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docs: add key terms to use case intros/tutorial and what is dvc? docs [SEO] #1806

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Reverts to the original 1st sentence, adds 2nd sentence to paragraph 2
jeremydesroches committed Oct 3, 2020
commit dd880e499a196e08efeec912d617c2c67e245b8a
6 changes: 3 additions & 3 deletions content/docs/user-guide/what-is-dvc.md
Original file line number Diff line number Diff line change
@@ -8,9 +8,9 @@ of new [features](#core-features) while reusing existing skills and intuition.

![](/img/reproducibility.png) _DVC codifies data and ML experiments_

The same way that software engineers use Git, data scientists can use DVC to
apply a regular flow to project sharing and collaboration (commits, branching,
pull requests, etc.). Using Git and DVC, data science and machine learning teams
Data science experiment sharing and collaboration can be done through a regular
Git flow (commits, branching, pull requests, etc.), the same way it works for
software engineers. Using Git and DVC, data science and machine learning teams
can version experiments, manage large datasets, and make projects reproducible.

## Core Features