talk-data.com talk-data.com

Joe Reis

Speaker

Joe Reis

25

talks

Joe Reis is a data professional with 20 years in the data industry, known as a "recovering data scientist" and a business-minded data nerd. His experience spans statistical modeling, forecasting, machine learning, data engineering, and data architecture. He is the co-author of Fundamentals of Data Engineering (O'Reilly, 2022).

Bio from: Small Data SF 2025

Frequent Collaborators

Filter by Event / Source

Talks & appearances

332 activities · Newest first

Search activities →
podcast_episode
with Adam Stacoviak (The Changelog) , Jarod Santo (The Changelog) , Joe Reis (DeepLearning.AI)

Jarod Santo and Adam Stacoviak from The Changelog join me for 1.5 hours of free-flowing chats about planned obscelescene, old school vs new school consumer tech, the XZ Backdoor incident, the job market doldrums (plus tips for finding work and starting a biz), and being unemployable.

Jarod and Adam are two of my favorite people to talk with, since we can literally chat about anything for hours. Enjoy!

Changelog: https://changelog.com/

In today's Practical Data Modeling group discussion, we chatted about how to get buy-in for data modeling. The question was intentionally vague, because context is key. I give some thoughts on this topic, and how you can generalize this to most situations where you need to get buy-in.

Practical Data Modeling: https://practicaldatamodeling.substack.com/

Vishnu Vasanth (e6Data) and I chat about what's next for analytical query engines, shifting left, the Indian tech scene, and much more.

Vishnu is very wise and has a very deep technical vision for where the industry needs to go. I very much agree with his vision. Enjoy!

e6Data: https://www.e6data.com/

LinkedIn: https://www.linkedin.com/in/vishnu-vasanth-5329233/

podcast_episode
with Kent Graziano (SnowflakeDB) , Joe Reis (DeepLearning.AI)

There's the interview you think you're going to have, then there's the interview you get. This is one of those, in the best way possible. I expected to chat about his time at Snowflake. We didn't even get past his early days building data warehouses because it was so fascinating. Did you know Kent is arguably one of the very first practitioners (probably an accidental inventor) of DataOps?

This is sort of a "prequel" episode. Kent Graziano and I chat about his early days as a data practitioner.

Sometimes I feel like the data world is stuck in a world of tabular data (rows and columns). This has been the data world for decades. Let's think bigger. We've moved beyond data fitting into lakes.

With the capability of AI to unlock the power of unstructured data (audio, images, video), it's time to start thinking about data oceans...

Keith Belanger is an OG data modeling practitioner, having been in the game for decades.

We chat about a wide range of data modeling topics.

What's changed and what's stayed the same? How to model data to fit the business's needs. Agile data modeling. When it works, when it doesn't. Data modeling for data mesh and decentralization. The art of data modeling How to teach conceptual data modeling to new practitioners

Keith brings a wealth of experience and a practical, no-nonsense perspective. If you're interested in data modeling, don't miss this!

LinkedIn: https://www.linkedin.com/in/krbelanger/

This morning, the Practical Data Modeling Community held its first group discussion (to be posted very soon). People from all sorts of organizations (biggest companies in the world, universities, small companies) discussed how the approach analytical data modeling.

My major takeaway - your mileage will vary. There's the ideal way of data modeling we're taught, and there's reality. Everyone's situation is different and there's no one-size-fits-all approach that will work for everyone.

The discussion was awesome, and we'll do it again soon. If you're not part of the Practical Data Modeling Community, please join here: https://practicaldatamodeling.substack.com/

Kishore Aradhya and I both teach, and we agree this is a very difficult landscape to determine what and how to teach. Against the backdrop of generative AI, we discuss the role of universities in teaching tech and data, the role of a teacher, how to teach data, and much more.

DSPY - https://github.com/stanfordnlp/dspy

Toby Mao started his data tooling company, SQLMesh, in 2022, when investing in data tools was unfashionable. Yet, he's managed to get traction with SQLMesh and is on a mission to simplify data transformations and make data easier to work with. We also chat about experimentation best practices, which he learned at some of the biggest tech companies in the world.

This is definitely a great episode if you're interested in startups, data tools, experiments, driving cars, and much more.

I often get questions about how I write and advice on how one might go about becoming a "writer." In this episode, I talk a bit about my writing process and why you (yes you) should also write.

This will be the first in a few episodes and blog posts where I talk about the writing and content creation process, as I get a ton of questions about this. Thanks for your questions and support!

Jess Haberman and I chat about how to negotiate a book deal. She's been in publishing for ages and knows her stuff!

Also, I wish I had this episode handy while I was shopping around Fundamentals of Data Engineering, because Jess agreed to publish my book while she was at O'Reilly ;)

We also talk about how AI will change publishing.

Zach Zeus and I chat about trust architecture and how it can work to improve ESG impacts in supply chain. This is an incredibly important topic with massive global impact, cuz climate change.

LinkedIn: https://www.linkedin.com/in/zachary-zeus/

Recommendation 49: https://unece.org/circular-economy/news/unece-support-scaling-transparency-sustainable-value-chains

Annie Nelson and I chat about her path to data analytics, writing her new book, "How to Become a Data Analyst", bad career advice, rock climbing, and more.

LinkedIn: https://www.linkedin.com/in/annie-nelson-analyst/

TikTok: https://www.tiktok.com/discover/annie-nelson-data-analytics

Book: https://www.amazon.com/How-Become-Data-Analyst-Low-Cost/dp/1394202237