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Introduction

This is an adaptation of GCP's Leela Zero repository to chess, using Stockfish's position representation and move generation. (No heuristics or prior knowledge are carried over from Stockfish.)

The goal is to build a strong UCT chess AI following the same type of techniques as AlphaZero, as described in Mastering Chess and Shogi by Self-Play with a General Reinforcement Learning Algorithm.

We will need to do this with a distributed project, as it requires a huge amount of computations.

Please visit the LCZero forum to discuss: https://groups.google.com/forum/#!forum/lczero, or the github issues.

Contributing

For precompiled binaries, see:

For live status: http://lczero.org

The rest of this page is for users who want to compile the code themselves. Of course, we also appreciate code reviews, pull requests and Windows testers!

Compiling

Requirements

  • GCC, Clang or MSVC, any C++14 compiler
  • boost 1.54.x or later (libboost-all-dev on Debian/Ubuntu)
  • BLAS Library: OpenBLAS (libopenblas-dev) or (optionally) Intel MKL
  • zlib library (zlib1g & zlib1g-dev on Debian/Ubuntu)
  • Standard OpenCL C headers (opencl-headers on Debian/Ubuntu, or at https://github.com/KhronosGroup/OpenCL-Headers/tree/master/opencl22/)
  • OpenCL ICD loader (ocl-icd-libopencl1 on Debian/Ubuntu, or reference implementation at https://github.com/KhronosGroup/OpenCL-ICD-Loader)
  • An OpenCL capable device, preferably a very, very fast GPU, with recent drivers is strongly recommended but not required. (OpenCL 1.2 support should be enough, even OpenCL 1.1 might work).
  • Tensorflow 1.4 or higher (for training)
  • The program has been tested on Linux.

Example of compiling - Ubuntu 16.04

# Install dependencies
sudo apt install g++ git libboost-all-dev libopenblas-dev opencl-headers ocl-icd-libopencl1 ocl-icd-opencl-dev zlib1g-dev

# Test for OpenCL support & compatibility
sudo apt install clinfo && clinfo

# Clone git repo
git clone https://github.com/glinscott/leela-chess.git
cd leela-chess
git submodule update --init --recursive
mkdir build && cd build

# Configure
cmake ..

# Or configure without GPU support
cmake -DFEATURE_USE_CPU_ONLY=1 ..

# Build and run tests
make
./tests

Compiling Client

See https://github.com/glinscott/leela-chess/tree/master/go/src/client/README.md. This client will produce self-play games and upload them to http://lczero.org. A central server uses these self-play game data as inputs for the training process.

Weights

The weights from the distributed training are downloadable from http://lczero.org/networks. The best one is the top network that has some games played on it.

Weights that we trained to prove the engine was solid are here https://github.com/glinscott/lczero-weights. Currently, the best weights were obtained through supervised learning on a human dataset with elo ratings > 2000.

Training a new net using self-play

Running the Training is not required to help the project, only the central server needs to do this. The distributed part is running the client to create self-play games. Those games are uploaded on http://lczero.org, and used as the input to the training process.

After compiling lczero (see below), try the following:

cd build
cp ../scripts/train.sh .
./train.sh

This should launch lczero in training mode. It will begin self-play games, using the weights from weights.txt (initial weights can be downloaded from the repo above). The training data will be written into the data subdirectory.

Once you have enough games, you can simply kill the process.

To run the training process, you need to have CUDA and Tensorflow installed. See the instructions on the Tensorflow page (I used the pip installation method into a virtual environment). NOTE: You need a GPU accelerated version of Tensorflow to train, the CPU version doesn't support the input data format that is used.

Then, make sure to set up your config. Important fields to edit are the path the network is stored in, and the path to the input data.

cd training/tf
./parse.py configs/your-config.yaml

That will bring up Tensorflow and start running training. You can look at the config file in training/tf/configs/example.yaml to get an idea of all the configurable parameters. This config file is meant to be a unified configuration for all the executable pythonscripts in the training directory. After starting the above command, you should see output like this:

2018-01-12 09:57:00.089784: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1120] Creating TensorFlow device (/device:GPU:0) -> (device: 0, name: GeForce GTX TITAN X, pci bus id: 0000:02:00.0, compute capability: 5.2)
2018-01-12 09:57:13.126277: I tensorflow/core/kernels/shuffle_dataset_op.cc:110] Filling up shuffle buffer (this may take a while): 43496 of 65536
2018-01-12 09:57:18.175088: I tensorflow/core/kernels/shuffle_dataset_op.cc:121] Shuffle buffer filled.
step 100, policy loss=7.25049 mse=0.0988732 reg=0.254439 (0 pos/s)
step 200, policy loss=6.80895 mse=0.0904644 reg=0.255358 (3676.48 pos/s)
step 300, policy loss=6.33088 mse=0.0823623 reg=0.256656 (3652.74 pos/s)
step 400, policy loss=5.86768 mse=0.0748837 reg=0.258076 (3525.1 pos/s)
step 500, policy loss=5.42553 mse=0.0680195 reg=0.259414 (3537.3 pos/s)
step 600, policy loss=5.0178 mse=0.0618027 reg=0.260582 (3600.92 pos/s)
...
step 4000, training accuracy=96.9141%, mse=0.00218292
Model saved in file: /home/gary/tmp/leela-chess/training/tf/leelaz-model-4000

It saves out the new model every 4000 steps. To evaluate the model, you can play it against itself or another AI:

cd src
cp ../training/tf/leelaz-model-4000.txt ./newweights.txt
cd ../scripts
./run.sh

This runs an evaluation match using cutechess-cli.

Supervised training

If you have expert games you wish to train from in PGN, you can generate training data from those for the network to learn from. Run:

./lczero --supervise games.pgn

That will create a folder supervise-games, with the training data. You can then train a network against that as usual.

Stopping/starting training

It is safe to kill the training process and restart it at any time. It will automatically resume using the tensorflow checkpoint.

You can use this to adjust learning rates, etc.

Other projects

License

The code is released under the GPLv3 or later, except for ThreadPool.h, cl2.hpp and the clblast_level3 subdir, which have specific licenses (compatible with GPLv3) mentioned in those files.

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A chess adaption of GCP's Leela Zero

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