CatBoostML's profile picture. Official account for CatBoost, @yandexcom's open-source gradient boosting library https://github.com/catboost/catboost

CatBoostML

@CatBoostML

Official account for CatBoost, @yandexcom's open-source gradient boosting library https://github.com/catboost/catboost

#catboost_tipsntricks CatBoost sets a learning rate by looking at the number of iterations&objects in the trainset. In today's video, Nikita explains how to use built-in interactive learning curves to tune LR & iterations and improve model performance. youtu.be/O2OJ_JWYV0I


#catboost_tipsntricks Consoles are not only for Jupyter&Python😸 In today's video Kate explains how to use main CatBoost features from CLI. This simple but powerful interface allows you to use practically anywhere and improve ml pipelines. youtu.be/m3E35snIrAM


CatBoostML reposted

Gradient boosting methods have been proven to be an important strategy. This article with @neptune_ai aims to investigate and compare the efficiency of three gradient methods focusing primarily on @CatBoostML. bit.ly/3fGFSjS


#catboost_tipsntricks 📹Model prediction interpretation in a human-readable form is a key for making a great machine learning system. In this video Nikita shows how to use SHAP values to understand model predictions youtu.be/RNT1o2gu5Ms

CatBoostML's tweet card. CatBoost | Interpret CatBoost models: built-in tools for understand...

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CatBoost | Interpret CatBoost models: built-in tools for understand...


Technical notice⚠️ In the next release, we will stop publishing CatBoost artifacts for Python 2.7 & 3.5 versions. If you still need CatBoost built for 2.7 or 3.5 - you can build it from sources. If you have any questions - contact us here, in telegram or via GitHub issues!😺


#catboost_tipsntricks Feature selection is a crucial part of data engineering & ML. In today's video, Ivan talks about CatBoost's built-in feature selection function. It can help you speed up training and reduce overfitting.🚀 youtu.be/iuRGv31mcuI

CatBoostML's tweet card. CatBoost | Feature Selection: speedup training and decrease overfit...

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CatBoost | Feature Selection: speedup training and decrease overfit...


#catboost_tipsntricks If you use GBDT models in production, don't miss that video😺 Ekaterina Ermishkina explains how to apply CatBoost models in different formats and environments: native binary format, CoreML, PMML, ONNX, in Java, Rust, NodeJS and others youtu.be/fpUEoy60x24

CatBoostML's tweet card. CatBoost | Apply your models everywhere: using and exporting models...

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CatBoost | Apply your models everywhere: using and exporting models...


#catboost_tipsntricks In today's video, Nikita Dmitriev talks about object importance and how you can use it to detect and drop noise objects and boost the quality of your models🚀Stay tuned for the next episode! 😺 youtu.be/ce1VULptNWQ

CatBoostML's tweet card. CatBoost | Object importance: detect and drop noise objects to...

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CatBoost | Object importance: detect and drop noise objects to...


We've recorded a series of short videos to boost your CatBoost knowledge, so stay tuned😺 In today's video, Ivan Lyzhin explains why you should try different tree grow policies. youtube.com/watch?v=lhaOYw…

CatBoostML's tweet card. CatBoost | Different tree shapes: discussing quality and speed...

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CatBoost | Different tree shapes: discussing quality and speed...


🎇We switched main url to new documentation! Old documentation would be available at catboost.ai/docs-old/ for next two weeks. If you'll find some problems with new documentation and will need old docs available - contact us here or in telegram t.me/catboost_en 🐱


We'd like to invite Russian-speaking followers to our 100₂th online birthday party. Read more and register now: events.yandex.ru/events/catboos… And don't worry! We are planning to translate the recorded video into English and publish links later here. Stay tuned! 😸


Good news, everyone! We've refactored CatBoost documentation and are inviting you to test it here: catboost.ai/en/docs-beta/ And from now on documentation sources in Yandex Flavored Markdown can be easily found in our repo github.com/catboost/catbo… We are waiting for you PRs!😺


#CatBoostPoll CatBoost already supports distributed training on Apache Spark and by separate processes from CLI. If you'd like CatBoost to support your favourite framework - please vote or reply with your variant😺


CatBoostML reposted

New paper: we tested how different ML methods perform on predicting administrative errors in US unemployment insurance data. Turns out: @CatBoostML is more accurate, along several measures, than every deep learning model tested. (open access for two weeks) dl.acm.org/doi/10.1145/34…

jhimmelreich's tweet image. New paper: we tested how different ML methods perform on predicting administrative errors in US unemployment insurance data. Turns out: @CatBoostML is more accurate, along several measures, than every deep learning model tested. (open access for two weeks) dl.acm.org/doi/10.1145/34…

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