Streamlit for ML #1 - Installation and API
▶️ Streamlit for ML Part 2:
https://www.youtube.com/watch?v=U0EoaFFGyTg&list=PLIUOU7oqGTLg5ssYxPGWaci6695wtosGw&index=2
Streamlit has proven itself as an incredibly popular tool for quickly putting together high-quality ML-oriented web apps. More recently, it has seen wider adoption in production environments by ever-larger organizations.
All of this means that there is no better time to pick up some experience with Streamlit. Fortunately, the basics of Streamlit are incredibly easy to learn, and for most tools, this will be more than you need!
In this series, we will introduce Streamlit by building a general knowledge Q&A interface. We will learn about key Streamlit components like write, text_input, container. How to use external libraries like Bootstrap to quickly create new app components. And use caching to speed up our app.
📕 Article:
https://towardsdatascience.com/getting-started-with-streamlit-for-nlp-75fe463821ec
🤖 70% Discount on the NLP With Transformers in Python course:
https://bit.ly/3DFvvY5
🎉 Subscribe for Article and Video Updates!
https://jamescalam.medium.com/subscribe
https://medium.com/@jamescalam/membership
📖 Friend link to article:
https://towardsdatascience.com/getting-started-with-streamlit-for-nlp-75fe463821ec?sk=ac5e0b7c39938f52162862411a66a58b
👾 Discord:
https://discord.gg/c5QtDB9RAP
00:00 Intro
00:39 App Outline
03:36 Streamlit Installation
06:15 Streamlit API Basics
Видео Streamlit for ML #1 - Installation and API канала James Briggs
https://www.youtube.com/watch?v=U0EoaFFGyTg&list=PLIUOU7oqGTLg5ssYxPGWaci6695wtosGw&index=2
Streamlit has proven itself as an incredibly popular tool for quickly putting together high-quality ML-oriented web apps. More recently, it has seen wider adoption in production environments by ever-larger organizations.
All of this means that there is no better time to pick up some experience with Streamlit. Fortunately, the basics of Streamlit are incredibly easy to learn, and for most tools, this will be more than you need!
In this series, we will introduce Streamlit by building a general knowledge Q&A interface. We will learn about key Streamlit components like write, text_input, container. How to use external libraries like Bootstrap to quickly create new app components. And use caching to speed up our app.
📕 Article:
https://towardsdatascience.com/getting-started-with-streamlit-for-nlp-75fe463821ec
🤖 70% Discount on the NLP With Transformers in Python course:
https://bit.ly/3DFvvY5
🎉 Subscribe for Article and Video Updates!
https://jamescalam.medium.com/subscribe
https://medium.com/@jamescalam/membership
📖 Friend link to article:
https://towardsdatascience.com/getting-started-with-streamlit-for-nlp-75fe463821ec?sk=ac5e0b7c39938f52162862411a66a58b
👾 Discord:
https://discord.gg/c5QtDB9RAP
00:00 Intro
00:39 App Outline
03:36 Streamlit Installation
06:15 Streamlit API Basics
Видео Streamlit for ML #1 - Installation and API канала James Briggs
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