deep-reinforcement-learning reinforcement-learning DI-engine HalfCheetah-v3

Play HalfCheetah-v3 with SAC Policy

Model Description

<!-- Provide a longer summary of what this model is. --> This is a simple SAC implementation to OpenAI/Gym/MuJoCo HalfCheetah-v3 using the DI-engine library and the DI-zoo.

DI-engine is a python library for solving general decision intelligence problems, which is based on implementations of reinforcement learning framework using PyTorch or JAX. This library aims to standardize the reinforcement learning framework across different algorithms, benchmarks, environments, and to support both academic researches and prototype applications. Besides, self-customized training pipelines and applications are supported by reusing different abstraction levels of DI-engine reinforcement learning framework.

Model Usage

Install the Dependencies

<details close> <summary>(Click for Details)</summary>

# install huggingface_ding
git clone https://github.com/opendilab/huggingface_ding.git
pip3 install -e ./huggingface_ding/
# install environment dependencies if needed

sudo apt update -y     && sudo apt install -y     build-essential     libgl1-mesa-dev     libgl1-mesa-glx     libglew-dev     libosmesa6-dev     libglfw3     libglfw3-dev     libsdl2-dev     libsdl2-image-dev     libglm-dev     libfreetype6-dev     patchelf

mkdir -p ~/.mujoco
wget https://mujoco.org/download/mujoco210-linux-x86_64.tar.gz -O mujoco.tar.gz
tar -xf mujoco.tar.gz -C ~/.mujoco
echo "export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:~/.mujoco/mjpro210/bin:~/.mujoco/mujoco210/bin" >> ~/.bashrc
export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:~/.mujoco/mjpro210/bin:~/.mujoco/mujoco210/bin
pip3 install "cython<3"
pip3 install DI-engine[common_env]

</details>

Git Clone from Huggingface and Run the Model

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# running with trained model
python3 -u run.py

run.py

from ding.bonus import SACAgent
from ding.config import Config
from easydict import EasyDict
import torch

# Pull model from files which are git cloned from huggingface
policy_state_dict = torch.load("pytorch_model.bin", map_location=torch.device("cpu"))
cfg = EasyDict(Config.file_to_dict("policy_config.py").cfg_dict)
# Instantiate the agent
agent = SACAgent(env_id="HalfCheetah-v3", exp_name="HalfCheetah-v3-SAC", cfg=cfg.exp_config, policy_state_dict=policy_state_dict)
# Continue training
agent.train(step=5000)
# Render the new agent performance
agent.deploy(enable_save_replay=True)

</details>

Run Model by Using Huggingface_ding

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# running with trained model
python3 -u run.py

run.py

from ding.bonus import SACAgent
from huggingface_ding import pull_model_from_hub

# Pull model from Hugggingface hub
policy_state_dict, cfg = pull_model_from_hub(repo_id="OpenDILabCommunity/HalfCheetah-v3-SAC")
# Instantiate the agent
agent = SACAgent(env_id="HalfCheetah-v3", exp_name="HalfCheetah-v3-SAC", cfg=cfg.exp_config, policy_state_dict=policy_state_dict)
# Continue training
agent.train(step=5000)
# Render the new agent performance
agent.deploy(enable_save_replay=True)

</details>

Model Training

Train the Model and Push to Huggingface_hub

<details close> <summary>(Click for Details)</summary>

#Training Your Own Agent
python3 -u train.py

train.py

from ding.bonus import SACAgent
from huggingface_ding import push_model_to_hub

# Instantiate the agent
agent = SACAgent(env_id="HalfCheetah-v3", exp_name="HalfCheetah-v3-SAC")
# Train the agent
return_ = agent.train(step=int(5000000))
# Push model to huggingface hub
push_model_to_hub(
    agent=agent.best,
    env_name="OpenAI/Gym/MuJoCo",
    task_name="HalfCheetah-v3",
    algo_name="SAC",
    wandb_url=return_.wandb_url,
    github_repo_url="https://github.com/opendilab/DI-engine",
    github_doc_model_url="https://di-engine-docs.readthedocs.io/en/latest/12_policies/sac.html",
    github_doc_env_url="https://di-engine-docs.readthedocs.io/en/latest/13_envs/mujoco.html",
    installation_guide='''
sudo apt update -y \
    && sudo apt install -y \
    build-essential \
    libgl1-mesa-dev \
    libgl1-mesa-glx \
    libglew-dev \
    libosmesa6-dev \
    libglfw3 \
    libglfw3-dev \
    libsdl2-dev \
    libsdl2-image-dev \
    libglm-dev \
    libfreetype6-dev \
    patchelf

mkdir -p ~/.mujoco
wget https://mujoco.org/download/mujoco210-linux-x86_64.tar.gz -O mujoco.tar.gz
tar -xf mujoco.tar.gz -C ~/.mujoco
echo "export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:~/.mujoco/mjpro210/bin:~/.mujoco/mujoco210/bin" >> ~/.bashrc
export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:~/.mujoco/mjpro210/bin:~/.mujoco/mujoco210/bin
pip3 install "cython<3"
pip3 install DI-engine[common_env]
''',
    usage_file_by_git_clone="./sac/halfcheetah_sac_deploy.py",
    usage_file_by_huggingface_ding="./sac/halfcheetah_sac_download.py",
    train_file="./sac/halfcheetah_sac.py",
    repo_id="OpenDILabCommunity/HalfCheetah-v3-SAC",
    create_repo=False
)

</details>

Configuration <details close> <summary>(Click for Details)</summary>

exp_config = {
    'env': {
        'manager': {
            'episode_num': float("inf"),
            'max_retry': 1,
            'retry_type': 'reset',
            'auto_reset': True,
            'step_timeout': None,
            'reset_timeout': None,
            'retry_waiting_time': 0.1,
            'cfg_type': 'BaseEnvManagerDict'
        },
        'stop_value': 12000,
        'n_evaluator_episode': 8,
        'env_id': 'HalfCheetah-v3',
        'collector_env_num': 1,
        'evaluator_env_num': 8,
        'env_wrapper': 'mujoco_default'
    },
    'policy': {
        'model': {
            'twin_critic': True,
            'action_space': 'reparameterization',
            'obs_shape': 17,
            'action_shape': 6,
            'actor_head_hidden_size': 256,
            'critic_head_hidden_size': 256
        },
        'learn': {
            'learner': {
                'train_iterations': 1000000000,
                'dataloader': {
                    'num_workers': 0
                },
                'log_policy': True,
                'hook': {
                    'load_ckpt_before_run': '',
                    'log_show_after_iter': 100,
                    'save_ckpt_after_iter': 10000,
                    'save_ckpt_after_run': True
                },
                'cfg_type': 'BaseLearnerDict'
            },
            'update_per_collect': 1,
            'batch_size': 256,
            'learning_rate_q': 0.001,
            'learning_rate_policy': 0.001,
            'learning_rate_alpha': 0.0003,
            'target_theta': 0.005,
            'discount_factor': 0.99,
            'alpha': 0.2,
            'auto_alpha': False,
            'log_space': True,
            'target_entropy': None,
            'ignore_done': True,
            'init_w': 0.003,
            'reparameterization': True
        },
        'collect': {
            'collector': {},
            'n_sample': 1,
            'unroll_len': 1,
            'collector_logit': False
        },
        'eval': {
            'evaluator': {
                'eval_freq': 1000,
                'render': {
                    'render_freq': -1,
                    'mode': 'train_iter'
                },
                'figure_path': None,
                'cfg_type': 'InteractionSerialEvaluatorDict',
                'stop_value': 12000,
                'n_episode': 8
            }
        },
        'other': {
            'replay_buffer': {
                'replay_buffer_size': 1000000
            }
        },
        'on_policy': False,
        'cuda': True,
        'multi_gpu': False,
        'bp_update_sync': True,
        'traj_len_inf': False,
        'type': 'sac',
        'priority': False,
        'priority_IS_weight': False,
        'random_collect_size': 10000,
        'transition_with_policy_data': True,
        'multi_agent': False,
        'cfg_type': 'SACPolicyDict',
        'command': {}
    },
    'exp_name': 'HalfCheetah-v3-SAC',
    'seed': 0,
    'wandb_logger': {
        'gradient_logger': True,
        'video_logger': True,
        'plot_logger': True,
        'action_logger': True,
        'return_logger': False
    }
}

</details>

Training Procedure <!-- This relates heavily to the Technical Specifications. Content here should link to that section when it is relevant to the training procedure. -->

Model Information

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Environments

<!-- Address questions around what environment the model is intended to be trained and deployed at, including the necessary information needed to be provided for future users. -->