The perfect guide for executives and machine learning practitioners

 The perfect guide for executives and machine learning practitioners

Practical Natural Language Processing is a must-read for anyone who wants to become seriously involved in NLP with Python machine learning. This article is part of “AI education”, a series of posts that review and explore educational content on data science and machine learning. (In partnership with Paperspace)

This article is part of [“AI education”_](https://bdtechtalks.com/tag/ai-education/), a series of posts that review and explore educational content on data science and machine learning. (In partnership with [Paperspace_](https://www.paperspace.com/))

By many accounts, linguistics is one of the most complicated functions of the human mind. Likewise, natural language processing (NLP) is one of the most complicated subfields of artificial intelligence. Most books on AI, including educational books on machine learning, provide an introduction to natural language processing. But the field of NLP is so vast that covering all its aspects would require several separate books.

When I picked up Practical Natural Language Processing: A Comprehensive Guide to Building Real-World NLP Systems, what I expected was a book that covered Python machine learning for NLP in depth. Though the book didn’t exactly turn out to be what I had in mind, it provided the exact kind of coverage that the field misses in the craze and hype that surrounds deep learning today.

The best way to describe Practical Natural Language Processing is a zoomed-out view of the NLP landscape, a close-up of the NLP process, and plenty of practical tips and guidelines to avoid making mistakes in one of the most important fields of AI.

Two types of audience

What you take away from Practical Natural Language Processing depends on two things: Your previous background in mathematics and Python machine learning, and your involvement in the field. I recommend this book to two types of readers:

reviews ai education natural language processing python machine learning

Bootstrap 5 Complete Course with Examples

Bootstrap 5 Tutorial - Bootstrap 5 Crash Course for Beginners

Nest.JS Tutorial for Beginners

Hello Vue 3: A First Look at Vue 3 and the Composition API

Building a simple Applications with Vue 3

Deno Crash Course: Explore Deno and Create a full REST API with Deno

How to Build a Real-time Chat App with Deno and WebSockets

Convert HTML to Markdown Online

HTML entity encoder decoder Online

Pros and Cons of Machine Learning Language

AI, Machine learning, as its title defines, is involved as a process to make the machine operate a task automatically to know more join CETPA

Python Machine Learning: A perfect resource for intermediate AI

Python Machine Learning: A perfect resource for intermediate AI. This post is part of “AI education”, a series of posts that review and explore educational content on data science and machine learning. (In partnership with Paperspace)

How To Get Started With Machine Learning With The Right Mindset

You got intrigued by the machine learning world and wanted to get started as soon as possible, read all the articles, watched all the videos, but still isn’t sure about where to start, welcome to the club.

Hire Machine Learning Developers in India

We supply you with world class machine learning experts / ML Developers with years of domain experience who can add more value to your business.

Applications of machine learning in different industry domains

We supply you with world class machine learning experts / ML Developers with years of domain experience who can add more value to your business.