Skip to content

Latest commit

 

History

History
67 lines (39 loc) · 3.94 KB

README.md

File metadata and controls

67 lines (39 loc) · 3.94 KB

images/banner.png

Innovate AI/ML EMEA 2021

OPS4 - Build your ML platforms using open source technology

Resources

During this presentation I talked about a few resources to help you get started and configure your Apache Airflow environments. Here are links to these resources.

Resources I showed during the presentation

During the session I walked through using Amazon Managed Workflows for Apache Airflow. To reproduce the entire thing, you can follow these deep dives. Each post provides all the resources you need to reproduce what I demoed.

Integration with Amazon Elastic Map Reduce for big data workloads

Integration with Amazon SageMaker for training and hyper-parameter tuning

Integration with Amazon Personalize

Apache Airflow

The Apache Airflow community is amazing and if what you have seen so far has made you want to explore more, I urge you to check out the official documentation as well as joining the Apache Airflow slack channel.

Apache Airflow Officical Documentation Blog

Astronomer

I also mention one of the key contributors within the Apache Airflow community who also provide Apache Airflow managed services, Astronomer. They are well worth getting in touch with if you want to check out their own managed version of Apache Airflow.

Qubole

Whilst I didnt talk about Qubole during my session, they also provide Apache Airflow expertise so check them out too. You can find them at https://www.qubole.com/#

3rd Party resources and workshops

There are some great 3rd party resources that I found whilst learning/researching how customers are using Apache Airflow. Here are some of my favourite resources that I found to work and do exactly what they said. Well worth checking out.


Getting in touch

Feel free to get in touch if you want to know more or are having issues with these resources. The quickest way is to create an issue which will notify me.