Master 36 Machine Learning Models in 36 Minutes // ScikitLearn & XGBoost & XAI for Energy Prediction

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  • Опубликовано: 21 авг 2024

Комментарии • 39

  • @maryammiradi
    @maryammiradi  16 дней назад

    🙋🏻‍♀️Get Access to my 20+ Years Experience in AI: ⚡️Free guide: www.maryammiradi.com/free-guide
    ⚡️AI Training: www.maryammiradi.com/training

  • @sushantgarudkar108
    @sushantgarudkar108 Месяц назад +5

    Superb! Clear an concise without wasting time!

    • @maryammiradi
      @maryammiradi  Месяц назад +1

      @@sushantgarudkar108 Super glad to hear!! I hope you can use it for your data science Journey 👋

    • @sushantgarudkar108
      @sushantgarudkar108 Месяц назад +1

      @@maryammiradi Definitely your knowledge and work experience will help me as I am just starting my career in AI

    • @maryammiradi
      @maryammiradi  Месяц назад

      @@sushantgarudkar108 Let me know if you have any questions

  • @arianrahman4840
    @arianrahman4840 24 дня назад +1

    i was surprised once i noticed this is still a growing channel , the video quality is superb

    • @maryammiradi
      @maryammiradi  24 дня назад

      I am really glad you liked the video 👋

  • @nathandouieb
    @nathandouieb 29 дней назад +2

    Your patience in the way you explain each point always impresses me...If only my teachers had the same.

    • @maryammiradi
      @maryammiradi  28 дней назад

      Thanks alot and Glad to hear! If there are subjects in AI and Data Science that you are curious about and you need clarity about let me know.

  • @simonebenzi4189
    @simonebenzi4189 Месяц назад +2

    Thanks for the video, it's very well organized.
    However, you pinned down the best model, without doing some cross validation and hyperparameter tuning, that is crucial for ML models to avoid overfitting. Therefore picking the best model in this way can be misleading.
    You have chosen XGBoost, that might overfit the data.
    IMO would be really informative and useful if you could do a second part in which you show also how to tune XGboost with gridserch, optuna and bay. opt.
    Furthermore, a video with a comparison with XGBOOST; CATBOOST AND LIGHT GBM with their hyp tun will be very appreciated!
    Really looking forward to see the second part more "advanced" of this video.
    Thanks in advance.

    • @maryammiradi
      @maryammiradi  Месяц назад

      @simonebenzi4189 Thanks alot for your comment. All models are validated with cross validation. Perhaps you missed it. There is already Hyperparameter Tunning with Hyperopt for XGBOOST and GridSearch of ADABOOST and Logistics Regression in my other video. You can go that specific chapter. ruclips.net/video/i1L7qAV-_rY/видео.htmlsi=0qnLLCOE5DYYI7_f.
      Hyperparameter Tuning on all models would make the video insanely long but as you suggest I make a second half. And comparing XGBOOST CATBOOST and Light GBM with hyper parameters is now I am on list after your request 👋 Let me know if you have other questions

  • @jrvega79
    @jrvega79 Месяц назад +1

    Gran trabajo.🎉🎉

  • @dhruv1795
    @dhruv1795 Месяц назад +1

    thank you for this 👍

  • @ashraf_isb
    @ashraf_isb Месяц назад +1

    Welcome to RUclips! 🎉
    I'm thrilled to have you here, especially as my best follower on LinkedIn. Your insightful projects and sharing of knowledge has truly impressed me.
    Thanks a lot for the fantastic session! I've subscribed and can't wait for more awesome content. Thank you so much!

    • @maryammiradi
      @maryammiradi  Месяц назад

      Thanks alot for all the kind words and amazing that you know my posts from LinkedIn 👋

  • @gauravbhattacharya7788
    @gauravbhattacharya7788 Месяц назад +1

    Excellent informative video, i request you to make a end-to-end-project with open source feature stores for either real time series or recommendation system. No tutorial on yt is focusing on end-to-end projects with feature stores and real time data

    • @maryammiradi
      @maryammiradi  Месяц назад +1

      Great to hear that video was helpful to you. Thank you for suggestion about feature stores. Will definitely add feature store to one of my videos. Time series is already on my list. But not sure about Recommendations Systems though. Do you use them in your daily job?

    • @gauravbhattacharya7788
      @gauravbhattacharya7788 Месяц назад +1

      @@maryammiradi No really but want to learn them also if you can add model monitoring it would be extremly useful

    • @maryammiradi
      @maryammiradi  Месяц назад

      Model monitoring is good one! Thanks for the suggestion.

  • @Keeplearningandmoving
    @Keeplearningandmoving День назад +1

    Thank you for the great summary! Are the data imputation and scaling done separately for the training and testing data based on their respective values? Should the imputation and scaling of the testing data be based on the training data?

    • @maryammiradi
      @maryammiradi  21 час назад

      Glad to hear it was useful! So what you do always is to fit imputation and scaling to the Training and use apply that to the Training. So everything based on Training data idd. Test data needs to be treated as Unseen at all time.

    • @Keeplearningandmoving
      @Keeplearningandmoving 19 часов назад +1

      @@maryammiradi Thank you for the clarification! It makes sense to treat the testing data as unseen data and fit the imputation and scaling to the training data and apply the transformation parameters from the training data to both the training and testing data. Great content :-)

    • @maryammiradi
      @maryammiradi  18 часов назад

      @@Keeplearningandmoving Thanks alot!! Glad it is helpful 👋

  • @azmanhussin2804
    @azmanhussin2804 5 дней назад +1

    Kindly send me the guide. I'm a beginner in Python but have worked on DS using R.

    • @maryammiradi
      @maryammiradi  4 дня назад

      Great to hear! From R to Python is easy transition. Here you go you can find my free guide: www.maryammiradi.com/free-guide.
      And if you want to learn python, this tutorials can help you:
      ruclips.net/p/PLzMcBGfZo4-mFu00qxl0a67RhjjZj3jXm&si=Q74zDfz2T2jUJC-8

  • @Dheeraj-hv7vi
    @Dheeraj-hv7vi Месяц назад +1

    Hey I have a masters in data science from Italy I’m confuse whether I should join the jobs market or else I’ll try for PhD in Norway due to stipend and then join the Industry… what are you prospective on that as PhD in Europe is only 3 year shorter than USA and we are getting 2500 euros -3000(rest of EU)to 3500 euro stipend in Norway
    Would you like to do a video on this topic

    • @maryammiradi
      @maryammiradi  Месяц назад

      Sure! I will put this on my list of videos. About your question either you should join the job market or PhD is totally dependent on your character and your purpose.

    • @Dheeraj-hv7vi
      @Dheeraj-hv7vi Месяц назад

      @@maryammiradi I’m from a middle class family so money is important to me so was thinking of jobs but my thoughts are if I don’t do PhD after my masters maybe I’ll not be able to do it in older age.
      Also my reasoning was I get an edge in competitive Job market like quant researcher ,trader if I have a PhD vs having a data science masters degree from Italy

  • @sushantgarudkar108
    @sushantgarudkar108 Месяц назад +2

    Please send me the guide!

    • @maryammiradi
      @maryammiradi  Месяц назад +1

      Sure! Here you can download My free guide with data science roadmap and 100 Python libraries: www.maryammiradi.com/free-guide

    • @sushantgarudkar108
      @sushantgarudkar108 Месяц назад

      @@maryammiradi Thanks Mam!

  • @martirishikumar25
    @martirishikumar25 3 дня назад +1

    please send me the guide

    • @maryammiradi
      @maryammiradi  2 дня назад

      Sure! Here you go: www.maryammiradi.com/free-guide

  • @RajnishRanjan-gb8iq
    @RajnishRanjan-gb8iq Месяц назад +1

    please send me guide

    • @maryammiradi
      @maryammiradi  29 дней назад

      Of course! Here you go: www.maryammiradi.com/free-guide

  • @gabrielokundaye1502
    @gabrielokundaye1502 Месяц назад +1