Difference between revisions of "A0lite"
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'''A0lite''',<br/> | '''A0lite''',<br/> | ||
a didactic [[UCI]] compliant [[Neural Networks|neural network]] chess engine by [[Dietrich Kappe]], written in [[Python]], released in March 2020 under the permissive [[Massachusetts Institute of Technology#License|MIT License]] <ref>[http://www.talkchess.com/forum3/viewtopic.php?f=2&t=73495 New engine: a0lite] by [[Dietrich Kappe]], [[CCC]], March 28, 2020</ref>. | a didactic [[UCI]] compliant [[Neural Networks|neural network]] chess engine by [[Dietrich Kappe]], written in [[Python]], released in March 2020 under the permissive [[Massachusetts Institute of Technology#License|MIT License]] <ref>[http://www.talkchess.com/forum3/viewtopic.php?f=2&t=73495 New engine: a0lite] by [[Dietrich Kappe]], [[CCC]], March 28, 2020</ref>. | ||
− | A0lite applies [[UCT|upper confidence bounds]] to [[Monte-Carlo Tree Search|Monte-Carlo trees]], and requires the installalion of ''badgyal''[https://en.wikipedia.org/wiki/PyTorch PyTorch] net evaluator, by default using ''MeanGirl-8 (32x4)'' net on CPU <ref>[https://github.com/dkappe/a0lite/blob/master/README.md a0lite/README.md at master · dkappe/a0lite · GitHub</ref>. | + | A0lite applies [[UCT|upper confidence bounds]] to [[Monte-Carlo Tree Search|Monte-Carlo trees]], and requires the installalion of ''badgyal''[https://en.wikipedia.org/wiki/PyTorch PyTorch] net evaluator, by default using ''MeanGirl-8 (32x4)'' net on CPU <ref>[https://github.com/dkappe/a0lite/blob/master/README.md a0lite/README.md at master · dkappe/a0lite · GitHub]</ref>. |
=See also= | =See also= |
Revision as of 13:40, 11 August 2020
A0lite,
a didactic UCI compliant neural network chess engine by Dietrich Kappe, written in Python, released in March 2020 under the permissive MIT License [1].
A0lite applies upper confidence bounds to Monte-Carlo trees, and requires the installalion of badgyalPyTorch net evaluator, by default using MeanGirl-8 (32x4) net on CPU [2].
See also
Forum Posts
- New engine: a0lite by Dietrich Kappe, CCC, March 28, 2020
- a0lite problems with badygal configuration etc. by Norbert Raimund Leisner, CCC, June 03, 2020
External Links
Engine
- GitHub - dkappe/a0lite: A neural net chess engine in 95 lines of python
- GitHub - dkappe/badgyal: Simple pytorch net evaluator with Bad Gyal 8 and Mean Girl 8 net included
- GitHub - joergoster/a0lite: A neural net chess engine in 95 lines of python
Misc
- Bad Gyal from Wikipedia
- Status Quo - Mean Girl (1971), YouTube Video
References
- ↑ New engine: a0lite by Dietrich Kappe, CCC, March 28, 2020
- ↑ a0lite/README.md at master · dkappe/a0lite · GitHub