Skip to search
Skip to main content
Search in
Keyword
Title (keyword)
Author (keyword)
Subject (keyword)
Title starts with
Subject (browse)
Author (browse)
Author (sorted by title)
Call number (browse)
search for
Search
Advanced Search
Bookmarks
(
0
)
Princeton University Library Catalog
Start over
Cite
Send
to
SMS
Email
EndNote
RefWorks
RIS
Printer
Bookmark
Mastering natural language processing. Part 2, Unlocking text processing techniques with Python.
Format
Video/Projected medium
Language
English
Εdition
[First edition].
Published/Created
[New York, New York] : Apress, [2024]
Description
1 online resource (1 video file (21 min.)) : sound, color.
Availability
Available Online
O'Reilly Online Learning: Academic/Public Library Edition
Details
Subject(s)
Natural language processing (Computer science)
[Browse]
Python (Computer program language)
[Browse]
Instructor
Landau, Charles
[Browse]
Publisher
Apress (Firm)
[Browse]
Summary note
Understand Natural Language Processing (NLP) with "Mastering NLP Part 2," a comprehensive video series about text processing techniques. Segment one delves deep into the concepts of stemming and lemmatization in NLP, unraveling their impact on language analysis. Grasp the significance of these techniques and their practical applications in real-world scenarios. In Segment two, the focus shifts to Python's robust string manipulation capabilities. It covers formatting, splitting, stripping, finding, encoding, and more. It concludes with segment 3 explaining the art of pattern matching, file handling, and additional text manipulation functionalities. This video delivers a comprehensive understanding of text processing techniques, empowering viewers with the skills needed for NLP in diverse applications.
Source of description
OCLC-licensed vendor bibliographic record.
ISBN
979-88-6880-549-3
OCLC
1454076066
Statement on language in description
Princeton University Library aims to describe library materials in a manner that is respectful to the individuals and communities who create, use, and are represented in the collections we manage.
Read more...
Other views
Staff view
Ask a Question
Suggest a Correction
Report Harmful Language
Supplementary Information