|almost 4 years ago||1 day ago|
|MIT License||MIT License|
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We haven't tracked posts mentioning riprova yet.
Tracking mentions began in Dec 2020.
Curious to hear your life goals
1 project | reddit.com/r/intj | 26 Apr 2021
Start with that you know, if you know Excel well, why not start there? I usually recommend Python if you’re new to programming, then you can pick whatever additional libraries you think would benefit the model, and the syntax is highly forgiving. Sounds to me like you’re describing a pretty big finite state machine, with 288 states. Once you encode your idea and some tests, you’ll have the vocabulary (and means) to expand to other model variations such as applying probabilities to different transition states, and opening a whole world of probabilistic models and hidden Markov models, but gotta walk before running :)
Behavior Trees in Robotics and AI
1 project | news.ycombinator.com | 25 Mar 2021
Finite State Machines
6 projects | news.ycombinator.com | 22 Feb 2021
BTW, did you check this?6 projects | news.ycombinator.com | 22 Feb 2021
I've used https://github.com/pytransitions/transitions in production python systems.
It worked great but the system was fairly simple and wasn't changed often. In my opinion, it's nicer when the state machine can be defined as configuration (in XML or whatever) and then generate the code. Unfortunately that's not possible with vanilla pytransitions, but I suppose you could build a layer on top of it.
Advent of Code 2020: Day 25 with Generators in Python
2 projects | dev.to | 24 Dec 2020
Advent of Code 2020: Day 02(a) using finite state machines
1 project | dev.to | 4 Dec 2020
In Python's ecosystem of libraries, there's a nice one called transitions (which I've used in my robotics work). transitions (as the name suggests) lets you define your state machines more declaratively in terms of transitions between states, the rules that govern those transitions, and the triggers that cause these transitions to happen.
What are some alternatives?
Tenacity - Retrying library for Python
blinker - A fast Python in-process signal/event dispatching system.
xstate-python - XState for Python
cppimport - Import C++ files directly from Python!
attrs - Python Classes Without Boilerplate
Blinker Herald - The Blinker Herald includes helpers to easily emit signals using the excellent blinker library.
Pychievements - The Python Achievements Framework!
protoactor-go - Proto Actor - Ultra fast distributed actors for Go, C# and Java/Kotlin
Tryton - Mirror of Tryton Client