ThomasDelteil commented on a change in pull request #14462: [MXNET-1358][Fit 
API] Fit api tutorial
URL: https://github.com/apache/incubator-mxnet/pull/14462#discussion_r267126384
 
 

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 File path: docs/tutorials/gluon/fit_api_tutorial.md
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+
+
+# 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 a simple and flexible way to train deep learning models using the 
[Gluon 
APIs](http://mxnet.incubator.apache.org/versions/master/gluon/index.html) in 
Apache MXNet. 
+
+Prior to Fit API, training using Gluon required one to write a custom ["Gluon 
training 
loop"](https://mxnet.incubator.apache.org/versions/master/tutorials/gluon/logistic_regression_explained.html#defining-and-training-the-model).
 Fit API reduces the complexity and amount of boiler plate code required to 
train a model, provides an easy to use and a powerful API. 
+
+To demonstrate the Fit API, this tutorial will train an Image Classification 
model using the [ResNet-18](https://arxiv.org/abs/1512.03385) architecture for 
the neural network. The model will be trained using the [Fashion-MNIST 
dataset](https://research.zalando.com/welcome/mission/research-projects/fashion-mnist/).
 
+
+
+## Prerequisites
+
+To complete this tutorial, you will need:
+
+- [MXNet](https://mxnet.incubator.apache.org/install/#overview) (The version 
of MXNet will be >= 1.5.0)
+- [Jupyter Notebook](https://jupyter.org/index.html) (For interactively 
running the provided .ipynb file)
+
+This tutorial works with both Python 2 and Python 3.
+
+
+
+```python
+import mxnet as mx
+from mxnet import gluon
+from mxnet.gluon.model_zoo import vision
+from mxnet.gluon.estimator import estimator, event_handler
+
+ctx = mx.gpu(0) # Or mx.cpu(0) if not using a GPU backed machine
 
 Review comment:
   please use `ctx = mx.gpu() if mx.context.num_gpus() > 0 else mx.cpu()`

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