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Streamlit Bootcamp

Category: Tutorials



Streamlit  Bootcamp

Streamlit Bootcamp
Last updated 01/2023
Duration: 2h 13m | Video: .MP4, 1280x720 30 fps | Audio: AAC, 48 kHz, 2ch | Size: 691 MB
Genre: eLearning | Language: English[Auto]

Build beautiful web apps for your Data Science and Machine Learning projects in a fast and easy way using Streamlit.


What you'll learn
Building complete Web Applications from Scratch using Streamlit.
Develop Strong Skills about ALL Streamlit's Basic and Advanced Features.
Use Streamlit to create Data Science and Machine Learning Web Apps.
Learn to build beautiful User Interface for your ML models using Streamlit.
Requirements
Basic Knowledge of Python Programming Language.
Basic understanding about Data Science and Machine Learning.
Basic understanding of Pandas, Numpy and Matplotlib.
Description
ARE YOU LOOKING A FAST AND EASY WAY TO CREATE WEB APPS AND DASHBOARDS FOR YOUR DATA SCIENCE AND MACHINE LEARNING PROJECTS THEN THIS IS THE PERFECT COURSE FOR YOU.
Streamlit is an open-source Python library that makes it easy to create and share beautiful, custom web apps for machine learning and data science that can be used to share analytics results, build complex interactive experiences, and illustrate new machine learning models. In just a few minutes you can build and deploy powerful data apps.
On top of that, developing and deploying Streamlit apps is incredibly fast and flexible, often turning application development time from days into hours.
In this course you will learn
Different input types in streamlit
Data display elements
Layouts and Containers
How to add images and videos to your Streamlit web app
Different Chart elements like Line Chart, Bar Chart etc...
3 Complete Projects using Machine Learning and Streamlit.
Stock Market Index Prediction App
Calories Burned Calculator App
Insurance Premium Prediction App
At the end of the course, you will have built several applications that you can include in your Data Science and Machine Learning portfolio. You will also have a new skill to add to your resume.
After completing this course you will be able to quickly build web apps and dashboards for your Data Science and Machine Learning Projects using Streamlit.
Who this course is for
Python Developers curious about Streamlit.
Data Scientists and ML Engineers who want to create a quick and beautiful user interface for their ML Models.
Anyone who wants to learn to build web apps in a fast and easy manner.



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