In “Applied Information Extraction in Python,” you will learn how to extract useful information from free-text data, which is a type of string data created when people type. Examples of free-text data include names of people or organizations, location information such as cities and zip codes, or other elements like stock prices or clinical diagnoses. Free-text data is found everywhere, from magazine articles to social media posts, and can be complex to analyze.

Applied Information Extraction in Python

Applied Information Extraction in Python
This course is part of More Applied Data Science with Python Specialization

Instructor: VG Vinod Vydiswaran
Access provided by FutureX
Recommended experience
What you'll learn
Develop skills to process and interpret information presented in free-text data.
Identify the major classes of named entity recognition (NER) and implement, with guidance, state-of-the-art machine learning techniques for NER.
Compare, contrast, and select between multiple machine learning and deep learning approaches for NER.
Explore Large Language Models and configure a Transformer-based pipeline to extract entities of interest from a text dataset.
Skills you'll gain
Tools you'll learn
Details to know

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There are 4 modules in this course
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University of Michigan

University of Michigan

University of Michigan


