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Review - TFS/VSTS - Great Product, Ideal for Small Development Shops

This is a report a short review I provided for G2 regarding TFS:

What do you like best?

If you use Visual Studio for development, TFS, or its online equivalent VSTS, you can have a fairly seamless end-to-end integration. Out of the box, it provides code management, testing, work hierarchy in agile formats, automated build, and deployment.

What do you dislike?

Branching and merging can be a bit painful, in that it needs to be planned, and is not natively part of the process. Code review also needs to be planned and only recently has it become part of the process.

Recommendations to others considering the product

My only concern regarding TFS and VSTS is that Microsoft itself recommends using Git.

What business problems are you solving with the product? What benefits have you realized?

In my current role, I've joined a shop that has application development as secondary to their role of desktop OS and app deployment/maintenance, so their code management practices are minimal. I am working towards getting all of their code into TFS, converting much of it to newer technologies, and using TFS to automate the process of build and deployment, although the near-term target is continuous integration.

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