This is the Bot Framework v4 Custom question answering bot sample, which shows how to use advanced features of Cognitive Services question answering, such as Precise answering, support for unstructured sources, Multi-turn conversations, and Active Learning in a bot.
This bot was created using Bot Framework.
Question answering enables you to build, train, and publish a simple question and answer bot based on FAQ URLs, structured and unstructured documents, or editorial content in minutes. In this sample, we demonstrate:
- How to use active learning to generate suggestions for your knowledge base.
- How to use follow-up prompts to create multiple turns of a conversation.
- How to configure display of precise answers.
- How to enable/disable querying unstructured sources with the bot.
-
This project requires a Language resource with Custom question answering enabled.
-
Node.js version 18 or higher
# determine node version node --version
- Follow instructions here to create a Custom question answering project. You will need this project's name to be used as
ProjectName
in .env file. - Visit Language Studio and open created project.
- Go to
Edit knowledge base
-> Click on...
-> Click onImport questions and answers
-> Click onImport as TSV
. - Import SampleForCQA.tsv file.
- You can test your knowledge base by clicking on
Test
option. - Go to
Deploy knowledge base
and click onDeploy
.
Follow these steps to update .env file.
- In the Azure Portal, go to your resource.
- Go to
Keys and Endpoint
under Resource Management. - Copy one of the keys as value of
LanguageEndpointKey
and Endpoint as value ofLanguageEndpointHostName
in .env file. ProjectName
is the name of the project created in Language Studio.
-
Install the Bot Framework Emulator version 4.14.0 or greater from here
-
Clone the repository
git clone https://github.com/Microsoft/botbuilder-samples.git
-
In a terminal, navigate to
samples/javascript_nodejs/48.customQABot-all-features
cd samples/javascript_nodejs/48.customQABot-all-features
-
Install modules
npm install
-
Run the sample
npm start
-
Connect to the bot using Bot Framework Emulator
- Launch Bot Framework Emulator
- File -> Open Bot
- Enter a Bot URL of
http://localhost:3978/api/messages
- Try the following utterances:
- Surface Book
- Power
- In Language Studio, select
inspect
to view the scores of the returned answers and compare how close they are. - In Bot Framework Emulator, a card is generated with the suggestions.
- Clicking an option sends a feedback record, which shows as suggestion under
Review suggestions
in Language Studio. ACTIVE_LEARNING_CARD_TITLE
,ACTIVE_LEARNING_CARD_NO_MATCH_TEXT
andACTIVE_LEARNING_CARD_NO_MATCH_RESPONSE
in the card can be changed from rootDialog.js.
- Clicking an option sends a feedback record, which shows as suggestion under
- Try the following utterances:
- Accessibility
- Options
- You'll notice that multi-turn prompts associated with the question are also returned in the responses.
- Try the following utterances:
- Accessibility
- Register
- You will notice a short answer returned along with a long answer.
- If testing in Language Studio, you might have to check
Include short answer response
at the top. - You can disable precise answering by setting
EnablePreciseAnswer
to false in .env file. - You can set
DisplayPreciseAnswerOnly
to true in .env file to display just precise answers in the response. - Learn more about precise answering.
- Go to your project in Language Studio. In
Manage sources
, select+ Add source
. - Select
URLs
and addhttps://www.microsoft.com/en-us/microsoft-365/blog/2022/01/27/from-empowering-frontline-workers-to-accessibility-improvements-heres-whats-new-in-microsoft-365/
. - Select unstructured in the
Classify file structure
dropdown. - Try the following utterances:
- Frontline workers
- Hybrid work solutions
- Make sure answers are returned with a high score.
- To prevent querying unstructured sources, set
INCLUDE_UNSTRUCTURED_SOURCES
to false in rootDialog.js.
If you want to return answers with only specified metadata, use the following steps:
- Go to your project in Language Studio. In
Edit knowledge bases
, under the Metadata column, select+ Add
- Select a QnA to edit and add a key value pair. Add the key value pair
Language
:Javascript
, then selectSave changes
. - Select
Test
, then Show advanced options, then select the metadata you just added (Language : Javascript
). You can also filter answers using a bot by passing it metadata and/or source filters. To do this, edit line 54 in rootDialog.js to something like the code snippet below. For more information, see Query filters.//Add below lines in line no. 54 in rootDialog.js var filters = { metadataFilter: { metadata: [ { key: 'Language', value: 'Javascript' }, ], logicalOperation: 'OR' }, sourceFilter: [], logicalOperation: 'AND' }; qnaMakerDialog.filters = filters;
When using the Microsoft Teams channel, you have the option of using Adaptive Cards instead of Hero Cards for CQA responses. To enable these cards, perform the following steps:
- Update the
botbuilder-ai
package to version4.21.0
or greater. - Set the
UseTeamsAdaptiveCard
variable in the.env
file totrue
.
If you do not set the UseTeamsAdaptiveCard
variable or set it to false, the existing Hero Card implementation will be used.
To get answers from the service when a bot (named as HelpBot
) is added to a Teams channel or Teams group chat, refer to it as @HelpBot
How to build a bot?
.
However, the bot may try to send <at>HelpBot</at>
How to build a bot?
as a query to the Custom question answering service, which may not give expected results for question to bot. The following code removes <at>HelpBot</at>
mentions of the bot from the message and sends the remaining text as query to the service.
- Goto
dialogs/rootDialog.js
- Add the following references:
const { TurnContext } = require('botbuilder-core');
- Modify
run
function asasync run(context, accessor) { const dialogSet = new DialogSet(accessor); dialogSet.add(this); const dialogContext = await dialogSet.createContext(context); if (context.activity.channelId === "msteams") { context.activity.text = TurnContext.removeRecipientMention(context.request); } const results = await dialogContext.continueDialog(); if (results.status === DialogTurnStatus.empty) { await dialogContext.beginDialog(this.id); } }
See Deploy your bot to Azure for instructions.
The deployment process assumes you have an account on Microsoft Azure and are able to log into the Microsoft Azure Portal.
If you are new to Microsoft Azure, please refer to Getting started with Azure for guidance on how to get started on Azure.