Nov. 19, 2022, 10:18 p.m. | /u/bilalak

Data Science www.reddit.com

Hello. I did search on the community but did not find much information about this subject. I would like to discuss with you the importance of adopting a platform for ML projects life cycle and whether the platform might be really a block for junior practitioners.

For more than two decades CRISP-DM was the de-facto standard for data science process life cycle. There was other alternatives but it seems it gained popularity as it covers the end to end steps …

datascience life life cycle machine machine learning

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