Warning: This document is for an old version of rasa NLU.

Tutorial: A simple restaurant search bot

Note

See Migrating an existing app for how to clone your existing wit/LUIS/Dialogflow app.

As an example we’ll start a new project covering the domain of searching for restaurants. We’ll start with an extremely simple model of those conversations. You can build up from there.

Let’s assume that anything our bot’s users say can be categorized into one of the following intents:

  • greet
  • restaurant_search
  • thankyou

Of course there are many ways our users might greet our bot:

  • Hi!
  • Hey there!
  • Hello again :)

And even more ways to say that you want to look for restaurants:

  • Do you know any good pizza places?
  • I’m in the North of town and I want chinese food
  • I’m hungry

The first job of rasa NLU is to assign any given sentence to one of the intent categories: greet, restaurant_search, or thankyou.

The second job is to label words like “Mexican” and “center” as cuisine and location entities, respectively. In this tutorial we’ll build a model which does exactly that.

Preparing the Training Data

The training data is essential to develop chatbots. It should include texts to be interpreted and the structured data (intent/entities) we expect chatbots to convert the texts into. The best way to get training texts is from real users, and the best way to get the structured data is to pretend to be the bot yourself. But to help get you started, we have some data saved.

Download the file (json format) and open it, and you’ll see a list of training examples, each composed of "text", "intent" and "entities", as shown below. In your working directory, create a data folder, and copy this demo-rasa.json file there.

{
  "text": "hey",
  "intent": "greet",
  "entities": []
}
{
  "text": "show me chinese restaurants",
  "intent": "restaurant_search",
  "entities": [
    {
      "start": 8,
      "end": 15,
      "value": "chinese",
      "entity": "cuisine"
    }
  ]
}

Hopefully the format is intuitive if you’ve read this far into the tutorial, for details see Training Data Format. Otherwise, the next section ‘visualizing the training data’ can help you better read, verify and/or modify the training data.

Visualizing the Training Data

It’s always a good idea to look at your data before, during, and after training a model. Luckily, there’s a great tool for creating training data in rasa’s format. - created by @azazdeaz - and it’s also extremely helpful for inspecting and modifying existing data.

For the demo data the output should look like this:

../_images/rasa_nlu_intent_gui.png

It is strongly recommended that you view your training data in the GUI before training.

Training a New Model for your Project

Now we’re going to create a configuration file. Make sure first that you’ve set up a backend, see Installation . Create a file called config_spacy.json or config_mitie.json, depending on the pipeline selected, in your working directory which looks like this

{
  "pipeline": "spacy_sklearn",
  "path" : "./projects",
  "data" : "./data/examples/rasa/demo-rasa.json"
}

or if you’ve installed the MITIE backend instead:

{
  "pipeline": "mitie",
  "mitie_file": "./data/total_word_feature_extractor.dat",
  "path" : "./projects",
  "data" : "./data/examples/rasa/demo-rasa.json"
}

Now we can train a spacy model by running:

$ python -m rasa_nlu.train -c sample_configs/config_spacy.json

If you want to know more about the parameters, there is an overview of the Configuration. After a few minutes, rasa NLU will finish training, and you’ll see a new folder named as projects/default/model_YYYYMMDD-HHMMSS with the timestamp when training finished.

Using Your Model

By default, the server will look for all projects folders under the path directory specified in the configuration. When no project is specified, as in this example, a “default” one will be used, itself using the latest trained model.

$ python -m rasa_nlu.server -c sample_configs/config_spacy.json

More information about starting the server can be found in Using rasa NLU as a HTTP server.

You can then test your new model by sending a request. Open a new tab/window on your terminal and run

$ curl -XPOST localhost:5000/parse -d '{"q":"I am looking for Chinese food"}' | python -mjson.tool

which should return

{
    "text": "I am looking for Chinese food",
    "entities": [
        {
          "start": 8,
          "end": 15,
          "value": "chinese",
          "entity": "cuisine",
          "extractor": "ner_spacy"
        }
    ],
    "intent": {
        "confidence": 0.6485910906220309,
        "name": "restaurant_search"
    },
    "intent_ranking": [
        {
            "confidence": 0.6485910906220309,
            "name": "restaurant_search"
        },
        {
            "confidence": 0.14161531595656784,
            "name": "affirm"
        }
    ]
}

If you are using the spacy_sklearn backend and the entities aren’t found, don’t panic! This tutorial is just a toy example, with far too little training data to expect good performance.

rasa NLU will also print a confidence value for the intent classification. For models using spacy intent classification this will be a probability. For MITIE models this is just a score, which might be greater than 1.

You can use this to do some error handling in your chatbot (ex: asking the user again if the confidence is low) and it’s also helpful for prioritising which intents need more training data.

Note

The output may contain other or less attributes, depending on the pipeline you are using. For example, the mitie pipeline doesn’t include the "intent_ranking" whereas the spacy_sklearn pipeline does.

With very little data, rasa NLU can in certain cases already generalise concepts, for example:

$ curl -XPOST localhost:5000/parse -d '{"q":"I want some italian food"}' | python -mjson.tool
{
    "text": "I want some italian food",
    "entities": [
        {
          "end": 19,
          "entity": "cuisine",
          "start": 12,
          "value": "italian",
          "extrator": "ner_mitie"
        }
    ],
    "intent": {
        "confidence": 0.5192305466357352,
        "name": "restaurant_search"
    },
    "intent_ranking": [
        {
            "confidence": 0.5192305466357352,
            "name": "restaurant_search"
        },
        {
            "confidence": 0.2066287604378098,
            "name": "affirm"
        }
    ]
}

even though there’s nothing quite like this sentence in the examples used to train the model. To build a more robust app you will obviously want to use a lot more training data, so go and collect it!