botdispatch

1.7.7 • Public • Published

Dispatch Command Line tool

npm version

Dispatch is a tool to create and evaluate LUIS models used to dispatch intent across multiple bot modules such as LUIS models, QnA knowledge bases and others (added to dispatch as a file type).

Use the Dispatch model in cases when:

  1. Your bot consists of multiple modules and you need assistance in routing user's utterances to these modules and evaluate the bot integration.
  2. Evaluate quality of intents classification of a single LUIS model.
  3. Create a text classification model from text files.

Deprecation Roadmap

Dispatch command line is on path to be replaced with Orchestrator recognizer. Orchestrator is an independent technology from LUIS and QnAMaker.

To migrate your dispatch models to Orchestrator we recommend the following documentation:

The exact roadmap timeline hasn't been finalized yet but now is a good time to start evaluating Orchestrator as an alternative to dispatch.

Prerequisite

  • Node.js version 8.5 or higher
  • For installation on Linux, please pre-install .NET Core runtime by following instructions here
  • If install fails, try the workaround described here

Installation

To install:

npm install -g botdispatch

This will install dispatch into your global path.

Usage

Initializing dispatch

To initialize dispatch:

dispatch init [options]

It will ask for the name of the dispatch, LUIS authoring key and region needed to create a LUIS application. This commands then creates {dispatchName}.dispatch file. To bypass the prompts, values could be passed in via arguments below.

Arguments:

Option Description
-n, --name (optional) Name of the dispatch
--luisAuthoringKey (optional) LUIS authoring key
--luisAuthoringRegion (optional) LUIS authoring region
-b, --bot (optional) .bot file path
-s, --secret (optional) .bot file secret
-c, --culture (optional) Used to set LUIS app culture for dispatch. Required if none of dispatch source(s) is LUIS app.
--hierarchical (optional) Default to true. If false, existing intents from source LUIS model(s) will be available as the dispatch intents.
--dataFolder (optional) Dispatch working directory
-h, --help Output usage information

Example:

dispatch init -n TestDispatch --luisAuthoringKey "xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx" --luisAuthoringRegion westus 
dispatch init --bot c:\src\bot\testbot.bot

Adding source to dispatch

This step is not needed if you have a .bot file already connected with services (i.e., LUIS/QnA). Dispatch will take the services in .bot file and add each of the services it can dispatch to .dispatch file. Currently, a maximum of 500 dispatch sources could be added to a Dispatch model.

dispatch add -t luis -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -n TestLuisApp -v 0.1 -k xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
dispatch add -t luis -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -n TestLuisApp --intentName foo -v 0.1 -k xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
dispatch add -t qna -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -n Faq -k xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
dispatch add -t qna -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -n Faq -k xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx --includeAnswersForTraining true
dispatch add -t qna -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx -n Faq -k xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx --includeAnswersForTraining true --includePrompts true
dispatch add -t file -n TestModule -f c:\src\testmodule.tsv
dispatch add -t file -n TestModule2 -f c:\src\testmodule2.txt
dispatch add -t file -n TestModule3 -f c:\src\testmodule3.json
dispatch add -t file -f c:\src\testmodule.tsv --intentName l_Foo

Arguments

Option Description
-t, --type luis, qna, file
-i, --id (required only if type is luis/qna) LUIS app id or QnA kb id from application settings page
-n, --name LUIS app name or QnA name (from application settings page) or module/file name for file type
-k, --key (required only if type is luis/qna) LUIS authoring key (from https://www.luis.ai/user/settings, see https://aka.ms/luiskeys for more information on LUIS keys) or QnA maker subscription key (from https://ms.portal.azure.com, see https://aka.ms/qnamakerkeys for more information about QnA Maker keys)
-v, --version (Required only if type is luis) LUIS app version
-f, --filePath (Required only if type is file) Path to tsv file containing tab delimited intent and utterance fields or .txt file with an utterance on each line
--intentName (optional) Dispatch intent name for this source, name param value will be used otherwise
--includedIntents (optional) Comma separated list of intents to be included in the Dispatch model, all intents are included otherwise
--ignoreWordAlterations (optional) Default to false. Disable expansions of QnA kb questions with QnA word alterations
--includeAnswersForTraining (optional for QnA only) Default to false. If set to true, QnA KB answers will be included in the training set
--includeMetadata (optional for QnA only) Default to false. If set to true, QnA KB metadata will be included in the training set
--includePrompts (optional for QnA only) Default to false. If set to true, QnA KB prompt questions will be included in the training set
--dispatch (optional) Path to .dispatch file
--dataFolder (optional) Dispatch working directory
-h, --help Output usage information

Supported file types:

File extension Description
.tsv Lines of tab delimited fields of intent and utterance (in that order)
.txt Lines of utterances with intent as file name
.json Exported LUIS or QnA Maker json file

Removing dispatch source

To remove one of the services from .dispatch file, run

dispatch remove -t luis -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx 
dispatch remove -t qna -i xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx 
dispatch remove -t file -f c:\src\testmodule.json

Arguments

Option Description
-t, --type luis, qna, file
-i, --id (required only if type is luis/qna) LUIS app id or QnA kb id - from application settings page)
-n, --name LUIS app name or QnA name (from application settings page) or module/file name for file type
-f, --filePath (Required only if type is file) Path to tsv file containing tab delimited intent and utterance fields or .txt file with an utterance on each line
--dispatch (optional) Path to .dispatch file
--dataFolder (optional) Dispatch working directory
-h, --help Output usage information

Creating your dispatch model

To create, train and publish your new dispatch model:

dispatch create [options]
dispatch create --publishToStaging true --useAllTrainingData true
dispatch create --bot c:\src\bot\testbot.bot --secret <your_bot_file_secret>
dispatch create --dontImport true --useAllTrainingData true

Options:

Option Description
-b, --bot (optional) Path to .bot file or bot services json file
-s, --secret (optional) Secret used to encrypt/decrypt .bot file
-c, --culture (optional) Used to set LUIS app culture for dispatch. Required if none of dispatch source(s) is LUIS app
--dispatch (optional) Path to .dispatch file
--dataFolder (optional) Dispatch working directory
--hierarchical (optional) Default to true, set to false when evaluating a single LUIS model
--useAllTrainingData (optional) Default to false. LUIS UseAllTrainingData flag (see https://westus.dev.cognitive.microsoft.com/docs/services/5890b47c39e2bb17b84a55ff/operations/versions-update-application-version-settings)
--dontReviseUtterance (optional) Default to false. Dispatch sometimes minorly revises an utterance for generalization. If false, utterances won't be revised
--publishToStaging (optional) Default to false. Publish to LUIS staging instead of production platform
--dedupeTrainingSet (optional) Default to false. If false, Dispatch won't dedupe duplicated training instances
--gov (optional) Set to true to target Azure goverment
--remote (optional) Set to true if invoking tool remotely
--dontImport (optional) Default to false. If set to true, do not communicate with luis.ai for importing, training, and publishing the Dispatch LUIS app
--doAutoActiveLearning (optional) Default to false. LUIS limit on training-set size is 15000. When a LUIS app has much more utterances for training, Dispatch's auto active learning process can intelligently down sample the utterances
--aalNumberOfInstancesPerIteration (optional) Default to 2500. Max #instances processed during each auto-active-learning down-sampling iteration
--aalMaxNumberOfActiveLearningIterations (optional) Default to -1. Max number of auto active learning iterations, each processes a fixed batch of instances. Negative setting enables scanning through all available instances.
--aalFixedNumberOfActiveLearningIterations (optional) Default to -1. Fixed number of iterations to process all available instances. Number of instance batch in each instance is calaulated based on this parameter.
--aalInitialNumberOfSamplesPerIntent (optional) Default to 20. Initial #instances randomly sampled for each intent before kicking off the auto-active-learning down-sampling process.
--aalInitialNumberOfInstancesPerIteration (optional) Default to 200. #instance per iteration can be configured to grow until reaching aalNumberOfInstancesPerIteration.
--aalNumberOfSamplesPerIntentGrowthRatio (optional) Default to 1.5. The growth rate of #instances per auto-active-learning iteration.
-h, --help Output usage information

This command creates a brand new LUIS application.

Refreshing your dispatch model

To train and publish your existing dispatch model after modification:

dispatch refresh [options]
dispatch refresh --publishToStaging true --useAllTrainingData true
dispatch refresh --bot c:\src\bot\testbot.bot --secret <your_bot_file_secret>

With the following options

Option Description
-v, --version (optional) Dispatch LUIS app version. A new version will be created if param value is different than previously created version.
-b, --bot (optional) .bot file path
-s, --secret (optional) .bot file secret
--useAllTrainingData (optional) Default to false. LUIS UseAllTrainingData flag (see https://westus.dev.cognitive.microsoft.com/docs/services/5890b47c39e2bb17b84a55ff/operations/versions-update-application-version-settings)
--dontReviseUtterance (optional) Default to false. Dispatch sometimes minorly revises an utterance for generalization. If false, utterances won't be revised
--publishToStaging (optional) Default to false. Publish to LUIS staging instead of production platform
--dedupeTrainingSet (optional) Default to false. If false, Dispatch won't dedupe duplicated training instances
--gov (optional) Set to true to target Azure goverment
--remote (optional) Set to true if invoking tool remotely
--dontImport (optional) Default to false. If set to true, do not communicate with luis.ai for importing, training, and publishing the Dispatch LUIS app
--dispatch (optional) .dispatch file path
--dataFolder (optional) Dispatch working directory
-h, --help Output usage information

This command updates existing LUIS application in .dispatch file.

Evaluating your dispatch model

This command will run cross validation evaluation on the dispatch model and generate a summary of the evaluation:

dispatch eval [options]

Options:

Option Description
--luisSubscriptionKey (optional, will be prompted) Cognitive Service LUIS key from portal.azure.com
--luisSubscriptionRegion (optional, will be prompted) Cognitive Service LUIS region from portal.azure.com
--dispatch (optional) .dispatch file path
--dataFolder (optional) Dispatch working directory
--doAutoActiveLearning (optional) Default to false. LUIS limit on training-set size is 15000. When a LUIS app has much more utterances for training, Dispatch's auto active learning process can intelligently down sample the utterances
--aalNumberOfInstancesPerIteration (optional) Default to 2500. Max #instances processed during each auto-active-learning down-sampling iteration
--aalMaxNumberOfActiveLearningIterations (optional) Default to -1. Max number of auto active learning iterations, each processes a fixed batch of instances. Negative setting enables scanning through all available instances.
--aalFixedNumberOfActiveLearningIterations (optional) Default to -1. Fixed number of iterations to process all available instances. Number of instance batch in each instance is calaulated based on this parameter.
--aalInitialNumberOfSamplesPerIntent (optional) Default to 20. Initial #instances randomly sampled for each intent before kicking off the auto-active-learning down-sampling process.
--aalInitialNumberOfInstancesPerIteration (optional) Default to 200. #instance per iteration can be configured to grow until reaching aalNumberOfInstancesPerIteration.
--aalNumberOfSamplesPerIntentGrowthRatio (optional) Default to 1.5. The growth rate of #instances per auto-active-learning iteration.
--aalTestingInstancesDownsamplingRatio (optional) Default to 1. Ratio of test instances that will be used for evaluating the model.
-h, --help Output usage information

If no options are supplied, the tool will prompt for the required information it needs to run model evaluation.

Testing your dispatch model

To test your dispatch model against test set:

dispatch test [options]

Options:

Option Description
--testFilePath Path to a tsv file with three (or two) fields: expected intent, weight and utterance in that order; the first line (header) will be skipped; the weight column is optional
--luisSubscriptionKey (optional) Cognitive Service LUIS key from portal.azure.com
--luisSubscriptionRegion (optional) Cognitive Service LUIS region from portal.azure.com
--dispatch (optional) .dispatch file path
--dataFolder (optional) Dispatch working directory
--doAutoActiveLearning (optional) Default to false. If true, will also run 'test' against the local model created during the auto active learning process
-h, --help Output usage information

Run prediction using your dispatch model

To run prediction against your new dispatch model, run

dispatch predict [options]

With the following options

Option Description
--luisSubscriptionKey (optional) Cognitive Service LUIS key from portal.azure.com
--luisSubscriptionRegion (optional) Cognitive Service LUIS region from portal.azure.com
--dispatch (optional) .dispatch file path
--dataFolder (optional) Dispatch working directory
--doAutoActiveLearning (optional) Default to false. If true, will also run 'predict' using the local model created during the auto active learning process
-h, --help Output usage information

You'll then be prompted to enter the utterance you'd like to run prediction on.

Print dispatch configuration to console

To print your current dispatch configuration, run

dispatch list [options]

With the following options

Option Description
--dispatch (optional) .dispatch file path
--dataFolder (optional) Dispatch working directory
-h, --help Output usage information

Common Tasks

Create bot dispatch using bot file

If you have a .bot file containing one or more LUIS model(s) and/or one or more QnA Maker knowledge base(s), you could create Dispatch model without having to initialize Dispatch and add all of the sources separately. Running the eval command is optional but it provides insight into how well the newly created or updated Dispatch model will perform. In addition, it provides suggestions for improving the bot components.

dispatch create --bot c:\src\bot\testbot.bot --secret <your_bot_file_secret>
dispatch eval --luisSubscriptionKey <azure_luis_key> --luisSubscriptionRegion <azure_luis_region>

Updating dispatch

If any of your LUIS/QnA Maker models have changed or if you have added more LUIS/QnA maker component(s) to your bot, update your Dispatch model with refresh command.

dispatch refresh --bot c:\src\bot\testbot.bot --secret <your_bot_file_secret>
dispatch eval --luisSubscriptionKey <azure_luis_key> --luisSubscriptionRegion <azure_luis_region>

In some scenarios, utterances might need to be added directly to the Dispatch app to improve Dispatch intent classification. Instead of adding them directly to Dispatch app via LUIS portal, we recommend adding these utterances into a text file (one text file per Dispatch intent) and add the file(s) as source to Dispatch. The utterances will be persisted across dispatch refresh. To add/modify the utterances, simply edit the file where utterances are added and run "dispatch refresh" command.

dispatch add -t file -f <file_path> --intentName <dispatch_target_intent_name, ie l_LUISAppName or q_QnAKbName>

Create and evaluate bot dispatch

End-to-end example of a bot consisting of a LUIS module and a QnA Maker knowledge base module:

dispatch init -n mybot_dispatch --luisAuthoringKey <luis_authoring_key> --luisAuthoringRegion <region>
dispatch add -t luis -i <luis_app_id> -n <luis_app_name> -v <luis_app_version> -k <luis_app_authoring_key>
dispatch add -t qna -i <qna_kb_id> -n <kb_name> -k <qna_maker_key>
dispatch create
dispatch eval --luisSubscriptionKey <azure_luis_key> --luisSubscriptionRegion <azure_luis_region>

The output is Summary.html file located in local file system directory where the commands were issued. It includes all the evaluation results and suggestions for improving the bot components.

Evaluate single LUIS model

Evaluate a LUIS model performing cross validation:

dispatch init -n mybot_dispatch --luisAuthoringKey <luis_authoring_key> --luisAuthoringRegion <region>
dispatch add -t luis -i <luis_app_id> -n <luis_app_name> -v <luis_app_version> -k <luis_app_authoring_key>
dispatch create --hierarchical false
dispatch eval --luisSubscriptionKey <azure_luis_key> --luisSubscriptionRegion <azure_luis_region>

The output, Summary.html, contains all the evaluation results. The file is located in local file system directory where the commands were issued.

Test a LUIS model using test utterances

Suppose the dispatcher model was already created following the steps of one of the above tasks. To test this model with a tab-delimited text file run these commands:

dispatch test --testFilePath <text_file>

The output, Summary.html, contains all the evaluation results. The file is located in the location of the test file.

Sample Code and Tutorial

C# Sample: https://github.com/Microsoft/BotBuilder-Samples/tree/master/samples/csharp_dotnetcore/14.nlp-with-dispatch

JS Sample: https://github.com/Microsoft/BotBuilder-Samples/tree/master/samples/javascript_nodejs/14.nlp-with-dispatch

Tutorial: https://docs.microsoft.com/en-us/azure/bot-service/bot-builder-tutorial-dispatch

Troubleshooting

If you are using the Dispatch command line tool in Azure Pipelines with a Microsoft-hosted agent, you may encounter the following error:

Unable to install/use dotnet framework

To fix this, make sure you are using the correct agent pool. In order to successfully run the .NET commands that Dispatch relies on, you will need to use Visual Studio 2017 on Windows Server 2016 (vs2017-win2016). In the web UI, you would select "Hosted VS2017":

azurepipelinesagentpoolvmimages

FAQ

Are entities in LUIS sub models transferred to Dispatch model?

Dispatch's main purpose is to route intent across multiple bot modules, thus it concerns only with intent classification. Unless entities are used for intent classification, they won't be transferred to Dispatch app. Since patterns are used for intent classification, they are transferred to the Dispatch model, and if they make use of entities, those entities will be transferred as well. Dispatch creation will fail if total entities used in pattern exceed the entities limits here. The only workaround is to reduce that the total number of entities used in patterns in the sub LUIS models.

What happen if combined utterances in the LUIS sub models and QnA kbs exceed the 15,000 utterance limit in LUIS?

Dispatch CLI will proportionally down sample utterances from each sub model so it won't exceed the 15,000 utterance limit. Use the optional parameter "--doAutoActiveLearning true" for the create/refresh commands for intelligent down sampling, where only relevant examples will be retained.

How do we update Dispatch model when LUIS sub models or QnA kbs are updated?

Use the refresh command to update your Dispatch model.

Nightly builds

Nightly builds are based on the latest development code which means they may or may not be stable and probably won't be documented. These builds are better suited for more experienced users and developers although everyone is welcome to give them a shot and provide feedback.

You can get the latest nightly build of Dispatch from the BotBuilder MyGet feed. To install the nightly -

npm config set registry https://botbuilder.myget.org/F/botbuilder-tools-daily/npm/

Install using npm:

npm i -g botdispatch

To reset registry:

npm config set registry https://registry.npmjs.org/

Readme

Keywords

none

Package Sidebar

Install

npm i botdispatch

Weekly Downloads

240

Version

1.7.7

License

MIT

Unpacked Size

9.83 MB

Total Files

75

Last publish

Collaborators

  • botframework
  • sgellock
  • cwhitten