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kaggler-tv / kaggler-tv-schedule

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DISCLAIMER

Kaggler TV is not affiliated with Kaggle Inc.

Kaggler TV

Made by Kagglers, for Kagglers.

Kaggler TV is a YouTube Channel that shares about machine learning competitions and data science career development.

This repository is to share channel's video release schedule and receive feedbacks from users.

To request a content, please create an issue and describe what you'd like to watch and learn.

SCHEDULE

Introduction

Competition

Skills for Data Scientists

Data Science Career Development

INFORMATION

OTHER RESOURCES

KAGGLE/DS YOUTUBE CHANNELS

KAGGLE/DS COURSES

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