Information
# Overview
Xitari is a fork of the Arcade Learning Environment v0.4.
# Original Readme.txt from ALE 0.4, with tidy up by Marc G. Bellemare
This is the 0.4 release of the Arcade Learning Environment (ALE), a platform
designed for AI research. ALE is based on Stella, an Atari 2600 VCS emulator.
More information and ALE-related publications can be found at
http://www.arcadelearningenvironment.org
We encourage you to use the Arcade Learning Environment in your research. In
return, we would appreciate if you cited ALE in publications that rely on
it (BibTeX entry at the end of this document).
Feedback and suggestions are welcome and may be addressed to any active member
of the ALE team.
Enjoy,
The ALE team
# List of command-line parameters
Execute ./ale -help for more details; alternatively, see documentation
available at http://www.arcadelearningenvironment.org.
-random_seed [n] -- sets the random seed; defaults to the current time
-game_controller [fifo|fifo_named|internal] -- specifies how agents interact
with ALE; see Java agent documentation for details
-config [file] -- specifies a configuration file, from which additional
parameters are read
-output_file [file] -- if set, standard output is redirected to the given file.
Do not use in conjunction with -game_controller fifo_named
-run_length_encoding [false|true] -- determine whether run-length encoding is
used to send data over pipes; irrelevant when -game_controller internal is
set
-max_num_frames_per_episode [n] -- sets the maximum number of frames per
episode. Once this number is reached, a new episode will start. Currently
implemented on a per-agent basis with internal agents, or for all
agents when using pipes (fifo/fifo_named)
# Sample agents command-line parameters
These parameters are only relevant when using one of the sample agents under
src/agents.
-max_num_episodes [n] -- sets the maximum number of episodes
-max_num_frames [n] -- sets the maximum number of frames (independent of how
many episodes are played)
# Building
xitari relies on cmake and make.
To compile source code, run:
cmake .
make install
# Citing The Arcade Learning Environment: An Evaluation Platform for General Agents
If you use ALE in your research, we ask that you please cite the following.
M. G. Bellemare, Y. Naddaf, J. Veness and M. Bowling. The Arcade Learning Environment: An Evaluation Platform for General Agents, Journal of Artificial Intelligence Research, Volume 47, pages 253-279, 2013.
In BibTeX format:
@ARTICLE\{bellemare13arcade,
author = \{\{Bellemare\}, M.~G. and \{Naddaf\}, Y. and \{Veness\}, J. and \{Bowling\}, M.\},
title = \{The Arcade Learning Environment: An Evaluation Platform for General Agents\},
journal = \{Journal of Artificial Intelligence Research\},
year = "2013",
month = "jun",
volume = "47",
pages = "253--279",
\}