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+# Build a Cuisine Recommender Web App
+
+In this lesson, you will build a classification model using some of the techniques you have learned in previous lessons and with the delicious cuisine dataset used throughout this series. In addition, you will build a small web app to use a saved model, leveraging Onnx's web runtime.
+
+One of the most useful practical uses of machine learning is building recommendation systems, and you can take the first step in that direction today!
+
+[](https://youtu.be/17wdM9AHMfg "Applied ML")
+
+> 🎥 Click the image above for a video: Jen Looper builds a web app using classified cuisine data
+
+## [Pre-lecture quiz](https://white-water-09ec41f0f.azurestaticapps.net/quiz/25/)
+
+In this lesson you will learn:
+
+- How to build a model and save it as an Onnx model
+- How to use Netron to inspect the model
+- How to use your model in a web app for inference
+
+## Build your model
+
+Building applied ML systems is an important part of leveraging these technologies for your business systems. You can use models within your web applications (and thus use them in an offline context if needed) by using Onnx.
+
+In a [previous lesson](../../3-Web-App/1-Web-App/README.md), you built a Regression model about UFO sightings, "pickled" it, and used it in a Flask app. While this architecture is very useful to know, it is a full-stack Python app, and your requirements may include the use of a JavaScript application.
+
+In this lesson, you can build a basic JavaScript-based system for inference. First, however, you need to train a model and convert it for use with Onnx.
+
+## Exercise - train classification model
+
+First, train a classification model using the cleaned cuisines dataset we used.
+
+1. Start by importing useful libraries:
+
+ ```python
+ !pip install skl2onnx
+ import pandas as pd
+ ```
+
+ You need '[skl2onnx](https://onnx.ai/sklearn-onnx/)' to help convert your Scikit-learn model to Onnx format.
+
+1. Then, work with your data in the same way you did in previous lessons, by reading a CSV file using `read_csv()`:
+
+ ```python
+ data = pd.read_csv('../data/cleaned_cuisines.csv')
+ data.head()
+ ```
+
+1. Remove the first two unnecessary columns and save the remaining data as 'X':
+
+ ```python
+ X = data.iloc[:,2:]
+ X.head()
+ ```
+
+1. Save the labels as 'y':
+
+ ```python
+ y = data[['cuisine']]
+ y.head()
+
+ ```
+
+### Commence the training routine
+
+We will use the 'SVC' library which has good accuracy.
+
+1. Import the appropriate libraries from Scikit-learn:
+
+ ```python
+ from sklearn.model_selection import train_test_split
+ from sklearn.svm import SVC
+ from sklearn.model_selection import cross_val_score
+ from sklearn.metrics import accuracy_score,precision_score,confusion_matrix,classification_report
+ ```
+
+1. Separate training and test sets:
+
+ ```python
+ X_train, X_test, y_train, y_test = train_test_split(X,y,test_size=0.3)
+ ```
+
+1. Build an SVC Classification model as you did in the previous lesson:
+
+ ```python
+ model = SVC(kernel='linear', C=10, probability=True,random_state=0)
+ model.fit(X_train,y_train.values.ravel())
+ ```
+
+1. Now, test your model, calling `predict()`:
+
+ ```python
+ y_pred = model.predict(X_test)
+ ```
+
+1. Print out a classification report to check the model's quality:
+
+ ```python
+ print(classification_report(y_test,y_pred))
+ ```
+
+ As we saw before, the accuracy is good:
+
+ ```output
+ precision recall f1-score support
+
+ chinese 0.72 0.69 0.70 257
+ indian 0.91 0.87 0.89 243
+ japanese 0.79 0.77 0.78 239
+ korean 0.83 0.79 0.81 236
+ thai 0.72 0.84 0.78 224
+
+ accuracy 0.79 1199
+ macro avg 0.79 0.79 0.79 1199
+ weighted avg 0.79 0.79 0.79 1199
+ ```
+
+### Convert your model to Onnx
+
+Make sure to do the conversion with the proper Tensor number. This dataset has 380 ingredients listed, so you need to notate that number in `FloatTensorType`:
+
+1. Convert using a tensor number of 380.
+
+ ```python
+ from skl2onnx import convert_sklearn
+ from skl2onnx.common.data_types import FloatTensorType
+
+ initial_type = [('float_input', FloatTensorType([None, 380]))]
+ options = {id(model): {'nocl': True, 'zipmap': False}}
+ ```
+
+1. Create the onx and store as a file **model.onnx**:
+
+ ```python
+ onx = convert_sklearn(model, initial_types=initial_type, options=options)
+ with open("./model.onnx", "wb") as f:
+ f.write(onx.SerializeToString())
+ ```
+
+ > Note, you can pass in [options](https://onnx.ai/sklearn-onnx/parameterized.html) in your conversion script. In this case, we passed in 'nocl' to be True and 'zipmap' to be False. Since this is a classification model, you have the option to remove ZipMap which produces a list of dictionaries (not necessary). `nocl` refers to class information being included in the model. Reduce your model's size by setting `nocl` to 'True'.
+
+Running the entire notebook will now build an Onnx model and save it to this folder.
+
+## View your model
+
+Onnx models are not very visible in Visual Studio code, but there's a very good free software that many researchers use to visualize the model to ensure that it is properly built. Download [Netron](https://github.com/lutzroeder/Netron) and open your model.onnx file. You can see your simple model visualized, with its 380 inputs and classifier listed:
+
+
+
+Netron is a helpful tool to view your models.
+
+Now you are ready to use this neat model in a web app. Let's build an app that will come in handy when you look in your refrigerator and try to figure out which combination of your leftover ingredients you can use to cook a given cuisine, as determined by your model.
+
+## Build a recommender web application
+
+You can use your model directly in a web app. This architecture also allows you to run it locally and even offline if needed. Start by creating an `index.html` file in the same folder where you stored your `model.onnx` file.
+
+1. In this file _index.html_, add the following markup:
+
+ ```html
+
+
+