sms-analysis-with-wks - Analyzing SMS offers for domain specific entities using Watson Knowledge Studio and Watson's Natural Language Understanding

  •        10

This project is java client to analyze sms using nlu. The nlu is referring to wks-model to extract entities data from sms.

https://developer.ibm.com/code/patterns/analyze-sms-messages-with-watson-knowledge-studio/
https://github.com/IBM/sms-analysis-with-wks
https://github.com/watson-developer-cloud/cognitive-client-java

Dependencies:

org.json:json:20141113
org.jsoup:jsoup:1.10.1
com.ibm.watson.developer_cloud:java-sdk:6.2.0
junit:junit:4.12
com.squareup.okhttp3:okhttp:3.9.0
com.google.code.gson:gson:2.8.1
org.apache.httpcomponents:httpclient:4.3.6
org.apache.httpcomponents:fluent-hc:4.3.6
com.ibm.websphere.appserver.api:com.ibm.websphere.appserver.api.json:1.0
javax.servlet:servlet-api:2.4
javax.servlet:javax.servlet-api:3.0.1
com.squareup.okhttp3:mockwebserver:3.9.0
ch.qos.logback:logback-classic:1.2.3

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