Text Mining and Natural Language Processing in Python
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 28 lectures (1h 48m) | Size: 407.4 MB
Learn the basics of Natural Language Processing in Python and build your own Deep Learning Sentiment Analysis!
What you'll learn
Students will be able to install Jupyter Notebook and manage Python Modules
Definition of Natural Language and its Applications
Get to know Basics of Natural Language Processing
Learn Basics of Text Processing with NLTK and spaCy
Get to know Traditional Feature Engineering Models
Implement a working Sentiment Analysis Model
Learn to Code all these points in Python
Requirements
Prior Experience in Python
Prior Implementation of Machine Learning Models will be beneficial
Should have an Interest in Learning Practical Text Mining and Natural Language Processing (NLP)
Description
Do You Want to Analyse Product Reviews or Social Media Posts to see whether they are positive or negative?
Do you want to be able to make Computers understand Natural Language?
Then this course is just right for you! We will go over the basic, theoretical foundations of Natural Language Processing (NLP) and directly apply them in Python.
It becomes ever more important for companies and organizations to keep track of large amounts of social media posts concerning their brand or product reviews. In NLP there is a whole field called sentiment analysis, that tries to automate this process. In the end, a Deep Learning model can then process a text and predict whether it's a positive or negative review. If you are curious about how to build such a model, then this course is just right for you!
Get to know the Basics of NLP & Text Mining and learn how to implement it in Python
My course will help you implement the learned methods directly in Python modules like spaCy or NLTK. Besides learning the ground rules of NLP and common methods, you will even deal with so-called Transformer models, which are state-of-the-art in Natural Language Processing. In the end, you will combine your gained knowledge to build up a functioning Deep Learning Model that can take text as input and predict a sentiment. With this powerful course, you'll know it all: applying different steps of text preprocessing, combining it in datasets, and building a Deep Learning Model in TensorFlow.
Learn from an experienced Machine Learning Engineer and University Teacher
My name is Niklas Lang and I am a Machine Learning Engineer, currently working for a German IT System House. I have experience in working with kinds of textual data arising from our e-commerce website, product descriptions, or online reviews which we turn into powerful and working Machine Learning models. Besides that, I already taught courses at University level for Data Science as well as Business Intelligence.
Here is what you will get
Introduction to Jupyter Notebooks and Python Module Management
Introduction to Natural Languages and NLP Applications
In-Detail Text Preprocessing Techniques in Python
Overview of Feature Engineering Approaches like Word2Vec, Bag of Words, or BERT Embeddings
In-Depth Explanation on Convolutional Neural Networks for Classification Tasks
Implementing Machine Learning Model for Sentiment Analysis Task in TensorFlow
Getting to know the Process of Building, Compiling and Training a Deep Learning Model in Python
Join the course now!
Who this course is for
People who wish to Learn Practical Text Mining and Natural Language Processing
download скачать from RapidGator
download скачать from NitroFlare
https://nitro.download скачать/view/0E849FC3BF7FC59/....Text.Mining.and.Natural.Language.Processing.in.Python.rar