Data Matas

S3E5 - Building Data Platforms That Actually Solve Business Problems

43 min · 19. joulu 2025
jakson S3E5 - Building Data Platforms That Actually Solve Business Problems kansikuva

Kuvaus

Stop Coding, Start Diagramming: How to Build Data Platforms That Deliver If you're rushing to hire a data engineer before you have a clear business question, you’re doing it backwards. I'm joined by Teddy Bernays (Freelance Data Engineer) to unpack his "business first" approach. Teddy shares his journey and explains why simplicity and a solid plan always beat the latest tech stack. His top advice: "Find the problem you want to solve first. Is data the answer? Only then should you start building." In this episode, we cover:  ▶️ Why you should hire a Data Analyst before a Data Engineer  ▶️ The "Diagram First" rule for technical projects  ▶️ How to escape the painful world of legacy spreadsheets  ▶️ Finding freelance clients in the real world (get off LinkedIn!)  ▶️ Using AI to finally solve your documentation problems

Kommentit

0

Ole ensimmäinen kommentoija

Rekisteröidy nyt ja liity Data Matas-yhteisöön!

Aloita nyt

3 kuukautta hintaan 7,99 €

Sitten 7,99 € / kuukausi · Peru milloin tahansa.

  • Podimon podcastit
  • 20 kuunteluaikaa / kuukausi
  • Lataa offline-käyttöön

Kaikki jaksot

23 jaksot

jakson S4E2 - Will AI Replace Data Engineers? Dashboards, Semantic Layers & What Dies Next kansikuva

S4E2 - Will AI Replace Data Engineers? Dashboards, Semantic Layers & What Dies Next

"AI won't replace data engineers. But engineers using AI will." In Season 4, Episode 2, we sit down with Julian [add last name + role] to unpack what's actually changing in data engineering — and what's about to disappear. We get into: → Why dashboards as we know them are dying (and what replaces them) → Does AI really need a semantic layer? Julian's answer might surprise you → The low-code trap quietly racking up tech debt across data teams → Where AI is genuinely useful today: tech debt, testing, and data governance → The one skill that still matters most when AI can write the code → A spicy closing question for the next guest about cloud cost ⏱ Chapters 00:00 — Intro 01:30 — Julian's path into data 04:00 — The career pivot that changed everything 07:30 — How his team is adopting AI (and who resists) 10:00 — Does AI need a semantic layer? 13:00 — Local models are closer than you think 15:30 — Where AI is actually working: tech debt, tests, governance 19:00 — What the data industry is getting completely wrong 23:00 — The belief Julian held 3 years ago that's now wrong 26:00 — A question for the next guest

19. touko 202629 min
jakson S3E6 - Analytics Engineering: Internal Risk vs. External Rigor kansikuva

S3E6 - Analytics Engineering: Internal Risk vs. External Rigor

Analytics Engineering: Internal Risk vs. External Rigor | Ft. Jack Doherty (Fresha) The stakes are higher than ever for Analytics Engineers. When your data becomes a core, customer-facing product, the game changes. Jack Doherty (Head of AE, Fresha) discusses the massive difference between internal and external analytics: Risk vs. Rigor: Why internal projects can move fast (risk), but product-facing data demands DevOps-level rigor, testing, and governance. Real-Time Data: The technical shift from scheduled batches to CDC for meeting customer demands for speed and consistency. The Missing Link: Why the Semantic Layer is the future of AE, crucial for codifying business logic and powering accurate AI/Chat interfaces. A must-watch for any AE treating data as a product.

15. tammi 202639 min
jakson S3E5 - Building Data Platforms That Actually Solve Business Problems kansikuva

S3E5 - Building Data Platforms That Actually Solve Business Problems

Stop Coding, Start Diagramming: How to Build Data Platforms That Deliver If you're rushing to hire a data engineer before you have a clear business question, you’re doing it backwards. I'm joined by Teddy Bernays (Freelance Data Engineer) to unpack his "business first" approach. Teddy shares his journey and explains why simplicity and a solid plan always beat the latest tech stack. His top advice: "Find the problem you want to solve first. Is data the answer? Only then should you start building." In this episode, we cover:  ▶️ Why you should hire a Data Analyst before a Data Engineer  ▶️ The "Diagram First" rule for technical projects  ▶️ How to escape the painful world of legacy spreadsheets  ▶️ Finding freelance clients in the real world (get off LinkedIn!)  ▶️ Using AI to finally solve your documentation problems

19. joulu 202543 min