Artwork

Content provided by Aaron Phethean. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Aaron Phethean or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.
Player FM - Podcast App
Go offline with the Player FM app!

S2E5 - From Learning the Tool to Designing the System: How Engineers Actually Grow

33:06
 
Share
 

Manage episode 484185290 series 3594170
Content provided by Aaron Phethean. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Aaron Phethean or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

How do analytics engineers grow from writing SQL to designing entire data systems? And why do most companies still confuse tool mastery with real engineering skill?

In this episode of Data Matas, Oleg Agapov (Senior Analytics Engineer at Hiive) shares what it actually takes to go from junior to senior in data—beyond bootcamps, tools, and job titles. He breaks down the core shifts that matter most: thinking in systems, mastering data modelling, and creating structure that scales.

You’ll hear how Oleg is helping build self-serve analytics inside a fast-moving fintech startup, why most data work fails without discovery, and how AI is changing the role—but not replacing the role—of the analytics engineer.

🎙 Guest: Oleg Agapov, Senior Analytics Engineer at Hiive
Oleg has spent over 15 years in data roles, moving from analyst to engineer to analytics architect. Now at Hiive—a marketplace for private stock—he’s helping design scalable data models and BI tooling that enable business teams to self-serve. Oleg also mentors junior engineers and shares career guidance on LinkedIn weekly, offering a rare combination of technical depth and practical coaching.

⏱ Episode Takeaways & Timestamps

03:40 – Why analysts become engineers (and what tools don’t teach you)
Why Oleg moved from analytics into engineering, and how messy data triggered a career pivot.

08:15 – What junior vs senior actually looks like in analytics engineering
From DBT basics to architecture thinking—how your role shifts as you grow.

12:30 – Data modelling isn’t a feature, it’s a discipline
Why writing queries isn’t enough—and why most engineers only realise this at scale.

17:45 – Building analytics in a three-sided marketplace startup
How Oleg is helping Hiive build self-serve data for a unique financial model.

24:00 – How AI fits into the modern data workflow (and where it fails)
Why LLMs are better reviewers than creators—and why trust still starts with humans.

28:40 – The hidden risk of AI assistants in BI tools
What happened when an AI assistant hallucinated a metric—and nearly caused a decision error.

Who Should Listen?
If you’re an analytics engineer, data modeller, or anyone growing a data team inside a startup or scale-up, this episode will help you move beyond dashboards and into strategic, scalable thinking. Especially valuable for those navigating the shift from IC to senior roles.

📢 Like this episode?
Subscribe to the Data Matas YouTube channel for weekly insights from real data leaders.
Hit the bell to get notified when new episodes go live.
💬 What’s one skill you think separates senior engineers from juniors? Let us know in the comments.

🔗 Links & Resources

👤 Oleg Agapov on LinkedIn: https://www.linkedin.com/in/oleg-agapov
👤 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/
🌐 Matatika Website: https://www.matatika.com
🎧 Data Matas Podcast: https://www.matatika.com/podcasts
📺 Data Matas YouTube Channel: https://www.youtube.com/@matatika/podcasts

  continue reading

13 episodes

Artwork
iconShare
 
Manage episode 484185290 series 3594170
Content provided by Aaron Phethean. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Aaron Phethean or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

How do analytics engineers grow from writing SQL to designing entire data systems? And why do most companies still confuse tool mastery with real engineering skill?

In this episode of Data Matas, Oleg Agapov (Senior Analytics Engineer at Hiive) shares what it actually takes to go from junior to senior in data—beyond bootcamps, tools, and job titles. He breaks down the core shifts that matter most: thinking in systems, mastering data modelling, and creating structure that scales.

You’ll hear how Oleg is helping build self-serve analytics inside a fast-moving fintech startup, why most data work fails without discovery, and how AI is changing the role—but not replacing the role—of the analytics engineer.

🎙 Guest: Oleg Agapov, Senior Analytics Engineer at Hiive
Oleg has spent over 15 years in data roles, moving from analyst to engineer to analytics architect. Now at Hiive—a marketplace for private stock—he’s helping design scalable data models and BI tooling that enable business teams to self-serve. Oleg also mentors junior engineers and shares career guidance on LinkedIn weekly, offering a rare combination of technical depth and practical coaching.

⏱ Episode Takeaways & Timestamps

03:40 – Why analysts become engineers (and what tools don’t teach you)
Why Oleg moved from analytics into engineering, and how messy data triggered a career pivot.

08:15 – What junior vs senior actually looks like in analytics engineering
From DBT basics to architecture thinking—how your role shifts as you grow.

12:30 – Data modelling isn’t a feature, it’s a discipline
Why writing queries isn’t enough—and why most engineers only realise this at scale.

17:45 – Building analytics in a three-sided marketplace startup
How Oleg is helping Hiive build self-serve data for a unique financial model.

24:00 – How AI fits into the modern data workflow (and where it fails)
Why LLMs are better reviewers than creators—and why trust still starts with humans.

28:40 – The hidden risk of AI assistants in BI tools
What happened when an AI assistant hallucinated a metric—and nearly caused a decision error.

Who Should Listen?
If you’re an analytics engineer, data modeller, or anyone growing a data team inside a startup or scale-up, this episode will help you move beyond dashboards and into strategic, scalable thinking. Especially valuable for those navigating the shift from IC to senior roles.

📢 Like this episode?
Subscribe to the Data Matas YouTube channel for weekly insights from real data leaders.
Hit the bell to get notified when new episodes go live.
💬 What’s one skill you think separates senior engineers from juniors? Let us know in the comments.

🔗 Links & Resources

👤 Oleg Agapov on LinkedIn: https://www.linkedin.com/in/oleg-agapov
👤 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/
🌐 Matatika Website: https://www.matatika.com
🎧 Data Matas Podcast: https://www.matatika.com/podcasts
📺 Data Matas YouTube Channel: https://www.youtube.com/@matatika/podcasts

  continue reading

13 episodes

All episodes

×
 
Loading …

Welcome to Player FM!

Player FM is scanning the web for high-quality podcasts for you to enjoy right now. It's the best podcast app and works on Android, iPhone, and the web. Signup to sync subscriptions across devices.

 

Quick Reference Guide

Listen to this show while you explore
Play