Streamlit Python Course: Build a Machine Learning App to Predict Cancer
About
No channel description available.
Latest Posts
Video Description
Welcome to this Streamlit Python tutorial, where we will dive into creating an interactive machine-learning web application using the Streamlit framework! In this comprehensive project-based course, you'll learn how to build a machine-learning dashboard to predict whether a cell cluster is benign or malignant using Python and Streamlit. This tutorial is perfect for beginners, experienced developers, and data scientists looking to learn how to create powerful machine-learning projects that integrate with web applications. ----------------------- 🔥 Useful links: - Github project: https://github.com/alejandro-ao/streamlit-cancer-predict - Blog post: https://alejandro-ao.com/posts/data-science/streamlit-app-logistic-regression-project/ 💬 Join the Discord Help Server - https://link.alejandro-ao.com/HrFKZn ❤️ Buy me a coffee... or a beer (thanks): https://link.alejandro-ao.com/l83gNq ✉️ Join the mail list: https://link.alejandro-ao.com/AIIguB ------------------------ 🚀 What you'll learn in this tutorial: How to create a Streamlit dashboard Training a logistic regression model for machine learning Visualizing data using Plotly Displaying predictions based on user input Creating an AI full-stack app using Python In this video tutorial, we train a logistic regression model using machine learning in Python. We will be using a dataset to predict whether a cell cluster is benign or malignant. Once our model is ready, we will integrate it into a Streamlit application that runs in the web browser. You'll see how easy it is to create an interactive dashboard using Streamlit and Python! Next, we will visualize our data using Plotly to create informative and interactive charts. These visualizations will help users understand the predictions made by our machine-learning model. We'll then display the predictions based on the user's input, making our dashboard not only visually appealing but also highly functional. Throughout the tutorial, we'll explore various techniques and best practices used by experts like Nicholas Renotte and Patrick Loeber. This Streamlit tutorial is an excellent resource for data science dashboard projects and a great way to learn how to create a machine learning app. By the end of this course, you will have created an AI full-stack app using Python, Streamlit, and machine learning. You'll be ready to tackle your own machine-learning projects and create amazing data science dashboards! Don't forget to like, comment, and subscribe to stay updated with more tutorials and projects in machine learning, data science, and web app development! ⏰ Timestamps 0:00 Intro 2:56 Download the data 6:23 Project setup 8:21 Clean the data 14:00 Train the model 21:06 Test the model 26:39 Export the model and scaler 32:33 Create the Streamlit app 38:48 Create the layout 44:18 Add the sidebar inputs 58:52 Create the chart 1:17:22 Scale the values for chart 1:25:30 Display the predictions 1:39:08 Add custom CSS 1:52:00 Deploy your app 🎯 Keywords: Streamlit Python, Streamlit Tutorial, Streamlit Dashboard, Machine Learning Python, Machine Learning App Tutorial, Python App, Machine Learning Projects, Machine Learning Projects for Beginners, Nicholas Renotte, Patrick Loeber, AI App, AI Full-Stack App, Data Science Dashboard, Data Science Dashboard Projects #python #streamlit #MachineLearning #DataScience
Empower Your ML Journey
AI-recommended products based on this video

Spiral Notebook, A5 Size 5 Subject Notebooks College Ruled with Tabs and Removable Dividers, 300 Pages 100GSM Thick Spiral Ruled Lined Writing Journal Notebook for Work, School(6.2"x 8.5")

The Bible In A Year: A 52-Week Study Through God's Word, Spiral Bound Bible Study Guide Journal Notebook, A Beautiful Year Planner in the Bible for Women (A5)

Seasonic Focus V4 GX-1000 (ATX3) - 1000W - 80+ Gold - ATX 3.0 & PCIe 5.1 Ready -Full-Modular -ATX Form Factor -Premium Japanese Capacitor -10 Year Warranty -Nvidia RTX 30/40 Super & AMD GPU Compatible

UCANUUP 130W Tip 4.5mm Compatible with Dell XPS 15 7590 9530 9550 9560 9570 9575 Inspiron 7348 Precision M3800 5510 5520 5530 06TTY6 AC Adapter Power Replacement Supply Cord

tomtoc 360° Protective Laptop Sleeve for 15-inch MacBook Air M4/A3241 2025, M3/A3114 2024, M2/A2941 2023, 15-inch MacBook Pro A1990 A1707, Dell XPS 15 Plus Laptop, Water-Resistant Computer Case Bag Global Recycled Standard

MOSISO 360 Protective Laptop Bag 15 inch, 15 inch Computer Shoulder Bag Compatible with MacBook Air 15 M4 M3 M2 2025-2023, Dell XPS 15, Side Open Messenger Case &4 Zipper Pockets&Handle, Black Global Recycled Standard

UGREEN 130W Car Charger USB C Fast Charger PD3.0 QC4.0 PPS Fast Charging Car Adapter with 100W USB C Cable Compatible with Dell XPS, MacBook, iPhone 16 15 14 Pro Max, Galaxy S25 S24 Ultra, iPad Pro

Logitech G203 Wired Gaming Mouse, 8,000 DPI, Rainbow Optical Effect LIGHTSYNC RGB, 6 Programmable Buttons, On-Board Memory, Screen Mapping, PC/Mac Computer and Laptop Compatible - Black

Logitech G305 Lightspeed Wireless Gaming Mouse, Hero 12K Sensor, 12,000 DPI, Lightweight, 6 Programmable Buttons, 250h Battery Life, On-Board Memory, PC/Mac - Black

Apple 2025 MacBook Air 13-inch Laptop with M4 chip: Built for Apple Intelligence, 16GB Unified Memory, 256GB SSD Storage, Touch ID; Sky Blue - English Keyboard

ESR for iPhone 16 Pro Max Case, Silicone Case with Stand, Compatible with MagSafe, Built-in Camera Stash Stand, Magnetic Phone Case for iPhone 16 Pro Max, Cloud Series, Light Blue

2-Bay NAS R1 PRO Ryzen 7 5825U Mini PC 2X i226-V 2.5G Firewall Router Network Storage Server Private Cloud
















![Advanced RAG with LlamaIndex - Metadata Extraction [2025]](https://imgz.pc97.com/?width=500&fit=cover&image=https://i.ytimg.com/vi/yzPQaNhuVGU/hqdefault.jpg)



