/reaver

Reaver: Modular Deep Reinforcement Learning Framework. Focused on StarCraft II. Supports Gym, Atari, and MuJoCo.

Primary LanguagePythonMIT LicenseMIT

Reaver: Modular Deep Reinforcement Learning Framework

MoveToBeacon CollectMineralShards DefeatRoaches DefeatZerglingsAndBanelings FindAndDefeatZerglings BuildMarines

MoveToBeacon CollectMineralShards DefeatRoaches DefeatZerglingsAndBanelings FindAndDefeatZerglings BuildMarines

Project status: No longer maintained!
Unfortunately, I am no longer able to further develop or provide support to the project.

Introduction

Reaver is a modular deep reinforcement learning framework with a focus on various StarCraft II based tasks, following in DeepMind's footsteps who are pushing state-of-the-art of the field through the lens of playing a modern video game with human-like interface and limitations. This includes observing visual features similar (though not identical) to what a human player would perceive and choosing actions from similar pool of options a human player would have. See StarCraft II: A New Challenge for Reinforcement Learning article for more details.

Though development is research-driven, the philosophy behind Reaver API is akin to StarCraft II game itself - it has something to offer both for novices and experts in the field. For hobbyist programmers Reaver offers all the tools necessary to train DRL agents by modifying only a small and isolated part of the agent (e.g. hyperparameters). For veteran researchers Reaver offers simple, but performance-optimized codebase with modular architecture: agent, model, and environment are decoupled and can be swapped at will.

While the focus of Reaver is on StarCraft II, it also has full support for other popular environments, notably Atari and MuJoCo. Reaver agent algorithms are validated against reference results, e.g. PPO agent is able to match Proximal Policy Optimization Algorithms. Please see below for more details.

Installation

PIP Package

Easiest way to install Reaver is through the PIP package manager:

pip install reaver

You can also install additional extras (e.g. gym support) through the helper flags:

pip install reaver[gym,atari,mujoco]

Manual Installation

If you plan to modify Reaver codebase you can retain its module functionality by installing from source:

$ git clone https://github.com/inoryy/reaver-pysc2
$ pip install -e reaver-pysc2/

By installing with -e flag Python will now look for reaver in the specified folder, rather than site-packages storage.

Windows

Please see the wiki page for detailed instructions on setting up Reaver on Windows.

However, if possible please consider using Linux OS instead - due to performance and stability considerations. If you would like to see your agent perform with full graphics enabled you can save a replay of the agent on Linux and open it on Windows. This is how the video recording listed below was made.

Requirements

  • PySC2 >= 3.0.0
  • StarCraft II >= 4.1.2 (instructions)
  • gin-config >= 0.3.0
  • TensorFlow >= 2.0.0
  • TensorFlow Probability >= 0.9

Optional Extras

If you would like to use Reaver with other supported environments, you must install relevant packages as well:

  • gym >= 0.10.0
  • atari-py >= 0.1.5
  • mujoco-py >= 1.50.0
    • roboschool >= 1.0 (alternative)

Quick Start

You can train a DRL agent with multiple StarCraft II environments running in parallel with just four lines of code!

import reaver as rvr

env = rvr.envs.SC2Env(map_name='MoveToBeacon')
agent = rvr.agents.A2C(env.obs_spec(), env.act_spec(), rvr.models.build_fully_conv, rvr.models.SC2MultiPolicy, n_envs=4)
agent.run(env)

Moreover, Reaver comes with highly configurable commandline tools, so this task can be reduced to a short one-liner!

python -m reaver.run --env MoveToBeacon --agent a2c --n_envs 4 2> stderr.log

With the line above Reaver will initialize the training procedure with a set of pre-defined hyperparameters, optimized specifically for the given environment and agent. After awhile you will start seeing logs with various useful statistics in your terminal screen.

| T    118 | Fr     51200 | Ep    212 | Up    100 | RMe    0.14 | RSd    0.49 | RMa    3.00 | RMi    0.00 | Pl    0.017 | Vl    0.008 | El 0.0225 | Gr    3.493 | Fps   433 |
| T    238 | Fr    102400 | Ep    424 | Up    200 | RMe    0.92 | RSd    0.97 | RMa    4.00 | RMi    0.00 | Pl   -0.196 | Vl    0.012 | El 0.0249 | Gr    1.791 | Fps   430 |
| T    359 | Fr    153600 | Ep    640 | Up    300 | RMe    1.80 | RSd    1.30 | RMa    6.00 | RMi    0.00 | Pl   -0.035 | Vl    0.041 | El 0.0253 | Gr    1.832 | Fps   427 |
...
| T   1578 | Fr    665600 | Ep   2772 | Up   1300 | RMe   24.26 | RSd    3.19 | RMa   29.00 | RMi    0.00 | Pl    0.050 | Vl    1.242 | El 0.0174 | Gr    4.814 | Fps   421 |
| T   1695 | Fr    716800 | Ep   2984 | Up   1400 | RMe   24.31 | RSd    2.55 | RMa   30.00 | RMi   16.00 | Pl    0.005 | Vl    0.202 | El 0.0178 | Gr   56.385 | Fps   422 |
| T   1812 | Fr    768000 | Ep   3200 | Up   1500 | RMe   24.97 | RSd    1.89 | RMa   31.00 | RMi   21.00 | Pl   -0.075 | Vl    1.385 | El 0.0176 | Gr   17.619 | Fps   423 |

Reaver should quickly converge to about 25-26 RMe (mean episode rewards), which matches DeepMind results for this environment. Specific training time depends on your hardware. Logs above are produced on a laptop with Intel i5-7300HQ CPU (4 cores) and GTX 1050 GPU, the training took around 30 minutes.

After Reaver has finished training, you can look at how it performs by appending --test and --render flags to the one-liner.

python -m reaver.run --env MoveToBeacon --agent a2c --test --render 2> stderr.log

Google Colab

A companion Google Colab notebook notebook is available to try out Reaver online.

Key Features

Performance

Many modern DRL algorithms rely on being executed in multiple environments at the same time in parallel. As Python has GIL, this feature must be implemented through multiprocessing. Majority of open source implementations solve this task with message-based approach (e.g. Python multiprocessing.Pipe or MPI), where individual processes communicate by sending data through IPC. This is a valid and most likely only reasonable approach for large-scale distributed approaches that companies like DeepMind and openAI operate on.

However, for a typical researcher or hobbyist a much more common scenario is having access only to a single machine environment, whether it is a laptop or a node on a HPC cluster. Reaver is optimized specifically for this case by making use of shared memory in a lock-free manner. This approach nets significant performance boost of up to 1.5x speed-up in StarCraft II sampling rate (and up to 100x speedup in general case), being bottle-necked almost exclusively by GPU input/output pipeline.

Extensibility

The three core Reaver modules - envs, models, and agents are almost completely detached from each other. This ensures that extending functionality in one module is seamlessly integrated into the others.

Configurability

All configuration is handled through gin-config and can be easily shared as .gin files. This includes all hyperparameters, environment arguments, and model definitions.

Implemented Agents

  • Advantage Actor-Critic (A2C)
  • Proximal Policy Optimization (PPO)

Additional RL Features

  • Generalized Advantage Estimation (GAE)
  • Rewards clipping
  • Gradient norm clipping
  • Advantage normalization
  • Baseline (critic) bootstrapping
  • Separate baseline network

But Wait! There's more!

When experimenting with novel ideas it is important to get feedback quickly, which is often not realistic with complex environments like StarCraft II. As Reaver was built with modular architecture, its agent implementations are not actually tied to StarCraft II at all. You can make drop-in replacements for many popular game environments (e.g. openAI gym) and verify implementations work with those first:

python -m reaver.run --env CartPole-v0 --agent a2c 2> stderr.log
import reaver as rvr

env = rvr.envs.GymEnv('CartPole-v0')
agent = rvr.agents.A2C(env.obs_spec(), env.act_spec())
agent.run(env)

Supported Environments

Currently the following environments are supported by Reaver:

  • StarCraft II via PySC2 (tested on all minigames)
  • openAI Gym (tested on CartPole-v0)
  • Atari (tested on PongNoFrameskip-v0)
  • Mujoco (tested on InvertedPendulum-v2 and HalfCheetah-v2)

Results

Map Reaver (A2C) DeepMind SC2LE DeepMind ReDRL Human Expert
MoveToBeacon 26.3 (1.8)
[21, 31]
26 27 28
CollectMineralShards 102.8 (10.8)
[81, 135]
103 196 177
DefeatRoaches 72.5 (43.5)
[21, 283]
100 303 215
FindAndDefeatZerglings 22.1 (3.6)
[12, 40]
45 62 61
DefeatZerglingsAndBanelings 56.8 (20.8)
[21, 154]
62 736 727
CollectMineralsAndGas 2267.5 (488.8)
[0, 3320]
3,978 5,055 7,566
BuildMarines -- 3 123 133
  • Human Expert results were gathered by DeepMind from a GrandMaster level player.
  • DeepMind ReDRL refers to current state-of-the-art results, described in Relational Deep Reinforcement Learning article.
  • DeepMind SC2LE are results published in StarCraft II: A New Challenge for Reinforcement Learning article.
  • Reaver (A2C) are results gathered by training the reaver.agents.A2C agent, replicating SC2LE architecture as closely as possible on available hardware. Results are gathered by running the trained agent in --test mode for 100 episodes, calculating episode total rewards. Listed are the mean, standard deviation (in parentheses), and min & max (in square brackets).

Training Details

Map Samples Episodes Approx. Time (hr)
MoveToBeacon 563,200 2,304 0.5
CollectMineralShards 74,752,000 311,426 50
DefeatRoaches 172,800,000 1,609,211 150
FindAndDefeatZerglings 29,760,000 89,654 20
DefeatZerglingsAndBanelings 10,496,000 273,463 15
CollectMineralsAndGas 16,864,000 20,544 10
BuildMarines - - -
  • Samples refer to total number of observe -> step -> reward chains in one environment.
  • Episodes refer to total number of StepType.LAST flags returned by PySC2.
  • Approx. Time is the approximate training time on a laptop with Intel i5-7300HQ CPU (4 cores) and GTX 1050 GPU.

Note that I did not put much time into hyperparameter tuning, focusing mostly on verifying that the agent is capable of learning rather than maximizing sample efficiency. For example, naive first try on MoveToBeacon required about 4 million samples, however after some playing around I was able to reduce it down all the way to 102,000 (~40x reduction) with PPO agent.


Mean episode rewards with std.dev filled in-between. Click to enlarge.

Video Recording

A video recording of the agent performing on all six minigames is available online at: https://youtu.be/gEyBzcPU5-w. In the video on the left is the agent acting in with randomly initialized weights and no training, whereas on the right he is trained to target scores.

Reproducibility

The problem of reproducibility of research has recently become a subject of many debates in science in general, and Reinforcement Learning is not an exception. One of the goals of Reaver as a scientific project is to help facilitate reproducible research. To this end Reaver comes bundled with various tools that simplify the process:

  • All experiments are saved into separate folders with automatic model checkpoints enabled by default
  • All configuration is handled through gin-config Python library and saved to experiment results directory
  • During training various statistics metrics are duplicated into experiment results directory
  • Results directory structure simplifies sharing individual experiments with full information

Pre-trained Weights & Summary Logs

To lead the way with reproducibility, Reaver is bundled with pre-trained weights and full Tensorboard summary logs for all six minigames. Simply download an experiment archive from the releases tab and unzip onto the results/ directory.

You can use pre-trained weights by appending --experiment flag to reaver.run command:

python reaver.run --map <map_name> --experiment <map_name>_reaver --test 2> stderr.log

Tensorboard logs are available if you launch tensorboard --logidr=results/summaries.
You can also view them directly online via Aughie Boards.

Why "Reaver"?

Reaver is a very special and subjectively cute Protoss unit in the StarCraft game universe. In the StarCraft: Brood War version of the game, Reaver was notorious for being slow, clumsy, and often borderline useless if left on its own due to buggy in-game AI. However, in the hands of dedicated players that invested time into mastery of the unit, Reaver became one of the most powerful assets in the game, often playing a key role in tournament winning games.

Acknowledgement

A predecessor to Reaver, named simply pysc2-rl-agent, was developed as the practical part of bachelor's thesis at the University of Tartu under the supervision of Ilya Kuzovkin and Tambet Matiisen. You can still access it on the v1.0 branch.

Support

If you encounter a codebase related problem then please open a ticket on GitHub and describe it in as much detail as possible. If you have more general questions or simply seeking advice feel free to send me an email.

I am also a proud member of an active and friendly SC2AI online community, we mostly use Discord for communication. People of all backgrounds and levels of expertise are welcome to join!

Citing

If you have found Reaver useful in your research, please consider citing it with the following bibtex:

@misc{reaver,
  author = {Ring, Roman},
  title = {Reaver: Modular Deep Reinforcement Learning Framework},
  year = {2018},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/inoryy/reaver}},
}