NLP: Natural Language Processing with R Training Course
It is estimated that unstructured data accounts for more than 90 percent of all data, much of it in the form of text. Blog posts, tweets, social media, and other digital publications continuously add to this growing body of data.
This instructor-led, live course centres on extracting insights and meaning from this data. Using the R language and Natural Language Processing (NLP) libraries, we blend concepts and techniques from computer science, artificial intelligence, and computational linguistics to algorithmically interpret the meaning behind text data. Data samples are available in various languages, depending on customer requirements.
By the end of this training, participants will be able to prepare data sets (both large and small) from disparate sources and apply the appropriate algorithms to analyse and report on their significance.
Course Format
- Part lecture, part discussion, with extensive hands-on practice and occasional tests to assess understanding
Course Outline
Introduction
- NLP and R versus Python
Installing and Configuring R Studio
Installing R Packages Related to Natural Language Processing (NLP)
An Overview of R's Text Manipulation Capabilities
Getting Started with an NLP Project in R
Reading and Importing Data Files into R
Text Manipulation with R
Document Clustering in R
Parts of Speech Tagging in R
Sentence Parsing in R
Working with Regular Expressions in R
Named-Entity Recognition in R
Topic Modelling in R
Text Classification in R
Working with Very Large Data Sets
Visualising Your Results
Optimisation
Integrating R with Other Languages (Java, Python, etc.)
Summary and Conclusion
Requirements
- Some familiarity with programming.
Audience
- Linguists and programmers
Open Training Courses require 5+ participants.
NLP: Natural Language Processing with R Training Course - Booking
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Testimonials (1)
The pace was just right and the relaxed atmosphere made candidates feel at ease to ask questions.
Rhian Hughes - Public Health Wales NHS Trust
Course - Introduction to Data Visualization with Tidyverse and R
Provisional Upcoming Courses (Require 5+ participants)
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