/WA-Testing-Tool

Scripts that run against Watson Assistant for K fold validation on training set, testing on blind test, and draw precision curves for comparison.

Primary LanguageJupyter NotebookApache License 2.0Apache-2.0

WA-Testing-Tool

Scripts that run against Watson Assistant for

  • KFOLD K fold cross validation on training set,
  • BLIND Evaluating a blind test, and
  • TEST Testing the WA against a list of utterances.

In the case of a k-fold cross validation, or a blind set, the tool will output a precision curve, in addition to per-intent precision and recall rates, and a confusion matrix.

Features

  • Easy to setup in one configuration file.
  • Save the state when Assistant service is down in the middle of processing.
  • Able to resume from where it stops using modularized scripts.

Prerequisite

  • Python 3.6.4 +
  • Mac users: you may need to initialize Python's SSL certificate store by running Install Certificates.command found in /Applications/Python. See more here
  • Git client

Quick Start

Pre-work: Make sure to cd into the location of a projects folder, where you will clone this github repo. Within the folder, cd into the WA-Testing-Tool folder.

  1. Install code git clone https://github.com/cognitive-catalyst/WA-Testing-Tool.git
  2. Install dependencies pip3 install --upgrade -r requirements.txt
  3. Set up parameters properly in configuration file (ex: config.ini). Use config.ini.sample to bootstrap your configuration. a. In your terminal, copy the config file into a new one, cp config.ini.sample config.ini b. Open the config.ini file in your favorite text editor, edit and save the following information with your actual credentials: API Key url workspace_id (Watson Assistant v1) or environment_id (Watson Assistant v2) c. Set the mode and the mode-specific parameters.
  4. Run the process. python3 run.py -c config.ini or python3 run.py -c <path to your config file>

Quick Update

If you have already installed this utility use these steps to get the latest code.

  1. Upgrade dependencies pip3 install --upgrade -r requirements.txt
  2. Update to latest code level git pull

Input Files

config.ini - Configuration file for run.py. This is formatted differently for each mode. Review the Examples below to explore the possible modes and how each is configured.

test_input_file.csv - Test set for blind testing and standard test.

For blind test with golden intent used for comparison:

utterance golden intent
utterance 0 intent 0
utterance 1 intent 0
utterance 2 intent 1

For standard test, the input must only have one column or error will be thrown:

utterance
utterance 0
utterance 1
utterance 2

Examples

There are a variety of ways to use this tool. Primarily you will execute a k-folds, blind, or standard test.

Core execution modes

Run k-fold cross-validation

Run blind test

Run standard test without ground truth

Extended modes (executed by default)

Generate precision/recall for classification test

Generate confusion matrix for classification test

Compare two different blind test results

Extended modes

Generate description for intents

Generate long-tail classification results

Unit test dialog flows

Run syntax validation patterns on a workspace

Extract and analyze Watson Assistant log data

More examples

Long-form resources available in Article and Video form:

Title Article Video
Testing a Chatbot with k-folds Cross Validation https://medium.com/ibm-watson/testing-a-chatbot-with-k-folds-cross-validation-68dab111a6b https://www.youtube.com/watch?v=FrhK68WyOK4
Analyze chatbot classifier performance from logs https://medium.com/ibm-watson/analyze-chatbot-classifier-performance-from-logs-e9cf2c7ca8fd https://www.youtube.com/watch?v=yd89DKyf6hc
Improve a chatbot classifier with production data https://medium.com/ibm-watson/improve-a-chatbot-classifier-with-production-data-22a437f419b4 https://www.youtube.com/watch?v=ftFIQtHiQY8

Related projects

Watson Assistant is commonly paired with IBM Speech services to build voice-driven Conversational AI solutions. Check out these tools to assess and tune your speech models!

Testing Natural Language Understanding Classifier

This tool can also be used to test a trained Natural Language Understanding (NLU) Classifier. The configuration is similar to testing Watson Assistant except:

  1. Use the NLU URL in the url parameter (ex: https://api.us-south.natural-language-understanding.watson.cloud.ibm.com)
  2. Specify the <model_id> in the workspace_id parameter in the configuration
  3. Since NLU classifier does not support downloading training data, the original training data must be provided if run in 'kfold' mode (using the train_input_file parameter)

General Caveats and Troubleshooting

  1. Due to different coverage among service plans, user may need to adjust max_test_rate accordingly to avoid network connection error.

  2. Users on Lite plans are only able to create 5 workspaces. They should set fold_num=3 on their k-fold configuration file.

  3. In case of interrupted execution, the tool may not be able to clean up the workspaces it creates. In this case you will need to manually delete the extra workspaces.

  4. Workspace ID is not the Skill ID. In the Watson Assistant user interface, the Workspace ID can be found on the Skills tab, clicking the three dots (top-right of skill), and choosing View API Details.

  5. SSL: [CERTIFICATE_VERIFY_FAILED] on Mac means you may need to initialize Python's SSL certificate store by running Install Certificates.command found in /Applications/Python. See more here

  6. "This utility used to work and now it doesn't." Upgrade to latest dependencies with pip3 install --upgrade -r requirements.txt and latest code with git pull.

  7. If you get a Python module loading error, confirm that you are using matching pip and python version, ie pip3 and python3 or pip and python.

  8. Watson Assistant v2 configuration does not support k-folds mode. Watson Assistant v2 is tested "in-place" rather than creating temporary skills for this tool. Actions users may prefer to use Dialog Skill Analysis notebooks - these notebooks have additional capabilities for analyzing Dialog or Action skills.