explanation
Natural Language Processing: NLP with Transformers in Python is the process of learning natural language processing using transformers using tools such as PyTorch, TensorFlow, HuggingFace, etc. Transformer models are the standard for modern natural language processing. In this course, you will build high-performance natural language processing programs using translator models such as Google Artificial Intelligence (BERT) or Facebook Artificial Intelligence (DPR).
What you will learn in Natural Language Processing: NLP with Transformers in Python:
- Industry standard for natural language processing using Transformer models
- Building a complete question-answer translator model
- Perform sentiment analysis with transducer models using PyTorch and TensorFlow
- Advanced search technologies such as Elasticsearch and Facebook Match Search Artificial Intelligence (FAISS)
- Measure the effectiveness of your language model using advanced metrics like ROUGE
- Vector manufacturing technologies such as BM25 or Dense Passage Retrievers (DPR)
- Overview of recent advances in natural language processing
- Understand the precautions and other key components of transformers.
- Text data preprocessing for NLP
Course specifications
publisher: Udemy
Instructor: James Briggs
Language: English
Level: Advanced – Advanced
Number of courses: 104
Duration: 11 hours 30 minutes
Course Topics:
Course Prerequisites:
Data science experience preferred
movie
sample film
installation manual
After extracting, watch with your favorite players.
Subtitles: English
Quality: 1080p
Previous title:
Natural language processing using converters in Python
Changes:
The 2022/8 version has increased the number of lessons to 5 and the lesson time to 6 minutes compared to the 2021/6 version. Additionally, course quality has been improved from 720p to 1080p.
download link
File password: free download software
size
3.79GB