Getting Started With Data Engineering Using Snowflake Notebooks
Join Jeremiah Hansen, Principal Architect Global Field CTO Office at Snowflake, for a virtual hands-on lab that walks you step-by-step through the process of building Python data engineering pipelines with Snowflake Notebooks. This video will cover a complete Software Development Life Cycle (SDLC) for data engineering with Notebooks, including integration with Git, deploying to multiple environments through a CI/CD pipeline, instrumenting your code for monitoring and debugging, and orchestrating the pipelines with Task DAGs. Subscribe for more! http://www.snowflake.com/YTsubscribe/ Explore sample code, download tools, and connect with peers: https://developers.snowflake.com/

▶︎
Using Snowpark ML To Predict The Euro 2024 Winners

▶︎
Learn Snowflake – Full 1-Hour Crash Course for Complete Beginners

▶︎
Learn Snowflake with ONE Project

▶︎
Snowflake GitHub Integration | Complete Hands-On Snowflake Tutorial

▶︎
How to Build Python Data Engineering Pipelines with Snowpark

▶︎
Using dbt And Snowflake To Develop And Deploy Analytics Code | LAB

▶︎
Complete Terraform Course - From BEGINNER to PRO! (Learn Infrastructure as Code)

▶︎
Productionize dbt Projects On Snowflake: A Practical Guide

▶︎
Data Engineering from Ingestion to AI-Ready | BUILD 2025 Keynote

▶︎
What is Snowflake? Learn Snowflake in 30 Minutes

▶︎
Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

▶︎
End-to-End Python Data Pipelines in Snowflake

▶︎
From YAML Chaos to Self-Service: Standardizing Delivery with an Internal Developer Portal

▶︎
CI/CD Explained: The DevOps Skill That Makes You 10x More Valuable

▶︎
Building Cortex Agents On Snowflake: Why It Matters And Best Practices

▶︎
Code along - build an ELT Pipeline in 1 Hour (dbt, Snowflake, Airflow)

▶︎
HOW TO: Build With Snowpark And Java UDFs

▶︎
AWS re:Invent 2025 - Introducing AI driven development lifecycle (AI-DLC) (DVT214)

▶︎
Model Context Protocol (MCP) Explained for Beginners: AI Flight Booking Demo!

▶︎
