Difference between revisions of "Connor McMonigle"
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His [https://en.wikipedia.org/wiki/GitHub GitHub] repository further provides a [[Cpp|C++]] template based [[Neural Networks|neural network]] reference implementation <ref>[https://github.com/connormcmonigle/reference-neural-network GitHub - connormcmonigle/reference-neural-network]</ref>, | His [https://en.wikipedia.org/wiki/GitHub GitHub] repository further provides a [[Cpp|C++]] template based [[Neural Networks|neural network]] reference implementation <ref>[https://github.com/connormcmonigle/reference-neural-network GitHub - connormcmonigle/reference-neural-network]</ref>, | ||
and the '''cartesian-gp-chess-engine''', an experiment involving evolving cartesian [[Genetic Programming|genetic programs]] to evaluate chess positions, using self play to evolve slightly superior chess playing cartesian programs each generation <ref>[https://github.com/connormcmonigle/cartesian-gp-chess-engine GitHub - connormcmonigle/cartesian-gp-chess-engine: Experiment involving evolving cartesian genetic programs to evaluate chess positions]</ref>. | and the '''cartesian-gp-chess-engine''', an experiment involving evolving cartesian [[Genetic Programming|genetic programs]] to evaluate chess positions, using self play to evolve slightly superior chess playing cartesian programs each generation <ref>[https://github.com/connormcmonigle/cartesian-gp-chess-engine GitHub - connormcmonigle/cartesian-gp-chess-engine: Experiment involving evolving cartesian genetic programs to evaluate chess positions]</ref>. | ||
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=Forum Posts= | =Forum Posts= | ||
+ | ==2020== | ||
* [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=72613&start=427 Re: New engine releases 2020] by [[Connor McMonigle]], [[CCC]], October 18, 2020 » [[Seer]] 1.0 | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=72613&start=427 Re: New engine releases 2020] by [[Connor McMonigle]], [[CCC]], October 18, 2020 » [[Seer]] 1.0 | ||
* [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75580&start=27 Re: NiCimEngine Public release!] by [[Connor McMonigle]], [[CCC]], October 28, 2020 | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75580&start=27 Re: NiCimEngine Public release!] by [[Connor McMonigle]], [[CCC]], October 28, 2020 | ||
* [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75433&start=58 Re: Seer] by [[Connor McMonigle]], [[CCC]], November 02, 2020 » [[Seer]] 1.1 | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75433&start=58 Re: Seer] by [[Connor McMonigle]], [[CCC]], November 02, 2020 » [[Seer]] 1.1 | ||
* [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=72613&start=469 Re: New engine releases 2020] by [[Connor McMonigle]], [[CCC]], November 02, 2020 » [[Seer]] 1.1 | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=72613&start=469 Re: New engine releases 2020] by [[Connor McMonigle]], [[CCC]], November 02, 2020 » [[Seer]] 1.1 | ||
+ | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75665&start=9 Re: Minic version 3] by [[Connor McMonigle]], [[CCC]], November 03, 2020 » [[Minic#Minic 3|Minic 3]] <ref>[[Gao Huang]], [[Zhuang Liu]], [[Laurens van der Maaten]], [[Kilian Q. Weinberger]] ('''2016'''). ''Densely Connected Convolutional Networks''. [https://arxiv.org/abs/1608.06993 arXiv:1608.06993]</ref> | ||
+ | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75890&start=6 Re: Speculations about NNUE development (was New engine releases 2020)] by [[Connor McMonigle]], [[CCC]], November 12, 2020 » [[Dragon by Komodo Chess]], [[Halogen]], [[Seer]] | ||
+ | : [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=75890&start=9 Re: Speculations about NNUE development (was New engine releases 2020)] by [[Connor McMonigle]], [[CCC]], November 12, 2020 | ||
+ | ==2021== | ||
+ | * [http://www.talkchess.com/forum3/viewtopic.php?f=2&t=77503&start=55 Re: will Tcec allow Stockfish with a Leela net to play?] by [[Connor McMonigle]], [[CCC]], June 17, 2021 » [[NNUE]] | ||
=External Links= | =External Links= |
Latest revision as of 11:25, 18 June 2021
Home * People * Connor McMonigle
Connor McMonigle,
an American computer science major at the University of Washington and member of its Advanced Robotics team [2].
He is author of the UCI compliant open source chess engine Seer using a custom NNUE implementation, first released in October 2020 [3].
His GitHub repository further provides a C++ template based neural network reference implementation [4],
and the cartesian-gp-chess-engine, an experiment involving evolving cartesian genetic programs to evaluate chess positions, using self play to evolve slightly superior chess playing cartesian programs each generation [5].
Forum Posts
2020
- Re: New engine releases 2020 by Connor McMonigle, CCC, October 18, 2020 » Seer 1.0
- Re: NiCimEngine Public release! by Connor McMonigle, CCC, October 28, 2020
- Re: Seer by Connor McMonigle, CCC, November 02, 2020 » Seer 1.1
- Re: New engine releases 2020 by Connor McMonigle, CCC, November 02, 2020 » Seer 1.1
- Re: Minic version 3 by Connor McMonigle, CCC, November 03, 2020 » Minic 3 [6]
- Re: Speculations about NNUE development (was New engine releases 2020) by Connor McMonigle, CCC, November 12, 2020 » Dragon by Komodo Chess, Halogen, Seer
- Re: Speculations about NNUE development (was New engine releases 2020) by Connor McMonigle, CCC, November 12, 2020
2021
- Re: will Tcec allow Stockfish with a Leela net to play? by Connor McMonigle, CCC, June 17, 2021 » NNUE
External Links
References
- ↑ Advanced Robotics at University of Washington Team
- ↑ Advanced Robotics at University of Washington Team
- ↑ Re: New engine releases 2020 by Connor McMonigle, CCC, October 18, 2020
- ↑ GitHub - connormcmonigle/reference-neural-network
- ↑ GitHub - connormcmonigle/cartesian-gp-chess-engine: Experiment involving evolving cartesian genetic programs to evaluate chess positions
- ↑ Gao Huang, Zhuang Liu, Laurens van der Maaten, Kilian Q. Weinberger (2016). Densely Connected Convolutional Networks. arXiv:1608.06993