Kishan Manani - Feature Engineering for Time Series Forecasting | PyData London 2022

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  • čas přidán 9. 07. 2024
  • Kishan Manani present:
    Feature Engineering for Time Series Forecasting
    To use our favourite supervised learning models for time series forecasting we first have to convert time series data into a tabular dataset of features and a target variable. In this talk we’ll discuss all the tips, tricks, and pitfalls in transforming time series data into tabular data for forecasting.
    Github/Slides: github.com/KishManani/PyDataL...
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Komentáře • 47

  • @ninjaturtle205
    @ninjaturtle205 Před rokem +23

    thank you thank you. This information is skipped out in most machine learning courses, and no one will teach you this. In practice, a lot of data has temporal nature, while all along you only learned how to classify cats and dogs, and regress house pricess.

  • @lashlarue7924
    @lashlarue7924 Před 7 měsíci +5

    Thank you. This was 43 minutes very well spent.

  • @julien957
    @julien957 Před rokem +10

    Genius. He Makes python and time series almost easy to understand.

  • @anirudhsharma3879
    @anirudhsharma3879 Před 6 měsíci

    Amazing dump of knowledge, I have multiple times came back to this video

  • @duscio
    @duscio Před rokem +2

    Great Presentation ! Interesting and clear

  • @youknowmyname12345
    @youknowmyname12345 Před rokem +2

    Very good talk. The presenter is a great teacher!

  • @olegkazanskyi9752
    @olegkazanskyi9752 Před 5 měsíci

    This is a truly useful session. Thank you for sharing the knowledge!

  • @user-lo1fb6to8z
    @user-lo1fb6to8z Před rokem +2

    Excellent presentation. Great work Kishan

  • @Xaphanius
    @Xaphanius Před 2 lety +1

    Great presentation!

  • @shivamgoel0897
    @shivamgoel0897 Před 11 měsíci

    Amazing! So easy to understand.

  • @bitzelcortez4011
    @bitzelcortez4011 Před 2 lety +1

    Excellent talk!

  • @georgiosmitrentsis6171
    @georgiosmitrentsis6171 Před 2 lety +1

    Great talk!

  • @14loosecannon
    @14loosecannon Před rokem +2

    Really informative talk!

  • @DiscomongoEGE
    @DiscomongoEGE Před rokem

    Thank you very much. Great talk

  • @5112vivek
    @5112vivek Před rokem

    I will checkout these libraries. Very informative, thanks

  • @wexwexexort
    @wexwexexort Před rokem +1

    Fantastic!

  • @zakkyang6476
    @zakkyang6476 Před 8 měsíci

    finally, someone can articulate this topic well...

  • @GandelfTheGrey
    @GandelfTheGrey Před 2 lety +1

    Great talk thanks

  • @laizerLL572
    @laizerLL572 Před rokem +1

    Hi Am so grateful for this tutorial

  • @user-cy6ck1vy5t
    @user-cy6ck1vy5t Před 8 měsíci +1

    dude is a PhD for a reason, awesome stuff god damn

  • @user-cy6ck1vy5t
    @user-cy6ck1vy5t Před 8 měsíci +1

    this is some sysly good stuff!

  • @HEYTHERE-ko6we
    @HEYTHERE-ko6we Před rokem +8

    This is by far one of the best wholesome videos on time series forecasting!!! loved it

    • @hp5072
      @hp5072 Před rokem +2

      The word wholesome doesn't mean what you think it means :) Did you mean comprehensive or extensive?

    • @wexwexexort
      @wexwexexort Před 8 měsíci

      ​@@hp5072what does it mean

  • @onuragmaji
    @onuragmaji Před 8 měsíci

    Great talk hope will get more contents like that on Practical TS

  • @yuh850321
    @yuh850321 Před rokem +1

    Great talk

  • @aakashnandrajog7035
    @aakashnandrajog7035 Před rokem +1

    Amazing

  • @solvem_probler
    @solvem_probler Před 3 měsíci

    Nice talk

  • @mingilin1317
    @mingilin1317 Před rokem +3

    I have a question. If I have a time series data for a market, and the data is from 2012 to 2022.
    now I need to forcast the number of customer that visit the store.
    But from 2020 to 2022 ,because of COVID19, the number of customer has drop a lot.
    for this case, If I use last 30% data(from 2019 to 2022) to testing.
    Model can't get any data that influences by COVID19 when model training (all of them use to test)
    Isn't that make forcast mape very high? how should I do for this case? (sorry for my poor english)

  • @satyakiray8588
    @satyakiray8588 Před rokem +1

    excellent and very informative presentation. Will definitely checkout darts and sktime

  • @kaidendubois
    @kaidendubois Před 2 lety +2

    Super helpful presentation, thank you, will definitely be checking out your course!

    • @TraininData
      @TraininData Před rokem

      Here is the link, just in case ;) www.trainindata.com/p/feature-engineering-for-forecasting

  • @yogiekusumah1148
    @yogiekusumah1148 Před rokem +1

    Is anybody ever compared model result using same dataset and same parameters from sktime and Darts? for example ARIMA model from both packages.
    I've try it, and both models gave a different MAPE result. I hope i have made a mistake in my code.

  • @wolpumba4099
    @wolpumba4099 Před 3 měsíci

    *Abstract*
    This talk explores how to adapt machine learning models for time
    series forecasting by transforming time series data into tabular
    datasets with features and target variables. Kishan Manani discusses
    the advantages of using machine learning for forecasting, including
    its ability to handle complex data structures and incorporate
    exogenous variables. He then dives into the specifics of feature
    engineering for time series, covering topics like lag features, window
    features, and static features. The talk emphasizes the importance of
    avoiding data leakage and highlights the differences between machine
    learning workflows for classification/regression and forecasting
    tasks. Finally, Manani introduces useful libraries like Darts and
    sktime that facilitate time series forecasting with tabular data and
    provides practical examples.
    *Summary*
    *Why use machine learning for forecasting? (**1:25**)*
    - Machine learning models can learn across many related time series.
    - They can effectively incorporate exogenous variables.
    - They offer access to techniques like sample weights and custom loss functions.
    *Don't neglect simple baselines though! (**3:45**)*
    - Simple statistical models can be surprisingly effective.
    - Ensure the uplift from machine learning justifies the added complexity.
    *Forecasting with machine learning (**4:15**)*
    - Convert time series data into a table with features and a target variable.
    - Use past values of the target variable as features, ensuring no data leakage from the future.
    - Include features with known past and future values (e.g., marketing spend).
    - Handle features with only past values (e.g., weather) by using alternative forecasts or lagged versions.
    - Consider static features (metadata) to capture differences between groups of time series.
    *Multi-step forecasting (**8:07**)*
    - Direct forecasting: Train separate models for each forecast step.
    - Recursive forecasting: Train a one-step ahead model and use it repeatedly, plugging forecasts back into the target series.
    *Cross-validation: Tabular vs Time series (**11:32**)*
    - Randomly splitting data is inappropriate for time series due to temporal dependence.
    - Split data by time, replicating the forecasting process for accurate performance evaluation.
    *Machine learning workflow (**13:00**)*
    - Time series forecasting workflow differs significantly from classification/regression tasks.
    - Feature engineering and handling vary at predict time depending on the multi-step forecasting approach.
    *Feature engineering for time series forecasting (**14:47**)*
    - Lag features: Use past values of target and features, including seasonal lags.
    - Window features: Compute summary statistics (e.g., mean, standard deviation) over past windows.
    - Nested window features: Capture differences in various time scales.
    - Static features: Encode categorical metadata using target encoding, being mindful of potential target leakage.
    *Overview of some useful libraries (**27:01**)*
    - tsfresh: Creates numerous time series features from a data frame.
    - Darts and sktime: Facilitate forecasting with tabular data and offer functionalities like recursive forecasting and time series cross-validation.
    *Forecasting with tabular data using Darts (**28:04**)*
    - Example demonstrates forecasting with lag features and future known features on single and multiple time series.
    disclaimer: i used gemini 1.5 pro to summarize the youtube transcript.

  • @5112vivek
    @5112vivek Před rokem +1

    how is y_train_all defined in the last example?

  • @AhmedThahir2002
    @AhmedThahir2002 Před 9 měsíci

    Hi, does anyone know how to implement the recursive forecasting that he did in Darts using sktime. I couldn't really find an intuitive explanation online.

  • @neo_otaku_gamer
    @neo_otaku_gamer Před rokem +1

    thoughts on using TFT model for multi time series forecasting

  • @pranavkhatri9564
    @pranavkhatri9564 Před 10 měsíci

    can we perform this with stock data with models such as Linear Regression ?

  • @onlineschoolofmath37
    @onlineschoolofmath37 Před 6 měsíci

    Awesome lecture! I just have one question @32:38, Kishan mentions that we may have different time indexes for different groups can be different which is fine. But the original consolidated data (all groups included) has continuous time stamps whereas when we consider different groups, there may be gaps in the time stamps. Would you still consider them as time series? Will the rest of the process work normally under these circumstances?

  • @Neilstube356
    @Neilstube356 Před 2 lety +2

    Great talk! How would account for availability in your model? For example let’s say a SKU was out of stock for a portion of the training period. This could result in the sale lag feature being low for the out of stock SKU and high for substitute SKUs that were in stock.

    • @hurfable
      @hurfable Před rokem +2

      you can create a dummy boolean variable feature.

  • @aliwaheed906
    @aliwaheed906 Před 2 lety +6

    Very informative and intriguing talk.
    I've been using SARMIAX and things like fbprophet for time series forecast.
    I have a question about the value of the ML approach. Considering there is a host of things you need to account for while modeling a time-series problem as an ML problem, is it actually that significantly better than traditional algorithms? Is this production-grade stuff or is this in early experimental stages?
    I must admit the ML approach sounds way more interesting than what I've been doing for the past few years.

    • @umitkaanusta
      @umitkaanusta Před rokem

      *by ML models, I mean the tree based ML models here

  • @py.master
    @py.master Před 9 měsíci

    if you are imputing mean from your training set in place of a missing datapoint, does that mean that the imputed datapoint does not change your model estimation anyway as predicted model passes through mean of variables anyway? I dont think it is information leakage in this way, it is just saying ignore this datapoint

  • @d.p.1980
    @d.p.1980 Před 3 měsíci

    Enyone tried to apply this DART model on real world data? My MAPE score show me 26% ;-(

  • @marciamarquene5753
    @marciamarquene5753 Před 8 měsíci

    1:41 gente vê a gente vê a gente

  • @masaeed44
    @masaeed44 Před 9 měsíci

    Have you used Darts ever? From Darts I got "ValueError: `lags` must be strictly positive. Given: -1."