Machine Learning Models in Microsoft Fabric: How to Go from Lakehouse Data to Tracked, Deployable ML in One Workspace

Machine Learning Models in Microsoft Fabric: How to Go from Lakehouse Data to Tracked, Deployable ML in One Workspace

Most teams never get their machine learning models out of “notebook purgatory”—they live on laptops, depend on mystery environments, and fall apart the moment someone asks for a production version. In this episode, we start from that reality and walk through how Microsoft Fabric’s data science experience gives you one place to move from raw Lakehouse data to trained, tracked, and deployable models, without juggling exports, ad‑hoc clusters, or spreadsheet‑driven coordination.

We begin with the input problem: hunting data across lakes, files, and reports before you ever touch a model. You’ll hear why Fabric’s Lakehouse changes that equation by putting raw and curated tables in one governed workspace, so analysts and data scientists can pull sales, tickets, and inventory straight into notebooks without five different “final” CSVs and permission detours. That foundation means your features start from a shared, trusted source of truth instead of stitched‑together extracts.

From there, we dive into Python notebooks without the usual dependency drama. You’ll see how Fabric’s preconfigured environments, integrated Spark, and direct Lakehouse connections let you explore data, engineer features, and train models in one place—no custom clusters, no broken kernels, no “works only on my machine.” We talk through practical patterns for iterating quickly while still keeping code readable and reusable for the next person who picks up your work.

Finally, we connect modeling to operations. You’ll learn how Fabric’s built‑in tracking, versioning, and pipeline tooling help you move from experimental notebooks to repeatable training runs and deployable models that can feed reports, apps, or downstream services. By the end, “building ML models in Fabric” won’t just mean writing code—it will mean designing a workflow where data, experiments, and deployments all live in one system that your team can scale and audit over time.

WHAT YOU LEARN
  • Why ML projects stall when data, notebooks, and environments are scattered across tools.
  • How Fabric’s Lakehouse gives analysts and data scientists one governed place to source model inputs.
  • How preconfigured Fabric notebooks with Spark simplify feature engineering and model training at scale.
  • How tracking, versioning, and pipelines in Fabric turn one‑off experiments into repeatable training workflows.
  • How to think about Fabric as a full ML workspace, not just “a notebook on top of a data lake.”
CORE INSIGHT

The core insight of this episode is that Microsoft Fabric makes machine learning practical when you treat it as a systems problem, not just a modeling problem. When your data, notebooks, environments, and training pipelines all live in one governed workspace, you stop fighting file hunts and brittle setups and start focusing on models that can actually be trained, retrained, and shipped into real products.

WHO THIS IS FOR
  • Data scientists and analysts who are tired of moving models from laptop notebooks into production by hand.
  • Data engineers and architects designing ML workflows on top of Fabric Lakehouse data.
  • BI and product teams who want ML outputs that plug cleanly into reports, apps, and downstream processes.
  • Leaders who want machine learning that is traceable, governable, and repeatable—not just one‑off experiments.
ABOUT THE HOST

Mirko Peters is a Microsoft 365 and cloud consultant and the host of M365.FM, focused on modern work, security, and data architectures that survive real‑world use. He helps organizations move from ad‑hoc notebooks and patchwork data flows to context‑driven systems on Microsoft 365, Fabric, and Azure, where analytics and machine learning run on governed, repeatable foundations. In M365.FM, Mirko turns longform implementation stories—like building ML on Fabric from Lakehouse to deployment—into practical patterns listeners can apply in their own environments.

Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support.

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(711)

Copilot Cowork - Simply Explained

Copilot Cowork - Simply Explained

Microsoft Copilot changed how we interact with AI by helping us summarize emails, draft documents, and answer questions. But there's still one major problem: you're responsible for connecting everythi...

12 Heinä 13min

Copilot Skills - Simply Explained

Copilot Skills - Simply Explained

Copilot Skills are one of Microsoft's most important AI building blocks, yet they're also one of the most misunderstood. Depending on which Microsoft product you're using, the same concept appears und...

12 Heinä 13min

Microsoft Scout - Simply Explained

Microsoft Scout - Simply Explained

Microsoft has introduced a growing family of AI assistants, and Microsoft Scout represents the next major step in that evolution. While Copilot helps when you ask questions and Cowork executes multi-s...

12 Heinä 16min

Compliance as Code: The Architect’s Blueprint for Automated Trust

Compliance as Code: The Architect’s Blueprint for Automated Trust

Compliance has traditionally been treated as documentation. Policies live in PDFs, access reviews sit in spreadsheets, and governance depends on people remembering to follow processes. But cloud envir...

12 Heinä 1h 13min

Power Apps Code Apps - Simply Explained

Power Apps Code Apps - Simply Explained

Power Apps has traditionally been known for its low-code, drag-and-drop experience, allowing business users and citizen developers to build applications quickly using Power Fx. But Microsoft is introd...

12 Heinä 14min

Your AI Agents Are Orphaned: The Structural Shift to Agent ID

Your AI Agents Are Orphaned: The Structural Shift to Agent ID

Artificial intelligence is changing enterprise identity faster than most organizations realize. Every week, new AI agents are being deployed across Microsoft 365 tenants, accessing SharePoint, Microso...

11 Heinä 1h 4min

The Architecture of Agility: Bicep at Scale

The Architecture of Agility: Bicep at Scale

Modern cloud platforms don't fail because Azure isn't powerful enough—they fail because governance, automation, and developer experience weren't designed to scale together. In this episode of the M365...

11 Heinä 1h 25min

Designing the Future. AI, UX, and the Next Generation of Microsoft Power Platform with Tchesco Ayih [MVP-MCT]

Designing the Future. AI, UX, and the Next Generation of Microsoft Power Platform with Tchesco Ayih [MVP-MCT]

In this episode of the M365 Podcast, Mirko Peters sits down with Tchesco Ayih, Microsoft MVP, Microsoft Certified Trainer (MCT), international speaker, mentor, and Power Platform expert. Tchesco share...

10 Heinä 50min

Suosittua kategoriassa Politiikka ja uutiset

aikalisa
uutiscast
ootsa-kuullut-tasta-2
rss-ootsa-kuullut-tasta
rss-podme-livebox
rss-seksicast
otetaan-yhdet
politiikan-puskaradio
tervo-halme
aihe
rss-vaalirankkurit-podcast
rss-girls-finish-f1rst
rss-mina-ukkola
rss-aijat-hopottaa-podcast
rss-mita-tapahtuu
rss-kaikki-uusiksi
rss-merja-mahkan-rahat
rss-tekoalyfoorumi
rss-asiastudio
rss-pinnalla