hasklepias: embedded DSL for defining epidemiologic cohorts

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Please see the README on GitHub at https://github.com/novisci/asclepias#readme

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Versions 0.4.2, 0.4.3, 0.4.4, 0.5.0, 0.6.0, 0.6.1, 0.7.0, 0.7.1, 0.8.3, 0.12.0, 0.13.0, 0.13.1, 0.14.0, 0.15.0, 0.15.1, 0.15.2, 0.16.0, 0.16.1, 0.17.0, 0.17.0, 0.17.1, 0.18.0, 0.20.0
Change log ChangeLog.md
Dependencies aeson (>= && <2), base (==4.14.*), bytestring (==, cmdargs (==0.10.21), co-log (==, containers (==, contravariant (>=1.4), flow (==1.0.22), ghc-prim (==0.6.1), hasklepias, interval-algebra (==0.10.2), lens (==5.0.1), lens-aeson (==1.1.1), mtl (==2.2.2), nonempty-containers (==, QuickCheck, safe (>=0.3), semiring-simple (==, tasty (==1.4.1), tasty-hunit (==, text (==, time (>=1.11), tuple (==, unordered-containers (==, vector (==, witherable (==0.4.1) [details]
License BSD-3-Clause
Copyright NoviSci, Inc
Author Bradley Saul
Maintainer bsaul@novisci.com
Category Data Science
Home page https://github.com/novisci/asclepias/#readme
Bug tracker https://github.com/novisci/asclepias/issues
Source repo head: git clone https://github.com/novisci/asclepias
Uploaded by bradleysaul at 2021-08-27T17:02:45Z




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Readme for hasklepias-0.17.0

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Project Asclepias

Asclepias (n):

  1. The genus of North American milkweeds, named after Linnaeus after the greek god of healing, Asclepius.
  2. A language and software project for defining and deriving features from temporally ordered events using the interval algebra.

Current status

The initial versions of hasklepias will focus on the ability to derive features from a sorted collection of events. At this time, developers can experiment with feature definitions (see the examples directory).

Getting started

See the manual and the examples