mindspore.dataset.GeneratorDataset
- class mindspore.dataset.GeneratorDataset(source, column_names=None, column_types=None, schema=None, num_samples=None, num_parallel_workers=1, shuffle=None, sampler=None, num_shards=None, shard_id=None, python_multiprocessing=True, max_rowsize=6)[source]
A source dataset that generates data from Python by invoking Python data source each epoch.
The column names and column types of generated dataset depend on Python data defined by users.
- Parameters
source (Union[Callable, Iterable, Random Accessible]) – A generator callable object, an iterable Python object or a random accessible Python object. Callable source is required to return a tuple of NumPy arrays as a row of the dataset on source().next(). Iterable source is required to return a tuple of NumPy arrays as a row of the dataset on iter(source).next(). Random accessible source is required to return a tuple of NumPy arrays as a row of the dataset on source[idx].
column_names (Union[str, list[str]], optional) – List of column names of the dataset. Default:
None
. Users are required to provide either column_names or schema.column_types (list[mindspore.dtype], optional) – List of column data types of the dataset. Default:
None
. If provided, sanity check will be performed on generator output.schema (Union[str, Schema], optional) – Data format policy, which specifies the data types and shapes of the data column to be read. Both JSON file path and objects constructed by
mindspore.dataset.Schema
are acceptable. Default:None
.num_samples (int, optional) – The number of samples to be included in the dataset. Default:
None
, all images.num_parallel_workers (int, optional) – Number of worker threads/subprocesses used to fetch the dataset in parallel. Default:
1
.shuffle (bool, optional) – Whether or not to perform shuffle on the dataset. Random accessible input is required. Default:
None
, expected order behavior shown in the table below.sampler (Union[Sampler, Iterable], optional) – Object used to choose samples from the dataset. Random accessible input is required. Default:
None
, expected order behavior shown in the table below.num_shards (int, optional) – Number of shards that the dataset will be divided into. Default:
None
. Random accessible input is required. When this argument is specified, num_samples reflects the maximum sample number of per shard.shard_id (int, optional) – The shard ID within num_shards . Default:
None
. This argument must be specified only when num_shards is also specified. Random accessible input is required.python_multiprocessing (bool, optional) – Parallelize Python operations with multiple worker process. This option could be beneficial if the Python operation is computational heavy. Default:
True
.max_rowsize (int, optional) – Maximum size of row in MB that is used for shared memory allocation to copy data between processes. This is only used if python_multiprocessing is set to
True
. Default:6
MB.
- Raises
RuntimeError – If source raises an exception during execution.
RuntimeError – If len of column_names does not match output len of source.
ValueError – If num_parallel_workers exceeds the max thread numbers.
ValueError – If sampler and shuffle are specified at the same time.
ValueError – If sampler and sharding are specified at the same time.
ValueError – If num_shards is specified but shard_id is None.
ValueError – If shard_id is specified but num_shards is None.
ValueError – If shard_id is not in range of [0, num_shards ).
- Tutorial Examples:
Note
If you configure python_multiprocessing=True (Default:
True
) and num_parallel_workers>1 (default:1
) indicates that the multi-process mode is started for data load acceleration. At this time, as the datasetiterates, the memory consumption of the subprocess will gradually increase, mainly because the subprocess of the user-defined dataset obtains the member variables from the main process in the Copy On Write way. Example: If you define a dataset with __ init__ function which contains a large number of member variable data (for example, a very large file name list is loaded during the dataset construction) and uses the multi-process mode, which may cause the problem of OOM (the estimated total memory usage is: (num_parallel_workers+1) * size of the parent process ). The simplest solution is to replace Python objects (such as list/dict/int/float/string) with non referenced data types (such as Pandas, Numpy or PyArrow objects) for member variables, or load less meta data in member variables, or configure python_multiprocessing=False to use multi-threading mode.There are several classes/functions that can help you reduce the size of member variables, and you can choose to use them:
1.
mindspore.dataset.utils.LineReader
: Use this class to initialize your text file object in the __init__ function. Then read the file content based on the line number of the object with the __getitem__ function.Input source accepts user-defined Python functions (PyFuncs), Do not add network computing operators from mindspore.nn and mindspore.ops or others into this source .
This dataset can take in a sampler . sampler and shuffle are mutually exclusive. The table below shows what input arguments are allowed and their expected behavior.
Parameter sampler
Parameter shuffle
Expected Order Behavior
None
None
random order
None
True
random order
None
False
sequential order
Sampler object
None
order defined by sampler
Sampler object
True
not allowed
Sampler object
False
not allowed
Examples
>>> import mindspore.dataset as ds >>> import numpy as np >>> >>> # 1) Multidimensional generator function as callable input. >>> def generator_multidimensional(): ... for i in range(64): ... yield (np.array([[i, i + 1], [i + 2, i + 3]]),) >>> >>> dataset = ds.GeneratorDataset(source=generator_multidimensional, column_names=["multi_dimensional_data"]) >>> >>> # 2) Multi-column generator function as callable input. >>> def generator_multi_column(): ... for i in range(64): ... yield np.array([i]), np.array([[i, i + 1], [i + 2, i + 3]]) >>> >>> dataset = ds.GeneratorDataset(source=generator_multi_column, column_names=["col1", "col2"]) >>> >>> # 3) Iterable dataset as iterable input. >>> class MyIterable: ... def __init__(self): ... self._index = 0 ... self._data = np.random.sample((5, 2)) ... self._label = np.random.sample((5, 1)) ... ... def __next__(self): ... if self._index >= len(self._data): ... raise StopIteration ... else: ... item = (self._data[self._index], self._label[self._index]) ... self._index += 1 ... return item ... ... def __iter__(self): ... self._index = 0 ... return self ... ... def __len__(self): ... return len(self._data) >>> >>> dataset = ds.GeneratorDataset(source=MyIterable(), column_names=["data", "label"]) >>> >>> # 4) Random accessible dataset as random accessible input. >>> class MyAccessible: ... def __init__(self): ... self._data = np.random.sample((5, 2)) ... self._label = np.random.sample((5, 1)) ... ... def __getitem__(self, index): ... return self._data[index], self._label[index] ... ... def __len__(self): ... return len(self._data) >>> >>> dataset = ds.GeneratorDataset(source=MyAccessible(), column_names=["data", "label"]) >>> >>> # list, dict, tuple of Python is also random accessible >>> dataset = ds.GeneratorDataset(source=[(np.array(0),), (np.array(1),), (np.array(2),)], column_names=["col"])
Pre-processing Operation
Apply a function in this dataset. |
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Concatenate the dataset objects in the input list. |
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Filter dataset by prediction. |
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Map func to each row in dataset and flatten the result. |
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Apply each operation in operations to this dataset. |
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The specified columns will be selected from the dataset and passed into the pipeline with the order specified. |
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Rename the columns in input datasets. |
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Repeat this dataset count times. |
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Reset the dataset for next epoch. |
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Save the dynamic data processed by the dataset pipeline in common dataset format. |
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Shuffle the dataset by creating a cache with the size of buffer_size . |
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Skip the first N elements of this dataset. |
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Split the dataset into smaller, non-overlapping datasets. |
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Takes at most given numbers of elements from the dataset. |
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Zip the datasets in the sense of input tuple of datasets. |
Batch
Combine batch_size number of consecutive rows into batch which apply per_batch_map to the samples first. |
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Bucket elements according to their lengths. |
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Combine batch_size number of consecutive rows into batch which apply pad_info to the samples first. |
Iterator
Create an iterator over the dataset. |
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Create an iterator over the dataset. |
Attribute
Return the size of batch. |
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Return the class index. |
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Return the names of the columns in dataset. |
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Return the number of batches in an epoch. |
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Get the replication times in RepeatDataset. |
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Get the column index, which represents the corresponding relationship between the data column order and the network when using the sink mode. |
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Get the number of classes in a dataset. |
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Get the shapes of output data. |
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Get the types of output data. |
Apply Sampler
Add a child sampler for the current dataset. |
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Replace the last child sampler of the current dataset, remaining the parent sampler unchanged. |
Others
Return a transferred Dataset that transfers data through a device. |
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Release a blocking condition and trigger callback with given data. |
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Add a blocking condition to the input Dataset and a synchronize action will be applied. |
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Serialize a pipeline into JSON string and dump into file if filename is provided. |