Introduction to MLOps and Vertex Pipelines

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  • Опубликовано: 26 окт 2024

Комментарии • 28

  • @stanwest8103
    @stanwest8103 3 года назад +6

    Excellent job Priyanka. Went through all eight Vertex videos and found them very engaging and informative. Your enthusiasm is infectious. Are you actually writing backwards, or being left handers helps - it looks magical. Very artist like writing. When showing your screen can you try using a more prominent icon for the mouse pointer. I have seen videos with a yellow circle which is easier to follow. Thanks.

  • @TheRedValue
    @TheRedValue 3 года назад +6

    I'm impressed at your ability to draw and write backwards :O

    • @TheRedValue
      @TheRedValue 3 года назад +1

      Also: I just released my big AI project, which means it is one of those 1 out of 10 that did make it into production :D

    • @infiniteloop5449
      @infiniteloop5449 Год назад

      its crazy mad skills, who can write in mirror image form!

  • @savchenkooleksandr2191
    @savchenkooleksandr2191 2 года назад +2

    Many times I came to the conclusion that instructions for various Google services have a rather poor description: 1. information is often unstructured 2. too many details that lead away from the main line 3. the same things are named differently. 4. there is no 'hello, world' stage, followed by deepening into details. This series of videos surprised me. Perhaps watching a video is much better than reading instructions. Google should take a cue from this lecturer! 👍👋

  • @yohannpitrey2386
    @yohannpitrey2386 20 дней назад

    Wait were you writing everything mirrored or were you wearing a top with a mirrored Google Cloud logo? 🤯❤

  • @Khaled.Jallad
    @Khaled.Jallad Год назад

    Think you that was a helpful video on how to implement the workflow on mlops

  • @itsvike
    @itsvike 3 года назад +3

    very elaborative and brilliant presentation as always!

  • @Love_and_wisdom
    @Love_and_wisdom 3 года назад +2

    Thanks for the video! Getting started with GCP !

  • @simonmitnick3339
    @simonmitnick3339 2 года назад +1

    each step runs in a reproducible, auditable, cost-effective and a scalable way 💯

  • @mohanvoleti
    @mohanvoleti 2 года назад +1

    Super explanation

  • @aslihanasadov4714
    @aslihanasadov4714 2 года назад

    Brilliant and engaging presentation!

  • @dheer211
    @dheer211 3 года назад

    Very good introduction to MLOps

  • @mwdcodeninja
    @mwdcodeninja 3 года назад +1

    How long did it take to learn to write mirrored? Great talk!

    • @254gahemd
      @254gahemd 3 года назад +3

      Not sure how committed google is. But I expect she is wearing a mirrored logo shirt, writing normally and then the video is mirrored in post. Hence (possibly) we see ring on the right hand and she is left handed.

  • @user-wr4yl7tx3w
    @user-wr4yl7tx3w Год назад

    Cool!

  • @flyingtiger741
    @flyingtiger741 2 года назад

    Great Video and content, not to demean but Videos will be better off without any human visuals, only content+audio is sufficient.

  • @ReshuBisen-c8v
    @ReshuBisen-c8v Год назад

    I have successfully trained a model and can fetch predictions from an endpoint. However, I'm encountering an error when attempting to use the model in the following code:
    python
    Copy code
    model = TextGenerationModel.from_pretrained("*********")
    The error message I'm receiving is:
    vbnet
    Copy code
    NotFound: 404 Publisher Model `publishers/google/models/********` is not found.
    Could you please provide guidance on how to correctly use my trained model in this code?
    Additionally, I'm interested in querying my CSV file using this model. Could you please provide a solution for this as well?

  • @bk3460
    @bk3460 2 года назад

    Sorry for a stupid question, but how 9/10 of projects came to 87%, but not to 90%?

    • @cbear2166
      @cbear2166 2 года назад

      rounding to make a point.

  • @connierharrison8336
    @connierharrison8336 Год назад

    Turn on sound please

  • @nicholasroth1608
    @nicholasroth1608 Год назад +1

    I disagree with the implication at the start of the video that most ML models fail to launch due to engineering issues. In my experience, it's always been that the stakeholders don't need the model anymore or that there's not enough signal in the data for a model to predict. The impact from those common situations can be mitigated by building a PoC and failing early if the effort is going to fail, validating the product and need before building the big production ML pipeline.

    • @jean4j_
      @jean4j_ Год назад

      Agreed! 100%
      If it's decided that the model does bring a good business value, it's definitely do-able to re-write the algorithm (with the help of software engineers if needed) to have a proper ML pipeline.
      It's more a business problem than a software problem in my view.
      But sure it's always better to produce a quality software from the start

  • @sanjumanna5007
    @sanjumanna5007 3 года назад

    ❤️

  • @HansHjelm
    @HansHjelm 3 года назад +1

    Wouldn't that be more like 1/8?