.. _plot: ============ Plot Scripts ============ Plot scripts (to be documented, see "Results" sections in SB3 documentation): - ``scripts/all_plots.py``/``scripts/plot_from_file.py`` for plotting evaluations - ``scripts/plot_train.py`` for plotting training reward/success Examples -------- Plot training success (y-axis) w.r.t. timesteps (x-axis) with a moving window of 500 episodes for all the ``Fetch`` environment with ``HER`` algorithm: :: python scripts/plot_train.py -a her -e Fetch -y success -f rl-trained-agents/ -w 500 -x steps Plot evaluation reward curve for TQC, SAC and TD3 on the HalfCheetah and Ant PyBullet environments: :: python3 scripts/all_plots.py -a sac td3 tqc --env HalfCheetahBullet AntBullet -f rl-trained-agents/ Plot with the rliable library ----------------------------- The RL zoo integrates some of `rliable `__ library features. You can find a visual explanation of the tools used by rliable in this `blog post `__. First, you need to install `rliable `__. Note: Python 3.7+ is required in that case. Then export your results to a file using the ``all_plots.py`` script (see above): :: python scripts/all_plots.py -a sac td3 tqc --env Half Ant -f logs/ -o logs/offpolicy You can now use the ``plot_from_file.py`` script with ``--rliable``, ``--versus`` and ``--iqm`` arguments: :: python scripts/plot_from_file.py -i logs/offpolicy.pkl --skip-timesteps --rliable --versus -l SAC TD3 TQC .. note:: you may need to edit ``plot_from_file.py``, in particular the ``env_key_to_env_id`` dictionary and the ``scripts/score_normalization.py`` which stores min and max score for each environment. Remark: plotting with the ``--rliable`` option is usually slow as confidence interval need to be computed using bootstrap sampling.