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🏥Medicare Locator - Open source starter pack for developers to build contextual chatbots and AI assistants in healthcare

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Medicare Locator built with the Rasa Stack

🏥 Introduction

This is an open source starter pack for developers, to show how to automate full conversations in healthcare.

It supports the following user goals:

  • Searching for a hospital, nursing home or home health agency in a US city
  • Handling basic chitchat

💾 How to install and setup Medicare Locator

Step 1: To install Medicare Locator, please clone the repo:

git clone https://github.com/RasaHQ/medicare_locator.git
cd medicare_locator

The Medicare Locator uses Python 3.5 and 3.6 and has not been tested with other versions. Use the requirements.txt file to install the appropriate dependencies via pip. If you do not have pip installed yet first do:

sudo easy_install pip

otherwise move to the next step directly.

Step 2: Install requirements:

pip install -r requirements.txt

Step 3: Install the spaCy English language model by running:

python -m spacy download en

This will install the bot and all of its requirements.

🤖 How to run Medicare Locator

Step 1: Train the core model by running:

make train-core

This will train the Rasa Core model and store it inside the /models/current/dialogue folder of your project directory.

Step 2: Train the NLU model by running:

make train-nlu

This will train the NLU model and store it inside the /models/current/nlu folder of your project directory.

**Step 3 **: In a new terminal start the server for the custom action by running:

make action-server

Step 4: Now to test the Medicare Locator with both these models you can run:

make cmdline

After the bot has loaded you can start chatting to it. If you start by saying Hi for example, the bot will reply by asking you what you are looking for and show you a number of options in form of buttons. Since those buttons do not show when testing the bot in the command line, you can imitate a button click by copy and pasting the intent of the button of your choice as your input.

An example conversation in the command line could look something like this:

Your input ->  Hi
Hi. What are you looking for ?
Buttons:
1: Hospital (/inform{"selected_type_slot": "rbry-mqwu"})
2: Nursing Home (/inform{"selected_type_slot": "b27b-2uc7"})
3: Home Health Agency (/inform{"selected_type_slot": "9wzi-peqs"})
Your input ->  /inform{"selected_type_slot": "rbry-mqwu"}
What is you current city?
Your input ->  Seattle
...

Try out different conversations and see what the current state of the bot can do! After playing around a bit you can try to modify and extend the bot by adding custom actions and intents for example. Find help for this in the Rasa Docs.

A helpful option to extend training data and get to know your bot is interactive learning, here you can correct your bot at every step in the conversation and automatically save the data for future training.

Step 5: To run Medicare Locator in interactive learning mode run:

make interactive

📱 Use Telegram as Chat platform

In order to chat to the Medicare Locator through Telegram you can do the following:

  1. First if you don't already use Telegram, download it and set it up with your phone. Once you are registered with Telegram you start by setting up a Telegram bot.
  2. Now go to the Telegram BotFather, enter /newbot and follow the instructions. You should get your access_token, and the username you set will be your verify. Save this information as you will need it later.
  3. To create a local webhook from your machine you can use Ngrok. Follow the instructions on their site to set it up on your computer. Move ngrok to your working directory and in a new terminal run:
./ngrok http 5005

Ngrok will create a https address for your computer. For Telegram you need the address in this format: https://xxxxxx.ngrok.io/webhooks/telegram/webhook

  1. Go to the credentials.yml file and input your personal access_token, verify and webhook_url.

  2. In a new terminal start the server for the custom action by running:

make action-server
  1. In a new terminal connect to Telegram by running:
make telegram
  1. Now you and anyone on Telegram are able to chat to your bot!

Detailed information about this can also be found in the Rasa Docs.

More about the Medicare Locator demo bot

There are some custom actions that require connections to external services, specifically FindHospital and FindHealthCareAddress. These two actions connect to Medicare APIs. These APIs do not require tokens or any form of authentication.

For more information about Medicare APIs please visit data.medicare.gov

If you would like to run Medicare Locator on your website, follow the instructions here to place the chat widget on your website.

👩‍💻 Overview of the files

data/core/ - contains stories for Rasa Core

data/nlu_data.md - contains example NLU training data

actions.py - contains custom action/api code

domain.yml - the domain file for Core

nlu_config.yml - the NLU config file

core_config.yml - the Core config file

credentials.yml - contains credentials for the use with Telegram

endpoints.yml - contains url for endpoint

🛠 Makefile overview

Run make help to see an overview of all make commands available.

train-nlu - Train the NLU model.

train-core - Train the core model.

interactive - Run the Medicare Locator interactive learning mode.

cmdline - Run the Medicare Locator Bot.

action-server - Starts the action server.

telegram - Set up webhook for Telegram.

🎁 License

Licensed under the GNU General Public License v3. Copyright 2019 Rasa Technologies GmbH. Copy of the license. Licensees may convey the work under this license. There is no warranty for the work.

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