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DataHour: Data Engineering with Databricks

Online 07-10-2022 08:30 PM to 07-10-2022 09:30 PM
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DataHour Recording

Find the resources used in the DataHour HERE.

About the DataHour:

Databricks is a cloud-based collaborative data science, data engineering, and data analytics platform that combines the best of data warehouses and data lakes into a lake house architecture. 

In this DataHour, Umamah will introduce the set of fundamental concepts you need to understand in order to use the Databricks Data Science & Engineering workspace effectively.

Key concepts that will be discussed in the webinar include:

  • Introduction to Databricks
  • Databricks Lake House Architecture
  • Introduction to Databricks Notebooks, Clusters, Delta Lake and Delta Tables
  • ETL on databricks using python

Prerequisites: Understanding of Python programming and zeal of learning Data Science.


Who is this DataHour for?

  • Students & Freshers who want to build a career in the Data-tech domain.
  • Working professionals who want to transition to the Data-tech domain.
  • Data science professionals who want to accelerate their career growth


Speaker:

Umamah Fatima

Data Engineer/Data Scientist at WeCrunch

Umamah Fatima is a team player and a hardworking individual with an inclination to learn new tools and technologies who has always worked with organizations that strives for mutual growth and co-elevation.She is currently working as a Data Engineer/Data Scientist at WeCrunch. 

Connect with Umamah on linkedin , Facebook and Instagram

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