Part 2 - Roadmap to Become a Data Engineer for ETL, PL/SQL, Data Warehouse, Mainframes Developers
As part of this video, we will cover how to become a Data Engineer if one is an experienced ETL or PL/SQL or Data Warehouse or Mainframes Developer.
📍 Signup for our Newsletter: https://forms.gle/mwVYMRzAdv89rxRf8
📑 Deck for the workshop: https://docs.google.com/presentation/d/1-g8iAgq-WPOdyP8En5RxSzvUtCTE61lqOwxx1DxSQ8g?usp=sharing
📌Part 1: 🔗https://youtu.be/nI6qOIGCpXw
📌 Part 2: 🔗https://youtu.be/OrMlGz162ac
If you are an experienced Oracle PL/SQL Developer or an Informatica Developer or Talend Developer or Abinitio Developer or Microsoft SSIS/SSRS Developer or Data Stage Developer, then it is inevitable for you to transition to Data Engineer. In these sessions most of your questions related to why and how you need to transition to Data engineering with examples based on our vast experience.
🚨Here is the program link related to Data Engineering using AWS Data Analytics -
🎯🔗https://itversity.com/bundle/data-engineering-using-aws-analytics
👨🏽💻For sales inquiries: support@itversity.com
As this will be a very detailed session, we will cover all the below topics in 2 1.5-hour sessions. This is the 2nd session which is the continuation of the previous one.
* What is Data Engineering and why ETL, PL/SQL, Data Warehouse, and Mainframes Developers should take it seriously?
* Conventional Data Warehousing + Modern Analytics
* Data Engineering on Cloud Platforms - AWS, GCP, Azure, Databricks, Snowflake, CDP, etc
* Why Data Engineering using AWS Data Analytics?
* What are all the different systems Data Engineer deal with?
* Variety of source or upstream systems - Purpose Built Databases, Files, REST APIs
* Data Lake
* Downstream systems such as Data Warehouses or MPP, NoSQL, External Systems
* What are the key skills and up to what level ETL, PL/SQL, Data Warehouse, and Mainframes Developers should know the skills?
* REST APIs and JSON with Demo
* SQL with Demo
* Orchestration with example or demo
* Python with demo
* Key Integrations with demo
* Cloud and Serverless with demo
* Performance Tuning with demo
* Details about our Guided Program on AWS (others in the future). Here are some of the highlights of the program.
* Python and SQL
* AWS Essentials for Data Engineers for Data Lake, Distributed Compute, Data Warehouse, and other purpose-built services
* Mastering AWS Lambda Functions for Data Engineers - to build or enhance data pipelines
* Mastering AWS Elastic Map Reduce for Data Engineers - to build data pipelines to process large-scale data using distributed computing
* Mastering AWS Redshift as Data Warehouse for Data Engineers - to build Data Marts or Data Warehouse to serve enterprise reports or dashboards
* Mastering AWS Athena and Glue Data Catalog - for ad-hoc analysis of Data as well as to build data pipelines for large-scale data
* Mastering Amazon Managed Streaming for Apache Kafka (MSK) - to build streaming data pipelines integrating with Spark and other purpose-built AWS Services
* Performance Tuning Guide for Data Engineers on AWS - Data Ingestion, Data Lake, Data Processing, Loading Data
* Other Details related to the course
* Cost and Timelines for the course
* Delivery Mode (Hybrid) - Self-Paced with continuous support
* Labs and Additional Costs
* Refund Policy
* Placement Assistance or Support
* Alumni Club
#DataEngineering #BigData #AWS #mapreduce #ETL #cloudcomputing #Roadmap #mainframes
#DataWarehouse #dataengineeringessentials
Join this channel to get access to perks:
https://www.youtube.com/channel/UCakdSIPsJqiOLqylgoYmwQg/join
Видео Part 2 - Roadmap to Become a Data Engineer for ETL, PL/SQL, Data Warehouse, Mainframes Developers канала itversity
📍 Signup for our Newsletter: https://forms.gle/mwVYMRzAdv89rxRf8
📑 Deck for the workshop: https://docs.google.com/presentation/d/1-g8iAgq-WPOdyP8En5RxSzvUtCTE61lqOwxx1DxSQ8g?usp=sharing
📌Part 1: 🔗https://youtu.be/nI6qOIGCpXw
📌 Part 2: 🔗https://youtu.be/OrMlGz162ac
If you are an experienced Oracle PL/SQL Developer or an Informatica Developer or Talend Developer or Abinitio Developer or Microsoft SSIS/SSRS Developer or Data Stage Developer, then it is inevitable for you to transition to Data Engineer. In these sessions most of your questions related to why and how you need to transition to Data engineering with examples based on our vast experience.
🚨Here is the program link related to Data Engineering using AWS Data Analytics -
🎯🔗https://itversity.com/bundle/data-engineering-using-aws-analytics
👨🏽💻For sales inquiries: support@itversity.com
As this will be a very detailed session, we will cover all the below topics in 2 1.5-hour sessions. This is the 2nd session which is the continuation of the previous one.
* What is Data Engineering and why ETL, PL/SQL, Data Warehouse, and Mainframes Developers should take it seriously?
* Conventional Data Warehousing + Modern Analytics
* Data Engineering on Cloud Platforms - AWS, GCP, Azure, Databricks, Snowflake, CDP, etc
* Why Data Engineering using AWS Data Analytics?
* What are all the different systems Data Engineer deal with?
* Variety of source or upstream systems - Purpose Built Databases, Files, REST APIs
* Data Lake
* Downstream systems such as Data Warehouses or MPP, NoSQL, External Systems
* What are the key skills and up to what level ETL, PL/SQL, Data Warehouse, and Mainframes Developers should know the skills?
* REST APIs and JSON with Demo
* SQL with Demo
* Orchestration with example or demo
* Python with demo
* Key Integrations with demo
* Cloud and Serverless with demo
* Performance Tuning with demo
* Details about our Guided Program on AWS (others in the future). Here are some of the highlights of the program.
* Python and SQL
* AWS Essentials for Data Engineers for Data Lake, Distributed Compute, Data Warehouse, and other purpose-built services
* Mastering AWS Lambda Functions for Data Engineers - to build or enhance data pipelines
* Mastering AWS Elastic Map Reduce for Data Engineers - to build data pipelines to process large-scale data using distributed computing
* Mastering AWS Redshift as Data Warehouse for Data Engineers - to build Data Marts or Data Warehouse to serve enterprise reports or dashboards
* Mastering AWS Athena and Glue Data Catalog - for ad-hoc analysis of Data as well as to build data pipelines for large-scale data
* Mastering Amazon Managed Streaming for Apache Kafka (MSK) - to build streaming data pipelines integrating with Spark and other purpose-built AWS Services
* Performance Tuning Guide for Data Engineers on AWS - Data Ingestion, Data Lake, Data Processing, Loading Data
* Other Details related to the course
* Cost and Timelines for the course
* Delivery Mode (Hybrid) - Self-Paced with continuous support
* Labs and Additional Costs
* Refund Policy
* Placement Assistance or Support
* Alumni Club
#DataEngineering #BigData #AWS #mapreduce #ETL #cloudcomputing #Roadmap #mainframes
#DataWarehouse #dataengineeringessentials
Join this channel to get access to perks:
https://www.youtube.com/channel/UCakdSIPsJqiOLqylgoYmwQg/join
Видео Part 2 - Roadmap to Become a Data Engineer for ETL, PL/SQL, Data Warehouse, Mainframes Developers канала itversity
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
![DBT Workshop - Data Transformations using DBT and Spark on AWS EMR](https://i.ytimg.com/vi/OvFJjqVl--0/default.jpg)
![Getting Started with Databricks Certified Associate Developer for Apache Spark 3](https://i.ytimg.com/vi/cFBDRi2j4s8/default.jpg)
![Part 1 - Roadmap to Become a Data Engineer for ETL, PL/SQL, Data Warehouse, Mainframes Developers](https://i.ytimg.com/vi/nI6qOIGCpXw/default.jpg)
![Webinar - Guided Program on Data Engineering on Cloud (AWS)](https://i.ytimg.com/vi/S9YjJkjJV5w/default.jpg)
![Monitoring and Managing Linux Servers using System Commands](https://i.ytimg.com/vi/tBxUUSjvtMw/default.jpg)
![Managing Files and Folders in Linux](https://i.ytimg.com/vi/YORb6-_ye04/default.jpg)
![Getting Started with Linux Shell Commands](https://i.ytimg.com/vi/2rUD-slqyq8/default.jpg)
![Databricks Platform Features - Overview of Databricks SQL Clusters](https://i.ytimg.com/vi/Vi1KswnNVE4/default.jpg)
![Azure Essentials for Databricks - Mount ADLS Containers on to Azure Databricks Clusters](https://i.ytimg.com/vi/xFcVD6Zh0mo/default.jpg)
![Azure Essentials for Databricks - Setup Azure CLI as well as Manage Resources using Azure CLI](https://i.ytimg.com/vi/iaO-WFUvEUI/default.jpg)
![Getting Started with Databricks on Microsoft Azure](https://i.ytimg.com/vi/h14aU3kAjxw/default.jpg)
![Develop Machine Learning Models - Predicting the numbers using OCR and PyTorch (Sample Video)](https://i.ytimg.com/vi/1r8fOyE9H_k/default.jpg)
![Databricks Platform Features - Deep Dive into Delta Lake using Spark SQL](https://i.ytimg.com/vi/RuMgec50adA/default.jpg)
![Databricks Platform Features - Deep Dive into Delta Lake using PySpark Data Frames](https://i.ytimg.com/vi/aJ2wSc8yYBM/default.jpg)
![Apache Spark Python - Development Life Cycle - Setup Virtual Environment and Install Pyspark](https://i.ytimg.com/vi/3oUB90d70yM/default.jpg)
![Setting up Environment using AWS Cloud9 - Overview of EC2 related to Cloud9](https://i.ytimg.com/vi/MBWXo9f5FtQ/default.jpg)
![Setting up Environment using AWS Cloud9 - Warming up with Cloud9 IDE](https://i.ytimg.com/vi/ab6C8uYHeB4/default.jpg)
![Setting up Environment using AWS Cloud9 - Getting Started with Cloud9](https://i.ytimg.com/vi/0Kf8uLxzepY/default.jpg)
![Setting up Environment using AWS Cloud9 - Increase EBS Volume Size of Cloud9 Instance](https://i.ytimg.com/vi/2UmUUQRmra4/default.jpg)
![Setting up Environment using AWS Cloud9 - Creating Cloud9 Environment](https://i.ytimg.com/vi/dI5w1inuDTc/default.jpg)