Skip to content

nareshk1290/Udacity-Data-Engineering

Repository files navigation

Data Engineering Nanodegree

Projects and resources developed in the DEND Nanodegree from Udacity.

Developed a relational database using PostgreSQL to model user activity data for a music streaming app. Skills include:

  • Created a relational database using PostgreSQL
  • Developed a Star Schema database using optimized definitions of Fact and Dimension tables. Normalization of tables.
  • Built out an ETL pipeline to optimize queries in order to understand what songs users listen to.

Proficiencies include: Python, PostgreSql, Star Schema, ETL pipelines, Normalization

Designed a NoSQL database using Apache Cassandra based on the original schema outlined in project one. Skills include:

  • Created a nosql database using Apache Cassandra (both locally and with docker containers)
  • Developed denormalized tables optimized for a specific set queries and business needs

Proficiencies used: Python, Apache Cassandra, Denormalization

Created a database warehouse utilizing Amazon Redshift. Skills include:

  • Creating a Redshift Cluster, IAM Roles, Security groups.
  • Develop an ETL Pipeline that copies data from S3 buckets into staging tables to be processed into a star schema
  • Developed a star schema with optimization to specific queries required by the data analytics team.

Proficiencies used: Python, Amazon Redshift, aws cli, Amazon SDK, SQL, PostgreSQL

Scaled up the current ETL pipeline by moving the data warehouse to a data lake. Skills include:

  • Create an EMR Hadoop Cluster
  • Further develop the ETL Pipeline copying datasets from S3 buckets, data processing using Spark and writing to S3 buckets using efficient partitioning and parquet formatting.
  • Fast-tracking the data lake buildout using (serverless) AWS Lambda and cataloging tables with AWS Glue Crawler.

Technologies used: Spark, S3, EMR, Athena, Amazon Glue, Parquet.

Automate the ETL pipeline and creation of data warehouse using Apache Airflow. Skills include:

  • Using Airflow to automate ETL pipelines using Airflow, Python, Amazon Redshift.
  • Writing custom operators to perform tasks such as staging data, filling the data warehouse, and validation through data quality checks.
  • Transforming data from various sources into a star schema optimized for the analytics team's use cases.

Technologies used: Apache Airflow, S3, Amazon Redshift, Python.