Data Engineering With Snowflake And Aws | Courses | Crax

Welcome To Crax.Pro Forum!

Check our new Marketplace at Crax.Shop

   Login! SignUp Now!
  • We are in solidarity with our brothers and sisters in Palestine. Free Palestine. To learn more visit this Page

  • Crax.Pro domain has been taken down!

    Alternatives: Craxpro.io | Craxpro.com

Data Engineering With Snowflake And Aws

Data Engineering With Snowflake And Aws

LV
4
 

mayoufi

Member
Joined
Oct 22, 2023
Threads
2,229
Likes
159
Awards
9
Credits
5,008©
Cash
0$
1704573678439

MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.58 GB | Duration: 4h 24m
Learn the main tasks a Data Engineer perform on Snowflake with AWS

What you'll learn
Data Engineering
Snowflake
SQL
Extraction, Transformation and Data Loading
AWS
ETL

Requirements
Familiarity with SQL is recommended but not mandatory
Familiarity with AWS is recommended but not mandatory

Description
Snowflake course for data engineersThis comprehensive Snowflake course is designed for data engineers who want to improve their ability to efficiently and scalably manage data in the cloud. With a hands-on focus, participants will be guided from the basics to advanced concepts of the Snowflake platform, which provides a modern and fully managed data warehouse architecture.Benefits of using Snowflake for data engineering: Elastic scalability: one of the key benefits of Snowflake is its cloud data storage architecture, which allows for elastic scalability. This means that data engineers can easily scale resources on demand to efficiently handle variable workloads and ensure consistent performance regardless of data volume.Simplified data sharing: Snowflake offers a unique approach to sharing data across departments and teams. Using the concept of secure and controlled data sharing, data engineers can create a single data source that promotes efficient collaboration and consistent data analysis across the organisation.Seamless integration with analytics tools: Snowflake is designed to integrate seamlessly with a variety of data analytics tools, allowing data engineers to create complete ecosystems for advanced data analysis. Compatibility with standard SQL makes it easy to migrate to the platform, while interoperability with popular tools such as Tableau and Power BI expands options for data visualisation and exploration.In this course we deal with:Snowflake basicsPlatform architectureVirtual warehouses - the clustersWorking with semi-structured dataIntegrating Snowflake with AWSUsing Stages, Storage Integration, and SnowpipesUsing AWS S3, SQS, IAMAutomatic ingestion of data in near real time
 

Create an account or login to comment

You must be a member in order to leave a comment

Create account

Create an account on our community. It's easy!

Log in

Already have an account? Log in here.

Top Bottom