1
0
Fork 0
mirror of https://gitlab.rlp.net/mobitar/ReCo.jl.git synced 2024-12-21 00:51:21 +00:00
No description
Find a file
2022-01-30 14:45:22 +01:00
analysis Added reward shaping plot 2022-01-30 04:38:57 +01:00
graphics Added reward shaping plot 2022-01-30 04:38:57 +01:00
src Added eigvals_ratio for centers 2022-01-30 14:45:22 +01:00
test Added Manifest for reproducibility 2022-01-24 22:08:22 +01:00
.gitignore Added Manifest for reproducibility 2022-01-24 22:08:22 +01:00
.JuliaFormatter.toml Fixed animation memory leak 2021-11-15 15:17:47 +01:00
Manifest.toml Fix OriginEnv 2022-01-29 17:39:31 +01:00
Project.toml Added reward normalization 2022-01-30 03:20:45 +01:00
README.adoc Updated README with instructions 2022-01-24 22:07:39 +01:00

= ReCo.jl

image:https://img.shields.io/badge/code%20style-blue-4495d1.svg[Code Style: Blue, link=https://github.com/invenia/BlueStyle]

**Re**inforcement learning of **co**llective behavior.

== Setup

The steps from the setup have to be followed before running anything in the following sections.

=== Launch Julia

To activate the environment, navigate to the main directory `/ReCo.jl` and then run the following to launch Julia:

[source, bash]
----
cd ReCo.jl
julia --threads auto
----

`auto` automatically sets the number of threads to use. If you want to use a specific number `N` of threads, replace `auto` with `N`.

=== Acitivating environment

After launching Julia, the package environment has to be activated by running the follwing in the REPL:

[source, julia]
----
using Pkg
Pkg.activate(".")
----

=== Install dependencies
After activating the package environment, run the follwing to install the package dependencies:

[source, julia]
----
Pkg.instantiate()
----

== Run simulation
// TODO

== Run reinforcement learning
// TODO

== Run analysis

After running the following command blocks in the REPL, the output can be found in the directory `exports/graphics`.

=== Mean squared displacement

[source, julia]
----
include("analysis/mean_squared_displacement.jl")
run_msd_analysis()
run_random_walk()
----

=== Radial distribution function

[source, julia]
----
include("analysis/radial_distribution_function/radial_distribution_function.jl")
run_radial_distribution_analysis()
----