TensorFlow 2.0 RC is available

# TensorFlow documentation style guide

## Best practices

• Focus on user intent and audience.
• Use every-day words and keep sentences short.
• Use consistent sentence construction, wording, and capitalization.
• Use headings and lists to make your docs easier to scan.
• Demonstrate empathy.

## Markdown syntax

With a few exceptions, TensorFlow uses the standard Markdown rules. This section explains the primary differences between standard Markdown rules and the Markdown rules that TensorFlow documentation uses.

#### Inline mentions of code

Put backticks around the following symbols when used in text:

• Argument names: input, x, tensor
• Returned tensor names: output, idx, out
• Data types: int32, float, uint8
• Other op names reference in text: list_diff(), shuffle()
• Class names: tf.Tensor, Strategy
• File name: image_ops.py, /path-to-your-data/xml/example-name
• Math expressions or conditions: -1-input.dims() <= dim <= input.dims()

#### Code blocks

Use three backticks to open and close a code block. Optionally, specify the programming language after the first backtick group, for example:


python
# some python code here



For links between files in this repository, use relative links: [Eager basics](../tutorials/eager/eager_basics) produces Eager basics. These links will work on both GitHub and tensorflow.org.

API links are converted when the site is published.

To link to the Python API, enclose the full symbol path in backticks:

For the C++ API, use the namespace path:

For external links, including files on https://www.tensorflow.org that are not in the tensorflow/docs repository, use standard Markdown links with the full URI.

To link to source code, use a link starting with https://www.github.com/tensorflow/tensorflow/blob/master/, followed by the file name starting at the GitHub root.

This URI naming scheme ensures that https://www.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 URI query parameters in the link.

### Math in Markdown

You may use MathJax within TensorFlow when editing Markdown files, but note the following:

• MathJax renders properly on tensorflow.org.
• MathJax does not render properly on GitHub.
• This notation can be off-putting to unfamiliar developers.

Use $$ around a block of MathJax: $$
E=\frac{1}{2n}\sum_x\lVert (y(x)-y'(x)) \rVert^2
$$$$ E=\frac{1}{2n}\sum_x\lVert (y(x)-y'(x)) \rVert^2 

Wrap inline MathJax expressions with \$$... \$$:


This is an example of an inline MathJax expression: \$$2 \times 2 = 4 \$$


This is an example of an inline MathJax expression: $$2 \times 2 = 4$$

## Prose style

If you are going to write or edit substantial portions of the narrative documentation, please read the Google Developer Documentation Style Guide.

### Principles of good style

• Check the spelling and grammar in your contributions. Most editors include a spell checker or have an available spell-checking plugin. You can also paste your text into a Google Doc or other document software for a more robust spelling and grammar check.
• Use a casual and friendly voice. Write TensorFlow documentation like a conversation—as if you're talking to another person one-on-one. Use a supportive tone in the article.
• Avoid disclaimers, opinions, and value judgements. Words like "easily", "just", and "simple" are loaded with assumptions. Something might seem easy to you, but be difficult for another person. Try to avoid these whenever possible.
• Use simple, to the point sentences without complicated jargon. Compound sentences, chains of clauses, and location-specific idioms can make text hard to understand and translate. If a sentence can be split in two, it probably should. Avoid semicolons. Use bullet lists when appropriate.
• Provide context. Don't use abbreviations without explaining them. Don't mention non-TensorFlow projects without linking to them. Explain why the code is written the way it is.

## Usage guide

### Ops

Use # ⇒ instead of a single equal sign when you want to show what an op returns.

# 'input' is a tensor of shape [2, 3, 5]
(tf.expand_dims(input, 0))  # ⇒ [1, 2, 3, 5]


### Tensors

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 or returned from an op, then you should capitalize the word Tensor and add backticks around it because you're talking about a Tensor object.

Don't use the word Tensors (plural) to describe multiple Tensor objects unless you really are talking about a Tensors object. Instead, say "a list (or collection) of Tensor objects".

Use the word shape to detail the dimensions of a tensor, and show the shape in square brackets with backticks. For example:


If input is a three-dimensional tensor with shape [3, 4, 3], this operation
returns a three-dimensional tensor with shape [6, 8, 6].