Natural Language Processing With Cutting Edge Models
Posted on 19 Oct 09:57 | by BaDshaH | 3 views
Published 10/2024
Created by Zeeshan Ahmad
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 195 Lectures ( 27h 6m ) | Size: 9.2 GB
NLP : NLTK, Machine and Deep Learning for NLP, Word Embeddings, Markov Model, Transformers, Generative AI for text
What you'll learn
Text Preprocessing and Text Vectorization
Machine Learning Methods for Text Classification
Neural Networks for Text Classification
Sentiment Analysis and Spam Detection
Topic Modeling
Word Embeddings and Neural Word Embeddings
Word2Vec and GloVe
Generative AI for Text data
Markov Models for Text Generation
Recurrent Neural Networks and LSTM
Seq2Seq Networks for Text Generation
Machine Translation
Transformers
Requirements
Some Python Programming Knowledge
Some knowledge about machine learning is preferred
Description
Hi everyone,This is a massive 3-in-1 course covering the following:1. Text Preprocessing and Text Vectorization2. Machine Learning and Statistical Methods3. Deep Learning for NLP and Generative AI for text.This course covers all the aspects of performing different Natural Language processing using Machine Learning Models, Statistical Models and State of the art Deep Learning Models such as LSTM and Transformers.This course will set the foundation for learning the most recent and groundbreaking topics in AI related Natural processing tasks such as Large Language Models, Diffusion models etc.This course includes the practical oriented explanations for all Natural Language Processing tasks with implementation in PythonSections of the Course· Introduction of the Course· Introduction to Google Colab· Introduction to Natural Language Processing· Text Preprocessing· Text Vectorization· Text Classification with Machine Learning Models· Sentiment Analysis· Spam Detection· Dirichlet Distribution· Topic Modeling· Neural Networks· Neural Networks for Text Classification· Word Embeddings· Neural Word Embeddings· Generative AI for NLP· Markov Model for Text Generation· Recurrent Neural Networks ( RNN )· Sequence to sequence Networks· Transformers· Bidirectional LSTM· Python RefresherWho this course is for:· Students enrolled in Natural Language processing course.· Beginners who want to learn Natural Language Processing from fundamentals to advanced level· Researchers in Artificial Intelligence and Natural Language Processing.· Students and Researchers who want to develop Python Programming skills while solving different NLP tasks.· Want to switch from Matlab and Other Programming Languages to Python.
Who this course is for
Students enrolled in Natural Language processing course.
Beginners who want to learn Natural Language Processing from fundamentals to advanced level
Researchers in Artificial Intelligence and Natural Language Processing.
Students and Researchers who want to develop Python Programming skills while solving different NLP tasks.
Want to switch from Matlab and Other Programming Languages to Python
Homepage
https://www.udemy.com/course/natural-language-processing-with-cutting-edge-models/
https://ddownload.com/ua189vep8udc
https://ddownload.com/ikjdhroek9ek
https://ddownload.com/sbl3ciyfa33p
https://ddownload.com/dkryhkgog6qi
https://ddownload.com/zx729zi81wdk
https://ddownload.com/bmfek9ztb8gb
https://ddownload.com/lq6gb050cz8o
https://ddownload.com/u3kfomz02s3f
https://ddownload.com/cavfrxtdbgzl
https://ddownload.com/if8j88ikp60t
https://rapidgator.net/file/2b278ad4076e4e25c47c0547ced6fdd8
https://rapidgator.net/file/2275e9c18545cd1aa087b33248330858
https://rapidgator.net/file/76146f1cbfc95e7edd517d17d5f26fb3
https://rapidgator.net/file/90c7bb93a558741dc3e943a331ce0d37
https://rapidgator.net/file/4545250e3fc03edbd05e980a9c662868
https://rapidgator.net/file/ce269cb127719156eceefcf3fedf971e
https://rapidgator.net/file/584166ca6f098ef89d864f286a23955c
https://rapidgator.net/file/a7973697b71e88ab37d528a8e8349379
https://rapidgator.net/file/5d8a8427220222659807a857536eaeb0
https://rapidgator.net/file/03321b5adec538ac96691a7f3a6ed096
Related News
System Comment
Information
Users of Visitor are not allowed to comment this publication.
Facebook Comment
Member Area
Top News