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The Rise of Serverless Databases // Alex DeBrie // MLOps Podcast #147

The Rise of Serverless Databases // Alex DeBrie // MLOps Podcast #147

FromMLOps.community


The Rise of Serverless Databases // Alex DeBrie // MLOps Podcast #147

FromMLOps.community

ratings:
Length:
58 minutes
Released:
Feb 28, 2023
Format:
Podcast episode

Description

MLOps Coffee Sessions #147 with Alex DeBrie, Something About Databases co-hosted by Abi Aryan.

// Abstract
For databases, it feels like we're in the middle of a big shift. The first 10-15 years of the cloud were mostly about using the same core infrastructure patterns but in the cloud (SQL Server, MySQL, Postgres, Redis, Elasticsearch).  

In the last few years, we're finally seeing data infrastructure that is truly built for the cloud. Elastic, scalable, resilient, managed, etc. Early examples were Snowflake + DynamoDB. The most recent ones are all the 'NewSQL' contenders (Cockroach, Yugabyte, Spanner) or the 'serverless' ones (Neon, Planetscale). Also seeing improvements in caching, search, etc. Exciting times!

// Bio
Alex is an AWS Data Hero and self-employed AWS consultant and trainer. He is the author of The DynamoDB Book, a comprehensive guide to data modeling with DynamoDB. Previously, he worked for Stedi and for Serverless, Inc., creators of the Serverless Framework. He loves being involved in the AWS & serverless community, and he lives in Omaha, NE with his family.

// MLOps Jobs board  
https://mlops.pallet.xyz/jobs

// MLOps Swag/Merch
https://mlops-community.myshopify.com/

// Related
Links Key Takeaways from the DynamoDB Paper: https://www.alexdebrie.com/posts/dynamodb-paper/
Understanding Eventual Consistency in DynamoDB: https://www.alexdebrie.com/posts/dynamodb-eventual-consistency/
Two Scoops of Django 1.11: Best Practices for the Django Web Framework: https://www.amazon.com/Two-Scoops-Django-1-11-Practices/dp/0692915729CAP or no CAP?
Understanding when the CAP theorem applies and what it means: https://www.alexdebrie.com/posts/when-does-cap-theorem-apply/
Stop fighting your database/ The DynamoDB book: https://dynamodbbook.com/

--------------- ✌️Connect With Us ✌️ -------------
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Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Abi on LinkedIn: https://www.linkedin.com/in/abiaryan/
Connect with Alex on LinkedIn: https://www.linkedin.com/in/alex-debrie/

Timestamps:
[00:00] Alex's preferred coffee
[00:27] Introduction to Alex DeBrie and DynamoDB
[01:05] Takeaways
[03:47] Please write down your reviews and you might have a book of Alex!
[04:57] Alex's journey from being an Attorney to becoming a Data Engineer
[07:31] Why engineering?
[10:07] Serverless Data
[12:54] Before Airflow
[15:41] Batch vs streaming
[17:03] Difficulties in Batch and Streaming side
[19:45] Modern data infrastructure databases
[24:37] Cloud Ecosystem Maturity
[27:59] New generation type of Snowflake
[29:47] Comparing databases
[30:58] What's next on connectors from 2 perspectives?
[34:25] Management services at the MLOps level
[36:38] DynamoDB
[39:32] Why do you like DynamoDB?
[41:00] Data used in DynamoDB and size limits
[43:46] Comparison of tradeoffs between DynamoDB and Redis
[45:52] Preferred opinionated databases
[48:43] CAP or no CAP? Understanding when the CAP theorem applies and what it means
[52:10] The DynamoDB book
[56:17] Chapter you want to expand on the book
[57:43] Next book to write
[59:25] ChatGPT iterations
[1:01:59] Data modeling book wished to be written
[1:03:27] Wrap up
Released:
Feb 28, 2023
Format:
Podcast episode

Titles in the series (100)

Weekly talks and fireside chats about everything that has to do with the new space emerging around DevOps for Machine Learning aka MLOps aka Machine Learning Operations.