Course Outline

Introduction to Machine Learning and Natural Language Processing

Installing and Configuring OpenNLP

Overview of OpenNLP's Library Structure

Downloading Existing Models

Calling the OpenNLP's APIs

Sentence Detection and Tokenization

Part-of-Speach (POS) Tagging

Phrase Chunking

Parsing

Name Finding

English Coreference

Training the Tools

Creating a Model from Scratch

Extending OpenNLP

Closing remarks

Requirements

  • Java programing experience
  14 Hours
 

Testimonials

Related Courses

AdaBoost Python for Machine Learning

  14 hours

Artificial Intelligence (AI) with H2O

  14 hours

AutoML with Auto-Keras

  14 hours

AutoML

  14 hours

Google Cloud AutoML

  7 hours

AutoML with Auto-sklearn

  14 hours

Pattern Recognition

  21 hours

DataRobot

  7 hours

Data Mining with Weka

  14 hours

H2O AutoML

  14 hours

Machine Learning for Mobile Apps using Google’s ML Kit

  14 hours

Pattern Matching

  14 hours

Machine Learning with Random Forest

  14 hours

RapidMiner for Machine Learning and Predictive Analytics

  14 hours

Apache SystemML for Machine Learning

  14 hours