> As such I would prefer to keep using the carrotsearch generators

Works for me; I am cool with the added test dependency.

> On Dec 14, 2022, at 7:13 AM, Mike Adamson <madam...@datastax.com> wrote:
> 
> I have had a look at whether we could use the QuickTheories in our randomized 
> testing and come to the following conclusions:
> 
> Pros:
> 1) It has a very rich set of random generators out of the box.
> 2) It has a very powerful mechanism for generating customised randomized 
> datasets.
> 3) It is very pluggable within the constraints of its framework.
> 
> Cons:
> 1) The framework has to be used in a very specific way in order for it to 
> work. It does not allow for subsets of the framework to be used in isolation. 
> 2) The code hasn't been touched for 3 years. This is an observation as much 
> as anything but it does not appear to be being maintained at the moment.
> 
> The carrotsearch generators use a seeded Random to generate their values so 
> are also repeatable. It also provides a very rich set of random generators 
> that can be used in isolation of any other part of the framework. This 
> project is also being actively maintained.
> 
> As such I would prefer to keep using the carrotsearch generators. I have made 
> a change to the SAI testing that removes our usage of RandomizedTest from the 
> library and have stuck to just using the lower level random generators. We 
> already had a Randomization class in our test framework that provided a lot 
> of the RandomizedTest functionality (primarily the reporting on failed tests 
> of the random seed and the reuse of seeds) so using both made no sense.

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