np.ndarray): Visualized predictions.
return_datasample (bool): Whether to return results as datasamples.
Defaults to False.
Returns:
dict: Inference and visualization results with key ``predictions``
and ``visualization``
- ``visualization (Any)``: Returned by :meth:`visualize`
- ``predictions`` (dict or DataSample): Returned by
:meth:`forward` and processed in :meth:`postprocess`.
If ``return_datasample=False``, it usually should be a
json-serializable dict containing only basic data elements such
as strings and numbers.
"""
@abstractmethod
def _init_pipeline(self, cfg: Config) -> Callable:
"""Initialize the test pipeline.
Return a pipeline to handle various input data, such as ``str``,
``np.ndarray``. It is an abstract method in BaseInferencer, and should
be implemented in subclasses.
The returned pipeline will be used to process a single data.
It will be used in :meth:`preprocess` like this:
.. code-block:: python
def preprocess(self, inputs, batch_size, **kwargs):
...
dataset = map(self.pipeline, dataset)
...
"""
def _get_chunk_data(self, inputs: Iterable, chunk_size: int):
"""Get batch data from dataset.
Args:
inputs (Iterable): An iterable dataset.
chunk_size (int): Equivalent to batch size.
Yields:
list: batch data.
"""
inputs_iter = iter(inputs)
while True:
try:
chunk_data = []
for _ in range(chunk_size):
processed_data = next(inputs_iter)
chunk_data.append(processed_data)
yield chunk_data
except StopIteration:
if chunk_data:
yield chunk_data
break
def _dispatch_kwargs(self, **kwargs) -> Tuple[dict, dict, dict, dict]:
"""Dispatch kwargs to preprocess(), forward(), visualize() and
postprocess() according to the actual demands.
Returns:
Tuple[Dict, Dict, Dict, Dict]: kwargs passed to preprocess,
forward, visualize and postprocess respectively.
"""
# Ensure each argument only matches one function
method_kwargs = self.preprocess_kwargs | self.forward_kwargs | \
self.visualize_kwargs | self.postprocess_kwargs
union_kwargs = method_kwargs | set(kwargs.keys())
if union_kwargs != method_kwargs:
unknown_kwargs = union_kwargs - method_kwargs
raise ValueError(
f'unknown argument {unknown_kwargs} for `preprocess`, '
'`forward`, `visualize` and `postprocess`')
preprocess_kwargs = {}
forward_kwargs = {}
visualize_kwargs = {}
postprocess_kwargs = {}
for key, value in kwargs.items():
if key in self.preprocess_kwargs:
preprocess_kwargs[key] = value
if key in self.forward_kwargs:
forward_kwargs[key] = value
if key in self.visualize_kwargs:
visualize_kwargs[key] = value
if key in self.postprocess_kwargs:
postprocess_kwargs[key] = value
return (
preprocess_kwargs,
forward_kwargs,
visualize_kwargs,
postprocess_kwargs,
)
@staticmethod
def list_models(pattern: Optional[str] = None):
"""List models defined in metafile of corresponding packages.
Args:
pattern (str | None): A wildcard pattern to match model names.
Returns:
List[str]: a list of model names.
"""
return list_models(pattern=pattern)