Real-Time Data Pipelines & Analytics on AWS

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Real-Time Data Pipelines & Analytics on AWS

Coursera · Intermediate ·🔄 Data Engineering ·3mo ago

Key Takeaways

Builds real-time data pipelines and analytics on AWS using tools like Amazon Redshift, Kinesis, and QuickSight

Original Description

In today’s digital economy, data shouldn’t stand still — neither should you. This course, Real-Time Data Pipelines & Analytics on AWS, provides you with the necessary skills to process streaming data and make it business-ready. Taught with a focus on actual use cases, you get hands-on practice with AWS’s most popular tools, including Amazon Redshift, Kinesis, Glue, Athena, EMR, QuickSight, OpenSearch, and more. Whether you are new to cloud data engineering or have experience and want to learn the latest, this course offers a curated curriculum featuring practical demos, guided videos, and examples. You’ll discover ways to increase the performance of your Redshift cluster, secure Kinesis streams, and integrate Spark with various AWS services. You’ll also be able to design analytics pipelines that provide real-time results. By the time you are finished with this course, you will be able to build production-ready data pipelines that shine in today’s high-demand tech industry. Enroll now and begin your path towards the data engineer that every company is looking for. Disclaimer: AWS and Amazon Web Services are trademarks of Amazon.com, Inc. or its affiliates. This course is not affiliated with or endorsed by AWS.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
What Can We Do When Memory Becomes the New Bottleneck in Data Engineering?
Learn how to overcome memory bottlenecks in data engineering using Pandas chunking, Dask, and Polars, and why it matters for processing large datasets
Towards Data Science
📰
Migrate from Ponder to Envio HyperIndex
Learn to migrate your indexer from Ponder to Envio HyperIndex to scale your data management
Dev.to · Envio
📰
Data Backfilling with Apache Airflow: Architectures and Implementations for Historical Data Processing
Learn how to implement data backfilling with Apache Airflow for historical data processing and improve your data pipeline's accuracy and reliability
Dev.to · Wangila russell
📰
Building a Production-Style Weather Analytics Pipeline from Scratch: ETL, ELT, Star Schema, and…
Learn to build a production-ready weather analytics pipeline from scratch using Python, DuckDB, and Apache tools, and understand the importance of ETL, ELT, and Star Schema in data engineering
Medium · Python
Up next
A Moment Frozen in Time | Arnav Iyengar | TEDxJenks Youth
TEDx Talks
Watch →