Practical Natural Language Processing – Go from Zero to Hero

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Practical Natural Language Processing – Go from Zero to Hero (Size: 7.9 GB)
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  1 - Why NLP and how its different from Normal ML.mp4 83.9 MB
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  10 - Stemming Lemmatization.mp4 84 MB
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  11 - NER and Wordsense Disambiguation.mp4 90.1 MB
  12 - Introduction to Spacy Library.mp4 32.2 MB
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  27 - Hyperparameters Negative Sampling and Sub Sampling.mp4 133 MB
  28 - Practical Difference between CBOW and Skipgram.mp4 33.6 MB
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  29 - Bonus How does a Network is trained Backpropagation.mp4 112.6 MB
  3 - Challenges of NLP.mp4 36.7 MB
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  30 - Section Summary.mp4 3.9 MB
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  31 - General Pipeline for Classification.mp4 71.7 MB
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  32 - Approaches to Classification.mp4 62.3 MB
  33 - Loading the Dataset.mp4 35.8 MB
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  34 - Exploratory Data Analysis Text Preprocessing.mp4 75.9 MB
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  38 - TfIDF Approach.mp4 31.6 MB
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  39 - Challenges of NLP Ngrams.mp4 62.8 MB
  4 - Summary.mp4 5.1 MB
  40 - Introduction to NER.mp4 61.6 MB
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  41 - Understanding CRF Introduction.mp4 48.4 MB
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  42 - Understanding Chatbots.mp4 43.9 MB
  43 - Building a Simple Chatbot.mp4 27.9 MB
  5 - NLP Pipeline.mp4 72.3 MB
  6 - Data Extraction and Text Cleaning hands On.mp4 186 MB
  7 - Introduction to NLTK library.mp4 38.2 MB
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  44 - Hands On Building a Simple FAQ Chatbot.mp4 90.7 MB
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  50 - Create Dialogflow chatbot.mp4 200.7 MB
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  52 - Dialogflow IntegrationsDeployment.mp4 32.6 MB
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  53 - Dialogflow Miscellaneous Tools.mp4 54.8 MB
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  56 - Deep Learning based intent Classification.mp4 180.7 MB
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  57 - Project Files for RASA.html 102.4 B
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  58 - Introduction to RASA Chatbot.mp4 28.5 MB
  59 - Installation of RASA.mp4 109.7 MB
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  60 - RASA project Structure.mp4 81.4 MB
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  63 - Building the chatbot Add intents and Response.mp4 148.3 MB
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  79 - Hands On Implementation of Project.mp4 186.4 MB
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  80 - NLP Transformers Introduction.mp4 45.7 MB
  81 - Feed Forward Neural Network and Challenges.mp4 152.4 MB
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  88 - Introduction to Hugging Face Library.mp4 40.3 MB
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  89 - Working with Hugging Face Library Pipeline.mp4 145 MB
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  90 - Text Classification with HuggingFace Transformers Data Loading.mp4 171.8 MB
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  91 - Tokenization using Huggingface.mp4 117 MB
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  92 - Tokenization on Dataset.mp4 75 MB
  93 - Text Classification with Feature Extraction.mp4 181.7 MB
  94 - Finetuning on Transformers.mp4 58.7 MB
  95 - Working with ChatGPT3.mp4 116.8 MB
  96 - Working of BERT Language Model.mp4 192.9 MB
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Description


Description

Practical Natural Language Processing – Go form Zero to Hero

Natural language processing (NLP) is a field of computer science, artificial intelligence, and linguistics concerned with the interactions between computers and human (natural) languages. As its name suggests, NLP is about developing techniques to process and analyze large amounts of natural language data.

NLP is an important field because it helps us to better understand human communication. By developing algorithms that can automatically process and analyze language data, we can gain insights that would not be possible through manual methods. Additionally, NLP can be used to build applications that humans can interact with more easily and efficiently, such as chatbots and voice-activated assistants.

There are many benefits to learning natural language processing. Here are just a few:

NLP can help you to better understand human communication.
NLP can be used to build applications that humans can interact with more easily and efficiently.
NLP can help you to automate tedious tasks such as information extraction from unstructured text data.
NLP can improve the usability of search engines and other information retrieval systems.
Learning NLP can open up career opportunities in a variety of industries, including software development, data science, and marketing.
NLP is an interdisciplinary field, which means that it draws on knowledge from a variety of disciplines, including linguistics, computer science, artificial intelligence, and psychology.
NLP is a rapidly growing field with exciting new research being published all the time.

We have designed this course such a way that, as a practitioner you will learn the core topics described below:

A Collection of Important Sections to help you understand the uniqueness of Text data and the methods to process it:

In the Learning Journey, you will the Important Topics in Text Processing like :

Text Preprocessing
Working on NLP pipeline
Tokenization
Stemming
Lemmatization
Word Embeddings
NLP Pipeline for various tasks
Named Entity Recognition
Text Summarization

Building an Enterprise Grade Chatbot with Dialogflow :

In this section, you will build an Enterprise Grade Chatbot using the Widely used Platform Google Cloud Platform service – DialogFlow. In the course of the journey, you will learn how to build the chatbot from scratch, and get the advantage of the Advanced Machine Learning models of Google, and use it with few clicks, and ready to implement for your own projects.

Building a project on Twitter Tweets:

In the Hands On Project of this section, you will learn about working with Social Media Platform – Twitter, learn how to make use of Tweepy library , perform data extraction, data mining, data preprocessing on text data, and then create World Cloud on the Basis of Tweets created on Realtime. Its a End to End Project.

Build Chatbot with RASA with Advanced Integration:

Rasa is an open-source chatbot framework that helps businesses build contextual assistants. It is a set of tools that enables businesses to build, train, and deploy AI-powered chatbots. With Rasa, businesses can provide their customers with engaging and personalized experiences at scale. In this course, you will learn about its Business Use case , its implementation from scratch and integration with Slack channel so that you can start using on your projects. The chatbot can also retrieve the News from New York Times website that can answer as per the user request.

Deep Learning for Sequence Data:

Apart from the ML aspects, we are also going to consider the Deep Learning Neural Networks to work with text data. Recently, the progress of NLP research on text classification has arrived at the state-of-the-art (SOTA). It has achieved terrific results, showing Deep Learning methods as the cutting-edge technology to perform such tasks. As part for your learning journey, you will learn about the Recurrent Neural Networks, LSTM Neural Networks and Attention Mechanism for Encoder-Decoder Architecture.

Transformer NLP Architecture:

Transformer NLP is a type of NLP that uses a deep learning approach to solve natural language tasks. This technology has revolutionized the way businesses process and analyze language-based data, making it easier than ever before to extract meaningful insights from large amounts of text. Let’s take a look at how Transformer NLP works and how it can be used in the business world.

ChatGPT:

ChatGPT is a revolutionary new AI technology that can help businesses save time and money. It stands for “Chatbot Generated Processes and Tasks”, and it uses natural language processing (NLP) to automate mundane business tasks such as customer support, onboarding, training, sales and marketing. I You will learn the intuition behind the ChatGPT in this course.

BERT Model:

BERT stands for Bidirectional Encoder Representations from Transformers. It is a type of artificial intelligence (AI) designed to understand natural language better than ever before. It can be used for tasks such as sentiment analysis, question-answering, and text summarization. The technology was created by Google AI researchers who wanted to create a more robust system for understanding human language. You will explore in this course about the core Architecture of BERT in this section

Hugging Face Transformers:

Hugging Face transformers is a platform that provides the community with APIs to access and use state-of-the-art pre-trained models available from the Hugging Face hub. In the Advanced Modules of this course, you will learn how to implement the State of the Art Models from the Hugging Face Hub, and implement it on the Hands On manner.
Who this course is for:

Anyone who wants to learn natural language processing (NLP)
Anyone interested in artificial intelligence, machine learning, deep learning, or data science
Anyone who wants to build Advanced NLP models and implement in a project
Anyone who wants to create Enterprise Grade Chatbots

Requirements

Access to Google Colab/Jupyter Notebook
Basic to Intermediate Python Programming skills
Optional – GCP free trial account

Last Updated 2/2023