Udemy

Natural Language Processing | Build LLM Web App | RNN & LSTM

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  • 16,206 Students
  • Updated 8/2024
4.3
(72 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
3 Hour(s) 9 Minute(s)
Language
English
Taught by
SeaportAi .
Rating
4.3
(72 Ratings)

Course Overview

Natural Language Processing | Build LLM Web App | RNN & LSTM

Create App Using Streamlit | Sentiment Analysis | Speech to text | Spam Detection

Recent Updates:

  • Nov 2022: Updated videos for RNN and LSTM

  • Apr 2023: Added a video lecture on transformers

  • Sep 2023: Added a video lecture on how to build an LLM web application


Natural Language Processing (NLP) is a very interesting field associated with AI and is at the forefront of many useful applications like a chatbot. Knowledge of NLP is considered a necessity for those pursuing a career in AI. This course covers both the theory as well as the applications of NLP. Case studies are explained along with a walkthrough of the codes for a better understanding of the subject.

A detailed explanation of how to build a web app for NLP using Streamlit is also explained.

NLP is a subfield of computer science and artificial intelligence concerned with interactions between computers and human (natural) languages. It is used to apply machine learning algorithms to text and speech.

For example, we can use NLP to create systems like speech recognition, document summarization, machine translation, spam detection, named entity recognition, question answering, autocomplete, predictive typing and so on.

Nowadays, most of us have smartphones that have speech recognition. These smartphones use NLP to understand what is said. Also, many people use laptops whose operating system has built-in speech recognition.


Some Examples:

1.Cortana

The Microsoft OS has a virtual assistant called Cortana that can recognize a natural voice. You can use it to set up reminders, open apps, send emails, play games, track flights and packages, check the weather and so on.

2.Siri

Siri is a virtual assistant of the Apple Inc.’s iOS, watchOS, macOS, HomePod, and tvOS operating systems. Again, you can do a lot of things with voice commands: start a call, text someone, send an email, set a timer, take a picture, open an app, set an alarm, use navigation and so on.


In this course we will deal with:

a)NLP Introduction:

· What is NLP

· Applications of NLP

· Challenges in NLP


b)Key concepts in NLP:

· Sentence Segmentation

· Word Tokenization

· Stemming

· Lemmatization

· Parsing

· POS

· Ambiguities in NLP


c)NLP in Action

· NLTK

· Sentence Tokenization

· Word Tokenization

· Stemming

· Lemmatization

· Noise Removal

· Spacy

· Parts of Speech Tagging

· Dependency Parsing

· Spell Correction

· Point of View

· Regular Expressions

· Flash Text

· Named Entity Recognition - NER


d)Case studies:

· Speech recognition

· Sentiment analysis

· Word Cloud

· Spam detection


You will not only get fantastic technical content with this course, but you will also get access to both our course-related Question and Answer forums, as well as our live student chat channel, so you can team up with other students for projects, or get help on the course content from myself and the course teaching assistants.

All of this comes with a 30-day money back guarantee, so you can try the course risk-free.

What are you waiting for? Become an expert in natural language processing today!


Course Content

  • 8 section(s)
  • 36 lecture(s)
  • Section 1 Introduction
  • Section 2 Key concepts in NLP
  • Section 3 Ambiguities in NLP
  • Section 4 Case Studies (with walk through of the codes)
  • Section 5 Deep Learning in NLP
  • Section 6 Creating an NLP Web App Using Streamlit
  • Section 7 Create a ChatGPT powered app using Streamlit
  • Section 8 Bonus Lecture

What You’ll Learn

  • You will gain insights on what Natural Language Processing(NLP) is, its Applications & Challenges
  • You will learn Sentence Segmentation, Word Tokenization, Stemming, Lemmatization, Parsing, POS & Ambiguities in NLP
  • You will learn to execute using Machine Learning, NLTK & Spacey
  • You will learn to work with Text Files with Python
  • You will utilize Regular Expressions for pattern searching in text
  • You will use Part of Speech Tagging to automatically process raw text files
  • You will visualize POS and NER with Spacy
  • You will understand Vocabulary Matching with Spacy
  • You will use NLTK for Sentiment Analysis


Reviews

  • H
    Harry M
    2.0

    Poor presentation material, not previously rehearsed when recording. Just theoretical bullets. Looks like this course has been extracted from another larger and more code focused course

  • D
    Ddhruv Arora
    5.0

    Great

  • R
    Rupesh sonawane
    5.0

    I'm very excited

  • M
    Marcos Vinícius dos Santos Rocha
    5.0

    Excellent. Objective. Straight forward.

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