提交 6dfdafdd 编写于 作者: D dangqingqing

Merge branch 'develop' of https://github.com/PaddlePaddle/Paddle into convert

# Python Data Reader Design Doc # Python Data Reader Design Doc
Paddle reads data from data reader during training. It will be passed into `paddle.train` as a parameter. At training and testing time, PaddlePaddle programs need to read data. To ease the users' work to write data reading code, we define that
- A *reader* is a function that reads data (from file, network, random number generator, etc) and yields data items.
- A *reader creator* is a function that returns a reader function.
- A *reader* decorator is a function, which accepts one or more readers, and returns a reader.
and provide frequently used reader creators and reader decorators.
## Data Reader Interface ## Data Reader Interface
Data reader is a function with no parameter that creates a iterable (anything can be used in `for x in iterable`): Indeed, *data reader* doesn't have to be a function that reads and yields data items. It can be any function with no parameter that creates a iterable (anything can be used in `for x in iterable`):
``` ```
iterable = data_reader() iterable = data_reader()
``` ```
Element produced for the iterable should be a **single** entry of data, **not** a mini batch. That entry of data could be a single item, or a tuple of items. Item should be of [supported type](http://www.paddlepaddle.org/doc/ui/data_provider/pydataprovider2.html?highlight=dense_vector#input-types) (e.g., numpy 1d array of float32, int, list of int) Element produced from the iterable should be a **single** entry of data, **not** a mini batch. That entry of data could be a single item, or a tuple of items. Item should be of [supported type](http://www.paddlepaddle.org/doc/ui/data_provider/pydataprovider2.html?highlight=dense_vector#input-types) (e.g., numpy 1d array of float32, int, list of int)
An example implementation for single item data reader: An example implementation for single item data reader creator:
```python ```python
def data_reader_fake_image(): def reader_creator_random_image(width, height):
while True: def reader():
yield numpy.random.uniform(-1, 1, size=20*20) while True:
yield numpy.random.uniform(-1, 1, size=width*height)
return reader
``` ```
An example implementation for multiple item data reader: An example implementation for multiple item data reader creator:
```python ```python
def data_reader_fake_image_and_label(): def reader_creator_random_imageand_label(widht, height, label):
while True: def reader():
yield numpy.random.uniform(-1, 1, size=20*20), False while True:
yield numpy.random.uniform(-1, 1, size=width*height), label
return reader
``` ```
## Usage ## Usage
...@@ -41,9 +51,9 @@ label_layer = paddle.layer.data("label", ...) ...@@ -41,9 +51,9 @@ label_layer = paddle.layer.data("label", ...)
paddle.train(paddle.dataset.mnist, {"image":0, "label":1}, 128, 10, ...) paddle.train(paddle.dataset.mnist, {"image":0, "label":1}, 128, 10, ...)
``` ```
## Data Reader Decorators ## Data Reader Decorator
Data reader decorators takes a single or multiple data reader, returns a new data reader. It is similar to a [python decorator](https://wiki.python.org/moin/PythonDecorators), but it does not use `@` syntax. *Data reader decorator* takes a single or multiple data reader, returns a new data reader. It is similar to a [python decorator](https://wiki.python.org/moin/PythonDecorators), but it does not use `@` syntax.
Since we have a strict interface for data readers (no parameter, return a single data item). Data reader can be used flexiable via data reader decorators. Following are a few examples: Since we have a strict interface for data readers (no parameter, return a single data item). Data reader can be used flexiable via data reader decorators. Following are a few examples:
...@@ -61,23 +71,27 @@ buffered_reader = paddle.reader.buffered(paddle.dataset.mnist, 100) ...@@ -61,23 +71,27 @@ buffered_reader = paddle.reader.buffered(paddle.dataset.mnist, 100)
### Compose Multiple Data Readers ### Compose Multiple Data Readers
For example, we want to use a source of real images (reusing mnist dataset), and a source of fake images as input for [Generative Adversarial Networks](https://arxiv.org/abs/1406.2661). For example, we want to use a source of real images (reusing mnist dataset), and a source of random images as input for [Generative Adversarial Networks](https://arxiv.org/abs/1406.2661).
We can do: We can do:
```python ```python
def data_reader_fake_image(): def reader_creator_random_image(width, height):
while True: def reader():
yield numpy.random.uniform(-1, 1, size=20*20) while True:
yield numpy.random.uniform(-1, 1, size=width*height)
def data_reader_bool(t): return reader
while True:
yield t def reader_creator_bool(t):
def reader:
true_reader = lambda : data_reader_bool(True) while True:
false_reader = lambda : data_reader_bool(False) yield t
return reader
reader = paddle.reader.combine(paddle.dataset.mnist, data_reader_fake_image, true_reader, false_reader)
true_reader = reader_creator_bool(True)
false_reader = reader_creator_bool(False)
reader = paddle.reader.compose(paddle.dataset.mnist, data_reader_creator_random_image(20, 20), true_reader, false_reader)
# Skipped 1 because paddle.dataset.mnist produces two items per data entry. # Skipped 1 because paddle.dataset.mnist produces two items per data entry.
# And we don't care second item at this time. # And we don't care second item at this time.
paddle.train(reader, {"true_image":0, "fake_image": 2, "true_label": 3, "false_label": 4}, ...) paddle.train(reader, {"true_image":0, "fake_image": 2, "true_label": 3, "false_label": 4}, ...)
...@@ -98,29 +112,31 @@ reader = paddle.reader.shuffle(paddle.dataset.mnist, 512) ...@@ -98,29 +112,31 @@ reader = paddle.reader.shuffle(paddle.dataset.mnist, 512)
If a mini batch is returned, data reader need to take care of batch size. But batch size is a concept for training, it makes more sense for user to specify batch size as a parameter for `train`. If a mini batch is returned, data reader need to take care of batch size. But batch size is a concept for training, it makes more sense for user to specify batch size as a parameter for `train`.
Practically, always return a single entry make reusing existing data reader much easier (e.g., if existing data reader return not a single entry but 3 entries, training code will be more complex because it need to handle cases like batch size 2). Practically, always return a single entry make reusing existing data readers much easier (e.g., if existing reader return not a single entry but 3 entries, training code will be more complex because it need to handle cases like batch size 2).
### Why use a dictionary but not a list to provide mapping? ### Why use a dictionary but not a list to provide mapping?
We decided to use dictionary (`{"image":0, "label":1}`) instead of list (`["image", "label"]`) is because that user can easily resue item (e.g., using `{"image_a":0, "image_b":0, "label":1}`) or skip item (e.g., using `{"image_a":0, "label":2}`). We decided to use dictionary (`{"image":0, "label":1}`) instead of list (`["image", "label"]`) is because that user can easily resue item (e.g., using `{"image_a":0, "image_b":0, "label":1}`) or skip item (e.g., using `{"image_a":0, "label":2}`).
### How to create custom data reader ### How to create custom data reader creator
```python ```python
def image_reader(image_path, label_path, n): def image_reader_creator(image_path, label_path, n):
f = open(image_path) def reader():
l = open(label_path) f = open(image_path)
images = numpy.fromfile( l = open(label_path)
f, 'ubyte', count=n * 28 * 28).reshape((n, 28 * 28)).astype('float32') images = numpy.fromfile(
images = images / 255.0 * 2.0 - 1.0 f, 'ubyte', count=n * 28 * 28).reshape((n, 28 * 28)).astype('float32')
labels = numpy.fromfile(l, 'ubyte', count=n).astype("int") images = images / 255.0 * 2.0 - 1.0
for i in xrange(n): labels = numpy.fromfile(l, 'ubyte', count=n).astype("int")
yield images[i, :], labels[i] # a single entry of data is created each time for i in xrange(n):
f.close() yield images[i, :], labels[i] # a single entry of data is created each time
l.close() f.close()
l.close()
# use python lambda to change image_reader into a function with no parameters. return reader
reader = lambda : image_reader("/path/to/image_file", "/path/to/label_file", 1024)
# images_reader_creator creates a reader
reader = image_reader_creator("/path/to/image_file", "/path/to/label_file", 1024)
paddle.train(reader, {"image":0, "label":1}, ...) paddle.train(reader, {"image":0, "label":1}, ...)
``` ```
...@@ -129,7 +145,7 @@ paddle.train(reader, {"image":0, "label":1}, ...) ...@@ -129,7 +145,7 @@ paddle.train(reader, {"image":0, "label":1}, ...)
An example implementation of paddle.train could be: An example implementation of paddle.train could be:
```python ```python
def minibatch_decorater(reader, minibatch_size): def make_minibatch(reader, minibatch_size):
def ret(): def ret():
r = reader() r = reader()
buf = [r.next() for x in xrange(minibatch_size)] buf = [r.next() for x in xrange(minibatch_size)]
...@@ -140,6 +156,6 @@ def minibatch_decorater(reader, minibatch_size): ...@@ -140,6 +156,6 @@ def minibatch_decorater(reader, minibatch_size):
def train(reader, mapping, batch_size, total_pass): def train(reader, mapping, batch_size, total_pass):
for pass_idx in range(total_pass): for pass_idx in range(total_pass):
for mini_batch in minibatch_decorater(reader): # this loop will never end in online learning. for mini_batch in make_minibatch(reader): # this loop will never end in online learning.
do_forward_backward(mini_batch, mapping) do_forward_backward(mini_batch, mapping)
``` ```
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