エピソード

  • OneLake शॉर्टकट्स: वर्चुअल पॉइंटर्स, असली ट्रेडऑफ़
    2026/05/04

    Episode 2: OneLake Shortcuts: Virtual Pointers, Real Tradeoffs (हिन्दी)

    Fabric Architecture Podcast — हिन्दी

    AI-generated voices. Matthias — cloned voice. Fabia — designed AI co-host.

    Based on the Fabric Periodic Table.

    New episodes every Friday. DM Matthias on LinkedIn.

    AI-generated voices. Brand design based on fabricperiodictable.com.

    続きを読む 一部表示
    9 分
  • Fabric Warehouse vs. Lakehouse: एक ही स्टोरेज, अलग इंजन
    2026/05/04

    Episode 9: Fabric Warehouse vs. Lakehouse: Same Storage, Different Engines (हिन्दी)

    Fabric Architecture Podcast — हिन्दी

    AI-generated voices. Matthias — cloned voice. Fabia — designed AI co-host.

    Based on the Fabric Periodic Table.

    New episodes every Friday. DM Matthias on LinkedIn.

    AI-generated voices. Brand design based on fabricperiodictable.com.

    続きを読む 一部表示
    10 分
  • Real-Time Hub: वो Yellow Pages जो आपकी Streams को चाहिए थीं
    2026/05/04

    Episode 18: Real-Time Hub: The Yellow Pages Your Streams Were Missing (हिन्दी)

    Fabric Architecture Podcast — हिन्दी

    AI-generated voices. Matthias — cloned voice. Fabia — designed AI co-host.

    Based on the Fabric Periodic Table.

    New episodes every Friday. DM Matthias on LinkedIn.

    AI-generated voices. Brand design based on fabricperiodictable.com.

    続きを読む 一部表示
    10 分
  • Lakehouse आर्किटेक्चर: एक Storage Layer, कोई बहाना नहीं
    2026/05/04

    Lakehouse आर्किटेक्चर: एक Storage Layer, कोई बहाना नहीं

    Episode 1 • 2026-01-02 Duration: 8:37

    Fabric Lakehouse सिर्फ एक बार सेट करके भूल जाने वाला data platform नहीं है — यह बात Matthias और Fabia बखूबी समझाते हैं। असली architectural tradeoffs — medallion layers, Delta table maintenance, Direct Lake, और वो situations जहाँ Warehouse बेहतर option होता है।

    What we discuss

    • A real-world mistake from a pre-Fabric era
    • The one question that reframes the architectural debate
    • How we got here — predecessor products and evolution
    • Why the "obvious" answer is often wrong
    • A real Reddit/Microsoft Q&A question unpacked
    • The concrete recommended architecture
    • F-SKU realism — what this actually costs
    • When the rejected approach is actually right
    • Risks of the recommended path
    • What Microsoft is shipping that changes the calculus
    • The architectural principle to take home

    Key takeaways

    • यही पूरा lesson है। Demo के लिए architect मत करो। Month six के लिए architect करो।
    • बिल्कुल valid choice है। अगर आपकी team SQL-first है, Spark की ज़रूरत नहीं, ML नहीं — तो Warehouse genuinely बेहतर हो सकता है। वो tool चुनें जो team और workload से match करे, न कि वो जो architecture slide पर सबसे impressive दिखे।
    • बात सही है। Trap नहीं — tradeoff है। आपको Spark मिलता है, flexibility मिलती है, streaming और batch एक ही जगह। लेकिन maintenance आपकी ज़िम्मेदारी है। यही deal है।

    About the show

    Built on ElevenLabs voice synthesis. Matthias — cloned voice. Fabia — designed AI co-host. See Matthias live on YouTube (Fabric Friday), at his meetups, and at conferences like FabCon.

    Hosted by Matthias Falland — Microsoft Data Platform MVP and community architect behind the Fabric Periodic Table. New episodes every Friday.

    Submit your case

    Have an architecture decision you are wrestling with? DM Matthias on LinkedIn — find him as Matthias Falland. Three to five sentences about the decision, your team size, and your current stack. We anonymize before airing.

    Built on ElevenLabs voice synthesis. Brand design based on fabricperiodictable.com.

    続きを読む 一部表示
    9 分