What You Need to Know Before
You Start

Starts 10 June 2025 01:33

Ends 10 June 2025

00 days
00 hours
00 minutes
00 seconds
course image

Streamlit for Snowflake Masterclass Hands-On

Deep dive into Streamlit, from local web application to Streamlit in Snowflake and Native Apps
via Udemy

4052 Courses


9 hours 22 minutes

Optional upgrade avallable

Not Specified

Progress at your own speed

Paid Course

Optional upgrade avallable

Overview

Deep dive into Streamlit, from local web application to Streamlit in Snowflake and Native Apps What you'll learn:

Build, debug and deploy data-driven applications with StreamlitDeploy Streamlit web apps into Snowflake, as Streamlit in Snowflake AppsShare and deploy Streamlit web apps as Snowflake Native AppsDeploy Python code with Snowpark as Snowflake stored procedures and UDFsConnect to Snowflake from a Streamlit web applicationBuild real-life applications with Streamlit and SnowflakeDesign and deploy to Snowflake data science, data analysis and ML apps with StreamlitProcess and access hierarchical data and metadata in Snowflake Why You Can Trust MeI was the only Snowflake technical expert from Canada selected for their Data Superhero program in Jan 2022.Former SnowPro Certification SME (Subject Matter Expert) - many exam questions have been created by me.Passed four SnowPro certification exams to date (with no retakes):

Core, Architect, Data Engineer, Data Analyst.Dozens of other certifications in Data Science and Machine Learning, Cloud Solution Architectures, Databases, etc.Dozens of apps designed and implemented with Streamlit and Snowflake on my blog on Medium.Specialized in Snowflake for several years, I served dozens of clients and implemented many real-life projects.What You Will LearnHow to create simple to complex web applications in Streamlit.How to deploy for free local Streamlit web apps to the Streamlit Community Cloud.How to connect to Snowflake from Streamlit apps, through either the Python Connector or a Snowpark session.How to use the DataFrame API and push Python code as stored procedure with Snowpark.How to extend Snowflake's capabilities, with a hierarchical data viewer and a hierarchical metadata viewer.How to prototype with Streamlit apps data science, machine learning and data analysis scenarios.How to deploy a Streamlit web app as a Streamlit in Snowflake App.How to deploy a Streamlit web app as a Snowflake Native App.How to use the Snowflake Native App Framework to build or use apps with Streamlit.We'll build several apps in Python from scratch, we'll then convert them to local single or multi-page Streamlit web apps, deploy and share them on the Streamlit Community Cloud, deploy them in Snowflake as stored procs or Streamlit Apps, share them as Native Apps with other Snowflake accounts...What Streamlit Areas You Will Learn AboutInput and Output Controls (Interactive Widgets, Display Text controls, etc.).Layout Components (sidebar, container, expander, tabs, etc.) and Forms.Events and Page Reruns.Data Caching, Session State and Callbacks.Theming and Configuration, TOML Secrets.First half of the course will be an end-to-end complete Streamlit bootcamp, with everything you need to know about Streamlit.What Snowflake Areas You Will Learn AboutCreating a free Snowflake account and using the Snowflake web UI at the basic level.Connecting to Snowflake with SnowSQL, and executing SQL scripts with this command-line interface.Connecting to Snowflake with the Snowflake Connector for Python.Connecting to Snowflake with Snowpark for Python.Using Snowpark to push Python code as stored procedures.Using Snowpark to generate SQL queries with the DataFrame API.Writing and deploying Streamlit in Snowflake Apps.Writing and deploying Snowflake Native Apps, with the Snowflake Native App Framework.Integrating Snowflake with ChatGPT, external dashboards, data science and machine learning libraries.Second half of the course will be all about Snowflake client apps, Snowpark, Streamlit in Snowflake Apps and Native Apps.What is NOT Included in This CourseIn-depth knowledge of Snowflake.In-depth data science, data analytics and machine learning.Programming in languages other than Python and SQL.Main focus will be on all sorts of applications in Python using Streamlit, to connect and deploy the code to Streamlit Cloud or Snowflake in all possible ways.Real-Life Applications You Will Learn To BuildHierarchical Data Viewer, for CSV files and Snowflake tabular data, using JSON, graphs, animations, recursive queries.Hierarchical Metadata Viewer, for Snowflake object dependencies and data lineage.Entity-Relationship Diagram Viewer for Snowflake.Chatbot Agent with OpenAI's ChatGPT, used as a SQL query generator for Snowflake Marketplace datasets.Dashboards for Snowflake data, with Vega-Lite, Altair and Plotly charts.Machine Learning scenarios, with Model Training and Predictions.Data enrichment of IP addresses using external free services.I sold tools similar to many of these to real-life clients and Snowflake partners!Enroll today, to keep this course forever!

Syllabus

  • Introduction to the Course
  • Overview of Streamlit and Snowflake
    Course Objectives
    Prerequisites
  • Setting Up Your Environment
  • Installing Streamlit
    Creating a Snowflake Account
    Connecting Streamlit to Snowflake
  • Basics of Streamlit
  • Introduction to Streamlit Features
    Creating Your First Streamlit App
    Understanding the Streamlit Layout API
  • Introduction to Snowflake
  • Snowflake Architecture and Key Features
    Basic Operations with Snowflake
    Loading and Querying Data in Snowflake
  • Integrating Streamlit and Snowflake
  • Building an Interactive Data Dashboard
    Real-Time Data Fetching from Snowflake
    Displaying Snowflake Data with Streamlit Components
  • Advanced Streamlit Features
  • Customizing Streamlit Apps with Widgets
    Deploying and Sharing Streamlit Applications
    Performance Optimization Techniques
  • Advanced Snowflake Techniques
  • Snowflake Data Warehousing Concepts
    Using Snowflake SQL Extensions
    Security and Access Control in Snowflake
  • Case Study: Building a Data Application
  • Project Overview and Requirements
    Hands-On Implementation with Streamlit and Snowflake
    Analyzing and Visualizing Data in Real-time
  • Best Practices and Tips
  • Streamlit Development Best Practices
    Efficient Snowflake Data Handling
    Troubleshooting Common Issues
  • Course Conclusion
  • Summary of Key Learnings
    Final Project Presentation
    Future Steps and Additional Resources
  • Q&A and Closing Remarks

Taught by

Cristian Scutaru


Subjects

Business