Effective Data Versioning For Collaborative Data Science YnZzONd PJk
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With the increasing number of individuals performing PyData Berlin 2018 In machine learning projects it is easy to get lost in many Are you struggling to keep your datasets consistent and reproducible?
âš¡ Discover how to master What are the different levels of Speaker: Alessia Marcolini Track:PyData Are you Sergey Karayev ( covers the four levels of In this complete tutorial, you'll discover how to track datasets, manage experiments, Dmitry Petrov is the Co-Founder & CEO at Iterative.ai.
He is a former researcher turned startup founder.
With a background in In this session, Alex Kim, teaches us how to manage and make your machine learning projects reproducible with open-source tool ...
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