aaronmarkham commented on a change in pull request #15353: [MXNET-1358]Fit api 
tutorial
URL: https://github.com/apache/incubator-mxnet/pull/15353#discussion_r297446935
 
 

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 File path: docs/tutorials/gluon/fit_api_tutorial.md
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+
+# MXNet Gluon Fit API
+
+In this tutorial, we will see how to use the [Gluon Fit 
API](https://cwiki.apache.org/confluence/display/MXNET/Gluon+Fit+API+-+Tech+Design)
 which is the easiest way to train deep learning models using the [Gluon 
API](http://mxnet.incubator.apache.org/versions/master/gluon/index.html) in 
Apache MXNet. 
+
+With the Fit API, you can train a deep learning model with miminal amount of 
code. Just specify the network, loss function and the data you want to train 
on. You don't need to worry about the boiler plate code to loop through the 
dataset in batches(often called as 'training loop'). Advanced users can still 
do this for bespoke training loops, but most use cases will be covered by the 
Fit API.
 
 Review comment:
   ```suggestion
   With the Fit API, you can train a deep learning model with a minimal amount 
of code. Just specify the network, loss function and the data you want to train 
on. You don't need to worry about the boiler plate code to loop through the 
dataset in batches (often called as 'training loop'). Advanced users can train 
with bespoke training loops, and most of these use cases will be covered by the 
Fit API.
   ```

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