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#mlplatform — Public Fediverse posts

Live and recent posts from across the Fediverse tagged #mlplatform, aggregated by home.social.

  1. Ready to elevate your machine learning game? Meet Miia Niemelä, the powerhouse behind Wolt's ML Platform! She's your go-to for seamless ML product development and user-friendly tooling. With a passion for enhancing data scientists' lives and accelerating top-notch ML products, Miia is all about boosting the user experience. Join here session at 🚀
    women-in-data-ai.tech/speakers

  2. “I want to deep dive into Fabricator, #DoorDash's feature platform that has helped us scale feature volumes to almost 10x and improve feature iteration times from days to hours.” Kunal Shah, ML Platform Engineering Manager DoorDash

    This #InfoQ talk covers the design, some architecture deep dives, and some of the learnings in their journey: bit.ly/48Pb2Q9

    #ML #MLPlatform #CaseStudy

  3. [Part 5]
    💭 If you're reading this & you've been involved with developing an ML Platform, how did you approach the "centralize vs distributed" discussion? What worked? What failed?

    👇 Let me know in the comments below!

    #mlops #mlplatform #ai #strategy #dataops #dataengineering #devops #platformengineering #platformdesign #mlengineer

  4. ⚡ Startups in the earliest stages are in a really bad spot to be building a separate #MLplatform

    👉🏻 Want Future-proofing Architecture BUT Get Resume-Driven Development
    👉🏻 Want Greenfield Toolstack BUT Have no money or devs
    👉🏻 Try Using #DORA Metrics BUT Don’t Have Standardization On What Matters for #MLOps

    The focus for startups should be providing business value & GTM strategy, not a grandiose, vainglorious treatise on disitributed cloud design.

  5. RT @BazeleyMikiko: If you do build an #MLops #MLPlatform, only adopt metrics that:
    1. Your team can directly influence;
    2. Are appropriate to the level of engagement;
    3. Directly measure the behavior you’re trying to capture.

    #🐘 #platformengineering t.co/BTU2O5W520

  6. If you do build an #MLops #MLPlatform, only adopt metrics that:
    1. Your team can directly influence;
    2. Are appropriate to the level of engagement;
    3. Directly measure the behavior you’re trying to capture.

    #🐘 #platformengineering t.co/BTU2O5W520

  7. RT @BazeleyMikiko: Don’t build an #MLPlatform unless you're:

    ✅ Post early-stage startup;
    ✅ Can centralize ppl

  8. Anyone else feel that #mlops & #mlplatform teams feel a bit complicated, especially when mapping topologies?

    Oftentimes it seems that ML platforms & teams are either spun out of tooling teams (or complicated-subsystem teams) or as enabling teams (oftentimes ML engineers) and may occasionally begin to organize as platform teams.

    #teamtopologies

  9. Don’t build an #MLPlatform unless you're:

    ✅ Post early-stage startup;
    ✅ Can centralize ppl

  10. If the answer is similar to:
    1️⃣ ASAP
    2️⃣ Minimal
    3️⃣ Divorced
    4️⃣ We can't
    5️⃣ Less than 5

    Then your first step shouldn't be building an ML platform, it should be developing models or ML-drive product features using the simplest, tried & true patterns possible.

    #mlops #mlplatform #datascience #mlengineering #platformengineering #dataengineering #ai #mlinproduction