Added README to GenericDist library

This commit is contained in:
Ozzie Gooen 2022-03-27 21:07:41 -04:00
parent 3f678e24a1
commit 80b33fcd84
4 changed files with 35 additions and 4 deletions

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@ -28,8 +28,6 @@ let normalize = (t: t) =>
| #SampleSet(_) => t
}
// let isNormalized = (t:t) =>
let operationToFloat = (toPointSet: toPointSetFn, fnName, t: genericDist): result<float, error> => {
let symbolicSolution = switch t {
| #Symbolic(r) =>

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@ -21,6 +21,7 @@ type outputType = [
| #Dist(genericDist)
| #Error(error)
| #Float(float)
| #String(string)
]
let fromResult = (r: result<outputType, error>): outputType =>
@ -77,7 +78,7 @@ let rec run = (extra, fnName: operation): outputType => {
GenericDist.operationToFloat(toPointSet, fnName, dist)
|> E.R.fmap(r => #Float(r))
|> fromResult
| #toString => #Error(GenericDist_Types.NotYetImplemented)
| #toString => dist |> GenericDist.toString |> (r => #String(r))
| #toDist(#normalize) => dist |> GenericDist.normalize |> (r => #Dist(r))
| #toDist(#truncate(left, right)) =>
dist

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@ -0,0 +1,32 @@
# Generic Distribution Library
This library provides one interface to generic distributions. These distributions can either be symbolic, point set (xy-coordinates of the shape), or sample set (arrays of random samples).
Different internal formats (symbolic, point set, sample set) allow for benefits and features. It's common for distributions to be converted into either point sets or sample sets to enable certain functions.
In addition to this interface, there's a second, generic function, for calling functions on this generic distribution type. This ``genericOperation`` standardizes the inputs and outputs for these various function calls. See it's ``run()`` function.
Performance is very important. Some operations can take a long time to run, and even then, be inaccurate. Because of this, we plan to have a lot of logging and stack tracing functionality eventually built in.
## Diagram of Distribution Types
```mermaid
graph TD
A[Generic Distribution] -->B{Point Set}
A --> C{Sample Set}
A --> D{Symbolic}
B ---> continuous(Continuous)
B ---> discrete(Discrete)
B --> mixed(Mixed)
continuous -.-> XYshape(XYshape)
discrete -.-> XYshape(XYshape)
mixed -.-> continuous
mixed -.-> discrete
D --> Normal(Normal)
D --> Lognormal(Lognormal)
D --> Triangular(Triangular)
D --> Beta(Beta)
D --> Uniform(Uniform)
D --> Float(Float)
D --> Exponential(Exponential)
D --> Cauchy(Cauchy)
```