TensorFlow's documentation is maintained in
Markdown, and resides in the
g3doc/
directory. The Introduction, Overview, Tutorials, and How-Tos
sections are manually edited.
Anything in the g3doc/api_docs
directory is generated from comments in the
code, and should not be edited directly. The script tools/docs/gen_docs.sh
generates the API documentation. If called without arguments, it rebuilds the
Python API documentation only (i.e., documentation for Ops, whether defined in
Python or C++). If -a
is passed, it also rebuilds the documentation for the
C++ API. It must be called from the tools/docs
directory, and if called with
-a
, requires doxygen
to be installed.
Ops, classes, and utility functions are defined in Python modules, such as
image_ops.py
. The module docstring is inserted at the beginning of the
Markdown file generated for the Python file. Thus, image_ops.md
starts with
the module docstring in image_ops.py
. python/framework/gen_docs_combined.py
contains the list of all libraries for which Markdown files are created. If
you are adding a new library (generating a separate section in the API
documentation), you have to add it to the list of libraries in
gen_docs_combined.py
. For the C++ api, only a single library file exists, its
Markdown is a string in gen_cc_md.py
, from which api_docs/cc/index.md
is
created. The rest of the C++ documentation is generated from XML files generated
by doxygen.
In the module docstring of a file registered as a library, you can insert
generated docs for Ops, classes, and functions by calling them out with the
syntax @@<python-name>
(at the beginning of an otherwise empty line). The
called-out op, function, or class does not have to be defined in the same file.
This allows you to control the order in which the Ops, classes, and functions are documented. Group them in a logical order, with interspersed high level documentation.
Every public op, class or function must be called out with a @@
entry in some
library. If you don't, you will get doc_gen_test
failures.
Docs for Ops are automatically extracted from Python wrappers or C++ Ops registrations, Python wrappers have priority.
- Python wrappers are in
python/ops/*.py
. - C++ Ops registrations are in
core/ops/*.cc
.
Docs for Classes and Utility Functions are extracted from their docstrings.
Ideally, you should provide the following information, in order of presentation:
- A short sentence that describes what the op does.
- A short description of what happens when you pass arguments to the op.
- An example showing how the op works (pseudocode is best).
- Requirements, caveats, important notes (if there are any).
- Descriptions of inputs, outputs, and Attrs or other parameters of the op constructor.
Each of these is described in more detail below.
Write your text in Markdown (.md) format. A basic syntax reference is here. You are allowed to use MathJax notation for equations. Those will be rendered properly on tensorflow.org, but don't show up on github.
Put backticks around these things when they're used in text:
- Argument names (e.g.
input
,x
,tensor
) - Returned tensor names (e.g.
output
,idx
,out
) - Data types (e.g.
int32
,float
,uint8
) - Other op names referenced in text (e.g.
list_diff()
,shuffle()
) - Class names (e.g.
Tensor
when you actually mean aTensor
object; don't capitalize or use backticks if you're just explaining what an op does to a tensor, or a graph, or an operation in general) - File names (e.g.
image_ops.py
, or/path-to-your-data/xml/example-name
)
Put three backticks around sample code and pseudocode examples. And use ==>
instead of a single equal sign when you want to show what an op returns. For
example:
```
# 'input' is a tensor of shape [2, 3, 5]
(tf.expand_dims(input, 0)) ==> [1, 2, 3, 5]
```
If you're providing a Python code sample, add the python style label to ensure proper syntax highlighting:
```python
# some Python code
Put single backticks around math expressions or conditions. For example:
```markdown
This operation requires that `-1-input.dims() <= dim <= input.dims()`.
When you're talking about a tensor in general, don't capitalize the word tensor.
When you're talking about the specific object that's provided to an op as an
argument or returned by an op, then you should capitalize the word Tensor and
add backticks around it because you're talking about a Tensor
object that gets
passed.
Don't use the word Tensors
to describe multiple Tensor objects unless you
really are talking about a Tensors
object. Better to say "a list of Tensor
objects.", or, maybe, "Tensor
s".
When you're talking about the size of a tensor, use these guidelines:
Use the term "dimension" to refer to the size of a tensor. If you need to be specific about the size, use these conventions:
- Refer to a scalar as a "0-D tensor"
- Refer to a vector as a "1-D tensor"
- Refer to a matrix as a "2-D tensor"
- Refer to tensors with 3 or more dimensions as 3-D tensors or n-D tensors. Use the word "rank" only if it makes sense, but try to use "dimension" instead. Never use the word "order" to describe the size of a tensor.
Use the word "shape" to describe in detail the dimensions of a tensor, and show the shape in square brackets with backticks. For example:
If `input` is a 3-D tensor with shape `[3, 4, 3]`, this operation will return
a 3-D tensor with shape `[6, 8, 6]`.
To link to something else in the g3docs
tree, use a relative path, like
[tf.parse_example](../api_docs/python/ops.md#parse_example)
Do not use absolute paths for internal links, as this will break the website
generator.
To link to source code, use a link starting with:
https://www.tensorflow.org/code/
, followed by
the file name starting at the github root. For instance, a link to this file
should be written as
https://www.tensorflow.org/code/tensorflow/g3doc/how_tos/documentation/index.md
.
This ensures that tensorflow.org can forward the link to the
branch of the code corresponding to the version of the documentation you're
viewing. Do not include url parameters in the URL.
All Ops defined in C++ must be documented as part of the REGISTER_OP
declaration. The docstring in the C++ file is processed to automatically add
some information for the input types, output types, and Attr types and default
values.
For example:
REGISTER_OP("PngDecode")
.Input("contents: string")
.Attr("channels: int = 0")
.Output("image: uint8")
.Doc(R"doc(
Decodes the contents of a PNG file into a uint8 tensor.
contents: PNG file contents.
channels: Number of color channels, or 0 to autodetect based on the input.
Must be 0 for autodetect, 1 for grayscale, 3 for RGB, or 4 for RGBA.
If the input has a different number of channels, it will be transformed
accordingly.
image:= A 3-D uint8 tensor of shape `[height, width, channels]`.
If `channels` is 0, the last dimension is determined
from the png contents.
)doc");
Results in this piece of Markdown:
### tf.image.png_decode(contents, channels=None, name=None) {#png_decode}
Decodes the contents of a PNG file into a uint8 tensor.
#### Args:
* <b>contents</b>: A string Tensor. PNG file contents.
* <b>channels</b>: An optional int. Defaults to 0.
Number of color channels, or 0 to autodetect based on the input.
Must be 0 for autodetect, 1 for grayscale, 3 for RGB, or 4 for RGBA. If the
input has a different number of channels, it will be transformed accordingly.
* <b>name</b>: A name for the operation (optional).
#### Returns:
A 3-D uint8 tensor of shape `[height, width, channels]`.
If `channels` is 0, the last dimension is determined
from the png contents.
Much of the argument description is added automatically. In particular, the doc
generator automatically adds the name and type of all inputs, attrs, and
outputs. In the above example, <b>contents</b>: A string Tensor.
was added
automatically. You should write your additional text to flow naturally after
that description.
For inputs and output, you can prefix your additional text with an equal sign to
prevent the automatically added name and type. In the above example, the
description for the output named image
starts with =
to prevent the addition
of A uint8 Tensor.
before our text A 3-D uint8 Tensor...
. You cannot prevent
the addition of the name, type, and default value of attrs this way, so write
your text carefully.
If your op is defined in a python/ops/*.py
file, then you need to provide
text for all of the arguments and output (returned) tensors.
You should conform to the usual Python docstring conventions, except that you should use Markdown in the docstring. The doc generator does not auto-generate any text for ops that are defined in Python, so what you write is what you get.
Here's a simple example:
def foo(x, y, name="bar"):
"""Computes foo.
Given two 1-D tensors `x` and `y`, this operation computes the foo.
For example:
tf.foo(x, y) ==> [3, 3]
Args:
x: A `Tensor` of type `int32`.
y: A `Tensor` of type `int32`.
name: A name for the operation (optional).
Returns:
A `Tensor` of type `int32` that is the foo of `x` and `y`.
Raises:
ValueError: If `x` or `y` are not of type `int32`.
"""
...
Here is more detail and examples for each of the elements of the docstrings.
Examples:
Concatenates tensors.
Flips an image horizontally from left to right.
Computes the Levenshtein distance between two sequences.
Saves a list of tensors to a file.
Extracts a slice from a tensor.
Examples:
Given a tensor input of numerical type, this operation returns a tensor of
the same type and size with values reversed along dimension `seq_dim`. A
vector `seq_lengths` determines which elements are reversed for each index
within dimension 0 (usually the batch dimension).
This operation returns a tensor of type `dtype` and dimensions `shape`, with
all elements set to zero.
The squeeze()
op has a nice pseudocode example:
shape(input) => `[1, 2, 1, 3, 1, 1]`
shape(squeeze(input)) => `[2, 3]`
The tile()
op provides a good example in descriptive text:
For example, tiling `[a, b, c, d]` by 2 produces
`[[a, b, c, d], [a, b, c, d]]`.
It is often helpful to show code samples in Python. Never put them in the C++ Ops file, and avoid putting them in the Python Ops doc. Put them in the module or class docstring where the Ops constructors are called out.
Here's an example from the module docsting in image_ops.py
:
Tensorflow can convert between images in RGB or HSV. The conversion
functions work only on `float` images, so you need to convert images in
other formats using [`convert_image_dtype`](#convert-image-dtype).
Example:
```python
# Decode an image and convert it to HSV.
rgb_image = tf.image.decode_png(..., channels=3)
rgb_image_float = tf.image.convert_image_dtype(rgb_image, tf.float32)
hsv_image = tf.image.rgb_to_hsv(rgb_image)
```
Examples:
This operation requires that: `-1-input.dims() <= dim <= input.dims()`
Note: This tensor will produce an error if evaluated. Its value must
be fed using the `feed_dict` optional argument to `Session.run()`,
`Tensor.eval()`, or `Operation.run()`.
Keep the descriptions brief and to the point. You should not have to explain how the operation works in the argument sections.
Mention if the Op has strong constraints on the dimensions of the input or
output tensors. Remember that for C++ Ops, the type of the tensor is
automatically added as either as "A ..type.. Tensor" or "A Tensor with type
in {...list of types...}". In such cases, if the Op has a constraint on the
dimensions either add text such as "Must be 4-D" or start the description with
=
(to prevent the tensor type to be added) and write something like
"A 4-D float tensor".
For example, here are two ways to document an image argument of a C++ op (note the "=" sign):
image: Must be 4-D. The image to resize.
image:= A 4-D `float` tensor. The image to resize.
In the documentation, these will be rendered to markdown as
image: A `float` Tensor. Must be 4-D. The image to resize.
image: A 4-D `float` Tensor. The image to resize.
The doc generator always describe attrs type and default value, if any. You cannot override that with an equal sign because the description is very different in the C++ and Python generated docs.
Phrase any additional attr description so that it flows well after the type and default value.
Here's an example from image_ops.py
:
REGISTER_OP("PngDecode")
.Input("contents: string")
.Attr("channels: int = 0")
.Output("image: uint8")
.Doc(R"doc(
Decode a PNG-encoded image to a uint8 tensor.
The attr `channels` indicates the desired number of color channels for the
decoded image.
Accepted values are:
* 0: Use the number of channels in the PNG-encoded image.
* 1: output a grayscale image.
...
contents: 0-D. The PNG-encoded image.
channels: Number of color channels for the decoded image.
image: 3-D with shape `[height, width, channels]`.
)doc");
This generates the following "Args" section:
contents: A string Tensor. 0-D. The PNG-encoded image.
channels: An optional `int`. Defaults to 0. Number of color channels for the
decoded image.
name: A name for the operation (optional).