MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 36 lectures (1h 57m) | Size: 841.4 MB
Harness GPT-Neo — a natural language processing (NLP) text generation model. Demonstrate it with a 100% Python web app
What you’ll learn:
How to implement state-of-the-art text generation AI models
Background information about GPT-Neo, a state-of-the-art text generation NLP model
How to use Happy Transformer — a Python library for implementing NLP Transformer models
How to train/implement GPT-2
How to implement different text generation algorithms
How to fetch data using Hugging Face’s Datasets library
How to train GPT-Neo using Happy Transformer
How to create a web app with 100% Python using Anvil
How to host a Transformer model on Paperspace
Requirements
A solid understanding of basic Python syntax
A Google account (for Google Colab)
Description
GPT-3 is a state-of-the-art text generation natural language processing (NLP) model created by OpenAI. You can use it to generate text that resembles text generated by a human.
This course will cover how to create a web app that uses an open-source version of GPT-3 called GPT-Neo with 100% Python. That’s right, no HTML, Javascript, CSS or any other programming language is required. Just 100% Python!
You will learn how to:
Implement GPT-Neo (and GPT-2) with Happy Transformer
Train GPT-Neo to generate unique text for a specific domain
Create a web app using 100% Python with Anvil!
Host your language model using Google Colab and Paperspace
Installations:
NONE!!! All of the tools we use in this tutorial are web-based. They include Google Colab, Anvil and Paperspace. So regardless of if you’re on Mac, Windows or Linux, you will not have to worry about downloading any software.
Technologies:
Model: GPT-Neo — an open-source version of GPT-3 created by Eleuther AI
Framework: Happy Transformer — an open-source Python package that allows us to implement and train GPT-Neo with just a few lines of code
Web technologies: Anvil — a website that allows us to develop web app using Python
Backend technologies: We’ll cover how to use both Google Colab and Paperspace to host the model. Anvil automatically covers hosting the web app.
About the instructor:
My name is Eric Fillion, and I’m from Canada. I’m on a mission to make state-of-the-art advances in the field of NLP through creating open-source tools and by creating educational content. In early 2020, I led a team that launched an open-source Python Package called Happy Transformer. Happy Transformer allows programmers to implement and train state-of-the-art Transformer models with just a few lines of code. Since its release, it has won awards and has been downloaded over 13k times.
Requirements:
A basic understanding of Python
A google account — for Google Colab
Who this course is for
Python developers interested in AI and NLP
Password/解压密码0daydown
Download rapidgator
https://rg.to/file/65423c8021032bba975349357a299083/Create_a_Text_Generation_Web_App_with_100_Python_(NLP).part1.rar.html
https://rg.to/file/02fdce6ab76ea070fc2559e6690597a8/Create_a_Text_Generation_Web_App_with_100_Python_(NLP).part2.rar.html
Download nitroflare
https://nitro.download/view/25DD03A6010EE50/Create_a_Text_Generation_Web_App_with_100%25_Python_%28NLP%29.part1.rar
https://nitro.download/view/89B17437BB919D5/Create_a_Text_Generation_Web_App_with_100%25_Python_%28NLP%29.part2.rar
转载请注明:0daytown » Create a Text Generation Web App with 100% Python (NLP)