Рет қаралды 507
Livestream every Tuesday & Thursday 4pm CEST / 10am EST
Join me live as I dive into my latest project idea - a GenAI platform built with Retrieval Augmented Generation (RAG).
This concept has been on my mind ever since I explored it for a platform architecture video on AWS, and I’m excited to share the blueprint with you all.
I'll walk you through the sketch I developed, highlighting the steps to build the platform. Also, I'll be discussing my ideas, thoughts on potential solutions, and how I envision transforming this concept into a practical AWS/GenAI project for my Learn Data Engineering Academy.
+++++
Hey there! I'm Andreas Kretz, your guide to the world of Data Engineering and founder of the Learn Data Engineering Academy.
On this channel, I break down complex concepts and share insights from my day-to-day work. Tune in for livestreams where I chat with data experts, dive into workshops, and get hands-on with the latest tools and platforms like AWS, GCP, Apache Spark, dbt, Snowflake, Python, Databricks, Apache Airflow, and more. I also do reviews and reactions to various tools and architectures, giving you an inside look at what's hot in the data world.
If you're passionate about Data Engineering, eager to learn, or curious about the latest tools and techniques, hit subscribe. Let's explore the world of Data Engineering together!
P.S.: Check out my @plumbersofdatascience podcast for episodes every Monday and Friday, where I tackle various Data Engineering topics. I also feature "Hero Talks" with guest Data Engineers discussing their journeys, job insights, and more.
►Learn Data Engineering with my DATA ENGINEERING ACADEMY: bit.ly/3R13ao0
►Follow me on LinkedIn for your DAILY DOSE of Data Engineering: / andreas-kretz
►Data Engineering SKILLS & TOOLS GUIDE:
-Get insight into skills and tools engineers use to build platforms & pipelines. Including example projects you can start with today!
hello.learndat...
►LEARN MORE ABOUT DATA ENGINEERING:
-Check out my free 100+ page data engineering cookbook on GitHub: bit.ly/3SKqmq7