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Popular in live online training
See allFebruary 15, 2023
Data Engineering from Notebook to Production
Presented by Pete Fein
Take a data project from prototype to production quality with the modern data stack Get a complete, high-level overview of todayâs data engineering tools Learn best practices for data architecture and ...
March 2, 9 & 16, 2023
Data Lake Bootcamp: Building Reliable Data Lakes in 3 Weeks
Presented by Mohit Batra
Building reliable data lakes in 3 weeks In this course youâll: Understand the concept and objective of the data lake Learn ways to ingest and organize data in a data lake ...
February 8, 2023
Data Superstream: Data Lakes and Warehouses
Presented by Alistair Croll
Store, process, and manage your data at scale The ability to store, process, and manage data in the cloud efficiently and cost-effectively is a must for working with todayâs enormous datasets. ...
January 10, 17, 24, 31, February 7 & 14, 2023
Essential Math for Data Science in 6 Weeks—with Interactivity
Presented by Thomas Nield
Achieve practical math proficiency using Python With the availability of data, there is a growing demand for talent who can analyze and make sense of it. This makes practical math all ...
Popular in interactive learning
See allBuild a Robust Data Pipeline: Workflow Orchestration with Airflow
By Sam Bail
A simple data workflow orchestration example with Airflow ...
Build a Robust Data Pipeline: Building a Robust Data Pipeline with dbt, Airflow, and Great Expectations
By Sam Bail
A simple data transformation pipeline ...
Build a Robust Data Pipeline: Data Validation with Great Expectations
By Sam Bail
A simple data validation exercise with Great Expectations ...
SQL: Calculating Basic Retention
By Siddharth Yadav
Perform cohort analysis by calculating basic retention for the given data ...
Analyzing Credit Card Fraud with Streamlit
By Stijn van Hijfte
An introduction to Streamlit ...
Setting Up a Data Pipeline in Airflow from Scratch
By Vinoo Ganesh
Building a data pipeline from scratch ...