Build sim from data for use in reinforcement learning and bonsai platform for machine teaching.
Перейти к файлу
dependabot[bot] 7570c117b6
Bump torch from 1.8.0 to 1.13.1
Bumps [torch](https://github.com/pytorch/pytorch) from 1.8.0 to 1.13.1.
- [Release notes](https://github.com/pytorch/pytorch/releases)
- [Changelog](https://github.com/pytorch/pytorch/blob/master/RELEASE.md)
- [Commits](https://github.com/pytorch/pytorch/compare/v1.8.0...v1.13.1)

---
updated-dependencies:
- dependency-name: torch
  dependency-type: direct:production
...

Signed-off-by: dependabot[bot] <support@github.com>
2023-02-25 02:04:29 +00:00
.github UPDATE: pytest workflows file with proper dependenceis 2021-07-16 15:34:56 -07:00
.tours UPDATE: moab example 2021-01-19 12:46:58 -08:00
conf UPDATE: remove terminal from data loader 2023-01-26 23:39:28 +00:00
csv_data clean filenames 2021-11-18 12:58:35 -05:00
img README bugfixes, documented ddm_test_validate.py, and making bugfixes to it 2021-07-12 16:47:44 -07:00
notebooks ADD: timeseries data class from darts 2022-09-02 03:11:47 +00:00
tests fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
.dockerignore UPDATE: ensures ddm_predictor updates only the variables specified in concatenate_var_length and not concatenate length, and that takes precedence during epsiode_step. Also fixes tests, save for skipping over the long sweep tests 2022-11-15 05:22:08 +00:00
.gitignore update sweep 2021-11-18 15:44:12 -05:00
CODE_OF_CONDUCT.md Initial CODE_OF_CONDUCT.md commit 2020-09-08 15:20:22 -07:00
Dockerfile UPDATE: adds support for using lookup values for variables outside the model (exogeneous variables like OAT and WBT), and includes support for loading initial state values from the training dataset. Updates `ddm_trainer.py`, and `ddm_predictor.py` to utilize said updates, and updates the `hvac_b1` example to demonstrate 2023-01-26 23:21:01 +00:00
LICENSE.txt Adding disclaimer and updating environment.yml to not need sdk2 2020-09-16 17:03:22 -07:00
README.md Updating README for min/max 2021-09-23 10:23:39 -07:00
SECURITY.md Initial SECURITY.md commit 2020-09-08 15:20:27 -07:00
all_models.py 🐛 fix: track history of data in ddm_predictor and define schema episode_step properly 2021-06-21 19:13:53 -07:00
assessment_metrics_loader.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
base.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
dataclass.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
ddm-cartpole.ink ADD: inkling file for cartpole with sample lessons for state initialization 2022-08-31 17:07:06 +00:00
ddm_predictor.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
ddm_test_validate.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
ddm_trainer.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
environment.yml ADD: jupyter to conda env 2022-12-06 04:25:14 +00:00
gboost_models.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
loaders.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
model_loader.py 🐛 fix: track history of data in ddm_predictor and define schema episode_step properly 2021-06-21 19:13:53 -07:00
policies.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
preprocess.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
requirements-tests.txt Bump torch from 1.8.0 to 1.13.1 2023-02-25 02:04:29 +00:00
requirements.txt Merge branch 'main' into alizaidi/exog_var_lookup 2023-02-24 18:03:18 -08:00
signal_builder.py fixup: Format Python code with Black 2021-10-01 19:12:20 +00:00
skmodels.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
timeseriesclass.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
torch_models.py fixup: Format Python code with Black 2023-02-25 02:03:50 +00:00
ts-docs.md UPDATE: timeseries class implementation with example yaml and some docs 2022-09-29 15:06:22 +00:00

README.md

Training Data-Driven or Surrogate Simulators

This repository provides a template for training data-driven simulators that can then be leveraged for training brains (reinforcement learning agents) with Project Bonsai.

⚠️ Disclaimer: This is not an official Microsoft product. This application is considered an experimental addition to Microsoft's Project Bonsai toolbox. Its primary goal is to reduce barriers of entry to use Project Bonsai's core Machine Teaching. Pull requests for fixes and small enhancements are welcome, but we expect this to be replaced by out-of-the-box features of Project Bonsai shortly.

Dependencies

This repository leverages Anaconda for Python virtual environments and all dependencies. Please install Anaconda or miniconda first and then run the following:

conda env update -f environment.yml
conda activate ddm

This will create and activate a new conda virtual environment named ddm based on the configuration in the environment.yml file.

Tests

To get an understanding of the package, you may want to look at the tests in tests, and the configuration files in conf. You can run the tests by simply:

pytest tests
# or
python -m pytest tests/

Usage

The scripts in this package expect that you have a dataset of CSVs or numpy arrays. If you are using a CSV, you should ensure that:

  • The CSV has a header with unique column names describing your inputs to the model and the outputs of the model.
  • The CSV should have a column for the episode index and another column for the iteration index.
  • The CSV should have been cleaned from any rows containing NaNs

Generating Logs from an Existing Simulator

For an example on how to generate logged datasets from a simulator using the Python SDK, take a look at the examples in the samples repository, in particular, you can use the flag --test-local True --log-iteration True to generate a CSV data that matches the schema used in this repository.

Training Your Models

The scripts in this package leverage the configuration files saved in the conf folder to load CSV files, train and save models, and interface them to the Bonsai service. There are three configuration files:

  • conf/data/$YOUR_DATA_CONFIG.yaml defines the interface to the data to train on
  • conf/model/$YOUR_MODEL_CONFIG.yaml defines the Machine Learning model's hyper-parameters
  • conf/simulator/$YOUR_SIM_CONFIG.yaml defines the simulator interface

The library comes with a default configuration set in conf/config.yaml.

python ddm_trainer.py

You can change any configuration parameter by specifying the configuration file you would like to change and its new path, i.e.,

python ddm_trainer.py data=cartpole_st_at simulator=gboost_cartpole

which will use the configuration files in conf/data/cartpole_st_at.yaml and conf/simulator/gboost_cartpole.yaml.

You can also override the parameters of the configuration file by specifying their name:

python ddm_trainer.py data.path=csv_data/cartpole_at_st.csv data.iteration_order=1
python ddm_trainer.py data.path=csv_data/cartpole_at_st.csv model=xgboost 

The script automatically saves your model to the path specified by model.saver.filename. An outputs directory is also saved with your configuration file and logs.

Episode Initialization and Scenario Parameters

In order to specify episode initializations and scenario parameters, you can provide a dictionary of parameters to the simulator yaml file:

simulator:
  states:
    ["cart_position", "cart_velocity", "pole_angle", "pole_angular_velocity"]
  actions: ["command"]
  configs: ["pole_length", "pole_mass", "cart_mass"]
  # estimate these during training
  # e.g.,:
  episode_inits: { "pole_length": 0.4, "pole_mass": 0.055, "cart_mass": 0.31 }
  # e.g.,:  your simulator may need to know the initial state
  # before the first episode. define these here as a dictionary
  # you can include these in your Inkling scenarios during brain training
  initial_states:
    {
      "cart_position": 0,
      "cart_velocity": 0,
      "pole_angle": 0,
      "pole_angular_velocity": 0,
    }
  # episode_inits:
  policy: bonsai
  logging: enable
  workspace_setup: True

When training with a brain, make sure that your scenario definitions include both initial_state values and/or episode_inits values.

Hyperparameter Tuning

You can also do some hyperparameter tuning by setting sweep.run to True in your conf.model.yaml file and specifying the parameters to sweep over and their distributions in the params argument:

sweep:
  run: True
  search_algorithm: random
  num_trials: 3
  scoring_func: r2
  params:
    estimator__max_depth: [1, 3, 5, 10]
    estimator__gamma: [0, 0.5, 1, 5]
    estimator__subsample: [0.1, 0.5, 1]

The sweeping function uses tune-sklearn. Valid choices for search_algorithm are: bayesian, random, bohb, and hyperopt.

Building Your Simulators

The schema for your simulator resides in conf/simulator. After defining your states, actions, and configs, you can run the simulator as follows:

python ddm_predictor.py simulator=$YOUR_SIM_CONFIG

NOTE: If wanting to train with bonsai, make sure conf/simulator/policy is set to "bonsai" instead of "random"

If you would like to test your simulator before connecting to the platform, you can use a random policy:

python ddm_predictor.py simulator=$YOUR_SIM_CONFIG simulator.policy=random

NOTE: The optional flags should NOT have .yml; it should just be the name of the config file

If you're having trouble running locally, chances are you need to set up your workspace and access key configs. You can do this by using environment variables or the following command

python ddm_predictor.py simulator.workspace_setup=True

Signal Builder

Sometimes there are variables that need to be provided from the simulator for brain training, but we don't necessarily want a ddm model to predict it. A SignalBuilder class in signal_builder.py can be used to create signals with different types such as step_function, ramp, and sinewave. You can configure signals in the conf/simulator file by adding a key and a the desired signal type. The horizon is the length of episode. The signal will be created and the current signal will be provided as it is indexed through an episode in ddm_predictor.py.

Depending on the signal type, you'll need to provide different signal parameters. One can randomize the signals at the start of every episode by specifying the min/max. If you want them to be constant, just set them to be the same.

Step Function

  • start
  • stop
  • transition

Ramp

  • start
  • stop

Sine Wave

  • amplitude
  • mean

Constant

  • value

Piecewise

  • conditions (must use list)
  • values (must use list)
  signal_builder:
    signal_types: 
      Tset: step_function
      Tout: sinewave
    horizon: 288
    signal_params:
      Tset: 
        conditions:
          min: [0, 110, 205]
          max: [0, 110, 205]
        values:
          min: [25, 22, 24]
          max: [25, 22, 24]
      Tout:
        amplitude:
          min: 5
          max: 5
        median:
          min: 25
          max: 25
        median: 25

Generate Logs for Comparing DDM and Original Sim

Validating your ddm simulator against the original sim is heavily recommended, especially paying attention to error propagation in a sequential manner. ddm_test_validate.py is one way to generate two csv files in outputs/<DATE>/<TIME>/logs.

NOTE: ddm_test_validate.py does NOT currently generate plots for generic models

In order to use ddm_test_validate.py, a few steps will need to be followed:

  1. Place the original simulator's main.py at the same root level where ddm_test_validate.py is. Add simulator files into sim/<FOLDER>/sim/.
├───ddm_test_validate.py
├───main.py
├───sim
│   ├───quanser
│   │   ├───sim
│   │   |   ├───qube_simulator.py
  1. Modify imports so main.py can successfully run simulator in new location
from sim.quanser.sim.qube_simulator import QubeSimulator
from sim.quanser.policies import random_policy, brain_policy
  1. Ensure the config in conf/simulator does NOT have the default policy as bonsai. You'll want to use "random" or create your own expert policy.

NOTE: You can override your policy from the CLI, will be shown in the final step

  1. Provide a scenario config in ddm_test_validate.py to ensure you start with initial configurations that are better than just random.
        '''
       TODO: Add episode_start(config) so sim works properly and not initializing
        with unrealistic initial conditions.
        '''
        sim.episode_start()
        ddm_state = sim.get_state()
        sim_state = sim.get_sim_state()
  1. Run ddm_test_validate.py
python ddm_test_validate.py simulator.policy=random

Build Simulator Package

az acr build --image <IMAGE_NAME>:<IMAGE_VERSION> --file Dockerfile --registry <ACR_REGISTRY> .

Contribute Code

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.microsoft.com.

When you submit a pull request, a CLA-bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., label, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repositories using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

Telemetry

The software may collect information about you and your use of the software and send it to Microsoft. Microsoft may use this information to provide services and improve our products and services. You may turn off the telemetry as described in the repository. There are also some features in the software that may enable you and Microsoft to collect data from users of your applications. If you use these features, you must comply with applicable law, including providing appropriate notices to users of your applications together with a copy of Microsoft's privacy statement. Our privacy statement is located at https://go.microsoft.com/fwlink/?LinkID=824704. You can learn more about data collection and use in the help documentation and our privacy statement. Your use of the software operates as your consent to these practices.

Trademarks

This project may contain trademarks or logos for projects, products, or services. Authorized use of Microsoft trademarks or logos is subject to and must follow Microsoft's Trademark & Brand Guidelines. Use of Microsoft trademarks or logos in modified versions of this project must not cause confusion or imply Microsoft sponsorship. Any use of third-party trademarks or logos are subject to those third-party's policies.